SlideShare a Scribd company logo
1 of 4
UOP DBM 502 Week 6 Big Data Paper (14 Pages)
NEW
Check this A+ tutorial guideline at
http://www.uopassignments.com/dbm-502-
uop/dbm-502-week-6-big-data-paper-recent
For more classes visit
http://www.uopassignments.com
DBM 502 Week 6 Big Data Paper (14 Pages) NEW
This assignment reflects an accumulation of the
individual assignments from Weeks One through
Five, which included creating an ERD, exploring
database fundamentals, Data Architecture for
Transactional Databases, Interacting with a
Transactional Database, Data and Database
Administration for Transactional Databases,
Data Warehouses and Historical Data.
Write an additional 1- to 2-page paper based on
the following information:
Management is happy with the operational work
you have done and with your support of their
strategic investigation of the situation and
trends over time through the data warehouse.
But they have heard that new techniques called
analytics (or even “big data”) can be used to find
unexpected gems in all of the data that they have
been collecting, whether or not it is structured.
Are there kinds of behavior (e.g., by customers
or products or their own systems) that might be
valuable to be able to predict What are they
What data (either internal sources described in
the materials or external data sources available
for free or purchase) might help make these
predictions What tools would you use for
management of the data, for statistical analysis,
or for visualization Why is it appropriate to meet
the organization’s needs
Review and consolidate the individual
assignment papers you have written throughout
Weeks One through Six, along with any feedback
you received from your instructor, and ensure
you have included the following:
Explained the role of data in information
systems and business
Distinguished between the three types of data
management in modern organizations
Explained the meaning of key data management
questions and the importance of the answers
Explained the environment, roles, and skills
needed to support transactional data
management, including relational database
environment, database designers, database
developers, and database administrators
Explained and applied techniques for deciding
what data you need for transactional data
management, including: entity relationship
modeling and conceptual design
Demonstrated how to use DML to enter
information into relational databases
Explained how to use SQL to extract rows and
columns of data from tables and combine data
from multiple tables, using SELECT
Distinguished between different approaches for
managing data in relational databases, and
explained when each might be used, including
applications with embedded SQL, stored
procedures, and triggers
Explained why database and information
security is important to an organization
Explained how database administrators and
developers can protect the integrity and
confidentiality of data against internal and
external attacks
Explained how database administrators can
protect data integrity against system and
hardware outages
Explained the roles, skills, and tools needed for
managing historical data via data warehouses
Explained how to select, clean, and bring data of
interest into a data warehouse
Demonstrated techniques for designing an
effective data warehouse, through star database
structures, selecting and organizing fact and
dimension tables, and specialized indexing (e.g.,
bitmap indexes)
Explained the skills and environments required
for analytic data
Described how those tools are used
Explained the business value of analytic results,
such as data visualization and finding and
applying patterns

More Related Content

What's hot

Influence of-structured--semi-structured--unstructured-data-on-various-data-m...
Influence of-structured--semi-structured--unstructured-data-on-various-data-m...Influence of-structured--semi-structured--unstructured-data-on-various-data-m...
Influence of-structured--semi-structured--unstructured-data-on-various-data-m...
shivz3
 

What's hot (19)

Data warehouse presentaion
Data warehouse presentaionData warehouse presentaion
Data warehouse presentaion
 
Data modeling dbms
Data modeling dbmsData modeling dbms
Data modeling dbms
 
Data Dictionary in System Analysis and Design
Data Dictionary in System Analysis and DesignData Dictionary in System Analysis and Design
Data Dictionary in System Analysis and Design
 
A configuration independent score-based benchmark for distributed databases
A configuration independent score-based benchmark for distributed databasesA configuration independent score-based benchmark for distributed databases
A configuration independent score-based benchmark for distributed databases
 
data warehousing and data mining
data warehousing and data mining data warehousing and data mining
data warehousing and data mining
 
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
 
Influence of-structured--semi-structured--unstructured-data-on-various-data-m...
Influence of-structured--semi-structured--unstructured-data-on-various-data-m...Influence of-structured--semi-structured--unstructured-data-on-various-data-m...
Influence of-structured--semi-structured--unstructured-data-on-various-data-m...
 
