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US bets on AI to develop sustainable materials, strengthen semiconductor leadership

Judy Lin, DIGITIMES Asia, Taipei 0

Credit: SemiAnalysis

The US Department of Commerce has announced a new initiative to maintain the country's semiconductor industry leadership by leveraging artificial intelligence (AI) to develop sustainable materials and processes. With up to $100 million in anticipated funding, this competition is part of the CHIPS for America program, which seeks to drive innovation in semiconductor manufacturing while addressing environmental challenges.

The competition is designed to explore how AI-powered autonomous experimentation (AI/AE) can speed up the development of sustainable semiconductor materials. This technology combines automated synthesis and AI-driven planning to accelerate material design, dramatically reducing the time and resources required to bring new materials into production. University-led, industry-informed collaborations will play a key role in this effort, focusing on creating scalable solutions within the next five years.

US Secretary of Commerce Gina Raimondo highlighted the urgency of the initiative, stating, "To quickly build up America's semiconductor manufacturing base in a way that's sustainable in the face of the climate crisis, we need to leverage AI to develop sustainable material processes." She emphasized that the Biden-Harris Administration is committed to harnessing AI's potential to create a more secure and enduring domestic semiconductor industry.

This initiative comes at a critical time for the U.S. as global competition in semiconductors intensifies. With countries like China and South Korea investing heavily in their own semiconductor industries, maintaining U.S. leadership requires innovative approaches to both technological development and sustainability. Semiconductors are the foundation of many advanced technologies, from smartphones to AI systems, and continued leadership in this space is crucial for U.S. economic and national security.

Assistant to the President for Science and Technology Arati Prabhakar noted that the program exemplifies American ingenuity by using AI to accelerate complex semiconductor research. "This is how CHIPS R&D will help manufacturers succeed here at home," she said, highlighting the importance of domestic innovation in securing the future of US semiconductor manufacturing.

The competition also underscores the critical intersection of AI and semiconductor development. As AI becomes increasingly integrated into various sectors, the ability to produce chips that meet higher performance standards while adhering to sustainability goals is essential. This program will foster collaborations between universities, industry, and research institutions to develop the next generation of semiconductor materials and processes that can meet these demands.

Laurie E. Locascio, Director of the National Institute of Standards and Technology (NIST), reinforced the potential of the CHIPS initiative to bring about significant advances in sustainable manufacturing. "We have a unique opportunity to make the U.S. a leader in efficient and competitive semiconductor manufacturing," she said.

By fostering partnerships and encouraging the development of sustainable technologies, the U.S. aims to solidify its leadership in both semiconductor production and AI applications. This initiative will not only help to address pressing environmental concerns but also ensure that U.S. industries remain at the forefront of technological innovation in an increasingly competitive global landscape. The funding opportunity is expected to be formally announced later this year, and the results could shape the future of the semiconductor industry for decades to come.

The full text of the NOI can be found here.

What difference can AI/AE make?

The announcement encourages leading researchers to leverage AI-powered autonomous experiments (AI/AE) in developing more environmentally sustainable solutions and materials to reduce the power consumption demands of AI systems. With that, a virtuous cycle can be formed -- a more environmentally sustainable AI system will help AI systems to be applied in more applications that require high-performance computing which will consume significant power.

AI-powered autonomous experimentation refers to the use of AI and machine learning (ML) to design, conduct, and analyze experiments with minimal human intervention. This concept is becoming increasingly important in fields such as scientific research, drug discovery, materials science, and industrial R&D, where complex and time-consuming experimentation processes are involved.

Key Features of AI-Powered Autonomous Experimentation:

Automated Hypothesis Generation: AI algorithms can analyze vast amounts of data to propose new hypotheses or experimental conditions that a human researcher might not easily identify.

Experiment Design and Execution: AI can design experiments by selecting variables, conditions, and controls. Robotic systems, often integrated with AI, can physically carry out these experiments, like in a lab setting, without human assistance.

Real-time Data Analysis: AI systems can process and analyze experimental data in real time, learning from the results and adapting the next set of experiments to optimize the outcomes.

Optimization and Decision-Making: Machine learning models can continuously improve experimental conditions by identifying patterns, making predictions, and suggesting new parameters for testing. This leads to faster cycles of experimentation and refinement.

Scalability and Efficiency: By automating routine and complex tasks, AI-powered autonomous experimentation accelerates research, reduces human error, and allows scientists to focus on more creative or high-level problem-solving tasks.

Example Applications:

Drug Discovery: AI can rapidly test different molecular structures and predict their effectiveness in targeting specific diseases, reducing the time and cost of drug development.

Materials Science: AI-driven systems can discover new materials by exploring thousands of chemical combinations and testing their properties for specific applications (e.g., superconductors or catalysts).

Biology and Chemistry: Autonomous labs can run genetic or chemical experiments at scale, iterating faster than human scientists can.