RMG improvements arising from 5.43.9 release notes * Make bold advice to ignore pedantic POD check * Rework the "Update perldelta" section * Change perlhist.pod commit message to include version number Co-authored-by: Philippe Bruhat (BooK) <book@cpan.org> Co-authored-by: Thibault Duponchelle <thibault.duponchelle@gmail.com>
Your services have dashboards, tracing, and alerting. Your CLI tools print to STDOUT and exit. When something breaks, debugging starts at the API gateway -- everything upstream is a black box. This makes no sense.
If your CLI talks to an API, it's part of the request path. Instrument it like any other participant.
This post describes how we instrumented an internal Perl CLI -- the same mycli tool from our earlier post on fatpacking -- with syslog logging, StatsD metrics, and correlation IDs. The post is strongly biased towards tooling internal to an organisation, which has the luxury of being opinionated: you control the deployment targets, you know where syslog goes, and you can lean on solved infrastructure rather than building your own. The principles generalise to any language and any CLI that talks to an API.
Why observability matters in CLI tools
Web services get dashboards as a matter of course[1]. Error rates, latency percentiles, request counts -- these are table stakes for any production service. CLI tools rarely get the same treatment, even when they're used just as heavily.
Once your CLI emits metrics, you can build per-tool dashboards that show error rates broken down by command, by user cohort, by API version, by CLI version, by deployment target. This is the same dimensional analysis you'd do for a web service, applied to a tool that runs on someone's laptop.
This integrates naturally with operational practices you're probably already using:
-
Continuous deployment. When you ship a new CLI version, the dashboard shows whether error rates changed. If
command.device_list.errorsspikes after a release, you know immediately -- not when someone files a ticket three days later. - Rollback decisions. If error rates climb after a release, the dashboard tells you in minutes -- roll back now, debug later. Without metrics, you're guessing whether the new version is the cause or a coincidence.
-
Canary deployments. Roll the new version to 10% of jumpboxes. Compare
http.timingandhttp.errorsbetween the canary and the stable cohort. The same deployment strategy that works for services works for CLI tools, but only if you have the metrics to compare. - Feature flags. If a new feature is gated behind a flag, metrics tell you whether the flagged code path is slower, more error-prone, or unused. Without instrumentation, feature flag decisions are based on "nobody complained".
-
Incident management. During a site event, the CLI dashboard shows whether the tool is contributing to or affected by the problem. A spike in
http.status.503from the CLI tells the incident commander that the API is rejecting requests before users report it. Conversely, if the CLI error rate is flat during an incident, you can rule it out as a contributing factor. - Adoption and deprecation. Metrics answer "is anyone still using the v1 endpoint?" and "has the team migrated to the new auth flow?" without surveys or guesswork.
The point is not that CLI tools are special -- it's that they're not. They're participants in the same distributed system as your services, and they deserve the same observability treatment. The investment is small: a correlation ID, a handful of counters, and a logging lifecycle. The return is that your CLI becomes a first-class citizen in your operational tooling rather than a blind spot.
[1] Yours does, right?
The three layers
We instrument at three levels, each serving a different audience and persistence model:
Layer Audience Persistence
----- -------- -----------
Verbose mode Developer at terminal Ephemeral (STDERR)
Syslog Ops / incident review Durable (centralised logs)
StatsD Dashboards / alerting Aggregated (time-series)
A developer debugging their own command uses --verbose. An on-call engineer investigating a reported issue searches syslog by invocation ID. A platform team monitors command usage and error rates on dashboards. Same underlying data, different consumers, different retention.
Each layer is controlled independently and opt-in:
# Syslog only
MYCLI_LOG=1 mycli device list
# Verbose only (no syslog, no metrics)
mycli device list --verbose
# Everything
MYCLI_LOG=1 mycli device list --verbose
StatsD metrics emit whenever a statsd_host is configured -- no-ops otherwise. Syslog requires MYCLI_LOG=1 -- deliberately opt-in, since CLI tools run on personal machines and writing to syslog on every invocation without consent would be surprising.
The verbose layer itself has depth. --verbose shows the shape of the HTTP conversation -- method, URL, status, timing -- but deliberately omits headers and bodies to keep the output scannable. When that isn't enough, plugging in LWP::ConsoleLogger::Everywhere via perl -M gives a full HTTP trace without the CLI needing to build one. More on this in the debugging spectrum section below.
Invocation ID: the correlation key
Every mycli invocation generates a random 8-character hex ID at startup:
my @chars = ('0' .. '9', 'a' .. 'f');
my $id = join '', map { $chars[ int(rand @chars) ] } 1 .. 8;
This ID appears in three places:
-
Every syslog message -- prefixed as
[f7a3b1c2] -
Every HTTP request -- sent as the
X-Invocation-Idheader - Verbose STDERR output -- printed at startup
The server-side API logs this header alongside its own request ID. To trace a failing command end-to-end:
# Find the CLI side
grep 'f7a3b1c2' /var/log/mycli.log
# Find the server side
grep 'f7a3b1c2' /var/log/api.log
One string, full picture. No timestamps to correlate, no guessing which request came from which terminal.
User-Agent
In addition to the invocation ID, set the User-Agent header to mycli/<version>. This is trivial and gives the server side a way to filter by CLI version without any custom header support -- useful for canary deployment analysis and for spotting users running outdated versions.
Two-way correlation
The API returns its own request ID in a response header (X-Request-Id). The CLI logs this too:
[f7a3b1c2] http: 200 OK (142ms, application/json, 8431 bytes) req=a1b2c3d4
This gives you a join key in both directions: from the CLI's invocation ID you can find the server's request ID, and vice versa. When a user reports "mycli gave me an error", the request ID in the error message leads straight to the server-side trace.
What the server needs to do
The correlation only works if the server participates. The requirements are minimal:
-
Log the
X-Invocation-Idheader from incoming requests. Most API frameworks can do this with a single middleware or access log configuration change. -
Return a request ID in every response (e.g.,
X-Request-Id). Many frameworks generate this by default. - Propagate both IDs into the server's own tracing and logging. If the API uses structured logging or distributed tracing, attach the invocation ID as a field or span attribute so it appears in the same search results.
If the server doesn't log the invocation ID, the CLI-side correlation still works (you can grep your CLI logs by invocation ID), but you lose the end-to-end join. If the server doesn't return a request ID, the CLI can still log its own invocation ID, but the user can't hand a request ID to the API team and say "look this up".
The ideal state is both: the CLI sends its ID, the server sends its ID, and both sides log both. This is a two-line change on the server and it makes every future debugging session faster.
Structured syslog
Every invocation logs a structured lifecycle to syslog:
Startup
[f7a3b1c2] startup: cli: mycli device list --status Active
[f7a3b1c2] startup: perl: 5.36.0 on linux
[f7a3b1c2] startup: env: API_KEY=ab12****, SERVER_URL=https://api.internal
[f7a3b1c2] config: key source: file (~/.config/mycli/api-key)
[f7a3b1c2] config: format: table, fields: all, tty
The API key is masked -- first four characters, then ****. Enough to identify which key is in use without leaking it to logs.
HTTP requests
[f7a3b1c2] http: GET https://api.internal/v1/devices
[f7a3b1c2] http: 200 OK (142ms, application/json, 8431 bytes) req=a1b2c3d4
Every request/response pair is logged with method, URL, status, elapsed time, content type, response size, and the server's request ID.
Shutdown
[f7a3b1c2] device_list: done (387ms, 24 results, 2 requests, cache 3/1)
One line summarising the entire command: wall-clock time, result count, number of HTTP requests made, and resolve cache statistics (3 items cached across 1 resource type).
Always format, conditionally emit
A subtle design choice: the logger always formats every message, even when logging is disabled. Only the syslog() call is conditional:
sub _emit {
my ($self, $priority, $context, $detail) = @_;
my $msg = sprintf '[%s] %s: %s', $self->{_id}, $context, $detail;
syslog($priority, '%s', $msg) if $self->{_enabled};
return $msg;
}
This means formatting bugs surface during normal development, not only when someone enables logging in production. The cost is negligible -- sprintf is fast.
A note on philosophy: when syslog is enabled, all levels are transmitted -- info, debug, error. There is no runtime knob to suppress debug messages. The belief behind this is that logging should always be on in production, not enabled after a problem is suspected. The time you most need debug-level detail is exactly the time you can't reproduce the issue. You can never have too much log detail, with the obvious exception of user or employee personal data, which should never be logged at any level.
What not to log
The API key masking (ab12****) is one example of a broader principle: log enough to identify, not enough to exploit.
- Credentials and secrets -- mask API keys, tokens, and passwords. Show enough characters to distinguish between keys (we show four), then mask the rest. Apply the same caution to environment variables and URL query parameters that may carry tokens.
-
Request and response bodies -- don't log them. They may contain customer data, PII, or sensitive business logic. Log metadata (status, timing, size) but never content. Body inspection is what
LWP::ConsoleLoggeris for -- interactive, ephemeral, on-demand.
StatsD metrics
Every command emits a standard set of metrics to StatsD:
Per-command metrics
| Metric | Type | Description |
|---|---|---|
mycli.command.<cmd>.calls |
counter | Command invocations |
mycli.command.<cmd>.timing |
timing | Wall-clock duration (ms) |
mycli.command.<cmd>.results |
gauge | Items returned |
mycli.command.<cmd>.errors |
counter | Unhandled exceptions |
The command name is derived from the class hierarchy: MyCLI::App::Command::device::list becomes device_list.
Per-HTTP metrics
| Metric | Type | Description |
|---|---|---|
mycli.http.calls |
counter | Total HTTP requests |
mycli.http.timing |
timing | Per-request duration (ms) |
mycli.http.errors |
counter | Non-2xx responses |
mycli.http.status.<code> |
counter | Per-status-code breakdown |
Operational metrics
| Metric | Type | Description |
|---|---|---|
mycli.auth.key_source.<src> |
counter | Where the API key came from |
mycli.auth.url_source.<src> |
counter | Where the server URL came from |
mycli.config.file.found |
counter | Config file was loaded |
mycli.config.file.none |
counter | No config file found |
mycli.output.format.<name> |
counter | Output format selection |
What this tells you
The metrics answer questions that logs can't:
-
What commands are people actually using? -- sort
command.*.callsby count. If nobody usescrossconnect list, don't spend time improving it. -
Is the API getting slower? --
http.timingpercentiles over time. The CLI is seeing the same latency as your users, including TLS negotiation and DNS. -
Are auth errors increasing? --
http.status.401spike means keys are being rotated or revoked. -
How are people authenticating? --
auth.key_source.envvsauth.key_source.filetells you whether your team has adopted the recommended credential flow. -
What output formats matter? -- if 90% of usage is
output.format.json, your table renderer is mostly aesthetic.
Metric naming conventions
Prefix every metric with the tool name (mycli.*) to avoid collisions in a shared StatsD instance. Use a consistent dot-separated hierarchy (mycli.command.<cmd>.calls) rather than flat names -- this makes metrics discoverable by browsing the tree. Watch cardinality: derive command names from a fixed set (like the class hierarchy) rather than user input, and keep dynamic segments like http.status.<code> to naturally bounded sets.
Verbose mode and the debugging spectrum
The three layers above cover durable observability -- data that outlives the terminal session. But the most common debugging scenario is someone at a keyboard wondering why their command isn't working. For this, the CLI has three levels of HTTP visibility:
Level 1: Silent (default)
No HTTP output. The user sees formatted results only. Syslog and metrics still capture everything in the background.
Level 2: --verbose
--> GET https://api.internal/v1/devices?status=Active
<-- 200 OK (142ms, application/json, 8431 bytes)
Printed to STDERR so it doesn't interfere with STDOUT piping. Shows method, URL, status, timing, and size. This is enough for "is my request hitting the right endpoint?" and "why is this slow?".
The design choice here is restraint. Verbose mode shows the shape of the conversation -- what was asked, what came back, how long it took. It deliberately omits headers and bodies. This keeps the output scannable when a command makes multiple requests.
Level 3: LWP::ConsoleLogger::Everywhere
When --verbose isn't enough -- when you need to see request headers, response headers, and full bodies -- plug in LWP::ConsoleLogger::Everywhere:
# From source
perl -MLWP::ConsoleLogger::Everywhere -Ilib bin/mycli device get 42
# Fatpacked binary (with API key redaction)
LWPCL_REDACT_HEADERS=Authorization \
PERL5OPT="-MLWP::ConsoleLogger::Everywhere" \
./mycli-packed device get 42
This is a full HTTP trace: every header, every byte of the request and response body, formatted and syntax-highlighted. It's invaluable for debugging serialisation issues, unexpected headers, or auth failures.
The reason we don't build this into --verbose is that it's a different tool for a different job. Verbose mode is for operators; full HTTP tracing is for developers debugging the CLI itself. The -M flag means the capability is always available without cluttering the option namespace or adding a dependency that most users will never need.
Error reporting and surfacing correlation IDs
When the API returns an error, the CLI needs to show the user enough information to report the problem without overwhelming them with internals. Our error output includes the server's request ID:
Error: 403 Forbidden
The API key does not have permission to access this resource.
Request ID: a1b2c3d4
The request ID is the bridge between the user and the operations team. "It gave me a 403, request ID a1b2c3d4" is a complete bug report. The on-call engineer greps the server logs for a1b2c3d4, finds the full request context (authenticated user, requested resource, policy that denied access), and resolves the issue -- without asking the user to reproduce it, enable verbose mode, or paste terminal output.
The invocation ID doesn't appear in normal error output -- it's an internal correlation key for log analysis, not a user-facing artifact. If syslog is enabled, the invocation ID is already in the logs alongside the request ID, providing the join in both directions.
The execution wrapper
All of this comes together in the base command's execute() method, which wraps every leaf command:
sub execute {
my ($self, $opt, $args) = @_;
my $cmd = $self->_metric_name;
my $start = Time::HiRes::time();
$self->logger->info($cmd, 'start');
$self->metrics->increment("command.$cmd.calls");
eval { $self->_execute($opt, $args) };
my $elapsed_ms = int((Time::HiRes::time() - $start) * $MS_PER_SEC);
my $requests = $self->client->request_count;
my $result_count = $self->{_result_count};
$self->metrics->timing("command.$cmd.timing", $elapsed_ms);
$self->metrics->gauge("command.$cmd.results", $result_count)
if defined $result_count;
if (my $err = $@) {
$self->metrics->increment("command.$cmd.errors");
$self->logger->error($cmd, $err);
die $err;
}
$self->logger->info($cmd, sprintf 'done (%dms, %s results, %d requests)',
$elapsed_ms, $result_count // 'n/a', $requests);
}
Leaf commands implement _execute() and don't think about observability at all. They call $self->client->get(...), render results, and return. The wrapper handles timing, logging, metrics, and error reporting. This is the single place where the observability contract is enforced -- no leaf command can accidentally skip it.
Design principles
A few principles that guided these choices:
Zero cost when off. Logging and metrics are lazy-initialised. If you never enable syslog or configure StatsD, the modules aren't even loaded.
Instrument the framework, not the features. Leaf commands don't contain observability code. The base command wrapper and HTTP client handle everything. New commands get full instrumentation for free.
Correlate by default. The invocation ID requires no opt-in. Every request carries it. The server just has to log it.
Separate concerns by audience. Verbose mode is for the person at the terminal. Syslog is for the person investigating after the fact. Metrics are for the person watching trends. Don't conflate them.
Don't build what you can plug in. Full HTTP tracing via
LWP::ConsoleLoggeris better than anything we'd build ourselves. Keep verbose mode lean and let the specialist tool handle the rest.
Testing observability
Instrumentation code is easy to write and easy to break silently. If nobody notices that the invocation ID stopped appearing in syslog, it might be months before an incident reveals the gap. A few testing strategies:
-
Unit test the logger's formatting. The
_emitmethod returns the formatted message even when syslog is disabled. Assert that the invocation ID, context, and detail appear in the expected format. -
Unit test metric emissions. Mock the StatsD client and assert that
command.<cmd>.callsis incremented,command.<cmd>.timingreceives a value, andcommand.<cmd>.errorsfires on exception. These are contract tests -- they verify that the execution wrapper keeps its promises. -
Assert the invocation ID propagates. Mock the HTTP client and verify that outgoing requests carry the
X-Invocation-Idheader with the same value the logger is using. -
Integration test the full lifecycle. Run a command against a mocked API, capture STDERR with
--verbose, and assert the-->/<--lines appear with the expected method, URL, and status.
The "always format, conditionally emit" pattern helps here: the logger exercises all formatting code paths in every test run, even when syslog isn't available in the test environment.
Tracing an incident: a walkthrough
Here's how the instrumentation plays out during a real debugging scenario. This walkthrough exercises every layer described above: error output with a request ID, the metrics dashboard, syslog correlation, and two-way ID join.
A user reports: "mycli device list is failing intermittently." They include the error message:
Error: 503 Service Unavailable
The API is temporarily unable to handle the request.
Request ID: e4f5a6b7
Step 1: Find the server side. The on-call engineer greps the API logs for e4f5a6b7 and finds the request hit a backend that was in the middle of a deployment. The 503 was a transient error from a rolling restart.
Step 2: Assess the blast radius. But is it just this one user? The engineer checks the CLI dashboard: mycli.http.status.503 shows a spike over the last 20 minutes, coinciding with the deployment window. It's not one user -- it's everyone hitting that backend.
Step 3: Find the CLI side. The server log for e4f5a6b7 also contains the X-Invocation-Id: c8d9e0f1. Grepping the centralised CLI logs for c8d9e0f1 shows the full client-side context: which command was run, which user ran it, what arguments were passed, and that the request took 12 seconds before returning 503 (suggesting the backend was hanging, not failing fast).
Step 4: Verify the fix. After the deployment completes, the 503 counter drops to zero. The engineer confirms on the dashboard that error rates are back to baseline across all commands.
Total debugging time: minutes. Without instrumentation, this would have been a ticket saying "it's broken sometimes" followed by back-and-forth to reproduce, enable verbose mode, and collect output.
Summary
+-------------------+ X-Invocation-Id +-------------------+
| mycli |-----------------------| API |
| | X-Request-Id | |
| - syslog [id] |<----------------------| - access log [id] |
| - StatsD metrics | | - request trace |
| - verbose STDERR | | |
+-------------------+ +-------------------+
| |
v v
+-------------------+ +-------------------+
| Centralised logs |<--- grep by ID ------>| Centralised logs |
| Metrics dashboard | | APM / tracing |
+-------------------+ +-------------------+
Key takeaways:
- Your CLI is part of the distributed system. If it talks to an API, it's a participant in the request path -- treat it like a service, not a script.
- A correlation ID is the single most valuable thing you can add. One random string, sent as an HTTP header, ties client logs to server logs. Everything else builds on this.
- Separate layers by audience. Verbose mode for the developer at the terminal, structured logs for the on-call engineer after the fact, metrics for dashboards and alerting. Same data, different consumers, different lifetimes.
- Instrument the framework, not the features. A single execution wrapper gives every command logging, metrics, and error reporting for free. Leaf commands shouldn't contain observability code.
- The server needs to participate. Log the client's invocation ID, return your own request ID. Without this, correlation is one-sided.
- Log everything except secrets and personal data. Mask credentials, never log request bodies, and keep logging always on -- the time you need debug detail is the time you can't reproduce the issue.
- Start simple, keep the door open. Wrap your logging backend so the rest of the codebase never touches it directly. Start with whatever works for your deployment targets today -- Sys::Syslog, Fluent::Logger, a file. When your infrastructure is ready for OpenTelemetry or wide events (see Appendix A), the swap is localised.
The investment is small: a correlation ID, a handful of counters, and a logging lifecycle. The return is that your CLI becomes a first-class citizen in your operational tooling rather than a blind spot.
References
- LWP::ConsoleLogger::Everywhere -- drop-in full HTTP tracing for any LWP-based client
- NO_COLOR -- convention for suppressing colour output, relevant to verbose/debug output formatting
- OpenTelemetry -- industry-standard observability framework; Perl SDK on CPAN
- StatsD -- the metrics aggregation protocol used for CLI instrumentation
-
Shipping a Perl CLI as a single file with App::FatPacker -- companion post on building and distributing
mycli
Getting started
If you want to add observability to an existing CLI tool, here's a practical order of operations. Each step is independently useful -- you don't need to do all five before any of them pay off.
-
Generate a random invocation ID at startup. Eight hex characters is enough. Send it as an
X-Invocation-Idheader on every HTTP request. This single change makes every future debugging session easier. -
Set
User-Agentto<tool>/<version>. Trivial, and it lets the server side filter by CLI version without any custom header support. -
Log three lifecycle events. Startup (command line, environment, config source), each HTTP request/response (method, URL, status, timing), and shutdown (duration, result count). Even logging to STDERR behind a
--debugflag is better than nothing. -
Emit one counter per command invocation. If you have StatsD or a metrics collector,
mycli.command.<cmd>.callsis the single most useful metric -- it tells you what people are actually using. If you don't have a metrics pipeline, a cheap alternative is to emitkey=valuepairs in your log lines (e.g.command=device_list duration_ms=387 status=ok) -- most log aggregation tools, including Grafana itself, can extract fields from these lines and build charts and dashboards without a separate metrics stack. - Wrap your command entry point. Move timing, logging, and metric emission into a single wrapper around leaf command execution. New commands get instrumentation for free, and no leaf command can accidentally skip it.
Appendix A: Wide events
Our implementation uses separate syslog lines for each lifecycle phase (startup, HTTP, shutdown) and separate StatsD counters for aggregation. This works, but it means correlating data across multiple log lines at query time -- you need the invocation ID to join them together.
An increasingly popular alternative is the wide event (or what Stripe called a canonical log line in 2019): a single, information-dense structured record emitted once per unit of work, containing every attribute you collected along the way. Instead of five syslog lines and ten StatsD counters, you emit one event with fields like command=device_list duration_ms=387 results=24 http_requests=2 http_status=200 auth_source=file output_format=table cache_hits=3.
The advantages are significant:
- Faster queries -- all the data is colocated in one record. No joins, no correlation by ID.
- Ad hoc analysis -- during an incident you can group by any combination of fields without having pre-defined a metric for it.
- Simpler pipeline -- one event replaces multiple log lines and multiple metric emissions. Less code, fewer failure modes.
We didn't take this approach because our logging infrastructure is syslog-based and doesn't support high-cardinality structured queries. If you have access to a columnar store (Honeycomb, ClickHouse, a data warehouse), wide events are the stronger choice. The execution wrapper already collects all the data in one place -- the change would be emitting it as a single structured record instead of spreading it across syslog and StatsD.
For more on wide events, see A Practitioner's Guide to Wide Events and All You Need Is Wide Events, Not Metrics.
Appendix B: Why Sys::Syslog and not a logging framework?
Perl has several mature logging frameworks -- Log::Any, Log::Dispatch, Log::Log4perl -- any of which would be a fine choice here. We went with Sys::Syslog directly. This is an opinionated trade-off worth explaining.
What Sys::Syslog gives you
Syslog is a solved problem on servers and jumpboxes. The local syslog daemon (rsyslog, syslog-ng, journald) handles buffering, rotation, compression, and forwarding to a central log aggregator. The CLI doesn't need to know where the logs go, how to authenticate to a remote endpoint, or what to do when the network is down. It calls syslog(), the daemon takes it from there. This is a clean separation of concerns: the application produces structured messages, the infrastructure handles transmission.
There are no extra dependencies beyond core Perl. No configuration files, no adapter registration, no output plugin selection. The logger module is ~50 lines. For a fatpacked binary where every dependency has a cost, this matters.
What a framework would give you
A framework like Log::Any or Log::Dispatch provides output abstraction: you write $log->info(...) and configure the destination at deployment time -- syslog, a file, STDERR, a network endpoint, or multiple at once. The application code doesn't change when the destination does. This is a genuine advantage when the tool runs in environments with different logging infrastructure, or when libraries you depend on already use Log::Any.
Where the trade-off bites
The opinionated choice of Sys::Syslog works well when every target machine runs a syslog daemon. It falls apart on developer laptops and desktops.
macOS ships with a syslog-compatible interface via Apple System Log, but the log viewer has moved to Console.app and the unified logging system. Messages from syslog() end up in a different place than most macOS users expect, and the retention policy may discard them quickly. On Windows, there is no syslog daemon at all.
You have two choices here:
Accept the gap. Detect the platform at startup and disable syslog on macOS and Windows. The CLI still has --verbose for interactive debugging, and StatsD metrics still flow if a collector is configured. You lose durable logging on developer machines, but you avoid adding complexity to the CLI itself. This is the approach we took -- the primary deployment targets are Linux servers and jumpboxes where syslog is reliable.
Solve logging everywhere. Use a framework like Log::Dispatch with pluggable outputs: syslog on Linux, a file on macOS, a network endpoint everywhere. This means the CLI now owns the full logging pipeline: transport selection, buffering when the destination is unavailable, possibly TLS for log data in transit, possibly client-side authentication to a log aggregator. Each of these is individually tractable, but collectively they add configuration surface, failure modes, and dependencies that the syslog approach avoids entirely.
There is a middle ground: In an organization with tight control of staff laptops and desktops (as is increasingly common), solving the logging problems in the CLI or having a local logging daemon is very feasible.
Another opinionated choice: Fluent::Logger
If your infrastructure runs Fluentd or Fluent Bit, Fluent::Logger is worth considering as an equally opinionated alternative to Sys::Syslog. It sends structured events directly to a Fluent collector over a local socket or TCP, which then handles routing, buffering, and delivery to whatever backend you use (Elasticsearch, S3, a data warehouse). Like Sys::Syslog, it delegates transport to purpose-built infrastructure. Unlike syslog, the events are natively structured -- key-value pairs rather than format strings -- which makes the path to wide events shorter.
