Searching for "If"

Q:

What is Uniform Data Access Integration?

Answer

- UDAI places the data in the source systems.


- A set of views are defined for providing access the unified view to the clients / customers.


- Zero latency of data can be propagated from the source system.


- The generated consolidated data need not require separate storage space.


- Data history and version management is limited and applied only to the similar type of data.


- Accessing to the user data overloads on the source systems.

Report Error

View answer Workspace Report Error Discuss

Q:

What is Cascade and Drill Through? What is the difference between them?

Answer

Cascade:


- Cascade process involves taking values from various other prompts.


- The result is a single report.


- The result is used when a criteria is to be implemented.


 


Drill Through:


- Drill Through process is implemented when navigation from summary to detailed information.


- Drill Through has a parent and a child report.


- Data of another report can be seen based on the current details of data.

Report Error

View answer Workspace Report Error Discuss

Q:

What is the difference between agglomerative and divisive Hierarchical Clustering?

Answer

- Agglomerative Hierarchical clustering method allows the clusters to be read from bottom to top and it follows this approach so that the program always reads from the sub-component first then moves to the parent. Whereas, divisive uses top-bottom approach in which the parent is visited first then the child. 


- Agglomerative hierarchical method consists of objects in which each object creates its own clusters and these clusters are grouped together to create a large cluster. It defines a process of merging that carries on till all the single clusters are merged together into a complete big cluster that will consists of all the objects of child clusters. Whereas, in divisive the parent cluster is divided into smaller cluster and it keeps on dividing till each cluster has a single object to represent.

Report Error

View answer Workspace Report Error Discuss

Q:

What are the different models used in cluster analysis?

Answer

There are many algorithms that can be used to analyze the database to check the maintenance of all the data sets that are already present. The different types of cluster models include as follows:


- Connectivity models: these are the models that connect one cluster to another cluster. This includes the example of hierarchical clustering that is based on the distance connectivity of one model to another model. 


- Centroid models: these are the models that are used to find the clusters using the single mean vector. It includes the example of k-means algorithm.


- Distribution models: it includes the specification of the models that are statistically distributed for example multivariate normal distribution model.


- Density models: deals with the clusters that are densely connected with one another in the regions having the data space. 


- Group models: specifies the model that doesn’t provide the refined model for the output and just gives the grouping information

Report Error

View answer Workspace Report Error Discuss

Q:

Difference between ER Modeling and Dimensional Modeling.

Answer

Dimensional modelling is very flexible for the user perspective. Dimensional data model is mapped for creating schemas. Where as ER Model is not mapped for creating shemas and does not use in conversion of normalization of data into denormalized form.


ER Model is utilized for OLTP databases that uses any of the 1st or 2nd or 3rd normal forms, where as dimensional data model is used for data warehousing and uses 3rd normal form.


ER model contains normalized data where as Dimensional model contains denormalized data.

Report Error

View answer Workspace Report Error Discuss

Q:

What is the difference between view and materialized view?

Answer

View:


- Tail raid data representation is provided by a view to access data from its table.


- It has logical structure can not occupy space.


- Changes get affected in corresponding tables.


 


Materialized view


- Pre calculated data persists in materialized view.


- It has physical data space occupation.


- Changes will not get affected in corresponding tables.

Report Error

View answer Workspace Report Error Discuss

Q:

Explain the difference between star and snowflake schemas.

Answer

Star schema: A highly de-normalized technique. A star schema has one fact table and is associated with numerous dimensions table and depicts a star.


Snow flake schema: The normalized principles applied star schema is known as Snow flake schema. Every dimension table is associated with sub dimension table.


 


Differences:


- A dimension table will not have parent table in star schema, whereas snow flake schemas have one or more parent tables.


- The dimensional table itself consists of hierarchies of dimensions in star schema, where as hierarchies are split into different tables in snow flake schema. The drilling down data from top most hierarchies to the lowermost hierarchies can be done.

Report Error

View answer Workspace Report Error Discuss

Q:

Explain the difference between data mining and data warehousing.

Answer

Data mining is a method for comparing large amounts of data for the purpose of finding patterns. Data mining is normally used for models and forecasting. Data mining is the process of correlations, patterns by shifting through large data repositories using pattern recognition techniques.


Data warehousing is the central repository for the data of several business systems in an enterprise. Data from various resources extracted and organized in the data warehouse selectively for analysis and accessibility.

Report Error

View answer Workspace Report Error Discuss