MTRL-SCILGINS-DETJun 10, 2025

Mic-hackathon 2024: Hackathon on Machine Learning for Electron and Scanning Probe Microscopy

arXiv:2506.08423v21 citationsh-index: 12Has CodeMachine Learning: Science and Technology
Originality Synthesis-oriented
AI Analysis

This addresses the problem of inefficient data usage and analysis in microscopy for researchers in physics and materials science, though it is incremental as it builds on existing hackathon models.

The paper describes a hackathon that tackled the gap between machine learning and microscopy communities by fostering collaboration to develop ML solutions for microscopy, resulting in benchmark datasets and digital twins of microscopes to support standardized workflows.

Microscopy is a primary source of information on materials structure and functionality at nanometer and atomic scales. The data generated is often well-structured, enriched with metadata and sample histories, though not always consistent in detail or format. The adoption of Data Management Plans (DMPs) by major funding agencies promotes preservation and access. However, deriving insights remains difficult due to the lack of standardized code ecosystems, benchmarks, and integration strategies. As a result, data usage is inefficient and analysis time is extensive. In addition to post-acquisition analysis, new APIs from major microscope manufacturers enable real-time, ML-based analytics for automated decision-making and ML-agent-controlled microscope operation. Yet, a gap remains between the ML and microscopy communities, limiting the impact of these methods on physics, materials discovery, and optimization. Hackathons help bridge this divide by fostering collaboration between ML researchers and microscopy experts. They encourage the development of novel solutions that apply ML to microscopy, while preparing a future workforce for instrumentation, materials science, and applied ML. This hackathon produced benchmark datasets and digital twins of microscopes to support community growth and standardized workflows. All related code is available at GitHub: https://github.com/KalininGroup/Mic-hackathon-2024-codes-publication/tree/1.0.0.1

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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