4.6  88 reviews on Udemy

Deep Learning for Beginners in Python: Work On 12+ Projects

Work On 12+ Projects, Deep Learning Python, TensorFlow 2.0, Neural Networks, NLP, Data Science, Machine Learning, More !
Course from Udemy
 729 students enrolled
 en
Complete Understanding of Deep Learning from the Scratch
Building the Artificial Neural Networks (ANNs) from the Scratch
Artificial Neural Networks (ANNs) for Binary Data Classification
Building Convolutional Neural Networks from the Scratch
Convolutional Neural Network for Image Classification
Convolutional Neural Network for Digit Recognition
Breast Cancer Detection with Convolutional Neural Networks
Convolutional Neural Networks for Predictive Analysis
Convolutional Neural Networks for Fraud Detection
Building the Recurrent Neural Networks (ANNs) from Scratch
LSTM and GRU
Review Classification with LSTM and GRU
LSTM and GRU for Image Classification
Prediction of Google Stock Price with RNN and LSTM
Transfer Learning
Natural Language Processing
Crash Course on Numpy (Data Analysis)
Crash Course on Pandas (Data Analysis)
Crash course on Matplotlib (Data Visualization)

The Artificial Intelligence and Deep Learning are growing exponentially in today's world. There are multiple application of AI and Deep Learning like Self Driving Cars, Chat-bots, Image Recognition, Virtual Assistance, ALEXA, so on...

With this course you will understand the complexities of Deep Learning in easy way, as well as you will have A Complete Understanding of Googles TensorFlow 2.0 Framework

TensorFlow 2.0 Framework has amazing features that simplify the Model Development, Maintenance, Processes and Performance

In TensorFlow 2.0 you can start the coding with Zero Installation, whether you’re an expert or a beginner, in this course you will learn an end-to-end implementation of Deep Learning Algorithms


List of the Projects that you will work on,

Part 1: Artificial Neural Networks (ANNs)

Project 1: Multiclass image classification with ANN

Project 2: Binary Data Classification with ANN

Part 2: Convolutional Neural Networks (CNNs)

Project 3: Object Recognition in Images with CNN

Project 4: Binary Image Classification with CNN

Project 5: Digit Recognition with CNN

Project 6: Breast Cancer Detection with CNN

Project 7: Predicting the Bank Customer Satisfaction

Project 8: Credit Card Fraud Detection with CNN

Part 3: Recurrent Neural Networks (RNNs)

Project 9: IMDB Review Classification with RNN - LSTM

Project 10: Multiclass Image Classification with RNN - LSTM

Project 11: Google Stock Price Prediction with RNN and LSTM

Part 4: Transfer Learning

Part 5: Natural Language Processing

Basics of Natural Language Processing

Project 12: Movie Review Classifivation with NLTK

Part 6: Data Analysis and Data Visualization

Crash Course on Numpy (Data Analysis)

Crash Course on Pandas (Data Analysis)

Crash course on Matplotlib (Data Visualization)


With this course you will learn,

1) To built the Neural Networks from the scratch

2) You will have a complete understanding of  Artificial Neural Networks, Convolutional Neural Networks and Recurrent Neural Networks

3) You will learn to built the neural networks with LSTM and GRU

4) Hands On Transfer Learning

5) Learn Natural Language Processing by doing a text classifiation project

6) Improve your skills in Data Analysis with Numpy, Pandas and Data Visualization with Matplotlib


So what are you waiting for, Enroll Now and understand Deep Learning to advance your career and increase your knowledge !


Regards,

Vijay Gadhave

Deep Learning for Beginners in Python: Work On 12+ Projects
$ 109.99
per course
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