To run AWM on WebArena under webarena/
:
cd webarena
python pipeline.py --website "shopping" # choose one from ['shopping', 'shopping_admin', 'reddit', 'gitlab', 'map']
To run AWM on Mind2Web under mind2web/
:
cd mind2web
python pipeline.py --setup "offline" # or "online"
Check webarena/
and mind2web/
folders for more detailed instructions about environment and data setups.
Agent Workflow Memory (AWM) proposes to induce, integrate, and utilize workflows via an agent memory. A workflow is usually a common sub-routine in solving tasks, with example-specific contexts being abstracted out.
AWM can operate in both offline and online settings:
- offline (left): when additional (e.g., training) examples are available, agents induce workflows from ground-truth annotated examples
- online (right): without any auxiliary data, agents induce workflows from past experiences on the fly.
We achieve the state-of-the-art result -- 35.6% success rate.
Check the code in ./webarena/
directory.
We also get the best scores among text-based agents. Particularly, AWM offline effectively generalizes across a wide range of tasks, websites, and domains.
Check the code in ./mind2web/
directory.
@inproceedings{awm2024wang,
title = {Agent Workflow Memory},
author = {Wang, Zhiruo anf Mao, Jiayuan, and Fried, Daniel and Neubig, Graham},
journal={arXiv preprint arXiv:2409.07429},
year = {2024},
}