The advantage of making an opinionated backend choice -- whether that's Sys::Syslog, Fluent::Logger, or something else entirely -- is that it removes abstraction layers that aren't adding value. If you know where your logs go, a framework like Log::Any is indirection without a benefit. You pay for adapter registration, output plugin configuration, and an extra dependency, but you only ever use one backend. An abstraction earns its keep when requirements are genuinely uncertain; when they're known, it's just ceremony.
The elephant in the room: OpenTelemetry
Of course, the industry is converging on OpenTelemetry as the standard answer to all of the above. Perl has solid support via the OpenTelemetry distribution on CPAN. If your organisation already runs an OTel collector, plumbing it into your CLI from the start is the right long-term bet.
Keeping the door open
The important thing is that the rest of the codebase never touches Sys::Syslog directly. Every module calls $self->logger->info(...), ->error(...), or ->debug(...). The actual syslog calls are isolated to two private methods in the logger class: _emit (which formats and transmits) and _open_syslog (which calls openlog). Swapping Sys::Syslog for Log::Dispatch, Fluent::Logger, or an OpenTelemetry log bridge would mean changing those two methods and nothing else.
This is the pragmatic middle path: start with the simplest backend that works for your deployment targets, but wrap it so the choice is easy to revisit. For a server-side CLI deployed to a controlled fleet, Sys::Syslog is a sensible default -- zero-config, zero-dependency, and delegates the hard problems to purpose-built infrastructure. If the tool later needs to run on developer laptops as a primary deployment target, the logging framework swap is a localised change rather than a rewrite.
Discussion
Have you plumbed observability into a CLI tool? I'd love to hear what worked and what didn't -- whether you went with OpenTelemetry traces, wide events from day one, or bolted logging on after the fact. What was the moment that made you invest in CLI instrumentation? Was it an incident that was hard to trace, a question about adoption you couldn't answer, or just good hygiene? And if you haven't done it yet -- what's holding you back?
A Side note: I'm currently on look out for a new contract or permanent opportunity. If you know of any relevant openings, I'd appreciate hearing from you. I am a proficient front-end developer also - email@lnation.org
If you've spent any time debugging Perl, you've used Data::Dumper. It's one of those modules that ships with every Perl installation, gets loaded into every debugging session, and does its job without complaint. But it also hasn't changed much in a long time. The output is monochrome, the internals are pure Perl, and code references remain opaque sub { "DUMMY" } blobs unless you enable Deparse and even then you do not get the response one would expect.
Loo is a new take on the same problem: dump Perl data structures to readable output, but do it in C, with colour, and with a built-in code deparser that walks the op tree directly.
Why Another Dumper?
Three reasons drove the creation of Loo:
Speed. Loo is implemented entirely in XS. The dump logic, string escaping, colour code generation, and op tree walking all happen in C. For large or deeply nested structures, this matters.
Colour out of the box. When your terminal supports it, Loo's output is coloured by default. Strings, numbers, hash keys, braces, blessed class names, regex patterns, and code all get distinct colours that can be customised. There's no separate module to install, no formatter to configure. It auto-detects terminal capability, respects $ENV{NO_COLOR}, and falls back to plain text when appropriate.
Code deparsing without B::Deparse. When you pass a code reference to Loo with deparsing enabled, it walks Perl's internal op tree in C and reconstructs the source. This is not a wrapper around B::Deparse — it's a standalone implementation that lives in the same XS compilation unit as the introspecter itself.
Getting Started
Loo provides a functional interface that mirrors Data::Dumper closely enough that switching is straightforward:
use Loo qw(Dump cDump ncDump dDump);
# Colour auto-detected based on terminal
print Dump({ name => 'Perl', version => 5.40 });
# Force colour on (useful when piping to a pager that supports ANSI)
print cDump([1, 2, 3]);
# Force colour off (useful for logging or file output)
print ncDump(\%ENV);
# Dump with code deparsing enabled
print dDump(sub { my ($x) = @_; return $x * 2 });
The OO interface supports method chaining and gives you access to the full set of configuration options:
my $loo = Loo->new([{ key => 'value' }], ['data']);
$loo->Indent(1)->Sortkeys(1)->Theme('monokai');
print $loo->Dump;
Data::Dumper Compatibility
Loo implements the same accessor interface as Data::Dumper: Indent, Terse, Varname, Useqq, Quotekeys, Sortkeys, Maxdepth, Maxrecurse, Purity, Deepcopy, Pair, Freezer, Toaster, Bless, Deparse, Sparseseen, and Pad. If you have existing code that configures a Data::Dumper object, the same method calls work on a Loo object and is faster.
Beyond that, Loo adds a few options that Data::Dumper doesn't have:
-
Indentwidth($n)— control the number of characters per indent level (default 2) -
Usetabs($bool)— indent with tabs instead of spaces -
Trailingcomma($bool)— add trailing commas after the last element in arrays and hashes
Colour Customisation
Loo ships with four built-in themes: default, light (optimised for light terminal backgrounds), monokai, and none.
For fine-grained control, the Colour method accepts a hash specifying foreground and background colours for 17 distinct syntax elements:
$loo->Colour({
string_fg => 'green',
key_fg => 'magenta',
number_fg => 'cyan',
brace_fg => 'bright_black',
undef_fg => 'red',
});
The colorable elements cover every visual component of the output: string, number, key, brace, bracket, paren, arrow, comma, undef, blessed, regex, code, variable, quote, keyword, operator, and comment.
Colour codes are pre-computed once at configuration time, so there's no per-character overhead during the dump.
The Deparser
The most unusual feature of Loo is its built-in code deparser. When you enable deparsing, Loo walks the Perl op tree directly in C — the same internal structure that the Perl interpreter executes — and reconstructs Perl source code from it.
my $loo = Loo->new([\&Some::function]);
$loo->Deparse(1);
print $loo->Dump;
This means code references in your data structures are no longer black boxes. You see the actual code that will be run from the code. NOTE: It may not be identical to the code written as some postfix operations are lost as I am deparsing the compiled op tree itself.
Getting this to work across Perl versions was one of the harder parts of the project. The op tree structure has changed across Perl releases — OP_PADSV_STORE appeared in 5.38, OP_EMPTYAVHV landed in 5.36 as an enum rather than a #define, and PADNAME typedefs shifted between 5.20 and 5.22. Loo handles all of this with version-conditional compilation, supporting Perl 5.10 through to the latest releases.
Reusable C Headers
Loo's XS code is organised into modular C headers:
-
loo.h— core definitions, themes, colour element names -
loo_colour.h— ANSI colour code generation -
loo_escape.h— string escaping -
loo_dump.h— recursive data structure dumping -
loo_deparse.h— op tree walking and code reconstruction
These headers are installed alongside the Perl module, and Loo->include_dir returns their path. This means other XS modules can reuse Loo's colour or escaping logic without duplicating the C code.
Auto-Detection Done Right
Loo follows the no-color.org convention and layers several checks to decide whether to emit ANSI codes:
- If
$Loo::USE_COLOURis set, that takes precedence - If
$ENV{NO_COLOR}is set, colour is disabled - If
$ENV{TERM}is"dumb", colour is disabled - If
STDOUTis not a terminal, colour is disabled - Otherwise, colour is enabled
This means Dump() does the right thing whether you're debugging interactively, piping to a file, or running in CI. And cDump() / ncDump() are there when you need to override.
Installation
Loo is available on CPAN:
cpanm Loo
It requires Perl 5.008003 or later and a C compiler (which you already have if you've ever installed an XS module).
Closing Thoughts
Data::Dumper is a workhorse that has served the Perl community well for decades. Loo isn't trying to replace it everywhere — but if you spend a lot of time reading dump output, colour and deparsing make a real difference. And if you're dumping large structures in production logging or tooling, the XS implementation gives you that output faster.
Give it a look. Your eyes may thank you.
Perl extensions don't necessarily need a long form function The previous commit creates a function for any macro flagged 'mp' that is visible outside the core, so that name collisions for the short form macro name can easily be solved. This isn't needed for perl core use, as we will fix any collisions that come up before shipping the product. But the same is true of extensions to core. Change so that we extend the exception to include those.
embed.pl: Create long name functions for mp-flagged macros This allows XS code to #undef a short name macro, and still have access to its functionality via a Perl_foo function. This would go a long way to allowing XS code to cope with namespace collisions. Prior to this commit, macros without a thread context parameter did not have function fallbacks. The current catch is that all such macros must be flagged as 'mp'. It's trivial to add the 'p' flag to any such macro we want. Or maybe there could be a Configure option to add it to all public macros. But that is future work. This lays the foundation for it. One gotcha it took me a while to realize. Suppose there's a name space collision with macro A; so the XS code undefs our 'A' in favor of its own. But if another of our macros, say 'B', calls 'A', it will get the XS version. Hopefully there's a parameter mismatch and the code doesn't compile; and the solution would be to #undef 'B' as well.
embed.pl: Add mnemonics for visibility flags This creates some more mnemonics so that, for example, 'AC' is repeated everywhere for that class of visibility
Cast away const in call to strstr()
A future commit will, for the first time, call strstr with a
const char *
'haystack parameter. On my Linux box that doesn't compile because, in
spite of the man page, that parameter is declared merely 'char *'.
Looking at string.h, it appears that it can be const under the right
circumstances.
We're avid Perl programmers but we have been really wanting to get into Haskell or Erlang or something similar, though we don't know where to start. Any languages you guys recommend? if so, send some good tutorials [or give us a rundown yourself :>]
We must add that we're looking for pure languages, so lisps will largely not be an option unless they do end up being pure or close.
I have been writing a Crypt:CBC script but although the encrypt an decrypt functions are nearly identical it has been throwing up an error(the decrypt one) that it needs a key. However if I add a print statement it has the key right. I will add stuff like file eraser function when I am past this stage, however I would like advice from a security person about how safe it is what I am doing.
#!/usr/bin/perl use strict; use warnings; use Crypt::CBC; sub write_file { my $fh;#file handle my $data = $_[1]; open($fh, '>' . $_[0]) or die $!; print $fh $data; } sub read_file { my $fh;#file handle my $collected; open($fh, '<' . $_[0]) or die $!; while(<$fh>) { $collected .= $_; } close($fh); return $collected; } sub encrypt { my $filename = $_[0]; my $key = $_[1]; my $cypher = Crypt::CBC->new( -pass => $key, -cipher => 'Cipher::AES' ); my $input = read_file($filename); my $cyphertext = $cypher->encrypt($input); write_file($filename . ".enc", $cyphertext) or die; } sub decrypt { my $filename = $_[0]; my $key = $_[1]; print "$filename $key"; my $cypher = Crypt::CBC->new( -pass => $key, -cipher => 'Cipher::AES' ); my $input = read_file($filename); my $plaintext = $cypher.decrypt($input); print $plaintext; } sub main { print "Enter file name "; chomp(my $filename = <STDIN>); print "Enter key(at least 8 bytes):"; chomp(my $key = <STDIN>); if(@ARGV ne 1) { die("incorrect mode"); } if($ARGV[0] eq "-e") { encrypt($filename, $key); print "outputted to ${filename}.enc"; } if($ARGV[0] eq "-d") { decrypt("${filename}.enc", $key); print "outputted to ${filename}"; } } main(); [link] [comments]
Finally - GTC 2.0, an all in one color library, is released ! This post will not be rehash (of) the (very) fine manual, but give you a sense what you can achieve with this software and why it is better than any other lib of that sort on CPAN. If you like to look under the hood of GTC, please read my last post.
When I released GTC 1.0 in 2022, it had 4 major features:
1. computing color gradients, between 2 colors in RGB
2. computing complementary colors in HSL
3. translating color names from internal constant set into RGB values
4. converting RGB to HSL and back
The HSL support allowed to add and subtract lightness and saturation (make colors darker, or lighter make them more pale or colorful). And by mentioning a very rudimentary distance computation and color blending we reached the bottom of the barrel.
GTC 2.0 expanded in all areas by a manyfold. Going from 2 (RGB and HSL) to now 17 color spaces (soon ~25) has a large effect. Not only being able to read and write color values from 17 spaces makes GTC much more useful, but also computing a gradient and measuring the distance in different spaces gives you options. Some spaces are optimized for human perception (OKLAB or CIELUV) other you would choose for technical necessity. Especially OKLAB and OKHCL are the hype (for a while) and GTC is the only module in CPAN supporting it. Almost all methods (beside ''name'' and ''complement'') let you choose the color space, the method will be computed in. And in is always the named argument you do it with: " in => 'RGB' " just reads natural.
And just to complete bullet point 1: gradient can now take a series of colors and a tilt factor as arguments to produce very expressive and custom gradients. The tilt factor works also for complements. If you use special tilt values from the documentation you can get also split complementary colors as needed by designers but the nice thing about GTC is, you could choose any other value to get exactly what you are looking for. Many libraries have one method for triadic colors one for quadratic. To get them in GTC you just set the steps argument to 3 or 4 but you can choose again also any other number. Complements can be tilted in all 3 Dimensions.
Beside gradient and complement came also a new color set method: cluster. It is for computing a bunch of colors and are centered around a given one, but have a given, minimal dissimilarity. New is also invert, often the fastest way to get a fitting fore/background color, if the original color was not too bland.
The internal color name constants are still the same, but this feature block got 2 expansions. For one you can now ask for the closest color name (closest_name) and select from which standard this name has to come from (e.g. CSS). These Constants are provided by the Graphics::ColorNames::* modules and you can use them also anywhere a color is expected as input. The nice green from X11 standard would be just:'X:forestgreen'.
But since CSS + X11 + Pantone report colors are already included 'forestgreen' works too.
There are many more features that will come the next week, the most requested is probably simulation for color impaired vision, more spaces, a gamut checker is already implement, gamma correction, will be implemented this week and much much more. Just give it a try and please send bug reports and feature requests.
PS. Yes I also heald a lightning talk about GTC in Berlin last week.
PPS. 2.02 is out with gamma correction and correct complex color inversions in any space.
Modern software distribution has converged on a simple idea: ship a self-contained artifact. Whether that means a statically linked binary, a container image, or a snap/flatpak, the benefits are the same -- dependency management is solved at build time, platform differences are absorbed, and upgrades and rollbacks reduce to swapping a single file.
Perl's App::FatPacker applies the same principle to Perl scripts. It bundles every pure-Perl dependency into a single executable file. No cpanm, no local::lib, no Makefile on the target -- just copy the file and run it. The technique is well-established -- cpm (the CPAN installer we use in the build) is itself distributed as a fatpacked binary.
The distribution pipeline looks like this:
Code repo --> CI --> fatpack --> deploy --> laptops / jumpboxes / servers
|
single file,
no dependencies
This post walks through how we fatpacked an internal CLI we'll call mycli, a ~90-module Perl app, into a single file. The approach generalises to any App::Cmd-based tool.
A good practice for internal tools is to provide all three interfaces: a web frontend, an API, and a CLI. The web frontend is the easiest to discover; the API enables automation and integration; the CLI is the fastest path for engineers who live in a terminal. FatPacker makes the CLI trivially deployable.
mycli is a thin client -- it talks to an internal REST API over HTTPS and renders the response locally. There is no local state beyond a config file and environment variables. You could build an equivalent tool against a binary RPC protocol such as gRPC or Thrift -- the fatpacking approach is the same.
+--------------------+ +-------------------+
| Workstation | HTTPS | Server |
| | | |
| $ mycli resource |---------->| REST API ---+ |
| list ... |<----------| (JSON) DB | |
+--------------------+ +-------------------+
Despite being a thin client, mycli is not trivial. It includes:
- Pluggable output renderers (table, JSON, YAML, CSV, plain text)
- Colour output with
NO_COLORsupport - Automatic pager integration (
less -RFX) and pipe/TTY detection - Activity spinner
- Multi-format ID resolution (numeric, UUID prefix, name lookup)
- Command aliases (
ls/list,get/show) - Config file discovery chain (env var, XDG path, dotfile)
- Timezone-aware timestamp rendering
- Structured syslog logging with per-invocation correlation IDs
- StatsD metrics instrumentation
- HTTP debugging hooks
All of this fatpacks cleanly because each feature is backed by pure-Perl modules.
This makes it an ideal fatpack candidate: the only XS dependency is Net::SSLeay for TLS, which is typically already present on the target system. Everything else is pure Perl.
Why FatPacker over PAR::Packer?
The other well-known option for single-file Perl distribution is PAR::Packer. PAR bundles everything -- including XS modules and even the perl interpreter itself -- into a self-extracting archive. At runtime it unpacks to a temp directory and executes from there.
FatPacker takes a different approach: modules are inlined as strings inside the script and served via a custom @INC hook. There is no extraction step, no temp directory, and no architecture coupling. The trade-off is that FatPacker only handles pure Perl -- XS modules must already be on the target.
For a thin REST client where the only XS dependency is Net::SSLeay, FatPacker wins on simplicity: the output is a plain Perl script, it starts instantly, and it runs on any architecture with a compatible perl. PAR is the better choice when you need to bundle XS-heavy dependencies or ship a binary to machines without Perl at all.
What fatpacking does
FatPacker prepends a BEGIN block to your script containing every dependency as a string literal, keyed by module path. A custom @INC hook serves these strings to require instead of reading from disk. The original script is appended unchanged.
$ wc -l bin/mycli mycli-packed
13 bin/mycli
48721 mycli-packed
That ~49k line file runs identically to the original, on any machine with Perl 5.24+.
The problem with naive fatpacking
The standard FatPacker workflow is:
fatpack trace bin/mycli
fatpack packlists-for $(cat fatpacker.trace) > packlists
fatpack tree $(cat packlists)
fatpack file bin/mycli > mycli-packed
This breaks for non-trivial apps because fatpack trace uses compile-time analysis (B::minus_c). It misses anything loaded at runtime via require:
-
App::Cmddiscovers commands viaModule::Pluggableat runtime -
Text::ANSITableloads border styles and colour themes dynamically -
LWP::UserAgentloads protocol handlers on first request -
YAML::Anyprobes for available backends at runtime
If the trace misses a module, the packed binary dies with Can't locate Foo/Bar.pm in @INC at the worst possible moment.
The solution: a custom trace helper
Instead of relying on fatpack trace, we wrote a helper script that requires every module the app could ever load, then dumps %INC at exit. This captures the complete runtime dependency tree.
#!/usr/bin/env perl
# bin/trace-helper -- not shipped, build-time only
use strict;
use warnings;
use lib 'lib';
# Modules loaded lazily that fatpack misses
require Data::Unixish::Apply;
require Digest::SHA;
require HTTP::Request;
require LWP::UserAgent;
require String::RewritePrefix;
# Exercise objects to trigger deep runtime loads
{
require Text::ANSITable;
my $t = Text::ANSITable->new(use_color => 1, use_utf8 => 1);
$t->border_style('UTF8::SingleLineBold');
$t->color_theme('Text::ANSITable::Standard::NoGradation');
$t->columns(['a']);
$t->add_row(['1']);
$t->draw; # forces all rendering deps to load
}
# Every App::Cmd leaf command
require MyCLI::App;
require MyCLI::App::Command::device::list;
require MyCLI::App::Command::device::get;
# ... all 80+ command modules ...
END {
open my $fh, '>', 'fatpacker.trace' or die $!;
for my $inc (sort keys %INC) {
next unless defined $INC{$inc};
next if $inc =~ m{\AMyCLI/}; # our own modules come from lib/
print $fh "$inc\n";
}
}
Key points:
-
Don't call
->run--App::Cmdsubdispatch will die on duplicate command names across namespaces. Justrequireevery leaf. -
Exercise both code paths --
Text::ANSITableloads different modules for colour vs plain, UTF-8 vs ASCII. Instantiate both. -
Exclude your own namespace -- FatPacker embeds modules from
fatlib/; yourlib/modules are embedded separately. Including them in the trace causes duplicates.
Forcing pure-Perl backends
FatPacker can only bundle pure Perl. Many popular modules ship dual XS/pure-Perl backends and prefer XS at runtime. If XS is available during the trace, the pure-Perl fallback won't appear in %INC and won't get bundled.
Force pure-Perl mode during the build:
# In the fatpack build script
export B_HOOKS_ENDOFSCOPE_IMPLEMENTATION=PP
export LIST_MOREUTILS_PP=1
export MOO_XS_DISABLE=1
export PACKAGE_STASH_IMPLEMENTATION=PP
export PARAMS_VALIDATE_IMPLEMENTATION=PP
export PERL_JSON_BACKEND=JSON::PP
export PUREPERL_ONLY=1
PUREPERL_ONLY=1 is a convention respected by many dual XS/PP distributions at install time, preventing XS compilation entirely. The per-module variables above cover modules that don't check PUREPERL_ONLY.
Combine this with --pp at install time to avoid pulling in XS at all:
cpm install -L local --target-perl 5.24.0 --pp
Pinning the target Perl version
The --target-perl flag to cpm is critical and easy to overlook. Without it, cpm resolves dependency versions against your build machine's Perl. If you're building on 5.38 but deploying to a jumpbox running 5.24, you'll silently install module versions that use postfix dereferencing, subroutine signatures, or other features that don't exist on the target.
The packed binary will fail at runtime with a syntax error -- far from the build where you could catch it.
This tells cpm's resolver to only consider module versions whose metadata declares compatibility with 5.24.0. Combined with perl -c as a post-install sanity check, this catches version mismatches before the slow trace step.
The complete build script
Here is the full pipeline, wrapped in a shell script. It supports incremental builds (reuses local/ and trace cache) and --clean for full rebuilds.
#!/bin/sh
set -e
CLEAN=0
[ "$1" = "--clean" ] && CLEAN=1
# 0. Prerequisites
for cmd in cpm fatpack perl; do
command -v "$cmd" >/dev/null 2>&1 || {
echo "Error: '$cmd' is not installed." >&2; exit 1
}
done
export PERL_USE_UNSAFE_INC=1 # Perl 5.26+ removed . from @INC
# 1. Install deps (pure-perl only)
if [ "$CLEAN" = 1 ] || [ ! -d local/ ]; then
rm -rf local/
cpm install -L local --target-perl 5.24.0 --pp
fi
# 2. Set up paths
export PERL5LIB=$PWD/lib:$PWD/local/lib/perl5
export PATH=$PWD/local/bin:$PATH
# 3. Force pure-perl backends
export B_HOOKS_ENDOFSCOPE_IMPLEMENTATION=PP
export LIST_MOREUTILS_PP=1
export MOO_XS_DISABLE=1
export PACKAGE_STASH_IMPLEMENTATION=PP
export PARAMS_VALIDATE_IMPLEMENTATION=PP
export PERL_JSON_BACKEND=JSON::PP
export PUREPERL_ONLY=1
# 4. Verify compilation
perl -c bin/mycli || exit 1
# 5. Trace
if [ "$CLEAN" = 1 ] || [ ! -f fatpacker.trace ]; then
perl -Ilib bin/trace-helper
echo "Trace: $(wc -l < fatpacker.trace) modules"
fi
# 6. Pack
fatpack packlists-for $(cat fatpacker.trace) > packlists
fatpack tree $(cat packlists)
# Strip arch-specific dirs and non-essential files
rm -rf fatlib/$(perl -MConfig -e 'print $Config{archname}')
find fatlib -name '*.pod' -delete
find fatlib -name '*.pl' -delete
# Bundle
fatpack file bin/mycli > mycli-packed
chmod +x mycli-packed
echo "Built mycli-packed ($(wc -c < mycli-packed) bytes)"
Step by step: what happens
-
Prerequisites -- verify
cpm,fatpack, andperlare available -
Install --
cpminstalls all dependencies intolocal/as pure Perl, targeting 5.24.0 -
Paths and env -- set
PERL5LIB,PATH, and pure-Perl overrides -
Compile check --
perl -c bin/myclicatches syntax errors before the slow trace step -
Trace -- the helper script loads everything and writes the module
list to
fatpacker.trace -
Packlists and tree --
fatpack packlists-formaps module names to installed packlist files;fatpack treecopies the.pmfiles intofatlib/ -
Clean up -- remove
.pod,.pl, and arch-specific directories to reduce size -
Bundle --
fatpack fileinlines everything fromfatlib/into the script
Makefile integration
For teams that prefer make, add targets that delegate to the shell script:
# In Makefile.PL, inside MY::postamble
.PHONY: pack clean_fatpack
pack:
./fatpack
clean :: clean_fatpack
clean_fatpack:
rm -rf fatlib fatpacker.trace packlists mycli-packed local/
Then building is just:
perl Makefile.PL
make pack
Adding a new dependency
When someone adds use Some::New::Module to the codebase, the fatpacked binary will break with Can't locate Some/New/Module.pm in @INC unless the build picks it up. The workflow is:
- Add the module to
cpanfile - If the module is loaded at runtime (via
requireor a plugin mechanism), add arequire Some::New::Moduleline to the trace helper - Rebuild with
--clean
./fatpack --clean
The --clean flag is important. Without it, the build reuses the cached local/ directory and fatpacker.trace from the previous run. The new module won't appear in either, and the packed binary will silently ship without it.
A good safeguard is to run perl -c mycli-packed after every build -- this catches missing modules at build time rather than in production.
What about perlstrip?
Perl::Strip can reduce the packed file by ~30% by removing comments, POD, and whitespace from bundled modules. We deliberately left it off. For an internal tool, the size saving (~1.7 MB) is not worth the trade-off: stripped files are harder to debug with stack traces, and perlstrip has a known issue corrupting files that contain use utf8.
Gotchas and tips
XS modules cannot be fatpacked
Modules with C extensions (.so/.xs) cannot be inlined. They must already exist on the target system. If your app has many XS dependencies, consider PAR::Packer instead (see above).
