/* */
SUBJECTS
|
BROWSE
|
CAREER CENTER
|
POPULAR
|
JOIN
|
LOGIN
Business Skills
|
Soft Skills
|
Basic Literacy
|
Certifications
About
|
Help
|
Privacy
|
Terms
|
Email
Search
Test your basic knowledge |
Data Warehousing
Start Test
Study First
Subject
:
it-skills
Instructions:
Answer 50 questions in 15 minutes.
If you are not ready to take this test, you can
study here
.
Match each statement with the correct term.
Don't refresh. All questions and answers are randomly picked and ordered every time you load a test.
This is a study tool. The 3 wrong answers for each question are randomly chosen from answers to other questions. So, you might find at times the answers obvious, but you will see it re-enforces your understanding as you take the test each time.
1. Fourth stage of building a data mart
Accessing
Enterprise Information Management
Dimensional modelling
Extract
2. Unlike independent data marts the marts are linked via middleware
Independent data marts
Data mart bus architecture
Translation table
OLAP
3. A synonym for Business Intelligence
Constellation
Decision Support
Parallel partitioning
Metadata
4. These extend BI into automating and optimising processes
Define the grain
Analytical applications
Operational system
Source system
5. A group of related fact tables
Fact grain
OLAP
Family
Define the grain
6. Third stage of the data warehouse data architecture design process
Drilling down
Choose the dimensions
Maintenance
Business query tool
7. Look-up tables referred to by fact tables
Business Intelligence
Hub and spoke Architecture
Define the grain
Dimension table
8. Second stage of building a data mart
Parallel partitioning
Operational BI
Choose the dimensions
Construction
9. A logical design technique that presents data in a way that is optimised for high-performance access
Dimensional modelling
Constellation
Business query tool
Accessing
10. The level of detail required for a fact to be useful
Fact grain
Source system
Define the users
Family
11. A single low-level fact representing a single business operation
Dimension table
Transaction
Load
Fact grain
12. Requesting information about related facts
Enterprise Information Management
Aggregate tables
Drilling across
Parallel processing and/or partitioning
13. Draws data from operational or external systems
Operational system
Independent data mart
Construction
Dependent data mart
14. A daily snapshot for each day of a set period
Construction
Current rolling snapshot
Choose the facts
OLAP
15. Tables containing summary records calculated from the main fact tables
Metadata
Population
Aggregate tables
Design
16. A visual display of the most important information needed by a particular user
Population
Translation table
Star schema
Dashboard
17. Draws data from a data warehouse
Dependent data mart
Fact table
Snowflake schema
Metadata
18. Requesting more information about a particular fact
Dependent data mart
Enterprise Information Management
Independent data mart
Drilling down
19. First stage of building a data mart
Current rolling snapshot
Parallel partitioning
Design
Ad hoc query
20. Allows multiple CPUs to process multiple queries simultaneously - providing scalability.
Star schema
Enterprise Information Management
Business query tool
Parallel partitioning
21. A database table that maps (e.g.) manufacturing product IDs to sales product IDs
Fact table
Translation table
Dimension table
OLAP
22. A report created by an IT department user
Family
Business Intelligence
Operational BI
Production report
23. A schema where dimensions may be connected to facts or to other dimensions
Source system
Transaction
Snowflake schema
Data mart bus architecture
24. The operational systems - data warehouse and data marts
Maintenance
Fact table
Conformed dimensions
Back end
25. A query created by a BI user
OLAP
Ad hoc query
Independent data marts
Current rolling snapshot
26. Third stage of building a data mart
ETL
Population
Transaction
Dependent data mart
27. An alternative term for a data warehouse
Enterprise Information Management
Transaction
Load
Source system
28. A system that allows people to access and analyse data for business management and performance improvement
Fact grain
Business Intelligence
Define the grain
Translation table
29. All database architectural fall into one of these two categories: EDW or _________ (independent data marts - data mart bus architecture - hub and spoke architecture - centralized data warehouse - federated data warehouse)
Transform
Data mart design
Production report
Hub and spoke Architecture
30. Issues to consider when deciding EDW architecture: 1. Which database management system (DBMS) should be used? (ex: Crash Data" MS SQL) 2. Will ______________________ be used? 3. Will data migration tools be used to load the data warehouse?4. What too
Conformed dimensions
Load
Parallel processing and/or partitioning
ELT
31. Most famous data warehouse where a maintable infastructure includes a centralized data warehouse that serves for the needs of all organizational units (most favored 39 percent)
Dimensional modelling
Parallel processing and/or partitioning
Enterprise Information Management
Hub and spoke Architecture
32. Make changes to data so that it is compatible with a new database
ELT
Transform
Master Data Management
Fact table
33. Extract - Transform and Load
Decision Support
Maintenance
ETL
Star schema
34. Splitting data tables into smaller tables for efficient access.
Load
Partioning
Snapshot
Maintenance
35. Dimensions which are shared by two or more facts
Enterprise Information Management
Hub and spoke Architecture
Load
Conformed dimensions
36. Online Analytical Processing
OLAP
Dashboard
Independent data marts
Aggregate tables
37. Business applications - methods and tools that support the caputre and use of master data
Independent data mart
Aggregate tables
Current rolling snapshot
Master Data Management
38. A table containing foreign keys and values
Business query tool
Metadata
Fact table
Construction
39. Second stage of the data warehouse data architecture design process
Source system
Parallel processing and/or partitioning
Define the grain
Enterprise Information Management
40. Data accessible to the whole data warehouse
Parallel processing and/or partitioning
Master data
Extract
Constellation
41. A summary record for a specific reporting period
Snapshot
Population
Star schema
Dimension table
42. Take data from a source system
Operational system
Construction
Extract
Production report
43. A computer system used to support the day-to-day operations of an organisation
OLAP
Data mart design
Parallel partitioning
Operational system
44. An operational system that provides data for a business information system
Source system
Data mart design
Operational system
Construction
45. Fifth stage of building a data mart
Business Intelligence
Maintenance
Analytical applications
ELT
46. Extract - Load and Transform
Operational system
Data mart design
Conformed dimensions
ELT
47. Used to support day-to-day operations
Transaction
Business Intelligence
Choose the dimensions
Operational BI
48. Data about the data
Metadata
Analytical applications
Choose the dimensions
Front end
49. Import data into a new database
Analytical applications
Accessing
Front end
Load
50. A simplified form of a data warehouse supporting the work of a single line of business
Independent data marts
Aggregate tables
Data mart
Business Intelligence
//
//