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OpenCLIP

[Paper] [Clip Colab] [Coca Colab] pypi

Welcome to an open source implementation of OpenAI's CLIP (Contrastive Language-Image Pre-training).

The goal of this repository is to enable training models with contrastive image-text supervision, and to investigate their properties such as robustness to distribution shift. Our starting point is an implementation of CLIP that matches the accuracy of the original CLIP models when trained on the same dataset. Specifically, a ResNet-50 model trained with our codebase on OpenAI's 15 million image subset of YFCC achieves 32.7% top-1 accuracy on ImageNet. OpenAI's CLIP model reaches 31.3% when trained on the same subset of YFCC. For ease of experimentation, we also provide code for training on the 3 million images in the Conceptual Captions dataset, where a ResNet-50x4 trained with our codebase reaches 22.2% top-1 ImageNet accuracy.

We further this with a replication study on a dataset of comparable size to OpenAI's, LAION-400M, and with larger datasets such as LAION-2B and DataComp-1B datasets. In addition, we study scaling behavior in a paper on reproducible scaling laws for contrastive language-image learning.

We have trained the following ViT CLIP models:

  • ViT-B/32 on LAION-400M with a accuracy of 62.9%, comparable to OpenAI's 63.2%, zero-shot top-1 on ImageNet-1k
  • ViT-B/32 on LAION-2B with a accuracy of 66.6%.
  • ViT-B/16 on LAION-400M achieving an accuracy of 67.1%, lower than OpenAI's 68.3% (as measured here, 68.6% in paper)
  • ViT-B/16+ 240x240 (~50% more FLOPS than B/16 224x224) on LAION-400M achieving an accuracy of 69.2%
  • ViT-B/16 on LAION-2B with a accuracy of 70.2%.
  • ViT-L/14 on LAION-400M with an accuracy of 72.77%, vs OpenAI's 75.5% (as measured here, 75.3% in paper)
  • ViT-L/14 on LAION-2B with an accuracy of 75.3%, vs OpenAI's 75.5% (as measured here, 75.3% in paper)
  • ViT-L/14 on DataComp-1B with an accuracy of 79.2%. Our best ViT-L/14 so far, trained with a 13B samples seen schedule.
  • CoCa ViT-L/14 on LAION-2B with an accuracy of 75.5% (currently only 13B samples seen) vs. CLIP ViT-L/14 73.1% (on the same dataset and samples seen)
  • ViT-H/14 on LAION-2B with an accuracy of 78.0%.
  • ViT-g/14 on LAION-2B with an accuracy of 76.6%. This was trained on reduced 12B samples seen schedule, same samples seen as 400M models.
  • ViT-g/14 on LAION-2B with an accuracy of 78.5%. Full 34B samples seen schedule.
  • ViT-G/14 on LAION-2B with an accuracy of 80.1%. The best in1k zero-shot for released, open-source weights thus far.

And the following ConvNeXt CLIP models:

  • ConvNext-Base @ 224x224 on LAION-400M with an ImageNet-1k zero-shot top-1 of 66.3%
  • ConvNext-Base (W) @ 256x256 on LAION-2B with an ImageNet-1k zero-shot top-1 of 70.8%
  • ConvNext-Base (W) @ 256x256 /w augreg (extra augmentation + regularization) on LAION-2B with a top-1 of 71.5%
  • ConvNext-Base (W) @ 256x256 on LAION-A (900M sample aesthetic subset of 2B) with a top-1 of 71.0%
  • ConvNext-Base (W) @ 320x320 on LAION-A with a top-1 of 71.7% (eval at 384x384 is 71.0)
  • ConvNext-Base (W) @ 320x320 /w augreg on LAION-A with a top-1 of 71.3% (eval at 384x384 is 72.2%)
  • ConvNext-Large (D) @ 256x256 /w augreg on LAION-2B with a top-1 of 75.9%
  • ConvNext-Large (D) @ 320x320 fine-tune of 256x256 weights above for ~2.5B more samples on LAION-2B, top-1 of 76.6%
  • ConvNext-Large (D) @ 320x320 soup of 3 fine-tunes of 256x256 weights above on LAION-2B, top-1 of 76.9%
  • ConvNext-XXLarge @ 256x256 original run 79.1%
  • ConvNext-XXLarge @ 256x256 rewind of last 10% 79.3%
  • ConvNext-XXLarge @ 256x256 soup of original + rewind 79.4%

Model cards w/ additional model specific details can be found on the Hugging Face Hub under the OpenCLIP library tag: https://huggingface.co/models?library=open_clip

As we describe in more detail below, CLIP models in a medium accuracy regime already allow us to draw conclusions about the robustness of larger CLIP models since the models follow reliable scaling laws.

This codebase is work in progress, and we invite all to contribute in making it more accessible and useful. In the future, we plan to add support for TPU training and release larger models. We hope this codebase facilitates and promotes further research in contrastive image-text learning. Please submit an issue or send an email if you have any other requests or suggestions.

Note that portions of src/open_clip/ modelling and tokenizer code are adaptations of OpenAI's official repository.