PERL_USE_UNSAFE_INC
Perl 5.26 removed . from @INC. Some older CPAN modules assume it's there during install or test. Set PERL_USE_UNSAFE_INC=1 during the build to avoid spurious failures. This only affects the build environment, not the packed binary.
Pinto / private CPAN
If your organisation runs a private CPAN mirror (Pinto, OrePAN2, etc.), point cpm at it with --resolver:
cpm install -L local --resolver 02packages,$PINTO_REPO --pp
Docker builds
FatPacker and Docker are complementary. Use Docker for the build environment (consistent Perl version, cpm, fatpack installed), and ship either the container image or just the packed file:
COPY mycli-packed /usr/local/bin/mycli
RUN chmod +x /usr/local/bin/mycli
Summary
The core recipe is three pieces:
- A trace helper that loads every module your app could use at runtime,
capturing the full dependency tree via
%INC -
Pure-Perl enforcement via environment variables and
cpm --pp - The standard fatpack pipeline: packlists, tree, clean up, bundle
The result is a single file you can scp to any box with Perl 5.24+ and run immediately. No CPAN, no Makefile, no containers required.
References
- App::FatPacker on CPAN
-
FatPacking Perl applications -- talk
by Andrew Rodland covering the core technique, pure-Perl enforcement, and
cpm - arodland/swr fatpack script -- a clean, minimal reference implementation of the full pipeline
-
App::cpm -- fast CPAN installer
(itself shipped as a fatpacked binary);
--target-perland--ppflags are essential for fatpack builds
Modern software distribution has converged on a simple idea: ship a self-contained artifact. Whether that means a statically linked binary, a container image, or a snap/flatpak, the benefits are the same -- dependency management is solved at build time, platform differences are absorbed, and upgrades and rollbacks reduce to swapping a single file.
Perl's App::FatPacker
applies the same principle to Perl scripts. It bundles every pure-Perl
dependency into a single executable file. No cpanm, no
local::lib, no Makefile on the target -- just copy the file
and run it. The technique is well-established -- cpm (the
CPAN installer we use in the build) is itself distributed as a fatpacked
binary.
The distribution pipeline looks like this:
Code repo --> CI --> fatpack --> deploy --> laptops / jumpboxes / servers
|
single file,
no dependencies
This post walks through how we fatpacked an internal CLI we'll call
mycli, a ~90-module Perl app, into a single file. The
approach generalises to any App::Cmd-based tool.
A good practice for internal tools is to provide all three interfaces: a web frontend, an API, and a CLI. The web frontend is the easiest to discover; the API enables automation and integration; the CLI is the fastest path for engineers who live in a terminal. FatPacker makes the CLI trivially deployable.
mycli is a thin client -- it talks to an internal REST API
over HTTPS and renders the response locally. There is no local state beyond a config
file and environment variables. You could build an equivalent tool against
a binary RPC protocol such as gRPC or Thrift -- the fatpacking approach
is the same.
+--------------------+ +-------------------+
| Workstation | HTTPS | Server |
| | | |
| $ mycli resource |---------->| REST API ---+ |
| list ... |<----------| (JSON) DB | |
+--------------------+ +-------------------+
Despite being a thin client, mycli is not trivial.
It includes:
- Pluggable output renderers (table, JSON, YAML, CSV, plain text)
- Colour output with
NO_COLORsupport - Automatic pager integration (
less -RFX) and pipe/TTY detection - Activity spinner
- Multi-format ID resolution (numeric, UUID prefix, name lookup)
- Command aliases (
ls/list,get/show) - Config file discovery chain (env var, XDG path, dotfile)
- Timezone-aware timestamp rendering
- Structured syslog logging with per-invocation correlation IDs
- StatsD metrics instrumentation
- HTTP debugging hooks
All of this fatpacks cleanly because each feature is backed by pure-Perl modules.
This makes it an ideal fatpack candidate: the only XS dependency is
Net::SSLeay for TLS, which is typically already present on
the target system. Everything else is pure Perl.
Why FatPacker over PAR::Packer?
The other well-known option for single-file Perl distribution is
PAR::Packer. PAR
bundles everything -- including XS modules and even the perl
interpreter itself -- into a self-extracting archive. At runtime it
unpacks to a temp directory and executes from there.
FatPacker takes a different approach: modules are inlined as strings
inside the script and served via a custom @INC hook. There is
no extraction step, no temp directory, and no architecture coupling. The
trade-off is that FatPacker only handles pure Perl -- XS modules must
already be on the target.
For a thin REST client where the only XS dependency is
Net::SSLeay, FatPacker wins on simplicity: the output is a
plain Perl script, it starts instantly, and it runs on any architecture
with a compatible perl. PAR is the better choice when you
need to bundle XS-heavy dependencies or ship a binary to machines without
Perl at all.
What fatpacking does
FatPacker prepends a BEGIN block to your script containing
every dependency as a string literal, keyed by module path. A custom
@INC hook serves these strings to require
instead of reading from disk. The original script is appended
unchanged.
$ wc -l bin/mycli mycli-packed
13 bin/mycli
48721 mycli-packed
That ~49k line file runs identically to the original, on any machine with Perl 5.24+.
The problem with naive fatpacking
The standard FatPacker workflow is:
$ fatpack trace bin/mycli
$ fatpack packlists-for $(cat fatpacker.trace) > packlists
$ fatpack tree $(cat packlists)
$ fatpack file bin/mycli > mycli-packed
This breaks for non-trivial apps because fatpack trace
uses compile-time analysis (B::minus_c). It misses anything
loaded at runtime via require:
App::Cmddiscovers commands viaModule::Pluggableat runtimeText::ANSITableloads border styles and colour themes dynamicallyLWP::UserAgentloads protocol handlers on first requestYAML::Anyprobes for available backends at runtime
If the trace misses a module, the packed binary dies with
Can't locate Foo/Bar.pm in @INC at the worst possible moment.
The solution: a custom trace helper
Instead of relying on fatpack trace, we wrote a helper
script that requires every module the app could ever load,
then dumps %INC at exit. This captures the complete runtime
dependency tree.
#!/usr/bin/env perl
# bin/trace-helper -- not shipped, build-time only
use strict;
use warnings;
use lib 'lib';
# Modules loaded lazily that fatpack misses
require Data::Unixish::Apply;
require Digest::SHA;
require HTTP::Request;
require LWP::UserAgent;
require String::RewritePrefix;
# Exercise objects to trigger deep runtime loads
{
require Text::ANSITable;
my $t = Text::ANSITable->new(use_color => 1, use_utf8 => 1);
$t->border_style('UTF8::SingleLineBold');
$t->color_theme('Text::ANSITable::Standard::NoGradation');
$t->columns(['a']);
$t->add_row(['1']);
$t->draw; # forces all rendering deps to load
}
# Every App::Cmd leaf command
require MyCLI::App;
require MyCLI::App::Command::device::list;
require MyCLI::App::Command::device::get;
# ... all 80+ command modules ...
END {
open my $fh, '>', 'fatpacker.trace' or die $!;
for my $inc (sort keys %INC) {
next unless defined $INC{$inc};
next if $inc =~ m{\AMyCLI/}; # our own modules come from lib/
print $fh "$inc\n";
}
}
Key points:
- Don't call
->run--App::Cmdsubdispatch will die on duplicate command names across namespaces. Justrequireevery leaf. - Exercise both code paths --
Text::ANSITableloads different modules for colour vs plain, UTF-8 vs ASCII. Instantiate both. - Exclude your own namespace -- FatPacker embeds modules
from
fatlib/; yourlib/modules are embedded separately. Including them in the trace causes duplicates.
Forcing pure-Perl backends
FatPacker can only bundle pure Perl. Many popular modules ship dual
XS/pure-Perl backends and prefer XS at runtime. If XS is available during
the trace, the pure-Perl fallback won't appear in %INC and
won't get bundled.
Force pure-Perl mode during the build:
# In the fatpack build script
export B_HOOKS_ENDOFSCOPE_IMPLEMENTATION=PP
export LIST_MOREUTILS_PP=1
export MOO_XS_DISABLE=1
export PACKAGE_STASH_IMPLEMENTATION=PP
export PARAMS_VALIDATE_IMPLEMENTATION=PP
export PERL_JSON_BACKEND=JSON::PP
export PUREPERL_ONLY=1
PUREPERL_ONLY=1 is a
convention
respected by many dual XS/PP distributions at install time, preventing XS
compilation entirely. The per-module variables above cover modules that
don't check PUREPERL_ONLY.
Combine this with --pp at install time to avoid pulling in
XS at all:
cpm install -L local --target-perl 5.24.0 --pp
Pinning the target Perl version
The --target-perl flag to cpm is critical and
easy to overlook. Without it, cpm resolves dependency versions
against your build machine's Perl. If you're building on 5.38 but deploying
to a jumpbox running 5.24, you'll silently install module versions that use
postfix dereferencing, subroutine signatures, or
other features that don't exist on the target. The packed binary will fail
at runtime with a syntax error -- far from the build where you could catch
it.
This tells cpm's resolver to only consider module versions
whose metadata declares compatibility with 5.24.0. Combined with
perl -c as a post-install sanity check, this catches
version mismatches before the slow trace step.
The complete build script
Here is the full pipeline, wrapped in a shell script. It supports
incremental builds (reuses local/ and trace cache) and
--clean for full rebuilds.
#!/bin/sh
set -e
CLEAN=0
[ "$1" = "--clean" ] && CLEAN=1
# 0. Prerequisites
for cmd in cpm fatpack perl; do
command -v "$cmd" >/dev/null 2>&1 || {
echo "Error: '$cmd' is not installed." >&2; exit 1
}
done
export PERL_USE_UNSAFE_INC=1 # Perl 5.26+ removed . from @INC
# 1. Install deps (pure-perl only)
if [ "$CLEAN" = 1 ] || [ ! -d local/ ]; then
rm -rf local/
cpm install -L local --target-perl 5.24.0 --pp
fi
# 2. Set up paths
export PERL5LIB=$PWD/lib:$PWD/local/lib/perl5
export PATH=$PWD/local/bin:$PATH
# 3. Force pure-perl backends
export B_HOOKS_ENDOFSCOPE_IMPLEMENTATION=PP
export LIST_MOREUTILS_PP=1
export MOO_XS_DISABLE=1
export PACKAGE_STASH_IMPLEMENTATION=PP
export PARAMS_VALIDATE_IMPLEMENTATION=PP
export PERL_JSON_BACKEND=JSON::PP
export PUREPERL_ONLY=1
# 4. Verify compilation
perl -c bin/mycli || exit 1
# 5. Trace
if [ "$CLEAN" = 1 ] || [ ! -f fatpacker.trace ]; then
perl -Ilib bin/trace-helper
echo "Trace: $(wc -l < fatpacker.trace) modules"
fi
# 6. Pack
fatpack packlists-for $(cat fatpacker.trace) > packlists
fatpack tree $(cat packlists)
# Strip arch-specific dirs and non-essential files
rm -rf fatlib/$(perl -MConfig -e 'print $Config{archname}')
find fatlib -name '*.pod' -delete
find fatlib -name '*.pl' -delete
# Bundle
fatpack file bin/mycli > mycli-packed
chmod +x mycli-packed
echo "Built mycli-packed ($(wc -c < mycli-packed) bytes)"
Step by step: what happens
- Prerequisites --
verify
cpm,fatpack, andperlare available - Install --
cpminstalls all dependencies intolocal/as pure Perl, targeting 5.24.0 - Paths and env --
set
PERL5LIB,PATH, and pure-Perl overrides - Compile check --
perl -c bin/myclicatches syntax errors before the slow trace step - Trace --
the helper script loads everything and writes the module list to
fatpacker.trace - Packlists and tree --
fatpack packlists-formaps module names to installed packlist files;fatpack treecopies the.pmfiles intofatlib/ - Clean up --
remove
.pod,.pl, and arch-specific directories to reduce size - Bundle --
fatpack fileinlines everything fromfatlib/into the script
Makefile integration
For teams that prefer make, add targets that delegate to the
shell script:
# In Makefile.PL, inside MY::postamble
.PHONY: pack clean_fatpack
pack:
./fatpack
clean :: clean_fatpack
clean_fatpack:
rm -rf fatlib fatpacker.trace packlists mycli-packed local/
Then building is just:
$ perl Makefile.PL
$ make pack
Adding a new dependency
When someone adds use Some::New::Module to the codebase,
the fatpacked binary will break with
Can't locate Some/New/Module.pm in @INC unless the build
picks it up. The workflow is:
- Add the module to
cpanfile - If the module is loaded at runtime (via
requireor a plugin mechanism), add arequire Some::New::Moduleline to the trace helper - Rebuild with
--clean
./fatpack --clean
The --clean flag is important. Without it, the build
reuses the cached local/ directory and
fatpacker.trace from the previous run. The new module won't
appear in either, and the packed binary will silently ship without it.
A good safeguard is to run perl -c mycli-packed after
every build -- this catches missing modules at build time rather than in
production.
What about perlstrip?
Perl::Strip can reduce the packed file by ~30% by removing comments,
POD, and whitespace from bundled modules. We deliberately left it off.
For an internal tool, the size saving (~1.7 MB) is not worth the
trade-off: stripped files are harder to debug with stack traces, and
perlstrip has a known issue corrupting files that contain
use utf8.
Gotchas and tips
XS modules cannot be fatpacked
Modules with C extensions (.so/.xs) cannot be
inlined. They must already exist on the target system. If your app has
many XS dependencies, consider PAR::Packer instead (see above).
PERL_USE_UNSAFE_INC
Perl 5.26 removed . from @INC. Some older
CPAN modules assume it's there during install or test. Set
PERL_USE_UNSAFE_INC=1 during the build to avoid spurious
failures. This only affects the build environment, not the packed
binary.
Pinto / private CPAN
If your organisation runs a private CPAN mirror (Pinto, OrePAN2, etc.),
point cpm at it with --resolver:
cpm install -L local --resolver 02packages,$PINTO_REPO --pp
Docker builds
FatPacker and Docker are complementary. Use Docker for the build environment (consistent Perl version, cpm, fatpack installed), and ship either the container image or just the packed file:
COPY mycli-packed /usr/local/bin/mycli
RUN chmod +x /usr/local/bin/mycli
Summary
The core recipe is three pieces:
- A trace helper that loads every module your app
could use at runtime, capturing the full dependency tree via
%INC - Pure-Perl enforcement via environment variables and
cpm --pp - The standard fatpack pipeline: packlists, tree, clean up, bundle
The result is a single file you can scp to any box with
Perl 5.24+ and run immediately. No CPAN, no Makefile, no containers
required.
References
- App::FatPacker on CPAN
- FatPacking Perl applications
-- talk by Andrew Rodland covering the core technique, pure-Perl
enforcement, and
cpm - arodland/swr fatpack script -- a clean, minimal reference implementation of the full pipeline
- App::cpm
-- fast CPAN installer (itself shipped as a fatpacked binary);
--target-perland--ppflags are essential for fatpack builds
Modern software distribution has converged on a simple idea: ship a self-contained artifact. Whether that means a statically linked binary, a container image, or a snap/flatpak, the benefits are the same -- dependency management is solved at build time, platform differences are absorbed, and upgrades and rollbacks reduce to swapping a single file.
Perl's App::FatPacker
applies the same principle to Perl scripts. It bundles every pure-Perl
dependency into a single executable file. No cpanm, no
local::lib, no Makefile on the target -- just copy the file
and run it. The technique is well-established -- cpm (the
CPAN installer we use in the build) is itself distributed as a fatpacked
binary.
The distribution pipeline looks like this:
Code repo --> CI --> fatpack --> deploy --> laptops / jumpboxes / servers
|
single file,
no dependencies
This post walks through how we fatpacked an internal CLI we'll call
mycli, a ~90-module Perl app, into a single file. The
approach generalises to any App::Cmd-based tool.
A good practice for internal tools is to provide all three interfaces: a web frontend, an API, and a CLI. The web frontend is the easiest to discover; the API enables automation and integration; the CLI is the fastest path for engineers who live in a terminal. FatPacker makes the CLI trivially deployable.
mycli is a thin client -- it talks to an internal REST API
over HTTPS and renders the response locally. There is no local state beyond a config
file and environment variables. You could build an equivalent tool against
a binary RPC protocol such as gRPC or Thrift -- the fatpacking approach
is the same.
+--------------------+ +-------------------+
| Workstation | HTTPS | Server |
| | | |
| $ mycli resource |---------->| REST API ---+ |
| list ... |<----------| (JSON) DB | |
+--------------------+ +-------------------+
Despite being a thin client, mycli is not trivial.
It includes:
- Pluggable output renderers (table, JSON, YAML, CSV, plain text)
- Colour output with
NO_COLORsupport - Automatic pager integration (
less -RFX) and pipe/TTY detection - Activity spinner
- Multi-format ID resolution (numeric, UUID prefix, name lookup)
- Command aliases (
ls/list,get/show) - Config file discovery chain (env var, XDG path, dotfile)
- Timezone-aware timestamp rendering
- Structured syslog logging with per-invocation correlation IDs
- StatsD metrics instrumentation
- HTTP debugging hooks
All of this fatpacks cleanly because each feature is backed by pure-Perl modules.
This makes it an ideal fatpack candidate: the only XS dependency is
Net::SSLeay for TLS, which is typically already present on
the target system. Everything else is pure Perl.
Why FatPacker over PAR::Packer?
The other well-known option for single-file Perl distribution is
PAR::Packer. PAR
bundles everything -- including XS modules and even the perl
interpreter itself -- into a self-extracting archive. At runtime it
unpacks to a temp directory and executes from there.
FatPacker takes a different approach: modules are inlined as strings
inside the script and served via a custom @INC hook. There is
no extraction step, no temp directory, and no architecture coupling. The
trade-off is that FatPacker only handles pure Perl -- XS modules must
already be on the target.
For a thin REST client where the only XS dependency is
Net::SSLeay, FatPacker wins on simplicity: the output is a
plain Perl script, it starts instantly, and it runs on any architecture
with a compatible perl. PAR is the better choice when you
need to bundle XS-heavy dependencies or ship a binary to machines without
Perl at all.
What fatpacking does
FatPacker prepends a BEGIN block to your script containing
every dependency as a string literal, keyed by module path. A custom
@INC hook serves these strings to require
instead of reading from disk. The original script is appended
unchanged.
$ wc -l bin/mycli mycli-packed
13 bin/mycli
48721 mycli-packed
That ~49k line file runs identically to the original, on any machine with Perl 5.24+.
The problem with naive fatpacking
The standard FatPacker workflow is:
$ fatpack trace bin/mycli
$ fatpack packlists-for $(cat fatpacker.trace) > packlists
$ fatpack tree $(cat packlists)
$ fatpack file bin/mycli > mycli-packed
This breaks for non-trivial apps because fatpack trace
uses compile-time analysis (B::minus_c). It misses anything
loaded at runtime via require:
App::Cmddiscovers commands viaModule::Pluggableat runtimeText::ANSITableloads border styles and colour themes dynamicallyLWP::UserAgentloads protocol handlers on first requestYAML::Anyprobes for available backends at runtime
If the trace misses a module, the packed binary dies with
Can't locate Foo/Bar.pm in @INC at the worst possible moment.
The solution: a custom trace helper
Instead of relying on fatpack trace, we wrote a helper
script that requires every module the app could ever load,
then dumps %INC at exit. This captures the complete runtime
dependency tree.
#!/usr/bin/env perl
# bin/trace-helper -- not shipped, build-time only
use strict;
use warnings;
use lib 'lib';
# Modules loaded lazily that fatpack misses
require Data::Unixish::Apply;
require Digest::SHA;
require HTTP::Request;
require LWP::UserAgent;
require String::RewritePrefix;
# Exercise objects to trigger deep runtime loads
{
require Text::ANSITable;
my $t = Text::ANSITable->new(use_color => 1, use_utf8 => 1);
$t->border_style('UTF8::SingleLineBold');
$t->color_theme('Text::ANSITable::Standard::NoGradation');
$t->columns(['a']);
$t->add_row(['1']);
$t->draw; # forces all rendering deps to load
}
# Every App::Cmd leaf command
require MyCLI::App;
require MyCLI::App::Command::device::list;
require MyCLI::App::Command::device::get;
# ... all 80+ command modules ...
END {
open my $fh, '>', 'fatpacker.trace' or die $!;
for my $inc (sort keys %INC) {
next unless defined $INC{$inc};
next if $inc =~ m{\AMyCLI/}; # our own modules come from lib/
print $fh "$inc\n";
}
}
Key points:
- Don't call
->run--App::Cmdsubdispatch will die on duplicate command names across namespaces. Justrequireevery leaf. - Exercise both code paths --
Text::ANSITableloads different modules for colour vs plain, UTF-8 vs ASCII. Instantiate both. - Exclude your own namespace -- FatPacker embeds modules
from
fatlib/; yourlib/modules are embedded separately. Including them in the trace causes duplicates.
Forcing pure-Perl backends
FatPacker can only bundle pure Perl. Many popular modules ship dual
XS/pure-Perl backends and prefer XS at runtime. If XS is available during
the trace, the pure-Perl fallback won't appear in %INC and
won't get bundled.
Force pure-Perl mode during the build:
# In the fatpack build script
export B_HOOKS_ENDOFSCOPE_IMPLEMENTATION=PP
export LIST_MOREUTILS_PP=1
export MOO_XS_DISABLE=1
export PACKAGE_STASH_IMPLEMENTATION=PP
export PARAMS_VALIDATE_IMPLEMENTATION=PP
export PERL_JSON_BACKEND=JSON::PP
export PUREPERL_ONLY=1
PUREPERL_ONLY=1 is a
convention
respected by many dual XS/PP distributions at install time, preventing XS
compilation entirely. The per-module variables above cover modules that
don't check PUREPERL_ONLY.
Combine this with --pp at install time to avoid pulling in
XS at all:
cpm install -L local --target-perl 5.24.0 --pp
Pinning the target Perl version
The --target-perl flag to cpm is critical and
easy to overlook. Without it, cpm resolves dependency versions
against your build machine's Perl. If you're building on 5.38 but deploying
to a jumpbox running 5.24, you'll silently install module versions that use
postfix dereferencing, subroutine signatures, or
other features that don't exist on the target. The packed binary will fail
at runtime with a syntax error -- far from the build where you could catch
it.
This tells cpm's resolver to only consider module versions
whose metadata declares compatibility with 5.24.0. Combined with
perl -c as a post-install sanity check, this catches
version mismatches before the slow trace step.
The complete build script
Here is the full pipeline, wrapped in a shell script. It supports
incremental builds (reuses local/ and trace cache) and
--clean for full rebuilds.
#!/bin/sh
set -e
CLEAN=0
[ "$1" = "--clean" ] && CLEAN=1
# 0. Prerequisites
for cmd in cpm fatpack perl; do
command -v "$cmd" >/dev/null 2>&1 || {
echo "Error: '$cmd' is not installed." >&2; exit 1
}
done
export PERL_USE_UNSAFE_INC=1 # Perl 5.26+ removed . from @INC
# 1. Install deps (pure-perl only)
if [ "$CLEAN" = 1 ] || [ ! -d local/ ]; then
rm -rf local/
cpm install -L local --target-perl 5.24.0 --pp
fi
# 2. Set up paths
export PERL5LIB=$PWD/lib:$PWD/local/lib/perl5
export PATH=$PWD/local/bin:$PATH
# 3. Force pure-perl backends
export B_HOOKS_ENDOFSCOPE_IMPLEMENTATION=PP
export LIST_MOREUTILS_PP=1
export MOO_XS_DISABLE=1
export PACKAGE_STASH_IMPLEMENTATION=PP
export PARAMS_VALIDATE_IMPLEMENTATION=PP
export PERL_JSON_BACKEND=JSON::PP
export PUREPERL_ONLY=1
# 4. Verify compilation
perl -c bin/mycli || exit 1
# 5. Trace
if [ "$CLEAN" = 1 ] || [ ! -f fatpacker.trace ]; then
perl -Ilib bin/trace-helper
echo "Trace: $(wc -l < fatpacker.trace) modules"
fi
# 6. Pack
fatpack packlists-for $(cat fatpacker.trace) > packlists
fatpack tree $(cat packlists)
# Strip arch-specific dirs and non-essential files
rm -rf fatlib/$(perl -MConfig -e 'print $Config{archname}')
find fatlib -name '*.pod' -delete
find fatlib -name '*.pl' -delete
# Bundle
fatpack file bin/mycli > mycli-packed
chmod +x mycli-packed
echo "Built mycli-packed ($(wc -c < mycli-packed) bytes)"
Step by step: what happens
- 0Prerequisites --
verify
cpm,fatpack, andperlare available - 1Install --
cpminstalls all dependencies intolocal/as pure Perl, targeting 5.24.0 - 2Paths and env --
set
PERL5LIB,PATH, and pure-Perl overrides - 3Compile check --
perl -c bin/myclicatches syntax errors before the slow trace step - 4Trace --
the helper script loads everything and writes the module list to
fatpacker.trace - 5Packlists and tree --
fatpack packlists-formaps module names to installed packlist files;fatpack treecopies the.pmfiles intofatlib/ - 6Clean up --
remove
.pod,.pl, and arch-specific directories to reduce size - 7Bundle --
fatpack fileinlines everything fromfatlib/into the script
Makefile integration
For teams that prefer make, add targets that delegate to the
shell script:
# In Makefile.PL, inside MY::postamble
.PHONY: pack clean_fatpack
pack:
./fatpack
clean :: clean_fatpack
clean_fatpack:
rm -rf fatlib fatpacker.trace packlists mycli-packed local/
Then building is just:
$ perl Makefile.PL
$ make pack
Adding a new dependency
When someone adds use Some::New::Module to the codebase,
the fatpacked binary will break with
Can't locate Some/New/Module.pm in @INC unless the build
picks it up. The workflow is:
- Add the module to
cpanfile - If the module is loaded at runtime (via
requireor a plugin mechanism), add arequire Some::New::Moduleline to the trace helper - Rebuild with
--clean
./fatpack --clean
The --clean flag is important. Without it, the build
reuses the cached local/ directory and
fatpacker.trace from the previous run. The new module won't
appear in either, and the packed binary will silently ship without it.
