Merge remote-tracking branch 'upstream/main' into add_drop_last_keyframes

This commit is contained in:
Alexander Soare 2024-05-27 09:21:44 +01:00
commit 946d191919
611 changed files with 2888 additions and 1357 deletions

4
.gitattributes vendored
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@ -1,2 +1,6 @@
*.memmap filter=lfs diff=lfs merge=lfs -text *.memmap filter=lfs diff=lfs merge=lfs -text
*.stl filter=lfs diff=lfs merge=lfs -text *.stl filter=lfs diff=lfs merge=lfs -text
*.safetensors filter=lfs diff=lfs merge=lfs -text
*.mp4 filter=lfs diff=lfs merge=lfs -text
*.arrow filter=lfs diff=lfs merge=lfs -text
*.json filter=lfs diff=lfs merge=lfs -text

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@ -10,7 +10,6 @@ on:
env: env:
PYTHON_VERSION: "3.10" PYTHON_VERSION: "3.10"
# CI_SLACK_CHANNEL: ${{ secrets.CI_DOCKER_CHANNEL }}
jobs: jobs:
latest-cpu: latest-cpu:
@ -51,30 +50,6 @@ jobs:
tags: huggingface/lerobot-cpu tags: huggingface/lerobot-cpu
build-args: PYTHON_VERSION=${{ env.PYTHON_VERSION }} build-args: PYTHON_VERSION=${{ env.PYTHON_VERSION }}
# - name: Post to a Slack channel
# id: slack
# #uses: slackapi/slack-github-action@v1.25.0
# uses: slackapi/slack-github-action@6c661ce58804a1a20f6dc5fbee7f0381b469e001
# with:
# # Slack channel id, channel name, or user id to post message.
# # See also: https://api.slack.com/methods/chat.postMessage#channels
# channel-id: ${{ env.CI_SLACK_CHANNEL }}
# # For posting a rich message using Block Kit
# payload: |
# {
# "text": "lerobot-cpu Docker Image build result: ${{ job.status }}\n${{ github.event.pull_request.html_url || github.event.head_commit.url }}",
# "blocks": [
# {
# "type": "section",
# "text": {
# "type": "mrkdwn",
# "text": "lerobot-cpu Docker Image build result: ${{ job.status }}\n${{ github.event.pull_request.html_url || github.event.head_commit.url }}"
# }
# }
# ]
# }
# env:
# SLACK_BOT_TOKEN: ${{ secrets.SLACK_CIFEEDBACK_BOT_TOKEN }}
latest-cuda: latest-cuda:
name: GPU name: GPU
@ -113,27 +88,40 @@ jobs:
tags: huggingface/lerobot-gpu tags: huggingface/lerobot-gpu
build-args: PYTHON_VERSION=${{ env.PYTHON_VERSION }} build-args: PYTHON_VERSION=${{ env.PYTHON_VERSION }}
# - name: Post to a Slack channel
# id: slack latest-cuda-dev:
# #uses: slackapi/slack-github-action@v1.25.0 name: GPU Dev
# uses: slackapi/slack-github-action@6c661ce58804a1a20f6dc5fbee7f0381b469e001 runs-on: ubuntu-latest
# with: steps:
# # Slack channel id, channel name, or user id to post message. - name: Cleanup disk
# # See also: https://api.slack.com/methods/chat.postMessage#channels run: |
# channel-id: ${{ env.CI_SLACK_CHANNEL }} sudo df -h
# # For posting a rich message using Block Kit # sudo ls -l /usr/local/lib/
# payload: | # sudo ls -l /usr/share/
# { sudo du -sh /usr/local/lib/
# "text": "lerobot-gpu Docker Image build result: ${{ job.status }}\n${{ github.event.pull_request.html_url || github.event.head_commit.url }}", sudo du -sh /usr/share/
# "blocks": [ sudo rm -rf /usr/local/lib/android
# { sudo rm -rf /usr/share/dotnet
# "type": "section", sudo du -sh /usr/local/lib/
# "text": { sudo du -sh /usr/share/
# "type": "mrkdwn", sudo df -h
# "text": "lerobot-gpu Docker Image build result: ${{ job.status }}\n${{ github.event.pull_request.html_url || github.event.head_commit.url }}" - name: Set up Docker Buildx
# } uses: docker/setup-buildx-action@v3
# }
# ] - name: Check out code
# } uses: actions/checkout@v4
# env:
# SLACK_BOT_TOKEN: ${{ secrets.SLACK_CIFEEDBACK_BOT_TOKEN }} - name: Login to DockerHub
uses: docker/login-action@v3
with:
username: ${{ secrets.DOCKERHUB_USERNAME }}
password: ${{ secrets.DOCKERHUB_PASSWORD }}
- name: Build and Push GPU dev
uses: docker/build-push-action@v5
with:
context: .
file: ./docker/lerobot-gpu-dev/Dockerfile
push: true
tags: huggingface/lerobot-gpu:dev
build-args: PYTHON_VERSION=${{ env.PYTHON_VERSION }}

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@ -29,6 +29,8 @@ jobs:
MUJOCO_GL: egl MUJOCO_GL: egl
steps: steps:
- uses: actions/checkout@v4 - uses: actions/checkout@v4
with:
lfs: true # Ensure LFS files are pulled
- name: Install EGL - name: Install EGL
run: sudo apt-get update && sudo apt-get install -y libegl1-mesa-dev run: sudo apt-get update && sudo apt-get install -y libegl1-mesa-dev
@ -65,6 +67,8 @@ jobs:
MUJOCO_GL: egl MUJOCO_GL: egl
steps: steps:
- uses: actions/checkout@v4 - uses: actions/checkout@v4
with:
lfs: true # Ensure LFS files are pulled
- name: Install poetry - name: Install poetry
run: | run: |
@ -97,6 +101,8 @@ jobs:
MUJOCO_GL: egl MUJOCO_GL: egl
steps: steps:
- uses: actions/checkout@v4 - uses: actions/checkout@v4
with:
lfs: true # Ensure LFS files are pulled
- name: Install EGL - name: Install EGL
run: sudo apt-get update && sudo apt-get install -y libegl1-mesa-dev run: sudo apt-get update && sudo apt-get install -y libegl1-mesa-dev

32
.gitignore vendored
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@ -2,12 +2,17 @@
logs logs
tmp tmp
wandb wandb
# Data
data data
outputs outputs
.vscode
rl # Apple
.DS_Store .DS_Store
# VS Code
.vscode
# HPC # HPC
nautilus/*.yaml nautilus/*.yaml
*.key *.key
@ -90,6 +95,7 @@ instance/
docs/_build/ docs/_build/
# PyBuilder # PyBuilder
.pybuilder/
target/ target/
# Jupyter Notebook # Jupyter Notebook
@ -102,13 +108,6 @@ ipython_config.py
# pyenv # pyenv
.python-version .python-version
# pipenv
# According to pypa/pipenv#598, it is recommended to include Pipfile.lock in version control.
# However, in case of collaboration, if having platform-specific dependencies or dependencies
# having no cross-platform support, pipenv may install dependencies that don't work, or not
# install all needed dependencies.
#Pipfile.lock
# PEP 582; used by e.g. github.com/David-OConnor/pyflow # PEP 582; used by e.g. github.com/David-OConnor/pyflow
__pypackages__/ __pypackages__/
@ -119,6 +118,15 @@ celerybeat.pid
# SageMath parsed files # SageMath parsed files
*.sage.py *.sage.py
# Environments
.env
.venv
env/
venv/
ENV/
env.bak/
venv.bak/
# Spyder project settings # Spyder project settings
.spyderproject .spyderproject
.spyproject .spyproject
@ -136,3 +144,9 @@ dmypy.json
# Pyre type checker # Pyre type checker
.pyre/ .pyre/
# pytype static type analyzer
.pytype/
# Cython debug symbols
cython_debug/

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@ -195,6 +195,11 @@ Follow these steps to start contributing:
git commit git commit
``` ```
Note, if you already commited some changes that have a wrong formatting, you can use:
```bash
pre-commit run --all-files
```
Please write [good commit messages](https://chris.beams.io/posts/git-commit/). Please write [good commit messages](https://chris.beams.io/posts/git-commit/).
It is a good idea to sync your copy of the code with the original It is a good idea to sync your copy of the code with the original

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@ -20,15 +20,19 @@ build-gpu:
test-end-to-end: test-end-to-end:
${MAKE} test-act-ete-train ${MAKE} test-act-ete-train
${MAKE} test-act-ete-eval ${MAKE} test-act-ete-eval
${MAKE} test-act-ete-train-amp
${MAKE} test-act-ete-eval-amp
${MAKE} test-diffusion-ete-train ${MAKE} test-diffusion-ete-train
${MAKE} test-diffusion-ete-eval ${MAKE} test-diffusion-ete-eval
${MAKE} test-tdmpc-ete-train ${MAKE} test-tdmpc-ete-train
${MAKE} test-tdmpc-ete-eval ${MAKE} test-tdmpc-ete-eval
${MAKE} test-default-ete-eval ${MAKE} test-default-ete-eval
${MAKE} test-act-pusht-tutorial
test-act-ete-train: test-act-ete-train:
python lerobot/scripts/train.py \ python lerobot/scripts/train.py \
policy=act \ policy=act \
policy.dim_model=64 \
env=aloha \ env=aloha \
wandb.enable=False \ wandb.enable=False \
training.offline_steps=2 \ training.offline_steps=2 \
@ -51,9 +55,40 @@ test-act-ete-eval:
env.episode_length=8 \ env.episode_length=8 \
device=cpu \ device=cpu \
test-act-ete-train-amp:
python lerobot/scripts/train.py \
policy=act \
policy.dim_model=64 \
env=aloha \
wandb.enable=False \
training.offline_steps=2 \
training.online_steps=0 \
eval.n_episodes=1 \
eval.batch_size=1 \
device=cpu \
training.save_model=true \
training.save_freq=2 \
policy.n_action_steps=20 \
policy.chunk_size=20 \
training.batch_size=2 \
hydra.run.dir=tests/outputs/act/ \
use_amp=true
test-act-ete-eval-amp:
python lerobot/scripts/eval.py \
-p tests/outputs/act/checkpoints/000002 \
eval.n_episodes=1 \
eval.batch_size=1 \
env.episode_length=8 \
device=cpu \
use_amp=true
test-diffusion-ete-train: test-diffusion-ete-train:
python lerobot/scripts/train.py \ python lerobot/scripts/train.py \
policy=diffusion \ policy=diffusion \
policy.down_dims=\[64,128,256\] \
policy.diffusion_step_embed_dim=32 \
policy.num_inference_steps=10 \
env=pusht \ env=pusht \
wandb.enable=False \ wandb.enable=False \
training.offline_steps=2 \ training.offline_steps=2 \
@ -74,6 +109,7 @@ test-diffusion-ete-eval:
