SlideShare a Scribd company logo
1 of 3
Dear students get fully solved assignments
Send your semester & Specialization name to our mail id :
help.mbaassignments@gmail.com
or
call us at : 08263069601
WINTER 2015, ASSIGNMENT
PROGRAM BCA(REVISED 2007)
SEMESTER 6TH SEM
SUBJECT CODE & NAME BC0058 – DATA WAREHOUSING
CREDITS 4
BK ID B1011
MAX. MARKS 60
ANSWER ALL THE QUESTIONS
Question.1. Write the advantages and applications of
DataWarehouse.
Answer:Data warehousesare the traditionalsolution for data integration, and for good reason, but
thisisbecomingincreasinglydifficult to scale and copy data from multiple data sources in multiple
organizations in multiple locations
Question.2. Write short notes on:
(i) Metadata Component
Answer:Metadata for language resources and tools exists in a multitude of formats. Often these
descriptionscontainspecializedinformation for a specific research community (e.g. TEI headers for
text, IMDI for multimedia collections).
To overcome this dispersion CLARIN has initiated the
(ii) data Marts
Answer:A data mart is the access layer of the data warehouse environment that is used to get data
out to the users. The data mart is a subset of the data warehouse that is usually oriented to a
specific business line or team. Data marts are small slices of the data warehouse. Whereas data
warehouses have an enterprise-wide depth, the information in data marts pertains to a single
department.Insome deployments,eachdepartmentorbusinessunitis considered the owner of its
data mart including all the hardware,
Question.3. Write the Characteristics of Dimensional Table.
Answer:Indata warehousing,adimensiontableisone of the setof companiontables to a fact table.
The fact table containsbusinessfacts(ormeasures),andforeign keys which refer to candidate keys
(normally primary keys) in the dimension tables.
Contraryto fact tables,dimension tables contain descriptive attributes (or fields) that are typically
textual fields(ordiscrete numbersthatbehave like text).Theseattributesare designed to serve two
critical purposes: query constraining and/or filtering, and query result set labeling.
Question.4. Discuss the Extraction Methods in Data Warehouses.
Answer:Extractionisthe operationof extracting data from a source system for further use in a data
warehouse environment.This is the first step of the ETL process. After the extraction, this data can
be transformed and loaded into the data warehouse.
The source systems for a data warehouse are typically transaction processing applications. For
example, one of the source systems for a sales analysis data warehouse might be an order entry
system that records all of the current order
Question.5. Write short notes on :
(i) RAID 0
Answer: RAID 0 consistsof striping,withoutmirroringorparity. The capacity of a RAID 0 volume is
the sum of the capacities of the disks in the set, the same as with a spanned volume. There is no
addedredundancyforhandlingdiskfailures,justaswitha spannedvolume.Thus,failureof one disk
causes the loss of the entire RAID 0 volume, with reduced possibilities of data recovery when
compared to a broken spanned volume. Striping
(ii) RAID 1
Answer:RAID 1 consists of data mirroring, without parity or striping. Data is written identically to
two (or more) drives, thereby producing a "mirrored set" of drives. Thus, any read request can be
servicedbyanydrive inthe set. If a request is broadcast to every drive in the set, it can be serviced
by the drive that accesses the data first (depending on its seek time and rotational latency),
improving performance. Sustained read
Question.6. What is Metadata Management? Explain
IntegratedMetadata Management with a block diagram.
Answer:Meta-data management (also known as metadata management, without the hyphen)
involves managing data about other data, whereby this "other data" is generally referred to as
contentdata. The termis usedmostoften in relation to Digital media, but older forms of metadata
are catalogs, dictionaries, and taxonomies. For example, the Dewey Decimal Classification is a
metadata management system for books developed in 1876 for libraries.
Dear students get fully solved assignments
Send your semester & Specialization name to our mail id :
help.mbaassignments@gmail.com
or
call us at : 08263069601

More Related Content

What's hot

Role of Data Cleaning in Data Warehouse
Role of Data Cleaning in Data WarehouseRole of Data Cleaning in Data Warehouse
Role of Data Cleaning in Data WarehouseRamakant Soni
 
