->
Oreilly - Practical Deep Learning with Keras and Python - 9781838554729
Oreilly - Practical Deep Learning with Keras and Python
by Dr. Mohammad Nauman | Released December 2018 | ISBN: 9781838554729


Learn to apply machine learning to your problems. Follow a complete pipeline including pre-processing and training.About This VideoRun deep learning models with Keras on a TensorFlow backendUnderstand how to feed your own data to deep learning models (that is, handling the notorious shape mismatch issue)Understand Deep Learning with minimal mathUnderstand and code Convolutional Neural Networks as well as graph-based deep models involving residual connections and inception modulesUnderstand and use Keras' functional API to create models with multiple inputs and outputsIn DetailThis course is for you if you are new to Machine Learning but want to learn it without all the math. This course is also for you if you have tried to use a machine learning course but could never figure out how to use it to solve your own problems.In this course, we will start from scratch. So we will immediately start coding even before installation! You will see a brief bit of absolutely essential theory and then we will get into environment setup and explain almost all concepts through code. You will be using Keras, one of the easiest and most powerful machine learning tools out there.You will start with a basic model of how machines learn and then move on to higher models, such as:Convolutional Neural Networks Residual connectionsGoogle's Inception ModuleAll this with only a few lines of code. All the examples used in the course come with starter code which will get you started and without the hard work.All the code files are placed at https://github.com/PacktPublishing/-Practical-Deep-Learning-with-Keras-and-PythonDownloading the example code for this course: You can download the example code files for all Packt video courses you have purchased from your account at http://www.PacktPub.com. If you purchased this course elsewhere, you can visit http://www.PacktPub.com/support and register to have the files e-mailed directly to you. Show and hide more
  1. Chapter 1 : Introduction
    • Welcome and Introduction 00:03:00
    • About the Instructor 00:01:27
    • Dive into Machine Learning 00:13:10
    • Making Predictions 00:07:02
  2. Chapter 2 : A Bit of Theory
    • Machine Learning Pipeline 00:09:14
    • Regression 00:13:01
    • Binary and Multi-class Classification 00:14:30
    • Recap and a Link to More Theory 00:02:43
  3. Chapter 3 : Installation and Setup
    • Environment setup for Windows (and some issues with it) 00:06:55
    • Environment setup for Mac and Linux 00:03:42
  4. Chapter 4 : Say Hi to Keras
    • Data Preparation 00:10:11
    • Training and Testing 00:10:32
  5. Chapter 5 : Real World Case Study: Predicting Protein Functions
    • Problem Description and Data View 00:08:33
    • Pre-processing the Data 00:15:52
    • Loading Data and Getting the Shapes Right 00:07:45
    • Train, Test Split 00:03:12
    • Shapes in Depth (or how not to have headaches for days) 00:04:33
    • Sequential Model 00:08:58
    • Functional API 00:05:25
  6. Chapter 6 : Convolutional Neural Networks (CNN)
    • Basics and Rationale 00:10:13
    • CNN in Keras (or why Keras is better than your ML tool) 00:08:31
    • Pooling (and why it's not that important) 00:04:25
    • Dropout (and why you should always consider it) 00:03:51
  7. Chapter 7 : Graph-based Models
    • Functional API for CNN 00:04:28
    • Inception Module 00:09:36
    • Residual Connections 00:05:09
  8. Chapter 8 : Finishing Touches
    • Saving and Loading Model Weights 00:06:30
    • Parting Words 00:03:44
  9. Show and hide more

    Oreilly - Practical Deep Learning with Keras and Python


 TO MAC USERS: If RAR password doesn't work, use this archive program: 

RAR Expander 0.8.5 Beta 4  and extract password protected files without error.


 TO WIN USERS: If RAR password doesn't work, use this archive program: 

Latest Winrar  and extract password protected files without error.


 Coktum   |  

Information
Members of Guests cannot leave comments.




rss