env.episode_length=8 \ env.episode_length=8 \
device=cpu \ device=cpu \
# TODO(alexander-soare): Restore online_steps to 2 when it is reinstated.
test-tdmpc-ete-train: test-tdmpc-ete-train:
python lerobot/scripts/train.py \ python lerobot/scripts/train.py \
policy=tdmpc \ policy=tdmpc \
@ -82,7 +118,7 @@ test-tdmpc-ete-train:
dataset_repo_id=lerobot/xarm_lift_medium \ dataset_repo_id=lerobot/xarm_lift_medium \
wandb.enable=False \ wandb.enable=False \
training.offline_steps=2 \ training.offline_steps=2 \
training.online_steps=2 \ training.online_steps=0 \
eval.n_episodes=1 \ eval.n_episodes=1 \
eval.batch_size=1 \ eval.batch_size=1 \
env.episode_length=2 \ env.episode_length=2 \
@ -100,7 +136,6 @@ test-tdmpc-ete-eval:
env.episode_length=8 \ env.episode_length=8 \
device=cpu \ device=cpu \
test-default-ete-eval: test-default-ete-eval:
python lerobot/scripts/eval.py \ python lerobot/scripts/eval.py \
--config lerobot/configs/default.yaml \ --config lerobot/configs/default.yaml \
@ -108,3 +143,21 @@ test-default-ete-eval:
eval.batch_size=1 \ eval.batch_size=1 \
env.episode_length=8 \ env.episode_length=8 \
device=cpu \ device=cpu \
test-act-pusht-tutorial:
cp examples/advanced/1_train_act_pusht/act_pusht.yaml lerobot/configs/policy/created_by_Makefile.yaml
python lerobot/scripts/train.py \
policy=created_by_Makefile.yaml \
env=pusht \
wandb.enable=False \
training.offline_steps=2 \
eval.n_episodes=1 \
eval.batch_size=1 \
env.episode_length=2 \
device=cpu \
training.save_model=true \
training.save_freq=2 \
training.batch_size=2 \
hydra.run.dir=tests/outputs/act_pusht/
rm lerobot/configs/policy/created_by_Makefile.yaml

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@ -77,6 +77,10 @@ Install 🤗 LeRobot:
pip install . pip install .
``` ```
> **NOTE:** Depending on your platform, If you encounter any build errors during this step
you may need to install `cmake` and `build-essential` for building some of our dependencies.
On linux: `sudo apt-get install cmake build-essential`
For simulations, 🤗 LeRobot comes with gymnasium environments that can be installed as extras: For simulations, 🤗 LeRobot comes with gymnasium environments that can be installed as extras:
- [aloha](https://github.com/huggingface/gym-aloha) - [aloha](https://github.com/huggingface/gym-aloha)
- [xarm](https://github.com/huggingface/gym-xarm) - [xarm](https://github.com/huggingface/gym-xarm)
@ -99,6 +103,7 @@ wandb login
``` ```
. .
├── examples # contains demonstration examples, start here to learn about LeRobot ├── examples # contains demonstration examples, start here to learn about LeRobot
| └── advanced # contains even more examples for those who have mastered the basics
├── lerobot ├── lerobot
| ├── configs # contains hydra yaml files with all options that you can override in the command line | ├── configs # contains hydra yaml files with all options that you can override in the command line
| | ├── default.yaml # selected by default, it loads pusht environment and diffusion policy | | ├── default.yaml # selected by default, it loads pusht environment and diffusion policy
@ -158,9 +163,10 @@ See `python lerobot/scripts/eval.py --help` for more instructions.
### Train your own policy ### Train your own policy
Check out [example 3](./examples/3_train_policy.py) that illustrates how to start training a model. Check out [example 3](./examples/3_train_policy.py) that illustrates how to train a model using our core library in python, and [example 4](./examples/4_train_policy_with_script.md) that shows how to use our training script from command line.
In general, you can use our training script to easily train any policy. Here is an example of training the ACT policy on trajectories collected by humans on the Aloha simulation environment for the insertion task: In general, you can use our training script to easily train any policy. Here is an example of training the ACT policy on trajectories collected by humans on the Aloha simulation environment for the insertion task:
```bash ```bash
python lerobot/scripts/train.py \ python lerobot/scripts/train.py \
policy=act \ policy=act \
@ -184,7 +190,19 @@ A link to the wandb logs for the run will also show up in yellow in your termina
![](media/wandb.png) ![](media/wandb.png)
Note: For efficiency, during training every checkpoint is evaluated on a low number of episodes. After training, you may want to re-evaluate your best checkpoints on more episodes or change the evaluation settings. See `python lerobot/scripts/eval.py --help` for more instructions. Note: For efficiency, during training every checkpoint is evaluated on a low number of episodes. You may use `eval.n_episodes=500` to evaluate on more episodes than the default. Or, after training, you may want to re-evaluate your best checkpoints on more episodes or change the evaluation settings. See `python lerobot/scripts/eval.py --help` for more instructions.
#### Reproduce state-of-the-art (SOTA)
We have organized our configuration files (found under [`lerobot/configs`](./lerobot/configs)) such that they reproduce SOTA results from a given model variant in their respective original works. Simply running:
```bash
python lerobot/scripts/train.py policy=diffusion env=pusht
```
reproduces SOTA results for Diffusion Policy on the PushT task.
Pretrained policies, along with reproduction details, can be found under the "Models" section of https://huggingface.co/lerobot.
## Contribute ## Contribute
@ -197,11 +215,11 @@ To add a dataset to the hub, you need to login using a write-access token, which
huggingface-cli login --token ${HUGGINGFACE_TOKEN} --add-to-git-credential huggingface-cli login --token ${HUGGINGFACE_TOKEN} --add-to-git-credential
``` ```
Then move your dataset folder in `data` directory (e.g. `data/aloha_ping_pong`), and push your dataset to the hub with: Then move your dataset folder in `data` directory (e.g. `data/aloha_static_pingpong_test`), and push your dataset to the hub with:
```bash ```bash
python lerobot/scripts/push_dataset_to_hub.py \ python lerobot/scripts/push_dataset_to_hub.py \
--data-dir data \ --data-dir data \
--dataset-id aloha_ping_ping \ --dataset-id aloha_static_pingpong_test \
--raw-format aloha_hdf5 \ --raw-format aloha_hdf5 \
--community-id lerobot --community-id lerobot
``` ```

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@ -0,0 +1,40 @@
FROM nvidia/cuda:12.4.1-base-ubuntu22.04
# Configure image
ARG PYTHON_VERSION=3.10
ARG DEBIAN_FRONTEND=noninteractive
# Install apt dependencies
RUN apt-get update && apt-get install -y --no-install-recommends \
build-essential cmake \
git git-lfs openssh-client \
nano vim less util-linux \
htop atop nvtop \
sed gawk grep curl wget \
tcpdump sysstat screen tmux \
libglib2.0-0 libgl1-mesa-glx libegl1-mesa ffmpeg \
python${PYTHON_VERSION} python${PYTHON_VERSION}-venv \
&& apt-get clean && rm -rf /var/lib/apt/lists/*
# Install gh cli tool
RUN (type -p wget >/dev/null || (apt update && apt-get install wget -y)) \
&& mkdir -p -m 755 /etc/apt/keyrings \
&& wget -qO- https://cli.github.com/packages/githubcli-archive-keyring.gpg | tee /etc/apt/keyrings/githubcli-archive-keyring.gpg > /dev/null \
&& chmod go+r /etc/apt/keyrings/githubcli-archive-keyring.gpg \
&& echo "deb [arch=$(dpkg --print-architecture) signed-by=/etc/apt/keyrings/githubcli-archive-keyring.gpg] https://cli.github.com/packages stable main" | tee /etc/apt/sources.list.d/github-cli.list > /dev/null \
&& apt update \
&& apt install gh -y \
&& apt clean && rm -rf /var/lib/apt/lists/*
# Setup `python`
RUN ln -s /usr/bin/python3 /usr/bin/python
# Install poetry
RUN curl -sSL https://install.python-poetry.org | python -
ENV PATH="/root/.local/bin:$PATH"
RUN echo 'if [ "$HOME" != "/root" ]; then ln -sf /root/.local/bin/poetry $HOME/.local/bin/poetry; fi' >> /root/.bashrc
RUN poetry config virtualenvs.create false
RUN poetry config virtualenvs.in-project true
# Set EGL as the rendering backend for MuJoCo
ENV MUJOCO_GL="egl"

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@ -4,18 +4,15 @@ FROM nvidia/cuda:12.4.1-base-ubuntu22.04
ARG PYTHON_VERSION=3.10 ARG PYTHON_VERSION=3.10
ARG DEBIAN_FRONTEND=noninteractive ARG DEBIAN_FRONTEND=noninteractive
# Install apt dependencies # Install apt dependencies
RUN apt-get update && apt-get install -y --no-install-recommends \ RUN apt-get update && apt-get install -y --no-install-recommends \
build-essential cmake \ build-essential cmake \
git git-lfs openssh-client \
nano vim \
htop atop nvtop \
sed gawk grep curl wget \
tcpdump sysstat screen \
libglib2.0-0 libgl1-mesa-glx libegl1-mesa \ libglib2.0-0 libgl1-mesa-glx libegl1-mesa \
python${PYTHON_VERSION} python${PYTHON_VERSION}-venv \ python${PYTHON_VERSION} python${PYTHON_VERSION}-venv \
&& apt-get clean && rm -rf /var/lib/apt/lists/* && apt-get clean && rm -rf /var/lib/apt/lists/*
# Create virtual environment # Create virtual environment
RUN ln -s /usr/bin/python${PYTHON_VERSION} /usr/bin/python RUN ln -s /usr/bin/python${PYTHON_VERSION} /usr/bin/python
RUN python -m venv /opt/venv RUN python -m venv /opt/venv
@ -23,8 +20,7 @@ ENV PATH="/opt/venv/bin:$PATH"
RUN echo "source /opt/venv/bin/activate" >> /root/.bashrc RUN echo "source /opt/venv/bin/activate" >> /root/.bashrc
# Install LeRobot # Install LeRobot
RUN git lfs install COPY . /lerobot
RUN git clone https://github.com/huggingface/lerobot.git
WORKDIR /lerobot WORKDIR /lerobot
RUN pip install --upgrade --no-cache-dir pip RUN pip install --upgrade --no-cache-dir pip
RUN pip install --no-cache-dir ".[test, aloha, xarm, pusht]" RUN pip install --no-cache-dir ".[test, aloha, xarm, pusht]"

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@ -0,0 +1,183 @@
This tutorial will explain the training script, how to use it, and particularly the use of Hydra to configure everything needed for the training run.
