Gradient Dissent: Conversations on AI
Stanford's Polly Fordyce on microfluidic platforms and machine learning
Polly explains how microfluidics allow bioengineering researchers to create high throughput data, and shares her experiences with biology and machine learning.
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Polly Fordyce is an Assistant Professor of Genetics and Bioengineering and fellow of the ChEM-H Institute at Stanford. She is the Principal Investigator of The Fordyce Lab, which focuses on developing and applying new microfluidic platforms for quantitative, high-throughput biophysics and biochemistry.
Twitter: https://twitter.com/fordycelab
Website: http://www.fordycelab.com/
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Topics Discussed:
0:00 Sneak peek, intro
2:11 Background on protein sequencing
7:38 How changes to a protein's sequence alters its structure and function
11:07 Microfluidics and machine learning
19:25 Why protein folding is important
25:17 Collaborating with ML practitioners
31:46 Transfer learning and big data sets in biology
38:42 Where Polly hopes bioengineering research will go
42:43 Advice for students
Transcript:
http://wandb.me/gd-polly-fordyce
Links Discussed:
"The Weather Makers": https://en.wikipedia.org/wiki/The_Wea...
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