Approach

CLIP
Image Credit: https://github.com/openai/CLIP

Usage

pip install open_clip_torch
import torch
from PIL import Image
import open_clip

model, _, preprocess = open_clip.create_model_and_transforms('ViT-B-32', pretrained='laion2b_s34b_b79k')
tokenizer = open_clip.get_tokenizer('ViT-B-32')

image = preprocess(Image.open("CLIP.png")).unsqueeze(0)
text = tokenizer(["a diagram", "a dog", "a cat"])

with torch.no_grad(), torch.cuda.amp.autocast():
    image_features = model.encode_image(image)
    text_features = model.encode_text(text)
    image_features /= image_features.norm(dim=-1, keepdim=True)
    text_features /= text_features.norm(dim=-1, keepdim=True)

    text_probs = (100.0 * image_features @ text_features.T).softmax(dim=-1)

print("Label probs:", text_probs)  # prints: [[1., 0., 0.]]

See also this [Clip Colab]

To compute billions of embeddings efficiently, you can use clip-retrieval which has openclip support.

Fine-tuning on classification tasks

This repository is focused on training CLIP models. To fine-tune a trained zero-shot model on a downstream classification task such as ImageNet, please see our other repository: WiSE-FT. The WiSE-FT repository contains code for our paper on Robust Fine-tuning of Zero-shot Models, in which we introduce a technique for fine-tuning zero-shot models while preserving robustness under distribution shift.

Data

To download datasets as webdataset, we recommend img2dataset

Conceptual Captions

See cc3m img2dataset example

YFCC and other datasets

In addition to specifying the training data via CSV files as mentioned above, our codebase also supports webdataset, which is recommended for larger scale datasets. The expected format is a series of .tar files. Each of these .tar files should contain two files for each training example, one for the image and one for the corresponding text. Both files should have the same name but different extensions. For instance, shard_001.tar could contain files such as abc.jpg and abc.txt. You can learn more about webdataset at https://github.com/webdataset/webdataset. We use .tar files with 1,000 data points each, which we create using tarp.

You can download the YFCC dataset from Multimedia Commons. Similar to OpenAI, we used a subset of YFCC to reach the aforementioned accuracy numbers. The indices of images in this subset are in OpenAI's CLIP repository.

Training CLIP

Install

We advise you first create a virtual environment with:

python3 -m venv .env
source .env/bin/activate
pip install -U pip

You can then install openclip for training with pip install 'open_clip_torch[training]'.

Development

If you want to make changes to contribute code, you can clone openclip then run make install in openclip folder (after creating a virtualenv)

Install pip PyTorch as per https://pytorch.org/get-started/locally/

You may run make install-training to install training deps

Testing

Test can be run with make install-test then make test

python -m pytest -x -s -v tests -k "training" to run a specific test

Running regression tests against a specific git revision or tag:

  1. Generate testing data

    python tests/util_test.py --model RN50 RN101 --save_model_list models.txt --git_revision 9d31b2ec4df6d8228f370ff20c8267ec6ba39383

    WARNING: This will invoke git and modify your working tree, but will reset it to the current state after data has been generated!
    Don't modify your working tree while test data is being generated this way.

  2. Run regression tests

    OPEN_CLIP_TEST_REG_MODELS=models.txt python -m pytest -x -s -v -m regression_test

Sample single-process running code:

python -m training.main \
    --save-frequency 1 \
    --zeroshot-frequency 1 \
    --report-to tensorboard \
    --train-data="/path/to/train_data.csv"  \
    --val-data="/path/to/validation_data.csv"  \
    --csv-img-key filepath \
    --csv-caption-key title \
    --imagenet-val=/path/to/imagenet/root/val/ \
    --warmup 10000 \
    --batch-size=128 \
    --lr=1e-3 \
    --wd=0.1 \
    --epochs=30 \
    --workers=8 \
    --model RN50

Note: imagenet-val is the path to the validation set of ImageNet for zero-shot evaluation, not the training set! You can remove this argument if you do not want to perform zero-shot evaluation on ImageNet throughout training. Note that the val folder should contain subfolders. If it does not, please use this script.

Multi-GPU and Beyond

This code has been battle tested up to 1024 A100s and offers a variety of solutions for distributed training. We include native support for SLURM clusters.

As the number of devices used to train increases, so does the space complexity of the the logit matrix. Using a naïve all-gather scheme, space complexity will be O(n^2). Instead, complexity may become effectively linear if the flags --gather-with-grad and --local-loss are used. This alteration results in one-to-one numerical results as the naïve method.

Epochs

For larger datasets (eg Laion2B), we recommend setting --train-num-samples to a lower value than the full epoch, for example --train-num-samples 135646078 to 1/16 of an epoch in conjunction with --dataset-resampled to do sampling with replacement. This allows having frequent checkpoints to evaluate more often.

Patch Dropout

Recent research has shown that one can dropout half to three-quarters of the visual tokens, leading to up to 2-3x training speeds without loss of accuracy.

You can set this on your visual transformer config with the key patch_dropout.

In the paper, they also finetuned without the patch dropout at the end. You can do this with the command-line argument --force-patch-dropout 0.

