Artwork

Treść dostarczona przez Neil Ashton. Cała zawartość podcastów, w tym odcinki, grafika i opisy podcastów, jest przesyłana i udostępniana bezpośrednio przez Neil Ashton lub jego partnera na platformie podcastów. Jeśli uważasz, że ktoś wykorzystuje Twoje dzieło chronione prawem autorskim bez Twojej zgody, możesz postępować zgodnie z procedurą opisaną tutaj https://pl.player.fm/legal.
Player FM - aplikacja do podcastów
Przejdź do trybu offline z Player FM !

S1, EP13 - Prof. Anima Anandkumar - The future of AI+Science

1:06:56
 
Udostępnij
 

Manage episode 431406580 series 3572969
Treść dostarczona przez Neil Ashton. Cała zawartość podcastów, w tym odcinki, grafika i opisy podcastów, jest przesyłana i udostępniana bezpośrednio przez Neil Ashton lub jego partnera na platformie podcastów. Jeśli uważasz, że ktoś wykorzystuje Twoje dzieło chronione prawem autorskim bez Twojej zgody, możesz postępować zgodnie z procedurą opisaną tutaj https://pl.player.fm/legal.

Professor Anima Anandkumar is one of the worlds leading scientists in the field of AI & ML with more than 30k citations, a h-index of 80 and numerous landmark papers such as FourCastNet, which got world-wide coverage for demonstrating how AI can be used to speed up weather prediction. She is the Bren Professor at Caltech, leading a large team of PhD students and post-docs in her AI+Science lab, and has had extensive experience in industry, previously being the Senior Director of AI Resarch at Nvidia.
In this episode I speak to her about her background in academia and industry, her journey into machine learning, and the importance of AI for science. We discuss the integration of AI and scientific research, the potential of AI in weather modeling, and the challenges of applying AI to other areas of science. Prof Anandkumar shares examples of successful AI applications in science and explains the concept of AI + science. We also touch on the skepticism surrounding machine learning in physics and the need for data-driven approaches. The conversation explores the potential of AI in the field of science and engineering, specifically in the context of physics-based simulations. Prof. Anandkumar discusses the concept of neural operators, highlights the advantages of neural operators, such as their ability to handle multiple domains and resolutions, and their potential to revolutionize traditional simulation methods. Prof. Anandkumar also emphasizes the importance of integrating AI with scientific knowledge and the need for interdisciplinary collaboration between ML specialists and domain experts. She also emphasizes the importance of integrating AI with traditional numerical solvers and the need for interdisciplinary collaboration between ML specialists and domain experts. Finall she provides advice for PhD students and highlights the significance of attending smaller workshops and conferences to stay updated on emerging ideas in the field.
Links:
LinkedIn: https://www.linkedin.com/in/anima-anandkumar/
Ted Video: https://www.youtube.com/watch?v=6bl5XZ8kOzI
FourCastNet: https://arxiv.org/abs/2202.11214
Google Scholar: https://scholar.google.com/citations?hl=en&user=bEcLezcAAAAJ
Lab page: http://tensorlab.cms.caltech.edu/users/anima/
Takeaways
- Anima's background includes both academia and industry, and she sees value in bridging the gap between the two.
- AI for science is the integration of AI and scientific research, with the goal of enhancing and accelerating scientific developments.
- AI has shown promise in weather modeling, with AI-based weather models outperforming traditional numerical models in terms of speed and accuracy.
- The skepticism surrounding machine learning in physics can be addressed by verifying the accuracy of AI models against known physics principles.
- Applying AI to other areas of science, such as aircraft design and fluid dynamics, presents challenges in terms of data availability and computational cost. Neural operators have the potential to revolutionize traditional simulation methods in science and engineering.
- Integrating AI with scientific knowledge is crucial for the development of effective AI models in the field of physics-based simulations.
- Interdisciplinary collaboration between ML specialists and domain experts is essential for advancing AI in science and engineering.
- The future of AI in science and engineering lies in the integration of various modalities, such as text, observational data, and physical understanding.
Chapters
00:00 Introduction and Overview
04:29 Professor Anima Anandkumar's Career Journey
09:14 Moving to the US for PhD and Transitioning to Industry
13:00 Academia vs Industry: Personal Choices and Opportunities
17:49 Defining AI for Science and Its Importance
22:05 AI's Promise in Enhancing Scientific Discovery
28:18 The Success of AI-Based Wea

  continue reading

17 odcinków

Artwork
iconUdostępnij
 
Manage episode 431406580 series 3572969
Treść dostarczona przez Neil Ashton. Cała zawartość podcastów, w tym odcinki, grafika i opisy podcastów, jest przesyłana i udostępniana bezpośrednio przez Neil Ashton lub jego partnera na platformie podcastów. Jeśli uważasz, że ktoś wykorzystuje Twoje dzieło chronione prawem autorskim bez Twojej zgody, możesz postępować zgodnie z procedurą opisaną tutaj https://pl.player.fm/legal.

