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Enabling rapid COVID-19 small molecule drug design through scalable deep learning of generative models
The International Journal of High Performance Computing Applications ; : 10943420211010930, 2021.
Article in English | Sage | ID: covidwho-1223726
ABSTRACT
We improved the quality and reduced the time to produce machine learned models for use in small molecule antiviral design. Our globally asynchronous multi-level parallel training approach strong scales to all of Sierra with up to 97.7% efficiency. We trained a novel, character-based Wasserstein autoencoder that produces a higher quality model trained on 1.613 billion compounds in 23 minutes while the previous state of the art takes a day on 1 million compounds. Reducing training time from a day to minutes shifts the model creation bottleneck from computer job turnaround time to human innovation time. Our implementation achieves 318 PFLOPs for 17.1% of half-precision peak. We will incorporate this model into our molecular design loop enabling the generation of more diverse compounds;searching for novel, candidate antiviral drugs improves and reduces the time to synthesize compounds to be tested in the lab.

Full text: Available Collection: Databases of international organizations Database: Sage Language: English Journal: The International Journal of High Performance Computing Applications Year: 2021 Document Type: Article

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Full text: Available Collection: Databases of international organizations Database: Sage Language: English Journal: The International Journal of High Performance Computing Applications Year: 2021 Document Type: Article