Skip to main content

Datawarehouse Benfits


There are a number of reasons why many large companies have spent large sums of money implementing data warehouses. Favor of the most basic use of data warehouses is that they store information can be found in such a way that it allows the business to make important decisions.

Instead of looking to the organization where it includes departments, data warehouses allows businessmen to look at the company as a whole. Another benefit of data warehouses is the ability to deal with the functions of a server connected to the query that is not used by most systems deal. The vast majority of companies want to develop transactional systems so there is a good chance that these are completed transactions within a time frame desirable. The biggest problem with the reports and queries is that these entities can reduce the chances of a deal being made in a good time frame. Should also be emphasized that the reports that run on the server by trading systems, it can be very difficult. Because of these challenges, many companies are seeking to alleviate the problem by implementing a data warehouse system. Another strong benefit of data warehouses is that they allow compnies to use the data models for the query tasks that are very difficult to handle transactions.

There are a number of ways that can be modeled data, and the goal of modeling is generally to the speed of reporting. Often this is done by star scheme, and generally not recommended for transaction processing systems. The reason for this is because some modeling techniques can slow transaction processing systems. At the same time, the units may speed up the transaction process server, but it will slow down the query. Perhaps one of the most important benefits of data warehouses is that they paved the way for an environment where a small amount of technical knowledge about databases can be used to write queries and speed of maintenance of these queries.

Simply play an important role in the success of the data warehouse, and this is something that companies will want to pay attention to in early. Can set most data warehouses, even in such a way that simple queries can be written by workers who do not have a lot of technical skill. Until then, workers who do not have a lot of technical skill often experience problems when you try to perform certain tasks. Data warehouses are unique in the fact that it can serve as a warehouse, a warehouse for transaction processing systems that have been cleaned. The data can be reported against them, and it may not require treatment process systems to be fixed calibration.

That data warehouses can be extremely effective because it will allow the user to make queries of data on a regular basis. And this can be done from many trading systems, and can also be done from external sources. Before the advent of data warehouses, and companies that wanted reports from several systems for the production of extracts data and run programs special logic to combine this data. In most cases, this strategy worked fine. Despite this, and perhaps of companies that have large amounts of data problems if they wanted to sort through it often. While there are a number of challenges facing these scenarios, the company can deal with them if they take the time to put the correct procedures.

On older systems, and often is removed data that has been considered to be older than transaction processing systems. This has been done for the purpose of making the response time is easier to maintain. For tasks that require a query, the data may be stored ancient and recent data in the data warehouse in a way that gives the user control over the response time. Workers may not play in some of the challenges based on the information that they need. When the implementation of data warehouses and designed properly, they can bring a large number of advantages for companies that use them. The company can give predictions about how the performance of the company as a whole, and they can allow executives and managers in making critical decisions that can help companies succeed.

Comments

Popular posts from this blog

Contact Me

Do You have any queries ?                   If you are having any query or wishing to get any type of help related Datawarehouse, OBIEE, OBIA, OAC then please e-email on below. I will reply to your email within 24 hrs. If I didn’t reply to you within 24 Hrs., Please be patience, I must be busy in some work. kashif7222@gmail.com

Top 130 SQL Interview Questions And Answers

1. Display the dept information from department table.   Select   *   from   dept; 2. Display the details of all employees   Select * from emp; 3. Display the name and job for all employees    Select ename ,job from emp; 4. Display name and salary for all employees.   Select ename   , sal   from emp;   5. Display employee number and total salary   for each employee. Select empno, sal+comm from emp; 6. Display employee name and annual salary for all employees.   Select empno,empname,12*sal+nvl(comm,0) annualsal from emp; 7. Display the names of all employees who are working in department number 10   Select ename from emp where deptno=10; 8. Display the names of all employees working as   clerks and drawing a salary more than 3000   Select ename from emp where job=’clerk’and sal>3000; 9. Display employee number and names for employees who earn commission   Select empno,ename from emp where comm is not null and comm>0. 10

Informatica sample project

Informatica sample project - 1 CareFirst – Blue Cross Blue Shield, Maryland (April 2009 – Current) Senior ETL Developer/Lead Model Office DWH Implementation (April 2009 – Current) CareFirst Blue Cross Blue Shield is one of the leading health care insurance provided in Atlantic region of United States covering Maryland, Delaware and Washington DC. Model Office project was built to create data warehouse for multiple subject areas including Members, Claims, and Revenue etc. The project was to provide data into EDM and to third party vendor (Verisk) to develop cubes based on data provided into EDM. I was responsible for analyzing source systems data, designing and developing ETL mappings. I was also responsible for coordinating testing with analysts and users. Responsibilities: ·          Interacted with Data Modelers and Business Analysts to understand the requirements and the impact of the ETL on the business. ·          Understood the requirement and develope