日韩视频免费播放_国产精品老牛视频|HD中文字幕在线播放,久久久久久久98,日韩激情一区二区,欧美久久久久久

Harnessing Cloud Architecture for Crystal Structure Prediction Calculations

Harnessing Cloud Architecture for Crystal Structure Prediction Calculations

2 min read
分享鏈接

Cryst. Growth Des. 2018, 18, 11, 6891–6900
期刊:Crystal Growth and Design
作者:Peiyu Zhang et al.
時間:2018-10-03

Accurate and rapid crystal structure predictions have the potential to transform the development of new materials, particularly in fields with highly complex molecular structures (such as in drug development). In this work we present a novel cloud-computing crystal structure prediction (CSP) platform with the capability of scheduling hundreds of thousands CPU cores and integrating cutting-edge computational chemistry algorithms. This new cloud-computing based CSP platform has been applied to three crystalline drug substances of increasing complexity. The lattice energies of the experimental crystal structures are all within 4.0 kJ/mol of the lowest energy predicted structures. On the basis of the results of this work, the algorithm improvement and the mass computational power of cloud computing can reduce the whole CSP process to just 1–3 weeks for Z′ = 1 systems and less than 5 weeks for significantly more complex systems. Furthermore, it is possible to simultaneously perform calculations for multiple molecules if desired. As a result of these improvements, CSP calculations can potentially be applied in conjunction with state-of-the-art experimental screening techniques to reduce the risk of finding new solid forms after product launch provided that a sufficient number of stoichiometries and space groups are explored.

人工智能 + 機器人
技術平臺驅動行業創新

推薦閱讀

Templated Nucleation of Clotrimazole and Ketoprofen on Polymer Substrates
Tale of Two Polymorphs: Investigating the Structural Differences and Dynamic Relationship between Nirmatrelvir Solid Forms (Paxlovid)
WUREN: Whole-modal union representation for epitope prediction
Structural insights into drug transport by an aquaglyceroporin