Abstract Traditional methods for material discovery and optimization are time‐consuming and resource‐consuming. Recent advancements in artificial intelligence (AI), particularly machine learning, offer a revolutionary opportunity for accelerating novel material discovery. This review overviews AI enhancement on high‐throughput synthesis and screening methods for faster and more efficient material discovery, focusing on electrocatalysis and energy storage materials. The integration of AI with autonomous laboratories allows real‐time data analysis and closed‐loop optimization, accelerating material characterization and analysis. Despite challenges in data quality and model transparency, integration of AI with experimental workflows significantly advances materials science.
Huang et al. (Sun,) studied this question.
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