📚 This video breaks down high-level concepts of artificial intelligence, machine learning, and deep learning.
💻 You will learn how to practically apply these techniques using the tensorflow.js library and models in the browser.
🔧 The knowledge gained can be used to enhance web apps, such as classifying comment text and using sensors for real-time alerts.
📚 Chapter 2 introduces common terms, background of tensorflow.js, and different ways of leveraging machine learning.
🔍 Chapter 2 sets up the foundation for deeper learning in the course.
💡 Chapter 3 focuses on using pre-made machine learning models.
💡 WebML course introduces easy-to-use machine learning models in JavaScript.
🌐 Learn about the concept of tensors and how to load tensorflow.js models.
🖌️ Chapter 4 focuses on creating simple models like linear regression and perceptrons.
🔬 Explore more advanced techniques like convolutional neural networks for image classification.
🎓 Chapter 5: Transfer learning is the art of using an existing model to learn something new and save time and money.
💻 Chapter 6: Reusing machine learning models from Python in JavaScript to run them in the browser.
🔮 Chapter 7: Exploring future model architectures for inspiration.
🎓 The video is about a breakdown of the WebML course.
🧠 The video provides further resources to investigate and ways to get involved in the tensorflow.js community.
💻📚🔍 By applying the knowledge learned, viewers can become productive in machine learning and JavaScript.
E105: Tech culture wars: Elon vs. SBF, Sabotaging Republicans with Trump
Executive function skills are the roots of success | Stephanie Carlson | TEDxMinneapolis
Razões Trigonométricas (seno, cosseno e tangente) - Trigonometria no Triângulo Retângulo
Breaking 24 Fitness Laws in 24 Hours!
LA NOTA MÁS DULCE - DOCUMENTAL
GCSE Science Revision - Diffusion of Gases