Multiple data sources

OpenCLIP supports using multiple data sources, by separating different data paths with ::. For instance, to train on CC12M and on LAION, one might use --train-data "/data/cc12m/cc12m-train-{0000..2175}.tar::/data/LAION-400M/{00000..41455}.tar". Using --dataset-resampled is recommended for these cases.

By default, on expectation the amount of times the model will see a sample from each source is proportional to the size of the source. For instance, when training on one data source with size 400M and one with size 10M, samples from the first source are 40x more likely to be seen in expectation.

We also support different weighting of the data sources, by using the --train-data-upsampling-factors flag. For instance, using --train-data-upsampling-factors=1::1 in the above scenario is equivalent to not using the flag, and --train-data-upsampling-factors=1::2 is equivalent to upsampling the second data source twice. If you want to sample from data sources with the same frequency, the upsampling factors should be inversely proportional to the sizes of the data sources. For instance, if dataset A has 1000 samples and dataset B has 100 samples, you can use --train-data-upsampling-factors=0.001::0.01 (or analogously, --train-data-upsampling-factors=1::10).

Single-Node

We make use of torchrun to launch distributed jobs. The following launches a a job on a node of 4 GPUs:

cd open_clip/src
torchrun --nproc_per_node 4 -m training.main \
    --train-data '/data/cc12m/cc12m-train-{0000..2175}.tar' \
    --train-num-samples 10968539 \
    --dataset-type webdataset \
    --batch-size 320 \
    --precision amp \
    --workers 4 \
    --imagenet-val /data/imagenet/validation/

Multi-Node

The same script above works, so long as users include information about the number of nodes and host node.

cd open_clip/src
torchrun --nproc_per_node=4 \
    --rdzv_endpoint=$HOSTE_NODE_ADDR \
    -m training.main \
    --train-data '/data/cc12m/cc12m-train-{0000..2175}.tar' \
    --train-num-samples 10968539 \
    --dataset-type webdataset \
    --batch-size 320 \
    --precision amp \
    --workers 4 \
    --imagenet-val /data/imagenet/validation/

SLURM

This is likely the easiest solution to utilize. The following script was used to train our largest models:

#!/bin/bash -x
#SBATCH --nodes=32
#SBATCH --gres=gpu:4
#SBATCH --ntasks-per-node=4
#SBATCH --cpus-per-task=6
#SBATCH --wait-all-nodes=1
#SBATCH --job-name=open_clip
#SBATCH --account=ACCOUNT_NAME
#SBATCH --partition PARTITION_NAME

eval "$(/path/to/conda/bin/conda shell.bash hook)" # init conda
conda activate open_clip
export CUDA_VISIBLE_DEVICES=0,1,2,3
export MASTER_PORT=12802

master_addr=$(scontrol show hostnames "$SLURM_JOB_NODELIST" | head -n 1)
export MASTER_ADDR=$master_addr

cd /shared/open_clip
export PYTHONPATH="$PYTHONPATH:$PWD/src"
srun --cpu_bind=v --accel-bind=gn python -u src/training/main.py \
    --save-frequency 1 \
    --report-to tensorboard \
    --train-data="/data/LAION-400M/{00000..41455}.tar" \
    --warmup 2000 \
    --batch-size=256 \
    --epochs=32 \
    --workers=8 \
    --model ViT-B-32 \
    --name "ViT-B-32-Vanilla" \
    --seed 0 \
    --local-loss \
    --gather-with-grad

Resuming from a checkpoint:

python -m training.main \
    --train-data="/path/to/train_data.csv" \
    --val-data="/path/to/validation_data.csv"  \
    --resume /path/to/checkpoints/epoch_K.pt

Training CoCa:

Training CoCa models is enabled through specifying a CoCa config using the --model parameter of the training script. Currently available configs are "coca_base", "coca_ViT-B-32", and "coca_roberta-ViT-B-32" (which uses RoBERTa as the text encoder). CoCa configs are different from CLIP configs because they have an additional "multimodal_cfg" component which specifies parameters for the multimodal text decoder. Here's an example from the coca_ViT-B-32 config:

"multimodal_cfg": {
	"context_length": 76,
	"vocab_size": 49408,
	"width": 512,
	"heads": 8,
	"layers": 12,
	"latent_dim": 512,
	"attn_pooler_heads": 8
}

Credit to lucidrains for initial code, gpucce for adapting the code to open_clip, and iejMac for training the models.

