Python auto-instrumentation library for Agent Spec.
Open Agent Spec (Agent Spec) is a portable, platform-agnostic configuration language that allows Agents and Agentic Systems to be described with high fidelity. It defines the conceptual building blocks—called components—that make up agents in typical agent-based systems. This includes the properties that configure each component and the semantics that govern their behavior.
Agent Spec Tracing is an extension of Agent Spec that standardizes how agent and flow executions emit traces. It enables:
You can find more information about Agent Spec and Agent Spec Tracing at:
The traces emitted by this instrumentation are fully OpenTelemetry compatible and can be sent to an OpenTelemetry
collector for viewing, such as arize-phoenix
pip install openinference-instrumentation-agentspec
In this example we will instrument a small program that uses Agent Spec Tracing and observe
the traces via arize-phoenix.
Install packages.
pip install openinference-instrumentation-agentspec pyagentspec[langgraph] arize-phoenix opentelemetry-sdk opentelemetry-exporter-otlp
Start the phoenix server so that it is ready to collect traces. The Phoenix server runs entirely on your machine and does not send data over the internet.
phoenix serve
In a python file (e.g., agentspec_agent.py) , set up the AgentSpecInstrumentor and configure
the tracer to send traces to Phoenix.
from pyagentspec.adapters.langgraph import AgentSpecLoader
from pyagentspec.agent import Agent
from pyagentspec.llms import OpenAiConfig
agent = Agent(
name="assistant",
description="An general purpose agent without tools",
llm_config=OpenAiConfig(name="openai-gpt-5-mini", model_id="gpt-5-mini"),
system_prompt="You are a helpful assistant. Help the user answering politely.",
)
langgraph_agent = AgentSpecLoader().load_component(agent)
from phoenix.otel import register
from openinference.instrumentation.agentspec import AgentSpecInstrumentor
tracer_provider = register(batch=True, project_name="hello-world-app")
AgentSpecInstrumentor().instrument(tracer_provider=tracer_provider)
while True:
user_input = input("USER >>> ")
if user_input.lower() in ["exit", "quit"]:
break
response = langgraph_agent.invoke(
input={"messages": [{"role": "user", "content": user_input}]},
config={"configurable": {"thread_id": "1"}},
)
print("AGENT >>>", response['messages'][-1].content.strip())
Now simply run the python file and observe the traces in Phoenix.
python agentspec_agent.py