CHF20.00
Download est disponible immédiatement
Discover how data science can help you gain in-depth insight into your business - the easy way!
Jobs in data science abound, but few people have the data science skills needed to fill these increasingly important roles. Data Science For Dummies is the perfect starting point for IT professionals and students who want a quick primer on all areas of the expansive data science space. With a focus on business cases, the book explores topics in big data, data science, and data engineering, and how these three areas are combined to produce tremendous value. If you want to pick-up the skills you need to begin a new career or initiate a new project, reading this book will help you understand what technologies, programming languages, and mathematical methods on which to focus.
While this book serves as a wildly fantastic guide through the broad, sometimes intimidating field of big data and data science, it is not an instruction manual for hands-on implementation. Here's what to expect:
Provides a background in big data and data engineering before moving on to data science and how it's applied to generate value
Includes coverage of big data frameworks like Hadoop, MapReduce, Spark, MPP platforms, and NoSQL
Explains machine learning and many of its algorithms as well as artificial intelligence and the evolution of the Internet of Things
Details data visualization techniques that can be used to showcase, summarize, and communicate the data insights you generate
It's a big, big data world out there--let Data Science For Dummies help you harness its power and gain a competitive edge for your organization.
Auteur
Lillian Pierson, P.E. is a data scientist, professional environmental engineer, and leading data science consultant to global leaders in IT, major governmental and non-governmental entities, prestigious media corporations, and not-for-profit technology groups.
Contenu
Foreword xv
Introduction 1
About This Book 2
Foolish Assumptions 2
Icons Used in This Book 3
Beyond the Book 3
Where to Go from Here 4
Part 1: Getting Started with Data Science 5
Chapter 1: Wrapping Your Head around Data Science 7
Seeing Who Can Make Use of Data Science 8
Analyzing the Pieces of the Data Science Puzzle 10
Collecting, querying, and consuming data 10
Applying mathematical modeling to data science tasks 11
Deriving insights from statistical methods 12
Coding, coding, coding it's just part of the game 12
Applying data science to a subject area 12
Communicating data insights 14
Exploring the Data Science Solution Alternatives 14
Assembling your own in-house team 14
Outsourcing requirements to private data science consultants 15
Leveraging cloud-based platform solutions 15
Letting Data Science Make You More Marketable 16
Chapter 2: Exploring Data Engineering Pipelines and Infrastructure 17
Defining Big Data by the Three Vs 18
Grappling with data volume 18
Handling data velocity 18
Dealing with data variety 19
Identifying Big Data Sources 20
Grasping the Difference between Data Science and Data Engineering 21
Defining data science 21
Defining data engineering 22
Comparing data scientists and data engineers 23
Making Sense of Data in Hadoop 24
Digging into MapReduce 24
Stepping into real-time processing 26
Storing data on the Hadoop distributed file system (HDFS) 27
Putting it all together on the Hadoop platform 28
Identifying Alternative Big Data Solutions 28
Introducing massively parallel processing (MPP) platforms 29
Introducing NoSQL databases 29
Data Engineering in Action: A Case Study 30
Identifying the business challenge 30
Solving business problems with data engineering 32
Boasting about benefits 32
Chapter 3: Applying Data-Driven Insights to Business and Industry 33
Benefiting from Business-Centric Data Science 34
Converting Raw Data into Actionable Insights with Data Analytics 35
Types of analytics 35
Common challenges in analytics 36
Data wrangling 36
Taking Action on Business Insights 37
Distinguishing between Business Intelligence and Data Science 39
Business intelligence, defined 39
The kinds of data used in business intelligence 40
Technologies and skillsets that are useful in business intelligence 40
Defining Business-Centric Data Science 41
Kinds of data that are useful in business-centric data science 42
Technologies and skillsets that are useful in business-centric data science 43
Making business value from machine learning methods 43
Differentiating between Business Intelligence and Business-Centric Data Science 44
Knowing Whom to Call to Get the Job Done Right 45
Exploring Data Science in Business: A Data-Driven Business Success Story 46
Part 2: Using Data Science to Extract Meaning from Your Data 49
Chapter 4: Machine Learning: Learning from Data with Your Machine 51
Defining Machine Learning and Its Processes 51
Walking through the steps of the machine learning process 52
Getting familiar with machine learning terms 52
Considering Learning Styles 53
Learning with supervised algorithms 53
Learning with unsupervised algorithms 53
Learning with reinforcement 54
Seeing What You Can Do 54
Selecting algorithms based on function 54
Using Spark to generate real-time big data analytics 58 **Chapter 5: Math, Probability, and ...