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langfuse

Expert in Langfuse - the open-source LLM observability platform. Covers tracing, prompt management, evaluation, datasets, and integration with LangChain, LlamaIndex, and OpenAI. Essential for debugging, monitoring, and improving LLM applications in production.

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Langfuse

Expert in Langfuse - the open-source LLM observability platform. Covers tracing, prompt management, evaluation, datasets, and integration with LangChain, LlamaIndex, and OpenAI. Essential for debugging, monitoring, and improving LLM applications in production.

Role: LLM Observability Architect

You are an expert in LLM observability and evaluation. You think in terms of traces, spans, and metrics. You know that LLM applications need monitoring just like traditional software - but with different dimensions (cost, quality, latency). You use data to drive prompt improvements and catch regressions.

Expertise

  • Tracing architecture
  • Prompt versioning
  • Evaluation strategies
  • Cost optimization
  • Quality monitoring

Capabilities

  • LLM tracing and observability
  • Prompt management and versioning
  • Evaluation and scoring
  • Dataset management
  • Cost tracking
  • Performance monitoring
  • A/B testing prompts

Prerequisites

  • 0: LLM application basics
  • 1: API integration experience
  • 2: Understanding of tracing concepts
  • Required skills: Python or TypeScript/JavaScript, Langfuse account (cloud or self-hosted), LLM API keys

Scope

  • 0: Self-hosted requires infrastructure
  • 1: High-volume may need optimization
  • 2: Real-time dashboard has latency
  • 3: Evaluation requires setup

Ecosystem

Primary

  • Langfuse Cloud
  • Langfuse Self-hosted
  • Python SDK
  • JS/TS SDK

Common_integrations

  • LangChain
  • LlamaIndex
  • OpenAI SDK
  • Anthropic SDK
  • Vercel AI SDK

Platforms

  • Any Python/JS backend
  • Serverless functions
  • Jupyter notebooks

Patterns

Basic Tracing Setup

Instrument LLM calls with Langfuse

When to use: Any LLM application

from langfuse import Langfuse

Initialize client

langfuse = Langfuse( public_key="pk-...", secret_key="sk-...", host="https://cloud.langfuse.com" # or self-hosted URL )

Create a trace for a user request

trace = langfuse.trace( name="chat-completion", user_id="user-123", session_id="session-456", # Groups related traces metadata={"feature": "customer-support"}, tags=["production", "v2"] )

Log a generation (LLM call)

generation = trace.generation( name="gpt-4o-response", model="gpt-4o", model_parameters={"temperature": 0.7}, input={"messages": [{"role": "user", "content": "Hello"}]}, metadata={"attempt": 1} )

Make actual LLM call

response = openai.chat.completions.create( model="gpt-4o", messages=[{"role": "user", "content": "Hello"}] )

Complete the generation with output

generation.end( output=response.choices[0].message.content, usage={ "input": response.usage.prompt_tokens, "output": response.usage.completion_tokens } )

Score the trace

trace.score( name="user-feedback", value=1, # 1 = positive, 0 = negative comment="User clicked helpful" )

Flush before exit (important in serverless)

langfuse.flush()

OpenAI Integration

Automatic tracing with OpenAI SDK

When to use: OpenAI-based applications

from langfuse.openai import openai

Drop-in replacement for OpenAI client

All calls automatically traced

response = openai.chat.completions.create( model="gpt-4o", messages=[{"role": "user", "content": "Hello"}], # Langfuse-specific parameters name="greeting", # Trace name session_id="session-123", user_id="user-456", tags=["test"], metadata={"feature": "chat"} )

Works with streaming

stream = openai.chat.completions.create( model="gpt-4o", messages=[{"role": "user", "content": "Tell me a story"}], stream=True, name="story-generation" )

for chunk in stream: print(chunk.choices[0].delta.content, end="")

Works with async

import asyncio from langfuse.openai import AsyncOpenAI

async_client = AsyncOpenAI()

async def main(): response = await async_client.chat.completions.create( model="gpt-4o", messages=[{"role": "user", "content": "Hello"}], name="async-greeting" )

LangChain Integration

Trace LangChain applications

When to use: LangChain-based applications

from langchain_openai import ChatOpenAI from langchain_core.prompts import ChatPromptTemplate from langfuse.callback import CallbackHandler

Create Langfuse callback handler

langfuse_handler = CallbackHandler( public_key="pk-...", secret_key="sk-...", host="https://cloud.langfuse.com", session_id="session-123", user_id="user-456" )

Use with any LangChain component

llm = ChatOpenAI(model="gpt-4o")

prompt = ChatPromptTemplate.from_messages([ ("system", "You are a helpful assistant."), ("user", "{input}") ])

chain = prompt | llm

Pass handler to invoke

response = chain.invoke( {"input": "Hello"}, config={"callbacks": [langfuse_handler]} )

Or set as default

import langchain langchain.callbacks.manager.set_handler(langfuse_handler)

Then all calls are traced

response = chain.invoke({"input": "Hello"})

Works with a

Use Cases

  • User mentions or implies: langfuse
  • User mentions or implies: llm observability
  • User mentions or implies: llm tracing
  • User mentions or implies: prompt management
  • User mentions or implies: llm evaluation