| name | ai-observability-langfuse |
| description | LLM observability with Langfuse — OpenTelemetry-based tracing, evaluations, prompt management, datasets, and production best practices |
Langfuse Observability Patterns
Quick Guide: Use the Langfuse TypeScript SDK (built on OpenTelemetry) to add observability to LLM applications. Install @langfuse/tracing, @langfuse/otel, and @opentelemetry/sdk-node for core tracing. Use startActiveObservation() for automatic context propagation or observe() to wrap functions. Use @langfuse/openai with observeOpenAI() for zero-config OpenAI tracing. Use LangfuseClient from @langfuse/client for prompt management, scores, and datasets. Always call forceFlush() or sdk.shutdown() in short-lived processes.
<critical_requirements>
CRITICAL: Before Using This Skill
All code must follow project conventions in CLAUDE.md (kebab-case, named exports, import ordering, import type, named constants)
(You MUST import and register instrumentation.ts at the top of your entry point BEFORE any other imports -- OpenTelemetry must instrument modules before they are loaded)
(You MUST call forceFlush() or sdk.shutdown() in short-lived processes (serverless, scripts, CLI tools) -- events are batched and will be lost without explicit flushing)
(You MUST use @langfuse/openai with observeOpenAI() for OpenAI SDK tracing -- do NOT manually create generation observations for OpenAI calls when the wrapper handles it automatically)
(You MUST set LANGFUSE_SECRET_KEY, LANGFUSE_PUBLIC_KEY, and LANGFUSE_BASE_URL via environment variables -- never hardcode credentials)
(You MUST use startActiveObservation() or observe() for nested tracing -- manual startObservation() requires explicit .end() calls and does NOT propagate context automatically)
</critical_requirements>
Auto-detection: Langfuse, langfuse, @langfuse/tracing, @langfuse/otel, @langfuse/client, @langfuse/openai, LangfuseSpanProcessor, LangfuseClient, startActiveObservation, startObservation, observeOpenAI, langfuse.score, langfuse.prompt, langfuse.dataset, LANGFUSE_SECRET_KEY, LANGFUSE_PUBLIC_KEY, forceFlush
When to use:
- Adding observability and tracing to LLM application code (any provider)
- Wrapping OpenAI SDK calls for automatic token/cost tracking
- Managing prompt templates with versioning, labels, and variable compilation
- Evaluating LLM output quality with scores (numeric, categorical, boolean)
- Running experiments against datasets for regression testing
- Tracking sessions, users, and metadata across multi-turn conversations
- Monitoring LLM costs and token usage in production
Key patterns covered:
- OpenTelemetry setup with
LangfuseSpanProcessor
- Tracing with
startActiveObservation, observe, and manual startObservation
- Observation types (span, generation, agent, tool, retriever, evaluator, embedding, chain, guardrail)
- OpenAI SDK auto-instrumentation with
observeOpenAI()
- Prompt management (get, compile, text vs chat prompts, versioning)
- Scores and evaluations (numeric, categorical, boolean)
- Datasets and experiments for testing
- Flush, shutdown, and lifecycle management
When NOT to use:
- You only need basic
console.log debugging -- Langfuse is for structured production observability
- You want provider-specific tracing built into an AI SDK -- check if your framework has native observability
- You need APM/infrastructure monitoring (CPU, memory, HTTP latency) -- use a general-purpose observability tool
Examples Index
- Core: Setup & Configuration -- OpenTelemetry setup, instrumentation file, client init, flush/shutdown
- Tracing -- startActiveObservation, observe, manual tracing, nesting, observation types, metadata
- OpenAI Integration -- observeOpenAI wrapper, streaming, token tracking, custom attributes
- Prompt Management -- getPrompt, compile, text vs chat, versioning, caching
- Scores & Datasets -- Numeric/categorical/boolean scores, datasets, experiments
- Quick API Reference -- Package index, environment variables, observation types, score methods
Philosophy
Langfuse provides open-source LLM observability built on OpenTelemetry. The SDK (v4+, August 2025) is a ground-up rewrite using OTel as the tracing backbone, meaning traces integrate naturally with the broader observability ecosystem.