## The training script
LeRobot offers a training script at [`lerobot/scripts/train.py`](../../lerobot/scripts/train.py). At a high level it does the following:
- Loads a Hydra configuration file for the following steps (more on Hydra in a moment).
- Makes a simulation environment.
- Makes a dataset corresponding to that simulation environment.
- Makes a policy.
- Runs a standard training loop with forward pass, backward pass, optimization step, and occasional logging, evaluation (of the policy on the environment), and checkpointing.
## Basics of how we use Hydra
Explaining the ins and outs of [Hydra](https://hydra.cc/docs/intro/) is beyond the scope of this document, but here we'll share the main points you need to know.
First, `lerobot/configs` has a directory structure like this:
```
.
├── default.yaml
├── env
│ ├── aloha.yaml
│ ├── pusht.yaml
│ └── xarm.yaml
└── policy
├── act.yaml
├── diffusion.yaml
└── tdmpc.yaml
```
**_For brevity, in the rest of this document we'll drop the leading `lerobot/configs` path. So `default.yaml` really refers to `lerobot/configs/default.yaml`._**
When you run the training script with
```python
python lerobot/scripts/train.py
```
Hydra is set up to read `default.yaml` (via the `@hydra.main` decorator). If you take a look at the `@hydra.main`'s arguments you will see `config_path="../configs", config_name="default"`. At the top of `default.yaml`, is a `defaults` section which looks likes this:
```yaml
defaults:
- _self_
- env: pusht
- policy: diffusion
```
This logic tells Hydra to incorporate configuration parameters from `env/pusht.yaml` and `policy/diffusion.yaml`. _Note: Be aware of the order as any configuration parameters with the same name will be overidden. Thus, `default.yaml` is overriden by `env/pusht.yaml` which is overidden by `policy/diffusion.yaml`_.
Then, `default.yaml` also contains common configuration parameters such as `device: cuda` or `use_amp: false` (for enabling fp16 training). Some other parameters are set to `???` which indicates that they are expected to be set in additional yaml files. For instance, `training.offline_steps: ???` in `default.yaml` is set to `200000` in `diffusion.yaml`.
Thanks to this `defaults` section in `default.yaml`, if you want to train Diffusion Policy with PushT, you really only need to run:
```bash
python lerobot/scripts/train.py
```
However, you can be more explicit and launch the exact same Diffusion Policy training on PushT with:
```bash
python lerobot/scripts/train.py policy=diffusion env=pusht
```
This way of overriding defaults via the CLI is especially useful when you want to change the policy and/or environment. For instance, you can train ACT on the default Aloha environment with:
```bash
python lerobot/scripts/train.py policy=act env=aloha
```
There are two things to note here:
- Config overrides are passed as `param_name=param_value`.
- Here we have overridden the defaults section. `policy=act` tells Hydra to use `policy/act.yaml`, and `env=aloha` tells Hydra to use `env/pusht.yaml`.
_As an aside: we've set up all of our configurations so that they reproduce state-of-the-art results from papers in the literature._
## Overriding configuration parameters in the CLI
Now let's say that we want to train on a different task in the Aloha environment. If you look in `env/aloha.yaml` you will see something like:
```yaml
# lerobot/configs/env/aloha.yaml
env:
task: AlohaInsertion-v0
```
And if you look in `policy/act.yaml` you will see something like:
```yaml
# lerobot/configs/policy/act.yaml
dataset_repo_id: lerobot/aloha_sim_insertion_human
```
But our Aloha environment actually supports a cube transfer task as well. To train for this task, you could manually modify the two yaml configuration files respectively.
First, we'd need to switch to using the cube transfer task for the ALOHA environment.
```diff
# lerobot/configs/env/aloha.yaml
env:
- task: AlohaInsertion-v0
+ task: AlohaTransferCube-v0
```
Then, we'd also need to switch to using the cube transfer dataset.
```diff
# lerobot/configs/policy/act.yaml
-dataset_repo_id: lerobot/aloha_sim_insertion_human
+dataset_repo_id: lerobot/aloha_sim_transfer_cube_human
```
Then, you'd be able to run:
```bash
python lerobot/scripts/train.py policy=act env=aloha
```
and you'd be training and evaluating on the cube transfer task.
An alternative approach to editing the yaml configuration files, would be to override the defaults via the command line:
```bash
python lerobot/scripts/train.py \
policy=act \
dataset_repo_id=lerobot/aloha_sim_transfer_cube_human \
env=aloha \
env.task=AlohaTransferCube-v0
```
There's something new here. Notice the `.` delimiter used to traverse the configuration hierarchy. _But be aware that the `defaults` section is an exception. As you saw above, we didn't need to write `defaults.policy=act` in the CLI. `policy=act` was enough._
Putting all that knowledge together, here's the command that was used to train https://huggingface.co/lerobot/act_aloha_sim_transfer_cube_human.
```bash
python lerobot/scripts/train.py \
hydra.run.dir=outputs/train/act_aloha_sim_transfer_cube_human \
device=cuda
env=aloha \
env.task=AlohaTransferCube-v0 \
dataset_repo_id=lerobot/aloha_sim_transfer_cube_human \
policy=act \
training.eval_freq=10000 \
training.log_freq=250 \
training.offline_steps=100000 \
training.save_model=true \
training.save_freq=25000 \
eval.n_episodes=50 \
eval.batch_size=50 \
wandb.enable=false \
```
There's one new thing here: `hydra.run.dir=outputs/train/act_aloha_sim_transfer_cube_human`, which specifies where to save the training output.
## Using a configuration file not in `lerobot/configs`
Above we discusses the our training script is set up such that Hydra looks for `default.yaml` in `lerobot/configs`. But, if you have a configuration file elsewhere in your filesystem you may use:
```bash
python lerobot/scripts/train.py --config-dir PARENT/PATH --config-name FILE_NAME_WITHOUT_EXTENSION
```
Note: here we use regular syntax for providing CLI arguments to a Python script, not Hydra's `param_name=param_value` syntax.
As a concrete example, this becomes particularly handy when you have a folder with training outputs, and would like to re-run the training. For example, say you previously ran the training script with one of the earlier commands and have `outputs/train/my_experiment/checkpoints/pretrained_model/config.yaml`. This `config.yaml` file will have the full set of configuration parameters within it. To run the training with the same configuration again, do:
```bash
python lerobot/scripts/train.py --config-dir outputs/train/my_experiment/checkpoints/pretrained_model --config-name config
```
Note that you may still use the regular syntax for config parameter overrides (eg: by adding `training.offline_steps=200000`).
---
So far we've seen how to train Diffusion Policy for PushT and ACT for ALOHA. Now, what if we want to train ACT for PushT? Well, there are aspects of the ACT configuration that are specific to the ALOHA environments, and these happen to be incompatible with PushT. Therefore, trying to run the following will almost certainly raise an exception of sorts (eg: feature dimension mismatch):
```bash
python lerobot/scripts/train.py policy=act env=pusht dataset_repo_id=lerobot/pusht
```
Please, head on over to our [advanced tutorial on adapting policy configuration to various environments](./advanced/train_act_pusht/train_act_pusht.md) to learn more.
Or in the meantime, happy coding! 🤗

View File

@ -0,0 +1,87 @@
# @package _global_
# Change the seed to match what PushT eval uses
# (to avoid evaluating on seeds used for generating the training data).
seed: 100000
# Change the dataset repository to the PushT one.
dataset_repo_id: lerobot/pusht
override_dataset_stats:
observation.image:
# stats from imagenet, since we use a pretrained vision model
mean: [[[0.485]], [[0.456]], [[0.406]]] # (c,1,1)
std: [[[0.229]], [[0.224]], [[0.225]]] # (c,1,1)
training:
offline_steps: 80000
online_steps: 0
eval_freq: 10000
save_freq: 100000
log_freq: 250
save_model: true
batch_size: 8
lr: 1e-5
lr_backbone: 1e-5
weight_decay: 1e-4
grad_clip_norm: 10
online_steps_between_rollouts: 1
delta_timestamps:
action: "[i / ${fps} for i in range(${policy.chunk_size})]"
eval:
n_episodes: 50
batch_size: 50
# See `configuration_act.py` for more details.
policy:
name: act
# Input / output structure.
n_obs_steps: 1
chunk_size: 100 # chunk_size
n_action_steps: 100
input_shapes:
observation.image: [3, 96, 96]
observation.state: ["${env.state_dim}"]
output_shapes:
action: ["${env.action_dim}"]
# Normalization / Unnormalization
input_normalization_modes:
observation.image: mean_std
# Use min_max normalization just because it's more standard.
observation.state: min_max
output_normalization_modes:
# Use min_max normalization just because it's more standard.
action: min_max
# Architecture.
# Vision backbone.
vision_backbone: resnet18
pretrained_backbone_weights: ResNet18_Weights.IMAGENET1K_V1
replace_final_stride_with_dilation: false
# Transformer layers.
pre_norm: false
dim_model: 512
n_heads: 8
dim_feedforward: 3200
feedforward_activation: relu
n_encoder_layers: 4
# Note: Although the original ACT implementation has 7 for `n_decoder_layers`, there is a bug in the code
# that means only the first layer is used. Here we match the original implementation by setting this to 1.
# See this issue https://github.com/tonyzhaozh/act/issues/25#issue-2258740521.
n_decoder_layers: 1
# VAE.
use_vae: true
latent_dim: 32
n_vae_encoder_layers: 4
# Inference.
temporal_ensemble_momentum: null
# Training and loss computation.
dropout: 0.1
kl_weight: 10.0

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@ -0,0 +1,70 @@
In this tutorial we will learn how to adapt a policy configuration to be compatible with a new environment and dataset. As a concrete example, we will adapt the default configuration for ACT to be compatible with the PushT environment and dataset.
