Fast Reader Notes: Amy Zhang is a final year PhD candidate at McGill University and the Mila Institute, co-supervised by Profs. Watch Part 2: From Theory to Prediction Watch Part 3: How Scientists Really Work ...

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Amy Zhang is a final year PhD candidate at McGill University and the Mila Institute, co-supervised by Profs. Watch Part 2: From Theory to Prediction Watch Part 3: How Scientists Really Work ...

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  • Amy Zhang is a final year PhD candidate at McGill University and the Mila Institute, co-supervised by Profs.
  • Watch Part 2: From Theory to Prediction Watch Part 3: How Scientists Really Work ...

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