Michelle Gill: AI-Assisted Drug Discovery, NVIDIA, Biofoundation Models, Creating Applied Research Teams | Learning from Machine Learning #8

Michelle Gill: AI-Assisted Drug Discovery, NVIDIA, Biofoundation Models, Creating Applied Research Teams | Learning from Machine Learning #8

This episode features Dr. Michelle Gill, Tech Lead and Applied Research Manager at NVIDIA, working on transformative projects like BioNemo to accelerate drug discovery through AI. Her team explores Biofoundation models to enable researchers to better perform tasks like protein folding and small molecule binding.

Michelle shares her incredible journey from wet lab biochemist to driving cutting edge AI at NVIDIA. Michelle discusses the overlap and differences between NLP and AI in biology. She outlines the critical need for better machine learning representations that capture the intricate dynamics of biology.

Michelle provides advice for beginners and early career professionals in the field of machine learning, emphasizing the importance of continuous learning and staying up to date with the latest tools and techniques. She also shares insights on building successful multidisciplinary teams

After hearing her fascinating PyData NYC keynote, it was such an honor to have her on the show to discuss innovations at the intersection of biochemistry and AI.

References and Resources

https://michellelynngill.com/

Michelle Gill - Keynote - PyData NYC https://www.youtube.com/watch?v=ATo2SzA1Pp4

AlexNet

AlphaFold - https://www.nature.com/articles/s41586-021-03819-2

OpenFold - https://www.biorxiv.org/content/10.1101/2022.11.20.517210v1

BioNemo - https://www.nvidia.com/en-us/clara/bionemo/

NeurIPS - https://nips.cc/

Art Palmer - https://www.biochem.cuimc.columbia.edu/profile/arthur-g-palmer-iii-phd

Patrick Loria - https://chem.yale.edu/faculty/j-patrick-loria

Scott Strobel - https://chem.yale.edu/faculty/scott-strobel

Alexander Rives - https://www.forbes.com/sites/kenrickcai/2023/08/25/evolutionaryscale-ai-biotech-startup-meta-researchers-funding/?sh=648f1a1140cf

Deborah Marks - https://sysbio.med.harvard.edu/debora-marks

Resources to learn more about Learning from Machine Learning

Tämä jakso on lisätty Podme-palveluun avoimen RSS-syötteen kautta eikä se ole Podmen omaa tuotantoa. Siksi jakso saattaa sisältää mainontaa.

Jaksot(14)

Dan Bricklin: Lessons from Building the First Killer App | Learning from Machine Learning #14

Dan Bricklin: Lessons from Building the First Killer App | Learning from Machine Learning #14

On this episode of Learning from Machine Learning, I had the pleasure of speaking with Dan Bricklin, co-creator of VisiCalc - the first electronic spreadsheet and the killer app that launched the pers...

17 Loka 20251h 13min

Lukas Biewald | You think you're late, but you're early | Learning from Machine Learning #13

Lukas Biewald | You think you're late, but you're early | Learning from Machine Learning #13

On this episode of Learning from Machine Learning, I had the privilege of speaking with Lukas Biewald, co-founder and CEO of Weights & Biases. We traced his journey from programming games as a kid to ...

1 Heinä 20251h 4min

Maxime Labonne: Designing beyond Transformers | Learning from Machine Learning #12

Maxime Labonne: Designing beyond Transformers | Learning from Machine Learning #12

On this episode of Learning from Machine Learning, I had the privilege of speaking with Maxime Labonne, Head of Post-Training at Liquid AI. We traced his journey from cybersecurity to the cutting edge...

28 Touko 20251h 3min

Aman Khan: Arize, Evaluating AI, Designing for Non-Determinism | Learning from Machine Learning #11

Aman Khan: Arize, Evaluating AI, Designing for Non-Determinism | Learning from Machine Learning #11

On this episode of Learning from Machine Learning, I had the privilege of speaking with Aman Khan, Head of Product at Arize AI. Aman shared how evaluating AI systems isn't just a step in the process—i...

29 Huhti 20251h 7min

Leland McInnes: UMAP, HDBSCAN & the Geometry of Data | Learning from Machine Learning #10

Leland McInnes: UMAP, HDBSCAN & the Geometry of Data | Learning from Machine Learning #10

In this episode of Learning from Machine Learning, we explore the intersection of pure mathematics and modern data science with Leland McInnes, the mind behind an ecosystem of tools for unsupervised l...

25 Loka 202455min

Chris Van Pelt: Machine Learning Tooling, Weights and Biases, Entrepreneurship | Learning from Machine Learning  #9

Chris Van Pelt: Machine Learning Tooling, Weights and Biases, Entrepreneurship | Learning from Machine Learning #9

In this episode, we are joined by Chris Van Pelt, co-founder of Weights & Biases and Figure Eight/CrowdFlower. Chris has played a pivotal role in the development of MLOps platforms and has dedicated t...

1 Maalis 20241h 5min

Ines Montani: Explosion, NLP, Generative AI, Entrepreneurship | Learning from Machine Learning #7

Ines Montani: Explosion, NLP, Generative AI, Entrepreneurship | Learning from Machine Learning #7

This episode features co-founder and CEO of Explosion, Ines Montani. Listen in as we discuss the evolution of the web and machine learning, the development of SpaCy, Natural Language Processing vs. Na...

26 Loka 20231h 23min

Suosittua kategoriassa Yhteiskunta

olipa-kerran-otsikko
seitseman
siita-on-vaikea-puhua
sita
hupiklubi
ihme-ja-kumma
i-dont-like-mondays
kaksi-aitia
poks
uutiscast
antin-palautepalvelu
mamma-mia
kolme-kaannekohtaa
rss-murhan-anatomia
yopuolen-tarinoita-2
gogin-ja-janin-maailmanhistoria
rss-palmujen-varjoissa
aikalisa
kummitusjuttuja
meidan-pitais-puhua