launchdarkly-metric-instrument

Instrumenter un événement métrique LaunchDarkly dans une base de code en ajoutant un appel track(). Utiliser lorsque l'utilisateur souhaite câbler un événement, instrumenter une action pour une métrique,…

npx skills add https://github.com/launchdarkly/agent-skills --skill launchdarkly-metric-instrument

LaunchDarkly Metric Instrument

You're using a skill that will guide you through adding a track() call to a codebase so a LaunchDarkly metric can measure it. Your job is to detect the SDK in use, find the right place in code to add the call, write it correctly, and verify that events are reaching LaunchDarkly.

Prerequisites

This skill requires the remotely hosted LaunchDarkly MCP server to be configured in your environment.

Required MCP tools:

  • list-metric-events — verify events are flowing after instrumentation

Optional MCP tools (enhance workflow):

  • get-project — retrieve the SDK key for the right environment when SDK initialization is needed

Workflow

Step 1: Detect the SDK

Before writing any code, understand the LaunchDarkly setup already in this codebase.

  1. Search for existing track() calls. This is the fastest signal:

    • Look for ldClient.track(, .track(, ld.track(
    • If any exist, they tell you the SDK type, call signature, and context pattern in one shot — mirror those exactly.
  2. Search for SDK imports and initialization if no track() calls exist:

    • Check package.json, requirements.txt, go.mod, Gemfile, *.csproj for an LD SDK dependency
    • Look for LDClient, ldclient, launchdarkly-server-sdk, launchdarkly-node-server-sdk, launchdarkly-react-client-sdk, etc.
    • Find the initialization block to understand how the client is accessed across the codebase
  3. Determine client-side or server-side. This is the most critical distinction — it determines the track() signature:

    SDK typetrack() signatureNotes
    Server-side (Node, Python, Go, Java, Ruby, .NET)ldClient.track(eventKey, context, data?, metricValue?)Context required per call
    Client-side (React, browser JS)ldClient.track(eventKey, data?, metricValue?)Context set at init, not per call

    See SDK Track Patterns for full examples by language.

Step 2: Install & Initialize (if SDK not present)

Skip this step if the SDK is already in the codebase.

  1. Detect the package manager from lockfiles: package-lock.json / yarn.lock / pnpm-lock.yaml → npm/yarn/pnpm; Pipfile.lock / poetry.lock → pip/poetry; go.sum → go modules; Gemfile.lock → bundler.

  2. Install the appropriate SDK using the detected package manager. See SDK Track Patterns for the right package name per language.

  3. Get the SDK key using get-project — fetch the project and choose the key for the environment the user wants to instrument (typically production or staging for initial testing).

  4. Add SDK initialization following the patterns already in this codebase. If there's a central config or service layer, add the LD client there. See SDK Track Patterns for initialization examples.

Step 3: Find the Right Placement

Locate where in the code the user action or event occurs.

  1. Ask if you're not sure where the action happens. Don't guess at placement — a track() call in the wrong location (e.g. a render method instead of a submit handler) produces misleading data.

  2. Look for signals of the right location:

    • Form submissions, button click handlers, API route completions, mutation hooks
    • Existing analytics calls (segment.track(), mixpanel.track(), gtag()) — these are often co-located with where LD track calls should go
    • Comments like // TODO: track this
  3. Show the candidate location to the user before writing anything:

    I'll add the track() call here, in the checkout submit handler (src/checkout/CheckoutForm.tsx, line 47).
    Does that look right?
    
  4. Proceed once confirmed (or if you're confident enough from codebase signals).

Step 4: Write the track() Call

Write the call following the patterns found in Step 1.

Server-side SDKs — context is required:

ldClient.track('checkout-completed', context);

Client-side SDKs — context is implicit:

ldClient.track('checkout-completed');

For value metrics — include metricValue with the numeric measurement:

// Server-side: latency metric (ms)
ldClient.track('api-response-time', context, null, responseTimeMs);

// Client-side: revenue metric
ldClient.track('purchase-completed', { orderId }, purchaseAmountUSD);

Key rules:

  • Match the existing context. Don't construct a new context inline. Find where the codebase already builds its context/user object (used for variation() calls) and use the same one. This is how LD correlates the event to the right experiment participant.
  • metricValue only for value metrics. For count and occurrence metrics, omit metricValue entirely.
  • Respect wrapper patterns. If the codebase wraps LD calls behind a utility (featureFlags.track(), analytics.ldTrack()), add the new call through that wrapper — not by calling ldClient directly.
  • Match the event key exactly. track() event keys are case-sensitive. Use the exact string that the metric was created with.

