Deep Learning with Python and Keras

BY
Udemy

Learn about deep learning and how to use Python and Keras to create deep learning models and a range of neural networks.

Mode

Online

Fees

₹ 599 3999

Quick Facts

particular details
Medium of instructions English
Mode of learning Self study
Mode of Delivery Video and Text Based

Course overview

Deep Learning with Python and Keras online course is a short-term course developed by Data Weekends - Learn the essentials of Data Science in just one weekend, Jose Portilla - Head of Data Science, Pierian Data Inc., Instructor and presented by Udemy Inc., an ed-tech firm aimed at providing of online courses for professionals and beginners across 180 countries.

Deep Learning with Python and Keras certification course is intended to give you a thorough understanding of Deep Learning. The course is designed for Python beginners and intermediate programmers and data scientists who want to learn how to apply Deep Learning methods to a variety of situations.

Deep Learning with Python and Keras online training focuses on providing learners with firm ground, not just in theory, but also in coding. Learners will be taught to detect issues that can be solved using Deep Learning, develop a range of Neural Network models, and use cloud computing to boost the training and enhance their performance. 

The highlights

  • Certificate of completion
  • Self-paced course
  • English videos with multi-language subtitles
  • 10 hours of pre-recorded video content
  • Online course
  • 30-day money-back guarantee
  • Unlimited access
  • Accessible on mobile devices and TV

Program offerings

  • Certificate of completion
  • Self-paced course
  • English videos with multi-language subtitles
  • 10 hours of pre-recorded video content
  • 6 articles
  • 30-day money-back guarantee
  • Unlimited access
  • Accessible on mobile devices and tv

Course and certificate fees

Fees information
₹ 599  ₹3,999
certificate availability

Yes

certificate providing authority

Udemy

What you will learn

Data science knowledge Knowledge of python Knowledge of deep learning

After completing the Deep Learning with Python and Keras certification course, candidates will be able to demonstrate deep learning by applying it to develop the prediction models, identifying how the real world can be benefited from deep learning, and leveraging Python and Keras to develop deep learning models. Learners will be able to tackle supervised and unsupervised learning problems including images, text, sound, time series, and tabular data using deep learning, develop, train and use completely connected, convolutional, and recurrent neural networks. Learners will also be skilled to analyze the cost of training huge models, reduce training time and cost utilizing previously trained models. 

The syllabus

Welcome to the course

  • Welcome to the course!
  • Introduction
  • Real world applications of deep learning
  • Download and install Anaconda
  • Installation Video Guide
  • Obtain the code for the course
  • Course Folder Walkthrough
  • Your first deep learning model

Data

  • Section 2 Intro
  • Tabular data
  • Data exploration with Pandas code along
  • Visual Data Exploration
  • Plotting with Matplotlib
  • Unstructured Data
  • Images and Sound in Jupyter
  • Feature Engineering
  • Exercise 1 Presentation
  • Exercise 1 Solution
  • Exercise 2 Presentation
  • Exercise 2 Solution
  • Exercise 3 Presentation
  • Exercise 3 Solution
  • Exercise 4 Presentation
  • Exercise 4 Solution
  • Exercise 5 Presentation
  • Exercise 5 Solution

Machine Learning

  • Section 3 Intro
  • Machine Learning Problems
  • Supervised Learning
  • Linear Regression
  • Cost Function
  • Cost Function code along
  • Finding the best model
  • Linear Regression code 
  • Evaluating Performance
  • Evaluating Performance code along
  • Classification
  • Classification code along
  • Overfitting
  • Cross-Validation
  • Cross-Validation code along
  • Confusion matrix
  • Confusion Matrix code along
  • Feature Preprocessing code along
  • Exercise 1 Presentation
  • Exercise 1 solution
  • Exercise 2 Presentation
  • Exercise 2 solution

Deep Learning

  • Section 4 Intro
  • Deep Learning successes
  • Neural Networks
  • Deeper Networks
  • Neural Networks code along
  • Multiple Outputs
  • Multiclass classification code along
  • Activation Functions
  • Feedforward
  • Exercise 1 Presentation
  • Exercise 1 Solution
  • Exercise 2 Presentation
  • Exercise 2 Solution
  • Exercise 3 Presentation
  • Exercise 3 Solution
  • Exercise 4 Presentation
  • Exercise 4 Solution

Gradient Descent

  • Section 5 Intro
  • Derivatives and Gradient
  • Backpropagation intuition
  • Chain Rule
  • Derivative Calculation
  • Fully Connected Backpropagation
  • Matrix Notation
  • Numpy Arrays code along
  • Learning Rate
  • Learning Rate code along
  • Gradient Descent
  • Gradient Descent code along
  • EWMA
  • Optimizers
  • Optimizers code along
  • Initialization code along
  • Inner Layers Visualization code along
  • Exercise 1 Presentation
  • Exercise 1 Solution
  • Exercise 2 Presentation
  • Exercise 2 Solution
  • Exercise 3 Presentation
  • Exercise 3 Solution
  • Exercise 4 Presentation
  • Exercise 4 Solution
  • Tensorboard

Convolutional Neural Networks

  • Section 6 Intro
  • Features from Pixels
  • MNIST Classification
  • MNIST Classification code along
  • Beyond Pixels
  • Images as Tensors
  • Tensor Math code along
  • Convolution in 1 D
  • Convolution in 1 D code along
  • Convolution in 2 D
  • Image Filters code along
  • Convolutional Layers
  • Convolutional Layers code along
  • Pooling Layers
  • Pooling Layers code along
  • Convolutional Neural Networks
  • Convolutional Neural Networks code along
  • Weights in CNNs
  • Beyond Images
  • Exercise 1 Presentation
  • Exercise 1 Solution
  • Exercise 2 Presentation
  • Exercise 2 Solution

Cloud GPUs

  • Google Colaboratory GPU notebook setup
  • Floyd GPU notebook setup

Recurrent Neural Networks

  • Section 8 Intro
  • Time Series
  • Sequence problems
  • Vanilla RNN
  • LSTM and GRU
  • Time Series Forecasting code along
  • Time Series Forecasting with LSTM code along
  • Rolling Windows
  • Rolling Windows code along
  • Exercise 1 Presentation
  • Exercise 1 Solution
  • Exercise 2 Presentation
  • Exercise 2 Solution

Improving performance

  • Section 9 Intro
  • Learning curves
  • Learning curves code along
  • Batch Normalization
  • Batch Normalization code along
  • Dropout
  • Dropout and Regularization code along
  • Data Augmentation
  • Continuous Learning
  • Image Generator code along
  • Hyperparameter search
  • Embeddings
  • Embeddings code along
  • Movies Reviews Sentiment Analysis code along
  • Exercise 1 Presentation
  • Exercise 1 Solution
  • Exercise 2 Presentation
  • Exercise 2 Solution
  • Exercise 3 Presentation

Instructors

Mr Jose Portilla
Head of Data Science
Udemy

Other Bachelors, M.S

Trending Courses

Popular Courses

Popular Platforms

Learn more about the Courses

Download the Careers360 App on your Android phone

Regular exam updates, QnA, Predictors, College Applications & E-books now on your Mobile

Careers360 App
150M+ Students
30,000+ Colleges
500+ Exams
1500+ E-books