Opening remarks: Causal Machine Learning

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Speaker: Cheng Zhang, Principal Researcher, Microsoft Research Cambridge

Causal machine learning is an increasingly important, but not well understood, technology. It’s a necessary precursor to building more human-like machine intelligence, and an integral factor in the fields of information, data and computer science. This track focuses on emerging causal machine learning technologies and the opportunities for practical impact at the intersection of academia and industry, with contributions from researchers at Microsoft and the broader academic and industrial research communities.

Learn more about the 2021 Microsoft Research Summit: https://Aka.ms/researchsummit




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Causal Machine Learning
human-like machine intelligence
computer science
causal machine learning technologies
microsoft research summit