"AI+HPC"-based Time Prediction for the First Principle Calculations and Its Applications in Biomed Community

In the commonly used first-principles methods, density functional theory(DFT) has the characteristics of low scale and high accuracy, so it has been more and more widely used in the fields of chemistry, biology, medicine and so on.However, in practical applications, its relatively high computational...

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Veröffentlicht in:Ji suan ji ke xue 2022-10, Vol.49 (10), p.36-43
Hauptverfasser: Li, Zhi-Ying, Ma, Shuo, Zhou, Chao, Ma, Ying-Jin, Liu, Qian, Jin, Zhong
Format: Artikel
Sprache:chi
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Zusammenfassung:In the commonly used first-principles methods, density functional theory(DFT) has the characteristics of low scale and high accuracy, so it has been more and more widely used in the fields of chemistry, biology, medicine and so on.However, in practical applications, its relatively high computational cost has posed new challenges to the decision-making on calculation parameters for users and the assignment of tasks for the computing centers.We have recently developed a time prediction system for DFT calculations based on machine learning technique, which can predict the actual computational cost before calculations.The mean relative errors are normally less than 0.15,so that it meets the prediction accuracy requirements in actual scenarios.In this work, we further promote and improve the prediction system, providing multi-GPU parallel computing functions and modular additions to the machine learning models; combined it with the biomed community to realize real-time display of the computing tasks submitted to t
ISSN:1002-137X
DOI:10.11896/jsjkx.220100129