SlideShare a Scribd company logo
1 of 6
Management Information Systems
By: Divyae Mohan Sherry (1620313)
About Starbucks
StarbucksCorporationisan Americancoffee companyandcoffeehouse chain.Starbuckswasfoundedin
Seattle,Washingtonin1971. Asof November2016, it operates23,768 locationsworldwide.
Starbuckslocationsserve hotandcolddrinks,whole-beancoffee,microgroundinstantcoffee knownas
VIA,espresso,caffe latte,full- andloose-leaf teasincludingTeavanateaproducts,EvolutionFreshjuices,
Frappuccinobeverages,LaBoulange pastries,andsnacksincludingitemssuchaschipsand crackers;
some offerings(includingtheirannual fall launchof the PumpkinSpice Latte) are seasonal orspecificto
the localityof the store.
Information Systems Used
StarbucksmainlyusesfourInformationSystems:
• TransactionProcessingSystem.
• SupplyChainManagementSystem.
• DecisionSupportSystem.
• CustomerRelationshipManagementSystem.
Decision Systems Used
A decisionsupportsystem(DSS)isasystembasedinformation systemthatsupportsbusinessor
organizational decision-makingactivities.DSSsserve the management,operations,andplanninglevels
of an organization(usuallymidandhighermanagement) andhelppeople make decisionsabout
problemsthatmaybe rapidly changingandnoteasilyspecifiedinadvance—i.e.unstructuredandsemi-
structureddecisionproblems.Decisionsupportsystemscanbe eitherfullycomputerized,human-
poweredora combinationof both.
DSS isa computerprogramapplicationthatanalyzesbusinessdataandpresentsitsothatuser can more
easilytake theirbusinessdecisions.StarbucksusesasingularDSSsystematthe parentcompanyin USA:
“oracle”.Oracle generatesmonthlyreportsonwhichimportantdecisionsare based.Onlythe parent
companyhas the authoritymake decisionsaboutproducts.
Starbuckshad builtitspoint-of-sale datawarehouseonOracle technology.Thisfoundation,plusthe
Oracle OLAPoptionon Oracle ExadataDatabase Machine,enabledStarbuckstoscale andseamlessly
migrate itsexistingOracle-baseddatawarehousetoOracle Exadatato expandinsightandfacilitate
decisions,evenwithexplosive growthindataandthe user population.
Why Oracle Systems?
Starbuckshad builtitspoint-of-sale datawarehouseonOracle technology.Thisfoundation,plusthe
Oracle OLAPoptionon Oracle ExadataDatabase Machine,enabledStarbuckstoscale andseamlessly
migrate itsexistingOracle-baseddatawarehousetoOracle Exadatato expandinsightandfacilitate
decisions,evenwithexplosive growthindataandthe user population.
Challenges
Create a robust,24/7-available enterprise datawarehouse containingsales,marketing,store
management,pointof sale,customerloyalty,andsupplychaindatato drive more informedbusiness
decisionsatthe corporate,regional,andstore levels.Improve abilitytorapidlyanalyze andacton
customerloyalty,coffeesales,andsupplychaininformationtocontinue todrive innovation.Ensure
scalabilitytosupportrapidgrowthindata volume
Solutions
Starbucks usedOracle Exadata Database Machine and Oracle BusinessIntelligence EnterpriseEditionto
create a high-performanceenterprisedatawarehouse andbusinessintelligence environmentthat
providesanalystsandmanagersatthe branch, field,andcorporate levelswithtimelyandactionable
insightintostore andproductperformance,aswell assupplychainoperations.
Thishelpedthemgain the abilitytoloadandrefreshdatafromall storesin time forUS East Coaststore
openingseachmorning,completingfull loadsinjustfourhours,andensuringservice level agreement
compliance.
Enabledthe companyto loadpoint-of-saleandcustomerloyaltydatadailyfrom10,000 US storesto the
data warehouse andanswermostqueriessuchasinformationoncoffeesales,promotions,andproduct
mixesinindividualstoresinfewerthan10 seconds.
ImplementedOracle HybridColumnarCompressiontooptimize storage areausage andcompress70
terabytesof rawdata to approximately20terabytesinone case condensing2terabytesof table datato
275 gigabytes,analmost 90% footprintreduction.
UtilizedOracle OLAPoption,enabling1-terabyte cubestobe available forfastandsophisticated
analytics.
Developedafront-enddashboardof keybusinessindicatorsthatenables10,000 usersincludingstore
and corporate managersto gainrapidvisibilityintostore-level salesandoperationaldata.
Increasedproductanalysts’insightintocustomerpreferencestofacilitatestrategicdevelopmentand
productlaunches.
Reducedbyhoursthe time that store managersspendonweeklyreports,whilesimultaneously
expandinginsightandimprovingdecision-makingacrossthousandsof stores.