Database Management System
Database Management SystemDatabase Management System
Database Management SystemAbishek V S
 
Basic terminologies
Basic terminologiesBasic terminologies
Basic terminologiesRajendran
 
Elementary data organisation
Elementary data organisationElementary data organisation
Elementary data organisationMuzamil Hussain
 
Research trends in data warehousing and data mining
Research trends in data warehousing and data miningResearch trends in data warehousing and data mining
Research trends in data warehousing and data miningEr. Nawaraj Bhandari
 
Database management system chapter12
Database management system chapter12Database management system chapter12
Database management system chapter12Md. Mahedi Mahfuj
 
Database Concepts and Components
Database Concepts and ComponentsDatabase Concepts and Components
Database Concepts and ComponentsRIAH ENCARNACION
 
Implementation Issue with ORDBMS
Implementation Issue with ORDBMSImplementation Issue with ORDBMS
Implementation Issue with ORDBMSSandeep Poudel
 
DBMS - Distributed Databases
DBMS - Distributed DatabasesDBMS - Distributed Databases
DBMS - Distributed DatabasesMythiliMurugan3
 
ADVANCE DATABASE MANAGEMENT SYSTEM CONCEPTS & ARCHITECTURE by vikas jagtap
ADVANCE DATABASE MANAGEMENT SYSTEM CONCEPTS & ARCHITECTURE by vikas jagtapADVANCE DATABASE MANAGEMENT SYSTEM CONCEPTS & ARCHITECTURE by vikas jagtap
ADVANCE DATABASE MANAGEMENT SYSTEM CONCEPTS & ARCHITECTURE by vikas jagtapVikas Jagtap
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessingSlideshare
 
Data management new
Data management newData management new
Data management newMISY
 

What's hot (20)

Role of Data Cleaning in Data Warehouse
Role of Data Cleaning in Data WarehouseRole of Data Cleaning in Data Warehouse
Role of Data Cleaning in Data Warehouse
 
Database Management System
Database Management SystemDatabase Management System
Database Management System
 
Basic terminologies
Basic terminologiesBasic terminologies
Basic terminologies
 
Physical Design and Development
Physical Design and DevelopmentPhysical Design and Development
Physical Design and Development
 
Lecture2 is331 data&infomanag(databaseenv)
Lecture2 is331 data&infomanag(databaseenv)Lecture2 is331 data&infomanag(databaseenv)
Lecture2 is331 data&infomanag(databaseenv)
 
Elementary data organisation
Elementary data organisationElementary data organisation
Elementary data organisation
 
Metadata
MetadataMetadata
Metadata
 
DBMS
DBMSDBMS
DBMS
 
Research trends in data warehousing and data mining
Research trends in data warehousing and data miningResearch trends in data warehousing and data mining
Research trends in data warehousing and data mining
 
Database management system chapter12
Database management system chapter12Database management system chapter12
Database management system chapter12
 
Database Concepts and Components
Database Concepts and ComponentsDatabase Concepts and Components
Database Concepts and Components
 
SWL 8
SWL 8SWL 8
SWL 8
 
Implementation Issue with ORDBMS
Implementation Issue with ORDBMSImplementation Issue with ORDBMS
Implementation Issue with ORDBMS
 
DBMS - Distributed Databases
DBMS - Distributed DatabasesDBMS - Distributed Databases
DBMS - Distributed Databases
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
ADVANCE DATABASE MANAGEMENT SYSTEM CONCEPTS & ARCHITECTURE by vikas jagtap
ADVANCE DATABASE MANAGEMENT SYSTEM CONCEPTS & ARCHITECTURE by vikas jagtapADVANCE DATABASE MANAGEMENT SYSTEM CONCEPTS & ARCHITECTURE by vikas jagtap
ADVANCE DATABASE MANAGEMENT SYSTEM CONCEPTS & ARCHITECTURE by vikas jagtap
 
Week 1
Week 1Week 1
Week 1
 
Hd3113831386
Hd3113831386Hd3113831386
Hd3113831386
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data management new
Data management newData management new
Data management new
 

Viewers also liked

Consumer behaviour (1)
Consumer behaviour (1)Consumer behaviour (1)
Consumer behaviour (1)smumbahelp
 
