Josh Bloom — The Link Between Astronomy and ML
Podcast |
Gradient Dissent
Publisher |
Lukas Biewald
Media Type |
audio
Categories Via RSS |
Technology
Publication Date |
Aug 20, 2021
Episode Duration |
01:08:16

Josh explains how astronomy and machine learning have informed each other, their current limitations, and where their intersection goes from here.

(Read more: http://wandb.me/gd-josh-bloom)

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Josh is a Professor of Astronomy and Chair of the Astronomy Department at UC Berkeley. His research interests include the intersection of machine learning and physics, time-domain transients events, artificial intelligence, and optical/infared instrumentation.

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Follow Gradient Dissent on Twitter: https://twitter.com/weights_biases

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0:00 Intro, sneak peek

1:15 How astronomy has informed ML

4:20 The big questions in astronomy today

10:15 On dark matter and dark energy

16:37 Finding life on other planets

19:55 Driving advancements in astronomy

27:05 Putting telescopes in space

31:05 Why Josh started using ML in his research

33:54 Crowdsourcing in astronomy

36:20 How ML has (and hasn't) informed astronomy

47:22 The next generation of cross-functional grad students

50:50 How Josh started coding

56:11 Incentives and maintaining research codebases

1:00:01 ML4Science's tech stack

1:02:11 Uncertainty quantification in a sensor-based world

1:04:28 Why it's not good to always get an answer

1:07:47 Outro

Josh explains how astronomy and machine learning have informed each other, their current limitations, and where their intersection goes from here.

Josh explains how astronomy and machine learning have informed each other, their current limitations, and where their intersection goes from here.

(Read more: http://wandb.me/gd-josh-bloom)

---

Josh is a Professor of Astronomy and Chair of the Astronomy Department at UC Berkeley. His research interests include the intersection of machine learning and physics, time-domain transients events, artificial intelligence, and optical/infared instrumentation.

---

Follow Gradient Dissent on Twitter: https://twitter.com/weights_biases

---

0:00 Intro, sneak peek

1:15 How astronomy has informed ML

4:20 The big questions in astronomy today

10:15 On dark matter and dark energy

16:37 Finding life on other planets

19:55 Driving advancements in astronomy

27:05 Putting telescopes in space

31:05 Why Josh started using ML in his research

33:54 Crowdsourcing in astronomy

36:20 How ML has (and hasn't) informed astronomy

47:22 The next generation of cross-functional grad students

50:50 How Josh started coding

56:11 Incentives and maintaining research codebases

1:00:01 ML4Science's tech stack

1:02:11 Uncertainty quantification in a sensor-based world

1:04:28 Why it's not good to always get an answer

1:07:47 Outro

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