Phoenix has first-class support for LangGraph applications.
LangGraph is supported by our LangChain instrumentor. If you've already set up instrumentation with LangChain, you don't need to complete the set up below
import osfrom phoenix.otel import register# Add Phoenix API Key for tracingPHOENIX_API_KEY ="ADD YOUR API KEY"os.environ["PHOENIX_CLIENT_HEADERS"]=f"api_key={PHOENIX_API_KEY}"# configure the Phoenix tracertracer_provider =register( project_name="my-llm-app", # Default is 'default' endpoint="https://app.phoenix.arize.com/v1/traces",)
Your Phoenix API key can be found on the Keys section of your dashboard.
Launch your local Phoenix instance:
pipinstallarize-phoenixphoenixserve
For details on customizing a local terminal deployment, see Terminal Setup.
Install packages:
pipinstallarize-phoenix-otel
Connect your application to your instance using:
from phoenix.otel import registertracer_provider =register( project_name="my-llm-app", # Default is 'default' endpoint="http://localhost:6006/v1/traces",)
from phoenix.otel import registertracer_provider =register( project_name="my-llm-app", # Default is 'default' endpoint="http://localhost:6006/v1/traces",)
For more info on using Phoenix with Docker, see Docker
Install packages:
pipinstallarize-phoenix
Launch Phoenix:
import phoenix as pxpx.launch_app()
Connect your notebook to Phoenix:
from phoenix.otel import registertracer_provider =register( project_name="my-llm-app", # Default is 'default')
By default, notebook instances do not have persistent storage, so your traces will disappear after the notebook is closed. See Persistence or use one of the other deployment options to retain traces.
Install
pipinstallopeninference-instrumentation-langchain
Setup
Initialize the LangChainInstrumentor before your application code. Our LangChainInstrumentor works for both standard LangChain applications and for LangGraph agents.
from openinference.instrumentation.langchain import LangChainInstrumentorLangChainInstrumentor().instrument(tracer_provider=tracer_provider)
Run LangGraph
By instrumenting LangGraph, spans will be created whenever an agent is invoked and will be sent to the Phoenix server for collection.
Observe
Now that you have tracing setup, all invocations of chains will be streamed to your running Phoenix for observability and evaluation.