Generating text with CoCa

import open_clip
import torch
from PIL import Image

model, _, transform = open_clip.create_model_and_transforms(
  model_name="coca_ViT-L-14",
  pretrained="mscoco_finetuned_laion2B-s13B-b90k"
)

im = Image.open("cat.jpg").convert("RGB")
im = transform(im).unsqueeze(0)

with torch.no_grad(), torch.cuda.amp.autocast():
  generated = model.generate(im)

print(open_clip.decode(generated[0]).split("<end_of_text>")[0].replace("<start_of_text>", ""))

See also this [Coca Colab]

Fine Tuning CoCa

To fine-tune coca on mscoco, first create the dataset, one way is using a csvdataset and perhaps the simplest way to do it is using CLIP_benchmark which in turn uses pycocotools (that can be used also by itself).

from clip_benchmark.datasets.builder import build_dataset
import pandas as pd
import os

root_path = "path/to/data/dir" # set this to smth meaningful
ds = build_dataset("mscoco_captions", root=root_path, split="train") # this downloads the dataset if it is not there already
coco = ds.coco
imgs = coco.loadImgs(coco.getImgIds())
future_df = {"filepath":[], "title":[]}
for img in imgs:
    caps = coco.imgToAnns[img["id"]]
    for cap in caps:
        future_df["filepath"].append(img["file_name"])
        future_df["title"].append(cap["caption"])
pd.DataFrame.from_dict(future_df).to_csv(
  os.path.join(root_path, "train2014.csv"), index=False, sep="\t"
)

This should create a csv dataset that one can use to fine-tune coca with open_clip

python -m training.main \
    --dataset-type "csv" \
    --train-data "path/to/data/dir/train2014.csv" \
    --warmup 1000 \
    --batch-size 128 \
    --lr 1e-5 \
    --wd 0.1 \
    --epochs 1 \
    --workers 3 \
    --model "coca_ViT-L-14" \
    --report-to "wandb" \
    --coca-contrastive-loss-weight 0 \
    --coca-caption-loss-weight 1 \
    --log-every-n-steps 100

This is a general setting, open_clip has very parameters that can be set, python -m training.main --help should show them. The only relevant change compared to pre-training are the two arguments

--coca-contrastive-loss-weight 0
--coca-caption-loss-weight 1

which make the model only train the generative side.

Training with pre-trained language models as text encoder:

If you wish to use different language models as the text encoder for CLIP you can do so by using one of the Hugging Face model configs in src/open_clip/model_configs and passing in it's tokenizer as the --model and --hf-tokenizer-name parameters respectively. Currently we only support RoBERTa ("test-roberta" config), however adding new models should be trivial. You can also determine how many layers, from the end, to leave unfrozen with the --lock-text-unlocked-layers parameter. Here's an example command to train CLIP with the RoBERTa LM that has it's last 10 layers unfrozen:

python -m training.main \
         --train-data="pipe:aws s3 cp s3://s-mas/cc3m/{00000..00329}.tar -" \
         --train-num-samples 3000000 \
         --val-data="pipe:aws s3 cp s3://s-mas/cc3m/{00330..00331}.tar -" \
         --val-num-samples 10000 \
         --dataset-type webdataset \
         --batch-size 256 \
         --warmup 2000 \
         --epochs 10 \
         --lr 5e-4 \
         --precision amp \
         --workers 6 \
         --model "roberta-ViT-B-32" \
         --lock-text \
         --lock-text-unlocked-layers 10 \
         --name "10_unfrozen" \
         --report-to "tensorboard" \

Loss Curves

When run on a machine with 8 GPUs the command should produce the following training curve for Conceptual Captions:

CLIP zero shot training curve

More detailed curves for Conceptual Captions are given at /docs/clip_conceptual_captions.md.

When training a RN50 on YFCC the same hyperparameters as above are used, with the exception of lr=5e-4 and epochs=32.

Note that to use another model, like ViT-B/32 or RN50x4 or RN50x16 or ViT-B/16, specify with --model RN50x4.

Launch tensorboard:

tensorboard --logdir=logs/tensorboard/ --port=7777

Evaluation / Zero-Shot

We recommend https://github.com/LAION-AI/CLIP_benchmark#how-to-use for systematic evaluation on 40 datasets.

Evaluating local checkpoint:

python -m training.main \
    --val-data="/path/to/validation_data.csv"  \
    --model RN101 \
    --pretrained /path/to/checkpoints/epoch_K.pt

Evaluating hosted pretrained checkpoint on ImageNet zero-shot prediction:

python -m training.main \
    --imagenet-val /path/to/imagenet/validation \
    --model ViT-B-32-quickgelu \
    --pretrained laion400m_e32

Pretrained model details

We are working on reproducing OpenAI's ViT results with the comparably sized (and open) LAION-400M dataset. Trained weights may be found in release v0.2.

The LAION400M weights have been trained on the JUWELS supercomputer (see acknowledgements section below).

ViT-B/32 224x224

We replicate OpenAI's results on ViT-B/32, reaching a top-1 ImageNet-1k zero-shot accuracy of 62.96%.

Zero-shot comparison (courtesy of Andreas Fürst)

ViT-B/32 was trained with 128 A100 (40 GB) GPUs for ~36 hours, 4600 GPU-hours. The per-GPU batch size was 256 for a global batch size of 32768. 256 is much lower than it could have been (~320-384) due to being sized initially before moving to 'local' contrastive loss.

ViT-B/16 224x224

The B/16 LAION400M training reached a top-1 ImageNet-1k zero-shot validation score of 67.07.

This was the first major train session using the updated webdataset 0.2.x code. A bug was found that prevented shards from being shuffled properly between nodes/workers each epoch. This was fixed part way through training (epoch 26) but likely had an impact.

