
Sign up to save your podcasts
Or
Today we’re joined by Michael McCourt the head of engineering at SigOpt. In our conversation with Michael, we explore the vast space around the topic of optimization, including the technical differences between ML and optimization and where they’re applied, what the path to increasing complexity looks like for a practitioner and the relationship between optimization and active learning. We also discuss the research frontier for optimization and how folks think about the interesting challenges and open questions for this field, how optimization approaches appeared at the latest NeurIPS conference, and Mike’s excitement for the emergence of interdisciplinary work between the machine learning community and other fields like the natural sciences.
The complete show notes for this episode can be found at twimlai.com/go/545
4.7
416416 ratings
Today we’re joined by Michael McCourt the head of engineering at SigOpt. In our conversation with Michael, we explore the vast space around the topic of optimization, including the technical differences between ML and optimization and where they’re applied, what the path to increasing complexity looks like for a practitioner and the relationship between optimization and active learning. We also discuss the research frontier for optimization and how folks think about the interesting challenges and open questions for this field, how optimization approaches appeared at the latest NeurIPS conference, and Mike’s excitement for the emergence of interdisciplinary work between the machine learning community and other fields like the natural sciences.
The complete show notes for this episode can be found at twimlai.com/go/545
159 Listeners
475 Listeners
297 Listeners
340 Listeners
150 Listeners
188 Listeners
298 Listeners
91 Listeners
425 Listeners
124 Listeners
200 Listeners
71 Listeners
505 Listeners
11 Listeners
32 Listeners