Professor Anima Anandkumar is one of the worlds leading scientists in the field of AI & ML with more than 30k citations, a h-index of 80 and numerous landmark papers such as FourCastNet, which got world-wide coverage for demonstrating how AI can be used to speed up weather prediction. She is the Bren Professor at Caltech, leading a large team of PhD students and post-docs in her AI+Science lab, and has had extensive experience in industry, previously being the Senior Director of AI Resarch at Nvidia.
In this episode I speak to her about her background in academia and industry, her journey into machine learning, and the importance of AI for science. We discuss the integration of AI and scientific research, the potential of AI in weather modeling, and the challenges of applying AI to other areas of science. Prof Anandkumar shares examples of successful AI applications in science and explains the concept of AI + science. We also touch on the skepticism surrounding machine learning in physics and the need for data-driven approaches. The conversation explores the potential of AI in the field of science and engineering, specifically in the context of physics-based simulations. Prof. Anandkumar discusses the concept of neural operators, highlights the advantages of neural operators, such as their ability to handle multiple domains and resolutions, and their potential to revolutionize traditional simulation methods. Prof. Anandkumar also emphasizes the importance of integrating AI with scientific knowledge and the need for interdisciplinary collaboration between ML specialists and domain experts. She also emphasizes the importance of integrating AI with traditional numerical solvers and the need for interdisciplinary collaboration between ML specialists and domain experts. Finall she provides advice for PhD students and highlights the significance of attending smaller workshops and conferences to stay updated on emerging ideas in the field.
Links:
LinkedIn: https://www.linkedin.com/in/anima-anandkumar/
Ted Video: https://www.youtube.com/watch?v=6bl5XZ8kOzI
FourCastNet: https://arxiv.org/abs/2202.11214
Google Scholar: https://scholar.google.com/citations?hl=en&user=bEcLezcAAAAJ
Lab page: http://tensorlab.cms.caltech.edu/users/anima/
Takeaways
- Anima's background includes both academia and industry, and she sees value in bridging the gap between the two.
- AI for science is the integration of AI and scientific research, with the goal of enhancing and accelerating scientific developments.
- AI has shown promise in weather modeling, with AI-based weather models outperforming traditional numerical models in terms of speed and accuracy.
- The skepticism surrounding machine learning in physics can be addressed by verifying the accuracy of AI models against known physics principles.
- Applying AI to other areas of science, such as aircraft design and fluid dynamics, presents challenges in terms of data availability and computational cost. Neural operators have the potential to revolutionize traditional simulation methods in science and engineering.
- Integrating AI with scientific knowledge is crucial for the development of effective AI models in the field of physics-based simulations.
- Interdisciplinary collaboration between ML specialists and domain experts is essential for advancing AI in science and engineering.
- The future of AI in science and engineering lies in the integration of various modalities, such as text, observational data, and physical understanding.
Chapters
00:00 Introduction and Overview
04:29 Professor Anima Anandkumar's Career Journey
09:14 Moving to the US for PhD and Transitioning to Industry
13:00 Academia vs Industry: Personal Choices and Opportunities
17:49 Defining AI for Science and Its Importance
22:05 AI's Promise in Enhancing Scientific Discovery
28:18 The Success of AI-Based Wea

  continue reading

17 odcinków

Wszystkie odcinki

×
 
Loading …

Zapraszamy w Player FM

Odtwarzacz FM skanuje sieć w poszukiwaniu wysokiej jakości podcastów, abyś mógł się nią cieszyć już teraz. To najlepsza aplikacja do podcastów, działająca na Androidzie, iPhonie i Internecie. Zarejestruj się, aby zsynchronizować subskrypcje na różnych urządzeniach.

 

Skrócona instrukcja obsługi