ViT-B/16 was trained with 176 A100 (40 GB) GPUS for ~61 hours, 10700 GPU-hours. Batch size per GPU was 192 for a global batch size of 33792.

ViT-B/16+ 240x240

The B/16+ 240x240 LAION400M training reached a top-1 ImageNet-1k zero-shot validation score of 69.21.

This model is the same depth as the B/16, but increases the

  • vision width from 768 -> 896
  • text width from 512 -> 640
  • the resolution 224x224 -> 240x240 (196 -> 225 tokens)

Unlike the B/16 run above, this model was a clean run with no dataset shuffling issues.

ViT-B/16+ was trained with 224 A100 (40 GB) GPUS for ~61 hours, 13620 GPU-hours. Batch size per GPU was 160 for a global batch size of 35840.

ViT-L/14 224x224

The L/14 LAION-400M training reached a top-1 ImageNet-1k zero-shot validation score of 72.77.

ViT-L/14 was trained with 400 A100 (40 GB) GPUS for ~127 hours, 50800 GPU-hours. Batch size per GPU was 96 for a global batch size of 38400. Grad checkpointing was enabled.

A ~2B sample subset of LAION-5B with english captions (https://huggingface.co/datasets/laion/laion2B-en)

ViT-B/32 224x224

A ViT-B/32 trained on LAION-2B, reaching a top-1 ImageNet-1k zero-shot accuracy of 65.62%.

ViT-B/32 was trained with 112 A100 (40 GB) GPUs. The per-GPU batch size was 416 for a global batch size of 46592. Compute generously provided by stability.ai.

A second iteration of B/32 was trained on stability.ai cluster with a larger global batch size and learning rate, hitting 66.6% top-1. See https://huggingface.co/laion/CLIP-ViT-B-32-laion2B-s34B-b79K

ViT-L/14 224x224

A ViT-L/14 with a 75.3% top-1 ImageNet-1k zero-shot was trained on JUWELS Booster. See model details here https://huggingface.co/laion/CLIP-ViT-L-14-laion2B-s32B-b82K

These weights use a different dataset mean and std than others. Instead of using the OpenAI mean & std, inception style normalization [-1, 1] is used via a mean and std of [0.5, 0.5, 0.5]. This is handled automatically if using open_clip.create_model_and_transforms from pretrained weights.

ViT-H/14 224x224

A ViT-H/14 with a 78.0% top-1 ImageNet-1k zero-shot was trained on JUWELS Booster. See model details here https://huggingface.co/laion/CLIP-ViT-H-14-laion2B-s32B-b79K

ViT-g/14 224x224

A ViT-g/14 with a 76.6% top-1 ImageNet-1k zero-shot was trained on JUWELS Booster. See model details here https://huggingface.co/laion/CLIP-ViT-g-14-laion2B-s12B-b42K

This model was trained with a shorted schedule than other LAION-2B models with 12B samples seen instead of 32+B. It matches LAION-400M training in samples seen. Many zero-shot results are lower as a result, but despite this it performs very well in some OOD zero-shot and retrieval tasks.

ViT-B/32 roberta base

A ViT-B/32 with roberta base encoder with a 61.7% top-1 ImageNet-1k zero-shot was trained on stability. See model details here https://huggingface.co/laion/CLIP-ViT-B-32-roberta-base-laion2B-s12B-b32k This is the first openclip model using a HF text tower. It has better performance on a range of tasks compared to the standard text encoder, see metrics

ViT-B/32 xlm roberta base

A ViT-B/32 with xlm roberta base encoder with a 62.33% top-1 ImageNet-1k zero-shot was trained on stability. See model details here https://huggingface.co/laion/CLIP-ViT-B-32-xlm-roberta-base-laion5B-s13B-b90k This is the first openclip model trained on the full laion5B dataset; hence the first multilingual clip trained with openclip. It has better performance on a range of tasks compared to the standard text encoder, see metrics A preliminary multilingual evaluation was run: 43% on imagenet1k italian (vs 21% for english B/32), 37% for imagenet1k japanese (vs 1% for english B/32 and 50% for B/16 clip japanese). It shows the multilingual property is indeed there as expected. Larger models will get even better performance.

ViT-H/14 xlm roberta large

A ViT-H/14 with xlm roberta large encoder with a 77.0% (vs 78% for the english equivalent) top-1 ImageNet-1k zero-shot was trained on stability. See model details here https://huggingface.co/laion/CLIP-ViT-H-14-frozen-xlm-roberta-large-laion5B-s13B-b90k

This model was trained following the LiT methodology: the image tower was frozen (initialized from english openclip ViT-H/14), the text tower was initialized from xlm roberta large and unfrozen. This reduced training cost by a 3x factor.

See full english metrics

On zero shot classification on imagenet with translated prompts this model reaches:

CommonPool and DataComp models

As part of DataComp, we trained models on CommonPool using various data filtering strategies.

The best performing models are specified below for the xlarge scale, see our paper DataComp: In seearch of the next generation of multimodal datasets for more details.

Additional models and more information can be found at /docs/datacomp_models.md.