Data miningvs datawarehouse
Data miningvs datawarehouseData miningvs datawarehouse
Data miningvs datawarehouse
 
5 data preparation and processing2
5 data preparation and processing25 data preparation and processing2
5 data preparation and processing2
 
Database and types of database
Database and types of databaseDatabase and types of database
Database and types of database
 
Alexis leon erp
Alexis leon erpAlexis leon erp
Alexis leon erp
 
How to build a data dictionary
How to build a data dictionaryHow to build a data dictionary
How to build a data dictionary
 
Lecture 02 - The Data Warehouse Environment
Lecture 02 - The Data Warehouse Environment Lecture 02 - The Data Warehouse Environment
Lecture 02 - The Data Warehouse Environment
 
Data models
Data modelsData models
Data models
 
Introduction to Data Warehousing
Introduction to Data WarehousingIntroduction to Data Warehousing
Introduction to Data Warehousing
 
DataMining Techniq
DataMining TechniqDataMining Techniq
DataMining Techniq
 
Data models
Data modelsData models
Data models
 
Data mining
Data miningData mining
Data mining
 
data modeling and models
data modeling and modelsdata modeling and models
data modeling and models
 

Similar to Uop dbm 502 week 6 big data paper

Advanced Database Systems CS352Unit 2 Individual Project.docx
Advanced Database Systems CS352Unit 2 Individual Project.docxAdvanced Database Systems CS352Unit 2 Individual Project.docx
Advanced Database Systems CS352Unit 2 Individual Project.docx
nettletondevon
 

Similar to Uop dbm 502 week 6 big data paper (20)

Uop dbm 502 week 6 big data paper
Uop dbm 502 week 6 big data paperUop dbm 502 week 6 big data paper
Uop dbm 502 week 6 big data paper
 
Uop dbm 502 week 6 big data paper
Uop dbm 502 week 6 big data paperUop dbm 502 week 6 big data paper
Uop dbm 502 week 6 big data paper
 
Data Models [DATABASE SYSTEMS: Design, Implementation, and Management]
Data Models [DATABASE SYSTEMS: Design, Implementation, and Management]Data Models [DATABASE SYSTEMS: Design, Implementation, and Management]
Data Models [DATABASE SYSTEMS: Design, Implementation, and Management]
 
Data models
Data modelsData models
Data models
 
Relational database management systems
Relational database management systemsRelational database management systems
Relational database management systems
 
Ais Romney 2006 Slides 04 Relational Databases
Ais Romney 2006 Slides 04 Relational DatabasesAis Romney 2006 Slides 04 Relational Databases
Ais Romney 2006 Slides 04 Relational Databases
 
Ais Romney 2006 Slides 04 Relational Databases
Ais Romney 2006 Slides 04 Relational DatabasesAis Romney 2006 Slides 04 Relational Databases
Ais Romney 2006 Slides 04 Relational Databases
 
Ais Romney 2006 Slides 04 Relational Databases
Ais Romney 2006 Slides 04 Relational DatabasesAis Romney 2006 Slides 04 Relational Databases
Ais Romney 2006 Slides 04 Relational Databases
 
Course Outline Ch 2
Course Outline Ch 2Course Outline Ch 2
Course Outline Ch 2
 
Advanced Database Systems CS352Unit 2 Individual Project.docx
Advanced Database Systems CS352Unit 2 Individual Project.docxAdvanced Database Systems CS352Unit 2 Individual Project.docx
Advanced Database Systems CS352Unit 2 Individual Project.docx
 
MC0088 Internal Assignment (SMU)
MC0088 Internal Assignment (SMU)MC0088 Internal Assignment (SMU)
MC0088 Internal Assignment (SMU)
 
Top 60+ Data Warehouse Interview Questions and Answers.pdf
Top 60+ Data Warehouse Interview Questions and Answers.pdfTop 60+ Data Warehouse Interview Questions and Answers.pdf
Top 60+ Data Warehouse Interview Questions and Answers.pdf
 
Introduction-to-Databases.pptx
Introduction-to-Databases.pptxIntroduction-to-Databases.pptx
Introduction-to-Databases.pptx
 
Dwbasics
DwbasicsDwbasics
Dwbasics
 
Database Systems Essay
Database Systems EssayDatabase Systems Essay
Database Systems Essay
 
Data processing in Industrial Systems course notes after week 5
Data processing in Industrial Systems course notes after week 5Data processing in Industrial Systems course notes after week 5
Data processing in Industrial Systems course notes after week 5
 
