URLB provides a set of leading algorithms for unsupervised reinforcement learning where agents first pre-train without access to extrinsic rewards and then are finetuned to downstream tasks.
This codebase was adapted from DrQv2. The DDPG agent and training scripts were developed by Denis Yarats. All authors contributed to developing individual baselines for URLB.
We assume you have access to a GPU that can run CUDA 10.2 and CUDNN 8. Then, the simplest way to install all required dependencies is to create an anaconda environment by running
conda env create -f conda_env.ymlAfter the instalation ends you can activate your environment with
conda activate urlb| Agent | Command | Implementation Author(s) | Paper |
|---|---|---|---|
| ICM | agent=icm |
Denis | paper |
| ProtoRL | agent=proto |
Denis | paper |
| DIAYN | agent=diayn |
Misha | paper |
| APT(ICM) | agent=icm_apt |
Hao, Kimin | paper |
| APT(Ind) | agent=ind_apt |
Hao, Kimin | paper |
| APS | agent=aps |
Hao, Kimin | paper |
| SMM | agent=smm |
Albert | paper |
| RND | agent=rnd |
Kevin | paper |
| Disagreement | agent=disagreement |
Catherine | paper |
We support the following domains.
| Domain | Tasks |
|---|---|
walker |
stand, walk, run, flip |
quadruped |
walk, run, stand, jump |
jaco |
reach_top_left, reach_top_right, reach_bottom_left, reach_bottom_right |
Each domain supports two observation modes: states and pixels.
| Model | Command |
|---|---|
| states | obs_type=states |
| pixels | obs_type=pixels |
To run pre-training use the pretrain.py script
python pretrain.py agent=icm domain=walkeror, if you want to train a skill-based agent, like DIAYN, run:
python pretrain.py agent=diayn domain=walkerThis script will produce several agent snapshots after training for 100k, 500k, 1M, and 2M frames. The snapshots will be stored under the following directory:
./pretrained_models/<obs_type>/<domain>/<agent>/For example:
./pretrained_models/states/walker/icm/Once you have pre-trained your method, you can use the saved snapshots to initialize the DDPG agent and fine-tune it on a downstream task. For example, let's say you have pre-trained ICM, you can fine-tune it on walker_run by running the following command:
python finetune.py pretrained_agent=icm task=walker_run snapshot_ts=1000000 obs_type=statesThis will load a snapshot stored in ./pretrained_models/states/walker/icm/snapshot_1000000.pt, initialize DDPG with it (both the actor and critic), and start training on walker_run using the extrinsic reward of the task.
For methods that use skills, include the agent, and the reward_free tag to false.
python finetune.py pretrained_agent=smm task=walker_run snapshot_ts=1000000 obs_type=states agent=smm reward_free=falseLogs are stored in the exp_local folder. To launch tensorboard run:
tensorboard --logdir exp_localThe console output is also available in a form:
| train | F: 6000 | S: 3000 | E: 6 | L: 1000 | R: 5.5177 | FPS: 96.7586 | T: 0:00:42
a training entry decodes as
F : total number of environment frames
S : total number of agent steps
E : total number of episodes
R : episode return
FPS: training throughput (frames per second)
T : total training time