YFCC-15M

Below are checkpoints of models trained on YFCC-15M, along with their zero-shot top-1 accuracies on ImageNet and ImageNetV2. These models were trained using 8 GPUs and the same hyperparameters described in the "Sample running code" section, with the exception of lr=5e-4 and epochs=32.

Pretrained Model Interface

We offer a simple model interface to instantiate both pre-trained and untrained models.

NOTE: Many existing checkpoints use the QuickGELU activation from the original OpenAI models. This activation is actually less efficient than native torch.nn.GELU in recent versions of PyTorch. The model defaults are now nn.GELU, so one should use model definitions with -quickgelu postfix for the OpenCLIP pretrained weights. All OpenAI pretrained weights will always default to QuickGELU. One can also use the non -quickgelu model definitions with pretrained weights using QuickGELU but there will be an accuracy drop, for fine-tune that will likely vanish for longer runs.

Future trained models will use nn.GELU.

>>> import open_clip
>>> open_clip.list_pretrained()
[('RN50', 'openai'), 
('RN50', 'yfcc15m'), 
('RN50', 'cc12m'), 
('RN50-quickgelu', 'openai'), 
('RN50-quickgelu', 'yfcc15m'), 
('RN50-quickgelu', 'cc12m'), 
('RN101', 'openai'), 
('RN101', 'yfcc15m'), 
('RN101-quickgelu', 'openai'), 
('RN101-quickgelu', 'yfcc15m'), 
('RN50x4', 'openai'), 
('RN50x16', 'openai'), 
('RN50x64', 'openai'), 
('ViT-B-32', 'openai'), 
('ViT-B-32', 'laion400m_e31'), 
('ViT-B-32', 'laion400m_e32'), 
('ViT-B-32', 'laion2b_e16'), 
('ViT-B-32', 'laion2b_s34b_b79k'), 
('ViT-B-32', 'datacomp_m_s128m_b4k'), 
('ViT-B-32', 'commonpool_m_clip_s128m_b4k'), 
('ViT-B-32', 'commonpool_m_laion_s128m_b4k'), 
('ViT-B-32', 'commonpool_m_image_s128m_b4k'), 
('ViT-B-32', 'commonpool_m_text_s128m_b4k'), 
('ViT-B-32', 'commonpool_m_basic_s128m_b4k'), 
('ViT-B-32', 'commonpool_m_s128m_b4k'), 
('ViT-B-32', 'datacomp_s_s13m_b4k'), 
('ViT-B-32', 'commonpool_s_clip_s13m_b4k'), 
('ViT-B-32', 'commonpool_s_laion_s13m_b4k'), 
('ViT-B-32', 'commonpool_s_image_s13m_b4k'), 
('ViT-B-32', 'commonpool_s_text_s13m_b4k'), 
('ViT-B-32', 'commonpool_s_basic_s13m_b4k'), 
('ViT-B-32', 'commonpool_s_s13m_b4k'), 
('ViT-B-32-quickgelu', 'openai'), 
('ViT-B-32-quickgelu', 'laion400m_e31'), 
('ViT-B-32-quickgelu', 'laion400m_e32'), 
('ViT-B-16', 'openai'), 
('ViT-B-16', 'laion400m_e31'), 
('ViT-B-16', 'laion400m_e32'), 
('ViT-B-16', 'laion2b_s34b_b88k'), 
('ViT-B-16', 'datacomp_l_s1b_b8k'), 
('ViT-B-16', 'commonpool_l_clip_s1b_b8k'), 
('ViT-B-16', 'commonpool_l_laion_s1b_b8k'), 
('ViT-B-16', 'commonpool_l_image_s1b_b8k'), 
('ViT-B-16', 'commonpool_l_text_s1b_b8k'), 
('ViT-B-16', 'commonpool_l_basic_s1b_b8k'), 
('ViT-B-16', 'commonpool_l_s1b_b8k'), 
('ViT-B-16-plus-240', 'laion400m_e31'), 
('ViT-B-16-plus-240', 'laion400m_e32'), 
('ViT-L-14', 'openai'), 
('ViT-L-14', 'laion400m_e31'), 
('ViT-L-14', 'laion400m_e32'), 
('ViT-L-14', 'laion2b_s32b_b82k'), 
('ViT-L-14', 'datacomp_xl_s13b_b90k'), 
('ViT-L-14', 'commonpool_xl_clip_s13b_b90k'), 
('ViT-L-14', 'commonpool_xl_laion_s13b_b90k'), 
('ViT-L-14', 'commonpool_xl_s13b_b90k'), 
('ViT-L-14-336', 'openai'), 
('ViT-H-14', 'laion2b_s32b_b79k'), 
('ViT-g-14', 'laion2b_s12b_b42k'), 
('ViT-g-14', 'laion2b_s34b_b88k'), 
('ViT-bigG-14', 'laion2b_s39b_b160k'), 
('roberta-ViT-B-32', 'laion2b_s12b_b32k'), 
('xlm-roberta-base-ViT-B-32', 'laion5b_s13b_b90k'), 
('xlm-roberta-large-ViT-H-14', 'frozen_laion5b_s13b_b90k'), 
('convnext_base', 'laion400m_s13b_b51k'), 
('convnext_base_w', 'laion2b_s13b_b82k'), 
('convnext_base_w', 'laion2b_s13b_b82k_augreg'), 
('convnext_base_w', 'laion_aesthetic_s13b_b82k'), 
('convnext_base_w_320', 'laion_aesthetic_s13b_b82k'), 
('convnext_base_w_320', 'laion_aesthetic_s13b_b82k_augreg'), 
('convnext_large_d', 'laion2b_s26b_b102k_augreg'), 
('convnext_large_d_320', 'laion2b_s29b_b131k_ft'), 
('convnext_large_d_320', 'laion2b_s29b_b131k_ft_soup'), 
('convnext_xxlarge', 'laion2b_s34b_b82k_augreg'), 
('convnext_xxlarge', 'laion2b_s34b_b82k_augreg_rewind'), 
('convnext_xxlarge', 'laion2b_s34b_b82k_augreg_soup'), 
('coca_ViT-B-32', 'laion2b_s13b_b90k'), 
('coca_ViT-B-32', 'mscoco_finetuned_laion2b_s13b_b90k'), 
('coca_ViT-L-14', 'laion2b_s13b_b90k'), 
('coca_ViT-L-14', 'mscoco_finetuned_laion2b_s13b_b90k'), 
('EVA01-g-14', 'laion400m_s11b_b41k'), 
('EVA01-g-14-plus', 'merged2b_s11b_b114k'), 
('EVA02-B-16', 'merged2b_s8b_b131k'), 
('EVA02-L-14', 'merged2b_s4b_b131k'), 
('EVA02-L-14-336', 'merged2b_s6b_b61k'), 
('EVA02-E-14', 'laion2b_s4b_b115k'), 
('EVA02-E-14-plus', 'laion2b_s9b_b144k')
]