If you haven't already read our tutorial on the [training script and configuration tooling](../4_train_policy_with_script.md) please do so prior to tackling this tutorial.
Let's get started!
Suppose we want to train ACT for PushT. Well, there are aspects of the ACT configuration that are specific to the ALOHA environments, and these happen to be incompatible with PushT. Therefore, trying to run the following will almost certainly raise an exception of sorts (eg: feature dimension mismatch):
```bash
python lerobot/scripts/train.py policy=act env=pusht dataset_repo_id=lerobot/pusht
```
We need to adapt the parameters of the ACT policy configuration to the PushT environment. The most important ones are the image keys.
ALOHA's datasets and environments typically use a variable number of cameras. In `lerobot/configs/policy/act.yaml` you may notice two relevant sections. Here we show you the minimal diff needed to adjust to PushT:
```diff
override_dataset_stats:
- observation.images.top:
+ observation.image:
# stats from imagenet, since we use a pretrained vision model
mean: [[[0.485]], [[0.456]], [[0.406]]] # (c,1,1)
std: [[[0.229]], [[0.224]], [[0.225]]] # (c,1,1)
policy:
input_shapes:
- observation.images.top: [3, 480, 640]
+ observation.image: [3, 96, 96]
observation.state: ["${env.state_dim}"]
output_shapes:
action: ["${env.action_dim}"]
input_normalization_modes:
- observation.images.top: mean_std
+ observation.image: mean_std
observation.state: min_max
output_normalization_modes:
action: min_max
```
Here we've accounted for the following:
- PushT uses "observation.image" for its image key.
- PushT provides smaller images.
_Side note: technically we could override these via the CLI, but with many changes it gets a bit messy, and we also have a bit of a challenge in that we're using `.` in our observation keys which is treated by Hydra as a hierarchical separator_.
For your convenience, we provide [`act_pusht.yaml`](./act_pusht.yaml) in this directory. It contains the diff above, plus some other (optional) ones that are explained within. Please copy it into `lerobot/configs/policy` with:
```bash
cp examples/advanced/1_train_act_pusht/act_pusht.yaml lerobot/configs/policy/act_pusht.yaml
```
(remember from a [previous tutorial](../4_train_policy_with_script.md) that Hydra will look in the `lerobot/configs` directory). Now try running the following.
<!-- Note to contributor: are you changing this command? Note that it's tested in `Makefile`, so change it there too! -->
```bash
python lerobot/scripts/train.py policy=act_pusht env=pusht
```
Notice that this is much the same as the command that failed at the start of the tutorial, only:
- Now we are using `policy=act_pusht` to point to our new configuration file.
- We can drop `dataset_repo_id=lerobot/pusht` as the change is incorporated in our new configuration file.
Hurrah! You're now training ACT for the PushT environment.
---
The bottom line of this tutorial is that when training policies for different environments and datasets you will need to understand what parts of the policy configuration are specific to those and make changes accordingly.
Happy coding! 🤗

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@ -0,0 +1,90 @@
"""This script demonstrates how to slice a dataset and calculate the loss on a subset of the data.
This technique can be useful for debugging and testing purposes, as well as identifying whether a policy
is learning effectively.
Furthermore, relying on validation loss to evaluate performance is generally not considered a good practice,
especially in the context of imitation learning. The most reliable approach is to evaluate the policy directly
on the target environment, whether that be in simulation or the real world.
"""
import math
from pathlib import Path
import torch
from huggingface_hub import snapshot_download
from lerobot.common.datasets.lerobot_dataset import LeRobotDataset
from lerobot.common.policies.diffusion.modeling_diffusion import DiffusionPolicy
device = torch.device("cuda")
# Download the diffusion policy for pusht environment
pretrained_policy_path = Path(snapshot_download("lerobot/diffusion_pusht"))
# OR uncomment the following to evaluate a policy from the local outputs/train folder.
# pretrained_policy_path = Path("outputs/train/example_pusht_diffusion")
policy = DiffusionPolicy.from_pretrained(pretrained_policy_path)
policy.eval()
policy.to(device)
# Set up the dataset.
delta_timestamps = {
# Load the previous image and state at -0.1 seconds before current frame,
# then load current image and state corresponding to 0.0 second.
"observation.image": [-0.1, 0.0],
"observation.state": [-0.1, 0.0],
# Load the previous action (-0.1), the next action to be executed (0.0),
# and 14 future actions with a 0.1 seconds spacing. All these actions will be
# used to calculate the loss.
"action": [-0.1, 0.0, 0.1, 0.2, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9, 1.0, 1.1, 1.2, 1.3, 1.4],
}
# Load the last 10% of episodes of the dataset as a validation set.
# - Load full dataset
full_dataset = LeRobotDataset("lerobot/pusht", split="train")
# - Calculate train and val subsets
num_train_episodes = math.floor(full_dataset.num_episodes * 90 / 100)
num_val_episodes = full_dataset.num_episodes - num_train_episodes
print(f"Number of episodes in full dataset: {full_dataset.num_episodes}")
print(f"Number of episodes in training dataset (90% subset): {num_train_episodes}")
print(f"Number of episodes in validation dataset (10% subset): {num_val_episodes}")
# - Get first frame index of the validation set
first_val_frame_index = full_dataset.episode_data_index["from"][num_train_episodes].item()
# - Load frames subset belonging to validation set using the `split` argument.
# It utilizes the `datasets` library's syntax for slicing datasets.
# For more information on the Slice API, please see:
# https://huggingface.co/docs/datasets/v2.19.0/loading#slice-splits
train_dataset = LeRobotDataset(
"lerobot/pusht", split=f"train[:{first_val_frame_index}]", delta_timestamps=delta_timestamps
)
val_dataset = LeRobotDataset(
"lerobot/pusht", split=f"train[{first_val_frame_index}:]", delta_timestamps=delta_timestamps
)
print(f"Number of frames in training dataset (90% subset): {len(train_dataset)}")
print(f"Number of frames in validation dataset (10% subset): {len(val_dataset)}")
# Create dataloader for evaluation.
val_dataloader = torch.utils.data.DataLoader(
val_dataset,
num_workers=4,
batch_size=64,
shuffle=False,
pin_memory=device != torch.device("cpu"),
drop_last=False,
)
# Run validation loop.
loss_cumsum = 0
n_examples_evaluated = 0
for batch in val_dataloader:
batch = {k: v.to(device, non_blocking=True) for k, v in batch.items()}
output_dict = policy.forward(batch)
loss_cumsum += output_dict["loss"].item()
n_examples_evaluated += batch["index"].shape[0]
# Calculate the average loss over the validation set.
average_loss = loss_cumsum / n_examples_evaluated
print(f"Average loss on validation set: {average_loss:.4f}")

View File

@ -61,13 +61,21 @@ available_datasets_per_env = {
"lerobot/aloha_sim_insertion_scripted", "lerobot/aloha_sim_insertion_scripted",
"lerobot/aloha_sim_transfer_cube_human", "lerobot/aloha_sim_transfer_cube_human",
"lerobot/aloha_sim_transfer_cube_scripted", "lerobot/aloha_sim_transfer_cube_scripted",
"lerobot/aloha_sim_insertion_human_image",
"lerobot/aloha_sim_insertion_scripted_image",
"lerobot/aloha_sim_transfer_cube_human_image",
"lerobot/aloha_sim_transfer_cube_scripted_image",
], ],
"pusht": ["lerobot/pusht"], "pusht": ["lerobot/pusht", "lerobot/pusht_image"],
"xarm": [ "xarm": [
"lerobot/xarm_lift_medium", "lerobot/xarm_lift_medium",
"lerobot/xarm_lift_medium_replay", "lerobot/xarm_lift_medium_replay",
"lerobot/xarm_push_medium", "lerobot/xarm_push_medium",
"lerobot/xarm_push_medium_replay", "lerobot/xarm_push_medium_replay",
"lerobot/xarm_lift_medium_image",
"lerobot/xarm_lift_medium_replay_image",
"lerobot/xarm_push_medium_image",
"lerobot/xarm_push_medium_replay_image",
], ],
} }

View File

@ -20,17 +20,19 @@ import datasets
import torch import torch
from lerobot.common.datasets.utils import ( from lerobot.common.datasets.utils import (
calculate_episode_data_index,
load_episode_data_index, load_episode_data_index,
load_hf_dataset, load_hf_dataset,
load_info, load_info,
load_previous_and_future_frames, load_previous_and_future_frames,
load_stats, load_stats,
load_videos, load_videos,
reset_episode_index,
) )
from lerobot.common.datasets.video_utils import VideoFrame, load_from_videos from lerobot.common.datasets.video_utils import VideoFrame, load_from_videos
DATA_DIR = Path(os.environ["DATA_DIR"]) if "DATA_DIR" in os.environ else None DATA_DIR = Path(os.environ["DATA_DIR"]) if "DATA_DIR" in os.environ else None
CODEBASE_VERSION = "v1.3" CODEBASE_VERSION = "v1.4"
class LeRobotDataset(torch.utils.data.Dataset): class LeRobotDataset(torch.utils.data.Dataset):
@ -73,7 +75,11 @@ class LeRobotDataset(torch.utils.data.Dataset):
# TODO(rcadene, aliberts): implement faster transfer # TODO(rcadene, aliberts): implement faster transfer
# https://huggingface.co/docs/huggingface_hub/en/guides/download#faster-downloads # https://huggingface.co/docs/huggingface_hub/en/guides/download#faster-downloads
self.hf_dataset = load_hf_dataset(repo_id, version, root, split) self.hf_dataset = load_hf_dataset(repo_id, version, root, split)
if split == "train":
self.episode_data_index = load_episode_data_index(repo_id, version, root) self.episode_data_index = load_episode_data_index(repo_id, version, root)
else:
self.episode_data_index = calculate_episode_data_index(self.hf_dataset)
self.hf_dataset = reset_episode_index(self.hf_dataset)
self.stats = load_stats(repo_id, version, root) self.stats = load_stats(repo_id, version, root)
self.info = load_info(repo_id, version, root) self.info = load_info(repo_id, version, root)
if self.video: if self.video:

View File

@ -24,17 +24,16 @@ import shutil
from pathlib import Path from pathlib import Path
import tqdm import tqdm
from huggingface_hub import snapshot_download
ALOHA_RAW_URLS_DIR = "lerobot/common/datasets/push_dataset_to_hub/_aloha_raw_urls"
def download_raw(raw_dir, dataset_id): def download_raw(raw_dir, dataset_id):
if "pusht" in dataset_id: if "aloha" in dataset_id or "image" in dataset_id:
download_hub(raw_dir, dataset_id)
elif "pusht" in dataset_id:
download_pusht(raw_dir) download_pusht(raw_dir)
elif "xarm" in dataset_id: elif "xarm" in dataset_id:
download_xarm(raw_dir) download_xarm(raw_dir)
elif "aloha" in dataset_id:
download_aloha(raw_dir, dataset_id)
elif "umi" in dataset_id: elif "umi" in dataset_id:
download_umi(raw_dir) download_umi(raw_dir)
else: else:
@ -103,37 +102,13 @@ def download_xarm(raw_dir: Path):
zip_path.unlink() zip_path.unlink()
def download_aloha(raw_dir: Path, dataset_id: str): def download_hub(raw_dir: Path, dataset_id: str):
import gdown
subset_id = dataset_id.replace("aloha_", "")
urls_path = Path(ALOHA_RAW_URLS_DIR) / f"{subset_id}.txt"
assert urls_path.exists(), f"{subset_id}.txt not found in '{ALOHA_RAW_URLS_DIR}' directory."
