CachedEmbedding : larger embedding tables, smaller GPU memory budget.

The embedding tables in deep learning recommendation system models are becoming extremly large and cannot be fit in GPU memory. This project provides an efficient way to train the extremely large recommendation system models. The entire training runs on GPU in a synchronized parameter updating manner.

This project applies the CachedEmbedding, which extends the vanilla PyTorch EmbeddingBag with the help from ColossalAI. The CachedEmbedding use a software cache approach to dynamically manage the extremely large embedding table in the CPU and GPU memory space. For example, this repo can train DLRM model including a 91.10 GB embedding table on Criteo 1TB dataset allocating just 3.75 GB CUDA memory on a single GPU!

In order to reduce the overhead time of the Cache, we designed a "far-sighted" Cache mechanism. Instead of only performing cache operations on the first mini-batch, wefetches several mini-batches that will be used later, and performs Cache query operations together. It also uses a pipeline method to overlap the overhead of data loading and model training, which is shown in the following figures.

Despite the extra cache indexing and CPU-GPU overhead, the end-to-end performance of our system drops very little compared to the torchrec. However, torchrec usually requires an order of magnitude more CUDA memory requirements. Also, our software cache is implemented using pytorch without any customized C++/CUDA kernels, and developers can customize or optimize it according to their needs.

Dataset

  1. Criteo Kaggle
  2. Avazu
  3. Criteo 1TB

Basically, the preprocessing processes are derived from Torchrec's utilities and Avazu kaggle community Please refer to scripts/preprocess dir to see the details.

Usage

  1. Installation Dependencies

Install ColossalAI (commit id e8d8eda5e7a0619bd779e35065397679e1536dcd)

https://github.com/hpcaitech/ColossalAI

Install our customized torchrec (commit id e8d8eda5e7a0619bd779e35065397679e1536dcd)

https://github.com/hpcaitech/torchrec

Or, build a docker image using docker/Dockerfile. Or, use prebuilt docker image on dockerhub.

docker pull hpcaitech/cacheembedding:0.2.2

lauch a docker container.

bash ./docker/launch.sh
  1. Run

All the commands to run DLRM on three datasets are presented in scripts/run.sh

bash scripts/run.sh

Set --prefetch_num to use prefetching.

Model

Currently, this repo only contains facebook DLRM models, and we are working on testing more recommendation models.

Performance

The DLRM performance on three datasets using ColossalAI version (this repo) and torchrec (with UVM) is shown as follows. The cache ratio of FreqAwareEmbedding is set as 1%. The evaluation is conducted on a single A100 (80GB memory) and AMD 7543 32-Core CPU (512GB memory).

method AUROC over Test after 1 Epoch Acc over test Throughput Time to Train 1 Epoch GPU memory allocated (GB) GPU memory reserved (GB) CPU memory usage (GB)
criteo 1TB ColossalAI 0.791299403 0.967155457 42 it/s 1h40m 3.75 5.04 94.39
torchrec 0.79515636 0.967177451 45 it/s 1h35m 66.54 68.43 7.7
kaggle ColossalAI 0.776755869 0.779025435 50 it/s 49s 0.9 2.14 34.66
torchrec 0.786652029 0.782288849 81 it/s 30s 16.13 17.99 13.89
avazue ColossalAI 0.72732079 0.824390948 72 it/s 31s 0.31 1.06 16.89
torchrec 0.725972056 0.824484706 111 it/s 21s 4.53 5.83 12.25

Cite us

@article{fang2022frequency,
  title={A Frequency-aware Software Cache for Large Recommendation System Embeddings},
  author={Fang, Jiarui and Zhang, Geng and Han, Jiatong and Li, Shenggui and Bian, Zhengda and Li, Yongbin and Liu, Jin and You, Yang},
  journal={arXiv preprint arXiv:2208.05321},
  year={2022}
}