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Structured telemetry library for Clojure/Script

Telemere is a next-generation replacement for Timbre that offers one simple unified API for traditional logging, structured logging, tracing, and basic performance monitoring.

Friendly enough for complete beginners, but flexible enough for the most complex and performance-sensitive real-world projects.

It helps enable Clojure/Script systems that are easily observable, robust, and debuggable - and it represents the refinement and culmination of ideas brewing over 12+ years in Timbre, Tufte, Truss, etc.

Supports Clojure, ClojureScript, GraalVM, but not (yet) Babashka.

See here for full introduction.

Latest release/s

  • 2024-08-28 v1.0.0-beta22: release info (for early adopters/feedback)

Main tests Graal tests

See here for earlier releases.

Quick examples

(require '[taoensso.telemere :as t])

;; (Just works / no config necessary for typical use cases)

;; Without structured data
(t/log! :info "Hello world!") ; %> Basic log   signal (has message)
(t/event! ::my-id :debug)     ; %> Basic event signal (just id)

;; With structured data
(t/log! {:level :info, :data {...}} "Hello again!")
(t/event! ::my-id {:level :debug, :data {...}})

;; Trace (auto interops with OpenTelemetry)
;; Tracks form runtime, return value, and (nested) parent tree
(t/trace! {:id ::my-id :data {...}}
  (do-some-work))

;; Check resulting signal content for debug/tests
(t/with-signal (t/event! ::my-id)) ; => {:keys [ns level id data msg_ ...]}

;; Transform signals
(t/set-middleware! (fn [signal] (assoc signal :my-key "my-val")))

;; Filter signals by returning nil
(t/set-middleware! (fn [signal] (when-not (-> signal :data :skip-me?) signal)))

;; Getting fancy (all costs are conditional!)
(t/log!
  {:level       :debug
   :sample-rate (my-dynamic-sample-rate)
   :when        (my-conditional)
   :rate-limit  {"1 per sec" [1  1000]
                 "5 per min" [5 60000]}

   :do (inc-my-metric!)
   :let
   [diagnostics (my-expensive-diagnostics)
    formatted   (my-expensive-format diagnostics)]

   :data
   {:diagnostics diagnostics
    :formatted   formatted
    :local-state *my-dynamic-context*}}

  ;; Message string or vector to join as string
  ["Something interesting happened!" formatted])

Why Telemere?

Ergonomics

  • Elegant, lightweight API that's easy to use, easy to configure, and deeply flexible.
  • Sensible defaults to make getting started fast and easy.
  • Extensive beginner-oriented documentation, docstrings, and error messages.

Interop

Scaling

  • Hyper-optimized and blazing fast, see benchmarks.
  • An API that scales comfortably from the smallest disposable code, to the most massive and complex real-world production environments.
  • Auto handler stats for debugging performance and other issues at scale.

Flexibility

  • Config via plain Clojure vals and fns for easy customization, composition, and REPL debugging.
  • Unmatched environmental config support: JVM properties, environment variables, or classpath resources. Per platform, or cross-platform.
  • Unmatched filtering support: by namespace, id pattern, level, level by namespace pattern, etc. At runtime and compile-time.
  • Fully configurable a/sync dispatch support: blocking, dropping, sliding, etc.
  • Turn-key sampling, rate-limiting, and back-pressure monitoring with sensible defaults.

Comparisons

Next-gen observability

A key hurdle in building observable systems is that it's often inconvenient and costly to get out the kind of detailed info that we need when debugging.

Telemere's strategy to address this is to:

  1. Provide lean, low-fuss syntax to let you conveniently convey program state.
  2. Use the unique power of Lisp macros to let you dynamically filter costs as you filter signals (pay only for what you need, when you need it).
  3. For those signals that do pass filtering: move costs from the callsite to a/sync handlers with explicit threading and back-pressure semantics and performance monitoring.

The effect is more than impressive micro-benchmarks. This approach enables a fundamental (qualitative) change in one's approach to observability.

It enables you to write code that is information-verbose by default.