MS-CIT Unit 9.pptx
MS-CIT Unit 9.pptxMS-CIT Unit 9.pptx
MS-CIT Unit 9.pptx
 
Database Management System ( Dbms )
Database Management System ( Dbms )Database Management System ( Dbms )
Database Management System ( Dbms )
 
Database 1 Introduction
Database 1   IntroductionDatabase 1   Introduction
Database 1 Introduction
 
Database
DatabaseDatabase
Database
 

More from uopassignment

More from uopassignment (20)

Uop cis 349 final exam guide set 1 new
Uop cis 349 final exam guide set 1 newUop cis 349 final exam guide set 1 new
Uop cis 349 final exam guide set 1 new
 
Ash hcs 334 week 5 discussion 2 fitness resources and exercise behavior
Ash hcs 334 week 5 discussion 2 fitness resources and exercise behaviorAsh hcs 334 week 5 discussion 2 fitness resources and exercise behavior
Ash hcs 334 week 5 discussion 2 fitness resources and exercise behavior
 
Ash hcs 334 week 2 quiz
Ash hcs 334 week 2 quizAsh hcs 334 week 2 quiz
Ash hcs 334 week 2 quiz
 
Ash hcs 334 week 2 assignment cardiorespiratory assessment and prescription new
Ash hcs 334 week 2 assignment cardiorespiratory assessment and prescription newAsh hcs 334 week 2 assignment cardiorespiratory assessment and prescription new
Ash hcs 334 week 2 assignment cardiorespiratory assessment and prescription new
 
Mktg 320 week 4 dq 2 making surveys work
Mktg 320 week 4 dq 2 making surveys workMktg 320 week 4 dq 2 making surveys work
Mktg 320 week 4 dq 2 making surveys work
 
Ash mgt 601 week 3 quiz
Ash mgt 601 week 3 quizAsh mgt 601 week 3 quiz
Ash mgt 601 week 3 quiz
 
Devry ecet 380 week 5 lab code division multiple access a 3 g cellular multip...
Devry ecet 380 week 5 lab code division multiple access a 3 g cellular multip...Devry ecet 380 week 5 lab code division multiple access a 3 g cellular multip...
Devry ecet 380 week 5 lab code division multiple access a 3 g cellular multip...
 
Devry ecet 375 week 6 homework new
Devry ecet 375 week 6 homework newDevry ecet 375 week 6 homework new
Devry ecet 375 week 6 homework new
 
Devry ecet 375 week 1
Devry ecet 375 week 1Devry ecet 375 week 1
Devry ecet 375 week 1
 
Uop ecet 370 week 7 ilab collections framework new
Uop ecet 370 week 7 ilab collections framework newUop ecet 370 week 7 ilab collections framework new
Uop ecet 370 week 7 ilab collections framework new
 
Devry ecet 370 week 6 ilab binary trees new
Devry ecet 370 week 6 ilab binary trees newDevry ecet 370 week 6 ilab binary trees new
Devry ecet 370 week 6 ilab binary trees new
 
Devry ecet 370 week 5 ilab search techniques and hashing new
Devry ecet 370 week 5 ilab search techniques and hashing newDevry ecet 370 week 5 ilab search techniques and hashing new
Devry ecet 370 week 5 ilab search techniques and hashing new
 
Devry ecet 370 week 4 ilab the efficiency of algorithms and sorting new
Devry ecet 370 week 4 ilab the efficiency of algorithms and sorting newDevry ecet 370 week 4 ilab the efficiency of algorithms and sorting new
Devry ecet 370 week 4 ilab the efficiency of algorithms and sorting new
 
Devry ecet 370 week 3 ilab the stack and the queue ad ts new
Devry ecet 370 week 3 ilab the stack and the queue ad ts newDevry ecet 370 week 3 ilab the stack and the queue ad ts new
Devry ecet 370 week 3 ilab the stack and the queue ad ts new
 
Devry ecet 370 week 2 ilab linked lists new
Devry ecet 370 week 2 ilab linked lists newDevry ecet 370 week 2 ilab linked lists new
Devry ecet 370 week 2 ilab linked lists new
 
Devry ecet 370 week 1 i lab array
Devry ecet 370 week 1 i lab arrayDevry ecet 370 week 1 i lab array
Devry ecet 370 week 1 i lab array
 
