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Explainability and human intervention in autonomous scanning probe microscopy

Yongtao Liu, Maxim Ziatdinov, Rama K. Vasudevan, Sergei V. Kalinin

2023Patterns14 citationsDOIOpen Access PDF

Abstract

The broad adoption of machine learning (ML)-based autonomous experiments (AEs) in material characterization and synthesis requires strategies development for understanding and intervention in the experimental workflow. Here, we introduce and realize a post-experimental analysis strategy for deep kernel learning-based autonomous scanning probe microscopy. This approach yields real-time and post-experimental indicators for the progression of an active learning process interacting with an experimental system. We further illustrate how this approach can be applied to human-in-the-loop AEs, where human operators make high-level decisions at high latencies setting the policies for AEs, and the ML algorithm performs low-level, fast decisions. The proposed approach is universal and can be extended to other techniques and applications such as combinatorial library analysis.

Topics & Concepts

MicroscopyMaterials scienceScanning probe microscopyNanotechnologyOpticsPhysicsForce Microscopy Techniques and ApplicationsMachine Learning in Materials ScienceElectronic and Structural Properties of Oxides
Explainability and human intervention in autonomous scanning probe microscopy | Litcius