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Microsoft Research AI for Science is seeking a talented machine learning researcher to join our mission of accelerating scientific discovery through AI. In the materials team, we are building next generation foundational AI capabilities to accelerate the design of novel materials with industrial impact. You can learn more about our AI emulator MatterSim and generator MatterGen in our blog. This 2-year residency position is an exceptional opportunity to contribute to our ambitious research agenda by developing efficient and expressive machine learning models for materials. You will work with a highly collaborative, interdisciplinary and diverse team of researchers, engineers and scientists to develop and implement the next generation of machine learning models for materials design. Microsoft’s mission is to empower every person and every organization on the planet to achieve more, and we’re dedicated to this mission across every aspect of our company. Our culture is centred on embracing a growth mindset and encouraging teams and leaders to bring their best each day. Join us and help shape the future of materials design.
Job Responsibility
Drive an ambitious, high-impact, research agenda on machine learning for materials
Develop efficient and expressive machine learning models that address fundamental materials science problems
Work with domain experts to develop realistic machine learning metrics and benchmarks
Prepare technical papers and presentations
Contribute to building large-scale infrastructure for data generation, model training and inference
Keep up-to-date with latest developments in the field
Requirements
PhD in computer science, machine learning, computational materials science, physics, or related area
Track record of publications at top-tier conferences or journals (e.g., NeurIPS, ICML, ICLR, Nature/Science or relevant sub-journals)
Strong coding ability and proficiency in collaborative code development
Ability to quickly iterate between ideation, implementation and evaluation of new research ideas
Ability to work in an interdisciplinary collaborative environment, through effective communication of technical concepts to non-experts from different technical backgrounds
Nice to have
Experience working on generative models
Experience working on (materials) science problems
Experience with agent-driven research and code development