#032- Simon Kornblith / GoogleAI - SimCLR and Paper Haul! episode artwork

EPISODE · Dec 6, 2020 · 1H 30M

#032- Simon Kornblith / GoogleAI - SimCLR and Paper Haul!

from Machine Learning Street Talk (MLST)

This week Dr. Tim Scarfe, Sayak Paul and Yannic Kilcher speak with Dr. Simon Kornblith from Google Brain (Ph.D from MIT). Simon is trying to understand how neural nets do what they do. Simon was the second author on the seminal Google AI SimCLR paper. We also cover "Do Wide and Deep Networks learn the same things?", "Whats in a Loss function for Image Classification?",  and "Big Self-supervised models are strong semi-supervised learners". Simon used to be a neuroscientist and also gives us the story of his unique journey into ML. 00:00:00 Show Teaser / or "short version" 00:18:34 Show intro 00:22:11 Relationship between neuroscience and machine learning 00:29:28 Similarity analysis and evolution of representations in Neural Networks 00:39:55 Expressability of NNs 00:42:33 Whats in a loss function for image classification 00:46:52 Loss function implications for transfer learning 00:50:44 SimCLR paper  01:00:19 Contrast SimCLR to BYOL 01:01:43 Data augmentation 01:06:35 Universality of image representations 01:09:25 Universality of augmentations 01:23:04 GPT-3 01:25:09 GANs for data augmentation?? 01:26:50 Julia language @skornblith https://www.linkedin.com/in/simon-kornblith-54b2033a/ https://arxiv.org/abs/2010.15327 Do Wide and Deep Networks Learn the Same Things? Uncovering How Neural Network Representations Vary with Width and Depth https://arxiv.org/abs/2010.16402 What's in a Loss Function for Image Classification? https://arxiv.org/abs/2002.05709 A Simple Framework for Contrastive Learning of Visual Representations https://arxiv.org/abs/2006.10029 Big Self-Supervised Models are Strong Semi-Supervised Learners

This week Dr. Tim Scarfe, Sayak Paul and Yannic Kilcher speak with Dr. Simon Kornblith from Google Brain (Ph.D from MIT). Simon is trying to understand how neural nets do what they do. Simon was the second author on the seminal Google AI SimCLR paper. We also cover "Do Wide and Deep Networks learn the same things?", "Whats in a Loss function for Image Classification?",  and "Big Self-supervised models are strong semi-supervised learners". Simon used to be a neuroscientist and also gives us the story of his unique journey into ML. 00:00:00 Show Teaser / or "short version" 00:18:34 Show intro 00:22:11 Relationship between neuroscience and machine learning 00:29:28 Similarity analysis and evolution of representations in Neural Networks 00:39:55 Expressability of NNs 00:42:33 Whats in a loss function for image classification 00:46:52 Loss function implications for transfer learning 00:50:44 SimCLR paper  01:00:19 Contrast SimCLR to BYOL 01:01:43 Data augmentation 01:06:35 Universality of image representations 01:09:25 Universality of augmentations 01:23:04 GPT-3 01:25:09 GANs for data augmentation?? 01:26:50 Julia language @skornblith https://www.linkedin.com/in/simon-kornblith-54b2033a/ https://arxiv.org/abs/2010.15327 Do Wide and Deep Networks Learn the Same Things? Uncovering How Neural Network Representations Vary with Width and Depth https://arxiv.org/abs/2010.16402 What's in a Loss Function for Image Classification? https://arxiv.org/abs/2002.05709 A Simple Framework for Contrastive Learning of Visual Representations https://arxiv.org/abs/2006.10029 Big Self-Supervised Models are Strong Semi-Supervised Learners

NOW PLAYING

#032- Simon Kornblith / GoogleAI - SimCLR and Paper Haul!

0:00 1:30:29

No transcript for this episode yet

We transcribe on demand. Request one and we'll notify you when it's ready — usually under 10 minutes.

French Your Way Jessica: Native French teacher founder of French Your Way Boost your French listening skills and test your comprehension with this one of a kind series of podcasts. Get the chance to listen to a real conversation between native speakers talking at normal speed AND customise your learning experience through carefully designed sets of questions (2 levels of difficulty) available for download at www.frenchvoicespodcast.com. All interviews also come with the transcript. French teacher Jessica interviews native speakers of French from around the world who share a bit of their life and passion. Where else would you meet in one same place a French yoga teacher based in Melbourne, a soap manufacturer from Provence, or a couple cycling around the world? Kaizen Blueprint Aldo Chandra "Kaizen" is a Japanese term for continuous improvement. This podcast provides a blueprint to learn about health, wealth, relationships and everything else in between. Through our podcast, we strive to inspire, educate, and motivate our audience to cultivate a mindset of lifelong learning, productivity, and personal development. By sharing insights, strategies, and practical tips, we aim to guide listeners on their journey towards realizing their fullest potential, fostering success, and creating lasting positive change. One Man Went To Row PepperDawesMedia Follow the journey, from training to finish line, of a man from Derby, UK who is going from having only ever rowed on a machine to rowing 3000 miles solo across the Atlantic...just after his 70th birthday! Humanizing Change Tremendousness Join us each episode as we talk with innovators in their respective fields about their unique journeys and how they humanize change in their own work, right here, on Humanizing Change.

Frequently Asked Questions

How long is this episode of Machine Learning Street Talk (MLST)?

This episode is 1 hour and 30 minutes long.

When was this Machine Learning Street Talk (MLST) episode published?

This episode was published on December 6, 2020.

What is this episode about?

This week Dr. Tim Scarfe, Sayak Paul and Yannic Kilcher speak with Dr. Simon Kornblith from Google Brain (Ph.D from MIT). Simon is trying to understand how neural nets do what they do. Simon was the second author on the seminal Google AI SimCLR...

Can I download this Machine Learning Street Talk (MLST) episode?

Yes, you can download this episode by clicking the download button on the episode player, or subscribe to the podcast in your preferred podcast app for automatic downloads.
URL copied to clipboard!