Nicolas Koumchatzky โ€” Machine Learning in Production for Self-Driving Cars

Weights & Biases ยท Intermediate ยท๐Ÿ“ ML Fundamentals ยท6y ago
๐Ÿ‘จ๐Ÿปโ€๐Ÿ’ปToday our guest is Nicolas Koumchatzky. Nicolas Koumchatzky is the Director of AI infrastructure at NVIDIA, where he's responsible for MagLev, the production-grade machine learning platform by NVIDIA. His team supports diverse ML use cases: autonomous vehicles, medical imaging, super resolution, predictive analytics, cyber security, robotics. He started as a Quant in Paris, then joined Madbits, a startup specialized on using deep learning for content understanding. When Madbits was acquired by Twitter in 2014, he joined as a deep learning expert and led a few projects in Cortex, includeโ€ฆ
Watch on YouTube โ†— (saves to browser)

Chapters (11)

intro
0:42 Nicholas intro
0:52 how has deep learning shifted since 2016?
11:52 Surprisingly challenging things at the time
13:15 moving to NVIDIA
15:36 components of the infrastructure at NVIDIA, active learning
28:53 How do you approach makiing sophisticated systems on behalf of customers?
31:24 Synthetic Data
33:55 What is there left to do for the progress of autonomous vehicles?
38:02 Difference at approach between NVIDIA, Tesla, Lyft
41:11 More on Active Learning