Ethc 445 final exam
Ethc 445 final examEthc 445 final exam
Ethc 445 final exam
 
Ethc 445 final exam
Ethc 445 final examEthc 445 final exam
Ethc 445 final exam
 
Xeco 212 week 5 check point a new house
Xeco 212 week 5 check point a new houseXeco 212 week 5 check point a new house
Xeco 212 week 5 check point a new house
 
Uop acc 543 week 3 exam new syllabus
Uop acc 543 week 3 exam new syllabusUop acc 543 week 3 exam new syllabus
Uop acc 543 week 3 exam new syllabus
 

Recently uploaded

Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
EADTU
 
SPLICE Working Group: Reusable Code Examples
SPLICE Working Group:Reusable Code ExamplesSPLICE Working Group:Reusable Code Examples
SPLICE Working Group: Reusable Code Examples
Peter Brusilovsky
 
Spellings Wk 4 and Wk 5 for Grade 4 at CAPS
Spellings Wk 4 and Wk 5 for Grade 4 at CAPSSpellings Wk 4 and Wk 5 for Grade 4 at CAPS
Spellings Wk 4 and Wk 5 for Grade 4 at CAPS
AnaAcapella
 
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes GuàrdiaPersonalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
EADTU
 
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MysoreMuleSoftMeetup
 

Recently uploaded (20)

OSCM Unit 2_Operations Processes & Systems
OSCM Unit 2_Operations Processes & SystemsOSCM Unit 2_Operations Processes & Systems
OSCM Unit 2_Operations Processes & Systems
 
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
 
Spring gala 2024 photo slideshow - Celebrating School-Community Partnerships
Spring gala 2024 photo slideshow - Celebrating School-Community PartnershipsSpring gala 2024 photo slideshow - Celebrating School-Community Partnerships
Spring gala 2024 photo slideshow - Celebrating School-Community Partnerships
 
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
 
Model Attribute _rec_name in the Odoo 17
Model Attribute _rec_name in the Odoo 17Model Attribute _rec_name in the Odoo 17
Model Attribute _rec_name in the Odoo 17
 
8 Tips for Effective Working Capital Management
8 Tips for Effective Working Capital Management8 Tips for Effective Working Capital Management
8 Tips for Effective Working Capital Management
 
SPLICE Working Group: Reusable Code Examples
SPLICE Working Group:Reusable Code ExamplesSPLICE Working Group:Reusable Code Examples
SPLICE Working Group: Reusable Code Examples
 
PUBLIC FINANCE AND TAXATION COURSE-1-4.pdf
PUBLIC FINANCE AND TAXATION COURSE-1-4.pdfPUBLIC FINANCE AND TAXATION COURSE-1-4.pdf
PUBLIC FINANCE AND TAXATION COURSE-1-4.pdf
 
Observing-Correct-Grammar-in-Making-Definitions.pptx
Observing-Correct-Grammar-in-Making-Definitions.pptxObserving-Correct-Grammar-in-Making-Definitions.pptx
Observing-Correct-Grammar-in-Making-Definitions.pptx
 
Diuretic, Hypoglycemic and Limit test of Heavy metals and Arsenic.-1.pdf
Diuretic, Hypoglycemic and Limit test of Heavy metals and Arsenic.-1.pdfDiuretic, Hypoglycemic and Limit test of Heavy metals and Arsenic.-1.pdf
Diuretic, Hypoglycemic and Limit test of Heavy metals and Arsenic.-1.pdf
 
Spellings Wk 4 and Wk 5 for Grade 4 at CAPS
Spellings Wk 4 and Wk 5 for Grade 4 at CAPSSpellings Wk 4 and Wk 5 for Grade 4 at CAPS
Spellings Wk 4 and Wk 5 for Grade 4 at CAPS
 
80 ĐỀ THI THỬ TUYỂN SINH TIẾNG ANH VÀO 10 SỞ GD – ĐT THÀNH PHỐ HỒ CHÍ MINH NĂ...
80 ĐỀ THI THỬ TUYỂN SINH TIẾNG ANH VÀO 10 SỞ GD – ĐT THÀNH PHỐ HỒ CHÍ MINH NĂ...80 ĐỀ THI THỬ TUYỂN SINH TIẾNG ANH VÀO 10 SỞ GD – ĐT THÀNH PHỐ HỒ CHÍ MINH NĂ...
80 ĐỀ THI THỬ TUYỂN SINH TIẾNG ANH VÀO 10 SỞ GD – ĐT THÀNH PHỐ HỒ CHÍ MINH NĂ...
 
