# EDA Evaluation This folder contains evaluation harness for evaluating agents on the Entity-deduction-Arena Benchmark, from the paper [Probing the Multi-turn Planning Capabilities of LLMs via 20 Question Games](https://arxiv.org/abs/2310.01468), presented in ACL 2024 main conference. ## Setup Environment and LLM Configuration Please follow instruction [here](../../README.md#setup) to setup your local development environment and LLM. ## Start the evaluation ```bash export OPENAI_API_KEY="sk-XXX"; # This is required for evaluation (to simulate another party of conversation) ./evaluation/benchmarks/EDA/scripts/run_infer.sh [model_config] [git-version] [agent] [dataset] [eval_limit] ``` where `model_config` is mandatory, while `git-version`, `agent`, `dataset` and `eval_limit` are optional. - `model_config`, e.g. `eval_gpt4_1106_preview`, is the config group name for your LLM settings, as defined in your `config.toml`. - `git-version`, e.g. `HEAD`, is the git commit hash of the OpenHands version you would like to evaluate. It could also be a release tag like `0.6.2`. - `agent`, e.g. `CodeActAgent`, is the name of the agent for benchmarks, defaulting to `CodeActAgent`. - `dataset`: There are two tasks in this evaluation. Specify `dataset` to test on either `things` or `celebs` task. - `eval_limit`, e.g. `10`, limits the evaluation to the first `eval_limit` instances. By default it infers all instances. For example, ```bash ./evaluation/benchmarks/EDA/scripts/run_infer.sh eval_gpt4o_2024_05_13 0.6.2 CodeActAgent things ``` ## Reference ```bibtex @inproceedings{zhang2023entity, title={Probing the Multi-turn Planning Capabilities of LLMs via 20 Question Games}, author={Zhang, Yizhe and Lu, Jiarui and Jaitly, Navdeep}, journal={ACL}, year={2024} } ```