Machine Learning for Web Developers - Web ML

Machine Learning for Web Developers - Web ML

Google Developers via YouTube Direct link

4.5.2: Multi-layer perceptrons - Deep neural networks for non linear data

29 of 47

29 of 47

4.5.2: Multi-layer perceptrons - Deep neural networks for non linear data

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Machine Learning for Web Developers - Web ML

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  1. 1 1.1: Machine Learning for Web Devs & Creatives (Web ML) - Next gen web apps with TensorFlow.js
  2. 2 How web developers can use machine learning
  3. 3 1.3: Breakdown of WebML course
  4. 4 AI demystified: The difference between artificial intelligence, machine learning, and deep learning
  5. 5 2.2: Demystifying Machine Learning
  6. 6 Machine learning systems primer: How to train ML models
  7. 7 2.4: What is TensorFlow.js? (JavaScript + Machine Learning)
  8. 8 2.5: 3 ways to use Machine Learning on the web with TensorFlow.js
  9. 9 Using pre-trained models in TensorFlow | Machine Learning for web developers
  10. 10 3.2: Selecting an ML model to use
  11. 11 3.3.1: Make your own web based smart camera in JS - Part 1
  12. 12 3.3.2: Make your own web based smart camera in JS - Part 2
  13. 13 3.3.3: Build a web based smart camera in JavaScript - Part 3
  14. 14 3.3.4: Make your own web based smart camera in JS - Part 4
  15. 15 3.3.5: Make your own web based smart camera in JS - Part 5
  16. 16 Tutorial: Make a web-based smart camera with the COCO-SSD machine learning model in TensorFlow
  17. 17 TensorFlow fundamentals: What are tensors in TensorFlow.js?
  18. 18 Tutorial: How to use raw tensorFlow.js pre-trained models in browser
  19. 19 Exploring Tensorflow Hub: Using pre-trained web ML models
  20. 20 3.6.2: Using advanced pre-trained Web ML models - Part 2: Use MoveNet for pose estimation in browser
  21. 21 4.1: Rolling your own Web ML models from a blank canvas
  22. 22 4.2: Gathering, refining, and using data effectively for ML model datasets
  23. 23 4.3.1: What's a neuron?
  24. 24 ML tutorial: How to train neurons
  25. 25 4.4.1: Implement a neuron for linear regression - Training data and outliers
  26. 26 4.4.2: Implement a neuron for linear regression - Importing and normalizing training data
  27. 27 TensorFlow.js tutorial: A neuron implementation for linear regression
  28. 28 4.5.1: Multi-layer perceptrons - The limits of a single neuron
  29. 29 4.5.2: Multi-layer perceptrons - Deep neural networks for non linear data
  30. 30 ML tutorial: How to solve classification problems with TensorFlow and multi-layer perceptrons
  31. 31 4.6.2: Multi-layer perceptrons for classification - Implementing a classifier in TensorFlow.js
  32. 32 4.7.1: Beyond perceptrons: Convolutional Neural Network (CNNs) in the web browser
  33. 33 4.7.2: Beyond perceptrons: Convolutional Neural Network (CNNs) - Implementation with TensorFlow.js
  34. 34 5.1: Transfer learning: Retraining existing models in the web browser with TensorFlow.js
  35. 35 Recognize custom objects with TensorFlow.js.
  36. 36 5.3: Using layers models for transfer learning
  37. 37 6.1: Using models from Python in the web browser with TensorFlow.js
  38. 38 6.2: Converting Python saved models with the TensorFlow.js command line converter
  39. 39 6.3: Natural language processing (NLP) - understanding written text
  40. 40 6.4.1: Using a natural language model: Comment spam detection - setting up the web scaffolding
  41. 41 6.4.2: Using a natural language model: Comment spam detection - loading a pretrained NLP model
  42. 42 6.4.3: Using a natural language model: Comment spam detection - word tokenization
  43. 43 6.4.4: Using a natural language model: Comment spam detection - web sockets
  44. 44 6.5: Dealing with edge cases in spam detection
  45. 45 6.6: Using a retrained spam detection model in the web browser with TensorFlow.js
  46. 46 7.1: Machine Learning as a Web Engineer - putting knowledge into practice
  47. 47 Advanced machine learning for web developers: Autoencoders, GANs, RNNs and more

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