2022
DOI: 10.48550/arxiv.2211.00235
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Efficient AlphaFold2 Training using Parallel Evoformer and Branch Parallelism

Abstract: The accuracy of AlphaFold2, a frontier end-to-end structure prediction system, is already close to that of the experimental determination techniques. Due to the complex model architecture and large memory consumption, it requires lots of computational resources and time to train AlphaFold2 from scratch. Efficient AlphaFold2 training could accelerate the development of life science. In this paper, we propose a Parallel Evoformer and Branch Parallelism to speed up the training of AlphaFold2. We conduct sufficien… Show more

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