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Do you agree or disagree from this feedback? https://www.youtube.com/watch?v=f18

ID: 3879861 • Letter: D

Question

Do you agree or disagree from this feedback? https://www.youtube.com/watch?v=f180l9_edsA

Pat O'Sullivan talk on Big Data Modelling "Lots has changed but lot of it remain the same" is the basic theme of the talk on Big Data modelling by Pat O'Sullivan. A single data model can now be used to span Hadoop and relational Database. The considerations for creating such a data model remain more or less similar to building a relational data warehouse. There are physical constraints in such a model but the logical model remains same. The talk takes us through how Organizations are looking for Big Data to augment traditional Data Warehouse. Big Data is new and data models are still new and organizations are still learning. It is fast changing. Some Examples presented where big data is being used to augment the traditional data warehouse data can be found in insurance, healthcare and Banking industry. Business issues are still the primary focus and have to be addressed by the models. These are now powered by additional information from Hadoop. Same best practices, same challenges and issues like traditional relational DB warehouse 1 Need for enforce consistency across enterprise wide data assets. 2 Business users engaged in data warehouse development. 3 Good governance. Some additional challenges in using big data as opposed to relational DB is to have a balancing act between business user, data architect and data scientist. This varies between organizations and is an ongoing process. Model has to be managed in multiple physical environments. The presentation takes us through the types of models in big data environment, Big data platform and modelling considerations. Some key aspects emphasized in the talk are the importance of business vocabulary in the design of the data models, Landing area where structured and unstructured data are present, the level of schema and level or processing applied to the data before it moves to Hadoop Information ingestion, core warehouse, data governance.

Explanation / Answer

Answer is as follows :

According to my opinion,

I am fully agree with this feedback.

Day by day the data in the organization gets increased and that is becomes a difficult to handle with old data models such as relational modles etc. So we want a efficient model to handle the data effectively in large organizations such as banking sector , insurance agencies etc..

The data in these sector increasing day by day. To handle it with old models leads to data complexity and may be there is redundancy also. One can open two accounts in same bank but with different branches.One can buy multiple insurance policy from same company of same type but with different branches.

This is also leads data duplicacy and may be there are some security issues as well as.

So we require a better model such as Big data to remove such things and the things provided in given feedback.

if there is any query please ask in comments...

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