A good safeguard is to run perl -c mycli-packed after
every build -- this catches missing modules at build time rather than in
production.
What about perlstrip?
Perl::Strip can reduce the packed file by ~30% by removing comments,
POD, and whitespace from bundled modules. We deliberately left it off.
For an internal tool, the size saving (~1.7 MB) is not worth the
trade-off: stripped files are harder to debug with stack traces, and
perlstrip has a known issue corrupting files that contain
use utf8.
Gotchas and tips
XS modules cannot be fatpacked
Modules with C extensions (.so/.xs) cannot be
inlined. They must already exist on the target system. If your app has
many XS dependencies, consider PAR::Packer instead (see above).
PERL_USE_UNSAFE_INC
Perl 5.26 removed . from @INC. Some older
CPAN modules assume it's there during install or test. Set
PERL_USE_UNSAFE_INC=1 during the build to avoid spurious
failures. This only affects the build environment, not the packed
binary.
Pinto / private CPAN
If your organisation runs a private CPAN mirror (Pinto, OrePAN2, etc.),
point cpm at it with --resolver:
cpm install -L local --resolver 02packages,$PINTO_REPO --pp
Docker builds
FatPacker and Docker are complementary. Use Docker for the build environment (consistent Perl version, cpm, fatpack installed), and ship either the container image or just the packed file:
COPY mycli-packed /usr/local/bin/mycli
RUN chmod +x /usr/local/bin/mycli
Summary
The core recipe is three pieces:
- A trace helper that loads every module your app
could use at runtime, capturing the full dependency tree via
%INC - Pure-Perl enforcement via environment variables and
cpm --pp - The standard fatpack pipeline: packlists, tree, clean up, bundle
The result is a single file you can scp to any box with
Perl 5.24+ and run immediately. No CPAN, no Makefile, no containers
required.
References
- App::FatPacker on CPAN
- FatPacking Perl applications
-- talk by Andrew Rodland covering the core technique, pure-Perl
enforcement, and
cpm - arodland/swr fatpack script -- a clean, minimal reference implementation of the full pipeline
- App::cpm
-- fast CPAN installer (itself shipped as a fatpacked binary);
--target-perland--ppflags are essential for fatpack builds
For approximately the last 2 weeks I haven't received any emails sent to or forwarded from my cpan.org email address, which is configured via my pause account.
Anyone else noticed this, and/or where could I report this?
[link] [comments]
I monitor some medium-to-large (multi-Gb) files for changes, and I'd rather not run a full hash on the whole thing. It's time-consuming, and if they're not on a ZFS filesystem, I can't take advantage of the automatic checksumming to warn me about corruption.
I use a script called chunkhash to read blocks at intervals in the file, store their SHA1 hashes and output a final hash generated from the intermediate ones. I'm not looking for crypto-level security; I want speed plus an indication of when something's changed. It took about 90 seconds on old hardware to check 393 Gbytes.
For large files (256 Mb and up):
open the file read and hash 1 Mb skip 63 Mb read and hash 1 Mb skip 63 Mb lather, rinse, repeat... For intermediate files (4-256 Mb), it reads 256k and skips 2Mb. Small files (<4 Mb) are completely hashed.
This idea is certainly not original with me; maybe it'll scratch an itch for someone out there. Example:
me% date; chunkhash */*.tgz; date Sat Mar 28 04:44:14 EDT 2026 69t3+P4ZfcHUR5QtbS764e+dsf0 archive-iso/part.01.tgz Rp3kNmgfIGH4whjjZYkcIXGixDM archive-iso/part.02.tgz 9bqyWAteNYuCFF3Vo+SLl+20UMo archive-iso/part.03.tgz Ph1KMSvK8lj421jFWQcbiOl2gGU archive-iso/part.04.tgz VFxgE86d4B77wpuX8GL9aWDF6d0 archive-iso/part.05.tgz t787n6s+0RDOud8xc8K0tA3GcqY archive-iso/part.06.tgz 9N2j8xYncT7xMy8sNqjF5sy3WHw archive-iso/part.07.tgz ... sBa9CvupF9Qw23nAWHWapCx0Itk var-log/part.01.tgz J9HbZau8M5ZMvVs1y7jl5ETS0vU var-log/part.02.tgz bfDv1AjS2TB9AvmooORcJZHTwds var-log/part.03.tgz k+xj9H8cvNOeQoiJrLsMl9T/gsg var-tmp/part.01.tgz Sat Mar 28 04:45:46 EDT 2026 You can find the source at https://bezoar.org/src/chunkhash . Comments welcome.
[link] [comments]
All three of us attended this long meeting covering quite a bit ground:
CVE-2026-3381 obliges us to cut a 5.42.2 point release with an updated Compress::Raw::Zlib.
We accepted Philippe’s and Eric’s offer to handle the last dev releases of the cycle.
Olaf Alders requested more explicit EOL notices and has updated
perlpolicy.podand the release manager guide accordingly. We agreed that the release announcement mails for the final dev release and the stable release should also contain a brief note about the perl version which is falling out of support, and filed an issue to make this happen.We sent mail to kick off the voting process for some new core team member candidates.
We discussed the state of Devel::PPPort. It has been outdated for some time and needs to be unstuck.
We would like to get
customize.datdown to the only entry that cannot be removed (forversion.pm). We will try to coordinate with maintainers.We noticed that we missed the deprecation of multiple
use VERSIONdeclarations in the same scope, which was supposed to be fatalized in 5.44. It is too late now to do that in this dev cycle, so the warning will have to change to 5.46 and the deprecation revisited next cycle.Further on the topic of overlooked deprecations, we considered how to prevent this from continuing to happen. We decided that some kind of documentation of recurring PSC obligations during a cycle is needed, which would also include things like the contentious changes freeze and release blocker triage.
There was not much time left for release blocker triage, so we only did a little, which surfaced no candidate blockers so far. (A few already-definite blockers have been spotted and marked outside of triage.)
All three of us attended.
We discussed policy questions that were turned up by the recent submission of some LLM-generated PRs. We need to hold conversation about this among the Core team. No contributions of this kind will be accepted while the discussion is still ongoing.
We finally had a good chunk of time to spend on release blocker triage. We made quick progress, working through half our list and closing some issues in the process. We newly marked 4 issues as blockers.
The site has been down again since yesterday. Just wondering if the Foundation can issue a grant to migrate it to another web hosting provider?
[link] [comments]
Originally published at Perl Weekly 766
Hi there,
This week's Perl landscape firmly establishes that while the history of Perl is rich and exciting, it is also a place for experimentation and innovation in the future. There have been handful of releases of Perl v5.43.9 which came up with plenty of changes and major one for me was the enhanced /xx pattern modifier. In between there was another very important patch was released, Perl v5.42.2-RC1, and Perl v5.40.4 addressing the vulnerability in Compress::Raw::Zlib. Don't dare call Perl is dead.
Ever worked with XS modules? Well we have three related XS modules that made it looks so simple and easy. The benefit of XS helps creating efficient and high speed unique identifier creation using Horus, Apophis, and Sekhmet. Bonus, you get to see how they can be used together. Robert seems to be on the roll with his another gem, Eshu, a code formatter written entirely in C and exposed to Perl through XS.
Not everything have to be, XS. Dave showed how you can work with TOON (Token-Oriented Object Notation), textual format for representing structured data, same data model as JSON. Using his new creation TOON, one can easily work with TOON data model. If you are XS fan, feel free to create XS version of TOON.
Do you use Java? If yes then you now have the choice of using Perl power inside Java. The project, PerlOnJava, gives us handy tool to get the job done: jperl, jcpan, and jprove.
The week was fun, too much to handle in such a short time but I am not complaining. I am finding it hard to keep up, how about you?
Enjoy rest of the newsletter.
--
Your editor: Mohammad Sajid Anwar.
Announcements
TPRF Board Announces the 2025 Annual Report
The Board is pleased to share the 2025 Annual Report from the The Perl and Raku Foundation.
Articles
Beautiful Perl feature: "heredocs", multi-line strings embedded in source code
This article on the Beautiful Perl Feature - Heredocs and MultiLine Strings provides a nice introductory overview of how to use Perl's heredoc syntax to create readable, maintainable multiline text. It provides practical examples combined with a simple explanation which allows experienced programmers and novices alike to have a fresh look at an item that has been around for many years.
Perl, the Strange Language That Built the Early Web
The unusual language that made the early web; a glimpse at the history of Perl less than truly alien to the average user; The original dynamic/interactive media for the internet; with its contribution to automation processes (primarily text); through CGI scripting - both technically and culturally; In terms of practicality or versatility; play a significant role in creating and supporting how the first wave of web interactivity was created and how it became an integral part of the early days of the world wide web.
Horus, Apophis, and Sekhmet: An C/XS Identifier Stack for Perl
This post focuses on three related XS modules for efficient and high speed unique identifier creation (UUID, ULID and deterministic) and content-addressable storage in Perl. It provides a comprehensive overview of how to use these tools in conjunction with each other to create an efficient and scalable unique ID workflow. It also demonstrates how they can be used together.
Eshu: Indentation Fixer for Eight Languages, Written in C
This article discusses a portable C-based program that formats code and will uniformly line up the indentation across eight different programming languages. It describes examples to show you how Eshu can help you make the indentation to your programming code consistent with very little effort and no extra heavy duty tools required. For Developers who choose to use other than traditional language-specific formattors, this document presents an overview of how Eshu creates a lightweight formatting solution that developers may find useful.
Writing a TOON Module for Perl
The article presents TOON (Token-Oriented Object Notation) which aims to be simple for both people and LMs to construct and understand while using as few punctuation marks as possible and maintaining an easily accessible structure of data. It also discusses the reasons why TOON will be beneficial and provides a Perl implementation module for TOON with a familiar interface to those that have used JSON.pm.
CPAN
Graphics::Toolkit::Color 2.0 feature overview
The Graphics::Toolkit::Color 2.0 feature overview post provides an impressive look at all of the most significant improvements that have been made in developing GTC 2.0. The description outlines how GTC has grown beyond only doing basic coloring routines to include now a much richer, more complex, multi-space colored library complete with the ability to create beautiful gradients, accurately measure colors for perceptual purposes, and a variety of tools for use by both designers and developers. Overall, this is a succinct overview that does an excellent job of showcasing the reasons why GTC 2.0 is a unique addition to CPAN.
PerlOnJava Gets a CPAN Client
This is a great update regarding the addition of native CPAN support to Perl-on-JVM tooling. The example uses the ability to use an already developed CPAN client for installing modules and accessing the overall CPAN ecosystem in a more natural way than would be done with the non-JVM versions of the clients. It gives many real-world examples and is an excellent source of information for those who want to connect Perl and Java.
Lingua::* - From 17 to 61 Languages: Resurrecting and Modernizing PetaMem's Number Conversion Suite
The blog entry, "Lingua Revival", is an interesting way to reintroduce Lingua by combining elements of memories with new features that apply to modern day Perl. The story is easy to follow and focuses on being usable in today's world, which will be beneficial to both long-time users and new users of the project.
The Weekly Challenge
The Weekly Challenge by Mohammad Sajid Anwar will help you step out of your comfort-zone. You can even win prize money of $50 by participating in the weekly challenge. We pick one champion at the end of the month from among all of the contributors during the month, thanks to the sponsor Lance Wicks.
The Weekly Challenge - 367
Welcome to a new week with a couple of fun tasks "Max Odd Binary" and "Conflict Events". If you are new to the weekly challenge then why not join us and have fun every week. For more information, please read the FAQ.
RECAP - The Weekly Challenge - 366
Enjoy a quick recap of last week's contributions by Team PWC dealing with the "Count Prefixes" and "Valid Times" tasks in Perl and Raku. You will find plenty of solutions to keep you busy.
Count the Times
Raku Musings has a clearly written "Count the Times" post that gives a well-organised overview. It shows how idiomatic features work together effectively in Raku, resulting in a clear and elegant solution. There is an excellent balance between compact code and an informative explanation. The post demonstrates the use of expressive constructs that lend themselves to solving this type of problem using Raku.
Could We Start Again, Please
Bob Lied writes an engaging post about a problem in a clear manner, interspersing logic with humor; making it a pleasure to read! The author reviews alternative methods and their advantages/disadvantages and demonstrates a practical approach as well as demonstrating good Perl coding skill.
Valid Times
Bob Lied's "Valid Times" post systematically breaks down the issue into distinct steps while also providing significant attention to detail in regards to possible edge cases and practical limitations of validation of times. It presents a succinct but complete Perl code and corresponds with sound logic behind the choice of this Perl implementation, which allows readers to follow along easily and use as a reference when addressing the same type of parsing problems.
Perl Weekly Challenge: Week 366
The Jaldhar's blog has written an extensive, interesting post detailing how to perform Week 366 tasks. It does so by separating them into two sections: Problem 1 and Problem 2. This helps readers easily understand the problems themselves, as well as providing a clear path to solution using Perl. The blog also clearly states the logic behind each step, allowing readers to learn from the blogs experience while still being able to easily move on to solving this week's challenges independently.
Pre-Timed Counters
The blog post written for the week of 366 by Jörg, presents an elegant solution that exemplifies the use of clear and concise Perl programming techniques with a command of idiomatic constructs. The reader will appreciate Sommrey's clean, logical approach in solving the problem space and his appreciation for the use of expressive and efficient code, which reflects both familiarity and appreciation for the inherent beauty of programming.
what time is it?
Luca Ferrari's post is a further example of his continuing theme of approaching Perl Weekly Challenge in an analytical as well as exploratory way; frequently developing solutions in several languages and platforms to help him better understand the challenges. Luca's posts provide very useful instruction/examples; help you learn through experimentation/experience; and help you to truly think about and re-examine/consider the real-world nature of the solution.
Perl Weekly Challenge 366
The write-up gives a very reasoned overview of the problem with easy-to-follow methods of solving it using logical thinking. There is a good amount of coding as well as thorough explanations that create a valid and helpful source for those searching for an understanding of this issue and its methods of resolution using Perl.
Counting Times Without Questions
The article from Matthias Muth, entitled Matthias Muth's Week 366, is a clear and precise description of his thought processes relating to solutions presented in a concise manner while also being well-organised so as to make it easy to understand the underlying concept. It has an elegant and idiomatic style similar to that of Matthias' other contributions to the Perl Weekly Challenge, and it has a very clean decomposition of the problem that allows more experienced readers to develop an appreciation for it.
The Times They Are A-Countin'
The entertaining narrative of Packy Anderson's post combines humor and solid technical approaches to a problem to keep readers interested and provide them with an enjoyable and intuitive experience involved in the solution. His creative approach to framing the challenge and providing clear examples of how to solve it makes for a positive experience for all.
Prefixes and times?
Peter Campbell Smith's Week 366 Write-up provides an unambiguous, pragmatic solution style representing a strong real-world Perl mindset. The emphasis is placed on solving the problem in an accurate and efficient manner through simple implementation methods. The provided solution is straightforward and effective; he understands the relevant tasks thoroughly and prefers to solve issues clearly and without complexity (typical of all Weekly Challenges).
The Weekly Challenge - 366: Count Prefixes
The writing style used by Reinier Maliepaard in his submission demonstrates a logical and coherent framework and logical correctness; Making it easy for the reader to follow. Reinier’s structure of writing reflects discipline and analytic thought, along with succinctness, resulting in a Combination of Clear and Robust Perl Source Code, which matches the strategy of problem-solving as well.
The Weekly Challenge - 366: Valid Token Counter
The Week 366 second post by Reinier Maliepaard provides another example of his methodical and rational approach to problem-solving with a detailed logical breakdown along with concise Perl code to solve the problem. The article focuses on providing a clear, correct, and easily read explanation of how to work through validation problems, offering users of all skill levels an accessible, educational account.
The Weekly Challenge #366
Robbie Hatley's Week 366 Answers includes usable Perl solutions, as well as easy to follow logical documentation for each step of reasoning. What is accomplished is a practical, understandable solution. While the solutions provide a clear method to convey both the "how-to" and "why" of developing the final product, they also teach the reader to think through each implementation logically.
The Time of the Count is Over
Week 366 of Roger's post is an impressive example of multi-language exploration with Ruby, Lua, PostScript and Raku; it illustrates how to solve problems in Perl and develop cross-language thinking by presenting examples of various programming paradigms solving the same problem as well as having clear and entertaining explanatory text.
Happy 7th birthday TWC!
Simon Green's 7th Anniversary Post for The Weekly Challenge is an amazing, heartfelt reflection of how far we've come as a community over the past seven years, combining his personal experience with his deep appreciation for all the amazing contributors & readers to our community. It's an uplifting and well-written post that captures the essence of what The Weekly Challenge is about and how it's positively affected our lives.
Rakudo
2026.12 Ich bin ein Berliner
Weekly collections
NICEPERL's lists
Great CPAN modules released last week;
MetaCPAN weekly report.
Events
Perl Maven online: Testing in Perl - part 2
April 2, 2026
Perl Maven online: Testing in Perl - part 3
April 9, 2026
Perl Toolchain Summit 2026
April 23-26, 2026
The Perl and Raku Conference 2026
June 26-29, 2026, Greenville, SC, USA
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(C) Copyright Gabor Szabo
The articles are copyright the respective authors.
The Board is pleased to share the 2025 Annual Report from the The Perl and Raku Foundation.
You can download the full report from the Perl and Raku Foundation website
Strengthening the Foundation
2025 was a year of both challenge and progress. Like many nonprofits, the Foundation faced funding constraints that required careful prioritization of resources. At the same time, increased focus on fundraising and donor engagement helped stabilize support for the work that matters most. A number of processes and tools were overhauled, allowing the Board to manage the funding more effectively, and pay grants more promptly and at lower overhead expense than had been the case previously.
Contributions from sponsors, corporate partners, and individual donors played a critical role in sustaining operations—particularly for core development and infrastructure.
Funding What Matters Most
Financial stewardship remained a top priority throughout the year. The Foundation focused its resources on:
- Supporting the Perl 5 Core Maintenance Fund
- Investing in Raku development and ecosystem improvements
- Maintaining essential infrastructure and services
While some grant activity was reduced during tighter periods, the report describes the Foundations recovery from those trials and outlines a clear path toward expanding funding as donations grow.
Our total income for the year was $253,744.86, with total expenditures of $233,739.75. 92% of our spending supported grants, events, and infrastructure. Our largest single expenditure remains the Perl Core Maintenance Grants, one of the long-time pillars of the Foundation's programs.
A Community-Funded Future
The Foundation’s work is made possible by the community it serves. Every donation—whether from individuals or organizations—directly supports the developers, tools, and systems that keep Perl and Raku reliable and evolving.
In 2025, we also strengthened our fundraising efforts, building a more sustainable base of recurring and long-term support to ensure continuity in the years ahead.
Looking Ahead
Our focus for the coming year is clear:
- Grow recurring donations and sponsorships
- Restore and expand the grants program
- Continue developing transparent, responsible financial management
We’re grateful to everyone who contributed in 2025. Your support keeps the ecosystem strong.
If you rely on Perl or Raku, we encourage you to take part in sustaining them. Your support is always welcome!
Every so often, a new data serialisation format appears and people get excited about it. Recently, one of those formats is **TOON** — Token-Oriented Object Notation. As the name suggests, it’s another way of representing the same kinds of data structures that you’d normally store in JSON or YAML: hashes, arrays, strings, numbers, booleans and nulls.
So the obvious Perl question is: *“Ok, where’s the CPAN module?”*
This post explains what TOON is, why some people think it’s useful, and why I decided to write a Perl module for it — with an interface that should feel very familiar to anyone who has used JSON.pm.
I should point out that I knew about [Data::Toon](https://metacpan.org/pod/Data::TOON) but I wanted something with an interface that was more like JSON.pm.
—
## What TOON Is
TOON stands for **Token-Oriented Object Notation**. It’s a textual format for representing structured data — the same data model as JSON:
* Objects (hashes)
* Arrays
* Strings
* Numbers
* Booleans
* Null
The idea behind TOON is that it is designed to be **easy for both humans and language models to read and write**. It tries to reduce punctuation noise and make the structure of data clearer.
If you think of the landscape like this:
| Format | Human-friendly | Machine-friendly | Very common |
| —— | ————– | —————- | ———– |
| JSON | Medium | Very | Yes |
| YAML | High | Medium | Yes |
| TOON | High | High | Not yet |
TOON is trying to sit in the middle: simpler than YAML, more readable than JSON.
Whether it succeeds at that is a matter of taste — but it’s an interesting idea.
—
## TOON vs JSON vs YAML
It’s probably easiest to understand TOON by comparing it to JSON and YAML. Here’s the same “person” record written in all three formats.
### JSON
{
“name”: “Arthur Dent”,
“age”: 42,
“email”: “arthur@example.com”,
“alive”: true,
“address”: {
“street”: “High Street”,
“city”: “Guildford”
},
“phones”: [
“01234 567890”,
“07700 900123”
]
}
### YAML
name: Arthur Dent
age: 42
email: arthur@example.com
alive: true
address:
street: High Street
city: Guildford
phones:
– 01234 567890
– 07700 900123
### TOON
name: Arthur Dent
age: 42
email: arthur@example.com
alive: true
address:
street: High Street
city: Guildford
phones[2]: 01234 567890,07700 900123
You can see that TOON sits somewhere between JSON and YAML:
* Less punctuation and quoting than JSON
* More explicit structure than YAML
* Still very easy to parse
* Still clearly structured for machines
That’s the idea, anyway.
—
## Why People Think TOON Is Useful
The current interest in TOON is largely driven by AI/LLM workflows.
People are using it because:
1. It is easier for humans to read than JSON.
2. It is less ambiguous and complex than YAML.
3. It maps cleanly to the JSON data model.
4. It is relatively easy to parse.
5. It works well in prompts and generated output.
In other words, it’s not trying to replace JSON for APIs, and it’s not trying to replace YAML for configuration files. It’s aiming at the space where humans and machines are collaborating on structured data.
You may or may not buy that argument — but it’s an interesting niche.
—
## Why I Wrote a Perl Module
I don’t have particularly strong opinions about TOON as a format. It might take off, it might not. We’ve seen plenty of “next big data format” ideas over the years.
But what I *do* have a strong opinion about is this:
> If a data format exists, then Perl should have a CPAN module for it that works the way Perl programmers expect.
Perl already has very good, very consistent interfaces for data serialisation:
* JSON
* YAML
* Storable
* Sereal
They all tend to follow the same pattern, particularly the object-oriented interface:
use JSON;
my $json = JSON->new->pretty->canonical;
my $text = $json->encode($data);
my $data = $json->decode($text);
So I wanted a TOON module that worked the same way.
—
## Design Goals
When designing the module, I had a few simple goals.
### 1. Familiar OO Interface
The primary interface should be object-oriented and feel like JSON.pm:
use TOON;
my $toon = TOON->new
->pretty
->canonical
->indent(2);
my $text = $toon->encode($data);
my $data = $toon->decode($text);
If you already know JSON, you already know how to use TOON.
There are also convenience functions, but the OO interface is the main one.
### 2. Pure Perl Implementation
Version 0.001 is pure Perl. That means:
* Easy to install
* No compiler required
* Works everywhere Perl works
If TOON becomes popular and performance matters, someone can always write an XS backend later.
### 3. Clean Separation of Components
Internally, the module is split into:
* **Tokenizer** – turns text into tokens
* **Parser** – turns tokens into Perl data structures
* **Emitter** – turns Perl data structures into TOON text
* **Error handling** – reports line/column errors cleanly
This makes it easier to test and maintain.
### 4. Do the Simple Things Well First
Version 0.001 supports:
* Scalars
* Arrayrefs
* Hashrefs
* undef → null
* Pretty printing
* Canonical key ordering
It does **not** (yet) try to serialise blessed objects or do anything clever. That can come later if people actually want it.
—
## Example Usage (OO Style)
Here’s a simple Perl data structure:
my $data = {
name => “Arthur Dent”,
age => 42,
drinks => [ “tea”, “coffee” ],
alive => 1,
};
### Encoding
use TOON;
my $toon = TOON->new->pretty->canonical;
my $text = $toon->encode($data);
print $text;
### Decoding
use TOON;
my $toon = TOON->new;
my $data = $toon->decode($text);
print $data->{name};
### Convenience Functions
use TOON qw(encode_toon decode_toon);
my $text = encode_toon($data);
my $data = decode_toon($text);
But the OO interface is where most of the flexibility lives.
—
## Command Line Tool
There’s also a command-line tool, toon_pp, similar to json_pp:
cat data.toon | toon_pp
Which will pretty-print TOON data.
—
## Final Thoughts
I don’t know whether TOON will become widely used. Predicting the success of data formats is a fool’s game. But the cost of supporting it in Perl is low, and the potential usefulness is high enough to make it worth doing.
And fundamentally, this is how CPAN has always worked:
> See a problem. Write a module. Upload it. See if anyone else finds it useful.
So now Perl has a TOON module. And if you already know how to use JSON.pm, you already know how to use it.
That was the goal.
The post Writing a TOON Module for Perl first appeared on Perl Hacks.
Continuing the dev.to series about beautiful Perl features, here are the recent articles (March 2026) :
Introduction
Since I last wrote a XS tutorial my knowledge within C has increased this has come from improvements in LLM software that has assisted in improving my knowledge where previously I would be stuck. This knowledge and software has since enabled me to craft more elegant and efficient XS implementations.
