Official implementation of Direction-oriented Multi-objective Learning: Simple and Provable Stochastic Algorithms.
The expriments are conducted on Cityscapes and NYU-v2 datasets, which can be downloaded from MTAN. (Update: For Cityscapes, please choose the smaller version provided in the original MTAN repo). Following Nash-MTL and FAMO, the implementation is based on the MTL library.
Create the environment:
conda create -n mtl python=3.9.7 conda activate mtl python -m pip install torch==1.12.1+cu113 torchvision==0.13.1+cu113 Then, install the repo:
https://github.com/OptMN-Lab/sdmgrad.git cd sdmgrad python -m pip install -e . The dataset by default should be put under experiments/EXP_NAME/dataset/ folder where EXP_NAME is chosen from nyuv2, cityscapes. To run the sdmgrad experiment:
cd experiments/EXP_NAME sh run.sh The experiments are conducted on Meta-World benchmark. To run the experiments on MT10 and MT50 (the instructions below are partly borrowed from CAGrad):
- Create python3.6 virtual environment.
- Install the MTRL codebase.
- Install the Meta-World environment with commit id
d9a75c451a15b0ba39d8b7a8b6d18d883b8655d8. - Copy the
mtrl_filesfolder to themtrlfolder in the installed mtrl repo, then
cd PATH_TO_MTRL/mtrl_files/ && chmod +x mv.sh && ./mv.sh - Follow the
run.shto run the experiments.