For working memory and reinforcement learning experiments:
- jax >= 0.49
- tensorboard
- timm >= 0.6.12
In addition, you will need to install the lite versions of evojax
and brax
in this path,
some of which are required to support the changes made to the base components in the experiments in this manuscript:
cd Dependencies
pip install evojax
pip install brax
For reproducing the figures in the manuscript:
- jax >= 0.49
- numpy
- matplotlib
- seaborn
- mediapy
- MetaPlasticity:
cd examples
python repeated_seq_learning.py --policy BatchedGruMetaStdpMLPPolicy
Direct training weights:
cd examples
python repeated_seq_learning.py --policy BatchedGruMLPPolicy
cd examples
python meta_learning.py --env {env} --policy {policy} --num-tasks 8 --seed 42
The options available for env
are {ant_dir, swimmer_dir, halfcheetah_vel, hopper_vel, fetch, ur5e}
.
-
logs/
: This directory contains log files generated during the execution. -
Dependencies/
: This directory contains information about the dependencies required to run the project. -
checkpoints/
: This directory contains checkpoints from model training. -
examples/
: This directory contains example Python scripts, demonstrating how to use this project or its models. -
figure/
: This directory contains figures related to the manuscript, as well as Jupyter notebooks used to generate these figures.
All the figures in the manuscript containing the experiments and their generated scripts can be found under the figure
path