SAP Lumira Essentials by Dmitry Anoshin
Author:Dmitry Anoshin [Anoshin, Dmitry]
Language: eng
Format: azw3
Publisher: Packt Publishing
Published: 2015-09-03T04:00:00+00:00
Modern analytics tools provide us with the opportunity to look at data from the geographical perspective. It gives us lots of advantages: for example, we can easily measure the region that is the most popular with customers and the product that is the most popular in a particular city or region.
Tip
Geography hierarchies can only be created on columns that contain values that are compatible with geographic data values in the NAVTEQ database used by SAP Lumira.
Unicorn Fashion is operating in Manitoba, Canada. The category manager wants to know the performance of various subcategories in different cities.
Unfortunately, there is no longitude or latitude data in the operational datamart. However, we can find the longitude and latitude of cities and map them with cities in the datamart.
Let's learn how to merge the new dataset with the existing dataset in order to create a geographical hierarchy. Perform the following steps:
First, let's click on Data->Combine->Merge:
Download
This site does not store any files on its server. We only index and link to content provided by other sites. Please contact the content providers to delete copyright contents if any and email us, we'll remove relevant links or contents immediately.
Algorithms of the Intelligent Web by Haralambos Marmanis;Dmitry Babenko(8332)
Azure Data and AI Architect Handbook by Olivier Mertens & Breght Van Baelen(7016)
Building Statistical Models in Python by Huy Hoang Nguyen & Paul N Adams & Stuart J Miller(7006)
Serverless Machine Learning with Amazon Redshift ML by Debu Panda & Phil Bates & Bhanu Pittampally & Sumeet Joshi(6888)
Data Wrangling on AWS by Navnit Shukla | Sankar M | Sam Palani(6670)
Driving Data Quality with Data Contracts by Andrew Jones(6632)
Machine Learning Model Serving Patterns and Best Practices by Md Johirul Islam(6362)
Learning SQL by Alan Beaulieu(6029)
Weapons of Math Destruction by Cathy O'Neil(5824)
Big Data Analysis with Python by Ivan Marin(5504)
Data Engineering with dbt by Roberto Zagni(4514)
Solidity Programming Essentials by Ritesh Modi(4160)
Time Series Analysis with Python Cookbook by Tarek A. Atwan(4030)
Pandas Cookbook by Theodore Petrou(3733)
Blockchain Basics by Daniel Drescher(3326)
Hands-On Machine Learning for Algorithmic Trading by Stefan Jansen(2925)
Feature Store for Machine Learning by Jayanth Kumar M J(2833)
Learn T-SQL Querying by Pam Lahoud & Pedro Lopes(2820)
Mastering Python for Finance by Unknown(2759)