with open(urls_path) as f:
# strip lines and ignore empty lines
urls = [url.strip() for url in f if url.strip()]
# sanity check
for url in urls:
assert (
"drive.google.com/drive/folders" in url or "drive.google.com/file" in url
), f"Wrong url provided '{url}' in file '{urls_path}'."
raw_dir = Path(raw_dir) raw_dir = Path(raw_dir)
raw_dir.mkdir(parents=True, exist_ok=True) raw_dir.mkdir(parents=True, exist_ok=True)
logging.info(f"Start downloading from google drive for {dataset_id}") logging.info(f"Start downloading from huggingface.co/cadene for {dataset_id}")
for url in urls: snapshot_download(f"cadene/{dataset_id}_raw", repo_type="dataset", local_dir=raw_dir)
if "drive.google.com/drive/folders" in url: logging.info(f"Finish downloading from huggingface.co/cadene for {dataset_id}")
# when a folder url is given, download up to 50 files from the folder
gdown.download_folder(url, output=str(raw_dir), remaining_ok=True)
elif "drive.google.com/file" in url:
# because of the 50 files limit per folder, we download the remaining files (file by file)
gdown.download(url, output=str(raw_dir), fuzzy=True)
logging.info(f"End downloading from google drive for {dataset_id}")
def download_umi(raw_dir: Path): def download_umi(raw_dir: Path):
@ -148,21 +123,30 @@ def download_umi(raw_dir: Path):
if __name__ == "__main__": if __name__ == "__main__":
data_dir = Path("data") data_dir = Path("data")
dataset_ids = [ dataset_ids = [
"pusht_image",
"xarm_lift_medium_image",
"xarm_lift_medium_replay_image",
"xarm_push_medium_image",
"xarm_push_medium_replay_image",
"aloha_sim_insertion_human_image",
"aloha_sim_insertion_scripted_image",
"aloha_sim_transfer_cube_human_image",
"aloha_sim_transfer_cube_scripted_image",
"pusht", "pusht",
"xarm_lift_medium", "xarm_lift_medium",
"xarm_lift_medium_replay", "xarm_lift_medium_replay",
"xarm_push_medium", "xarm_push_medium",
"xarm_push_medium_replay", "xarm_push_medium_replay",
"aloha_sim_insertion_human",
"aloha_sim_insertion_scripted",
"aloha_sim_transfer_cube_human",
"aloha_sim_transfer_cube_scripted",
"aloha_mobile_cabinet", "aloha_mobile_cabinet",
"aloha_mobile_chair", "aloha_mobile_chair",
"aloha_mobile_elevator", "aloha_mobile_elevator",
"aloha_mobile_shrimp", "aloha_mobile_shrimp",
"aloha_mobile_wash_pan", "aloha_mobile_wash_pan",
"aloha_mobile_wipe_wine", "aloha_mobile_wipe_wine",
"aloha_sim_insertion_human",
"aloha_sim_insertion_scripted",
"aloha_sim_transfer_cube_human",
"aloha_sim_transfer_cube_scripted",
"aloha_static_battery", "aloha_static_battery",
"aloha_static_candy", "aloha_static_candy",
"aloha_static_coffee", "aloha_static_coffee",

View File

@ -17,7 +17,7 @@
Contains utilities to process raw data format of HDF5 files like in: https://github.com/tonyzhaozh/act Contains utilities to process raw data format of HDF5 files like in: https://github.com/tonyzhaozh/act
""" """
import re import gc
import shutil import shutil
from pathlib import Path from pathlib import Path
@ -79,10 +79,8 @@ def load_from_raw(raw_dir, out_dir, fps, video, debug):
episode_data_index = {"from": [], "to": []} episode_data_index = {"from": [], "to": []}
id_from = 0 id_from = 0
for ep_idx, ep_path in tqdm.tqdm(enumerate(hdf5_files), total=len(hdf5_files)):
for ep_path in tqdm.tqdm(hdf5_files, total=len(hdf5_files)):
with h5py.File(ep_path, "r") as ep: with h5py.File(ep_path, "r") as ep:
ep_idx = int(re.search(r"episode_(\d+)", ep_path.name).group(1))
num_frames = ep["/action"].shape[0] num_frames = ep["/action"].shape[0]
# last step of demonstration is considered done # last step of demonstration is considered done
@ -91,6 +89,10 @@ def load_from_raw(raw_dir, out_dir, fps, video, debug):
state = torch.from_numpy(ep["/observations/qpos"][:]) state = torch.from_numpy(ep["/observations/qpos"][:])
action = torch.from_numpy(ep["/action"][:]) action = torch.from_numpy(ep["/action"][:])
if "/observations/qvel" in ep:
velocity = torch.from_numpy(ep["/observations/qvel"][:])
if "/observations/effort" in ep:
effort = torch.from_numpy(ep["/observations/effort"][:])
ep_dict = {} ep_dict = {}
@ -131,6 +133,10 @@ def load_from_raw(raw_dir, out_dir, fps, video, debug):
ep_dict[img_key] = [PILImage.fromarray(x) for x in imgs_array] ep_dict[img_key] = [PILImage.fromarray(x) for x in imgs_array]
ep_dict["observation.state"] = state ep_dict["observation.state"] = state
if "/observations/velocity" in ep:
ep_dict["observation.velocity"] = velocity
if "/observations/effort" in ep:
ep_dict["observation.effort"] = effort
ep_dict["action"] = action ep_dict["action"] = action
ep_dict["episode_index"] = torch.tensor([ep_idx] * num_frames) ep_dict["episode_index"] = torch.tensor([ep_idx] * num_frames)
ep_dict["frame_index"] = torch.arange(0, num_frames, 1) ep_dict["frame_index"] = torch.arange(0, num_frames, 1)
@ -146,6 +152,8 @@ def load_from_raw(raw_dir, out_dir, fps, video, debug):
id_from += num_frames id_from += num_frames
gc.collect()
# process first episode only # process first episode only
if debug: if debug:
break break
@ -167,6 +175,14 @@ def to_hf_dataset(data_dict, video) -> Dataset:
features["observation.state"] = Sequence( features["observation.state"] = Sequence(
length=data_dict["observation.state"].shape[1], feature=Value(dtype="float32", id=None) length=data_dict["observation.state"].shape[1], feature=Value(dtype="float32", id=None)
) )
if "observation.velocity" in data_dict:
features["observation.velocity"] = Sequence(
length=data_dict["observation.velocity"].shape[1], feature=Value(dtype="float32", id=None)
)
if "observation.effort" in data_dict:
features["observation.effort"] = Sequence(
length=data_dict["observation.effort"].shape[1], feature=Value(dtype="float32", id=None)
)
features["action"] = Sequence( features["action"] = Sequence(
length=data_dict["action"].shape[1], feature=Value(dtype="float32", id=None) length=data_dict["action"].shape[1], feature=Value(dtype="float32", id=None)
) )

View File

@ -14,7 +14,9 @@
# See the License for the specific language governing permissions and # See the License for the specific language governing permissions and
# limitations under the License. # limitations under the License.
import json import json
import re
from pathlib import Path from pathlib import Path
from typing import Dict
import datasets import datasets
import torch import torch
@ -79,7 +81,23 @@ def hf_transform_to_torch(items_dict):
def load_hf_dataset(repo_id, version, root, split) -> datasets.Dataset: def load_hf_dataset(repo_id, version, root, split) -> datasets.Dataset:
"""hf_dataset contains all the observations, states, actions, rewards, etc.""" """hf_dataset contains all the observations, states, actions, rewards, etc."""
if root is not None: if root is not None:
hf_dataset = load_from_disk(str(Path(root) / repo_id / split)) hf_dataset = load_from_disk(str(Path(root) / repo_id / "train"))
# TODO(rcadene): clean this which enables getting a subset of dataset
if split != "train":
if "%" in split:
raise NotImplementedError(f"We dont support splitting based on percentage for now ({split}).")
match_from = re.search(r"train\[(\d+):\]", split)
match_to = re.search(r"train\[:(\d+)\]", split)
if match_from:
from_frame_index = int(match_from.group(1))
hf_dataset = hf_dataset.select(range(from_frame_index, len(hf_dataset)))
elif match_to:
to_frame_index = int(match_to.group(1))
hf_dataset = hf_dataset.select(range(to_frame_index))
else:
raise ValueError(
f'`split` ({split}) should either be "train", "train[INT:]", or "train[:INT]"'
)
else: else:
hf_dataset = load_dataset(repo_id, revision=version, split=split) hf_dataset = load_dataset(repo_id, revision=version, split=split)
hf_dataset.set_transform(hf_transform_to_torch) hf_dataset.set_transform(hf_transform_to_torch)
@ -245,6 +263,84 @@ def load_previous_and_future_frames(
return item return item
def calculate_episode_data_index(hf_dataset: datasets.Dataset) -> Dict[str, torch.Tensor]:
"""
Calculate episode data index for the provided HuggingFace Dataset. Relies on episode_index column of hf_dataset.