Today I will share with you my technique for writing reusable C/XS code.
One of the most powerful patterns in XS development is writing your core logic in pure C header files. This gives you:
-
Zero-cost reuse - no runtime linking, no shared libraries, just a
#includeline. - No Perl dependency in the C layer - your headers work in any C project
- Compile-time inlining - the compiler sees everything, optimises aggressively
-
Simple distribution - headers are installed alongside the Perl module via
PM
This tutorial walks through the complete pattern step by step, using a minimal working example you can build and run yourself.
The Example
We will create two distributions:
-
Abacus - a provider distribution that ships a reusable pure-C
abacus_math.hheader containing simple arithmetic functions -
Tally - a consumer distribution that
#includes the Abacus header to build its own XS module, without duplicating any C code
As always lets start by creating the distributions that we will need for this tutorial. Open your terminal and run module-starter. If you are using a modern version of Module::Starter then the command has changed slightly since my last posts.
module-starter --module=Abacus --author="LNATION <email@lnation.org>"
module-starter --module=Tally --author="LNATION <email@lnation.org>"
Part 1: The Provider Distribution (Abacus)
Write the pure-C header
This is the reusable part. It has zero Perl dependencies - just standard C.
Now enter the Abacus and create the include directory:
cd Abucus
mkdir include
Then create a new file abacus_math.h:
touch abacus_math.h
vim abacus_math.h
Paste the following code into the file:
#ifndef ABACUS_MATH_H
#define ABACUS_MATH_H
/*
* abacus_math.h - Pure C arithmetic library (no Perl dependencies)
*
* This header is the reusable entry point for any C or XS project
* that needs basic arithmetic operations. It has ZERO Perl/XS
* dependencies.
*
* Usage from another XS module:
*
* #include "abacus_math.h"
*
* Build: add -I/path/to/Abacus/include to your compiler flags.
*/
#include <stdint.h>
/* ── Error handling hook ─────────────────────────────────────────
*
* Consumers can #define ABACUS_FATAL(msg) before including this
* header to route errors through their own mechanism.
*
* In an XS module you would typically do:
*
* #define ABACUS_FATAL(msg) croak("%s", (msg))
* #include "abacus_math.h"
*
* In plain C the default behaviour is fprintf + abort.
*/
#ifndef ABACUS_FATAL
# include <stdio.h>
# include <stdlib.h>
# define ABACUS_FATAL(msg) do { \
fprintf(stderr, "abacus fatal: %s\n", (msg)); \
abort(); \
} while (0)
#endif
/* ── Arithmetic operations ───────────────────────────────────── */
static inline int32_t
abacus_add(int32_t a, int32_t b) {
return a + b;
}
static inline int32_t
abacus_subtract(int32_t a, int32_t b) {
return a - b;
}
static inline int32_t
abacus_multiply(int32_t a, int32_t b) {
return a * b;
}
static inline int32_t
abacus_divide(int32_t a, int32_t b) {
if (b == 0) {
ABACUS_FATAL("division by zero");
}
return a / b;
}
static inline int32_t
abacus_factorial(int32_t n) {
int32_t result = 1;
int32_t i;
if (n < 0) {
ABACUS_FATAL("factorial of negative number");
}
for (i = 2; i <= n; i++) {
result *= i;
}
return result;
}
#endif /* ABACUS_MATH_H */
The code above demonstrates three critical design patterns for reusable C headers:
static inline functions eliminate linker complications by giving each translation unit its own copy of the function. The compiler can then inline these small arithmetic operations directly into the call site, producing zero-overhead abstractions. This is key to the "zero-cost reuse" principle—there is no shared library dependency, no function call overhead, just pure generated code.
The ABACUS_FATAL macro hook provides a customization point for error handling. By default, it calls fprintf() and abort() in standalone C programs; but consumers can #define ABACUS_FATAL(msg) croak("%s", (msg)) before including the header to integrate seamlessly with Perl's exception system. This single mechanism allows the same C header to work across Perl XS, plain C, and other environments without code duplication.
The use of only stdint.h integers and no Perl types ensures the header remains truly portable. There are no SV* pointers, no pTHX context variables, no XSUB.h includes—just standard C99 types. This purity is what allows the header to be #included into any C or XS project without creating hidden Perl dependencies at the C layer.
Write the Perl-facing XS header
Next we will add another header which will hold the Perl/XS specific logic. Inside the include directory create a new file called abacus.h. The rational behind this thin wrapper is to pull in Perl's headers and sets up the ABACUS_FATAL macro to use croak(). To reiterate only a XS distribution should include this header, whereas abacus_math.h is generic and could be used by other languages which bind C.
touch abacus.h
vim abacus.h
Paste the following code into the file
#ifndef ABACUS_H
#define ABACUS_H
/*
* abacus.h - Perl XS wrapper header for the Abacus library
*
* This header sets up Perl-specific error handling and includes
* the pure C core library.
*
* For reuse from OTHER XS modules without Perl overhead, include
* abacus_math.h directly instead (see that header for usage).
*/
#define PERL_NO_GET_CONTEXT
#include "EXTERN.h"
#include "perl.h"
#include "XSUB.h"
#include "ppport.h"
/* Route fatal errors through Perl's core croak() */
#define ABACUS_FATAL(msg) croak("%s", (msg))
/* Pull in the pure-C library */
#include "abacus_math.h"
#endif /* ABACUS_H */
Now any .xs file can #include "abacus.h" and get the full Perl/XS environment plus all the pure-C functions, with errors properly integrated.
Write the XS file
Next we will create the XS file, return to the root directory and then enter the lib directoy where you should see the Abacus.pm file already. Create a new XS file called Abacus.xs. This will be the glue that exposes the C functions to Perl.
cd ../lib
touch Abacus.xs
vim Abacus.xs
#include "abacus.h"
MODULE = Abacus PACKAGE = Abacus
PROTOTYPES: DISABLE
int
add(a, b)
int a
int b
CODE:
RETVAL = abacus_add(a, b);
OUTPUT:
RETVAL
int
subtract(a, b)
int a
int b
CODE:
RETVAL = abacus_subtract(a, b);
OUTPUT:
RETVAL
int
multiply(a, b)
int a
int b
CODE:
RETVAL = abacus_multiply(a, b);
OUTPUT:
RETVAL
int
divide(a, b)
int a
int b
CODE:
RETVAL = abacus_divide(a, b);
OUTPUT:
RETVAL
int
factorial(n)
int n
CODE:
RETVAL = abacus_factorial(n);
OUTPUT:
RETVAL
As you can see we include abacus.h which pulls in all the C that we need to create our XS module. We then define add, subtract, multiply, divide and factorial as XSUBs. As you should know by now XSUBs can be called directly from your perl code.
Write the Perl module with include_dir()
Next open the pm file and update to add an exporter for the XSUBS we have just created.
package Abacus;
use 5.008003;
use strict;
use warnings;
our $VERSION = '0.01';
use Exporter 'import';
our @EXPORT_OK = qw(add subtract multiply divide factorial);
require XSLoader;
XSLoader::load('Abacus', $VERSION);
Now the critical piece that makes header sharing work. A include_dir() method which returns the path to the installed headers so that consumer distributions can find them at build time.
sub include_dir {
my $dir = $INC{'Abacus.pm'};
$dir =~ s{Abacus\.pm$}{Abacus/include};
return $dir;
}
1;
How include_dir() works:
- When Perl loads
Abacus.pm, it records the full path in%INC(e.g./usr/lib/perl5/site_perl/Abacus.pm) -
include_dir()replacesAbacus.pmwithAbacus/include - That directory exists because
Makefile.PLinstalls the headers there (see next step)
Write the Makefile.PL that installs headers
The PM hash is what makes headers available to other distributions after install. It maps source files to their installation destinations.
Abacus/Makefile.PL
use 5.008003;
use strict;
use warnings;
use ExtUtils::MakeMaker;
WriteMakefile(
NAME => 'Abacus',
AUTHOR => 'Your Name <you@example.com>',
VERSION_FROM => 'lib/Abacus.pm',
ABSTRACT_FROM => 'lib/Abacus.pm',
LICENSE => 'artistic_2',
MIN_PERL_VERSION => '5.008003',
CONFIGURE_REQUIRES => {
'ExtUtils::MakeMaker' => '0',
},
TEST_REQUIRES => {
'Test::More' => '0',
},
PREREQ_PM => {},
XSMULTI => 1,
# XS configuration
INC => '-I. -Iinclude',
OBJECT => '$(O_FILES)',
# *** THIS IS THE KEY PART ***
# Install headers alongside the module so dependent
# distributions can find them via Abacus->include_dir()
PM => {
'lib/Abacus.pm' => '$(INST_LIB)/Abacus.pm',
'include/abacus.h' => '$(INST_LIB)/Abacus/include/abacus.h',
'include/abacus_math.h' => '$(INST_LIB)/Abacus/include/abacus_math.h',
},
dist => { COMPRESS => 'gzip -9f', SUFFIX => 'gz' },
clean => { FILES => 'Abacus-*' },
);
The PM hash does two things:
- Installs
Abacus.pmas normal -
Copies the header files into
Abacus/include/alongside the module
After make install, the filesystem looks like:
site_perl/
Abacus.pm
Abacus/
include/
abacus.h
abacus_math.h
Write a test
Abacus/t/01-basic.t
use strict;
use warnings;
use Test::More;
use Abacus qw(add subtract multiply divide factorial);
is(add(2, 3), 5, 'add');
is(subtract(10, 4), 6, 'subtract');
is(multiply(3, 7), 21, 'multiply');
is(divide(20, 4), 5, 'divide');
is(factorial(5), 120, 'factorial');
eval { divide(1, 0) };
like($@, qr/division by zero/, 'divide by zero croaks');
eval { factorial(-1) };
like($@, qr/negative/, 'negative factorial croaks');
done_testing;
Build and install Abacus
cd Abacus
perl Makefile.PL
make
make test
make install # installs headers into site_perl
Part 2: The Consumer Distribution (Tally)
Tally is a separate distribution that reuses Abacus's C arithmetic without duplicating any code. It adds its own "running total" functionality on top.
Write the Makefile.PL that finds Abacus headers
This is where the consumer locates the provider's headers. The two-step resolution strategy supports both installed (CPAN) and development (sibling
directory) scenarios.
Tally/Makefile.PL
use 5.008003;
use strict;
use warnings;
use ExtUtils::MakeMaker;
# Resolve Abacus include directory:
# 1. Try installed Abacus module (CPAN / system)
# 2. Fall back to sibling directory (development)
my $abacus_inc;
eval {
no warnings 'redefine';
local *XSLoader::load = sub {}; # skip XS bootstrap
require Abacus;
my $dir = Abacus->include_dir();
$abacus_inc = $dir if $dir && -d $dir;
};
if (!$abacus_inc && -d '../Abacus/include') {
$abacus_inc = '../Abacus/include';
}
die "Cannot find Abacus include directory.\n"
. "Install Abacus or place it as a sibling directory.\n"
unless $abacus_inc;
WriteMakefile(
NAME => 'Tally',
AUTHOR => 'Your Name <you@example.com>',
VERSION_FROM => 'lib/Tally.pm',
ABSTRACT_FROM => 'lib/Tally.pm',
LICENSE => 'artistic_2',
MIN_PERL_VERSION => '5.008003',
CONFIGURE_REQUIRES => {
'ExtUtils::MakeMaker' => '0',
'Abacus' => '0.01',
},
TEST_REQUIRES => {
'Test::More' => '0',
},
PREREQ_PM => {
'Abacus' => '0.01',
},
# Point the compiler at Abacus's installed headers
INC => "-I$abacus_inc",
OBJECT => '$(O_FILES)',
dist => { COMPRESS => 'gzip -9f', SUFFIX => 'gz' },
clean => { FILES => 'Tally-*' },
);
Let's walk through the header resolution:
-
Try the installed path first -
require Abacusloads the module, thenAbacus->include_dir()returns the path where the headers were installed. We stub outXSLoader::loadbecause we only need the pure-Perlinclude_dir()method, not the XS functions. -
Fall back to sibling directory - during development, Abacus and Tally
often live side by side.
../Abacus/includehandles this case. - Die with a clear message if neither path works.
The resolved path is passed to INC, which adds it to the C compiler's include search path (-I/path/to/Abacus/include).
Abacus is listed in both CONFIGURE_REQUIRES and PREREQ_PM:
-
CONFIGURE_REQUIRESensures Abacus is installed beforeMakefile.PLruns (needed because werequire Abacusat configure time) -
PREREQ_PMensures it is available at runtime too
Write the XS file
This is where the reuse happens. Tally includes abacus_math.h directly -
no Perl coupling, just pure C function calls.
Tally/Tally.xs
#define PERL_NO_GET_CONTEXT
#include "EXTERN.h"
#include "perl.h"
#include "XSUB.h"
/* Hook Abacus errors into Perl's croak() */
#define ABACUS_FATAL(msg) croak("%s", (msg))
/* Include the pure-C header from Abacus - no Perl deps in the header */
#include "abacus_math.h"
/* ── Tally's own C logic, built on top of Abacus ─────────────── */
typedef struct {
int32_t total;
} tally_state_t;
static inline void
tally_init(tally_state_t *state) {
state->total = 0;
}
static inline int32_t
tally_add(tally_state_t *state, int32_t value) {
state->total = abacus_add(state->total, value);
return state->total;
}
static inline int32_t
tally_subtract(tally_state_t *state, int32_t value) {
state->total = abacus_subtract(state->total, value);
return state->total;
}
static inline int32_t
tally_multiply_total(tally_state_t *state, int32_t value) {
state->total = abacus_multiply(state->total, value);
return state->total;
}
static inline int32_t
tally_get(tally_state_t *state) {
return state->total;
}
static inline void
tally_reset(tally_state_t *state) {
state->total = 0;
}
/* ── XS bindings ─────────────────────────────────────────────── */
MODULE = Tally PACKAGE = Tally
PROTOTYPES: DISABLE
SV *
new(class)
const char *class
CODE:
tally_state_t *state;
Newxz(state, 1, tally_state_t);
tally_init(state);
RETVAL = newSV(0);
sv_setref_pv(RETVAL, class, (void *)state);
OUTPUT:
RETVAL
int
add(self, value)
SV *self
int value
CODE:
tally_state_t *state = INT2PTR(tally_state_t *, SvIV(SvRV(self)));
RETVAL = tally_add(state, value);
OUTPUT:
RETVAL
int
subtract(self, value)
SV *self
int value
CODE:
tally_state_t *state = INT2PTR(tally_state_t *, SvIV(SvRV(self)));
RETVAL = tally_subtract(state, value);
OUTPUT:
RETVAL
int
multiply_total(self, value)
SV *self
int value
CODE:
tally_state_t *state = INT2PTR(tally_state_t *, SvIV(SvRV(self)));
RETVAL = tally_multiply_total(state, value);
OUTPUT:
RETVAL
int
total(self)
SV *self
CODE:
tally_state_t *state = INT2PTR(tally_state_t *, SvIV(SvRV(self)));
RETVAL = tally_get(state);
OUTPUT:
RETVAL
void
reset(self)
SV *self
CODE:
tally_state_t *state = INT2PTR(tally_state_t *, SvIV(SvRV(self)));
tally_reset(state);
void
DESTROY(self)
SV *self
CODE:
tally_state_t *state = INT2PTR(tally_state_t *, SvIV(SvRV(self)));
Safefree(state);
Notice that Tally includes abacus_math.h (the pure C header), not abacus.h (the Perl-facing wrapper). This is intentional - Tally has its own Perl/XS setup and only needs the C functions.
Write the Perl module
Tally/lib/Tally.pm
package Tally;
use 5.008003;
use strict;
use warnings;
our $VERSION = '0.01';
require XSLoader;
XSLoader::load('Tally', $VERSION);
1;
__END__
=head1 NAME
Tally - Running total calculator using Abacus C headers
=head1 SYNOPSIS
use Tally;
my $t = Tally->new;
$t->add(10); # total is now 10
$t->add(5); # total is now 15
$t->subtract(3); # total is now 12
$t->multiply_total(2); # total is now 24
say $t->total; # 24
$t->reset; # back to 0
=cut
Write a test
Tally/t/01-basic.t
use strict;
use warnings;
use Test::More;
use_ok('Tally');
my $t = Tally->new;
isa_ok($t, 'Tally');
is($t->total, 0, 'starts at zero');
is($t->add(10), 10, 'add 10');
is($t->add(5), 15, 'add 5');
is($t->subtract(3), 12, 'subtract 3');
is($t->multiply_total(2), 24, 'multiply by 2');
is($t->total, 24, 'total is 24');
$t->reset;
is($t->total, 0, 'reset to zero');
done_testing;
Build Tally (development mode)
cd Tally
perl Makefile.PL # finds ../Abacus/include automatically
make
make test
I hope you found this tutorial useful! If you have questions about XS, C header reuse, or building modular Perl/C libraries, please leave a message.
I am trying to understand the behavior of the following script under Perl 5.28.2:
sub split_and_print {
my $label = $_[0];
my $x = $_[1];
my @parts = split('\.', $x);
print sprintf("%s -> %s %s %.20f\n", $label, $parts[0], $parts[1], $x);
}
my @raw_values = ('253.38888888888889', '373.49999999999994');
for my $raw_value (@raw_values) {
split_and_print("'$raw_value'", $raw_value);
split_and_print("1.0 * '$raw_value'", 1.0 * $raw_value);
}
for me, this prints
'253.38888888888889' -> 253 38888888888889 253.38888888888888573092
1.0 * '253.38888888888889' -> 253 388888888889 253.38888888888888573092
'373.49999999999994' -> 373 49999999999994 373.49999999999994315658
1.0 * '373.49999999999994' -> 373 5 373.49999999999994315658
All of that is as expected, except for the last line: I don't understand why, during the automatic conversion of $x from a number to a string in the call to split it is converted into 373.5. print(373.49999999999994 - 373.5) says -5.6843418860808e-14, so Perl knows that those numbers are not equal (i.e. it's not about a limited precision of floating points in Perl).
perlnumber says
As mentioned earlier, Perl can store a number in any one of three formats, but most operators typically understand only one of those formats. When a numeric value is passed as an argument to such an operator, it will be converted to the format understood by the operator.
[...]
If the source number is outside of the limits representable in the target form, a representation of the closest limit is used. (Loss of information)
If the source number is between two numbers representable in the target form, a representation of one of these numbers is used. (Loss of information)
But '373.5' doesn't seem to be the "closest limit" of representing 373.49999999999994 as a string -- that would be '373.49999999999994', or some other decimal representation that, when converted back to a number yields the original value.
Also: what is different about 253.38888888888889?
I am looking for a definite reference that explains how exactly the automatic conversion of numbers to strings works in Perl.
-
Clone - recursively copy Perl datatypes
- Version: 0.50 on 2026-03-28, with 33 votes
- Previous CPAN version: 0.49 was released 3 days before
- Author: ATOOMIC
-
CPANSA::DB - the CPAN Security Advisory data as a Perl data structure, mostly for CPAN::Audit
- Version: 20260327.002 on 2026-03-27, with 25 votes
- Previous CPAN version: 20260318.001 was released 9 days before
- Author: BRIANDFOY
-
DBD::Oracle - Oracle database driver for the DBI module
- Version: 1.95 on 2026-03-24, with 33 votes
- Previous CPAN version: 1.91_5 was released 8 days before
- Author: ZARQUON
-
IPC::Run - system() and background procs w/ piping, redirs, ptys (Unix, Win32)
- Version: 20260322.0 on 2026-03-22, with 39 votes
- Previous CPAN version: 20250809.0 was released 7 months, 12 days before
- Author: TODDR
-
Mojo::Pg - Mojolicious ♥ PostgreSQL
- Version: 4.29 on 2026-03-23, with 98 votes
- Previous CPAN version: 4.28 was released 5 months, 23 days before
- Author: SRI
-
Object::Pad - a simple syntax for lexical field-based objects
- Version: 0.825 on 2026-03-25, with 48 votes
- Previous CPAN version: 0.824 was released 1 day before
- Author: PEVANS
-
PDL::Stats - a collection of statistics modules in Perl Data Language, with a quick-start guide for non-PDL people.
- Version: 0.856 on 2026-03-22, with 15 votes
- Previous CPAN version: 0.855 was released 1 year, 16 days before
- Author: ETJ
-
SPVM - The SPVM Language
- Version: 0.990152 on 2026-03-26, with 36 votes
- Previous CPAN version: 0.990151 was released the same day
- Author: KIMOTO
-
Term::Choose - Choose items from a list interactively.
- Version: 1.781 on 2026-03-25, with 15 votes
- Previous CPAN version: 1.780 was released 1 month, 20 days before
- Author: KUERBIS
-
YAML::Syck - Fast, lightweight YAML loader and dumper
- Version: 1.42 on 2026-03-27, with 18 votes
- Previous CPAN version: 1.41 was released 4 days before
- Author: TODDR
This is the weekly favourites list of CPAN distributions. Votes count: 43
Week's winner: Mail::Make (+2)
Build date: 2026/03/28 20:47:31 GMT
Clicked for first time:
- DB::Handy - Pure-Perl flat-file relational database with DBI-like interface
- GD::Thumbnail - Thumbnail maker for GD
- HTTP::Handy - A tiny HTTP/1.0 server for Perl 5.5.3+
- Lingua::IND::Nums2Words - This module is deprecated. Please use Lingua::IND::Num2Word instead.
- Lingua::ITA::Word2Num - Word to number conversion in Italian
- Lingua::KOR::Word2Num - Word to number conversion in Korean
- LTSV::LINQ - LINQ-style query interface for LTSV files
- MIDI::RtController::Filter::Tonal - Tonal RtController filters
- Modern::Perl::Prelude - Project prelude for modern Perl style on Perl 5.26+
- Net::Async::SOCKS - basic SOCKS5 connection support for IO::Async
- Restish::Client - A RESTish client...in perl!
Increasing its reputation:
- App::Greple (+1=5)
- Authen::SASL (+1=11)
- CGI (+1=48)
- CHI (+1=64)
- Data::Printer (+1=154)
- DateTime::Format::ISO8601 (+1=11)
- DBD::Pg (+1=104)
- DBI (+1=283)
- FFI::Platypus (+1=70)
- Future (+1=63)
- Future::AsyncAwait (+1=52)
- Imager::QRCode (+1=3)
- IO::Async (+1=81)
- IO::Async::SSL (+1=5)
- IO::Compress (+1=20)
- IO::K8s (+1=5)
- Lingua::JA::Moji (+1=3)
- List::UtilsBy (+1=41)
- Mail::Make (+2=2)
- mb::JSON (+1=3)
- Mojo::Pg (+1=74)
- Mojo::UserAgent::Cached (+1=4)
- Net::Async::HTTP (+1=8)
- Object::Pad (+1=48)
- PDF::API2 (+1=33)
- Regexp::Assemble (+1=36)
- Regexp::Debugger (+1=60)
- Syntax::Keyword::Match (+1=15)
- Syntax::Keyword::Try (+1=48)
- Test2::Harness (+1=21)
- XML::Parser (+1=11)
I need to move some chunks of text around in a file. I am partially successful, in the sense that I can move only the first chunk successfully.
The text in the file looks like this:
text regtext1 text regtext2 text regtextA regtextZ end
where text is some random text, and regtext1,2,3 are pieces of text conforming to some regular rules / patterns. All of them can contain pretty much any printable character, and a few more (diacritics, end-of-line, ...).
What I do now is something like this:
/(reg)(text\d+.*?)(regtext[A-Z]+)/$1$3$2/gs
the result being that regextA is moved inside regtext1:
text regregtextAtext1 text regtext2 text regtextZ end
The issue is that after the replace, the search-and-replace continues at the position after regtextA, before regtextZ - if I understand the algorithm correctly.
How can I modify the search-and-replace expression in such way to do the same thing for regtext2...regtextZ, and all other such occurrences? The text in the end should look like:
text regregtextAtext1 text regregtextZtext2 text end
but it does not happen.
I might have to use the \G anchor, but I have no idea how. For debugging I use regex101.com.
Looking at a previous example, I tried the following code:
$s =~ s{(?:\G(?!\A)|)\K(reg)(text\d+.*?)(regtext[A-Z]+)}{"$1$3$2"}
but it makes also only one replacement - probably because I do not understand exactly how the original code (and \G) works.
I tried the correct version of the code suggested in the answer, but it takes an "infinity" of time(actually, I forcefully stopped the execution after several minutes) (just like in the previous example) - even if I limit the execution to only one replacement. The presence of the "while" is "malefic". In the absence of the while, the one replacement happens "instantly".
In my Perl code, I'm writing a package within which I define a __DATA__ section that embeds some Perl code.
Here is an excerpt of the code that gives error:
package remote {
__DATA__
print "$ENV{HOME}\n";
}
as show below
Missing right curly or square bracket at ....
The lexer counted more opening curly or square brackets than closing ones.
As a general rule, you'll find it's missing near the place you were last editing.
I can't seem to find any mis-matched brackets.
On the contrary, when I re-write the same package without braces, the code works.
package remote;
__DATA__
print "$ENV{HOME}\n";
I'd be grateful, if the experienced folks can highlight the gap in my understanding. FWIW, I'm using Perl 5.36.1 in case that matters.
I just spend another fun and productive week in Marseille at the Koha Hackfest hosted by BibLibre. We (Mark, tadzik and me) arrived on Sunday (via plane from Vienna or Poland, and I came by train from Berlin via Strasbourg) and left on Friday.
There where the usual interesting discussions on all things Koha, presentations of new features and of course a lot of socializing. And cheese, so much cheese...
