W&B Deep Learning Salon - SafeLife & DeepForm
Skills:
LLM Foundations80%Reading ML Papers70%Research Methods70%Unsupervised Learning60%ML Pipelines60%
Looking for machine learning projects to
๐ต explore new topics & find amazing collaborators
๐ต improve your skills & portfolio
๐ต make a concrete positive impact on campaign finance, AI safety, climate change, & beyond
๐ all of the above?
Check out W&B Benchmarks!
On this salon we have the creators of two public benchmarks in AI for good, including Slack member Carroll Wainwright, who co-created SafeLife v1.2 -- a benchmark for safe, side-effect free RL -- with Peter Eckersley, and Jonathan Stray, who created DeepForm, a benchmark in form extraction focused on political ad expenditure disclโฆ
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0. What is machine learning?
Weights & Biases
1. Build Your First Machine Learning Model
Weights & Biases
Intro to ML: Course Overview
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2. Multi-Layer Perceptrons
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3. Convolutional Neural Networks
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Weights & Biases at OpenAI
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Why Experiment Tracking is Crucial to OpenAI
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4. Autoencoders
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5. Sentiment Analysis
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6. Recurrent Neural Networks [RNNs]
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7. Text Generation using LSTMs and GRUs
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8. Text Classification Using Convolutional Neural Networks
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9. Hybrid LSTMs [Long Short-Term Memory]
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Toyota Research Institute on Experiment Tracking with Weights & Biases
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Weights and Biases - Developer Tools for Deep Learning
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Introducing Weights & Biases
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10. Seq2Seq Models
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11. Transfer Learning for Domain-Specific Image Classification with Small Datasets
Weights & Biases
12. One-shot learning for teaching neural networks to classify objects never seen before
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13. Speech Recognition with Convolutional Neural Networks in Keras/TensorFlow
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14. Data Augmentation | Keras
Weights & Biases
15. Batch Size and Learning Rate in CNNs
Weights & Biases
Applied Deep Learning Fellowship Overview and Project Selection with Josh Tobin (2019)
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Grading Rubric for AI Applications with Sergey Karayev (2019)
Weights & Biases
16. Video Frame Prediction using CNNs and LSTMs (2019)
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Image to LaTeX - Applied Deep Learning Fellowship (2019)
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17. Build and Deploy an Emotion Classifier (2019)
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Applied Deep Learning - Data Management with Josh Tobin (2019)
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Snorkel: Programming Training Data with Paroma Varma of Stanford University (2019)
Weights & Biases
Applied Deep Learning - Troubleshooting and Debugging with Josh Tobin (2019)
Weights & Biases
Troubleshooting and Iterating ML Models with Lee Redden (2019)
Weights & Biases
Designing a Machine Learning Project with Neal Khosla (2019)
Weights & Biases
Lukas Beiwald on ML Tools and Experiment Management (2019)
Weights & Biases
Building Machine Learning Teams with Josh Tobin (2019)
Weights & Biases
Pieter Abeel on Potential Deep Learning Research Directions (2019)
Weights & Biases
Testing and Deployment of Deep Learning Models with Josh Tobin (2019)
Weights & Biases
Five Lessons for Team-Oriented Research with Peter Welder (2019)
Weights & Biases
Applied Deep Learning - Rosanne Liu on AI Research (2019)
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Making the Mid-career Leap from Urban Design to Deep Learning/Data Science
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Organizing ML projects โ W&B walkthrough (2020)
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Brandon Rohrer โ Machine Learning in Production for Robots
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Nicolas Koumchatzky โ Machine Learning in Production for Self-Driving Cars
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My experiments with Reinforcement Learning with Jariullah Safi
Weights & Biases
Applications of Machine Learning to COVID-19 Research with Isaac Godfried
Weights & Biases
Testing Machine Learning Models with Eric Schles
Weights & Biases
How Linear Algebra is not like Algebra with Charles Frye
Weights & Biases
Predicting Protein Structures using Deep Learning with Jonathan King
Weights & Biases
Rachael Tatman โ Conversational AI and Linguistics
Weights & Biases
Reformer by Han Lee
Weights & Biases
Sequence Models with Pujaa Rajan
Weights & Biases
GitHub Actions & Machine Learning Workflows with Hamel Husain
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Look Mom, No Indices! Vector Calculus with the Frรฉchet Derivative by Charles Frye
Weights & Biases
Jack Clark โ Building Trustworthy AI Systems
Weights & Biases
Surprising Utility of Surprise: Why ML Uses Negative Log Probabilities - Charles Frye
Weights & Biases
Track your machine learning experiments locally, with W&B Local - Chris Van Pelt
Weights & Biases
Antipatterns in open source research code with Jariullah Safi
Weights & Biases
Attention for time series forecasting & COVID predictions - Isaac Godfried
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Made with ML - Goku Mohandas
Weights & Biases
Angela & Danielle โ Designing ML Models for Millions of Consumer Robots
Weights & Biases
Deep Learning Salon by Weights & Biases
Weights & Biases
โก
AI Lesson Summary
โฆ V3 skills
โ Mixed
The video discusses the W&B Deep Learning Salon, focusing on SafeLife and DeepForm, and explores various topics, including AI safety, reinforcement learning, and data extraction. The salon demonstrates the use of tools such as Weights and Biases, Kaggle, and OCR, and provides a comprehensive overview of the concepts and techniques involved.
Key Takeaways
- Build SafeLife environments using Conway's Game of Life
- Implement DeepForm benchmarks for form extraction
- Apply unsupervised learning techniques to form extraction
- Analyze data from SafeLife environments
- Design experiments for AI safety research
- Collect and analyze data for form extraction
๐ก The video highlights the importance of AI safety and the need for benchmarks and environments that can test and evaluate the safety of reinforcement learning agents. The use of tools such as Weights and Biases and OCR can facilitate the development of such benchmarks and environments.
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