The official codebase for Masked Diffusion Transformer is a Strong Image Synthesizer.
MDTv2 achieves superior image synthesis performance, e.g., a new SOTA FID score of 1.58 on the ImageNet dataset, and has more than 10× faster learning speed than the previous SOTA DiT.
MDTv2 demonstrates a 5x acceleration compared to the original MDT.
Despite its success in image synthesis, we observe that diffusion probabilistic models (DPMs) often lack contextual reasoning ability to learn the relations among object parts in an image, leading to a slow learning process. To solve this issue, we propose a Masked Diffusion Transformer (MDT) that introduces a mask latent modeling scheme to explicitly enhance the DPMs’ ability to contextual relation learning among object semantic parts in an image.
During training, MDT operates in the latent space to mask certain tokens. Then, an asymmetric diffusion transformer is designed to predict masked tokens from unmasked ones while maintaining the diffusion generation process. Our MDT can reconstruct the full information of an image from its incomplete contextual input, thus enabling it to learn the associated relations among image tokens. We further improve MDT with a more efficient macro network structure and training strategy, named MDTv2.
Experimental results show that MDTv2 achieves superior image synthesis performance, e.g., a new SOTA FID score of 1.58 on the ImageNet dataset, and has more than 10× faster learning speed than the previous SOTA DiT.
Model | Dataset | Resolution | FID-50K | Inception Score |
---|---|---|---|---|
MDT-XL/2 | ImageNet | 256x256 | 1.79 | 283.01 |
MDTv2-XL/2 | ImageNet | 256x256 | 1.58 | 314.73 |
Model is hosted on hugglingface, you can also download it with:
from huggingface_hub import snapshot_download
models_path = snapshot_download("shgao/MDT-XL2")
ckpt_model_path = os.path.join(models_path, "mdt_xl2_v1_ckpt.pt")
A hugglingface demo is on DEMO.
NEW SOTA on FID.
Prepare the Pytorch >=2.0 version. Download and install this repo.
git clone https://github.com/sail-sg/MDT
cd MDT
pip install -e .
Install Adan optimizer, Adan is a strong optimizer with faster convergence speed than AdamW. (paper)
python -m pip install git+https://github.com/sail-sg/Adan.git
DATA
- For standard datasets like ImageNet and CIFAR, please refer to 'dataset' for preparation.
- When using customized dataset, change the image file name to
ClassID_ImgID.jpg
, as the ADM's dataloder gets the class ID from the file name.
Training on one node (`run.sh`).
export OPENAI_LOGDIR=output_mdtv2_s2
NUM_GPUS=8
MODEL_FLAGS="--image_size 256 --mask_ratio 0.30 --decode_layer 6 --model MDTv2_S_2"
DIFFUSION_FLAGS="--diffusion_steps 1000"
TRAIN_FLAGS="--batch_size 32"
DATA_PATH=/dataset/imagenet
python -m torch.distributed.launch --nproc_per_node=$NUM_GPUS scripts/image_train.py --data_dir $DATA_PATH $MODEL_FLAGS $DIFFUSION_FLAGS $TRAIN_FLAGS
Training on multiple nodes (`run_ddp_master.sh` and `run_ddp_worker.sh`).
# On master:
export OPENAI_LOGDIR=output_mdtv2_xl2
MODEL_FLAGS="--image_size 256 --mask_ratio 0.30 --decode_layer 4 --model MDTv2_XL_2"
DIFFUSION_FLAGS="--diffusion_steps 1000"
TRAIN_FLAGS="--batch_size 4"
DATA_PATH=/dataset/imagenet
NUM_NODE=8
GPU_PRE_NODE=8
python -m torch.distributed.launch --master_addr=$(hostname) --nnodes=$NUM_NODE --node_rank=$RANK --nproc_per_node=$GPU_PRE_NODE --master_port=$MASTER_PORT scripts/image_train.py --data_dir $DATA_PATH $MODEL_FLAGS $DIFFUSION_FLAGS $TRAIN_FLAGS
# On workers:
export OPENAI_LOGDIR=output_mdtv2_xl2
MODEL_FLAGS="--image_size 256 --mask_ratio 0.30 --decode_layer 4 --model MDTv2_XL_2"
DIFFUSION_FLAGS="--diffusion_steps 1000"
TRAIN_FLAGS="--batch_size 4"
DATA_PATH=/dataset/imagenet
NUM_NODE=8
GPU_PRE_NODE=8
python -m torch.distributed.launch --master_addr=$MASTER_ADDR --nnodes=$NUM_NODE --node_rank=$RANK --nproc_per_node=$GPU_PRE_NODE --master_port=$MASTER_PORT scripts/image_train.py --data_dir $DATA_PATH $MODEL_FLAGS $DIFFUSION_FLAGS $TRAIN_FLAGS
The evaluation code is obtained from ADM's TensorFlow evaluation suite.
Please follow the instructions in the evaluations
folder to set up the evaluation environment.
Sampling and Evaluation (`run_sample.sh`):
MODEL_PATH=output_mdtv2_xl2/mdt_xl2_v2_ckpt.pt
export OPENAI_LOGDIR=output_mdtv2_xl2_eval
NUM_GPUS=8
echo 'CFG Class-conditional sampling:'
MODEL_FLAGS="--image_size 256 --model MDTv2_XL_2 --decode_layer 4"
DIFFUSION_FLAGS="--num_sampling_steps 250 --num_samples 50000 --cfg_cond True"
echo $MODEL_FLAGS
echo $DIFFUSION_FLAGS
echo $MODEL_PATH
python -m torch.distributed.launch --nproc_per_node=$NUM_GPUS scripts/image_sample.py --model_path $MODEL_PATH $MODEL_FLAGS $DIFFUSION_FLAGS
echo $MODEL_FLAGS
echo $DIFFUSION_FLAGS
echo $MODEL_PATH
python evaluations/evaluator.py ../dataeval/VIRTUAL_imagenet256_labeled.npz $OPENAI_LOGDIR/samples_50000x256x256x3.npz
echo 'Class-conditional sampling:'
MODEL_FLAGS="--image_size 256 --model MDTv2_XL_2 --decode_layer 4"
DIFFUSION_FLAGS="--num_sampling_steps 250 --num_samples 50000"
echo $MODEL_FLAGS
echo $DIFFUSION_FLAGS
echo $MODEL_PATH
python -m torch.distributed.launch --nproc_per_node=$NUM_GPUS scripts/image_sample.py --model_path $MODEL_PATH $MODEL_FLAGS $DIFFUSION_FLAGS
echo $MODEL_FLAGS
echo $DIFFUSION_FLAGS
echo $MODEL_PATH
python evaluations/evaluator.py ../dataeval/VIRTUAL_imagenet256_labeled.npz $OPENAI_LOGDIR/samples_50000x256x256x3.npz
Run the infer_mdt.py
to generate images.
@misc{gao2023masked,
title={Masked Diffusion Transformer is a Strong Image Synthesizer},
author={Shanghua Gao and Pan Zhou and Ming-Ming Cheng and Shuicheng Yan},
year={2023},
eprint={2303.14389},
archivePrefix={arXiv},
primaryClass={cs.CV}
}