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🔥[2024.08.13] Introducing VisualAgentBench
VisualAgentBench is designed for evaluating and training visual foundation agents based on large multimodel models (LMMs). We introduce 5 distinct environments spanning
- Embodied: VAB-OmniGibson, VAB-Minecraft
- GUI: VAB-Mobile, VAB-WebArena-Lite
- Visual Design: VAB-CSS
to systematically benchmark 17 LMMs (proprietary & open LMMs). We also provide the trajectory dataset for behavior cloning training on open LMMs for you to develop your own visual foundation agents!
You are now browsing AgentBench v0.2. If you wish to use the older version, you can revert to v0.1.
Based on v0.1, we:
- Updated the framework architecture for easier use and extension
- Adjusted some task settings
- Added test results for more models
- Released the full data for the Dev and Test sets
agentbench-cover.mp4
AgentBench is the first benchmark designed to evaluate LLM-as-Agent across a diverse spectrum of different environments. It encompasses 8 distinct environments to provide a more comprehensive evaluation of the LLMs' ability to operate as autonomous agents in various scenarios. These environments include 5 freshly created domains, namely
- Operating System (OS)
- Database (DB)
- Knowledge Graph (KG)
- Digital Card Game (DCG)
- Lateral Thinking Puzzles (LTP)
as well as 3 recompiled from published datasets:
We offer two splits for each dataset: Dev and Test. The multi-turn interaction requires an LLMs to generate around 4k and 13k times respectively.
Here is the scores on test set (standard) results of AgentBench.
While LLMs begin to manifest their proficiency in LLM-as-Agent, gaps between models and the distance towards practical usability are significant.
This section will guide you on how to quickly use gpt-3.5-turbo-0613 as an agent to launch the dbbench-std
and os-std
tasks.
For the specific framework structure, please refer to Framework Introduction.
For more detailed configuration and launch methods, please check Configuration Guide
and Program Entrance Guide.
Clone this repo and install the dependencies.
cd AgentBench
conda create -n agent-bench python=3.9
conda activate agent-bench
pip install -r requirements.txt
Ensure that Docker is properly installed.
docker ps
Build required images for dbbench-std
and os-std
.
docker pull mysql
docker pull ubuntu
docker build -f data/os_interaction/res/dockerfiles/default data/os_interaction/res/dockerfiles --tag local-os/default
docker build -f data/os_interaction/res/dockerfiles/packages data/os_interaction/res/dockerfiles --tag local-os/packages
docker build -f data/os_interaction/res/dockerfiles/ubuntu data/os_interaction/res/dockerfiles --tag local-os/ubuntu
Fill in your OpenAI API Key at the correct location in configs/agents/openai-chat.yaml
. (e.g. gpt-3.5-turbo-0613
)
You can try using python -m src.client.agent_test
to check if your agent is configured correctly.
By default, gpt-3.5-turbo-0613
will be started. You can replace it with other agents by modifying the parameters:
python -m src.client.agent_test --config configs/agents/api_agents.yaml --agent gpt-3.5-turbo-0613
Starting the task worker involves specific tasks. Manual starting might be cumbersome; hence, we provide an automated script.
The assumption for this step is that ports from 5000 to 5015 are available. For Mac OS system, you may want to follow here to free port 5000 to use.
python -m src.start_task -a
This will launch five task_workers each for dbbench-std
and os-std
tasks and automatically connect them
to the controller on port 5000. After executing this command, please allow approximately 1 minute for the task setup to complete. If the terminal shows ".... 200 OK", you can open another terminal and follow step 4.
This step is to actually start the tasks.
If everything is correctly configured so far, you can now initiate the task tests.
python -m src.assigner
If you wish to launch more tasks or use other models, you can refer to the content in Configuration Guide and Program Entrance Guide.
For the environment of the remaining five tasks, you will need to download the Docker images we provide.
longinyu/agentbench-ltp
longinyu/agentbench-webshop
longinyu/agentbench-mind2web
longinyu/agentbench-card_game
longinyu/agentbench-alfworld
The resource consumption of a single task_worker for the eight tasks is roughly as follows; consider this when launching:
Task Name | Start-up Speed | Memory Consumption |
---|---|---|
webshop | ~3min | ~15G |
mind2web | ~5min | ~1G |
db | ~20s | < 500M |
alfworld | ~10s | < 500M |
card_game | ~5s | < 500M |
ltp | ~5s | < 500M |
os | ~5s | < 500M |
kg | ~5s | < 500M |
the KnowledgeGraph task depends on an online service which now is not stable, if you want to deploy the service locally, you can follow steps below:
step1.
download the database and setup the service freebase-setup.
step2.
change this line sparql_url: "http://164.107.116.56:3093/sparql"
to sparql_url: "<your service api of sparql>"
in /configs/tasks/kg.yaml
.
P.S. you should start your KG service before you start the agent tasks services.
If you wish to add new tasks to AgentBench, you may refer to Extension Guide.
Avalon task is merged from AvalonBench, which implements a multi-agent framework.
@article{liu2023agentbench,
title = {AgentBench: Evaluating LLMs as Agents},
author = {Xiao Liu and Hao Yu and Hanchen Zhang and Yifan Xu and Xuanyu Lei and Hanyu Lai and Yu Gu and Hangliang Ding and Kaiwen Men and Kejuan Yang and Shudan Zhang and Xiang Deng and Aohan Zeng and Zhengxiao Du and Chenhui Zhang and Sheng Shen and Tianjun Zhang and Yu Su and Huan Sun and Minlie Huang and Yuxiao Dong and Jie Tang},
year = {2023},
journal = {arXiv preprint arXiv: 2308.03688}
}