Convolutional Neural Networks in TensorFlow
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Convolutional Neural Networks in TensorFlow
This course is part of DeepLearning.AI TensorFlow Developer Professional Certificate
Instructor: Laurence Moroney
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What you'll learn
Handle real-world image data
Plot loss and accuracy
Explore strategies to prevent overfitting, including augmentation and dropout
Learn transfer learning and how learned features can be extracted from models
Skills you'll gain
Tools you'll learn
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4 assignments
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There are 4 modules in this course
If you are a software developer who wants to build scalable AI-powered algorithms, you need to understand how to use the tools to build them. This course is part of the DeepLearning.AI TensorFlow Developer Specialization and will teach you best practices for using TensorFlow, a popular open-source framework for machine learning.
In Course 2 of the DeepLearning.AI TensorFlow Developer Specialization, you will learn advanced techniques to improve the computer vision model you built in Course 1. You will explore how to work with real-world images in different shapes and sizes, visualize the journey of an image through convolutions to understand how a computer βseesβ information, plot loss and accuracy, and explore strategies to prevent overfitting, including augmentation and dropout. Finally, Course 2 will introduce you to transfer learning and how learned features can be extracted from models. The Machine Learning course and Deep Learning Specialization from Andrew Ng teach the most important and foundational principles of Machine Learning and Deep Learning. This new deeplearning.ai TensorFlow Specialization teaches you how to use TensorFlow to implement those principles so that you can start building and applying scalable models to real-world problems. To develop a deeper understanding of how neural networks work, we recommend that you take the Deep Learning Specialization.
In the first course in this specialization, you had an introduction to TensorFlow, and how, with its high level APIs you could do basic image classification, and you learned a little bit about Convolutional Neural Networks (ConvNets). In this course you'll go deeper into using ConvNets with real-world data, and learn about techniques that you can use to improve your ConvNet performance, particularly when doing image classification! In Week 1, this week, you'll get started by looking at a much larger dataset than you've been using thus far: The Cats and Dogs dataset which had been a Kaggle Challenge in image classification!
What's included
8 videos8 readings1 assignment1 programming assignment1 ungraded lab
8 videosβ’Total 16 minutes
- Introduction: A conversation with Andrew Ngβ’4 minutes
- A conversation with Andrew Ngβ’1 minute
- Training with the cats vs. dogs datasetβ’3 minutes
- Working through the notebookβ’4 minutes
- Fixing through croppingβ’1 minute
- Visualizing the effect of the convolutionsβ’1 minute
- Looking at accuracy and lossβ’1 minute
- Week 1 Wrap upβ’1 minute
8 readingsβ’Total 23 minutes
- Welcome to the course!β’1 minute
- The cats vs dogs datasetβ’10 minutes
- About the notebooks in this courseβ’5 minutes
- What have we seen so far?β’0 minutes
- Join the DeepLearning.AI Forum to ask questions, get support, or share amazing ideas!β’2 minutes
- Lecture Notes Week 1β’1 minute
- Assignment Troubleshooting Tipsβ’2 minutes
- (Optional) Downloading your Notebook and Refreshing your Workspaceβ’2 minutes
1 assignmentβ’Total 20 minutes
- Week 1 Quizβ’20 minutes
1 programming assignmentβ’Total 60 minutes
- Cats vs Dogsβ’60 minutes
1 ungraded labβ’Total 60 minutes
- Looking at the notebook (Lab 1)β’60 minutes
You've heard the term overfitting a number of times to this point. Overfitting is simply the concept of being over specialized in training -- namely that your model is very good at classifying what it is trained for, but not so good at classifying things that it hasn't seen. In order to generalize your model more effectively, you will of course need a greater breadth of samples to train it on. That's not always possible, but a nice potential shortcut to this is Image Augmentation, where you tweak the training set to potentially increase the diversity of subjects it covers. You'll learn all about that this week!
