
Machine Learning Quick Reference
Quick and essential machine learning hacks for training smart data models
Rahul Kumar(Author)
Packt Publishing
Published on 31. January 2019
Book
Paperback/Softback
294 pages
978-1-78883-057-7 (ISBN)
Description
Your hands-on reference guide to developing, training, and optimizing your machine learning models
Key Features
Your guide to learning efficient machine learning processes from scratch
Explore expert techniques and hacks for a variety of machine learning concepts
Write effective code in R, Python, Scala, and Spark to solve all your machine learning problems
Book DescriptionMachine learning makes it possible to learn about the unknowns and gain hidden insights into your datasets by mastering many tools and techniques. This book guides you to do just that in a very compact manner.
After giving a quick overview of what machine learning is all about, Machine Learning Quick Reference jumps right into its core algorithms and demonstrates how they can be applied to real-world scenarios. From model evaluation to optimizing their performance, this book will introduce you to the best practices in machine learning. Furthermore, you will also look at the more advanced aspects such as training neural networks and work with different kinds of data, such as text, time-series, and sequential data. Advanced methods and techniques such as causal inference, deep Gaussian processes, and more are also covered.
By the end of this book, you will be able to train fast, accurate machine learning models at your fingertips, which you can easily use as a point of reference. What you will learn
Get a quick rundown of model selection, statistical modeling, and cross-validation
Choose the best machine learning algorithm to solve your problem
Explore kernel learning, neural networks, and time-series analysis
Train deep learning models and optimize them for maximum performance
Briefly cover Bayesian techniques and sentiment analysis in your NLP solution
Implement probabilistic graphical models and causal inferences
Measure and optimize the performance of your machine learning models
Who this book is forIf you're a machine learning practitioner, data scientist, machine learning developer, or engineer, this book will serve as a reference point in building machine learning solutions. You will also find this book useful if you're an intermediate machine learning developer or data scientist looking for a quick, handy reference to all the concepts of machine learning. You'll need some exposure to machine learning to get the best out of this book.
Key Features
Your guide to learning efficient machine learning processes from scratch
Explore expert techniques and hacks for a variety of machine learning concepts
Write effective code in R, Python, Scala, and Spark to solve all your machine learning problems
Book DescriptionMachine learning makes it possible to learn about the unknowns and gain hidden insights into your datasets by mastering many tools and techniques. This book guides you to do just that in a very compact manner.
After giving a quick overview of what machine learning is all about, Machine Learning Quick Reference jumps right into its core algorithms and demonstrates how they can be applied to real-world scenarios. From model evaluation to optimizing their performance, this book will introduce you to the best practices in machine learning. Furthermore, you will also look at the more advanced aspects such as training neural networks and work with different kinds of data, such as text, time-series, and sequential data. Advanced methods and techniques such as causal inference, deep Gaussian processes, and more are also covered.
By the end of this book, you will be able to train fast, accurate machine learning models at your fingertips, which you can easily use as a point of reference. What you will learn
Get a quick rundown of model selection, statistical modeling, and cross-validation
Choose the best machine learning algorithm to solve your problem
Explore kernel learning, neural networks, and time-series analysis
Train deep learning models and optimize them for maximum performance
Briefly cover Bayesian techniques and sentiment analysis in your NLP solution
Implement probabilistic graphical models and causal inferences
Measure and optimize the performance of your machine learning models
Who this book is forIf you're a machine learning practitioner, data scientist, machine learning developer, or engineer, this book will serve as a reference point in building machine learning solutions. You will also find this book useful if you're an intermediate machine learning developer or data scientist looking for a quick, handy reference to all the concepts of machine learning. You'll need some exposure to machine learning to get the best out of this book.
More details
Language
English
Place of publication
Birmingham
United Kingdom
Target group
Professional and scholarly
US School Grade: College Graduate Student
Dimensions
Height: 235 mm
Width: 191 mm
Thickness: 16 mm
Weight
554 gr
ISBN-13
978-1-78883-057-7 (9781788830577)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
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Rahul Kumar
Machine Learning Quick Reference
Quick and essential machine learning hacks for training smart data models
E-Book
09/2024
Packt Publishing
from
€33.89
Available for download
Person
Rahul Kumar has got more than 10 years of experience in the space of Data Science and Artificial Intelligence. His expertise lies in the machine learning and deep learning arena. He is known to be a seasoned professional in the area of Business Consulting and Business Problem Solving, fuelled by his proficiency in machine learning and deep learning. He has been associated with organizations such as Mercedes-Benz Research and Development
(India), Fidelity Investments, Royal Bank of Scotland among others. He has accumulated a diverse exposure through industries like BFSI, telecom and automobile. Rahul has also got papers published in IIM and IISc Journals.
(India), Fidelity Investments, Royal Bank of Scotland among others. He has accumulated a diverse exposure through industries like BFSI, telecom and automobile. Rahul has also got papers published in IIM and IISc Journals.
Content
Table of Contents
Quantifying Learning Algorithms
Evaluating Kernel Learning
Performance in Ensemble Learning
Training Neural Networks
Time-Series Analysis
Natural Language Processing
Temporal and Sequential Pattern Discovery
Probabilistic Graphical Models
Selected Topics in Deep Learning
Causal Inference
Advanced Methods
Quantifying Learning Algorithms
Evaluating Kernel Learning
Performance in Ensemble Learning
Training Neural Networks
Time-Series Analysis
Natural Language Processing
Temporal and Sequential Pattern Discovery
Probabilistic Graphical Models
Selected Topics in Deep Learning
Causal Inference
Advanced Methods