Bc0057 object oriented analysis and design
Bc0057   object oriented analysis and designBc0057   object oriented analysis and design
Bc0057 object oriented analysis and designsmumbahelp
 
Bc5901 artificial intelligence
Bc5901   artificial intelligenceBc5901   artificial intelligence
Bc5901 artificial intelligencesmumbahelp
 
글로벌 비즈니스에 대한 본질적 이해로의 길 (Ringle 교재 소개 자료)
글로벌 비즈니스에 대한 본질적 이해로의 길 (Ringle 교재 소개 자료)글로벌 비즈니스에 대한 본질적 이해로의 길 (Ringle 교재 소개 자료)
글로벌 비즈니스에 대한 본질적 이해로의 길 (Ringle 교재 소개 자료)Seunghun Lee
 
Dobijanje biodizela iz ulja semena magarećeg trna
Dobijanje biodizela iz ulja semena magarećeg trnaDobijanje biodizela iz ulja semena magarećeg trna
Dobijanje biodizela iz ulja semena magarećeg trnaMilan Kostic
 
Ms 25 managing change in organisations
Ms 25 managing change in organisationsMs 25 managing change in organisations
Ms 25 managing change in organisationssmumbahelp
 
Sample elective – retail management
Sample   elective – retail managementSample   elective – retail management
Sample elective – retail managementsmumbahelp
 
Sample elective – investment management
Sample   elective – investment managementSample   elective – investment management
Sample elective – investment managementsmumbahelp
 
Ml0017 mall management
Ml0017 mall managementMl0017 mall management
Ml0017 mall managementsmumbahelp
 
Ml0018 project management in retail
Ml0018  project management in retailMl0018  project management in retail
Ml0018 project management in retailsmumbahelp
 
Qm0024 managing quality in organizations
Qm0024   managing quality in organizationsQm0024   managing quality in organizations
Qm0024 managing quality in organizationssmumbahelp
 
Qm0023 understanding iso 90012008
Qm0023   understanding iso 90012008Qm0023   understanding iso 90012008
Qm0023 understanding iso 90012008smumbahelp
 
Qm0025 quality standards and models
Qm0025  quality standards and modelsQm0025  quality standards and models
Qm0025 quality standards and modelssmumbahelp
 

Viewers also liked (16)

Consumer behaviour (1)
Consumer behaviour (1)Consumer behaviour (1)
Consumer behaviour (1)
 
Strategic hrm
Strategic hrmStrategic hrm
Strategic hrm
 
Bc0057 object oriented analysis and design
Bc0057   object oriented analysis and designBc0057   object oriented analysis and design
Bc0057 object oriented analysis and design
 
Bc5901 artificial intelligence
Bc5901   artificial intelligenceBc5901   artificial intelligence
Bc5901 artificial intelligence
 
Maher aboud C.V
Maher aboud C.VMaher aboud C.V
Maher aboud C.V
 
글로벌 비즈니스에 대한 본질적 이해로의 길 (Ringle 교재 소개 자료)
글로벌 비즈니스에 대한 본질적 이해로의 길 (Ringle 교재 소개 자료)글로벌 비즈니스에 대한 본질적 이해로의 길 (Ringle 교재 소개 자료)
글로벌 비즈니스에 대한 본질적 이해로의 길 (Ringle 교재 소개 자료)
 
Dobijanje biodizela iz ulja semena magarećeg trna
Dobijanje biodizela iz ulja semena magarećeg trnaDobijanje biodizela iz ulja semena magarećeg trna
Dobijanje biodizela iz ulja semena magarećeg trna
 
Basic Pharmacology of Diuretics
Basic Pharmacology of DiureticsBasic Pharmacology of Diuretics
Basic Pharmacology of Diuretics
 
Ms 25 managing change in organisations
Ms 25 managing change in organisationsMs 25 managing change in organisations
Ms 25 managing change in organisations
 
Sample elective – retail management
Sample   elective – retail managementSample   elective – retail management
Sample elective – retail management
 
Sample elective – investment management
Sample   elective – investment managementSample   elective – investment management
Sample elective – investment management
 
