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Chemspeed & Ames National Laboratory: Driving Innovation Together in DOE’s Genesis Mission

December 2, 2025
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We are proud to highlight our partnership with Ames National Laboratory, a key contributor to the U.S. Department of Energy’s groundbreaking Genesis Mission—an initiative designed to harness the power of Artificial Intelligence (AI) to transform American science and innovation.

What is the Genesis Mission? 

The Genesis Mission is a historic DOE program that connects the nation’s most powerful supercomputers, AI systems, and scientific instruments to accelerate discovery in three critical areas:

  • Energy – Driving next-generation energy solutions for sustainability and resilience.
  • National Security – Strengthening U.S. technological leadership and supply chain security.
  • Advanced Materials – Unlocking faster, smarter insights into complex materials behavior.

By leveraging AI and data-driven approaches, Genesis aims to revolutionize how science is conducted, enabling breakthroughs that would traditionally take years to achieve.

Our Shared Vision

Chemspeed and Ames Lab share a commitment to automation and data-driven discovery. Ames brings decades of expertise in materials science, computational modeling, and machine learning, while Chemspeed provides advanced automation platforms that accelerate experimental workflows. Together, we are enabling smarter, faster insights for next-generation advanced materials research.

➡ Learn more about the Genesis Mission: https://www.energy.gov/articles/energy-department-launches-genesis-mission-transform-american-science-and-innovation

➡ Watch our joint webinar with Ames Lab: https://www.chemspeed.com/webinar/webinar-ames-lab/

Together, we are pushing the boundaries of intelligent materials design and AI-powered discovery.

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