Core principles:
- OpenTelemetry-native -- Built on OTel spans and context propagation. Langfuse observations are wrappers around OTel spans with LLM-specific attributes (model, tokens, cost). This means any OTel-compatible instrumentation library works alongside Langfuse.
- Zero-latency tracing -- All trace events are queued locally and flushed in background batches. Your application's response time is not affected by observability.
- Modular packages --
@langfuse/tracing for instrumentation, @langfuse/client for prompts/scores/datasets, @langfuse/openai for OpenAI auto-instrumentation. Install only what you need.
- Context-first --
startActiveObservation() automatically propagates parent-child relationships. Nested observations inherit context without manual ID threading.
- Observation types -- LLM-specific types (
generation, agent, tool, retriever, evaluator, embedding) provide semantic meaning to traces, enabling richer dashboard views and filtering.
Core Patterns
Pattern 1: OpenTelemetry Setup
Create an instrumentation.ts file and import it at the top of your entry point.
import { NodeSDK } from "@opentelemetry/sdk-node";
import { LangfuseSpanProcessor } from "@langfuse/otel";
const sdk = new NodeSDK({
spanProcessors: [new LangfuseSpanProcessor()],
});
sdk.start();
export { sdk };
import "./instrumentation";
import { startActiveObservation } from "@langfuse/tracing";
Why good: OTel must instrument modules before they are loaded; importing instrumentation first ensures all subsequent imports are traced automatically
import { startActiveObservation } from "@langfuse/tracing";
import "./instrumentation";
Why bad: Auto-instrumentation of LLM SDKs requires OTel to be initialized before those modules are imported
See: examples/core.md for environment variables, sampling, masking, and production configuration
Pattern 2: Tracing with startActiveObservation
The primary instrumentation pattern. Creates an observation, makes it the active context, and automatically ends it when the callback completes.
import { startActiveObservation } from "@langfuse/tracing";
async function handleRequest(query: string): Promise<string> {
return await startActiveObservation("handle-request", async (span) => {
span.update({ input: { query } });
const result = await startActiveObservation(
"process-query",
async (child) => {
child.update({ input: { query } });
const answer = await callLLM(query);
child.update({ output: { answer } });
return answer;
},
);
span.update({ output: { result } });
return result;
});
}
Why good: Automatic context propagation, automatic end on callback completion, nesting creates parent-child hierarchy without manual ID management
import { startObservation } from "@langfuse/tracing";
const span = startObservation("my-span");
await doWork();
Why bad: Manual startObservation requires explicit .end() calls; forgetting creates open-ended observations
See: examples/tracing.md for observe wrapper, observation types, metadata, and manual tracing
Pattern 3: The observe() Wrapper
Wraps a function to automatically capture inputs, outputs, timings, and errors.
import { observe } from "@langfuse/tracing";
const classifyIntent = observe(
async (query: string) => {
const result = await callLLM(query);
return result.intent;
},
{ name: "classify-intent", asType: "generation" },
);
const intent = await classifyIntent("Book a flight to Paris");
Why good: Declarative tracing, inputs/outputs captured automatically, asType tags the observation type for richer dashboard filtering
Pattern 4: OpenAI Auto-Instrumentation
Use observeOpenAI() to wrap the OpenAI client for automatic tracing of all calls.
import OpenAI from "openai";
import { observeOpenAI } from "@langfuse/openai";
const openai = observeOpenAI(new OpenAI());
const completion = await openai.chat.completions.create({
model: "gpt-4o",
messages: [{ role: "user", content: "Hello" }],
});
Why good: Zero manual instrumentation, captures model name, token counts, estimated costs, latency, and streaming metrics automatically
await startActiveObservation("openai-call", async (span) => {
const result = await rawOpenai.chat.completions.create({ ... });
span.update({
model: "gpt-4o",
input: messages,
output: result.choices[0].message.content,
});
}, { asType: "generation" });
Why bad: observeOpenAI handles all of this automatically with more accurate token/cost data; manual tracking is error-prone and duplicates effort
See: examples/openai-integration.md for streaming, custom attributes, and token tracking on streams
Pattern 5: Prompt Management
Fetch versioned prompts, compile with variables, and link to traces.
