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William H. Green

Massachusetts Institute of Technology

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About William H. Green at Massachusetts Institute of Technology (MIT)

William H. Green is a researcher based at Massachusetts Institute of Technology. They specialize in Machine Learning in Materials Science, Computational Drug Discovery Methods, and Advanced Chemical Physics Studies, with ongoing contributions to these areas. Their academic career is distinguished by over 30,657 citations, demonstrating their leading role in the global research community. With a formidable H-index of 85, William H. Green continues to drive innovation in their area of expertise.

Research Areas

Machine Learning in Materials ScienceComputational Drug Discovery MethodsAdvanced Chemical Physics StudiesAdvanced Combustion Engine TechnologiesCatalysis and Oxidation Reactions

Academic Impact Matrix

Research output metrics for William H. Green aggregated from public academic databases. Student lab experience data is pending.

Academic data verified · April 2026 · Next sync: May 2026

Research Output

Total Citations30,657

Top 5% globally

Publications1075

Highly prolific researcher

h-index85

Nobel-level impact

i10-index393

Exceptional breadth

Lab Environment

No lab data yet for William H. Green

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