Countdown header img desk

MAI SUNT 00:00:00:00

MAI SUNT

X

Countdown header img  mob

MAI SUNT 00:00:00:00

MAI SUNT

X

Promotii popup img

CADOU CITY BREAK la ATENA

Decorul ideal pentru lectura

Carti, jocuri, filme, accesorii

Comanda si castiga!
Close

Data Analytics for Absolute Beginners: A Deconstructed Guide to Data Literacy: (Introduction to Data, Data Visualization, Business Intelligence & Mach

Data Analytics for Absolute Beginners: A Deconstructed Guide to Data Literacy: (Introduction to Data, Data Visualization, Business Intelligence & Mach - Oliver Theobald

Data Analytics for Absolute Beginners: A Deconstructed Guide to Data Literacy: (Introduction to Data, Data Visualization, Business Intelligence & Mach


Make better decisions using every variable with this deconstructed introduction to data analytics. While exposure to data has become a daily ritual for the rank-and-file knowledge worker, true understanding-treated in this book as data literacy-is knowing what's in the data. Everything, from the data's source to the specific choice of variables, algorithm, and visualization shapes the data and molds its journey from raw data to business insight. It's important to learn the terms and basic concepts - just like basic accounting and financial literacy for being a successful decision-maker in the business world. This book is ideal for anyone who is interested in making sense of data analytics without the assumption that you understand specific data science terminology or advanced programming languages. Topics covered in this book: Data MiningBig DataMachine Learning Alternative Data Data ManagementWeb ScrapingRegression AnalysisClustering AnalysisAssociation AnalysisData VisualizationBusiness Intelligence
Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence
Citeste mai mult

-10%

69.16Lei

76.85 Lei

Sau 6916 de puncte

!

Fiecare comanda noua reprezinta o investitie pentru viitoarele tale comenzi. Orice comanda plasata de pe un cont de utilizator primeste in schimb un numar de puncte de fidelitate, In conformitate cu regulile de conversiune stabilite. Punctele acumulate sunt incarcate automat in contul tau si pot fi folosite ulterior, pentru plata urmatoarelor comenzi.

Livrare in 2-4 saptamani

Descrierea produsului


Make better decisions using every variable with this deconstructed introduction to data analytics. While exposure to data has become a daily ritual for the rank-and-file knowledge worker, true understanding-treated in this book as data literacy-is knowing what's in the data. Everything, from the data's source to the specific choice of variables, algorithm, and visualization shapes the data and molds its journey from raw data to business insight. It's important to learn the terms and basic concepts - just like basic accounting and financial literacy for being a successful decision-maker in the business world. This book is ideal for anyone who is interested in making sense of data analytics without the assumption that you understand specific data science terminology or advanced programming languages. Topics covered in this book: Data MiningBig DataMachine Learning Alternative Data Data ManagementWeb ScrapingRegression AnalysisClustering AnalysisAssociation AnalysisData VisualizationBusiness Intelligence
Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence

Make better decisions with this easy deconstructed guide to data analytics.
Want to add data analytics to your skill stack? Having trouble finding where to start?
Cell by cell, bit by bit, this book teaches you the vocabulary, tools, and basic algorithms to think like a data scientist. Like assembling a complex Lego set, each chapter connects and adds individual blocks of knowledge to build your data literacy. This linear structure to unpacking data analytics takes you from zero to confidently analyzing and discussing data problems like a data scientist.

Who is This Book For?
This book is ideal for anyone interested in making sense of data analytics without the assumption that you understand data science terminology or advanced math. If you've tried to learn data analytics before and failed, this book is for you.

A Practical ApproachThis book takes a hands-on approach to learning. This includes practical examples, visual examples, as well as two bonus coding exercises in Python, including free video content to walk you through both exercises. By the end of the book, you will have the practical knowledge to tackle real data problems in your organization or daily life.

What You Will Learn From Reading This Book- How to recognize the common data types every data scientist needs to master
- Where to store your data, including Big Data
- New trends in data analytics, including what is Alternative Data and why not many people know about it
- How to explain the distinction between Data Mining, Machine Learning, and Analytics to your colleagues
- When and how to use Regression Analysis, Classification, Clustering, Association Analysis, and Natural Language Processing
- How to make better business decisions using Data Visualization and Business Intelligence
Citeste mai mult

Detaliile produsului

De acelasi autor

De pe acelasi raft

Parerea ta e inspiratie pentru comunitatea Libris!

Noi suntem despre carti, si la fel este si

Newsletter-ul nostru.

Aboneaza-te la vestile literare si primesti un cupon de -10% pentru viitoarea ta comanda!

*Reducerea aplicata prin cupon nu se cumuleaza, ci se aplica reducerea cea mai mare.

Ma abonez image one
Ma abonez image one