Book Image

Practical Business Intelligence

Book Image

Practical Business Intelligence

Overview of this book

Business Intelligence (BI) is at the crux of revolutionizing enterprise. Everyone wants to minimize losses and maximize profits. Thanks to Big Data and improved methodologies to analyze data, Data Analysts and Data Scientists are increasingly using data to make informed decisions. Just knowing how to analyze data is not enough, you need to start thinking how to use data as a business asset and then perform the right analysis to build an insightful BI solution. Efficient BI strives to achieve the automation of data for ease of reporting and analysis. Through this book, you will develop the ability to think along the right lines and use more than one tool to perform analysis depending on the needs of your business. We start off by preparing you for data analytics. We then move on to teach you a range of techniques to fetch important information from various databases, which can be used to optimize your business. The book aims to provide a full end-to-end solution for an environment setup that can help you make informed business decisions and deliver efficient and automated BI solutions to any company. It is a complete guide for implementing Business intelligence with the help of the most powerful tools like D3.js, R, Tableau, Qlikview and Python that are available on the market.
Table of Contents (16 chapters)
Practical Business Intelligence
Credits
About the Author
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

Time series forecasting in R


A time series graph is one that evaluates activity over a period of time. A more specific time series plot can be generated using the ts() and plot.ts() functions in R, as seen in the following scripts:

Query1_TS<-ts(SQL_Query_1$Discount) 
plot.ts(Query1_TS, xlab = 'Week (1-52)', ylab = 'Discount', main = 'Time Series of Discount Code by Week') 

The output of the time series script can be seen here:

At first glimpse, the time series plot looks no different from earlier line charts developed in this chapter. The difference lies within the inherent qualities of a time series plot, which allows you to view activity over specified intervals over the course of a year. The specified periods can be in hours, days, weeks, months, or even quarters. A time series plot will display seasonal activity that repeats around the same time each year. Due to this seasonality, time series plots are strong candidates for forecasting. Let's get a little bit of background...