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Develop the skills to design responsible AI projects, including
model privacy, fairness, and risk assessment methodologies for
scalable distributed systems. Explainability features and
sustainable model practices are also covered. Key Features * Learn
risk assessment for machine learning frameworks for use in a global
landscape * Discover patterns for next generation AI ecosystems for
successful product design * Make explainable predictions for
privacy and fairness enabled ML training Book Description AI
algorithms are ubiquitous, used for everything from recruiting to
deciding who will get a loan. With such widespread use of AI in the
decision-making process, it is essential that we build an
explainable, responsible, and trustworthy AI enabled systems. Using
this book, you will be able to make existing black box models
transparent. You'll be able to identify and eliminate bias in your
models, deal with uncertainty arising from both data and model
limitations, and provide a responsible AI solution. Complete with
step-by-step explanations of essential concepts, practical
examples, and self-assessment questions, you will begin to master
designing ethical models for traditional and deep learning ML
models as well as deploying them in a sustainable production setup.
You'll learn how to set up data pipelines, validate datasets, and
set up component microservices in a secured, private fashion in any
cloud agnostic framework. You'll then build a fair and private ML
model with proper constraints, tune the hyperparameters, and
evaluate the model metrics. By the end of the book, you will know
how the best practices comply with laws regarding data privacy and
ethics, plus the techniques needed for data anonymization. You will
be able to develop models with explainability features, store them
in feature stores and handle uncertainty in the model predictions.
What you will learn * Understand the threats and risks involved in
machine learning models * Discover varying levels of risk
mitigation strategies and risk tiering tools * Apply traditional
and deep learning optimization techniques efficiently * Build
auditable, interpretable ML models and feature stores. * Develop
models for different clouds including AWS, Azure and GCP *
Incorporate privacy and fairness in ML models from design to
deployment * Industry wide use-cases centered around Finance,
Retail, and Healthcare * Organizational strategies for leadership
across domain use-cases Who This Book Is For This book is primarily
intended for those who have previous machine learning experience
and would like to know about the risks and leakages of ML models
and frameworks, and how to develop and use reusable components to
reduce effort and cost in setting up and maintaining the AI
ecosystem.
Build smarter systems by combining artificial intelligence and the
Internet of Things-two of the most talked about topics today Key
Features Leverage the power of Python libraries such as TensorFlow
and Keras to work with real-time IoT data Process IoT data and
predict outcomes in real time to build smart IoT models Cover
practical case studies on industrial IoT, smart cities, and home
automation Book DescriptionThere are many applications that use
data science and analytics to gain insights from terabytes of data.
These apps, however, do not address the challenge of continually
discovering patterns for IoT data. In Hands-On Artificial
Intelligence for IoT, we cover various aspects of artificial
intelligence (AI) and its implementation to make your IoT solutions
smarter. This book starts by covering the process of gathering and
preprocessing IoT data gathered from distributed sources. You will
learn different AI techniques such as machine learning, deep
learning, reinforcement learning, and natural language processing
to build smart IoT systems. You will also leverage the power of AI
to handle real-time data coming from wearable devices. As you
progress through the book, techniques for building models that work
with different kinds of data generated and consumed by IoT devices
such as time series, images, and audio will be covered. Useful case
studies on four major application areas of IoT solutions are a key
focal point of this book. In the concluding chapters, you will
leverage the power of widely used Python libraries, TensorFlow and
Keras, to build different kinds of smart AI models. By the end of
this book, you will be able to build smart AI-powered IoT apps with
confidence. What you will learn Apply different AI techniques
including machine learning and deep learning using TensorFlow and
Keras Access and process data from various distributed sources
Perform supervised and unsupervised machine learning for IoT data
Implement distributed processing of IoT data over Apache Spark
using the MLLib and H2O.ai platforms Forecast time-series data
using deep learning methods Implementing AI from case studies in
Personal IoT, Industrial IoT, and Smart Cities Gain unique insights
from data obtained from wearable devices and smart devices Who this
book is forIf you are a data science professional or a machine
learning developer looking to build smart systems for IoT, Hands-On
Artificial Intelligence for IoT is for you. If you want to learn
how popular artificial intelligence (AI) techniques can be used in
the Internet of Things domain, this book will also be of benefit. A
basic understanding of machine learning concepts will be required
to get the best out of this book.
