International Conference on Machine Learning (ICML), 2023
Jason Yecheng Ma1, Vikash Kumar2, Amy Zhang2, Osbert Bastani1, Dinesh Jayaraman1
1University of Pennsylvania, 2Meta AI
This is the official repository for LIV, an algorithm for pre-training, fine-tuning, and reward learning for language-conditioned robotic control. This repository contains examples for using the pre-trained LIV model as well as training LIV from scratch using any custom video dataset.
LIV Fine-Tuned Reward Curve Visualization
Create a conda environment where the packages will be installed.
conda create --name liv-env python=3.9
conda activate liv-env
Then, in the root directory of this repository, run:
pip install -e .;
cd liv/models/clip; pip install -e .;
Quick start:
from liv import load_liv
liv = load_liv()
liv.eval()
The following code snippet demonstrates an example for loading the model as well as performing inference on an example image and text (python liv/examples/liv_static.py
):
import clip
import torch
import torchvision.transforms as T
from PIL import Image
from liv import load_liv
device = "cuda" if torch.cuda.is_available() else "cpu"
# loading LIV
liv = load_liv()
liv.eval()
transform = T.Compose([T.ToTensor()])
# pre-process image and text
image = transform(Image.open("sample_video/frame_0000033601.jpg")).unsqueeze(0).to(device)
text = clip.tokenize(["open microwave", "close microwave", "wipe floor"]).to(device)
# compute LIV image and text embedding
with torch.no_grad():
img_embedding = liv(input=image, modality="vision")
text_embedding = liv(input=text, modality="text")
# compute LIV value
img_text_value = liv.module.sim(img_embedding, text_embedding)
# Output: [ 0.1151, -0.0151, -0.0997]
We have also included an example for generating multi-modal reward curves on text-annotated videos. You can try it here:
cd liv/examples
python liv_example.py
This should generate the following animated reward curves in liv/examples
:
Our codebase supports training LIV on both the EpicKitchen dataset that was used in pre-training our released LIV model as well as any custom video dataset. The video dataset directory should use the following structure:
my_dataset_path/
video0/
0.png
1.png
...
video1/
video2/
...
manifest.csv
The manifest.csv
file should contain rows of directory, text, num_frames
, which indicates the absolute path, text annotation, and length of each video, respectively.
Then, you can use LIV to fine-tune a pre-trained vision-language model (e.g., LIV, CLIP) on your dataset by (1) adding a <my_dataset_name>.yaml
file that specifies the dataset name and path in /cfgs/dataset
:
python train_liv.py training=finetune dataset=my_dataset_name
We have provided an example of LIV fine-tuning using the realrobot dataset we used in the paper.
For EpicKitchen or equivalent large-scale pre-training, we suggest using config pretrain.yaml
(the config for the released LIV model):
python train_liv.py training=pretrain dataset=epickitchen
Each training run will generate a training run folder under train_liv_realrobot
and the reward curves for intermediate model snapshots will be saved in \reward_curves
of the run folder.
We can use the same training code to also only generate the (animated) reward curves by setting eval=True
python train_liv.py eval=true dataset=epickitchen animate=True
We can also specify a model path (e.g., snapshot.pt
saved in a run folder) and generate reward curves on the dataset the model is LIV fine-tuned with:
python train_liv.py eval=True load_snap=PATH_TO_LIV_MODEL dataset=realrobot animate=True
In the run folder, you should see animated reward curves like the following:
The source code in this repository is licensed under the MIT License.
If you find this repository or paper useful for your research, please cite
@article{ma2023liv,
title={LIV: Language-Image Representations and Rewards for Robotic Control},
author={Ma, Yecheng Jason and Liang, William and Som, Vaidehi and Kumar, Vikash and Zhang, Amy and Bastani, Osbert and Jayaraman, Dinesh},
journal={arXiv preprint arXiv:2306.00958},
year={2023}
}