>>> model, train_transform, eval_transform = open_clip.create_model_and_transforms('ViT-B-32', pretrained='laion2b_s34b_b79k')

Model distillation

You can distill from a pre-trained by using --distill-model and --distill-pretrained to specify the model you'd like to distill from. For instance, to distill from OpenAI ViT-L/14 use --distill-model ViT-L-14 --distill-pretrained openai.

Gradient accumulation

To simulate larger batches use --accum-freq k. If per gpu batch size, --batch-size, is m, then the effective batch size will be k * m * num_gpus.

When increasing --accum-freq from its default of 1, samples/s will remain approximately constant (batch size will double, as will time-per-batch). It is recommended to use other features to reduce batch size such as --grad-checkpointing --local-loss --gather-with-grad before increasing --accum-freq. --accum-freq can be used in addition to these features.

Instead of 1 forward pass per example, there are now 2 forward passes per-example. However, the first is done with torch.no_grad.

There is some additional GPU memory required --- the features and data from all m batches are stored in memory.

There are also m loss computations instead of the usual 1.

For more information see Cui et al. (https://arxiv.org/abs/2112.09331) or Pham et al. (https://arxiv.org/abs/2111.10050).

Int8 Support

We have beta support for int8 training and inference. You can enable int8 training with --use-bnb-linear SwitchBackLinearGlobal or --use-bnb-linear SwitchBackLinearGlobalMemEfficient. Please see the bitsandbytes library for definitions for these layers. For CLIP VIT-Huge this should currently correspond to a 10% training speedup with no accuracy loss. More speedups comin when the attention layer is refactored so that linear layers man be replaced there, too.

See the tutorial https://github.com/mlfoundations/open_clip/blob/main/tutorials/int8_tutorial.ipynb or paper.

Support for remote loading/training

It is always possible to resume directly from a remote file, e.g., a file in an s3 bucket. Just set --resume s3://<path-to-checkpoint> . This will work with any filesystem supported by fsspec.

It is also possible to train open_clip models while continuously backing up to s3. This can help to avoid slow local file systems.

Say that your node has a local ssd /scratch, an s3 bucket s3://<path-to-bucket>.

In that case, set --logs /scratch and --remote-sync s3://<path-to-bucket>. Then, a background process will sync /scratch/<run-name> to s3://<path-to-bucket>/<run-name>. After syncing, the background process will sleep for --remote-sync-frequency seconds, which defaults to 5 minutes.

There is also experimental support for syncing to other remote file systems, not just s3. To do so, specify --remote-sync-protocol fsspec. However, this is currently very slow and not recommended.

Also, to optionally avoid saving too many checkpoints locally when using these features, you can use --delete-previous-checkpoint which deletes the previous checkpoint after saving a new one.

Note: if you are using this feature with --resume latest, there are a few warnings. First, use with --save-most-recent is not supported. Second, only s3 is supported. Finally, since the sync happens in the background, it is possible that the most recent checkpoint may not be finished syncing to the remote.

Pushing Models to Hugging Face Hub

The module open_clip.push_to_hf_hub includes helpers for pushing models /w weights and config to the HF Hub.

