The open source post-building layer for Agent Behavior Monitoring.
Project description
The Continuous-Improvement Stack for Agents
Detect failures, triage root causes, and ship fixes backed by production data.
Overview
Judgeval is an open-source Python SDK for agent improvement. It provides tracing and agent-judge evaluation for LLM-powered applications — so you can detect failures, understand what went wrong, and validate fixes against real production cases before shipping.
To get started, dive into the docs.
Why Judgeval
OpenTelemetry-based tracing -- Instrument any function with @Tracer.observe(). Automatically captures inputs, outputs, and LLM token usage. Built on OpenTelemetry for full compatibility with existing observability stacks.
Agent judges -- Define prompt-based scorers to evaluate agent behaviors at scale. Judges produce structured behaviors — scored, labeled outputs that describe how your agent acted — which accumulate into a searchable record of agent behavior over time. Run judges against live production traffic or replay them on historical traces to validate fixes before shipping.
Online monitoring -- Automatically score live production traffic server-side with no latency impact. Detected behaviors surface as structured signals — configure Slack alerts so regressions and recurrences never go unnoticed.
Broad integrations -- Auto-instrumentation for OpenAI, Anthropic, Google GenAI, and Together AI. Framework support for LangGraph, OpenLit, and Claude Agent SDK.
Quickstart
Install the SDK:
pip install judgeval
Set your credentials:
export JUDGMENT_API_KEY=...
export JUDGMENT_ORG_ID=...
Add observability to your agent with two lines of setup:
from judgeval import Tracer, wrap
from openai import OpenAI
Tracer.init(project_name="my-project")
client = wrap(OpenAI())
@Tracer.observe(span_type="tool")
def search(query: str) -> str:
results = vector_db.search(query)
return results
@Tracer.observe(span_type="agent")
def run_agent(question: str) -> str:
context = search(question)
response = client.chat.completions.create(
model="gpt-4o-mini",
messages=[{"role": "user", "content": f"{context}\n\n{question}"}],
)
return response.choices[0].message.content
run_agent("What is the capital of the United States?")
Integrations
Supports OpenAI, Anthropic, Google GenAI, Together AI, LangGraph, OpenLit, and Claude Agent SDK. See the full integrations docs.
CLI
Manage agents, traces, judges, behaviors, and evaluations from the terminal. Query trace history, deploy judges, inspect detected behaviors, and run evals against production data — all without leaving your shell. See the CLI repo and docs.
MCP Server
Connect Judgment to any MCP-compatible AI tool. Query agent traces, invoke judges, browse detected behaviors, and surface failures directly inside your AI assistant or IDE. See the docs.
Links
Judgeval is created and maintained by Judgment Labs.
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