import { LangfuseClient } from "@langfuse/client";
const langfuse = new LangfuseClient();
const prompt = await langfuse.prompt.get("summarize-article");
const compiled = prompt.compile({ topic: "AI safety", length: "brief" });
const chatPrompt = await langfuse.prompt.get("assistant-v2", { type: "chat" });
const messages = chatPrompt.compile({ userName: "Alice" });
Why good: Centralized prompt management with versioning, labels for A/B testing, variable compilation, and built-in caching
See: examples/prompt-management.md for versioning, labels, cache control, and linking prompts to traces
Pattern 6: Scores and Evaluations
Attach quality measurements to traces and observations.
import { LangfuseClient } from "@langfuse/client";
const langfuse = new LangfuseClient();
langfuse.score.create({
traceId: "trace-123",
name: "relevance",
value: 0.95,
dataType: "NUMERIC",
});
langfuse.score.create({
traceId: "trace-123",
name: "quality",
value: "good",
dataType: "CATEGORICAL",
});
langfuse.score.create({
traceId: "trace-123",
name: "contains-hallucination",
value: 0,
dataType: "BOOLEAN",
});
langfuse.score.create({
traceId: "trace-123",
observationId: "obs-456",
name: "accuracy",
value: 0.88,
dataType: "NUMERIC",
});
await langfuse.score.flush();
Why good: Three data types cover all evaluation needs, scores attach at trace or observation level, fire-and-forget API with batching
See: examples/scores-datasets.md for active observation scoring, session scores, datasets, and experiments
Pattern 7: Flush and Shutdown
Always flush in short-lived processes. The SDK batches events and sends them asynchronously.
import { sdk } from "./instrumentation";
import { LangfuseClient } from "@langfuse/client";
import { LangfuseSpanProcessor } from "@langfuse/otel";
const langfuse = new LangfuseClient();
async function main() {
await langfuse.score.flush();
await sdk.shutdown();
}
main();
Why good: Explicit flush/shutdown ensures all events are sent before the process exits; without this, data is silently lost in serverless and scripts
async function handler() {
await startActiveObservation("my-trace", async (span) => {
span.update({ output: "done" });
});
}
Why bad: Langfuse batches events locally; if the process exits before the flush interval, events are lost
Performance Optimization
Sampling for High-Volume Applications
Reduce costs by sampling a subset of traces:
import { TraceIdRatioBasedSampler } from "@opentelemetry/sdk-trace-base";
const sdk = new NodeSDK({
sampler: new TraceIdRatioBasedSampler(0.2),
spanProcessors: [new LangfuseSpanProcessor()],
});
Or via environment variable: LANGFUSE_SAMPLE_RATE=0.2
Key Optimization Patterns
- Batch flush tuning -- Configure
LANGFUSE_FLUSH_AT (default 10) and LANGFUSE_FLUSH_INTERVAL (default 1s) for your workload
- Span filtering -- Use
shouldExportSpan on LangfuseSpanProcessor to drop noisy non-LLM spans
- Data masking -- Redact PII before transmission with the
mask option to avoid storing sensitive data
- Stream token tracking -- Set
stream_options: { include_usage: true } on OpenAI streaming calls so observeOpenAI captures token counts
<decision_framework>
Decision Framework
Which Packages to Install
What do you need?
+-- Tracing LLM calls?
| +-- YES -> npm install @langfuse/tracing @langfuse/otel @opentelemetry/sdk-node
| +-- Also using OpenAI SDK?
| +-- YES -> npm install @langfuse/openai
+-- Prompt management, scores, or datasets?
| +-- YES -> npm install @langfuse/client
+-- Both tracing AND client features?
+-- YES -> Install all: @langfuse/tracing @langfuse/otel @opentelemetry/sdk-node @langfuse/client
Which Tracing Method to Use
How do you want to instrument?
+-- Wrapping a function? -> observe() (declarative, auto-captures inputs/outputs)
+-- Block of code with nesting? -> startActiveObservation() (context propagation, auto-end)
+-- Need manual start/end control? -> startObservation() (requires explicit .end())
+-- OpenAI SDK calls? -> observeOpenAI() (zero-config auto-instrumentation)
+-- Update active span without reference? -> updateActiveObservation()
Which Observation Type (asType)
What is this observation?
