Practical Deep Learning with Tensorflow 2 and Keras
Practical Deep Learning with Tensorflow 2 and Keras - Learn to apply machine learning to your problems. Follow a complete pipeline including pre-processing and training.
- Highest Rated
- Created by Mohammad Nauman
- English [Auto]
What you'll learn
- Be able to run deep learning models with Keras on Tensorflow 2 backend
- Stunning SUPPORT. I answer questions on the same day.
- Understand how to feed own data to deep learning models (i.e. handling the notorious shape mismatch issue)
- Understand Deep Learning with minimal of math
- Understand and code Convolutional Neural Networks as well as graph-based deep models involving residual connections and inception modules
- Get tips on how to use Google's GPUs to speed up your experiments for free
- Understand and use Keras' functional API to create models with multiple inputs and outputs
Description
**UPDATED: Now using Tensorflow 2. Please post in Q&A if you have any trouble. I'm here to help**
This 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 had 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 the very scratch. This is a very applied course, so we will immediately start coding even without installation! You will see a brief bit of absolutely essential theory and then we will get into the environment setup and explain almost all concepts through code. You will be using Keras and Tensorflow 2-- 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 Connections
Inception Module
All with only a few lines of code. All the examples used in the course comes with starter code which will get you started and remove the grunt effort. The course also includes finished codes for the examples run in the videos so that you can see the end product should you ever get stuck.
I provide unmatched support. All questions answered within 24 hours. Try me and see ... =]
What will I learn?
Basics of machine learning with minimal math
A specialized but optional mathematics heavy talk that explains all the inner working of machine learning and deep learning
Applying machine learning principles to solve a real-world case study that includes pre-processing and getting your data into the proper shape. (This case study comes from a real research work I have carried out recently)
Understand the often problematic shape issue that makes machine learning difficult to apply in real life
Learn the details of ConvNets and graph-based machine learning models such as Residual Connections and Google's Inception Module
Use Keras's functional API to create powerful models that will help you move way beyond the contents covered in this course
Learn how to use Google's GPUs to speed up your experiments for free
Tips on avoiding mistakes made by new-comers to the field and the best practices to get you to your goal with minimal effort
About the instructor:
Teacher and researcher by profession
PhD in Security and a PostDoc from Max Planck Institute for Software Systems, Germany
20+ years of working with computers and 17+ years of teaching experience
5+ years of working extensively with deep learning. I worked with almost all the modern tools as soon as they were released
Target Audience:
Anyone who:
Wants to learn machine learning (this course is a soft introduction)
Knows machine learning and wants to learn deep learning (this course focuses on deep learning)
Knows deep learning but needs help applying their knowledge in practice (this is a very applied course)
Comfortable with deep learning models but has trouble processing examples beyond the toy examples covered in typical courses (this course has a real-world case study and not just toy examples)
Is a researcher or educator working in machine learning and wants to move from theory to practice
What you need to know:
Python basics (installation, if, loops, lists) - Everything else will be covered in the course
No machine learning background is assumed (but we keep the theory to a minimum)
Who this course is for:
- Anyone who wants to learn machine learning (this course is a soft introduction)
- Anyone who knows machine learning and wants to learn deep learning (this course focuses on deep learning)
- Anyone who knows deep learning but needs help applying their knowledge in practice (this is a very applied course)
- Anyone who is comfortable with deep learning models but has trouble processing examples beyond the toy examples covered in typical courses (this course has a real-world case study and not just toy examples)
- Anyone who is a researcher or educator working in machine learning and wants to move from theory to practice
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