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<div align="center"> | |
 | |
π οΈ [Setup](#%EF%B8%8F-setup) - | |
π [Usage](#-usage) - | |
π» [Demo](#-demo) - | |
π [Ecosystem](#-ecosystem) - | |
π [AgentLab](https://github.com/ServiceNow/AgentLab) - | |
π [Contributors](#-contributors) - | |
π [Paper](https://arxiv.org/abs/2412.05467) - | |
π [Citation](#-citing-this-work) | |
[](https://pypi.org/project/browsergym/) | |
[]([https://opensource.org/licenses/MIT](http://www.apache.org/licenses/LICENSE-2.0)) | |
[](https://pypistats.org/packages/browsergym-core) | |
[](https://star-history.com/#ServiceNow/BrowserGym) | |
[](https://github.com/ServiceNow/BrowserGym/actions/workflows/code_format.yml) | |
[](https://github.com/ServiceNow/BrowserGym/actions/workflows/unit_tests.yml) | |
```python | |
pip install browsergym | |
``` | |
</div> | |
> [!WARNING] | |
> BrowserGym is meant to provide an open, easy-to-use and extensible framework to accelerate the field of web agent research. | |
> It is not meant to be a consumer product. Use with caution! | |
> [!TIP] | |
> π Check out [AgentLab](https://github.com/ServiceNow/AgentLab)β¨ ! | |
> A seamless framework to implement, test, and evaluate your web agents on all BrowserGym benchmarks. | |
https://github.com/ServiceNow/BrowserGym/assets/26232819/e0bfc788-cc8e-44f1-b8c3-0d1114108b85 | |
_Example of a GPT4-V agent executing openended tasks (top row, chat interactive), as well as WebArena and WorkArena tasks (bottom row)._ | |
BrowserGym includes the following benchmarks by default: | |
- [MiniWoB](https://miniwob.farama.org/) | |
- [WebArena](https://webarena.dev/) | |
- [VisualWebArena](https://jykoh.com/vwa) | |
- [WorkArena](https://github.com/ServiceNow/WorkArena) | |
- [AssistantBench](https://github.com/oriyor/assistantbench) | |
- [WebLINX](https://github.com/McGill-NLP/weblinx) (static benchmark) | |
Designing new web benchmarks with BrowserGym is easy, and simply requires to inherit the [`AbstractBrowserTask`](https://github.com/ServiceNow/BrowserGym/blob/main/browsergym/core/src/browsergym/core/task.py#L7C7-L7C26) class. | |
## π οΈ Setup | |
To use browsergym, install one of the following packages: | |
```sh | |
pip install browsergym # (recommended) everything below | |
pip install browsergym-experiments # experiment utilities (agent, loop, benchmarks) + everything below | |
pip install browsergym-core # core functionalities only (no benchmark, just the openended task) | |
pip install browsergym-miniwob # core + miniwob | |
pip install browsergym-webarena # core + webarena | |
pip install browsergym-visualwebarena # core + visualwebarena | |
pip install browsergym-workarena # core + workarena | |
pip install browsergym-assistantbench # core + assistantbench | |
pip install weblinx-browsergym # core + weblinx | |
``` | |
Then setup playwright by running | |
```sh | |
playwright install chromium | |
``` | |
Finally, each benchmark comes with its own specific setup that requires to follow additional steps. | |
- for MiniWoB++, see [miniwob/README.md](browsergym/miniwob/README.md) | |
- for WebArena, see [webarena/README.md](browsergym/webarena/README.md) | |
- for VisualWebArena, see [visualwebarena/README.md](browsergym/visualwebarena/README.md) | |
- for WorkArena, see [WorkArena](https://github.com/ServiceNow/WorkArena) | |
- for AssistantBench, see [assistantbench/README.md](browsergym/assistantbench/README.md) | |
### ποΈ Development setup | |
To install browsergym locally for development, use the following commands: | |
```sh | |
git clone [email protected]:ServiceNow/BrowserGym.git | |
cd BrowserGym | |
make install | |
``` | |
Contributions are welcome! π | |
## π Usage | |
Boilerplate code to run an agent on an interactive, open-ended task: | |
```python | |
import gymnasium as gym | |
import browsergym.core # register the openended task as a gym environment | |
# start an openended environment | |
env = gym.make( | |
"browsergym/openended", | |
task_kwargs={"start_url": "https://www.google.com/"}, # starting URL | |
wait_for_user_message=True, # wait for a user message after each agent message sent to the chat | |
) | |
# run the environment <> agent loop until termination | |
obs, info = env.reset() | |
while True: | |
action = ... # implement your agent here | |
obs, reward, terminated, truncated, info = env.step(action) | |
if terminated or truncated: | |
break | |
# release the environment | |
env.close() | |
``` | |
MiniWoB | |
```python | |
import gymnasium as gym | |
import browsergym.miniwob # register miniwob tasks as gym environments | |
# start a miniwob task | |
env = gym.make("browsergym/miniwob.choose-list") | |
... | |
# list all the available miniwob tasks | |
env_ids = [id for id in gym.envs.registry.keys() if id.startswith("browsergym/miniwob")] | |
print("\n".join(env_ids)) | |
``` | |
WorkArena | |
```python | |