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Deep Learning with TensorFlow 2 and Keras - Regression, ConvNets, GANs, RNNs, NLP, and more with TensorFlow 2 and the Keras API, 2nd Edition (Paperback, 2nd Revised edition)
Antonio Gulli, Amita Kapoor, Sujit Pal
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R1,078
Discovery Miles 10 780
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Ships in 10 - 15 working days
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Build machine and deep learning systems with the newly released
TensorFlow 2 and Keras for the lab, production, and mobile devices
Key Features Introduces and then uses TensorFlow 2 and Keras right
from the start Teaches key machine and deep learning techniques
Understand the fundamentals of deep learning and machine learning
through clear explanations and extensive code samples Book
DescriptionDeep Learning with TensorFlow 2 and Keras, Second
Edition teaches neural networks and deep learning techniques
alongside TensorFlow (TF) and Keras. You'll learn how to write deep
learning applications in the most powerful, popular, and scalable
machine learning stack available. TensorFlow is the machine
learning library of choice for professional applications, while
Keras offers a simple and powerful Python API for accessing
TensorFlow. TensorFlow 2 provides full Keras integration, making
advanced machine learning easier and more convenient than ever
before. This book also introduces neural networks with TensorFlow,
runs through the main applications (regression, ConvNets (CNNs),
GANs, RNNs, NLP), covers two working example apps, and then dives
into TF in production, TF mobile, and using TensorFlow with AutoML.
What you will learn Build machine learning and deep learning
systems with TensorFlow 2 and the Keras API Use Regression
analysis, the most popular approach to machine learning Understand
ConvNets (convolutional neural networks) and how they are essential
for deep learning systems such as image classifiers Use GANs
(generative adversarial networks) to create new data that fits with
existing patterns Discover RNNs (recurrent neural networks) that
can process sequences of input intelligently, using one part of a
sequence to correctly interpret another Apply deep learning to
natural human language and interpret natural language texts to
produce an appropriate response Train your models on the cloud and
put TF to work in real environments Explore how Google tools can
automate simple ML workflows without the need for complex modeling
Who this book is forThis book is for Python developers and data
scientists who want to build machine learning and deep learning
systems with TensorFlow. This book gives you the theory and
practice required to use Keras, TensorFlow 2, and AutoML to build
machine learning systems. Some knowledge of machine learning is
expected.
Implement TensorFlow's offerings such as TensorBoard,
TensorFlow.js, TensorFlow Probability, and TensorFlow Lite to build
smart automation projects Key Features Use machine learning and
deep learning principles to build real-world projects Get to grips
with TensorFlow's impressive range of module offerings Implement
projects on GANs, reinforcement learning, and capsule network Book
DescriptionTensorFlow has transformed the way machine learning is
perceived. TensorFlow Machine Learning Projects teaches you how to
exploit the benefits-simplicity, efficiency, and flexibility-of
using TensorFlow in various real-world projects. With the help of
this book, you'll not only learn how to build advanced projects
using different datasets but also be able to tackle common
challenges using a range of libraries from the TensorFlow
ecosystem. To start with, you'll get to grips with using TensorFlow
for machine learning projects; you'll explore a wide range of
projects using TensorForest and TensorBoard for detecting
exoplanets, TensorFlow.js for sentiment analysis, and TensorFlow
Lite for digit classification. As you make your way through the
book, you'll build projects in various real-world domains,
incorporating natural language processing (NLP), the Gaussian
process, autoencoders, recommender systems, and Bayesian neural
networks, along with trending areas such as Generative Adversarial
Networks (GANs), capsule networks, and reinforcement learning.