Video demo

See for intro and basic usage:

Telemere demo video

More examples

;; Set minimum level
(t/set-min-level!       :warn) ; For all    signals
(t/set-min-level! :log :debug) ; For `log!` signals only

;; Set namespace and id filters
(t/set-ns-filter! {:disallow "taoensso.*" :allow "taoensso.sente.*"})
(t/set-id-filter! {:allow #{::my-particular-id "my-app/*"}})

;; Set minimum level for `event!` signals for particular ns pattern
(t/set-min-level! :event "taoensso.sente.*" :warn)

;; See `t/help:filters` docstring for more

;; Use middleware to:
;;   - Transform signals
;;   - Filter    signals by arb conditions (incl. data/content)

(t/set-middleware!
  (fn [signal]
    (if (-> signal :data :skip-me?)
      nil ; Filter signal (don't handle)
      (assoc signal :passed-through-middleware? true))))

(t/with-signal (t/event! ::my-id {:data {:skip-me? true}}))  ; => nil
(t/with-signal (t/event! ::my-id {:data {:skip-me? false}})) ; => {...}

;; Signal handlers

(t/get-handlers) ; => {<handler-id> {:keys [handler-fn handler-stats_ dispatch-opts]}}

(t/add-handler! :my-console-handler
  (t/handler:console {}) ; Returns handler fn, has many opts
  {:async {:mode :dropping, :buffer-size 1024, :n-threads 1}
   :priority    100
   :sample-rate 0.5
   :min-level   :info
   :ns-filter   {:disallow "taoensso.*"}
   :rate-limit  {"1 per sec" [1 1000]}
   ;; See `t/help:handler-dispatch-options` for more
   })

;; Print human-readable output to console
(t/add-handler! :my-console-handler
  (t/handler:console
    {:output-fn (t/format-signal-fn {...})}))

;; Print edn to console
(t/add-handler! :my-console-handler
  (t/handler:console
    {:output-fn (t/pr-signal-fn {:pr-fn :edn})}))

;; Print JSON to console
;; Ref.  <https://github.com/metosin/jsonista> (or any alt JSON lib)
#?(:clj (require '[jsonista.core :as jsonista]))
(t/add-handler! :my-console-handler
  (t/handler:console
    {:output-fn
     #?(:cljs :json ; Use js/JSON.stringify
        :clj  jsonista/write-value-as-string)}))

See examples.cljc for REPL-ready snippets!

API overview

See relevant docstrings (links below) for usage info-

Creating signals

NameSignal kindMain argOptional argReturns
log!:logmsgopts/levelSignal allowed?
event!:eventidopts/levelSignal allowed?
error!:errorerroropts/idGiven error
trace!:traceformopts/idForm result
spy!:spyformopts/levelForm result
catch->error!:errorformopts/idForm value or given fallback
signal!<arb>opts-Depends on opts

Internal help

Detailed help is available without leaving your IDE:

VarHelp with
help:signal-creatorsCreating signals
help:signal-optionsOptions when creating signals
help:signal-contentSignal content (map given to middleware/handlers)
help:filtersSignal filtering and transformation
help:handlersSignal handler management
help:handler-dispatch-optionsSignal handler dispatch options
help:environmental-configConfig via JVM properties, environment variables, or classpath resources

Included handlers

See ✅ links below for features and usage,
See ❤️ links below to vote on future handlers:

Target (↓)CljCljs
Apache Kafka❤️-
AWS Kinesis❤️-
Console
Console (raw)-
Datadog❤️❤️
Email-
Graylog❤️-
Jaeger❤️-
Logstash❤️-
OpenTelemetry❤️
Redis❤️-
SQL❤️-
Slack-
TCP socket-
UDP socket-
Zipkin❤️-

You can also easily write your own handlers.

Community

My plan for Telemere is to offer a stable core of limited scope, then to focus on making it as easy for the community to write additional stuff like handlers, middleware, and utils.

See here for community resources.

Documentation

Benchmarks

Telemere is highly optimized and offers great performance at any scale:

Compile-time filtering?Runtime filtering?Profile?Trace?nsecs
✓ (elide)---0
---350
--450
-1000

Measurements:

  • Are ~nanoseconds per signal call (= milliseconds per 1e6 calls)
  • Exclude handler runtime (which depends on handler/s, is usually async)
  • Taken on a 2020 Macbook Pro M1, running Clojure v1.12 and OpenJDK v22

Performance philosophy

Telemere is optimized for real-world performance. This means prioritizing flexibility and realistic usage over synthetic micro-benchmarks.

Large applications can produce absolute heaps of data, not all equally valuable. Quickly processing infinite streams of unmanageable junk is an anti-pattern. As scale and complexity increase, it becomes more important to strategically plan what data to collect, when, in what quantities, and how to manage it.

Telemere is designed to help with all that. It offers rich data and unmatched filtering support - including per-signal and per-handler sampling and rate-limiting.

Use these to ensure that you're not capturing useless/low-value/high-noise information in production! With appropriate planning, Telemere is designed to scale to systems of any size and complexity.

See here for detailed tips on real-world usage.

Funding

You can help support continued work on this project, thank you!! 🙏

License

Copyright © 2023-2024 Peter Taoussanis.
Licensed under EPL 1.0 (same as Clojure).

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