Elasticsearch
On the first day there was a discussion on Elasticsearch and getting rid of Zebra (the old search engine used by Koha). Actually getting rid of Zebra is not an option (now), because small installation won't want to set up and run Elasticsearch. But Mark proposed using our Marc Normalization Plugin as the basis for a new internal, DB-only search engine (so no need for an external index etc) and over the course of the week (and with LLM help) implemented a prototype. It would really be amazing if we could get this running!
I worked a bit on improving Elasticsearch indexing:
- Bulk biblio ES index update after auth change: When merging (or updating) authorities, the Elasticsearch indexing of the linked biblios now will happen in one background job per authority instead of one background job per biblio. So an authority that is used in 100 biblios will now trigger one indexing background job with 100 biblio items instead of 100 background jobs with 1 biblio item each.
- Zebraqueue should not be added to when only Elasticsearch is used: We added a new syspref "ElasticsearchEnableZebraQueue". If disabled, no data will be written to the zebraqueue table, because usually when using Elasticsearch you don't need to also run Zebra.
I got sign-offs and Pass-QA for both issues during the hackfest, thanks Fridolin, Paul and Baptiste (who owns the coolest tea mug at BibLibre..)
QA
I also did QA on a bunch of other issues: 22639, 35267, 36550, 39158, 40906, 41767, 41967, 42107. Some of them where of interest to me, some I did because other people nicely asked me to :-)
LLM, "AI" and Agentic Coding
This was again a hot topic, with some people using those tools to great effect, some hating them, and some in between. As in my last post on the German Perl Workshop I again want to point out this blog post: I Sold Out for $20 a Month and All I Got Was This Perfectly Generated Terraform, and during the event the post Thoughts on slowing the fuck down dropped (by Mario Zechner, who wrote the coding agent I (currently) use).
Anyway, Koha now has some guidelines on AI and LLM-assisted contributions and on using LLM features inside Koha.
Claude vs domm
While working on unit tests for Bug 40577 I struggled with a test failing only if I run the whole test script (as opposed to only the one subtest I was working on). It seemed to be a problem with mocked tests, so I asked Joubu (who was by chance just standing next to me). Together we figured out the scoping problem: If you use Test::MockObject/MockModule multiple times on a class from different scopes, the mocked methods/functions might not automatically be removed. You have to call unmock explicitly. After the patch was done, I described the error to Claude and asked for a fix, expecting to not get anything useable. But (to my slight horror) it produced the correct explanation and fix in very short time. On the one hand: amazing; on the other hand: very scary.
Other random stuff:
- When it rains and a TGV arrives at the station, more people have the idea to take a taxi than taxis are available. So walking the short distance was necessary, but we (Katrin, who I met on the train, and me) still got wet. At least we had cold burgers...
- Paul showed me a non-Koha tool he has written: mdv - A terminal markdown viewer with vim keybindings. Very nice, I especially like it to view checkouts of gitlab wikis!
- I was not the only Team Scheisse fan attending! Philip++
- Philip also pointed out the very detailed and interesting shared notes produced by various attendees during the event.
- At my third visit to Marseille, I manage to navigate the city center quite well.
- I finally made it to the Tangerine record store, very nice selection. I still did not let the shop owner talk me into buying a 200€ original UK pressing of Unknown Pleasures by Joy Division.
- I did not get Moule Frits, but at least some Galette and Cidre.
- After being to Senegal in February, I now realized that there are a lot of places selling Yassa and Mafe in Marseille. I guess they where there last year too, I just did not see them, having never eaten Yassa or Mafe before.
- It can get very windy in Marseille.
- I should do it like Jake(?) and cycle (at least partly) to the next hackfest.
Thanks
Thanks to BibLibre and Paul Poulain for organizing the event, and to all the attendees for making it such a wonderful 5 days!
Looking forward to meet you all again at the upcoming KohaCon in Karlsruhe
Updates
- 2026-03-03: Added link to shared notes.
I have a calendar week of a given year, like so:
perl -E "use POSIX qw(strftime); say strftime('%Y-%V', localtime)"
How do I generate a unix timestamp for this calendar week? (for example a timestamp for the start of said week).
My use case is that I need to group different timestamps (YYYY-MM-DD) into calendar weeks, but then need unix timestamps of those weeks to proceed further. I use strftime to convert YYYY-MM-DD into calendar weeks, but have difficulties proceeding from there.
Make, Bash, and a scripting language of your choice
Creating AWS Resources…let me count the ways
You need to create an S3 bucket, an SQS queue, an IAM policy and a few other AWS resources. But how?…TIMTOWTDI
The Console
- Pros: visual, immediate feedback, no tooling required, great for exploration
- Cons: not repeatable, not version controllable, opaque, clickops doesn’t scale, “I swear I configured it the same way”
The AWS CLI
- Pros: scriptable, composable, already installed, good for one-offs
- Cons: not idempotent by default, no state management, error handling is manual, scripts can grow into monsters
CloudFormation
- Pros: native AWS, state managed by AWS, rollback support, drift detection
- Cons: YAML/JSON verbosity, slow feedback loop, stack update failures are painful, error messages are famously cryptic, proprietary to AWS, subject to change without notice
Terraform
- Pros: multi-cloud, huge community, mature ecosystem, state management, plan before apply
- Cons: state file complexity, backend configuration, provider versioning, HCL is yet another language to learn, overkill for small projects, often requires tricks & contortions
Pulumi
- Pros: real programming languages, familiar abstractions, state management
- Cons: even more complex than Terraform, another runtime to install and maintain
CDK
- Pros: real programming languages, generates CloudFormation, good for large organizations
- Cons: CloudFormation underneath means CloudFormation problems, Node.js dependency
…and the rest of crew…
Ansible, AWS SAM, Serverless Framework - each with their own opinions, dependencies, and learning curves.
Every option beyond the CLI adds a layer of abstraction, a new language or DSL, a state management story, and a new thing to learn and maintain. For large teams managing hundreds of resources across multiple environments that overhead is justified. For a solo developer or small team managing a focused set of resources it can feel like overkill.
Even in large organizations, not every project should be conflated into the corporate infrastructure IaC tool. Moreover, not every project gets the attention of the DevOps team necessary to create or support the application infrastructure.
What if you could get idempotent, repeatable, version-controlled
infrastructure management using tools you already have? No new
language, no state backend, no provider versioning. Just make,
bash, a scripting language you’re comfortable with, and your cloud
provider’s CLI.
And yes…my love affair with make is endless.
We’ll use AWS examples throughout, but the patterns apply equally to
Google Cloud (gcloud) and Microsoft Azure (az). The CLI tools
differ, the patterns don’t.
A word about the AWS CLI --query option
Before you reach for jq, perl, or python to parse CLI output,
it’s worth knowing that most cloud CLIs have built-in query
support. The AWS CLI’s --query flag implements JMESPath - a query
language for JSON that handles the majority of filtering and
extraction tasks without any additional tools:
# get a specific field
aws lambda get-function \
--function-name my-function \
--query 'Configuration.FunctionArn' \
--output text
# filter a list
aws sqs list-queues \
--query 'QueueUrls[?contains(@, `my-queue`)]|[0]' \
--output text
--query is faster, requires no additional dependencies, and keeps
your pipeline simple. Reach for it first. When it falls short -
complex transformations, arithmetic, multi-value extraction - that’s
when a one-liner earns its place:
# perl
aws lambda get-function --function-name my-function | \
perl -MJSON -n0 -e '$l=decode_json($_); print $l->{Configuration}{FunctionArn}'
# python
aws lambda get-function --function-name my-function | \
python3 -c "import json,sys; d=json.load(sys.stdin); print(d['Configuration']['FunctionArn'])"
Both get the job done. Use whichever lives in your shed.
What is Idempotency?
The word comes from mathematics - an operation is idempotent if applying it multiple times produces the same result as applying it once. Sort of like those ID10T errors…no matter how hard or how many times that user clicks on that button they get the same result.
In the context of infrastructure management it means this: running your resource creation script twice should have exactly the same outcome as running it once. The first run creates the resource. The second run detects it already exists and does nothing - no errors, no duplicates, no side effects.
This sounds simple but it’s surprisingly easy to get wrong. A naive
script that just calls aws lambda create-function will fail on the
second run with a ResourceConflictException. A slightly better
script wraps that in error handling. A truly idempotent script never
attempts to create a resource it knows already exists.
And it works in both directions. The idempotent bug - running a failing process repeatedly and getting the same error every time - is what happens when your failure path is idempotent too. Consistently wrong, no matter how many times you try. The patterns we’ll show are designed to ensure that success is idempotent while failure always leaves the door open for the next attempt.
Cloud APIs fall into four distinct behavioral categories when it comes to idempotency, and your tooling needs to handle each one differently:
Case 1 - The API is idempotent and produces output
Some APIs can be called repeatedly without error and return useful
output each time - whether the resource was just created or already
existed. aws events put-rule is a good example - it returns the rule
ARN whether the rule was just created or already existed. The pattern:
call the read API first, capture the output, call the write API only
if the read returned nothing.
Case 2 - The API is idempotent but produces no output
Some write APIs succeed silently - they return nothing on
success. aws s3api put-bucket-notification-configuration is a good
example. It will happily overwrite an existing configuration without
complaint, but returns no output to confirm success. The pattern: call
the API, synthesize a value for your sentinel using && echo to
capture something meaningful on success.
Case 3 - The API is not idempotent
Some APIs will fail with an error if you try to create a resource that
already exists. aws lambda add-permission returns
ResourceConflictException if the statement ID already exists. aws
lambda create-function returns ResourceConflictException if the
function already exists. These APIs give you no choice - you must
query first and only call the write API if the resource is missing.
Case 4 - The API call fails
Any of the above can fail - network errors, permission problems,
invalid parameters. When a call fails you must not leave behind a
sentinel file that signals success. A stale sentinel is worse than no
sentinel - it tells Make the resource exists when it doesn’t, and
subsequent runs silently skip the creation step. The patterns: || rm
-f $@ when writing directly, or else rm -f $@ when capturing to a
variable first.
The Sentinel File
Before we look at the four patterns in detail, we need to introduce a concept that ties everything together: the sentinel file.
A sentinel file is simply a file whose existence signals that a task
has been completed successfully. It contains no magic - it might hold
the output of the API call that created the resource, or it might just
be an empty file created with touch. What matters is that it exists
when the task succeeded and doesn’t exist when it hasn’t.
make has used this pattern since the 1970s. When you declare a
target in a Makefile, make checks whether a file with that name
exists before deciding whether to run the recipe. If the file exists
and is newer than its dependencies, make skips the recipe
entirely. If the file doesn’t exist, make runs the recipe to create
it.
For infrastructure management this is exactly the behavior we want:
my-resource:
@value="$$(aws some-service describe-resource \
--name $(RESOURCE_NAME) 2>&1)"; \
if [[ -z "$$value" || "$$value" = "ResourceNotFound" ]]; then \
value="$$(aws some-service create-resource \
--name $(RESOURCE_NAME))"; \
fi; \
test -e $@ || echo "$$value" > $@
The first time you run make my-resource the file doesn’t exist,
the recipe runs, the resource is created, and the API response
is written to the sentinel file my-resource. The second time you
run it, make sees the file exists and skips the recipe entirely -
zero API calls.
When an API call fails we want to be sure we do not create the sentinel file. We’ll cover the failure case in more detail in Pattern 4 of the next section.
The Four Patterns
Armed with the sentinel file concept and an understanding of the four API behavioral categories, let’s look at concrete implementations of each pattern.
Pattern 1 - Idempotent API with output
The simplest case. Query the resource first - if it exists capture the output and write the sentinel. If it doesn’t exist, create it, capture the output, and write the sentinel. Either way you end up with a sentinel containing meaningful content.
The SQS queue creation is a good example:
sqs-queue:
@queue="$$(aws sqs list-queues \
--query 'QueueUrls[?contains(@, `$(QUEUE_NAME)`)]|[0]' \
--output text --profile $(AWS_PROFILE) 2>&1)"; \
if echo "$$queue" | grep -q 'error\|Error'; then \
echo "ERROR: list-queues failed: $$queue" >&2; \
exit 1; \
elif [[ -z "$$queue" || "$$queue" = "None" ]]; then \
queue="$(QUEUE_NAME)"; \
aws sqs create-queue --queue-name $(QUEUE_NAME) \
--profile $(AWS_PROFILE); \
fi; \
test -e $@ || echo "$$queue" > $@
Notice --query doing the filtering work before the output reaches
the shell. No jq, no pipeline - the AWS CLI extracts exactly what we
need. The result is either a queue URL or empty. If empty we
create. Either way $$queue ends up with a value and the sentinel is
written exactly once.
The EventBridge rule follows the same pattern:
lambda-eventbridge-rule:
@rule="$$(aws events describe-rule \
--name $(RULE_NAME) \
--profile $(AWS_PROFILE) 2>&1)"; \
if echo "$$rule" | grep -q 'ResourceNotFoundException'; then \
rule="$$(aws events put-rule \
--name $(RULE_NAME) \
--schedule-expression "$(SCHEDULE_EXPRESSION)" \
--state ENABLED \
--profile $(AWS_PROFILE))"; \
elif echo "$$rule" | grep -q 'error\|Error'; then \
echo "ERROR: describe-rule failed: $$rule" >&2; \
exit 1; \
fi; \
test -e $@ || echo "$$rule" > $@
Same shape - query, create if missing, write sentinel once.
Pattern 2 - Idempotent API with no output
Some APIs succeed silently. aws s3api
put-bucket-notification-configuration is the canonical example - it
happily overwrites an existing configuration and returns nothing. No
output means nothing to write to the sentinel.
The solution is to synthesize a value using &&:
define notification_configuration =
use JSON;
my $lambda_function = $ENV{lambda_function};
my $function_arn = decode_json($lambda_function)->{Configuration}->{FunctionArn};
my $configuration = {
LambdaFunctionConfigurations => [ {
LambdaFunctionArn => $function_arn,
Events => [ split ' ', $ENV{s3_event} ],
}
]
};
print encode_json($configuration);
endef
export s_notification_configuration = $(value notification_configuration)
lambda-s3-trigger: lambda-s3-permission
temp="$$(mktemp)"; trap 'rm -f "$$temp"' EXIT; \
lambda_function="$$(cat lambda-function)"; \
echo $$(s3_event="$(S3_EVENT)" lambda_function="$$lambda_function" \
perl -e "$$s_notification_configuration") > $$temp; \
trigger="$$(aws s3api put-bucket-notification-configuration \
--bucket $(BUCKET_NAME) \
--notification-configuration file://$$temp \
--profile $(AWS_PROFILE) && cat $$temp)"; \
test -e $@ || echo "$$trigger" > $@
The && cat $$temp is the key. If the API call succeeds the &&
fires and $$trigger gets the configuration JSON string - something meaningful to
write to the sentinel. If the API call fails && doesn’t fire,
$$trigger stays empty because the Makefile recipe aborts.
Using a
scriptlet (s_notification_configuration)
might seem like overkill, but it’s worth not having to fight shell
quoting issues!
Writing JSON used in many AWS API calls to a temporary file is usually a better way than passing a string on the command line. Unless you wrap the JSON in quotes you’ll be fighting shell quoting and interpolation issues…and of course you can write your scriptlets in Perl or Python!
Pattern 3 - Non-idempotent API
Some APIs are not idempotent - they fail with a
ResourceConflictException or similar if the resource already
exists. aws lambda add-permission and aws lambda create-function
are both in this category. There is no “create or update” variant -
you must check existence first and only call the write API if the
resource is missing.
The Lambda S3 permission target is a good example:
lambda-s3-permission: lambda-function s3-bucket
@permission="$$(aws lambda get-policy \
--function-name $(FUNCTION_NAME) \
--profile $(AWS_PROFILE) 2>&1)"; \
if echo "$$permission" | grep -q 'ResourceNotFoundException' || \
! echo "$$permission" | grep -q s3.amazonaws.com; then \
permission="$$(aws lambda add-permission \
--function-name $(FUNCTION_NAME) \
--statement-id s3-trigger-$(BUCKET_NAME) \
--action lambda:InvokeFunction \
--principal s3.amazonaws.com \
--source-arn arn:aws:s3:::$(BUCKET_NAME) \
--profile $(AWS_PROFILE))"; \
elif echo "$$permission" | grep -q 'error\|Error'; then \
echo "ERROR: get-policy failed: $$permission" >&2; \
exit 1; \
fi; \
if [[ -n "$$permission" ]]; then \
test -e $@ || echo "$$permission" > $@; \
else \
rm -f $@; \
fi
A few things worth noting here…
get-policyreturns the full policy document which may contain multiple statements - we check for the presence ofs3.amazonaws.comspecifically using! grep -qrather than just checking for an empty response. This handles the case where a policy exists but doesn’t yet have the S3 permission we need.- The sentinel is only written if
$$permissionis non-empty after the if block. This covers the case whereget-policyreturns nothing andadd-permissionalso fails - the sentinel stays absent and the nextmakerun will try again. - We pipe errors to our
bashvariable to detect the case where the resource does not exist or there may have been some other error. When other failures are possible2>&1combined with specific error string matching gives you both idempotency and visibility. Swallowing errors silently (2>/dev/null) is how idempotent bugs are born.
Pattern 4 - Failure handling
This isn’t a separate pattern so much as a discipline that applies to all three of the above. There are two mechanisms depending on how the sentinel is written.
Case 1: When the sentinel is written directly by the command:
aws lambda create-function ... > $@ || rm -f $@
|| rm -f $@ ensures that if the command fails the partial or empty
sentinel is immediately cleaned up. Without it make sees the file on
the next run and silently skips the recipe - an idempotent bug.
Case 2: When the sentinel is written by capturing output to a variable first:
if [[ -n "$$value" ]]; then \
test -e $@ || echo "$$value" > $@; \
else \
rm -f $@; \
fi
The else rm -f $@ serves the same purpose. If the variable is empty
- because the API call failed - the sentinel is removed. If the
sentinel doesn’t exist yet nothing is written. Either way the next
make run will try again.
In both cases the goal is the same: a sentinel file should only exist when the underlying resource exists. A stale sentinel is worse than no sentinel.
Depending on the way your recipe is written you may not need to test
the variable that capture the output at all. In Makefiles we
.SHELLFLAGS := -ec which causes make to exit immediately if any
command in a recipe fails. This means targets that don’t write to
$@ - like our sqs-queue target above
- don’t need explicit failure handling. make will die loudly and the
sentinel won’t be written. In that case you don’t even need to test
$$value and can simplify writing of the sentinel file like this:
test -e $@ || echo "$$value" > $@
Conclusion
Creating AWS resources can be done using several different tools…all of them eventually call AWS APIs and process the return payloads. Each of these tools has its place. Each adds something. Each also has a complexity, dependencies, and a learning curve score.
For a small project or a focused set of resources - the kind a solo
developer or small team manages for a specific application - you don’t
need tools with a high cognitive or resource load. You can use those
tools you already have on your belt; make,bash, [insert favorite
scripting language here], and aws. And you can leverage those same tools
equally well with gcloud or az.
The four patterns we’ve covered handle every AWS API behavior you’ll encounter:
- Query first, create only if missing, write a sentinel
- Synthesize output when the API has none
- Always check before calling a non-idempotent API
- Clean up on failure with
|| rm -f $@
These aren’t new tricks - they’re straightforward applications of
tools that have been around for decades. make has been managing
file-based dependencies since 1976. The sentinel file pattern predates
cloud computing entirely. We’re just applying them to a new problem.
One final thought. The idempotent bug - running a failing process
repeatedly and getting the same error every time - is the mirror image
of what we’ve built here. Our goal is idempotent success: run it once,
it works. Run it again, it still works. Run it a hundred times,
nothing changes. || rm -f $@ is what separates idempotent success
from idempotent failure - it ensures that a bad run always leaves the
door open for the next attempt rather than cementing the failure in
place with a stale sentinel.
Your shed is already well stocked. Sometimes the right tool for the job is the one you’ve had hanging on the wall for thirty years.
Further Reading
- “Advanced Bash-Scripting Guide” - https://tldp.org/LDP/abs/html/index.html
- “GNU Make” - https://www.gnu.org/software/make/manual/html_node/index.html
- Dave Oswald, “Perl One Liners for the Shell” (Perl conference presentation): https://www.slideshare.net/slideshow/perl-oneliners/77841913
- Peteris Krumins, “Perl One-Liners” (No Starch Press): https://nostarch.com/perloneliners
- Sundeep Agarwal, “Perl One-Liners Guide” (free online): https://learnbyexample.github.io/learn_perl_oneliners/
- AWS CLI JMESPath query documentation: https://docs.aws.amazon.com/cli/latest/userguide/cli-usage-filter.html
I'm currently in a train from Berlin to Strasbourg and then onward to Marseille, traveling from the 28th(!) German Perl Workshop to the Koha Hackfest. I spend a few days after the Perl Workshop in Berlin with friends from school who moved to Berlin during/after university, hanging around at their homes and neighborhoods, visiting museums, professional industrial kitchens and other nice and foody places. But I want to review the Perl Workshop, so:
German Perl Workshop
It seems the last time I've attended a German Perl Workshop was in 2020 (literally days before the world shut down...), so I've missed a bunch of nice events and possibilities to meet up with old Perl friends. But even after this longish break it felt a bit like returning home :-)
I traveled to Berlin by sleeper train (worked without a problem) arriving on Monday morning a few hours before the workshop started. I went to a friends place (where I'm staying for the week), dumped my stuff, got a bike, and did a nice morning cycle through Tiergarten to the venue. Which was an actual church! And not even a secularized one.
Day 1
After a short introduction and welcome by Max Maischein (starting with a "Willkommen, liebe Gemeinde" fitting the location) he started the workshop with a talk on Claude Code and Coding-Agents. I only recently started to play around a bit with similar tools, so I could related to a lot of the topics mentioned. And I (again?) need to point out the blog post I Sold Out for $20 a Month and All I Got Was This Perfectly Generated Terraform which sums up my feelings and experiences with LLMs much better than I could.
Abigail then shared a nice story on how they (Booking.com) sharded a database, twice using some "interesting" tricks to move the data around and still getting reads from the correct replicas, all with nearly no downtime. Fun, but as "my" projects usually operate on a much smaller scale than Booking I will probably not try to recreate their solution.
For lunch I met with Michael at a nearby market hall for some Vietnamese food to do some planing for the upcoming Perl Toolchain Summit in Vienna.
Lars Dieckow then talked about data types in databases, or actually the lack of more complex types in databases and how one could still implement such types in SQL. Looks interesting, but probably a bit to hackish for me to actually use. I guess I have to continue handling such cases in code (which of course feels ugly, especially as I've learned to move more and more code into the DB using CTEs and window functions).
Next Flavio S. Glock showed his very impressive progress with PerlOnJava, a Perl distribution for the JVM. Cool, but probably not something I will use (mostly because I don't run Java anywhere, so adding it to our stack would make things more complex).
Then Lars showed us some of his beloved tools in Aus dem Nähkästchen, continuing a tradition started by Sven Guckes (RIP). I am already using some of the tools (realias, fzf, zoxide, htop, ripgrep) but now plan to finally clean up my dotfiles using xdg-ninja.
Now it was time for my first talk at this workshop, on Using class, the new-ish feature available in Perl (since 5.38) for native keywords for object-oriented programming. I also sneaked in some bibliographic data structures (MAB2 and MARCXML) to share my pain with the attendees. I was a tiny bit (more) nervous, as this was the first time I was using my current laptop (a Framework running Sway/Wayland) with an external projector, but wl-present worked like a charm. After the talk Wolfram Schneider showed me his MAB2->MARC online converter, which could maybe have been a basis for our tool, but then writing our own was a "fun" way to learn about MAB2.
The last talk of the day was Lee Johnson with I Bought A Scanner showing us how he got an old (ancient?) high-res foto scanner working again to scan his various film projects. Fun and interesting!
Between the end of the talks and the social event I went for some coffee with Paul Cochrane, and we where joined by Sawyer X and Flavio and some vegan tiramisu. Paul and me then cycled to the Indian restaurant through some light drizzle and along the Spree, and only then I realized that Paul cycled all the way from Hannover to Berlin. I was a bit envious (even though I in fact did cycle to Berlin 16 years ago (oh my, so long ago..)). Dinner was nice, but I did not stay too long.
Day 2
Tuesday started with Richard Jelinek first showing us his rather impressive off-grid house (or "A technocrat's house - 2050s standard") and the software used to automate it before moving on the the actual topic of his talk, Perl mit AI which turned out to be about a Perl implementation in Rust called pperl developed with massive LLM support. Which seems to be rather fast. As with PerlOnJava, I'm not sure I really want to use an alternative implementation (and of course currently pperl is marked as "Research Preview — WORK IN PROGRESS — please do not use in production environments") but maybe I will give it a try when it's more stable. Especially since we now have containers, which make setting up some experimental environments much easier.
Then Alexander Thurow shared his Thoughts on (Modern?) Software Development, lots of inspirational (or depressing) quotes and some LLM criticism lacking at the workshop (until now..)
Next up was Lars (again) with a talk on Hierarchien in SQL where we did a very nice derivation on how to get from some handcrafted SQL to recursive CTEs to query hierarchical graph data (DAG). I used (and even talked about) recursive CTEs a few times, but this was by far the best explanation I've ever seen. And we got to see some geizhals internals :-)
Sören Laird Sörries informed us on Digitale Souveränität und Made in Europe and I'm quite proud to say that I'm already using a lot of the services he showed (mailbox, Hetzner, fairphone, ..) though we could still do better (eg one project is still using a bunch of Google services)
Then Salve J. Nilsen (whose name I will promise to not mangle anymore) showed us his thoughts on What might a CPAN Steward organization look like?. We already talked about this topic a few weeks ago (in preparation of the Perl Toolchain Summit), so I was not paying a lot of attention (and instead hacked up a few short slides for a lightning talk) - Sorry. But in the discussion afterwards Salve clarified that the Cyber Resilience Act applies to all "CE-marked products" and that even a Perl API backend that power a mobile app running on a smartphone count as "CE-marked products". Before that I was under the assumption that only software running on actual physical products need the attestation. So we should really get this Steward organization going and hopefully even profit from it!