Parameters:
- hf_dataset (datasets.Dataset): A HuggingFace dataset containing the episode index.
Returns:
- episode_data_index: A dictionary containing the data index for each episode. The dictionary has two keys:
- "from": A tensor containing the starting index of each episode.
- "to": A tensor containing the ending index of each episode.
"""
episode_data_index = {"from": [], "to": []}
current_episode = None
"""
The episode_index is a list of integers, each representing the episode index of the corresponding example.
For instance, the following is a valid episode_index:
[0, 0, 0, 1, 1, 1, 1, 2, 2, 2, 2, 2]
Below, we iterate through the episode_index and populate the episode_data_index dictionary with the starting and
ending index of each episode. For the episode_index above, the episode_data_index dictionary will look like this:
{
"from": [0, 3, 7],
"to": [3, 7, 12]
}
"""
if len(hf_dataset) == 0:
episode_data_index = {
"from": torch.tensor([]),
"to": torch.tensor([]),
}
return episode_data_index
for idx, episode_idx in enumerate(hf_dataset["episode_index"]):
if episode_idx != current_episode:
# We encountered a new episode, so we append its starting location to the "from" list
episode_data_index["from"].append(idx)
# If this is not the first episode, we append the ending location of the previous episode to the "to" list
if current_episode is not None:
episode_data_index["to"].append(idx)
# Let's keep track of the current episode index
current_episode = episode_idx
else:
# We are still in the same episode, so there is nothing for us to do here
pass
# We have reached the end of the dataset, so we append the ending location of the last episode to the "to" list
episode_data_index["to"].append(idx + 1)
for k in ["from", "to"]:
episode_data_index[k] = torch.tensor(episode_data_index[k])
return episode_data_index
def reset_episode_index(hf_dataset: datasets.Dataset) -> datasets.Dataset:
"""
Reset the `episode_index` of the provided HuggingFace Dataset.
`episode_data_index` (and related functionality such as `load_previous_and_future_frames`) requires the
`episode_index` to be sorted, continuous (1,1,1 and not 1,2,1) and start at 0.
This brings the `episode_index` to the required format.
"""
if len(hf_dataset) == 0:
return hf_dataset
unique_episode_idxs = torch.stack(hf_dataset["episode_index"]).unique().tolist()
episode_idx_to_reset_idx_mapping = {
ep_id: reset_ep_id for reset_ep_id, ep_id in enumerate(unique_episode_idxs)
}
def modify_ep_idx_func(example):
example["episode_index"] = episode_idx_to_reset_idx_mapping[example["episode_index"].item()]
return example
hf_dataset = hf_dataset.map(modify_ep_idx_func)
return hf_dataset
def cycle(iterable): def cycle(iterable):
"""The equivalent of itertools.cycle, but safe for Pytorch dataloaders. """The equivalent of itertools.cycle, but safe for Pytorch dataloaders.

View File

@ -304,7 +304,11 @@ class DiffusionModel(nn.Module):
loss = F.mse_loss(pred, target, reduction="none") loss = F.mse_loss(pred, target, reduction="none")
# Mask loss wherever the action is padded with copies (edges of the dataset trajectory). # Mask loss wherever the action is padded with copies (edges of the dataset trajectory).
if self.config.do_mask_loss_for_padding and "action_is_pad" in batch: if self.config.do_mask_loss_for_padding:
if "action_is_pad" not in batch:
raise ValueError(
f"You need to provide 'action_is_pad' in the batch when {self.config.do_mask_loss_for_padding=}."
)
in_episode_bound = ~batch["action_is_pad"] in_episode_bound = ~batch["action_is_pad"]
loss = loss * in_episode_bound.unsqueeze(-1) loss = loss * in_episode_bound.unsqueeze(-1)

View File

@ -10,6 +10,9 @@ hydra:
name: default name: default
device: cuda # cpu device: cuda # cpu
# `use_amp` determines whether to use Automatic Mixed Precision (AMP) for training and evaluation. With AMP,
# automatic gradient scaling is used.
use_amp: false
# `seed` is used for training (eg: model initialization, dataset shuffling) # `seed` is used for training (eg: model initialization, dataset shuffling)
# AND for the evaluation environments. # AND for the evaluation environments.
seed: ??? seed: ???
@ -17,6 +20,7 @@ dataset_repo_id: lerobot/pusht
training: training:
offline_steps: ??? offline_steps: ???
# NOTE: `online_steps` is not implemented yet. It's here as a placeholder.
online_steps: ??? online_steps: ???
online_steps_between_rollouts: ??? online_steps_between_rollouts: ???
online_sampling_ratio: 0.5 online_sampling_ratio: 0.5

View File

@ -5,7 +5,8 @@ dataset_repo_id: lerobot/xarm_lift_medium
training: training:
offline_steps: 25000 offline_steps: 25000
online_steps: 25000 # TODO(alexander-soare): uncomment when online training gets reinstated
online_steps: 0 # 25000 not implemented yet
eval_freq: 5000 eval_freq: 5000
online_steps_between_rollouts: 1 online_steps_between_rollouts: 1
online_sampling_ratio: 0.5 online_sampling_ratio: 0.5

View File

@ -46,6 +46,7 @@ import json
import logging import logging
import threading import threading
import time import time
from contextlib import nullcontext
from copy import deepcopy from copy import deepcopy
from datetime import datetime as dt from datetime import datetime as dt
from pathlib import Path from pathlib import Path
@ -520,7 +521,7 @@ def eval(
raise NotImplementedError() raise NotImplementedError()
# Check device is available # Check device is available
get_safe_torch_device(hydra_cfg.device, log=True) device = get_safe_torch_device(hydra_cfg.device, log=True)
torch.backends.cudnn.benchmark = True torch.backends.cudnn.benchmark = True
torch.backends.cuda.matmul.allow_tf32 = True torch.backends.cuda.matmul.allow_tf32 = True
@ -539,6 +540,7 @@ def eval(
policy = make_policy(hydra_cfg=hydra_cfg, dataset_stats=make_dataset(hydra_cfg).stats) policy = make_policy(hydra_cfg=hydra_cfg, dataset_stats=make_dataset(hydra_cfg).stats)
policy.eval() policy.eval()
with torch.no_grad(), torch.autocast(device_type=device.type) if hydra_cfg.use_amp else nullcontext():
info = eval_policy( info = eval_policy(
env, env,
policy, policy,

View File

@ -25,7 +25,6 @@ python lerobot/scripts/push_dataset_to_hub.py \
--dataset-id pusht \ --dataset-id pusht \
--raw-format pusht_zarr \ --raw-format pusht_zarr \
--community-id lerobot \ --community-id lerobot \
--revision v1.2 \
--dry-run 1 \ --dry-run 1 \
--save-to-disk 1 \ --save-to-disk 1 \
--save-tests-to-disk 0 \ --save-tests-to-disk 0 \
@ -36,7 +35,6 @@ python lerobot/scripts/push_dataset_to_hub.py \
--dataset-id xarm_lift_medium \ --dataset-id xarm_lift_medium \
--raw-format xarm_pkl \ --raw-format xarm_pkl \
--community-id lerobot \ --community-id lerobot \
--revision v1.2 \
--dry-run 1 \ --dry-run 1 \
--save-to-disk 1 \ --save-to-disk 1 \
--save-tests-to-disk 0 \ --save-tests-to-disk 0 \
@ -47,7 +45,6 @@ python lerobot/scripts/push_dataset_to_hub.py \
--dataset-id aloha_sim_insertion_scripted \ --dataset-id aloha_sim_insertion_scripted \
--raw-format aloha_hdf5 \ --raw-format aloha_hdf5 \
--community-id lerobot \ --community-id lerobot \
--revision v1.2 \
--dry-run 1 \ --dry-run 1 \
--save-to-disk 1 \ --save-to-disk 1 \
--save-tests-to-disk 0 \ --save-tests-to-disk 0 \
@ -58,7 +55,6 @@ python lerobot/scripts/push_dataset_to_hub.py \
--dataset-id umi_cup_in_the_wild \ --dataset-id umi_cup_in_the_wild \
--raw-format umi_zarr \ --raw-format umi_zarr \
--community-id lerobot \ --community-id lerobot \
--revision v1.2 \
--dry-run 1 \ --dry-run 1 \
--save-to-disk 1 \ --save-to-disk 1 \
--save-tests-to-disk 0 \ --save-tests-to-disk 0 \
@ -227,8 +223,7 @@ def push_dataset_to_hub(
test_hf_dataset = test_hf_dataset.with_format(None) test_hf_dataset = test_hf_dataset.with_format(None)
test_hf_dataset.save_to_disk(str(tests_out_dir / "train")) test_hf_dataset.save_to_disk(str(tests_out_dir / "train"))
# copy meta data to tests directory save_meta_data(info, stats, episode_data_index, tests_meta_data_dir)
shutil.copytree(meta_data_dir, tests_meta_data_dir)
# copy videos of first episode to tests directory # copy videos of first episode to tests directory
episode_index = 0 episode_index = 0
@ -237,6 +232,10 @@ def push_dataset_to_hub(
fname = f"{key}_episode_{episode_index:06d}.mp4" fname = f"{key}_episode_{episode_index:06d}.mp4"
shutil.copy(videos_dir / fname, tests_videos_dir / fname) shutil.copy(videos_dir / fname, tests_videos_dir / fname)
if not save_to_disk and out_dir.exists():
# remove possible temporary files remaining in the output directory
shutil.rmtree(out_dir)
def main(): def main():
parser = argparse.ArgumentParser() parser = argparse.ArgumentParser()
@ -314,7 +313,7 @@ def main():
parser.add_argument( parser.add_argument(
"--num-workers", "--num-workers",
type=int, type=int,
default=16, default=8,
help="Number of processes of Dataloader for computing the dataset statistics.", help="Number of processes of Dataloader for computing the dataset statistics.",
) )
parser.add_argument( parser.add_argument(

View File