Ml0017 mall management
Ml0017 mall managementMl0017 mall management
Ml0017 mall management
 
Ml0018 project management in retail
Ml0018  project management in retailMl0018  project management in retail
Ml0018 project management in retail
 
Qm0024 managing quality in organizations
Qm0024   managing quality in organizationsQm0024   managing quality in organizations
Qm0024 managing quality in organizations
 
Qm0023 understanding iso 90012008
Qm0023   understanding iso 90012008Qm0023   understanding iso 90012008
Qm0023 understanding iso 90012008
 
Qm0025 quality standards and models
Qm0025  quality standards and modelsQm0025  quality standards and models
Qm0025 quality standards and models
 

Similar to Bc0058 data warehousing

Mc0088 data mining
Mc0088  data miningMc0088  data mining
Mc0088 data miningsmumbahelp
 
Mc0088 data mining
Mc0088  data miningMc0088  data mining
Mc0088 data miningsmumbahelp
 
UNIT-5 DATA WAREHOUSING.docx
UNIT-5 DATA WAREHOUSING.docxUNIT-5 DATA WAREHOUSING.docx
UNIT-5 DATA WAREHOUSING.docxDURGADEVIL
 
Bt9003, data storage management
Bt9003, data storage managementBt9003, data storage management
Bt9003, data storage managementsmumbahelp
 
MySQL 8 Server Optimization Swanseacon 2018
MySQL 8 Server Optimization Swanseacon 2018MySQL 8 Server Optimization Swanseacon 2018
MySQL 8 Server Optimization Swanseacon 2018Dave Stokes
 
MySQL 8 Tips and Tricks from Symfony USA 2018, San Francisco
MySQL 8 Tips and Tricks from Symfony USA 2018, San FranciscoMySQL 8 Tips and Tricks from Symfony USA 2018, San Francisco
MySQL 8 Tips and Tricks from Symfony USA 2018, San FranciscoDave Stokes
 
Bt9001, data mining
Bt9001, data miningBt9001, data mining
Bt9001, data miningsmumbahelp
 
Data Warehouse ( Dw Of Dwh )
Data Warehouse ( Dw Of Dwh )Data Warehouse ( Dw Of Dwh )
Data Warehouse ( Dw Of Dwh )Jenny Calhoon
 
Sybase job interview_preparation_guide
Sybase job interview_preparation_guideSybase job interview_preparation_guide
Sybase job interview_preparation_guideNV Suresh Kumar
 
Sqlserver interview questions
Sqlserver interview questionsSqlserver interview questions
Sqlserver interview questionsTaj Basha
 
Mi0034 – database management system
Mi0034 – database management systemMi0034 – database management system
Mi0034 – database management systemsmumbahelp
 
UNIT - 1 Part 2: Data Warehousing and Data Mining
UNIT - 1 Part 2: Data Warehousing and Data MiningUNIT - 1 Part 2: Data Warehousing and Data Mining
UNIT - 1 Part 2: Data Warehousing and Data MiningNandakumar P
 
data analytics lecture 3.2.ppt
data analytics lecture 3.2.pptdata analytics lecture 3.2.ppt
data analytics lecture 3.2.pptRutujaPatil247341
 
How to Achieve Fast Data Performance in Big Data, Logical Data Warehouse, and...
How to Achieve Fast Data Performance in Big Data, Logical Data Warehouse, and...How to Achieve Fast Data Performance in Big Data, Logical Data Warehouse, and...
How to Achieve Fast Data Performance in Big Data, Logical Data Warehouse, and...Denodo
 
Datawarehousing & DSS
Datawarehousing & DSSDatawarehousing & DSS
Datawarehousing & DSSDeepali Raut
 

Similar to Bc0058 data warehousing (20)

Mc0088 data mining
Mc0088  data miningMc0088  data mining
Mc0088 data mining
 
Mc0088 data mining
Mc0088  data miningMc0088  data mining
Mc0088 data mining
 
Cs437 lecture 1-6
Cs437 lecture 1-6Cs437 lecture 1-6
Cs437 lecture 1-6
 
Presentation
PresentationPresentation
Presentation
 
UNIT-5 DATA WAREHOUSING.docx
UNIT-5 DATA WAREHOUSING.docxUNIT-5 DATA WAREHOUSING.docx
UNIT-5 DATA WAREHOUSING.docx
 
Bt9003, data storage management
Bt9003, data storage managementBt9003, data storage management
Bt9003, data storage management
 
