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Arize Phoenix

AI Observability and Evaluation

Phoenix is an open-source observability tool designed for experimentation, evaluation, and troubleshooting of AI and LLM applications. It allows AI engineers and data scientists to quickly visualize their data, evaluate performance, track down issues, and export data to improve. Phoenix is built by Arize AI, the company behind the industry-leading AI observability platform, and a set of core contributors.

Phoenix works with OpenTelemetry and OpenInference instrumentation. See Integrations: Tracing for details.

Features

Quickstarts

Running Phoenix for the first time? Select a quickstart below.

Next Steps

Check out a comprehensive list of example notebooks for LLM Traces, Evals, RAG Analysis, and more.

Add Integrations

Add instrumentation for popular packages and libraries such as OpenAI, LangGraph, Vercel AI SDK and more.

Community

Join the Phoenix Slack community to ask questions, share findings, provide feedback, and connect with other developers.

Phoenix offers tools to streamline your prompt engineering workflow.

  • Prompt Management - Create, store, modify, and deploy prompts for interacting with LLMs

  • Prompt Playground - Play with prompts, models, invocation parameters and track your progress via tracing and experiments

  • Span Replay - Replay the invocation of an LLM. Whether it's an LLM step in an LLM workflow or a router query, you can step into the LLM invocation and see if any modifications to the invocation would have yielded a better outcome.

  • Prompts in Code - Phoenix offers client SDKs to keep your prompts in sync across different applications and environments.

Tracing is a helpful tool for understanding how your LLM application works. Phoenix's open-source library offers comprehensive tracing capabilities that are not tied to any specific LLM vendor or framework.

Phoenix accepts traces over the OpenTelemetry protocol (OTLP) and supports first-class instrumentation for a variety of frameworks (LlamaIndex, LangChain, DSPy), SDKs (OpenAI, Bedrock, Mistral, Vertex), and Languages. (Python, Javascript, etc.)

Phoenix is built to help you evaluate your application and understand their true performance. To accomplish this, Phoenix includes:

  • A standalone library to run LLM-based evaluations on your own datasets. This can be used either with the Phoenix library, or independently over your own data.

  • Direct integration of LLM-based and code-based evaluators into the Phoenix dashboard. Phoenix is built to be agnostic, and so these evals can be generated using Phoenix's library, or an external library like Ragas, Deepeval, or Cleanlab.

  • Human annotation capabilities to attach human ground truth labels to your data in Phoenix.

Phoenix Datasets & Experiments let you test different versions of your application, store relevant traces for evaluation and analysis, and build robust evaluations into your development process.

  • Run Experiments to test and compare different iterations of your application

  • Collect relevant traces into a Dataset, or directly upload Datasets from code / CSV

  • Run Datasets through Prompt Playground, export them in fine-tuning format, or attach them to an Experiment.

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Inferences

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Evaluation

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Datasets and Experiments

Prompt Playground

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Tracing

Try our Tutorials
Experiments in Phoenix
Tracing in Phoenix
Phoenix Prompt Playground
Evals in the Phoenix UI