import gymnasium as gym | |
import browsergym.workarena # register workarena tasks as gym environments | |
# start a workarena task | |
env = gym.make("browsergym/workarena.servicenow.order-ipad-pro") | |
... | |
# list all the available workarena tasks | |
env_ids = [id for id in gym.envs.registry.keys() if id.startswith("browsergym/workarena")] | |
print("\n".join(env_ids)) | |
``` | |
WebArena | |
```python | |
import gymnasium as gym | |
import browsergym.webarena # register webarena tasks as gym environments | |
# start a webarena task | |
env = gym.make("browsergym/webarena.310") | |
... | |
# list all the available webarena tasks | |
env_ids = [id for id in gym.envs.registry.keys() if id.startswith("browsergym/webarena")] | |
print("\n".join(env_ids)) | |
``` | |
VisualWebArena | |
```python | |
import gymnasium as gym | |
import browsergym.webarena # register webarena tasks as gym environments | |
# start a visualwebarena task | |
env = gym.make("browsergym/visualwebarena.721") | |
... | |
# list all the available visualwebarena tasks | |
env_ids = [id for id in gym.envs.registry.keys() if id.startswith("browsergym/visualwebarena")] | |
print("\n".join(env_ids)) | |
``` | |
AssistantBench | |
```python | |
import gymnasium as gym | |
import browsergym.workarena # register assistantbench tasks as gym environments | |
# start an assistantbench task | |
env = gym.make("browsergym/assistantbench.validation.3") | |
... | |
# list all the available assistantbench tasks | |
env_ids = [id for id in gym.envs.registry.keys() if id.startswith("browsergym/workarena")] | |
print("\n".join(env_ids)) | |
``` | |
## π» Demo | |
If you want to experiment with a demo agent in BrowserGym, follow these steps | |
```sh | |
# conda setup | |
conda env create -f demo_agent/environment.yml | |
conda activate demo_agent | |
# or pip setup | |
pip install -r demo_agent/requirements.txt | |
# then download the browser for playwright | |
playwright install chromium | |
``` | |
Our demo agent uses `openai` as a backend, be sure to set your `OPENAI_API_KEY`. | |
Launch the demo agent as follows | |
```sh | |
# openended (interactive chat mode) | |
python demo_agent/run_demo.py --task_name openended --start_url https://www.google.com | |
# miniwob | |
python demo_agent/run_demo.py --task_name miniwob.click-test | |
# workarena | |
python demo_agent/run_demo.py --task_name workarena.servicenow.order-standard-laptop | |
# webarena | |
python demo_agent/run_demo.py --task_name webarena.4 | |
# visualwebarena | |
python demo_agent/run_demo.py --task_name visualwebarena.398 | |
``` | |
You can customize your experience by changing the `model_name` to your preferred LLM (it uses `gpt-4o-mini` by default), adding screenshots for your VLMs with `use_screenshot`, and much more! | |
```python | |
python demo_agent/run_demo.py --help | |
``` | |
## π Ecosystem | |
- [AgentLab](https://github.com/ServiceNow/AgentLab): Seamlessly run agents on benchmarks, collect and analyse traces. | |
- [WorkArena(++)](https://github.com/ServiceNow/WorkArena): A benchmark for web agents on the ServiceNow platform. | |
- [WebArena](https://github.com/web-arena-x/webarena): A benchmark of realistic web tasks on self-hosted domains. | |
- [VisualWebArena](https://github.com/web-arena-x/visualwebarena): A benchmark of realistic visual web tasks on self-hosted domains. | |
- [MiniWoB(++)](https://miniwob.farama.org/): A collection of over 100 web tasks on synthetic web pages. | |
- [WebLINX](https://github.com/McGill-NLP/weblinx): A dataset of real-world web interaction traces. | |
- [AssistantBench](https://github.com/oriyor/assistantbench): A benchmark of realistic and time-consuming tasks on the open web. | |
- [DoomArena](https://github.com/ServiceNow/DoomArena): A framework for AI agent security testing which supports injecting attacks into web pages from Browsergym environments. | |
## π Contributors | |
[](https://github.com/ServiceNow/BrowserGym/graphs/contributors) | |
## π Citing This Work | |
Please use the following BibTeX to cite our work: | |
```tex | |
@inproceedings{workarena2024, | |
title = {{W}ork{A}rena: How Capable are Web Agents at Solving Common Knowledge Work Tasks?}, | |
author = {Drouin, Alexandre and Gasse, Maxime and Caccia, Massimo and Laradji, Issam H. and Del Verme, Manuel and Marty, Tom and Vazquez, David and Chapados, Nicolas and Lacoste, Alexandre}, | |
booktitle = {Proceedings of the 41st International Conference on Machine Learning}, | |
pages = {11642--11662}, | |
year = {2024}, | |
editor = {Salakhutdinov, Ruslan and Kolter, Zico and Heller, Katherine and Weller, Adrian and Oliver, Nuria and Scarlett, Jonathan and Berkenkamp, Felix}, | |
volume = {235}, | |
series = {Proceedings of Machine Learning Research}, | |
month = {21--27 Jul}, | |
publisher = {PMLR}, | |
url = {https://proceedings.mlr.press/v235/drouin24a.html}, | |
} | |
``` | |