Speakers:
Juan Lavista Ferres, Chief Scientist and Lab Director, Microsoft Research
Mingqi Wu, Principal Data Scientist, Gaming at Microsoft
Sonia Jaffe, Senior Research Economist, Microsoft Research
Mehrnoosh Sameki, Senior Program Manager, Microsoft Azure
Causal reasoning and machine learning is widely deployed across Microsoft, to support high-stakes internal decision-making and to build products that help our customers make better use of their own data. This panel, moderated by AI for Good Chief Scientist Juan Lavista Ferres, will quiz some of our leading practitioners on how they use causal tools in their work, what tools are needed but missing, and how they hope causal machine learning will evolve in the future.
Learn more about the 2021 Microsoft Research Summit:
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