MySQL 8 Server Optimization Swanseacon 2018
MySQL 8 Server Optimization Swanseacon 2018MySQL 8 Server Optimization Swanseacon 2018
MySQL 8 Server Optimization Swanseacon 2018
 
MySQL 8 Tips and Tricks from Symfony USA 2018, San Francisco
MySQL 8 Tips and Tricks from Symfony USA 2018, San FranciscoMySQL 8 Tips and Tricks from Symfony USA 2018, San Francisco
MySQL 8 Tips and Tricks from Symfony USA 2018, San Francisco
 
Open Source Datawarehouse
Open Source DatawarehouseOpen Source Datawarehouse
Open Source Datawarehouse
 
Bt9001, data mining
Bt9001, data miningBt9001, data mining
Bt9001, data mining
 
Data Warehouse ( Dw Of Dwh )
Data Warehouse ( Dw Of Dwh )Data Warehouse ( Dw Of Dwh )
Data Warehouse ( Dw Of Dwh )
 
Sybase job interview_preparation_guide
Sybase job interview_preparation_guideSybase job interview_preparation_guide
Sybase job interview_preparation_guide
 
Oracle tutorial
Oracle tutorialOracle tutorial
Oracle tutorial
 
Sqlserver interview questions
Sqlserver interview questionsSqlserver interview questions
Sqlserver interview questions
 
Mi0034 – database management system
Mi0034 – database management systemMi0034 – database management system
Mi0034 – database management system
 
UNIT - 1 Part 2: Data Warehousing and Data Mining
UNIT - 1 Part 2: Data Warehousing and Data MiningUNIT - 1 Part 2: Data Warehousing and Data Mining
UNIT - 1 Part 2: Data Warehousing and Data Mining
 
data analytics lecture 3.2.ppt
data analytics lecture 3.2.pptdata analytics lecture 3.2.ppt
data analytics lecture 3.2.ppt
 
How to Achieve Fast Data Performance in Big Data, Logical Data Warehouse, and...
How to Achieve Fast Data Performance in Big Data, Logical Data Warehouse, and...How to Achieve Fast Data Performance in Big Data, Logical Data Warehouse, and...
How to Achieve Fast Data Performance in Big Data, Logical Data Warehouse, and...
 
Datawarehousing & DSS
Datawarehousing & DSSDatawarehousing & DSS
Datawarehousing & DSS
 
J0212065068
J0212065068J0212065068
J0212065068
 

Recently uploaded

Painted Grey Ware.pptx, PGW Culture of India
Painted Grey Ware.pptx, PGW Culture of IndiaPainted Grey Ware.pptx, PGW Culture of India
Painted Grey Ware.pptx, PGW Culture of IndiaVirag Sontakke
 
Framing an Appropriate Research Question 6b9b26d93da94caf993c038d9efcdedb.pdf
Framing an Appropriate Research Question 6b9b26d93da94caf993c038d9efcdedb.pdfFraming an Appropriate Research Question 6b9b26d93da94caf993c038d9efcdedb.pdf
Framing an Appropriate Research Question 6b9b26d93da94caf993c038d9efcdedb.pdfUjwalaBharambe
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxpboyjonauth
 
Roles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in PharmacovigilanceRoles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in PharmacovigilanceSamikshaHamane
 
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdfEnzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdfSumit Tiwari
 
Earth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice greatEarth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice greatYousafMalik24
 
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...Marc Dusseiller Dusjagr
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptxVS Mahajan Coaching Centre
 
History Class XII Ch. 3 Kinship, Caste and Class (1).pptx
History Class XII Ch. 3 Kinship, Caste and Class (1).pptxHistory Class XII Ch. 3 Kinship, Caste and Class (1).pptx
History Class XII Ch. 3 Kinship, Caste and Class (1).pptxsocialsciencegdgrohi
 
