Recurrent neural networks like long short-term memory (LSTM) have been utilized  as a tool for modeling and predicting dynamics of complex stochastic molecular systems. Previous studies have shown that Transformer has an advantage over LSTM in dealing with the memory loss of long-sequence data, and exceeds LSTM in many natural language processing tasks. In this seminar, we will show the implementation of Transformer on learning molecular dynamics and compare it with LSTM, which is greatly affected by lag time. 

5月3日
3pm - 4pm
地点
https://hkust.zoom.com.cn/j/6218914432 (Passcode: hkust)
讲者/表演者
Miss Wenqi ZENG
主办单位
Department of Mathematics
联系方法
付款详情
对象
Alumni, Faculty and staff, PG students, UG students
语言
英语
其他活动
6月21日
研讨会, 演讲, 讲座
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5月24日
研讨会, 演讲, 讲座
IAS / School of Science Joint Lecture - Confinement Controlled Electrochemistry: Nanopore beyond Sequencing
Abstract Nanopore electrochemistry refers to the promising measurement science based on elaborate pore structures, which offers a well-defined geometric confined space to adopt and characterize sin...