@ -15,15 +15,14 @@
# limitations under the License. # limitations under the License.
import logging import logging
import time import time
from contextlib import nullcontext
from copy import deepcopy from copy import deepcopy
from pathlib import Path from pathlib import Path
import datasets
import hydra import hydra
import torch import torch
from datasets import concatenate_datasets
from datasets.utils import disable_progress_bars, enable_progress_bars
from omegaconf import DictConfig from omegaconf import DictConfig
from torch.cuda.amp import GradScaler
from lerobot.common.datasets.factory import make_dataset from lerobot.common.datasets.factory import make_dataset
from lerobot.common.datasets.utils import cycle from lerobot.common.datasets.utils import cycle
@ -31,6 +30,7 @@ from lerobot.common.envs.factory import make_env
from lerobot.common.logger import Logger, log_output_dir from lerobot.common.logger import Logger, log_output_dir
from lerobot.common.policies.factory import make_policy from lerobot.common.policies.factory import make_policy
from lerobot.common.policies.policy_protocol import PolicyWithUpdate from lerobot.common.policies.policy_protocol import PolicyWithUpdate
from lerobot.common.policies.utils import get_device_from_parameters
from lerobot.common.utils.utils import ( from lerobot.common.utils.utils import (
format_big_number, format_big_number,
get_safe_torch_device, get_safe_torch_device,
@ -69,7 +69,6 @@ def make_optimizer_and_scheduler(cfg, policy):
cfg.training.adam_eps, cfg.training.adam_eps,
cfg.training.adam_weight_decay, cfg.training.adam_weight_decay,
) )
assert cfg.training.online_steps == 0, "Diffusion Policy does not handle online training."
from diffusers.optimization import get_scheduler from diffusers.optimization import get_scheduler
lr_scheduler = get_scheduler( lr_scheduler = get_scheduler(
@ -87,21 +86,40 @@ def make_optimizer_and_scheduler(cfg, policy):
return optimizer, lr_scheduler return optimizer, lr_scheduler
def update_policy(policy, batch, optimizer, grad_clip_norm, lr_scheduler=None): def update_policy(
policy,
batch,
optimizer,
grad_clip_norm,
grad_scaler: GradScaler,
lr_scheduler=None,
use_amp: bool = False,
):
"""Returns a dictionary of items for logging.""" """Returns a dictionary of items for logging."""
start_time = time.time() start_time = time.perf_counter()
device = get_device_from_parameters(policy)
policy.train() policy.train()
with torch.autocast(device_type=device.type) if use_amp else nullcontext():
output_dict = policy.forward(batch) output_dict = policy.forward(batch)
# TODO(rcadene): policy.unnormalize_outputs(out_dict) # TODO(rcadene): policy.unnormalize_outputs(out_dict)
loss = output_dict["loss"] loss = output_dict["loss"]
loss.backward() grad_scaler.scale(loss).backward()
# Unscale the graident of the optimzer's assigned params in-place **prior to gradient clipping**.
grad_scaler.unscale_(optimizer)
grad_norm = torch.nn.utils.clip_grad_norm_( grad_norm = torch.nn.utils.clip_grad_norm_(
policy.parameters(), policy.parameters(),
grad_clip_norm, grad_clip_norm,
error_if_nonfinite=False, error_if_nonfinite=False,
) )
optimizer.step() # Optimizer's gradients are already unscaled, so scaler.step does not unscale them,
# although it still skips optimizer.step() if the gradients contain infs or NaNs.
grad_scaler.step(optimizer)
# Updates the scale for next iteration.
grad_scaler.update()
optimizer.zero_grad() optimizer.zero_grad()
if lr_scheduler is not None: if lr_scheduler is not None:
@ -115,7 +133,7 @@ def update_policy(policy, batch, optimizer, grad_clip_norm, lr_scheduler=None):
"loss": loss.item(), "loss": loss.item(),
"grad_norm": float(grad_norm), "grad_norm": float(grad_norm),
"lr": optimizer.param_groups[0]["lr"], "lr": optimizer.param_groups[0]["lr"],
"update_s": time.time() - start_time, "update_s": time.perf_counter() - start_time,
**{k: v for k, v in output_dict.items() if k != "loss"}, **{k: v for k, v in output_dict.items() if k != "loss"},
} }
@ -211,103 +229,6 @@ def log_eval_info(logger, info, step, cfg, dataset, is_offline):
logger.log_dict(info, step, mode="eval") logger.log_dict(info, step, mode="eval")
def calculate_online_sample_weight(n_off: int, n_on: int, pc_on: float):
"""
Calculate the sampling weight to be assigned to samples so that a specified percentage of the batch comes from online dataset (on average).
Parameters:
- n_off (int): Number of offline samples, each with a sampling weight of 1.
- n_on (int): Number of online samples.
- pc_on (float): Desired percentage of online samples in decimal form (e.g., 50% as 0.5).
The total weight of offline samples is n_off * 1.0.
The total weight of offline samples is n_on * w.
The total combined weight of all samples is n_off + n_on * w.
The fraction of the weight that is online is n_on * w / (n_off + n_on * w).
We want this fraction to equal pc_on, so we set up the equation n_on * w / (n_off + n_on * w) = pc_on.
The solution is w = - (n_off * pc_on) / (n_on * (pc_on - 1))
"""
assert 0.0 <= pc_on <= 1.0
return -(n_off * pc_on) / (n_on * (pc_on - 1))
def add_episodes_inplace(
online_dataset: torch.utils.data.Dataset,
concat_dataset: torch.utils.data.ConcatDataset,
sampler: torch.utils.data.WeightedRandomSampler,
hf_dataset: datasets.Dataset,
episode_data_index: dict[str, torch.Tensor],
pc_online_samples: float,
):
"""
Modifies the online_dataset, concat_dataset, and sampler in place by integrating
new episodes from hf_dataset into the online_dataset, updating the concatenated
dataset's structure and adjusting the sampling strategy based on the specified
percentage of online samples.
Parameters:
- online_dataset (torch.utils.data.Dataset): The existing online dataset to be updated.
- concat_dataset (torch.utils.data.ConcatDataset): The concatenated dataset that combines
offline and online datasets, used for sampling purposes.
- sampler (torch.utils.data.WeightedRandomSampler): A sampler that will be updated to
reflect changes in the dataset sizes and specified sampling weights.
- hf_dataset (datasets.Dataset): A Hugging Face dataset containing the new episodes to be added.
- episode_data_index (dict): A dictionary containing two keys ("from" and "to") associated to dataset indices.
They indicate the start index and end index of each episode in the dataset.
- pc_online_samples (float): The target percentage of samples that should come from
the online dataset during sampling operations.
Raises:
- AssertionError: If the first episode_id or index in hf_dataset is not 0
"""
first_episode_idx = hf_dataset.select_columns("episode_index")[0]["episode_index"].item()
last_episode_idx = hf_dataset.select_columns("episode_index")[-1]["episode_index"].item()
first_index = hf_dataset.select_columns("index")[0]["index"].item()
last_index = hf_dataset.select_columns("index")[-1]["index"].item()
# sanity check
assert first_episode_idx == 0, f"{first_episode_idx=} is not 0"
assert first_index == 0, f"{first_index=} is not 0"
assert first_index == episode_data_index["from"][first_episode_idx].item()
assert last_index == episode_data_index["to"][last_episode_idx].item() - 1
if len(online_dataset) == 0:
# initialize online dataset
online_dataset.hf_dataset = hf_dataset
online_dataset.episode_data_index = episode_data_index
else:
# get the starting indices of the new episodes and frames to be added
start_episode_idx = last_episode_idx + 1
start_index = last_index + 1
def shift_indices(episode_index, index):
# note: we dont shift "frame_index" since it represents the index of the frame in the episode it belongs to
example = {"episode_index": episode_index + start_episode_idx, "index": index + start_index}
return example
disable_progress_bars() # map has a tqdm progress bar
hf_dataset = hf_dataset.map(shift_indices, input_columns=["episode_index", "index"])
enable_progress_bars()
episode_data_index["from"] += start_index
episode_data_index["to"] += start_index
# extend online dataset
online_dataset.hf_dataset = concatenate_datasets([online_dataset.hf_dataset, hf_dataset])
# update the concatenated dataset length used during sampling
concat_dataset.cumulative_sizes = concat_dataset.cumsum(concat_dataset.datasets)
# update the sampling weights for each frame so that online frames get sampled a certain percentage of times
len_online = len(online_dataset)
len_offline = len(concat_dataset) - len_online
weight_offline = 1.0
weight_online = calculate_online_sample_weight(len_offline, len_online, pc_online_samples)
sampler.weights = torch.tensor([weight_offline] * len_offline + [weight_online] * len(online_dataset))
# update the total number of samples used during sampling
sampler.num_samples = len(concat_dataset)
def train(cfg: DictConfig, out_dir: str | None = None, job_name: str | None = None): def train(cfg: DictConfig, out_dir: str | None = None, job_name: str | None = None):
if out_dir is None: if out_dir is None:
raise NotImplementedError() raise NotImplementedError()
@ -316,11 +237,11 @@ def train(cfg: DictConfig, out_dir: str | None = None, job_name: str | None = No
init_logging() init_logging()
if cfg.training.online_steps > 0 and cfg.eval.batch_size > 1: if cfg.training.online_steps > 0:
logging.warning("eval.batch_size > 1 not supported for online training steps") raise NotImplementedError("Online training is not implemented yet.")
