Special Issue

Topic: AI-Driven Materials Laboratories: Toward Autonomous Discovery and Design
A Special Issue of Journal of Materials Informatics
ISSN 2770-372X (Online)
Submission deadline: 31 Mar 2026
Guest Editor
Special Issue Introduction
The development of advanced materials has long been a cornerstone of technological progress, enabling breakthroughs in energy, healthcare, electronics, transportation, and sustainability. However, traditional approaches to materials discovery and design remain constrained by empirical trial-and-error processes, limited throughput, and lengthy development cycles. In recent years, the convergence of artificial intelligence (AI), robotics, and materials informatics has opened a transformative pathway toward autonomous materials laboratories—systems capable of rapidly and intelligently navigating vast design spaces with minimal human intervention.
This Special Issue, “AI-Driven Materials Laboratories: Toward Autonomous Discovery and Design,” focuses on the emergence of integrated experimental platforms that combine machine learning, high-throughput experimentation, and automated control systems. These platforms represent a paradigm shift: from manual, sequential workflows to closed-loop, data-driven discovery systems, where AI models dynamically guide experimental decisions, adaptively learn from new data, and optimize both material performance and process efficiency.
The issue will encompass a broad spectrum of topics, including but not limited to:
● AI-guided experimental design and optimization;
● Closed-loop systems for autonomous discovery;
● Robotic and automated platforms for materials research;
● Inverse design and generative models;
● Data infrastructure and digital twins for intelligent experimentation.
Keywords
Autonomous materials laboratories, artificial intelligence (AI), machine learning, high-throughput experimentation, materials informatics, closed-loop discovery, automated synthesis and characterization, data-driven materials design
Submission Deadline
Submission Information
For Author Instructions, please refer to https://www.oaepublish.com/jmi/author_instructions
For Online Submission, please login at https://www.oaecenter.com/login?JournalId=jmi&IssueId=jmi25081910179
Submission Deadline: 31 Mar 2026
Contacts: Tyree Tian, Assistant Editor, jmi_editor@jmaterinf.com