What's included
7 videos4 readings1 assignment1 programming assignment2 ungraded labs
7 videosβ’Total 13 minutes
- A conversation with Andrew Ngβ’2 minutes
- Introducing augmentationβ’3 minutes
- Coding augmentation with the Layers APIβ’3 minutes
- Demonstrating overfitting in cats vs. dogsβ’1 minute
- Adding augmentation to cats vs. dogsβ’2 minutes
- Exploring augmentation with horses vs. humansβ’1 minute
- Week 2 Wrap upβ’1 minute
4 readingsβ’Total 21 minutes
- Image Augmentationβ’10 minutes
- Start Coding...β’10 minutes
- What have you seen so far?β’0 minutes
- Lecture Notes Week 2β’1 minute
1 assignmentβ’Total 30 minutes
- Week 2 Quizβ’30 minutes
1 programming assignmentβ’Total 180 minutes
- Cats vs Dogs with Data Augmentationβ’180 minutes
2 ungraded labsβ’Total 90 minutes
- Looking at the notebook (Lab 1)β’60 minutes
- Image Augmentation with Horses vs Humans! (Lab 2)β’30 minutes
Building models for yourself is great, and can be very powerful. But, as you've seen, you can be limited by the data you have on hand. Not everybody has access to massive datasets or the compute power that's needed to train them effectively. Transfer learning can help solve this -- where people with models trained on large datasets train them, so that you can either use them directly, or, you can use the features that they have learned and apply them to your scenario. This is Transfer learning, and you'll look into that this week!
What's included
7 videos4 readings1 assignment1 programming assignment1 ungraded lab
7 videosβ’Total 13 minutes
- A conversation with Andrew Ngβ’4 minutes
- Understanding transfer learning: the conceptsβ’2 minutes
- Coding transfer learning from the inception modelβ’1 minute
- Coding your own model with transferred featuresβ’2 minutes
- Exploring dropoutsβ’2 minutes
- Exploring Transfer Learning with Inceptionβ’2 minutes
- Week 3 Wrap upβ’1 minute
4 readingsβ’Total 11 minutes
- Adding your DNNβ’0 minutes
- Using dropout!β’10 minutes
- What have you seen so far?β’0 minutes
- Lecture Notes Week 3β’1 minute
1 assignmentβ’Total 30 minutes
- Week 3 Quizβ’30 minutes
1 programming assignmentβ’Total 120 minutes
- Transfer Learning - Horses or Humansβ’120 minutes
1 ungraded labβ’Total 60 minutes
- Applying Transfer Learning to Cats v Dogs (Lab 1)β’60 minutes
You've come a long way, Congratulations! One more thing to do before we move off of ConvNets to the next module, and that's to go beyond binary classification. Each of the examples you've done so far involved classifying one thing or another -- horse or human, cat or dog. When moving beyond binary into Categorical classification there are some coding considerations you need to take into account. You'll look at them this week!
What's included
6 videos7 readings1 assignment1 programming assignment1 ungraded lab
6 videosβ’Total 11 minutes
- A conversation with Andrew Ngβ’3 minutes
- Moving from binary to multi-class classificationβ’1 minute
- Explore multi-class with Rock Paper Scissors datasetβ’2 minutes
- Train a classifier with Rock Paper Scissorsβ’2 minutes
- Test the Rock Paper Scissors classifierβ’2 minutes
- A conversation with Andrew Ngβ’1 minute
7 readingsβ’Total 10 minutes
- Introducing the Rock-Paper-Scissors datasetβ’5 minutes
- Try testing the classifierβ’0 minutes
- What have you seen so far?β’1 minute
- Lecture Notes Week 4β’1 minute
- [IMPORTANT] Reminder about end of access to Lab Notebooksβ’2 minutes
- Wrap upβ’0 minutes
- Acknowledgmentsβ’1 minute
1 assignmentβ’Total 30 minutes
- Week 4 Quizβ’30 minutes
1 programming assignmentβ’Total 120 minutes
- Classification: Beyond two classes β’120 minutes
1 ungraded labβ’Total 60 minutes
- Check out the code! (Lab 1)β’60 minutes
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Reviewed on Jun 4, 2020
Laurence Moroney is the best. Before taking up the course, i didnt know anything about the AI or ML or Tensorflow. The concepts were explained in such a manner that anyone can learn Tensorflow.
Reviewed on Oct 5, 2020
Excellent and detailed on how to create a convolutional neural network using TensorFlow as well as explaining how to solve problems such as low accuracy, overfitting and even improving the dataset.
Reviewed on Apr 13, 2020
Nice course. Even though I have previously done some projects using CNN and multi-class classification still this course let me to have an insight to how these APIs work. Keep Up The Good Work!!!!!!
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