UChicago CMSC 23320 - The Best Commit Messages of 2024
UChicago CMSC 23320 - The Best Commit Messages of 2024UChicago CMSC 23320 - The Best Commit Messages of 2024
UChicago CMSC 23320 - The Best Commit Messages of 2024
 
Andreas Schleicher presents at the launch of What does child empowerment mean...
Andreas Schleicher presents at the launch of What does child empowerment mean...Andreas Schleicher presents at the launch of What does child empowerment mean...
Andreas Schleicher presents at the launch of What does child empowerment mean...
 
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes GuàrdiaPersonalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
 
dusjagr & nano talk on open tools for agriculture research and learning
dusjagr & nano talk on open tools for agriculture research and learningdusjagr & nano talk on open tools for agriculture research and learning
dusjagr & nano talk on open tools for agriculture research and learning
 
HMCS Vancouver Pre-Deployment Brief - May 2024 (Web Version).pptx
HMCS Vancouver Pre-Deployment Brief - May 2024 (Web Version).pptxHMCS Vancouver Pre-Deployment Brief - May 2024 (Web Version).pptx
HMCS Vancouver Pre-Deployment Brief - May 2024 (Web Version).pptx
 
AIM of Education-Teachers Training-2024.ppt
AIM of Education-Teachers Training-2024.pptAIM of Education-Teachers Training-2024.ppt
AIM of Education-Teachers Training-2024.ppt
 
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptxHMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
HMCS Max Bernays Pre-Deployment Brief (May 2024).pptx
 
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
MuleSoft Integration with AWS Textract | Calling AWS Textract API |AWS - Clou...
 

Uop dbm 502 week 6 big data paper

  • 1. UOP DBM 502 Week 6 Big Data Paper (14 Pages) NEW Check this A+ tutorial guideline at http://www.uopassignments.com/dbm-502- uop/dbm-502-week-6-big-data-paper-recent For more classes visit http://www.uopassignments.com DBM 502 Week 6 Big Data Paper (14 Pages) NEW This assignment reflects an accumulation of the individual assignments from Weeks One through Five, which included creating an ERD, exploring database fundamentals, Data Architecture for Transactional Databases, Interacting with a Transactional Database, Data and Database Administration for Transactional Databases, Data Warehouses and Historical Data. Write an additional 1- to 2-page paper based on the following information: Management is happy with the operational work you have done and with your support of their strategic investigation of the situation and trends over time through the data warehouse. But they have heard that new techniques called analytics (or even “big data”) can be used to find unexpected gems in all of the data that they have
  • 2. been collecting, whether or not it is structured. Are there kinds of behavior (e.g., by customers or products or their own systems) that might be valuable to be able to predict What are they What data (either internal sources described in the materials or external data sources available for free or purchase) might help make these predictions What tools would you use for management of the data, for statistical analysis, or for visualization Why is it appropriate to meet the organization’s needs Review and consolidate the individual assignment papers you have written throughout Weeks One through Six, along with any feedback you received from your instructor, and ensure you have included the following: Explained the role of data in information systems and business Distinguished between the three types of data management in modern organizations Explained the meaning of key data management questions and the importance of the answers Explained the environment, roles, and skills needed to support transactional data management, including relational database environment, database designers, database developers, and database administrators Explained and applied techniques for deciding what data you need for transactional data
  • 3. management, including: entity relationship modeling and conceptual design Demonstrated how to use DML to enter information into relational databases Explained how to use SQL to extract rows and columns of data from tables and combine data from multiple tables, using SELECT Distinguished between different approaches for managing data in relational databases, and explained when each might be used, including applications with embedded SQL, stored procedures, and triggers Explained why database and information security is important to an organization Explained how database administrators and developers can protect the integrity and confidentiality of data against internal and external attacks Explained how database administrators can protect data integrity against system and hardware outages Explained the roles, skills, and tools needed for managing historical data via data warehouses Explained how to select, clean, and bring data of interest into a data warehouse Demonstrated techniques for designing an effective data warehouse, through star database structures, selecting and organizing fact and dimension tables, and specialized indexing (e.g.,
  • 4. bitmap indexes) Explained the skills and environments required for analytic data Described how those tools are used Explained the business value of analytic results, such as data visualization and finding and applying patterns