The last slot of the day was filled with the Lightning Talks hosted by R Geoffrey Avery and his gong. I submitted two and got a "double domm" slot, where I hurried through my microblog pipeline (on POSSE and getting not-twitter-tweets from my command line via some gitolite to my self hosted microblog and the on to Mastodon) followed by taking up Lars' challenge to show stuff from my own "Nähkästchen", in my case gopass and tofi (and some bash pipes) for an easy password manager.
We had the usual mixture of fun and/or informative short talks, but the highlight for me was Sebastian Gamaga, who did his first talk at a Perl event on How I learned about the problem differentiating a Hash from a HashRef. Good slides, well executed and showing a problem that I'm quite sure everybody encountered when first learning Perl (and I have to admit I also sometimes mix up hash/ref and regular/curly-braces when setting up a hash). Looking forward for a "proper" talk by Sebastian next year :-)
This evening I skipped having dinner with the Perl people, because I had to finish some slides for Wednesday and wanted to hang out with my non-Perl friends. But I've heard that a bunch of people had fun bouldering!
Day 3
I had a job call at 10:00 and (unfortunately) a bug to fix, so I missed the three talks in the morning session and only arrived at the venue during lunch break and in time for Paul Cochrane talking about Getting FIT in Perl (and fit he did get, too!). I've only recently started to collect exercise data (as I got a sport watch for my birthday) and being able to extract and analyze the data using my own software is indeed something I plan to do.
Next up was Julien Fiegehenn on Turning humans into SysAdmins, where he showed us how he used LLMs to adapt his developer mentorship framework to also work for sysadmin and getting them (LLMs, not fresh Sysadmins) to differentiate between Julian and Julien (among other things..)
For the final talk it was my turn again: Deploying Perl apps using Podman, make & gitlab. I'm not too happy with slides, as I had to rush a bit to finish them and did not properly highlight all the important points. But it still went well (enough) and it seemed that a few people found one of the main points (using bash / make in gitlab CI instead of specifying all the steps directly in .gitlab-ci.yml) useful.
Then Max spoke the closing words and announced the location of next years German Perl Workshop, which will take place in Hannover! Nice, I've never been there and plan to attend (and maybe join Paul on a bike ride there?)
Summary
As usual, a lot of thanks to the sponsors, the speakers, the orgas and the attendees. Thanks for making this nice event possible!
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- Author: CHRISN
-
OpenGL - Perl bindings to the OpenGL API, GLU, and GLUT/FreeGLUT
- Version: 0.7009 on 2026-03-19, with 15 votes
- Previous CPAN version: 0.7008
- Author: ETJ
-
SPVM - The SPVM Language
- Version: 0.990150 on 2026-03-19, with 36 votes
- Previous CPAN version: 0.990149
- Author: KIMOTO
-
Syntax::Construct - Explicitly state which non-feature constructs are used in the code.
- Version: 1.045 on 2026-03-19, with 14 votes
- Previous CPAN version: 1.044 was 10 days before
- Author: CHOROBA
-
TimeDate - Date and time formatting subroutines
- Version: 2.35 on 2026-03-21, with 28 votes
- Previous CPAN version: 2.34_03 was 1 day before
- Author: ATOOMIC
-
Unicode::UTF8 - Encoding and decoding of UTF-8 encoding form
- Version: 0.70 on 2026-03-19, with 20 votes
- Previous CPAN version: 0.69
- Author: CHANSEN
-
YAML::Syck - Fast, lightweight YAML loader and dumper
- Version: 1.39 on 2026-03-21, with 18 votes
- Previous CPAN version: 1.38
- Author: TODDR

We are re-opening the talk submissions with a new deadline of April 21, 2026. Please submit your 20 minute talks, and 50 minute talks at https://tprc.us/. Let us know if you need help with your submission or your talk development, because we have mentors who can listen to your ideas and guide you.
We are also taking submissions for interactive sessions. These are sessions that have a theme, but invite maximum audience participation; sessions which take advantage of the gathering of community members that have a wide range of experience and ideas to share. You would introduce the theme and moderate the session. If you have ideas for interactive sessions, but don’t want to moderate them yourself, please go to our wiki to enter your ideas, and maybe someone else will pick up the ball!
About eighteen months ago, I wrote a post called On the Bleading Edge about my decision to start using Perl’s new class feature in real code. I knew I was getting ahead of parts of the ecosystem. I knew there would be occasional pain. I decided the benefits were worth it.
I still think that’s true.
But every now and then, the bleading edge reminds you why it’s called that.
Recently, I lost a couple of days to a bug that turned out not to be in my code, not in the module I was installing, and not even in the module that module depended on — but in the installer’s understanding of modern Perl syntax.
This is the story.
The Symptom
I was building a Docker image for Aphra. As part of the build, I needed to install App::HTTPThis, which depends on Plack::App::DirectoryIndex, which depends on WebServer::DirIndex.
The Docker build failed with this error:
#13 45.66 --> Working on WebServer::DirIndex #13 45.66 Fetching https://www.cpan.org/authors/id/D/DA/DAVECROSS/WebServer-DirIndex-0.1.3.tar.gz ... OK #13 45.83 Configuring WebServer-DirIndex-v0.1.3 ... OK #13 46.21 Building WebServer-DirIndex-v0.1.3 ... OK #13 46.75 Successfully installed WebServer-DirIndex-v0.1.3 #13 46.84 ! Installing the dependencies failed: Installed version (undef) of WebServer::DirIndex is not in range 'v0.1.0' #13 46.84 ! Bailing out the installation for Plack-App-DirectoryIndex-v0.2.1.
Now, that’s a deeply confusing error message.
It clearly says that WebServer::DirIndex was successfully installed. And then immediately says that the installed version is undef and not in the required range.
At this point you start wondering if you’ve somehow broken version numbering, or if there’s a packaging error, or if the dependency chain is wrong.
But the version number in WebServer::DirIndex was fine. The module built. The tests passed. Everything looked normal.
So why did the installer think the version was undef?
When This Bug Appears
This only shows up in a fairly specific situation:
- A module uses modern Perl
classsyntax - The module defines a
$VERSION - Another module declares a prerequisite with a specific version requirement
- The installer tries to check the installed version without loading the module
- It uses Module::Metadata to extract
$VERSION - And the version of Module::Metadata it is using doesn’t properly understand
class
If you don’t specify a version requirement, you’ll probably never see this. Which is why I hadn’t seen it before. I don’t often pin minimum versions of my own modules, but in this case, the modules are more tightly coupled than I’d like, and specific versions are required.
So this bug only appears when you combine:
modern Perl syntax + version checks + older toolchain
Which is pretty much the definition of “bleading edge”.
The Real Culprit
The problem turned out to be an older version of Module::Metadata that had been fatpacked into cpanm.
cpanm uses Module::Metadata to inspect modules and extract $VERSION without loading the module. But the older Module::Metadata didn’t correctly understand the class keyword, so it couldn’t work out which package the $VERSION belonged to.
So when it checked the installed version, it found… nothing.
Hence:
Installed version (undef) of WebServer::DirIndex is not in range ‘v0.1.0’
The version wasn’t wrong. The installer just couldn’t see it.
An aside, you may find it amusing to hear an anecdote from my attempts to debug this problem.
I spun up a new Ubuntu Docker container, installed cpanm and tried to install Plack::App::DirectoryIndex. Initially, this gave the same error message. At least the problem was easily reproducible.
I then ran code that was very similar to the code cpanm uses to work out what a module’s version is.
$ perl -MModule::Metadata -E'say Module::Metadata->new_from_module("WebServer::DirIndex")->version'This displayed an empty string. I was really onto something here. Module::Metadata couldn’t find the version.
I was using Module::Metadata version 1.000037 and, looking at the change log on CPAN, I saw this:
1.000038 2023-04-28 11:25:40Z-detects "class" syntax
$ perl -MModule::Metadata -E'say Module::Metadata->new_from_module("WebServer::DirIndex")->version'
0.1.3That seemed conclusive. Excitedly, I reran the Docker build.
It failed again.
You’ve probably worked out why. But it took me a frustrating half an hour to work it out.
cpanm doesn’t use the installed version of Module::Metadata. It uses its own, fatpacked version. Updating Module::Metadata wouldn’t fix my problem.
The Workaround
I found a workaround. That was to add a redundant package declaration alongside the class declaration, so older versions of Module::Metadata can still identify the package that owns $VERSION.
So instead of just this:
class WebServer::DirIndex {
our $VERSION = '0.1.3';
...
}I now have this:
package WebServer::DirIndex;
class WebServer::DirIndex {
our $VERSION = '0.1.3';
...
}It looks unnecessary. And in a perfect world, it would be unnecessary.
But it allows older tooling to work out the version correctly, and everything installs cleanly again.
The Proper Fix
Of course, the real fix was to update the toolchain.
So I raised an issue against App::cpanminus, pointing out that the fatpacked Module::Metadata was too old to cope properly with modules that use class.
Tatsuhiko Miyagawa responded very quickly, and a new release of cpanm appeared with an updated version of Module::Metadata.
This is one of the nice things about the Perl ecosystem. Sometimes you report a problem and the right person fixes it almost immediately.
When Do I Remove the Workaround?
This leaves me with an interesting question.
The correct fix is “use a recent cpanm”.
But the workaround is “add a redundant package line so older tooling doesn’t get confused”.
So when do I remove the workaround?
The answer is probably: not yet.
Because although a fixed cpanm exists, that doesn’t mean everyone is using it. Old Docker base images, CI environments, bootstrap scripts, and long-lived servers can all have surprisingly ancient versions of cpanm lurking in them.
And the workaround is harmless. It just offends my sense of neatness slightly.
So for now, the redundant package line stays. Not because modern Perl needs it, but because parts of the world around modern Perl are still catching up.
Life on the Bleading Edge
This is what life on the bleading edge actually looks like.
Not dramatic crashes. Not language bugs. Not catastrophic failures.
Just a tool, somewhere in the install chain, that looks at perfectly valid modern Perl code and quietly decides that your module doesn’t have a version number.
And then you lose two days proving that you are not, in fact, going mad.
But I’m still using class. And I’m still happy I am.
You just have to keep an eye on the whole toolchain — not just the language — when you decide to live a little closer to the future than everyone else.
The post Still on the [b]leading edge first appeared on Perl Hacks.
Abstract
Even if you’re skeptical about AI writing your code, you’re leaving time on the table.
Many developers have been slow to adopt AI in their workflows, and that’s understandable. As AI coding assistants become more capable the anxiety is real - nobody wants to feel like they’re training their replacement. But we’re not there yet. Skilled developers who understand logic, mathematics, business needs and user experience will be essential to guide application development for the foreseeable future.
The smarter play is to let AI handle the parts of the job you never liked anyway - the documentation, the release notes, the boilerplate tests - while you stay focused on the work that actually requires your experience and judgment. You don’t need to go all in on day one. Here are six places to start.
1. Unit Test Writing
Writing unit tests is one of those tasks most developers know they should do more of and few enjoy doing. It’s methodical, time-consuming, and the worst time to write them is when the code reviewer asks if they pass.
TDD is a fine theory. In practice, writing tests before you’ve vetted your design means rewriting your tests every time the design evolves - which is often. Most experienced developers write tests after the design has settled, and that’s a perfectly reasonable approach.
The important thing is that they get written at all. Even a test that
simply validates use_ok(qw(Foo::Bar)) puts scaffolding in place that
can be expanded when new features are added or behavior changes. A
placeholder is infinitely more useful than nothing.
This is where AI earns its keep. Feed it a function or a module and it will identify the code paths that need coverage - the happy path, the edge cases, the boundary conditions, the error handling. It will suggest appropriate test data sets including the inputs most likely to expose bugs: empty strings, nulls, negative numbers, off-by-one values - the things a tired developer skips.
You review it, adjust it, own it. AI did the mechanical work of thinking through the permutations. You make sure it reflects how your code is actually used in the real world.
2. Documentation
“Documentation is like sex: when it’s good, it’s very, very good; and when it’s bad, it’s better than nothing.” - said someone somewhere.
Of course, there are developers that justify their disdain for writing documentation with one of two arguments (or both):
- The code is the documentation
- Documentation is wrong the moment it is written
It is true, the single source of truth regarding what code actually does is the code itself. What it is supposed to do is what documentation should be all about. When they diverge it’s either a defect in the software or a misunderstanding of the business requirement captured in the documentation.
Code that changes rapidly is difficult to document, but the intent of the code is not. Especially now with AI. It is trivial to ask AI to review the current documentation and align it with the code, negating point #2.
Feed AI a module and ask it to generate POD. It will describe what the code does. Your job is to verify that what it does is what it should do - which is a much faster review than writing from scratch.
3. Release Notes
If you’ve read this far you may have noticed the irony - this post was written by someone who just published a blog post about automating release notes with AI. So consider this section field-tested.
Release notes sit at the intersection of everything developers dislike: writing prose, summarizing work they’ve already mentally moved on from, and doing it with enough clarity that non-developers can understand what changed and why it matters. It’s the last thing standing between you and shipping.
The problem with feeding a git log to AI is that git logs are written for developers in the moment, not for readers after the fact. “Fix the thing” and “WIP” are not useful release note fodder.
The better approach is to give AI real context - a unified diff, a file manifest, and the actual source of the changed files. With those three inputs AI can identify the primary themes of a release, group related changes, and produce structured notes that actually reflect the architecture rather than just the line changes.
A simple make release-notes target can generate all three assets
automatically from your last git tag. Upload them, prompt for your
preferred format, and you have a first draft in seconds rather than
thirty minutes. Here’s how I built
it.
You still edit it. You add color, context, and the business rationale that only you know. But the mechanical work of reading every diff and turning it into coherent prose? Delegated.
4. Bug Triage
Debugging can be the most frustrating and the most rewarding experience for a developer. Most developers are predisposed to love a puzzle and there is nothing more puzzling than a race condition or a dangling pointer. Even though books and posters have been written about debugging it is sometimes difficult to know exactly where to start.
Describe the symptoms, share the relevant code, toss your theory at it. AI will validate or repudiate without ego - no colleague awkwardly telling you you’re wrong. It will suggest where to look, what telemetry to add, and before you know it you’re instrumenting the code that should have been instrumented from the start.
AI may not find your bug, but it will be a fantastic bug buddy.
5. Code Review
Since I’ve started using AI I’ve found that one of the most valuable things I can do with it is to give it my first draft of a piece of code. Anything more than a dozen or so lines is fair game.
Don’t waste your time polishing a piece of lava that just spewed from your noggin. There’s probably some gold in there and there’s definitely some ash. That’s ok. You created the framework for a discussion on design and implementation. Before you know it you have settled on a path.
AI’s strength is pattern recognition. It will recognize when your code needs to adopt a different pattern or when you nailed it. Get feedback. Push back. It’s not a one-way conversation. Question the approach, flag the inconsistencies that don’t feel right - your input into that review process is critical in evolving the molten rock into a solid foundation.
6. Legacy Code Deciphering
What defines “Legacy Code?” It’s a great question and hard to answer. And not to get too racy again, but as it has been said of pornography, I can’t exactly define it but I know it when I see it.
Fortunately (and yes I do mean fortunately) I have been involved in maintaining legacy code since the day I started working for a family run business in 1998. The code I maintained there was born literally in the late 70’s and still, to this day generates millions of dollars. You will never learn more about coding than by maintaining legacy code.
These are the major characteristics of legacy code from my experience (in order of visibility):
- It generates so much money for a company they could not possibly think of it being unavailable.
- It is monolithic and may in fact consist of modules in multiple languages.
- It is grown organically over the decades.
- It is more than 10 years old.
- The business rules are not documented, opaque and can only be discerned by a careful reading of the software. Product managers and users think they know what the software does, but probably do not have the entire picture.
- It cannot easily be re-written (by humans) because of #5.
- It contains as much dead code that is no longer serving any useful purpose as it does useful code.
I once maintained a C program that searched an ISAM database of legal judgments. The code had been ported from a proprietary in-memory binary tree implementation and was likely older than most of the developers reading this post. The business model was straightforward and terrifying - miss a judgment and we indemnify the client. Every change had to be essentially idempotent. You weren’t fixing code, you were performing surgery on a patient who would sue you if the scar was in the wrong place.
I was fortunate - there were no paydays for a client on my watch. But I wish I’d had AI back then. Not to write the code. To help me read it.
Now, where does AI come in? Points 5, 6, and definitely 7.
Throw a jabberwocky of a function at AI and ask it what it does. Not what it should do - what it actually does. The variable names are cryptic, the comments are either missing or lying, and the original author left the company during the Clinton administration. AI doesn’t care. It reads the code without preconception and gives you a plain English explanation of the logic, the assumptions baked in, and the side effects you never knew existed.
That explanation becomes your documentation. Those assumptions become your unit tests. Those side effects become the bug reports you never filed because you didn’t know they were bugs.
Dead code is where AI particularly shines. Show it a module and ask what’s unreachable. Ask what’s duplicated. Ask what hasn’t been touched in a decade but sits there quietly terrifying anyone who considers deleting it. AI will give you a map of the minefield so you can walk through it rather than around it forever.
Along the way AI will flag security vulnerabilities you never knew were there - input validation gaps, unsafe string handling, authentication assumptions that made sense in 1998 and are a liability today. It will also suggest where instrumentation is missing, the logging and telemetry that would have made every debugging session for the last twenty years shorter. You can’t go back and add it to history, but you can add it now before the next incident.
The irony of legacy code is that the skills required to understand it - patience, pattern recognition, the ability to hold an entire system in your head - are exactly the skills AI complements rather than replaces. You still need to understand the business. AI just helps you read the hieroglyphics.
Conclusion
None of the six items on this list require you to hand over the keys. You are still the architect, the decision maker, the person who understands the business and the user. AI is the tireless assistant who handles the parts of the job that drain your energy without advancing your craft.
The developers who thrive in the next decade won’t be the ones who resisted AI the longest. They’ll be the ones who figured out earliest how to delegate the tedious, the mechanical, and the repetitive - and spent the time they saved on the work that actually requires a human.
You don’t have to go all in. Start with a unit test. Paste some legacy code and ask AI to explain it or document it. Think of AI as that senior developer you go to with the tough problems - the one who has seen everything, judges nothing, and is available at 3am when the production system is on fire.
Only this one never sighs when you knock on the door.
Answer
You can configure grub via several ways to use a specific kernel or you can configure grub to use the latest one, or you can tell grub to pick one from a selection.
One specific kernel
If you inspect /etc/grub/grub.cfg you’ll see entries like this:
# the \ are mine, these are usually one big line but for blog purposes I
# multilined them
menuentry 'Debian GNU/Linux GNU/Linux, with Linux 6.12.8-amd64' --class debian \
--class gnu-linux --class gnu --class os $menuentry_id_option \
'gnulinux-6.12.8-amd64-advanced-5522bbcf-dc03-4d36-a3fe-2902be938ed4' {
You can use two identifiers to configure grub; you can use 'Debian GNU/Linux GNU/Linux, with Linux 6.12.8-amd64' or you can use the $menuentry_id_option
with gnulinux-6.12.8-amd64-advanced-5522bbcf-dc03-4d36-a3fe-2902be938ed4.
The Problem: Generating Release Notes is Boring
You’ve just finished a marathon refactoring - perhaps splitting a monolithic script into proper modules-and now you need to write the release notes. You could feed an AI a messy git log, but if you want high-fidelity summaries that actually understand your architecture, you need to provide better context.
The Solution: AI Loves Boring Tasks
…and is pretty good at them too!
Instead of manually describing changes or hoping it can interpret my ChangeLog, I’ve automated the production of three ephemeral “Sidecar” assets. These are generated on the fly, uploaded to the LLM, and then purged after analysis - no storage required.
The Assets
- The Manifest (
.lst): A simple list of every file touched, ensuring the AI knows the exact scope of the release. - The Logic (
.diffs): A unified diff (usinggit diff --no-ext-diff) that provides the “what” and “why” of every code change. - The Context (
.tar.gz): This is the “secret sauce.” It contains the full source of the changed files, allowing the AI to see the final implementation - not just the delta.
The Makefile Implementation
If you’ve read any of my blog
posts you
know I’m a huge Makefile fan. To automate this I’m naturally going
to add a recipe to my Makefile or Makefile.am.
First, we explicitly set the shell to /usr/bin/env bash to ensure features
like brace expansion work consistently across all dev environments.
# Ensure a portable bash environment for advanced shell features
SHELL := /usr/bin/env bash
.PHONY: release-notes clean-local
# Default to the version file, but allow command-line overrides
VERSION ?= $(shell cat VERSION)
release-notes:
@curr_ver=$(VERSION); \
last_tag=$$(git tag -l '[0-9]*.[0-9]*.[0-9]*' --sort=-v:refname | head -n 1); \
diffs="release-$$curr_ver.diffs"; \
diff_list="release-$$curr_ver.lst"; \
diff_tarball="release-$$curr_ver.tar.gz"; \
echo "Comparing $$last_tag to current $$curr_ver..."; \
git diff --no-ext-diff "$$last_tag" "$$curr_ver" > "$$diffs"; \
git diff --name-only --diff-filter=AMR "$$last_tag" "$$curr_ver" > "$$diff_list"; \
tar -cf - -T "$$diff_list" --transform "s|^|release-$$curr_ver/|" | gzip > "$$diff_tarball"; \
ls -alrt release-$$curr_ver*
clean-local:
@echo "Cleaning ephemeral release assets..."
rm -f release-*.{tar.gz,lst,diffs}
Breaking Down the Recipe
- The Shell Choice (
/usr/bin/env bash): We avoid hardcoding paths to ensure the script finds the correct Bash path on macOS, Linux, or inside a container. - The Version Override (
VERSION ?=): This allows the “pre-flight” trick: runningmake release-notes VERSION=HEADto iterate on notes before you’ve actually tagged the release. - Smart Tag Discovery (
--sort=-v:refname): Usingv:refnameforces Git to use semantic versioning logic (so1.10.0correctly follows1.2.0), while the glob pattern filters out “noisy” non-version tags. - The Diff Filter (
--diff-filter=AMR): This ensures the tarball only includes files that actually exist (Added, Modified, or Renamed). If a release deleted a file, this filter preventstarfrom erroring out when it can’t find the missing file on disk. - The Cleanup Crew (
clean-local): remove the ephemeral artifacts usingbashexpansion
The AI Prompt
Once your assets are generated, upload them to AI and use a prompt that enforces your specific formatting standards.
The Prompt:
I have uploaded a file manifest (`.lst`), a unified diff
(`.diffs`), and a tarball of the source code (`.tar.gz`). Please
analyze these to identify the primary themes of this
release. Generate a release entry using this protocol:
1. Separate versions with 71 dashes.
2. Include a high-level executive summary paragraph.
3. Indent bullet points exactly 21 spaces to maintain a vertical column.
4. Group changes under category labels like `Core Bedrock:` or `Miniserver:`.
5. Provide plain-text ASCII only inside a code block.
The Result
In a recent dry run for Bedrock 3.8.8, this exact workflow allowed the
AI to correctly identify that bedrock-miniserver.pl.in was
refactored into Bedrock::MiniServer and Bedrock::MiniServer::CLI,
while accurately noting that Bedrock::Error moved to the
Bedrock-Core distribution.
In actuality, version 3.8.8 focuses on the primary goals of MiniServer maturation (more batteries included), Apache decoupling, and distribution hygiene. Here’s AI’s version:
-----------------------------------------------------------------------
Bedrock 3.8.8
-----------------------------------------------------------------------
This release focuses on the maturation of the MiniServer component,
decoupling core Bedrock logic from Apache-specific dependencies, and
improving distribution hygiene. Key architectural changes include
refactoring the MiniServer into modular components and moving
exception handling into the Bedrock-Core distribution.
2026-03-17 - 3.8.8 - MiniServer Maturation and Apache Decoupling
Miniserver:
- Refactored bedrock-miniserver.pl into modular
Bedrock::MiniServer and Bedrock::MiniServer::CLI.
- Implemented zero-config scaffolding to
automatically create application trees.
- Integrated full Bedrock configuration pipeline
for parity with Apache environments.
- Updated bedrock_server_config to support both
getter and setter operations.
Core:
- Moved Bedrock::Error and Bedrock::Exception to
the Bedrock-Core distribution.
- Introduced Bedrock::FauxHandler as a production-
ready alias for test handlers.
- Added dist_dir() to BLM::Startup::Bedrock to
expose distribution paths to templates.
Fixes:
- Demoted Apache-specific modules (mod_perl2,
Apache2::Request) to optional recommendations.
- Improved Bedrock::Test::FauxHandler to handle
caller-supplied loggers and safe destruction.
Conclusion
As I mentioned in a response to a recent Medium article, AI can be an accelerator for seasoned professionals. You’re not cheating. You did the work. AI does the wordsmithing. You edit, add color, and ship. What used to take 30 minutes now takes 3. Now that’s working smarter, not harder!