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTiammrhaywood
 
Hierarchy of management that covers different levels of management
Hierarchy of management that covers different levels of managementHierarchy of management that covers different levels of management
Hierarchy of management that covers different levels of managementmkooblal
 
How to Configure Email Server in Odoo 17
How to Configure Email Server in Odoo 17How to Configure Email Server in Odoo 17
How to Configure Email Server in Odoo 17Celine George
 
Solving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxSolving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxOH TEIK BIN
 
भारत-रोम व्यापार.pptx, Indo-Roman Trade,
भारत-रोम व्यापार.pptx, Indo-Roman Trade,भारत-रोम व्यापार.pptx, Indo-Roman Trade,
भारत-रोम व्यापार.pptx, Indo-Roman Trade,Virag Sontakke
 
EPANDING THE CONTENT OF AN OUTLINE using notes.pptx
EPANDING THE CONTENT OF AN OUTLINE using notes.pptxEPANDING THE CONTENT OF AN OUTLINE using notes.pptx
EPANDING THE CONTENT OF AN OUTLINE using notes.pptxRaymartEstabillo3
 
Crayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon ACrayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon AUnboundStockton
 
CELL CYCLE Division Science 8 quarter IV.pptx
CELL CYCLE Division Science 8 quarter IV.pptxCELL CYCLE Division Science 8 quarter IV.pptx
CELL CYCLE Division Science 8 quarter IV.pptxJiesonDelaCerna
 

Recently uploaded (20)

Painted Grey Ware.pptx, PGW Culture of India
Painted Grey Ware.pptx, PGW Culture of IndiaPainted Grey Ware.pptx, PGW Culture of India
Painted Grey Ware.pptx, PGW Culture of India
 
Framing an Appropriate Research Question 6b9b26d93da94caf993c038d9efcdedb.pdf
Framing an Appropriate Research Question 6b9b26d93da94caf993c038d9efcdedb.pdfFraming an Appropriate Research Question 6b9b26d93da94caf993c038d9efcdedb.pdf
Framing an Appropriate Research Question 6b9b26d93da94caf993c038d9efcdedb.pdf
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptx
 
9953330565 Low Rate Call Girls In Rohini Delhi NCR
9953330565 Low Rate Call Girls In Rohini  Delhi NCR9953330565 Low Rate Call Girls In Rohini  Delhi NCR
9953330565 Low Rate Call Girls In Rohini Delhi NCR
 
Roles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in PharmacovigilanceRoles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in Pharmacovigilance
 
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdfEnzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
 
Earth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice greatEarth Day Presentation wow hello nice great
Earth Day Presentation wow hello nice great
 
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
 
History Class XII Ch. 3 Kinship, Caste and Class (1).pptx
History Class XII Ch. 3 Kinship, Caste and Class (1).pptxHistory Class XII Ch. 3 Kinship, Caste and Class (1).pptx
History Class XII Ch. 3 Kinship, Caste and Class (1).pptx
 
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
 
Hierarchy of management that covers different levels of management
Hierarchy of management that covers different levels of managementHierarchy of management that covers different levels of management
Hierarchy of management that covers different levels of management
 
Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝
 
How to Configure Email Server in Odoo 17
How to Configure Email Server in Odoo 17How to Configure Email Server in Odoo 17
How to Configure Email Server in Odoo 17
 
Solving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxSolving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptx
 
भारत-रोम व्यापार.pptx, Indo-Roman Trade,
भारत-रोम व्यापार.pptx, Indo-Roman Trade,भारत-रोम व्यापार.pptx, Indo-Roman Trade,
भारत-रोम व्यापार.pptx, Indo-Roman Trade,
 
EPANDING THE CONTENT OF AN OUTLINE using notes.pptx
EPANDING THE CONTENT OF AN OUTLINE using notes.pptxEPANDING THE CONTENT OF AN OUTLINE using notes.pptx
EPANDING THE CONTENT OF AN OUTLINE using notes.pptx
 
Crayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon ACrayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon A
 
CELL CYCLE Division Science 8 quarter IV.pptx
CELL CYCLE Division Science 8 quarter IV.pptxCELL CYCLE Division Science 8 quarter IV.pptx
CELL CYCLE Division Science 8 quarter IV.pptx
 
