
Designing New Energy Materials with Machine Learning with Rafael Gomez-Bombarelli - #558
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
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Addressing Permutation Invariance and Simulation Credibility in Molecular Data
This chapter explores the complexities of permutation invariance in molecular data and its computational challenges. It highlights the importance of reliable simulation tools and compares data augmentation techniques in machine learning with atom rearrangement to enhance model training.
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Transcript