# Check device is available # Check device is available
get_safe_torch_device(cfg.device, log=True) device = get_safe_torch_device(cfg.device, log=True)
torch.backends.cudnn.benchmark = True torch.backends.cudnn.benchmark = True
torch.backends.cuda.matmul.allow_tf32 = True torch.backends.cuda.matmul.allow_tf32 = True
@ -338,6 +259,7 @@ def train(cfg: DictConfig, out_dir: str | None = None, job_name: str | None = No
# Create optimizer and scheduler # Create optimizer and scheduler
# Temporary hack to move optimizer out of policy # Temporary hack to move optimizer out of policy
optimizer, lr_scheduler = make_optimizer_and_scheduler(cfg, policy) optimizer, lr_scheduler = make_optimizer_and_scheduler(cfg, policy)
grad_scaler = GradScaler(enabled=cfg.use_amp)
num_learnable_params = sum(p.numel() for p in policy.parameters() if p.requires_grad) num_learnable_params = sum(p.numel() for p in policy.parameters() if p.requires_grad)
num_total_params = sum(p.numel() for p in policy.parameters()) num_total_params = sum(p.numel() for p in policy.parameters())
@ -358,6 +280,7 @@ def train(cfg: DictConfig, out_dir: str | None = None, job_name: str | None = No
def evaluate_and_checkpoint_if_needed(step): def evaluate_and_checkpoint_if_needed(step):
if step % cfg.training.eval_freq == 0: if step % cfg.training.eval_freq == 0:
logging.info(f"Eval policy at step {step}") logging.info(f"Eval policy at step {step}")
with torch.no_grad(), torch.autocast(device_type=device.type) if cfg.use_amp else nullcontext():
eval_info = eval_policy( eval_info = eval_policy(
eval_env, eval_env,
policy, policy,
@ -389,23 +312,30 @@ def train(cfg: DictConfig, out_dir: str | None = None, job_name: str | None = No
num_workers=4, num_workers=4,
batch_size=cfg.training.batch_size, batch_size=cfg.training.batch_size,
shuffle=True, shuffle=True,
pin_memory=cfg.device != "cpu", pin_memory=device.type != "cpu",
drop_last=False, drop_last=False,
) )
dl_iter = cycle(dataloader) dl_iter = cycle(dataloader)
policy.train() policy.train()
step = 0 # number of policy update (forward + backward + optim)
is_offline = True is_offline = True
for offline_step in range(cfg.training.offline_steps): for step in range(cfg.training.offline_steps):
if offline_step == 0: if step == 0:
logging.info("Start offline training on a fixed dataset") logging.info("Start offline training on a fixed dataset")
batch = next(dl_iter) batch = next(dl_iter)
for key in batch: for key in batch:
batch[key] = batch[key].to(cfg.device, non_blocking=True) batch[key] = batch[key].to(device, non_blocking=True)
train_info = update_policy(policy, batch, optimizer, cfg.training.grad_clip_norm, lr_scheduler) train_info = update_policy(
policy,
batch,
optimizer,
cfg.training.grad_clip_norm,
grad_scaler=grad_scaler,
lr_scheduler=lr_scheduler,
use_amp=cfg.use_amp,
)
# TODO(rcadene): is it ok if step_t=0 = 0 and not 1 as previously done? # TODO(rcadene): is it ok if step_t=0 = 0 and not 1 as previously done?
if step % cfg.training.log_freq == 0: if step % cfg.training.log_freq == 0:
@ -415,11 +345,6 @@ def train(cfg: DictConfig, out_dir: str | None = None, job_name: str | None = No
# so we pass in step + 1. # so we pass in step + 1.
evaluate_and_checkpoint_if_needed(step + 1) evaluate_and_checkpoint_if_needed(step + 1)
step += 1
# create an env dedicated to online episodes collection from policy rollout
online_training_env = make_env(cfg, n_envs=1)
# create an empty online dataset similar to offline dataset # create an empty online dataset similar to offline dataset
online_dataset = deepcopy(offline_dataset) online_dataset = deepcopy(offline_dataset)
online_dataset.hf_dataset = {} online_dataset.hf_dataset = {}
@ -436,58 +361,11 @@ def train(cfg: DictConfig, out_dir: str | None = None, job_name: str | None = No
num_workers=4, num_workers=4,
batch_size=cfg.training.batch_size, batch_size=cfg.training.batch_size,
sampler=sampler, sampler=sampler,
pin_memory=cfg.device != "cpu", pin_memory=device.type != "cpu",
drop_last=False, drop_last=False,
) )
dl_iter = cycle(dataloader)
online_step = 0
is_offline = False
for env_step in range(cfg.training.online_steps):
if env_step == 0:
logging.info("Start online training by interacting with environment")
policy.eval()
with torch.no_grad():
eval_info = eval_policy(
online_training_env,
policy,
n_episodes=1,
return_episode_data=True,
start_seed=cfg.training.online_env_seed,
enable_progbar=True,
)
add_episodes_inplace(
online_dataset,
concat_dataset,
sampler,
hf_dataset=eval_info["episodes"]["hf_dataset"],
episode_data_index=eval_info["episodes"]["episode_data_index"],
pc_online_samples=cfg.training.online_sampling_ratio,
)
policy.train()
for _ in range(cfg.training.online_steps_between_rollouts):
batch = next(dl_iter)
for key in batch:
batch[key] = batch[key].to(cfg.device, non_blocking=True)
train_info = update_policy(policy, batch, optimizer, cfg.training.grad_clip_norm, lr_scheduler)
if step % cfg.training.log_freq == 0:
log_train_info(logger, train_info, step, cfg, online_dataset, is_offline)
# Note: evaluate_and_checkpoint_if_needed happens **after** the `step`th training update has completed,
# so we pass in step + 1.
evaluate_and_checkpoint_if_needed(step + 1)
step += 1
online_step += 1
eval_env.close() eval_env.close()
online_training_env.close()
logging.info("End of training") logging.info("End of training")

700
poetry.lock generated
View File

@ -404,28 +404,28 @@ files = [
[[package]] [[package]]
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[package.extras] [package.extras]
@ -956,13 +956,13 @@ tqdm = ["tqdm"]
[[package]] [[package]]
name = "gdown" name = "gdown"
version = "5.1.0" version = "5.2.0"
description = "Google Drive Public File/Folder Downloader" description = "Google Drive Public File/Folder Downloader"
optional = false optional = false
python-versions = ">=3.8" python-versions = ">=3.8"
files = [ files = [
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[package.dependencies] [package.dependencies]
@ -972,7 +972,7 @@ requests = {version = "*", extras = ["socks"]}
tqdm = "*" tqdm = "*"
[package.extras] [package.extras]
test = ["build", "mypy", "pytest", "pytest-xdist", "ruff", "twine", "types-requests"] test = ["build", "mypy", "pytest", "pytest-xdist", "ruff", "twine", "types-requests", "types-setuptools"]
[[package]] [[package]]
name = "gitdb" name = "gitdb"
@ -1050,13 +1050,13 @@ test = ["pytest (>=8.1.0)", "pytest-cov (>=5.0.0)"]
[[package]] [[package]]
name = "gym-pusht" name = "gym-pusht"
version = "0.1.3" version = "0.1.4"
description = "A gymnasium environment for PushT." description = "A gymnasium environment for PushT."
optional = true optional = true
python-versions = "<4.0,>=3.10" python-versions = "<4.0,>=3.10"
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[package.dependencies] [package.dependencies]
@ -1177,6 +1177,78 @@ files = [
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numpy = ">=1.17.3" numpy = ">=1.17.3"
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[[package]] [[package]]
name = "rerun-sdk" name = "rerun-sdk"
version = "0.15.1" version = "0.16.0"
description = "The Rerun Logging SDK" description = "The Rerun Logging SDK"
optional = false optional = false
python-versions = "<3.13,>=3.8" python-versions = "<3.13,>=3.8"
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attrs = ">=23.1.0" attrs = ">=23.1.0"
numpy = ">=1.23,<2" numpy = ">=1.23,<2"
pillow = "*" pillow = ">=8.0.0"
pyarrow = ">=14.0.2" pyarrow = ">=14.0.2"
typing-extensions = ">=4.5" typing-extensions = ">=4.5"
@ -3350,13 +3406,13 @@ test = ["array-api-strict", "asv", "gmpy2", "hypothesis (>=6.30)", "mpmath", "po
[[package]] [[package]]
name = "sentry-sdk" name = "sentry-sdk"
version = "2.1.1" version = "2.2.0"
description = "Python client for Sentry (https://sentry.io)" description = "Python client for Sentry (https://sentry.io)"
optional = false optional = false
python-versions = ">=3.6" python-versions = ">=3.6"
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[package.dependencies] [package.dependencies]
@ -3848,13 +3904,13 @@ zstd = ["zstandard (>=0.18.0)"]
[[package]] [[package]]
name = "virtualenv" name = "virtualenv"
version = "20.26.1" version = "20.26.2"
description = "Virtual Python Environment builder" description = "Virtual Python Environment builder"
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[[package]] [[package]]
name = "zarr" name = "zarr"
version = "2.18.0" version = "2.18.1"
description = "An implementation of chunked, compressed, N-dimensional arrays for Python" description = "An implementation of chunked, compressed, N-dimensional arrays for Python"
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python-versions = ">=3.9" python-versions = ">=3.9"
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[[package]] [[package]]
name = "zipp" name = "zipp"
version = "3.18.1" version = "3.18.2"
description = "Backport of pathlib-compatible object wrapper for zip files" description = "Backport of pathlib-compatible object wrapper for zip files"
optional = false optional = false
python-versions = ">=3.8" python-versions = ">=3.8"
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testing = ["big-O", "jaraco.functools", "jaraco.itertools", "more-itertools", "pytest (>=6)", "pytest-checkdocs (>=2.4)", "pytest-cov", "pytest-enabler (>=2.2)", "pytest-ignore-flaky", "pytest-mypy", "pytest-ruff (>=0.2.1)"] testing = ["big-O", "jaraco.functools", "jaraco.itertools", "jaraco.test", "more-itertools", "pytest (>=6,!=8.1.*)", "pytest-checkdocs (>=2.4)", "pytest-cov", "pytest-enabler (>=2.2)", "pytest-ignore-flaky", "pytest-mypy", "pytest-ruff (>=0.2.1)"]
[extras] [extras]
aloha = ["gym-aloha"] aloha = ["gym-aloha"]
@ -4175,4 +4231,4 @@ xarm = ["gym-xarm"]
[metadata] [metadata]
lock-version = "2.0" lock-version = "2.0"
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torch = "^2.2.1" torch = "^2.2.1"
opencv-python = ">=4.9.0" opencv-python = ">=4.9.0"
diffusers = "^0.27.2" diffusers = "^0.27.2"
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h5py = ">=3.10.0" h5py = ">=3.10.0"
huggingface-hub = ">=0.21.4" huggingface-hub = {extras = ["hf-transfer"], version = "^0.23.0"}
gymnasium = ">=0.29.1" gymnasium = ">=0.29.1"
cmake = ">=3.29.0.1" cmake = ">=3.29.0.1"
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