Files
wehub-resource-sync db620d33df
dotnet-build-and-test / dotnet-build (Debug, windows-latest, net9.0) (push) Blocked by required conditions
CodeQL / Analyze (csharp) (push) Waiting to run
CodeQL / Analyze (python) (push) Waiting to run
dotnet-build-and-test / paths-filter (push) Waiting to run
dotnet-build-and-test / dotnet-build (Release, ubuntu-latest, net10.0) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build (Release, ubuntu-latest, net8.0) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build (Release, windows-latest, net472) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-test (Release, integration, true, ubuntu-latest, net10.0) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-test (Release, integration, true, windows-latest, net472) (push) Blocked by required conditions
dotnet-build-and-test / dotnet-foundry-hosted-it (push) Blocked by required conditions
dotnet-build-and-test / dotnet-test-functions (push) Blocked by required conditions
dotnet-build-and-test / dotnet-build-and-test-check (push) Blocked by required conditions
dotnet-build-and-test / Integration Test Report (push) Blocked by required conditions
chore: import upstream snapshot with attribution
2026-07-13 13:39:25 +08:00
..

Agent Framework Lab - GAIA

The GAIA benchmark can be used for evaluating agents and workflows built using the Agent Framework. It includes built-in benchmarks as well as utilities for running custom evaluations.

Note

: This module is part of the consolidated agent-framework-lab package. Install the package with the gaia extra to use this module.

Setup

Install the agent-framework-lab package with GAIA dependencies:

pip install "agent-framework-lab[gaia]"

Set up Hugging Face token:

export HF_TOKEN="hf\*..." # must have access to gaia-benchmark/GAIA

Create an evaluation script

Create a Python script (e.g., run_gaia.py) with the following content:

from agent_framework.lab.gaia import GAIA, Task, Prediction, GAIATelemetryConfig

async def run_task(task: Task) -> Prediction:
    return Prediction(prediction="answer here", messages=[])

async def main() -> None:
    # Optional: Enable telemetry for detailed tracing
    telemetry_config = GAIATelemetryConfig(
        enable_tracing=True,
        trace_to_file=True,
        file_path="gaia_traces.jsonl"
    )

    runner = GAIA(telemetry_config=telemetry_config)
    await runner.run(run_task, level=1, max_n=5, parallel=2)

See the gaia_sample.py for more detail.

View results

We provide a console viewer for reading GAIA results:

uv run gaia_viewer "gaia_results_<timestamp>.jsonl" --detailed