There are Four Types of Analytics:
Descriptive: What Happened?
Descriptive analytics is a preliminary stage of data processing that creates a summary of historical data to yield useful information and possibly prepare the data for further analysis. Analytics, which use data aggregation and data mining to provide insight into the past and answer: “What has happened?
Descriptive analysis or statistics does exactly what the name implies they “Describe”, or summarize raw data and make it something that is interpret-able by humans. They are analytics that describe the past. The past refers to any point of time that an event has occurred, whether it is one minute ago, or one year ago. Descriptive analytics are useful because they allow us to learn from past behaviors, and understand how they might influence future outcomes.
The vast majority of the statistics we use fall into this category. (Think basic arithmetic like sums, averages, percent changes). Usually, the underlying data is a count, or aggregate of a filtered column of data to which basic math is applied. For all practical purposes, there are an infinite number of these statistics. Descriptive statistics are useful to show things like, total stock in inventory, average dollars spent per customer and Year over year change in sales. Common examples of descriptive analytics are reports that provide historical insights regarding the company’s production, financials, operations, sales, finance, inventory and customers.
Note: Use Descriptive Analytics when you need to understand at an aggregate level what is going on in your company, and when you want to summarize and describe different aspects of your business.
Different techniques of Descriptive Analytics:
Use of Descriptive Analytics in ThingWorx Analytics:
How to Access Descriptive Analysis Functionality via ThingWorx Analytics:
How to avoid mistakes - Useful tips for Different Techniques of Descriptive Analytics:
So, what is the difference then between Cluster Analysis and Profiles, where you also create groups related to the goal?
What is Formula definition of mi of Thingworx Analytics?
Is this normalization?
Are there documents can refer?
You could follow the below Article.
This article contains different techniques which are behind ThingWorx Analytics. We can not add our custom code or algorithms.
Regards-Mohit