Chapters (35)
- 0:00Introduction
- 1:21Course outline
- 5:11Who’s this course for
- 5:35Why learn TensorFlow
- 6:25We will be using an IDE and not notebooks
- 7:25Visual Studio Code (how to download and install it)
- 10:50Miniconda - how to install it
- 13:23Miniconda - why we need it
- 17:24How are we going to use conda virtual environments in VS Code?
- 21:20Installing Tensorflow 2 (CPU version)
- 29:56Installing Tensorflow 2 (GPU version)
- 43:34What do we want to achieve?
- 45:26Exploring MNIST dataset
- 1:05:54Tensorflow layers
- 1:09:44Building a neural network the sequential way
- 1:27:22Compiling the model and fitting the data
- 2:00:52Building a neural network the functional way
- 2:08:33Building a neural network the Model Class way
- 2:14:31Things we should add
- 2:18:29Restructuring our code for better readability
- 2:23:11First part summary
- 2:24:12What we want to achieve
- 2:25:23Downloading and exploring the dataset
- 2:34:20Preparing train and validation sets
- 2:53:37Preparing the test set
- 3:10:17Building a neural network the functional way
- 3:22:12Creating data generators
- 3:31:39Instantiating the generators
- 3:35:37Compiling the model and fitting the data
- 3:40:34Adding callbacks
- 3:52:08Evaluating the model
- 3:58:04Potential improvements
- 4:08:49Running prediction on single images
- 4:23:05Second part summary
- 4:23:56Where you can find me if you have questions
Show the creator's full description
Learn how to use TensorFlow 2 and Python for computer vision in this complete course. The course shows you how to create two computer vision projects. The first involves an image classification model with a prepared dataset. The second is a more real-world problem where you will have to clean and prepare a dataset before using it.
💻 Code: https://github.com/sniper0110/IntroductionToTensorflow2
✏️ Nour Islam Mokhtari created this course. Connect with him here: https://withkoji.com/@Nour_Islam
🔗 Get Nour's free Machine Learning job-ready checklist: https://www.aifee.co/free-resources
❤️ Try interactive Python courses we love, right in your browser: https://scrimba.com/freeCodeCamp-Python (Made possible by a grant from our friends at Scrimba)
⭐️ Course Contents ⭐️
⌨️ (0:00:00) Introduction
⌨️ (0:01:21) Course outline
⌨️ (0:05:11) Who’s this course for
⌨️ (0:05:35) Why learn TensorFlow
⌨️ (0:06:25) We will be using an IDE and not notebooks
⌨️ (0:07:25) Visual Studio Code (how to download and install it)
⌨️ (0:10:50) Miniconda - how to install it
⌨️ (0:13:23) Miniconda - why we need it
⌨️ (0:17:24) How are we going to use conda virtual environments in VS Code?
⌨️ (0:21:20) Installing Tensorflow 2 (CPU version)
⌨️ (0:29:56) Installing Tensorflow 2 (GPU version)
⌨️ (0:43:34) What do we want to achieve?
⌨️ (0:45:26) Exploring MNIST dataset
⌨️ (1:05:54) Tensorflow layers
⌨️ (1:09:44) Building a neural network the sequential way
⌨️ (1:27:22) Compiling the model and fitting the data
⌨️ (2:00:52) Building a neural network the functional way
⌨️ (2:08:33) Building a neural network the Model Class way
⌨️ (2:14:31) Things we should add
⌨️ (2:18:29) Restructuring our code for better readability
⌨️ (2:23:11) First part summary
⌨️ (2:24:12) What we want to achieve
⌨️ (2:25:23) Downloading and exploring the dataset
⌨️ (2:34:20) Preparing train and validation sets
⌨️ (2:53:37) Preparing the test set
⌨️ (3:10:17) Building a neural network the functional way
⌨️ (3:22:12) Creating data generators
⌨️ (3:31:39) Instantiating the generators
⌨️ (3:35:37) Compiling the model and fitting the data
⌨️ (3:40:34) Adding callbacks
⌨️ (3:52:08) Evaluating the model
⌨️ (3:58:04) Potential improvements
⌨️ (4:08:49) Running prediction on single images
⌨️ (4:23:05) Second part summary
⌨️ (4:23:56) Where you can find me if you have questions
--
🎉 Thanks to our Champion and Sponsor supporters:
👾 Wong Voon jinq
👾 hexploitation
👾 Katia Moran
👾 BlckPhantom
👾 Nick Raker
👾 Otis Morgan
👾 DeezMaster
👾 Treehouse
👾 AppWrite
--
Learn to code for free and get a developer job: https://www.freecodecamp.org
Read hundreds of articles on programming: https://freecodecamp.org/news
Description and video by freeCodeCamp.org. This page is an independent companion view; the video is embedded from YouTube.