Playlist

Uploads from Weights & Biases ยท Weights & Biases ยท 42 of 60

1 0. What is machine learning?
0. What is machine learning?
Weights & Biases
2 1. Build Your First Machine Learning Model
1. Build Your First Machine Learning Model
Weights & Biases
3 Intro to ML: Course Overview
Intro to ML: Course Overview
Weights & Biases
4 2. Multi-Layer Perceptrons
2. Multi-Layer Perceptrons
Weights & Biases
5 3. Convolutional Neural Networks
3. Convolutional Neural Networks
Weights & Biases
6 Weights & Biases at OpenAI
Weights & Biases at OpenAI
Weights & Biases
7 Why Experiment Tracking is Crucial to OpenAI
Why Experiment Tracking is Crucial to OpenAI
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8 4. Autoencoders
4. Autoencoders
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9 5. Sentiment Analysis
5. Sentiment Analysis
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10 6. Recurrent Neural Networks [RNNs]
6. Recurrent Neural Networks [RNNs]
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11 7. Text Generation using LSTMs and GRUs
7. Text Generation using LSTMs and GRUs
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12 8. Text Classification Using Convolutional Neural Networks
8. Text Classification Using Convolutional Neural Networks
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13 9. Hybrid LSTMs [Long Short-Term Memory]
9. Hybrid LSTMs [Long Short-Term Memory]
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14 Toyota Research Institute on Experiment Tracking with Weights & Biases
Toyota Research Institute on Experiment Tracking with Weights & Biases
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15 Weights and Biases - Developer Tools for Deep Learning
Weights and Biases - Developer Tools for Deep Learning
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16 Introducing Weights & Biases
Introducing Weights & Biases
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17 10. Seq2Seq Models
10. Seq2Seq Models
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18 11. Transfer Learning for Domain-Specific Image Classification with Small Datasets
11. Transfer Learning for Domain-Specific Image Classification with Small Datasets
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19 12. One-shot learning for teaching neural networks to classify objects never seen before
12. One-shot learning for teaching neural networks to classify objects never seen before
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20 13. Speech Recognition with Convolutional Neural Networks in Keras/TensorFlow
13. Speech Recognition with Convolutional Neural Networks in Keras/TensorFlow
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21 14. Data Augmentation | Keras
14. Data Augmentation | Keras
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22 15. Batch Size and Learning Rate in CNNs
15. Batch Size and Learning Rate in CNNs
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23 Applied Deep Learning Fellowship Overview and Project Selection with Josh Tobin (2019)
Applied Deep Learning Fellowship Overview and Project Selection with Josh Tobin (2019)
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24 Grading Rubric for AI Applications with Sergey Karayev  (2019)
Grading Rubric for AI Applications with Sergey Karayev (2019)
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25 16. Video Frame Prediction using CNNs and LSTMs (2019)
16. Video Frame Prediction using CNNs and LSTMs (2019)
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26 Image to LaTeX - Applied Deep Learning Fellowship (2019)
Image to LaTeX - Applied Deep Learning Fellowship (2019)
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27 17.  Build and Deploy an Emotion Classifier (2019)
17. Build and Deploy an Emotion Classifier (2019)
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28 Applied Deep Learning - Data Management with Josh Tobin (2019)
Applied Deep Learning - Data Management with Josh Tobin (2019)
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29 Snorkel: Programming Training Data with Paroma Varma of Stanford University (2019)
Snorkel: Programming Training Data with Paroma Varma of Stanford University (2019)
Weights & Biases
30 Applied Deep Learning - Troubleshooting and Debugging with Josh Tobin (2019)
Applied Deep Learning - Troubleshooting and Debugging with Josh Tobin (2019)
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31 Troubleshooting and Iterating ML Models with Lee Redden (2019)
Troubleshooting and Iterating ML Models with Lee Redden (2019)
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32 Designing a Machine Learning Project with Neal Khosla (2019)
Designing a Machine Learning Project with Neal Khosla (2019)
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33 Lukas Beiwald on ML Tools and Experiment Management (2019)
Lukas Beiwald on ML Tools and Experiment Management (2019)
Weights & Biases
34 Building Machine Learning Teams with Josh Tobin (2019)
Building Machine Learning Teams with Josh Tobin (2019)
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35 Pieter Abeel on Potential Deep Learning Research Directions  (2019)
Pieter Abeel on Potential Deep Learning Research Directions (2019)
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36 Testing and Deployment of Deep Learning Models with Josh Tobin (2019)
Testing and Deployment of Deep Learning Models with Josh Tobin (2019)
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37 Five Lessons for Team-Oriented Research with Peter Welder (2019)
Five Lessons for Team-Oriented Research with Peter Welder (2019)
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38 Applied Deep Learning - Rosanne Liu on AI Research (2019)
Applied Deep Learning - Rosanne Liu on AI Research (2019)
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39 Making the Mid-career Leap from Urban Design to Deep Learning/Data Science
Making the Mid-career Leap from Urban Design to Deep Learning/Data Science
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40 Organizing ML projects โ€” W&B walkthrough (2020)
Organizing ML projects โ€” W&B walkthrough (2020)
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41 Brandon Rohrer โ€” Machine Learning in Production for Robots
Brandon Rohrer โ€” Machine Learning in Production for Robots
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โ–ถ Nicolas Koumchatzky โ€” Machine Learning in Production for Self-Driving Cars
Nicolas Koumchatzky โ€” Machine Learning in Production for Self-Driving Cars
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43 My experiments with Reinforcement Learning with Jariullah Safi
My experiments with Reinforcement Learning with Jariullah Safi
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44 Applications of Machine Learning to COVID-19 Research with Isaac Godfried
Applications of Machine Learning to COVID-19 Research with Isaac Godfried
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45 VDLS Lavanya Product Walkthrough
VDLS Lavanya Product Walkthrough
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46 Testing Machine Learning Models with Eric Schles
Testing Machine Learning Models with Eric Schles
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47 How Linear Algebra is not like Algebra with Charles Frye
How Linear Algebra is not like Algebra with Charles Frye
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48 Predicting Protein Structures using Deep Learning with Jonathan King
Predicting Protein Structures using Deep Learning with Jonathan King
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49 Rachael Tatman โ€” Conversational AI and Linguistics
Rachael Tatman โ€” Conversational AI and Linguistics
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50 Reformer by Han Lee
Reformer by Han Lee
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51 Sequence Models with Pujaa Rajan
Sequence Models with Pujaa Rajan
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52 GitHub Actions & Machine Learning Workflows with Hamel Husain
GitHub Actions & Machine Learning Workflows with Hamel Husain
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53 Look Mom, No Indices! Vector Calculus with the Frรฉchet Derivative by Charles Frye
Look Mom, No Indices! Vector Calculus with the Frรฉchet Derivative by Charles Frye
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54 Jack Clark โ€” Building Trustworthy AI Systems
Jack Clark โ€” Building Trustworthy AI Systems
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55 Surprising Utility of Surprise: Why ML Uses Negative Log Probabilities - Charles Frye
Surprising Utility of Surprise: Why ML Uses Negative Log Probabilities - Charles Frye
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56 Track your machine learning experiments locally, with W&B Local - Chris Van Pelt
Track your machine learning experiments locally, with W&B Local - Chris Van Pelt
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57 Antipatterns in open source research code with Jariullah Safi
Antipatterns in open source research code with Jariullah Safi
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58 Attention for time series forecasting & COVID predictions - Isaac Godfried
Attention for time series forecasting & COVID predictions - Isaac Godfried
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59 Made with ML - Goku Mohandas
Made with ML - Goku Mohandas
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60 Angela & Danielle โ€” Designing ML Models for Millions of Consumer Robots
Angela & Danielle โ€” Designing ML Models for Millions of Consumer Robots
Weights & Biases
The NEW wave of engineering ๐Ÿค”
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