Master Deep Learning using Case Studies : Beginner-Advance
Master Deep Learning using Case Studies : Beginner-Advance, available at $54.99, has an average rating of 4.4, with 243 lectures, based on 35 reviews, and has 400 subscribers.
You will learn about Master Deep Learning on Python Master Machine Learning on Python Learn to use MatplotLib for Python Plotting Learn to use Numpy and Pandas for Data Analysis Learn to use Seaborn for Statistical Plots Learn All the Mathmatics Required to understand Deep Learning Algorithms Implement Deep Learning Algorithms along with Mathematic intutions Real world projects of Deep Learning Learning End to End Data Science Solutions All Advanced Level Deep Learning Algorithms and Techniques like Regularisations , Dropout and many more included Learn All Statistical concepts To Make You Ninza in Deep Learning Real World Case Studies Keras Transfer Learning Artifical Neural Network Convolution Neural Network Recurrent Neural Network Feed Forward Network Backpropogation This course is ideal for individuals who are This course is meant for anyone who wants to become a Data Scientist , Deep Learning Engineers It is particularly useful for This course is meant for anyone who wants to become a Data Scientist , Deep Learning Engineers.
Enroll now: Master Deep Learning using Case Studies : Beginner-Advance
Summary
Title: Master Deep Learning using Case Studies : Beginner-Advance
Price: $54.99
Average Rating: 4.4
Number of Lectures: 243
Number of Published Lectures: 243
Number of Curriculum Items: 243
Number of Published Curriculum Objects: 243
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- Master Deep Learning on Python
- Master Machine Learning on Python
- Learn to use MatplotLib for Python Plotting
- Learn to use Numpy and Pandas for Data Analysis
- Learn to use Seaborn for Statistical Plots
- Learn All the Mathmatics Required to understand Deep Learning Algorithms
- Implement Deep Learning Algorithms along with Mathematic intutions
- Real world projects of Deep Learning
- Learning End to End Data Science Solutions
- All Advanced Level Deep Learning Algorithms and Techniques like Regularisations , Dropout and many more included
- Learn All Statistical concepts To Make You Ninza in Deep Learning
- Real World Case Studies
- Keras
- Transfer Learning
- Artifical Neural Network
- Convolution Neural Network
- Recurrent Neural Network
- Feed Forward Network
- Backpropogation
Who Should Attend
- This course is meant for anyone who wants to become a Data Scientist , Deep Learning Engineers
Target Audiences
- This course is meant for anyone who wants to become a Data Scientist , Deep Learning Engineers
Wants to become a good Data Scientist? Then this is a right course for you.
This course has been designed by IIT professionals who have mastered in Mathematics and Data Science. We will be covering complex theory, algorithms and coding libraries in a very simple way which can be easily grasped by any beginner as well.
We will walk you step-by-step into the World of Deep Learning. With every tutorial you will develop new skills and improve your understanding towards the challenging yet lucrative sub-field of Data Science from beginner to advance level.
We have solved few real world projects as well during this course and have provided complete solutions so that students can easily implement what have been taught.
We have covered following topics in detail in this course:
1. Introduction
2. Artificial Neural Network
3. Feed forward Network
4. Backpropogation
5. Regularisation
6. Convolution Neural Network
7. Practical on CNN
8. Real world project1
9. Real world project2
10 Transfer Learning
11. Recurrent Neural Networks
12. Advanced RNN
13. Project(Help NLP)
14. Generate Automatic Programming code
15. Pre- req : Python, Machine Learning
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction
Lecture 2: History of Deep Learning
Lecture 3: Perceptron
Lecture 4: Multi level perceptron
Lecture 5: Neural network playground
Lecture 6: Representations
Lecture 7: Training Neural network part1
Lecture 8: Training Neural network part2
Lecture 9: Training Neural network part3
Lecture 10: Activation Function
Chapter 2: Artificial Neural Networks
Lecture 1: Introduction
Lecture 2: Deep Learning
Lecture 3: Understanding human brain
Lecture 4: Perceptron
Lecture 5: Perceptron for classifier
Lecture 6: Perceptron in depth
Lecture 7: Homogeneous co-ordinate
Lecture 8: Example for perceptron
Lecture 9: Multi classifier
Lecture 10: Neural network
Lecture 11: Input layer
Lecture 12: Output layer
Lecture 13: sigmoid function
Lecture 14: Understanding MNIST
Lecture 15: Assumptions in Neural Network
Lecture 16: Training in neural network
Lecture 17: Understanding notations
Lecture 18: Activation functions
Chapter 3: Feed forward network
Lecture 1: Introduction
Lecture 2: Online offline mode
Lecture 3: bidirectional RNN
Lecture 4: Understanding dimensions
Lecture 5: Pseudocode
Lecture 6: Pseudocode for batch
Lecture 7: Vectorised methods
Chapter 4: Backpropogation
Lecture 1: Introduction
Lecture 2: Introducing loss function
Lecture 3: back propogation training part1
Lecture 4: back propogation training part2
Lecture 5: back propogation training part3
Lecture 6: back propogation training part4
Lecture 7: back propogation training part5
Lecture 8: Sigmoid function
Lecture 9: back propogation training part6
Lecture 10: back propogation training part7
Lecture 11: back propogation training part8
Lecture 12: back propogation training part9
Lecture 13: back propogation training part10
Lecture 14: Pseudocode
Lecture 15: SGD
Lecture 16: Finding global minima
Lecture 17: Training for batches
Chapter 5: Regularisation
Lecture 1: Introduction to regularisation
Lecture 2: Dropouts part1
Lecture 3: Dropouts part2
Lecture 4: Batch normalisation part1
Lecture 5: Batch normalisation part2
Lecture 6: Batch normalisation part3
Lecture 7: Introducing Tensorflow
Lecture 8: Introducing keras
Chapter 6: Convolution Neural Network
Lecture 1: Introduction
Lecture 2: Applications for CNN
Lecture 3: Idea behind CNN part1
Lecture 4: Idea behind CNN part2
Lecture 5: Images
Lecture 6: Video
Lecture 7: Convolution part1
Lecture 8: Convolution part2
Lecture 9: stride and padding
Lecture 10: padding
Lecture 11: formulas
Lecture 12: weight and bias
Lecture 13: feature map
Lecture 14: pooling
Lecture 15: combining network
Chapter 7: Practical on CNN
Lecture 1: Introduction
Lecture 2: Introducing VGG16
Lecture 3: Case Study Part1
Lecture 4: Case Study Part2
Lecture 5: Case Study Part3
Lecture 6: Case Study Part4
Lecture 7: Case Study Part5
Chapter 8: Real World Project (Project1: Playing With Real World Nat)
Lecture 1: Introduction
Lecture 2: Case Study Part1
Lecture 3: Case Study Part2
Lecture 4: Case Study Part3
Lecture 5: Case Study Part4
Lecture 6: Case Study Part5
Lecture 7: Case Study Part6
Lecture 8: Case Study Part7
Lecture 9: Case Study Part8
Lecture 10: Case Study Part9
Instructors
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Geekshub Pvt Ltd
BigData and Analytics
Rating Distribution
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- 2 stars: 0 votes
- 3 stars: 5 votes
- 4 stars: 10 votes
- 5 stars: 20 votes
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