Accelerating drug discovery with AI: Insights from Isomorphic Labs
Skills:
ML Maths Basics60%
In this episode of Gradient Dissent, Isomorphic Labs Chief AI Officer Max Jaderberg, and Chief Technology Officer Sergei Yakneen join our host Lukas Biewald to discuss the advancements in biotech and drug discovery being unlocked with machine learning.
🎙 Listen on Apple Podcasts: http://wandb.me/apple-podcasts
🎙 Listen on Spotify: http://wandb.me/spotify
With backgrounds in advanced AI research at DeepMind, Max and Sergei offer their unique insights into the challenges and successes of applying AI in a complex field like biotechnology. They share their journey at Isomorphic Labs, a company dedicated to revolutionizing drug discovery with AI. In this episode, they discuss the transformative impact of deep learning on the drug development process and Isomorphic Labs' strategy to innovate from molecular design to clinical trials.
You’ll come away with valuable insights into the challenges of applying AI in biotech, the role of AI in streamlining the drug discovery pipeline, and peer into the future of AI-driven solutions in healthcare.
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⏳Timestamps:
00:00 Episode introduction and guest overview
05:42 Max's transition from DeepMind to Isomorphic Labs
12:37 Sergei's tech background and move to healthcare
18:54 Early challenges at Isomorphic Labs
25:58 Integrating AI into drug discovery
32:16 Impact of machine learning on drug design
39:07 Introducing AI to drug discovery teams
47:29 AI's role in predicting drug effects
54:55 Future prospects of AI in biotech
01:01:00 AI ethics in healthcare
01:05:00 Broader AI applications in healthcare
01:09:00 Reflections on AI's impact on medicine & wrap-up
🎙 Get our podcasts on these platforms:
Apple Podcasts: http://wandb.me/apple-podcasts
Spotify: http://wandb.me/spotify
Google: http://wandb.me/gd_google
YouTube: http://wandb.me/youtube
Connect with Sergei Yakneen & Max Jaderberg:
https://www.linkedin.com/in/maxjaderberg/
https://www.linkedin.com/in/yakneensergei
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Chapters (12)
Episode introduction and guest overview
5:42
Max's transition from DeepMind to Isomorphic Labs
12:37
Sergei's tech background and move to healthcare
18:54
Early challenges at Isomorphic Labs
25:58
Integrating AI into drug discovery
32:16
Impact of machine learning on drug design
39:07
Introducing AI to drug discovery teams
47:29
AI's role in predicting drug effects
54:55
Future prospects of AI in biotech
1:01:00
AI ethics in healthcare
1:05:00
Broader AI applications in healthcare
1:09:00
Reflections on AI's impact on medicine & wrap-up
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