Flowformer: Linearizing Transformers with Conservation Flows
🚩News (2024.07) Mobile-Attention, a mobile-device-tailored version of Flowformer, has been published in ICML 2024. The attention code can be found here. You can obtain a faster model by just replacing the canonical Attention Mechanism with our Mobile-Attention.
Transformers have achieved impressive success in various areas. However, the attention mechanism has quadratic complexity, significantly impeding Transformers from dealing with numerous tokens and scaling up to bigger models. In pursuing the linear complexity and task-universal foundation model, we propose Flowformer [paper] with the following merits:
- Linear complexity w.r.t sequence length, can handle extremely long sequences (over 4k tokens)
- Without specific inductive bias, purely derived from the flow network theory
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Task-universal, showing strong performance in
$\color{red}{\text{Long sequence, Vision, NLP, Time series, RL}}$ .
We cast the attention mechanism into flow network, where the information flow is aggregated from the sources (values) to the sinks (results) through the learned flow capacities (attentions).
By conducting the conservation in both source and sink ascpects, we can bring competition into Flow-Attention design to avoid trivial attention in the spirit that "fixed resource will cause competition''.
Figure 1. Flow-Attention with Competition and Allocation mechanisms.
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Please refer to different folders for detailed experiment instructions.
Note: We have suffered a lot in configuring environments for different tasks. If you also have problems in solving the environment, feel free to contact us and discuss about it.
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List of benchmarks
- Core code: see
Flow_Attention.py
- GPT-style Pytorch Module: see
Flowformer_TorchModule
- Long Sequence Modeling in LRA: see
Flowformer_LRA
- Vision Recognization in ImageNet-1K: see
Flowformer_CV
- Language Modeling in WikiText-103: see
Flowformer_NLP
- Time series classification in UEA: see
Flowformer_TimeSeries
- Reinforcement Learning in D4RL: see
Flowformer_RL
- CUDA speed up version
See the [paper] for detailed results, including nearly 20 comparing baselines.
Task | Metrics | Flowformer | Performer | Reformer | Vanilla Transformer |
---|---|---|---|---|---|
Long Sequence Modeling (LRA) |
Avg Acc (%) |
56.48 | 51.41 | 50.67 | OOM |
Vision Recognization (ImageNet-1K) |
Top-1 Acc (%) |
80.6 | 78.1 | 79.6 | 78.7 |
Language Modeling (WikiText-103) |
Perplexity |
30.8 | 37.5 | 33.6 | 33.0 |
Time series classification (UEA) |
Avg Acc (%) |
73.0 | 71.5 | 71.9 | 71.9 |
Offline RL (D4RL) |
Avg Reward Avg Deviation |
73.5 |
63.8 |
63.9 |
72.2 |
Vanilla Transformer means Decision Transorfomer in RL.
Figure 2. Attention visualization. Flowformer can capture the essential parts successfully.
If you find this repo useful, please cite our paper.
@inproceedings{wu2022flowformer,
title={Flowformer: Linearizing Transformers with Conservation Flows},
author={Haixu Wu and Jialong Wu and Jiehui Xu and Jianmin Wang and Mingsheng Long},
booktitle={International Conference on Machine Learning},
year={2022}
}
If you have any questions or want to use the code, please contact [email protected].