What you'll learn
- Introduction to Deep Learning and Neural Networks
- Understand Deep Learning with Keras
- Take a big step towards becoming a Deep Learning / Machine Learning engineer
- Keras overview, features, benefits
- Keras installation
- Keras - Models, Layers and Modules
- Keras Models - Sequential Model, Functional API
- Keras Layers - Dense Layers, Dropout Layers, Convolution Layers, Pooling Layers
- Keras Modules
- Keras - Model Compilation, Evaluation and Prediction
- Loss, Optimizer, Metrics, Compile the Model
- Model Training, Model Evaluation, Model Prediction
- Life-Cycle for Neural Network Models in Keras
- Define Network, Compile Network, Fit Network, Evaluate Network, Make Predictions
- Building your first Neural Network with Keras
- Building a Multilayer Perceptron neural network
- Building Image Classification Model with Keras
- Convolutional Neural Network (CNN) & its layers
Requirements
- Enthusiasm and determination to make your mark on the world!
Description
Keras is an open-source library of neural network components written in Python. Keras is capable of running atop TensorFlow, Theano, PlaidML and others. The library was developed to be modular and user-friendly. Keras enables fast experimentation through a high level, user-friendly, modular and extensible API. Keras can also be run on both CPU and GPU. Keras was developed and is maintained by Francois Chollet and is part of the TensorFlow core, which makes it TensorFlow preferred high-level API.
Comprised of a library of commonly used machine learning components including objectives, activation functions, and optimizers, Keras' open-source platform also offers support for recurrent and convolutional neural networks. Additionally, Keras offers mobile platform development for users intending to implement deep learning models on smartphones, both iOS and Android.
Keras is essentially an API designed for machine learning and deep learning engineers and follows best practices for reducing cognitive load. Keras offers consistent & simple APIs, minimizes the number of user actions required for common use cases, and provides clear & actionable error messages. It also supports extensive documentation and developer guides.
It is made user-friendly, extensible, and modular for facilitating faster experimentation with deep neural networks. It not only supports Convolutional Networks and Recurrent Networks individually but also their combination
Why do we need Machine Learning libraries such as Keras?
Machine learning uses a variety of math models and calculations to answer specific questions about data. Examples of machine learning in action include detecting spam emails, determining certain objects using computer vision, recognizing speech, recommending products, and even predicting commodities values years in the future.
The calculations implicit in machine learning and deep learning are very complicated to set up to ensure correct output (answers). A variety of machine learning libraries have emerged to help navigate these complexities. With these options, new folks can start getting into data science easily. Some of the most popular machine learning libraries include:
TensorFlow
Keras
sciKit learn
Theano
Microsoft Cognitive Toolkit (CNTK)
Uplatz provides this comprehensive course on Deep Learning with Keras. This Keras course will help you implement deep learning in Python, preprocess your data, model, build, evaluate and optimize neural networks. The Keras training will teach you how to use Keras, a neural network API written in Python. This Keras course will show how the full implementation is done in code using Keras and Python. You will learn how to organize data for training, build and train an artificial neural network from scratch, build and fine-tune convolutional neural networks (CNNs), implement fine-tuning and transfer learning, deploy models using both front-end and back-end deployment techniques.
Deep Learning with Keras - Course Syllabus
1. Introduction to Deep Learning & Keras
What is deep learning?
What is ANN?
Introduction to Keras
a) Overview of Keras
b) Features of Keras
c) Benefits of Keras
Keras Installation
2. Keras - Models, Layers and Modules
Keras Models
a) Sequential Model
b) Functional API
Keras Layers
a) Dense Layers
b) Dropout Layers
c) Convolution Layers
d) Pooling Layers
Keras Modules
3. Keras - Model Compilation, Evaluation and Prediction
Loss
Optimizer
Metrics
Compile the model
Model Training
Model Evaluation
Model Prediction
4. Life-Cycle for Neural Network Models in Keras
Define Network
Compile Network
Fit Network
Evaluate Network
Make Predictions
5. Building our first Neural Network with Keras
(Building a Multilayer Perceptron neural network)
Load Data
Define Keras Model
Compile Keras Model
Fit Keras Model
Evaluate Keras Model
Make Predictions
6. Building Image Classification Model with Keras
What is Image Recognition (Classification)
Convolutional Neural Network (CNN) & its layers
Building Image Classification Model (step by step)
Key Features of Keras
Keras is an API designed for humans
Focus on user experience has always been a major part of Keras
Large adoption in the industry
Highly Flexible
It is a multi backend and supports multi-platform, which helps all the encoders come together for coding
Research community present for Keras works amazingly with the production community
Easy to grasp all concepts
It supports fast prototyping
It seamlessly runs on CPU as well as GPU
It provides the freedom to design any architecture, which then later is utilized as an API for the project
It is really very simple to get started with
Easy production of models actually makes Keras special
Easy to learn and use
Who this course is for:
- Deep Learning / Machine Learning Engineers
- Machine Learning Researchers - NLP, Python, Deep Learning
- Data Scientists and Machine Learning Scientists
- Newbies and Beginners aspiring for a career in Machine Learning / Data Science / Deep Learning
- Head of Engineering and Technical Leads
- Anyone who wants to learn Deep Learning and Machine Learning
- Computer Vision Researchers
- AI Deep Learning Platform Leads
- Senior ML and Deep Learning Scientists
- Senior Data Consultants & Analytics Professionals
- Product Managers
- Artificial Intelligence Program Leads
Post a Comment