You'll learn how to use the TensorFlow on Spark API and
GPU-accelerated computing with TensorFlow to detect objects,
followed by how to train and develop a recurrent neural network
(RNN) model to generate book scripts. By the end of this book,
you'll have gained the required expertise to build full-fledged
machine learning projects at work. What you will learn Understand
the TensorFlow ecosystem using various datasets and techniques
Create recommendation systems for quality product recommendations
Build projects using CNNs, NLP, and Bayesian neural networks Play
Pac-Man using deep reinforcement learning Deploy scalable
TensorFlow-based machine learning systems Generate your own book
script using RNNs Who this book is forTensorFlow Machine Learning
Projects is for you if you are a data analyst, data scientist,
machine learning professional, or deep learning enthusiast with
basic knowledge of TensorFlow. This book is also for you if you
want to build end-to-end projects in the machine learning domain
using supervised, unsupervised, and reinforcement learning
techniques
Take the next step in implementing various common and not-so-common
neural networks with Tensorflow 1.x About This Book * Skill up and
implement tricky neural networks using Google's TensorFlow 1.x * An
easy-to-follow guide that lets you explore reinforcement learning,
GANs, autoencoders, multilayer perceptrons and more. * Hands-on
recipes to work with Tensorflow on desktop, mobile, and cloud
environment Who This Book Is For This book is intended for data
analysts, data scientists, machine learning practitioners and deep
learning enthusiasts who want to perform deep learning tasks on a
regular basis and are looking for a handy guide they can refer to.
People who are slightly familiar with neural networks, and now want
to gain expertise in working with different types of neural
networks and datasets, will find this book quite useful. What You
Will Learn * Install TensorFlow and use it for CPU and GPU
operations * Implement DNNs and apply them to solve different
AI-driven problems. * Leverage different data sets such as MNIST,
CIFAR-10, and Youtube8m with TensorFlow and learn how to access and
use them in your code. * Use TensorBoard to understand neural
network architectures, optimize the learning process, and peek
inside the neural network black box. * Use different regression
techniques for prediction and classification problems * Build
single and multilayer perceptrons in TensorFlow * Implement CNN and
RNN in TensorFlow, and use it to solve real-world use cases. *
Learn how restricted Boltzmann Machines can be used to recommend
movies. * Understand the implementation of Autoencoders and deep
belief networks, and use them for emotion detection. * Master the
different reinforcement learning methods to implement game playing
agents. * GANs and their implementation using TensorFlow. In Detail
Deep neural networks (DNNs) have achieved a lot of success in the
field of computer vision, speech recognition, and natural language
processing. The entire world is filled with excitement about how
deep networks are revolutionizing artificial intelligence. This
exciting recipe-based guide will take you from the realm of DNN
theory to implementing them practically to solve the real-life
problems in artificial intelligence domain. In this book, you will
learn how to efficiently use TensorFlow, Google's open source
framework for deep learning. You will implement different deep
learning networks such as Convolutional Neural Networks (CNNs),
Recurrent Neural Networks (RNNs), Deep Q-learning Networks (DQNs),
and Generative Adversarial Networks (GANs) with easy to follow
independent recipes. You will learn how to make Keras as backend
with TensorFlow. With a problem-solution approach, you will
understand how to implement different deep neural architectures to
carry out complex tasks at work. You will learn the performance of
different DNNs on some popularly used data sets such as MNIST,
CIFAR-10, Youtube8m, and more. You will not only learn about the
different mobile and embedded platforms supported by TensorFlow but
also how to set up cloud platforms for deep learning applications.
Get a sneak peek of TPU architecture and how they will affect DNN
future. By using crisp, no-nonsense recipes, you will become an
expert in implementing deep learning techniques in growing
real-world applications and research areas such as reinforcement
learning, GANs, autoencoders and more. Style and approach This book
consists of hands-on recipes where you'll deal with real-world
problems. You'll execute a series of tasks as you walk through data
mining challenges using TensorFlow 1.x. Your one-stop solution for
common and not-so-common pain points, this is a book that you must
have on the shelf.
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