AI Article Synopsis

  • The advancement of computation power and machine learning is enabling the automation of scientific discovery using scanning probe microscopes (SPM).* -
  • A new Python interface library has been created to control SPMs from both local and remote high-performance computers, meeting the computational demands of machine learning.* -
  • The developed platform allows for the operation of SPM in various workflows, facilitating automated processes for routine tasks and autonomous scientific research.*

Article Abstract

The rapid development of computation power and machine learning algorithms has paved the way for automating scientific discovery with a scanning probe microscope (SPM). The key elements toward operationalization of the automated SPM are the interface to enable SPM control from Python codes, availability of high computing power, and development of workflows for scientific discovery. Here, we build a Python interface library that enables controlling an SPM from either a local computer or a remote high-performance computer, which satisfies the high computation power need of machine learning algorithms in autonomous workflows. We further introduce a general platform to abstract the operations of SPM in scientific discovery into fixed-policy or reward-driven workflows. Our work provides a full infrastructure to build automated SPM workflows for both routine operations and autonomous scientific discovery with machine learning.

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Source
http://dx.doi.org/10.1063/5.0219990DOI Listing

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