2024
DOI: 10.1038/s41467-024-48768-2
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Using scalable computer vision to automate high-throughput semiconductor characterization

Alexander E. Siemenn,
Eunice Aissi,
Fang Sheng
et al.

Abstract: High-throughput materials synthesis methods, crucial for discovering novel functional materials, face a bottleneck in property characterization. These high-throughput synthesis tools produce 104 samples per hour using ink-based deposition while most characterization methods are either slow (conventional rates of 101 samples per hour) or rigid (e.g., designed for standard thin films), resulting in a bottleneck. To address this, we propose automated characterization (autocharacterization) tools that leverage ada… Show more

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