Start here if you are:


A marketing professional, financial analyst, politician, CEO, professional coach, student or a decision maker in an organization. This book is the start of the road to becoming a d...

Buy Now From Amazon

Start here if you are:


A marketing professional, financial analyst, politician, CEO, professional coach, student or a decision maker in an organization. This book is the start of the road to becoming a data scientist or data literate professional.

In today's modern world it’s vital t to understand data analytics. This includes the various processes, resources, advantages and limitations of data analytics.

It's important that you can grasp the terminology and basic concepts of data analytics just as much as you need to understand basic accounting and financial literacy to be 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:


Regression Analysis
Data Mining
Big Data
Machine Learning
Data Management
Web Scraping
Data Reduction
Clustering
Anomaly Detection
Text Mining
Association Analysis
Recommender Systems
Data Visualization


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