The tool can be run from command line, ex: python -m open_clip.push_to_hf_hub --model convnext_large_d_320 --pretrained /train/checkpoints/epoch_12.pt --repo-id laion/CLIP-convnext_large_d_320.laion2B-s29B-b131K-ft

Scaling trends

The plot below shows how zero-shot performance of CLIP models varies as we scale the number of samples used for training. Zero-shot performance increases steadily for both ImageNet and ImageNetV2, and is far from saturated at ~15M samples.

Why are low-accuracy CLIP models interesting?

TL;DR: CLIP models have high effective robustness, even at small scales.

CLIP models are particularly intriguing because they are more robust to natural distribution shifts (see Section 3.3 in the CLIP paper). This phenomena is illustrated by the figure below, with ImageNet accuracy on the x-axis and ImageNetV2 (a reproduction of the ImageNet validation set with distribution shift) accuracy on the y-axis. Standard training denotes training on the ImageNet train set and the CLIP zero-shot models are shown as stars.

CLIP scatter plot

As observed by Taori et al., 2020 and Miller et al., 2021, the in-distribution and out-of-distribution accuracies of models trained on ImageNet follow a predictable linear trend (the red line in the above plot). Effective robustness quantifies robustness as accuracy beyond this baseline, i.e., how far a model lies above the red line. Ideally a model would not suffer from distribution shift and fall on the y = x line (trained human labelers are within a percentage point of the y = x line).

Even though the CLIP models trained with this codebase achieve much lower accuracy than those trained by OpenAI, our models still lie on the same trend of improved effective robustness (the purple line). Therefore, we can study what makes CLIP robust without requiring industrial-scale compute.

For more information on effective robustness, please see:

To know more about the factors that contribute to CLIP's robustness refer to Fang et al., 2022.

Acknowledgments

We gratefully acknowledge the Gauss Centre for Supercomputing e.V. (www.gauss-centre.eu) for funding this part of work by providing computing time through the John von Neumann Institute for Computing (NIC) on the GCS Supercomputer JUWELS Booster at Jülich Supercomputing Centre (JSC).

The Team

Current development of this repository is led by Ross Wightman, Cade Gordon, and Vaishaal Shankar.

The original version of this repository is from a group of researchers at UW, Google, Stanford, Amazon, Columbia, and Berkeley.

Gabriel Ilharco*, Mitchell Wortsman*, Nicholas Carlini, Rohan Taori, Achal Dave, Vaishaal Shankar, John Miller, Hongseok Namkoong, Hannaneh Hajishirzi, Ali Farhadi, Ludwig Schmidt

Special thanks to Jong Wook Kim and Alec Radford for help with reproducing CLIP!

Citing

If you found this repository useful, please consider citing:

@software{ilharco_gabriel_2021_5143773,
  author       = {Ilharco, Gabriel and
                  Wortsman, Mitchell and
                  Wightman, Ross and
                  Gordon, Cade and
                  Carlini, Nicholas and
                  Taori, Rohan and
                  Dave, Achal and
                  Shankar, Vaishaal and
                  Namkoong, Hongseok and
                  Miller, John and
                  Hajishirzi, Hannaneh and
                  Farhadi, Ali and
                  Schmidt, Ludwig},
  title        = {OpenCLIP},
  month        = jul,
  year         = 2021,
  note         = {If you use this software, please cite it as below.},
  publisher    = {Zenodo},
  version      = {0.1},
  doi          = {10.5281/zenodo.5143773},
  url          = {https://doi.org/10.5281/zenodo.5143773}
}
@inproceedings{cherti2023reproducible,
  title={Reproducible scaling laws for contrastive language-image learning},
  author={Cherti, Mehdi and Beaumont, Romain and Wightman, Ross and Wortsman, Mitchell and Ilharco, Gabriel and Gordon, Cade and Schuhmann, Christoph and Schmidt, Ludwig and Jitsev, Jenia},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
  pages={2818--2829},
  year={2023}
}
@inproceedings{Radford2021LearningTV,
  title={Learning Transferable Visual Models From Natural Language Supervision},
  author={Alec Radford and Jong Wook Kim and Chris Hallacy and A. Ramesh and Gabriel Goh and Sandhini Agarwal and Girish Sastry and Amanda Askell and Pamela Mishkin and Jack Clark and Gretchen Krueger and Ilya Sutskever},
  booktitle={ICML},
  year={2021}
}
@inproceedings{schuhmann2022laionb,
  title={{LAION}-5B: An open large-scale dataset for training next generation image-text models},
  author={Christoph Schuhmann and
          Romain Beaumont and
          Richard Vencu and
          Cade W Gordon and
          Ross Wightman and
          Mehdi Cherti and
          Theo Coombes and
          Aarush Katta and
          Clayton Mullis and
          Mitchell Wortsman and
          Patrick Schramowski and
          Srivatsa R Kundurthy and
          Katherine Crowson and
          Ludwig Schmidt and
          Robert Kaczmarczyk and
          Jenia Jitsev},
  booktitle={Thirty-sixth Conference on Neural Information Processing Systems Datasets and Benchmarks Track},
  year={2022},
  url={https://openreview.net/forum?id=M3Y74vmsMcY}
}

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CLIP trained in SDXL VAE's latent space.

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