+-- LLM call (prompt -> completion) -> "generation"
+-- AI agent decision-making step -> "agent"
+-- External API or function call -> "tool"
+-- Vector store or DB retrieval -> "retriever"
+-- Quality assessment step -> "evaluator"
+-- Embedding creation -> "embedding"
+-- Link between application steps -> "chain"
+-- Content safety / jailbreak check -> "guardrail"
+-- Generic duration operation -> "span" (default)
+-- Point-in-time event -> "event"
</decision_framework>
<red_flags>
RED FLAGS
High Priority Issues:
- Not importing
instrumentation.ts before other modules (auto-instrumentation silently fails)
- Exiting short-lived processes without
forceFlush() or sdk.shutdown() (events are silently lost)
- Hardcoding
LANGFUSE_SECRET_KEY or LANGFUSE_PUBLIC_KEY in source code (credential exposure)
- Using manual generation observations when
observeOpenAI() would handle it automatically (duplicated effort, less accurate data)
- Using
startObservation() without calling .end() (observation stays open indefinitely)
Medium Priority Issues:
- Not setting
stream_options: { include_usage: true } on OpenAI streaming calls (token counts missing from observeOpenAI traces)
- Forgetting to call
langfuse.score.flush() in short-lived processes (scores are batched and may be lost)
- Using
startObservation() when startActiveObservation() would work (no automatic context propagation or auto-end)
- Not using
asType on observations (all observations appear as generic spans, losing semantic meaning)
- Not setting
LANGFUSE_BASE_URL for self-hosted instances (defaults to cloud.langfuse.com)
Common Mistakes:
- Importing
@langfuse/openai without setting up the OTel NodeSDK first -- the OpenAI wrapper requires OTel context to send traces
- Confusing
LangfuseClient (from @langfuse/client, for prompts/scores/datasets) with the OTel tracing functions (from @langfuse/tracing)
- Using
prompt.compile() without matching all {{variable}} placeholders -- unmatched variables remain as literal {{name}} in output
- Calling
langfuse.score.create() with a value of type string for NUMERIC scores or number for CATEGORICAL scores (type mismatch)
- Running dataset experiments without OTel setup -- experiment tasks run inside
startActiveObservation which requires OTel
Gotchas & Edge Cases:
observeOpenAI() does NOT support the OpenAI Assistants API -- only Chat Completions and Responses API
- The SDK's default span filter only exports Langfuse and GenAI spans. If you use a custom instrumentation library, you must configure
shouldExportSpan to include it.
LangfuseClient.prompt.get() caches prompts with a default TTL. If you update a prompt and don't see changes, set cacheTtlSeconds: 0 to bypass caching.
- Boolean scores use float values (
0 or 1), not JavaScript booleans (true/false).
- Self-hosted Langfuse requires platform version >= 3.95.0 for TypeScript SDK v4 compatibility.
score.create() is fire-and-forget (synchronous) -- it queues the score for batched delivery. You only need await on flush().
- Dataset names with slashes (
evaluation/qa-dataset) must be URL-encoded when used as path parameters.
- The v4+ SDK is a complete rewrite from v3 --
Langfuse class, trace(), span(), generation() from v3 are replaced by OTel-based APIs.
</red_flags>
<critical_reminders>
CRITICAL REMINDERS
All code must follow project conventions in CLAUDE.md (kebab-case, named exports, import ordering, import type, named constants)
(You MUST import and register instrumentation.ts at the top of your entry point BEFORE any other imports -- OpenTelemetry must instrument modules before they are loaded)
(You MUST call forceFlush() or sdk.shutdown() in short-lived processes (serverless, scripts, CLI tools) -- events are batched and will be lost without explicit flushing)
(You MUST use @langfuse/openai with observeOpenAI() for OpenAI SDK tracing -- do NOT manually create generation observations for OpenAI calls when the wrapper handles it automatically)
(You MUST set LANGFUSE_SECRET_KEY, LANGFUSE_PUBLIC_KEY, and LANGFUSE_BASE_URL via environment variables -- never hardcode credentials)
(You MUST use startActiveObservation() or observe() for nested tracing -- manual startObservation() requires explicit .end() calls and does NOT propagate context automatically)
Failure to follow these rules will produce silent data loss, missing traces, or credential exposure in LLM observability.
</critical_reminders>