Basic
ETL
Interview Questions
Data Warehouse is a storage repository for integrating data from multiple sources, which can be used for Reporting and Analysis. This repository then becomes a source for Business Intelligence.
Input for a DWH is extracted from different enterprise systems that can include current or historical data. DWH's main goal is to handle bulk data, establish a relationship across the systems, and use the end product for Analytical & Reporting purposes.
Usually, data is gathered from the Input sources, a clean-up is done to avoid redundancy, and inaccurate junk data is staged, Integrated, and Loaded onto the database, where the database can contain different schema based on the categorical groups of the given data. Schema is a model or specific format applied for all the data in DWH, irrespective of their source formatting.
Data Warehouse plays a vital role in Business Intelligence. Using DWH, business decision-makers can create analysis or reports on any given perspective. DWH helps them to integrate huge amounts of data gathered from multiple sources. The business personnel can fetch all the required information from DWH to generate the required Statistics or Reports.
DWH makes it uncomplicated in terms of time consumption, as all the data is situated in one location instead of multiple sources. Since all the data are transformed into a single schema, DWH has well-defined and accurate data with minimum or zero redundancy. Business professionals, who constantly need to make business decisions, need not go through the hassle of researching and gathering information anymore. A data warehouse can be used as a one-stop solution.
Data Warehousing can be implemented in any area that needs frequent decision-making to be done to have constant growth in their business.
Below are a few areas where DWH can be implemented:
1. Any Industry that runs with its employees as its main resource, like –
a. Police Department – Information like officers in each region, officers in specific roles, officers who succeeded in their mission, number of cases completed in a given time, etc., can be used to generate a report on the Department's records for a particular given.
b. Software Industry – Information like Employees' attendance, pay, Awards won, previous years' performance, etc., can be used to decide on the Employees' current performance
2. Banking – DWH has multiple applications in Banking Industry that include subdivisions like customer care, customer transactions, Bank communication systems, Bank employees, etc.
3. Retail – In retail industries, customer relationship management, sales, services, etc., can be facilitated flawlessly as DWH holds data accuracy as its key feature.
Let us consider an example here:
A Food production company named 'Complete Foods' needs to see the Statistics on the sales performance for the current financial year. The Data warehouse owned by 'Complete Foods' can be used to pull out all the sales records concerning the sales region, outlets, profits/losses, customer.
feedback, employee records, along with the individual sales flow for different departments like packaged food, fresh produce, poultry, dairy, etc.,
For anyone to be able to implement a DWH, below are the basic requirements:
1. Knowledge of the Data warehousing process
2. Data handling experience
3. Hands-on with querying languages like pl/SQL, mySQL, T-SQL, etc.,
4. Documented requirements from the Project's stack holders.
5. Other resources include access rights for data from all the required sources, hardware and software setup, etc.
Software Engineers with data handling experience and additional knowledge on Data warehouses or Data Science in general.
By signing up, you agree to our Terms of Use and Privacy Policy.
Hadoop, Data Science, Statistics & others
This website or its third-party tools use cookies, which are necessary to its functioning and required to achieve the purposes illustrated in the cookie policy. By closing this banner, scrolling this page, clicking a link or continuing to browse otherwise, you agree to our Privacy Policy