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--- |
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license: other |
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license_name: custom-apple-license |
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license_link: https://github.com/apple/ml-tic-clip/blob/main/LICENSE |
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tags: |
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- vision |
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- zero-shot-image-classification |
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datasets: |
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- apple/TiC-DataComp |
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library_name: tic-clip |
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--- |
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# Model Card for TiC-CLIP-basic-sequential |
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<!-- Provide a quick summary of what the model is/does. --> |
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This repository contains TiC-CLIP models trained on TiC-DataComp-Yearly (xlarge, basic filtering) with data from 2014 to 2022 using our modified OpenCLIP code. |
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For additional information refer to our [GitHub repo](https://github.com/apple/ml-tic-clip). |
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## Model Details |
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### Model Description |
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Keeping large foundation models up to date on latest data is inherently expensive. |
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To avoid the prohibitive costs of constantly retraining, it is imperative to continually train these models. |
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This problem is exacerbated by the lack of any large scale continual learning benchmarks or baselines. |
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We introduce the first set of web-scale Time-Continual (TiC) benchmarks for training vision-language models: |
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TiC-DataComp, TiC-YFCC, and TiC-Redcaps. TiC-DataComp, our largest dataset, |
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contains over 12.7B timestamped image-text pairs spanning 9 years (2014-2022). |
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We first use our benchmarks to curate various dynamic evaluations to measure temporal robustness of existing models. |
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We show OpenAI's CLIP (trained on data up to 2020) loses ≈8% zero-shot accuracy on our curated retrieval task from 2021-2022 compared with more recently trained models in OpenCLIP repository. |
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We then study how to efficiently train models on time-continuous data. |
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We demonstrate that a simple rehearsal-based approach that continues training from the last checkpoint and replays old data reduces compute by 2.5× when compared to the standard practice of retraining from scratch. |
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Code is available at [this https URL](https://github.com/apple/ml-tic-clip). |
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- **Developed by:** Apple |
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- **License:** See [LICENSE](https://github.com/apple/ml-tic-clip/blob/main/LICENSE) |
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### Model Sources [optional] |
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<!-- Provide the basic links for the model. --> |
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- **Repository:** [ml-tic-clip GitHub repo](https://github.com/apple/ml-tic-clip) |
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- **Paper:** [TiC-CLIP: Continual Training of CLIP Models, Garg, S., Farajtabar, M., Pouransari, H., Vemulapalli, R., Mehta, S., Tuzel, O., Shankar, V. and Faghri, F., International Conference on Learning Representations (ICLR), 2024.](https://arxiv.org/abs/2310.16226) |
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## Uses |
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Researchers can use TiC-CLIP pretrained models for faster design of continual learning methods by start from a pretrained checkpoint and continually train on the next year or next month data. |
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## How to Get Started with the Model |
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The models are compatible with DataComp evaluation suite and our patched version of DataComp for evaluation on TiC-DataComp-Retrieval and TiC-DataCompNet. |
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The models can also be used to resume a training or as initialization for new training using OpenCLIP code. |
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Please follow instructions in our [GitHub repo](https://github.com/apple/ml-tic-clip) to create the evaluation sets or follow [DataComp](https://github.com/mlfoundations/datacomp) for the standard evaluations on 38 datasets. |
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The following snippet assumes the TiC-DataComp data has been prepared and following the instructions in the GitHub repo. |
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```bash |
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YEAR=2016 # There are no models before 2016 since data from 2014-2016 were compined into one year |
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REPO="apple/TiC-CLIP-basic-sequential" |
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huggingface-cli download $REPO checkpoints/$YEAR.pt |
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## Train Cummulative |
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pushd datacomp |
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final_data_dir=$TIC_DATACOMP_Y_PATH/train/$YEAR/ |
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torchrun --nproc_per_node 8 --nnodes 1 \ |
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train.py \ |
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--scale "tic_medium" \ |
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--dataset_resampled \ |
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--data_dir $final_data_dir \ |
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--output_dir "./results/" \ |
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--exp_name "datacomp_medium-basic_cumulative" \ |
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--imagenet_val $IMAGENET_VAL_PATH \ |
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--save_frequency 1 \ |
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--resume |
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popd |
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## Evaluate Model |
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# Evaluate a ViT-B/16 model on TiC/Retrieval/Yearly/$YEAR and |
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# TiC/DataCompNet/Yearly/$YEAR |
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pushd datacomp |
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python ../dataset_creation/tic-datacomp/generate_tasklist.py --yaml-path tasklist.yml --sample-eval --eval-tasks retrieval/yearly,datacompnet/yearly |
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python evaluate.py --data_dir data/ --train_output_dir ./results --use_model "ViT-B-16 $YEAR.pt" --skip_hf --skip_db --skip_notification |
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``` |
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## Training Details |
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### Training Data |
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<!-- This should link to a Dataset Card, perhaps with a short stub of information on what the training data is all about as well as documentation related to data pre-processing or additional filtering. --> |
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Please refer to [TiC-DataComp](https://huggingface.co/datasets/apple/TiC-DataComp). |
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### Training Procedure |
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Please refer to Sections 2-3 of our [TiC-CLIP](https://github.com/apple/ml-tic-clip) paper. |
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## Citation |
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**[TiC-CLIP: Continual Training of CLIP Models](https://arxiv.org/abs/2310.16226). (ICLR 2024)** |
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*Garg, S., Farajtabar, M., Pouransari, H., Vemulapalli, R., Mehta, S., Tuzel, O., Shankar, V. and Faghri, F..* |
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```bibtex |
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@inproceedings{garg2024tic, |
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title={TiC-CLIP: Continual Training of CLIP Models}, |
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author={Garg, Saurabh and Farajtabar, Mehrdad and Pouransari, Hadi and Vemulapalli, Raviteja and Mehta, Sachin and Tuzel, Oncel and Shankar, Vaishaal and Faghri, Fartash}, |
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booktitle={The Twelfth International Conference on Learning Representations (ICLR)}, |
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year={2024}, |
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url={https://openreview.net/forum?id=TLADT8Wrhn} |
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} |
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