Pro-Tip
Add this to the top of your Makefile
SHELL := /usr/bin/env bash
# Default to the version file, but allow command-line overrides
VERSION ?= $(shell cat VERSION)
Copy this to a file named release-notes.mk
.PHONY: release-notes clean-local
release-notes:
@curr_ver=$(VERSION); \
last_tag=$$(git tag -l '[0-9]*.[0-9]*.[0-9]*' --sort=-v:refname | head -n 1); \
diffs="release-$$curr_ver.diffs"; \
diff_list="release-$$curr_ver.lst"; \
diff_tarball="release-$$curr_ver.tar.gz"; \
echo "Comparing $$last_tag to current $$curr_ver..."; \
git diff --no-ext-diff "$$last_tag" "$$curr_ver" > "$$diffs"; \
git diff --name-only --diff-filter=AMR "$$last_tag" "$$curr_ver" > "$$diff_list"; \
tar -cf - -T "$$diff_list" --transform "s|^|release-$$curr_ver/|" | gzip > "$$diff_tarball"; \
ls -alrt release-$$curr_ver*
clean-local:
@echo "Cleaning ephemeral release assets..."
rm -f release-*.{tar.gz,lst,diffs}
Then add release-notes.mk to your Makefile
include release-notes.mk

Dave writes:
Last month I worked on various miscellaneous issues, including a few performance and deparsing regressions.
Summary: * 3:00 GH #24110 ExtUtils::ParseXS after 5.51 prevents some XS modules to build * 2:49 GH# #24212 goto void XSUB in scalar context crashes * 7:19 XS: avoid core distros using void ST(0) hack * 2:40 fix up Deparse breakage * 5:41 remove OP_NULLs in OP_COND execution path
Total: * 21:29 (HH::MM)

Paul writes:
Not too much activity of my own this month here, as I spent a lot of Perl time working on other things like magic-v2 or some CPAN module ecosystem like Future::IO. Plus I had a stage show to finish building props for and manage the running of.
But I did manage to do:
- 3 = Continue work on attributes-v2 and write a provisional PR for the first stage
- https://github.com/Perl/perl5/pull/24171
- 3 = Bugfix in class.c in threaded builds
- https://github.com/Perl/perl5/issues/24150
- https://github.com/Perl/perl5/pull/24171
- 1 = More
foreachlvref neatening- https://github.com/Perl/perl5/pull/24202
- 3 = Various github code reviews
Total: 10 hours
Now that both attributes-v2 and magic-v2 are parked awaiting the start of the 5.45.x development cycle, most of my time until then will be spent on building up some more exciting features to launch those with, as well as continuing to focus on fixing any release-blocker bugs for 5.44.

Tony writes:
``` [Hours] [Activity] 2026/02/02 Monday 0.08 #24122 review updates and comment 0.17 #24063 review updates and apply to blead 0.28 #24062 approve with comment and bonus comment 0.92 #24071 review updates and approve 0.40 #24080 review updates, research and comment 0.18 #24122 review updates and approve 0.27 #24157 look into it and original ticket, comment on original ticket 0.58 #24134 review and comments 0.27 #24144 review and approve with comment 0.18 #24155 review and comment 0.48 #16865 debugging
0.90 #16865 debugging, start a bisect with a better test case
4.71
2026/02/03 Tuesday 0.17 review steve’s suggested maint-votes and vote 0.17 #24155 review updates and approve 1.30 #24073 recheck, comments and apply to blead 0.87 #24082 more review, follow-ups 0.83 #24105 work on threads support
0.65 #24105 more work on threads, hash randomization support
3.99
2026/02/04 Wednesday 0.13 github notifications 1.92 #24163 review, comments 0.48 #24105 rebase some more, fix tests, do a commit and push for CI (needs more work)
1.70 #24105 more cleanup and push for CI
4.23
2026/02/05 Thursday 0.20 github notifications 0.38 #24105 review CI results and fix some issues 1.75 #24082 research and comments 0.63 #24105 more CI results, update the various generated config files and push for CI 0.17 #23561 review updates and comment 0.40 #24163 research and follow-up
0.58 #24098 review updates and comments
4.11
2026/02/09 Monday 0.15 #24082 comment 0.20 #22040 comment 0.30 #24005 research, comment 0.33 #4106 rebase again and apply to blead 0.35 #24133 comment 0.35 #24168 review CI results and comment 0.25 #24098 comment 0.18 #24129 review updates and comment 0.92 #24160 review, comment, approve 0.17 #24136 review and briefly comment 0.78 #24179 review, comments
0.48 #16865 comment, try an approach
4.46
2026/02/10 Tuesday 0.62 #24163 comment 0.23 #24082 research
0.20 #24082 more research
1.05
2026/02/11 Wednesday 0.48 #24163 review updates and approve 0.73 #24129 review updates 0.45 #24098 research and follow-up comment 0.32 #24134 review updates and approve 0.17 #24080 review updates and approve 1.18 #22132 setup, testing and comments on ticket and upstream llvm ticket 0.32 #23561 review update and approve 0.42 #24179 review some more and make a suggestion
1.03 #24187 review and comments
5.10
2026/02/12 Thursday 0.43 #24136 research and comment 0.17 #24190 review and approve 0.90 #24182 review discussion and the change and approve 0.08 #24178 review and briefly comment 0.33 #24177 review, research and comment 0.08 #24187 brief follow-up 0.43 #24176 research, review and approve 0.27 #24191 research, testing 0.20 #24192 review and approve 0.38 #24056 debugging
0.58 #24056 debugging, something in find_lexical_cv()?
3.85
2026/02/16 Monday 0.52 github notifications 0.08 #24178 review updates and approve 2.20 #24098 review and comments 0.88 #24056 more debugging, find at least one bug 0.92 #24056 work up tests, testing, commit message and push for
CI, perldelta and re-push
4.60
2026/02/17 Tuesday 0.18 #24056 check CI results, rebase in case and re-push, open PR 24205 2.88 #24187 review, comments 0.47 #24187 more comments 0.23 reply email from Jim Keenan re git handling for testing PR
tests without the fixes
3.76
2026/02/18 Wednesday 3.02 #24187 review comments, work on fix for assertion, testing, push for CI 0.25 #24187 check CI, make perldelta and make PR 24211
0.35 #24098 review updates and approve
3.62
2026/02/19 Thursday 0.30 #24200 research and comment 0.47 #24215 review, wonder why cmp_version didn’t complain, find out and approve 0.08 #24208 review and comment 0.73 #24213 review, everything that needs saying had been said 0.22 #24206 review and comments 0.53 #24203 review, comment and approve 0.33 #24210 review, research and approve with comment
0.37 #24200 review, research and approve
3.03
2026/02/23 Monday 0.35 #24212 testing add #24213 to 5.42 votes 2.42 #24159 review and benchmarking, comment
0.73 #24187 try to break it
3.50
2026/02/24 Tuesday 0.35 github notifications 1.13 #24187 update PR 24211 commit message, rechecks 0.43 #24001 re-work tests on PR 24060
0.30 #24001 more re-work
2.21
2026/02/25 Wednesday 1.02 #24180 research, comments 0.22 #24206 review update and comment 0.28 #24208 review updates and comment 0.57 #24060 more tests
0.88 #24060 more tests, testing, debugging
2.97
2026/02/26 Thursday 0.47 #24211 minor fixes per comments 0.23 #24206 review updates and approve 0.22 #24180 review updates and approve 0.98 #24236 review and comments 1.30 #24228 review, testing and comments 0.08 #24236 research and comment
0.78 #24159 review updates, testing, comments
4.06
Which I calculate is 59.25 hours.
Approximately 50 tickets were reviewed or worked on, and 3 patches were applied. ```
Let’s talk about music programming! There are a million aspects to this subject, but today, we’ll touch on generating rhythmic patterns with mathematical and combinatorial techniques. These include the generation of partitions, necklaces, and Euclidean patterns.
Stefan and J. Richard Hollos wrote an excellent little book called “Creating Rhythms” that has been turned into C, Perl, and Python. It features a number of algorithms that produce or modify lists of numbers or bit-vectors (of ones and zeroes). These can be beat onsets (the ones) and rests (the zeroes) of a rhythm. We’ll check out these concepts with Perl.
For each example, we’ll save the MIDI with the MIDI::Util module. Also, in order to actually hear the rhythms, we will need a MIDI synthesizer. For these illustrations, fluidsynth will work. Of course, any MIDI capable synth will do! I often control my eurorack analog synthesizer with code (and a MIDI interface module).
Here’s how I start fluidsynth on my mac in the terminal, in a separate session. It uses a generic soundfont file (sf2) that can be downloaded here (124MB zip).
fluidsynth -a coreaudio -m coremidi -g 2.0 ~/Music/soundfont/FluidR3_GM.sf2
So, how does Perl know what output port to use? There are a few ways, but with JBARRETT’s MIDI::RtMidi::FFI::Device, you can do this:
use MIDI::RtMidi::FFI::Device ();
my $midi_in = RtMidiIn->new;
my $midi_out = RtMidiOut->new;
print "Input devices:\n";
$midi_in->print_ports;
print "\n";
print "Output devices:\n";
$midi_out->print_ports;
print "\n";
This shows that fluidsynth is alive and ready for interaction.
Okay, on with the show!
First-up, let’s look at partition algorithms. With the part() function, we can generate all partitions of n, where n is 5, and the “parts” all add up to 5. Then taking one of these (say, the third element), we convert it to a binary sequence that can be interpreted as a rhythmic phrase, and play it 4 times.
#!/usr/bin/env perl
use strict;
use warnings;
use Music::CreatingRhythms ();
my $mcr = Music::CreatingRhythms->new;
my $parts = $mcr->part(5);
# [ [ 1, 1, 1, 1, 1 ], [ 1, 1, 1, 2 ], [ 1, 2, 2 ], [ 1, 1, 3 ], [ 2, 3 ], [ 1, 4 ], [ 5 ] ]
my $p = $parts->[2]; # [ 1, 2, 2 ]
my $seq = $mcr->int2b([$p]); # [ [ 1, 1, 0, 1, 0 ] ]
Now we render and save the rhythm:
use MIDI::Util qw(setup_score);
my $score = setup_score(bpm => 120, channel => 9);
for (1 .. 4) {
for my $bit ($seq->[0]->@*) {
if ($bit) {
$score->n('en', 40);
}
else {
$score->r('en');
}
}
}
$score->write_score('perldotcom-1.mid');
In order to play the MIDI file that is produced, we can use fluidsynth like this:
fluidsynth -i ~/Music/soundfont/FluidR3_GM.sf2 perldotcom-1.mid
Not terribly exciting yet.
Let’s see what the “compositions” of a number reveal. According to the Music::CreatingRhythms docs, a composition of a number is “the set of combinatorial variations of the partitions of n with the duplicates removed.”
Okay. Well, the 7 partitions of 5 are:
[[1, 1, 1, 1, 1], [1, 1, 1, 2], [1, 1, 3], [1, 2, 2], [1, 4], [2, 3], [5]]
And the 16 compositions of 5 are:
[[1, 1, 1, 1, 1], [1, 1, 1, 2], [1, 1, 2, 1], [1, 1, 3], [1, 2, 1, 1], [1, 2, 2], [1, 3, 1], [1, 4], [2, 1, 1, 1], [2, 1, 2], [2, 2, 1], [2, 3], [3, 1, 1], [3, 2], [4, 1], [5]]
That is, the list of compositions has, not only the partition [1, 2, 2], but also its variations: [2, 1, 2] and [2, 2, 1]. Same with the other partitions. Selections from this list will produce possibly cool rhythms.
Here are the compositions of 5 turned into sequences, played by a snare drum, and written to the disk:
use Music::CreatingRhythms ();
use MIDI::Util qw(setup_score);
my $mcr = Music::CreatingRhythms->new;
my $comps = $mcr->compm(5, 3); # compositions of 5 with 3 elements
my $seq = $mcr->int2b($comps);
my $score = setup_score(bpm => 120, channel => 9);
for my $pattern ($seq->@*) {
for my $bit (@$pattern) {
if ($bit) {
$score->n('en', 40); # snare patch
}
else {
$score->r('en');
}
}
}
$score->write_score('perldotcom-2.mid');
A little better. Like a syncopated snare solo.
Sidebar
Another way to play the MIDI file is to use timidity. On my mac, with the soundfont specified in the timidity.cfg configuration file, this would be:
timidity -c ~/timidity.cfg -Od perldotcom-2.mid
To convert a MIDI file to an mp3 (or other audio formats), I do this:
timidity -c ~/timidity.cfg perldotcom-2.mid -Ow -o - | ffmpeg -i - -acodec libmp3lame -ab 64k perldotcom-2.mp3
Okay. Enough technical details! What if we want a kick bass drum and hi-hat cymbals, too? Refactor time…
use MIDI::Util qw(setup_score);
use Music::CreatingRhythms ();
my $mcr = Music::CreatingRhythms->new;
my $s_comps = $mcr->compm(4, 2); # snare
my $s_seq = $mcr->int2b($s_comps);
my $k_comps = $mcr->compm(4, 3); # kick
my $k_seq = $mcr->int2b($k_comps);
my $score = setup_score(bpm => 120, channel => 9);
for (1 .. 8) { # repeats
my $s_choice = $s_seq->[ int rand @$s_seq ];
my $k_choice = $k_seq->[ int rand @$k_seq ];
for my $i (0 .. $#$s_choice) { # pattern position
my @notes = (42); # hi-hat every time
if ($s_choice->[$i]) {
push @notes, 40;
}
if ($k_choice->[$i]) {
push @notes, 36;
}
$score->n('en', @notes);
}
}
$score->write_score('perldotcom-3.mid');
Here we play generated kick and snare patterns, along with a steady hi-hat.
Next up, let’s look at rhythmic “necklaces.” Here we find many grooves of the world.

Image from The Geometry of Musical Rhythm
Rhythm necklaces are circular diagrams of equally spaced, connected nodes. A necklace is a lexicographical ordering with no rotational duplicates. For instance, the necklaces of 3 beats are [[1, 1, 1], [1, 1, 0], [1, 0, 0], [0, 0, 0]]. Notice that there is no [1, 0, 1] or [0, 1, 1]. Also, there are no rotated versions of [1, 0, 0], either.
So, how many 16 beat rhythm necklaces are there?
my $necklaces = $mcr->neck(16);
print scalar @$necklaces, "\n"; # 4116 of 'em!
Okay. Let’s generate necklaces of 8 instead, pull a random choice, and play the pattern with a percussion instrument.
use MIDI::Util qw(setup_score);
use Music::CreatingRhythms ();
my $patch = shift || 75; # claves
my $mcr = Music::CreatingRhythms->new;
my $necklaces = $mcr->neck(8);
my $choice = $necklaces->[ int rand @$necklaces ];
my $score = setup_score(bpm => 120, channel => 9);
for (1 .. 4) { # repeats
for my $bit (@$choice) { # pattern position
if ($bit) {
$score->n('en', $patch);
}
else {
$score->r('en');
}
}
}
$score->write_score('perldotcom-4.mid');
Here we choose from all necklaces. But note that this also includes the sequence with all ones and the sequence with all zeroes. More sophisticated code might skip these.
More interesting would be playing simultaneous beats.
use MIDI::Util qw(setup_score);
use Music::CreatingRhythms ();
my $mcr = Music::CreatingRhythms->new;
my $necklaces = $mcr->neck(8);
my $x_choice = $necklaces->[ int rand @$necklaces ];
my $y_choice = $necklaces->[ int rand @$necklaces ];
my $z_choice = $necklaces->[ int rand @$necklaces ];
my $score = setup_score(bpm => 120, channel => 9);
for (1 .. 4) { # repeats
for my $i (0 .. $#$x_choice) { # pattern position
my @notes;
if ($x_choice->[$i]) {
push @notes, 75; # claves
}
if ($y_choice->[$i]) {
push @notes, 63; # hi_conga
}
if ($z_choice->[$i]) {
push @notes, 64; # low_conga
}
$score->n('en', @notes);
}
}
$score->write_score('perldotcom-5.mid');
And that sounds like:
How about Euclidean patterns? What are they, and why are they named for a geometer?
Euclidean patterns are a set number of positions P that are filled with a number of beats Q that is less than or equal to P. They are named for Euclid because they are generated by applying the “Euclidean algorithm,” which was originally designed to find the greatest common divisor (GCD) of two numbers, to distribute musical beats as evenly as possible.
use MIDI::Util qw(setup_score);
use Music::CreatingRhythms ();
my $mcr = Music::CreatingRhythms->new;
my $beats = 16;
my $s_seq = $mcr->rotate_n(4, $mcr->euclid(2, $beats)); # snare
my $k_seq = $mcr->euclid(2, $beats); # kick
my $h_seq = $mcr->euclid(11, $beats); # hi-hats
my $score = setup_score(bpm => 120, channel => 9);
for (1 .. 4) { # repeats
for my $i (0 .. $beats - 1) { # pattern position
my @notes;
if ($s_seq->[$i]) {
push @notes, 40; # snare
}
if ($k_seq->[$i]) {
push @notes, 36; # kick
}
if ($h_seq->[$i]) {
push @notes, 42; # hi-hats
}
if (@notes) {
$score->n('en', @notes);
}
else {
$score->r('en');
}
}
}
$score->write_score('perldotcom-6.mid');
Now we’re talkin’ - an actual drum groove! To reiterate, the euclid() method distributes a number of beats, like 2 or 11, over the number of beats, 16. The kick and snare use the same arguments, but the snare pattern is rotated by 4 beats, so that they alternate.
So what have we learned today?
-
That you can use mathematical functions to generate sequences to represent rhythmic patterns.
-
That you can play an entire sequence or simultaneous notes with MIDI.
References:
-
App::Cmd - write command line apps with less suffering
- Version: 0.340 on 2026-03-13, with 50 votes
- Previous CPAN version: 0.339 was 21 days before
- Author: RJBS
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App::HTTPThis - Export the current directory over HTTP
- Version: v0.11.0 on 2026-03-13, with 25 votes
- Previous CPAN version: 0.010 was 3 months, 9 days before
- Author: DAVECROSS
-
App::zipdetails - Display details about the internal structure of Zip files
- Version: 4.005 on 2026-03-08, with 65 votes
- Previous CPAN version: 4.004 was 1 year, 10 months, 8 days before
- Author: PMQS
-
CPAN::Audit - Audit CPAN distributions for known vulnerabilities
- Version: 20260308.002 on 2026-03-08, with 21 votes
- Previous CPAN version: 20250829.001 was 6 months, 10 days before
- Author: BRIANDFOY
-
CPANSA::DB - the CPAN Security Advisory data as a Perl data structure, mostly for CPAN::Audit
- Version: 20260311.002 on 2026-03-11, with 25 votes
- Previous CPAN version: 20260308.006 was 2 days before
- Author: BRIANDFOY
-
Dancer2 - Lightweight yet powerful web application framework
- Version: 2.1.0 on 2026-03-12, with 139 votes
- Previous CPAN version: 2.0.1 was 4 months, 20 days before
- Author: CROMEDOME
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Data::Alias - Comprehensive set of aliasing operations
- Version: 1.30 on 2026-03-11, with 19 votes
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- Author: XMATH
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DBD::Pg - DBI PostgreSQL interface
- Version: 3.19.0 on 2026-03-14, with 103 votes
- Previous CPAN version: 3.18.0 was 2 years, 3 months, 7 days before
- Author: TURNSTEP
-
IO::Compress - IO Interface to compressed data files/buffers
- Version: 2.219 on 2026-03-09, with 19 votes
- Previous CPAN version: 2.218 was before
- Author: PMQS
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JSON::Schema::Modern - Validate data against a schema using a JSON Schema
- Version: 0.633 on 2026-03-13, with 16 votes
- Previous CPAN version: 0.632 was 2 months, 7 days before
- Author: ETHER
-
Math::Prime::Util - Utilities related to prime numbers, including fast sieves and factoring
- Version: 0.74 on 2026-03-13, with 22 votes
- Previous CPAN version: 0.74 was 1 day before
- Author: DANAJ
-
MetaCPAN::Client - A comprehensive, DWIM-featured client to the MetaCPAN API
- Version: 2.040000 on 2026-03-09, with 29 votes
- Previous CPAN version: 2.039000 was 8 days before
- Author: MICKEY
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Module::CoreList - what modules shipped with versions of perl
- Version: 5.20260308 on 2026-03-08, with 44 votes
- Previous CPAN version: 5.20260220 was 15 days before
- Author: BINGOS
-
OpenGL - Perl bindings to the OpenGL API, GLU, and GLUT/FreeGLUT
- Version: 0.7007 on 2026-03-13, with 15 votes
- Previous CPAN version: 0.7006 was 10 months, 29 days before
- Author: ETJ
-
less - The Perl 5 language interpreter
- Version: 5.042001 on 2026-03-08, with 2248 votes
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- Author: SHAY
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SPVM - The SPVM Language
- Version: 0.990146 on 2026-03-14, with 36 votes
- Previous CPAN version: 0.990145 was before
- Author: KIMOTO
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Syntax::Construct - Explicitly state which non-feature constructs are used in the code.
- Version: 1.044 on 2026-03-09, with 14 votes
- Previous CPAN version: 1.043 was 8 months, 5 days before
- Author: CHOROBA
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Test::Routine - composable units of assertion
- Version: 0.032 on 2026-03-12, with 13 votes
- Previous CPAN version: 0.031 was 2 years, 11 months before
- Author: RJBS
-
WWW::Mechanize::Chrome - automate the Chrome browser
- Version: 0.76 on 2026-03-13, with 22 votes
- Previous CPAN version: 0.75 was 4 months, 12 days before
- Author: CORION
-
X11::korgwm - a tiling window manager for X11
- Version: 6.1 on 2026-03-08, with 14 votes
- Previous CPAN version: 6.0 was before
- Author: ZHMYLOVE
This is the weekly favourites list of CPAN distributions. Votes count: 61
Week's winner: Langertha (+3)
Build date: 2026/03/14 22:28:35 GMT
Clicked for first time:
- Alien::libmaxminddb - Find or install libmaxminddb
- Container::Builder - Build Container archives.
- Data::HashMap - Fast type-specialized hash maps implemented in C
- Data::Path::XS - Fast path-based access to nested data structures
- EV::Future - Minimalist and high-performance async control flow for EV
- Graph::Easy::As_svg - Output a Graph::Easy as Scalable Vector Graphics (SVG)
- HTTP::Handy - A tiny HTTP/1.0 server for Perl 5.5.3+
- LaTeX::Replicase - Perl extension implementing a minimalistic engine for filling real TeX-LaTeX files that act as templates.
- Linux::Event - Front door for the Linux::Event reactor and proactor ecosystem
- Linux::Event::Listen - Listening sockets for Linux::Event
- LTSV::LINQ - LINQ-style query interface for LTSV files
- Mail::Make - Strict, Fluent MIME Email Builder
- Router::Ragel - Router module using Ragel finite state machine
- Search::Tokenizer - Decompose a string into tokens (words)
- Term::ReadLine::Repl - A batteries included interactive Term::ReadLine REPL module
- Test::Mockingbird - Advanced mocking library for Perl with support for dependency injection and spies
- Unicode::Towctrans -
- XML::PugiXML - Perl binding for pugixml C++ XML parser
Increasing its reputation:
- Affix (+1=5)
- App::cpm (+1=78)
- App::perlbrew (+1=181)
- Class::XSConstructor (+1=9)
- Compress::Zstd (+1=7)
- CtrlO::PDF (+1=4)
- Data::MessagePack (+1=18)
- Data::Random (+1=4)
- DateTime::Format::ISO8601 (+1=10)
- DBD::Oracle (+1=33)
- DBD::Pg (+1=103)
- DBIx::DataModel (+1=13)
- Encode::Simple (+1=6)
- EV (+1=50)
- Eval::Closure (+1=11)
- File::HomeDir (+1=36)
- File::Map (+1=24)
- Graph::Easy (+1=11)
- Iterator::Simple (+1=8)
- Langertha (+3=2)
- Locale::Unicode::Data (+1=2)
- LV (+2=4)
- Math::GMPz (+1=4)
- MetaCPAN::Client (+1=27)
- Moose (+1=335)
- MooX::Cmd (+1=9)
- Net::Server (+1=35)
- OpenGL (+1=15)
- PDL (+1=61)
- Perl::Critic (+1=135)
- Pinto (+1=66)
- PLS (+1=18)
- Readonly (+1=24)
- Reply (+1=63)
- Sentinel (+1=9)
- Server::Starter (+1=23)
- Test2::Plugin::SubtestFilter (+1=4)
- Test::LWP::UserAgent (+1=15)
- Text::Trim (+1=7)
- Try::Tiny (+1=181)
For those running a development version of git from master or next, you probably have seen it already. Today I was inspecting the git logs of git and found this little gem. It supports my workflow to the max.
You can now configure git status to compare branches with your current branch
in status. When you configure status.comparebranches you can use
@{upstream} and @{push} and you see both how far you’ve diverged from your
upstream and your push branch. For those, like me, who track an upstream branch
which differs from their push branch this is a mighty fine feature!
TL;DR
I didn’t like how the default zsh prompt truncation works. My solution, used in
my own custom-made prompt (fully supported by promptinit), uses a custom
precmd hook to dynamically determine the terminal’s available width.
Instead of blind chopping, my custom logic ensures human-readable truncation by following simple rules: it always preserves the home directory (∼) and the current directory name, only removing or shortening non-critical segments in the middle to keep the PS1 clean, contextual, and perfectly single-line. This is done via a so-called “Zig-Zag” pattern or string splitting on certain delimiters.
In the zshell you can use CORRECT_IGNORE_FILE to ignore files for spelling
corrections (or autocorrect for commands). While handy, it is somewhat limited
as it is global. Now, I wanted to ignore it only for git and not other
commands. But I haven’t found a way to only target git without having to make a
wrapper around git (which I don’t want to do).
So I wrote an autoloaded function that does this for me. The idea is rather
simple. In your .zshrc you set a zstyle that tells which file should be
ignored based on files (or directories) that exist in the current directory.
Based on this you build the CORRECT_IGNORE_FILE environment variable or you
just unset it. This function is then hooked into the chpwd action. I went
with three default options, check dir, file, or just exist: d, f, or e. File
wins, then directory, then exists.