ESSENTIAL of (CS/IT/IS) class 06 (database)
ESSENTIAL of (CS/IT/IS) class 06 (database)ESSENTIAL of (CS/IT/IS) class 06 (database)
ESSENTIAL of (CS/IT/IS) class 06 (database)
 

Bc0058 data warehousing

  • 1. Dear students get fully solved assignments Send your semester & Specialization name to our mail id : help.mbaassignments@gmail.com or call us at : 08263069601 WINTER 2015, ASSIGNMENT PROGRAM BCA(REVISED 2007) SEMESTER 6TH SEM SUBJECT CODE & NAME BC0058 – DATA WAREHOUSING CREDITS 4 BK ID B1011 MAX. MARKS 60 ANSWER ALL THE QUESTIONS Question.1. Write the advantages and applications of DataWarehouse. Answer:Data warehousesare the traditionalsolution for data integration, and for good reason, but thisisbecomingincreasinglydifficult to scale and copy data from multiple data sources in multiple organizations in multiple locations Question.2. Write short notes on: (i) Metadata Component Answer:Metadata for language resources and tools exists in a multitude of formats. Often these descriptionscontainspecializedinformation for a specific research community (e.g. TEI headers for text, IMDI for multimedia collections). To overcome this dispersion CLARIN has initiated the (ii) data Marts Answer:A data mart is the access layer of the data warehouse environment that is used to get data out to the users. The data mart is a subset of the data warehouse that is usually oriented to a
  • 2. specific business line or team. Data marts are small slices of the data warehouse. Whereas data warehouses have an enterprise-wide depth, the information in data marts pertains to a single department.Insome deployments,eachdepartmentorbusinessunitis considered the owner of its data mart including all the hardware, Question.3. Write the Characteristics of Dimensional Table. Answer:Indata warehousing,adimensiontableisone of the setof companiontables to a fact table. The fact table containsbusinessfacts(ormeasures),andforeign keys which refer to candidate keys (normally primary keys) in the dimension tables. Contraryto fact tables,dimension tables contain descriptive attributes (or fields) that are typically textual fields(ordiscrete numbersthatbehave like text).Theseattributesare designed to serve two critical purposes: query constraining and/or filtering, and query result set labeling. Question.4. Discuss the Extraction Methods in Data Warehouses. Answer:Extractionisthe operationof extracting data from a source system for further use in a data warehouse environment.This is the first step of the ETL process. After the extraction, this data can be transformed and loaded into the data warehouse. The source systems for a data warehouse are typically transaction processing applications. For example, one of the source systems for a sales analysis data warehouse might be an order entry system that records all of the current order Question.5. Write short notes on : (i) RAID 0 Answer: RAID 0 consistsof striping,withoutmirroringorparity. The capacity of a RAID 0 volume is the sum of the capacities of the disks in the set, the same as with a spanned volume. There is no addedredundancyforhandlingdiskfailures,justaswitha spannedvolume.Thus,failureof one disk causes the loss of the entire RAID 0 volume, with reduced possibilities of data recovery when compared to a broken spanned volume. Striping (ii) RAID 1 Answer:RAID 1 consists of data mirroring, without parity or striping. Data is written identically to two (or more) drives, thereby producing a "mirrored set" of drives. Thus, any read request can be
  • 3. servicedbyanydrive inthe set. If a request is broadcast to every drive in the set, it can be serviced by the drive that accesses the data first (depending on its seek time and rotational latency), improving performance. Sustained read Question.6. What is Metadata Management? Explain IntegratedMetadata Management with a block diagram. Answer:Meta-data management (also known as metadata management, without the hyphen) involves managing data about other data, whereby this "other data" is generally referred to as contentdata. The termis usedmostoften in relation to Digital media, but older forms of metadata are catalogs, dictionaries, and taxonomies. For example, the Dewey Decimal Classification is a metadata management system for books developed in 1876 for libraries. Dear students get fully solved assignments Send your semester & Specialization name to our mail id : help.mbaassignments@gmail.com or call us at : 08263069601