Phoenix
CtrlK
TypeScript APIPython APICommunityGitHubPhoenix Cloud
  • Documentation
  • Self-Hosting
  • SDK and API Reference
  • Integrations
  • Cookbooks
  • Learn
  • Release Notes
  • Featured Tutorials
  • Agent Cookbooks
  • Agent Demos
  • Tracing
    • Cookbooks
    • Structured Data Extraction
  • Prompt Engineering
    • Few Shot Prompting
    • ReAct Prompting
    • Chain-of-Thought Prompting
    • Prompt Optimization
    • LLM as a Judge Prompt Optimization
  • Datasets & Experiments
    • Cookbooks
    • Summarization
    • Text2SQL
  • Evaluation
    • Cookbooks
    • Evaluate RAG
    • Evaluate an Agent
    • OpenAI Agents SDK Cookbook
  • Retrieval & Inferences
    • Cookbooks
    • Embeddings Analysis
Powered by GitBook
On this page

Was this helpful?

Edit on GitHub
Export as PDF
  1. Tracing

Cookbooks

Trace through the execution of your LLM application to understand its internal structure and to troubleshoot issues with retrieval, tool execution, LLM calls, and more.

Cover

Tracing Applications

OpenAI Application

LlamaIndex Application

DSPy Application

Haystack Application

Groq Application

CrewAI Application

Cover

Tracing Use Cases

LangChain OpenAI Agent

LlamaIndex OpenAI Agent

OpenAI Structured Data Extraction Service

RAG Chatbot Application

LangChain + OpenAI RAG Application

LlamaIndex + OpenAI RAG Application

Cover

Tracing with Sessions

OpenAI (Python)

OpenAI (JS/TS)

LlamaIndex

PreviousAgent DemosNextStructured Data Extraction

Last updated 3 months ago

Was this helpful?

Platform

  • Tracing
  • Prompts
  • Datasets and Experiments
  • Evals

Software

  • Python Client
  • TypeScript Client
  • Phoenix Evals
  • Phoenix Otel

Resources

  • Container Images
  • X
  • Blue Sky
  • Blog

Integrations

  • OpenTelemetry
  • AI Providers

© 2025 Arize AI