See SDK Track Patterns for full per-language examples.

Step 5: Verify

Guide the user to trigger the action in their local or staging environment. Then use list-metric-events to confirm the event key appears:

list-metric-events(projectKey, environmentKey)

If the event key appears: confirm success and show a summary.

If the event key is absent after triggering, work through this checklist:

ProblemCheck
Wrong event key casingDoes the track() call match the metric's event key exactly?
SDK not initializedIs ldClient initialized before the track() call runs?
Server-side: wrong contextIs the context passed to track() the same context used for variation() calls?
Client-side: no flag evaluation firstHas the SDK initialized and identified the user before track() is called?
Wrong environmentIs list-metric-events querying the same environment where the action was triggered?
Data delaylist-metric-events shows the last 90 days with up to ~5 min delay — try again in a moment

Surface a summary once verified:

✓ Event flowing: checkout-completed
  Seen in: production
  
Next: this event is now ready to back a metric. Use the metric-create skill to set one up,
or attach an existing metric to your experiment.

Important Context

  • track() calls only count in experiments when a flag is evaluated first. The event is correlated to an experiment participant because LD saw a variation() call from that context. If the user triggers the action without evaluating any flag, the event may still be ingested but won't appear in experiment results.
  • Client-side SDKs flush events on an interval (default ~30 seconds) or on page unload. In tests, you may need to call ldClient.flush() explicitly to see events appear immediately.
  • Server-side SDKs also buffer events. Calling ldClient.flush() after track() in development ensures the event is sent before the process exits or the test ends.
  • metricValue units must match the metric definition. If the metric was created with unit ms, pass milliseconds. Passing seconds into a milliseconds metric will produce silently wrong results.
  • The data parameter is for custom metadata, not the metric value. Pass extra context (order ID, category, etc.) in data. Pass the numeric measurement in metricValue.

References

  • SDK Track Patternstrack() call syntax, initialization, and package names for every supported SDK

Plus de skills de launchdarkly

aiconfig-agent-graphs
launchdarkly
Créer et gérer des graphes d’agents — des graphes orientés de configurations IA reliés par des arêtes avec logique de transfert. À utiliser lors de la construction de workflows multi-agents où les configurations…
official
aiconfig-ai-metrics
launchdarkly
Instrumenter une base de code existante avec le suivi AI Config de LaunchDarkly. Parcourt l'échelle à quatre niveaux (exécuteur géré → package fournisseur → extracteur personnalisé +…
official
aiconfig-create
launchdarkly
Crée et configure des configurations IA dans LaunchDarkly. Vous aide à choisir entre le mode agent et le mode complétion, créer la configuration, ajouter des variations avec des modèles et des invites,…
official
aiconfig-custom-metrics
launchdarkly
Créer, suivre, récupérer, mettre à jour et supprimer des métriques métier personnalisées pour les configurations IA. Couvre l'ensemble du cycle de vie : définir des types de métriques via l'API, émettre des événements via le SDK,…
official
aiconfig-migrate
launchdarkly
Migrer une application avec des prompts LLM codés en dur vers une implémentation complète de LaunchDarkly AI Configs en cinq étapes : auditer le code, encapsuler l'appel, déplacer le…
official
aiconfig-online-evals
launchdarkly
Attachez des juges aux variantes de configuration IA pour une évaluation automatique LLM-en-tant-que-juge. Créez des juges personnalisés, configurez les taux d'échantillonnage et surveillez les scores de qualité.
official
aiconfig-projects
launchdarkly
Guide pour configurer des projets LaunchDarkly dans votre codebase. Vous aide à évaluer votre stack, choisir la bonne approche et intégrer la gestion de projet qui…
official
aiconfig-snippets
launchdarkly
Créer et gérer des extraits de prompt — blocs de texte réutilisables référencés dans les variations de prompts AI Config. Conserve les instructions courantes, les personas et les garde-fous…
official