# GAIA Benchmark This scenario implements the [GAIA](https://arxiv.org/abs/2311.12983) agent benchmark. Before you begin, make sure you have followed instruction in `../README.md` to prepare your environment. ### Setup Environment Variables for AgBench Navigate to GAIA ```bash cd benchmarks/GAIA ``` Update `config.yaml` to point to your model host, as appropriate. The default configuration points to 'gpt-4o'. Now initialize the tasks. ```bash python Scripts/init_tasks.py ``` Note: This will attempt to download GAIA from Hugginface, but this requires authentication. The resulting folder structure should look like this: ``` . ./Downloads ./Downloads/GAIA ./Downloads/GAIA/2023 ./Downloads/GAIA/2023/test ./Downloads/GAIA/2023/validation ./Scripts ./Templates ./Templates/TeamOne ``` Then run `Scripts/init_tasks.py` again. Once the script completes, you should now see a folder in your current directory called `Tasks` that contains one JSONL file per template in `Templates`. ### Running GAIA Now to run a specific subset of GAIA use: ```bash agbench run Tasks/gaia_validation_level_1__MagenticOne.jsonl ``` You should see the command line print the raw logs that shows the agents in action To see a summary of the results (e.g., task completion rates), in a new terminal run the following: ```bash agbench tabulate Results/gaia_validation_level_1__MagenticOne/ ``` ## References **GAIA: a benchmark for General AI Assistants** `
` Grégoire Mialon, Clémentine Fourrier, Craig Swift, Thomas Wolf, Yann LeCun, Thomas Scialom `
` [https://arxiv.org/abs/2311.12983](https://arxiv.org/abs/2311.12983)