Oracle Product and Services used by Starbucks
Oracle OLAPis a worldclassmultidimensionalanalyticengine embeddedinOracle Database 12c. Oracle
OLAPcubesdeliversophisticatedcalculationsusingsimple SQLqueries - producingresultswithspeedof
thoughtresponse times.Thisoutstandingqueryperformance maybe leveragedtransparentlywhen
deployingOLAPcubesasmaterializedviews –enhancingthe performance of summaryqueriesagainst
detail relationaltables.Because Oracle OLAPisembeddedinOracle Database 12c, it allowscentralized
managementof dataand businessrulesinasecure,scalable andenterprise-readyplatform.
Oracle OLAPmakesit easyto produce analyticmeasures,includingtime-seriescalculations,financial
models,forecasts,allocations,regressions,andmore.Hundredsof analyticfunctionscanbe easily
combinedincustomfunctionstosolve nearlyanyanalyticcalculationrequirement.Oracle OLAPcubes
are representedusingastar schemadesign:dimensionviewsformaconstellationaroundthe cube (or
fact) view.Thisstandardrepresentationof OLAPdatamakesiteasyfor any reportingandanalysistool
or application - includingsophisticatedbusinessintelligence solutions,SQL-baseddevelopmenttools
and MicrosoftExcel - to leverage the powerof Oracle OLAPina simple andproductive way.
With Oracle OLAP you can:
 Easilydefine amultidimensionalmodelwithadvancedanalyticcalculations
 Productivelydeliverrichanalyticstoanyreportingandanalysistool usingsimple SQL
 Transparentlyimprove summaryqueriesagainsttablesusingcube-basedmaterializedviews
 Combine OLAPdatawithanyother data inyourOracle Database - includingspatial,datamining,
XML, documentsandmore
 Leverage yourexistingOracle Database expertiseandsoftware investment
Oracle Exadata Database Machine
The Oracle ExadataDatabase Machine is engineeredtobe the highestperformingandmost available
platformforrunningthe Oracle Database.Exadatais a modernarchitecture featuringscale-outindustry-
standarddatabase servers,scale-outintelligentstorage servers,andanextremelyhighspeedInfiniBand
internal fabricthatconnectsall serversandstorage. Unique software algorithmsinExadataimplement
database intelligence instorage,PCIbasedflash,andInfiniBandnetworkingtodeliverhigher
performance andcapacityat lowercoststhan otherplatforms. Exadatarunsall typesof database
workloadsincludingOnline TransactionProcessing(OLTP),DataWarehousing(DW) andconsolidationof
mixedworkloads.Simple andfasttoimplement,the ExadataDatabase Machine powersandprotects
your mostimportantdatabasesandisthe ideal foundationforaconsolidateddatabase cloud.
Database Machine Benefits
Best Data Warehouse platform:Accelerate datawarehouse queryperformance byuptoa factor of 10x
or more,and run more queriesconcurrentlyforfasteraccessto business-critical information.
Best OLTP platform: Accelerate performance of OLTPorientedworkloadsthroughacombinationof
large physical flash,ultrahigh-speedflashcompression,andsmartflashcachingalgorithmswhichcan
provide millionsof I/Ospersecond.
Best Consolidationplatform:Replace isolatedspecial-purposesystemwithaconsolidatedplatform
deliveringleadingperformance andscalabilityforall database applications.Exadatahasthe unique
abilitytotransparentlyprioritizerequestsastheyflow fromdatabase servers,throughnetworkadapters
and networkswitches,tostorage,andback.
Oracle Business Intelligence Applications
Oracle BusinessIntelligence (BI) Applicationsare complete,prebuiltBIsolutionsthatdeliverintuitive,
role-basedintelligence foreveryone inanorganizationfromfrontline employeestoseniormanagement
that enable betterdecisions,actions,andbusinessprocesses.Designedforheterogeneous
environments,thesesolutionsenableorganizationstogaininsightfromarange of data sourcesand
applicationsincludingSiebel,Oracle E-BusinessSuite,PeopleSoft,andthirdpartysystemssuchasSAP
Oracle BI Applicationsare builtonthe Oracle BISuite Enterprise Edition,acomprehensive,innovative,
and leadingBIplatform.Thisenablesorganizationstorealizethe value of apackagedBI Application,
such as rapiddeployment,lowerTCO,andbuilt-inbestpractices,while alsobeingable toveryeasily
extendthose solutionstomeettheirspecificneeds,orbuildcompletelycustomBI applications,all on
one commonBI architecture.
 Oracle financial analytics(OFA)
 Oracle HR analytics(OHRA)
 Oracle marketinganalytics(OMA)
 Oracle vertical (industryspecific) analytics
 Oracle salesanalytics(OSA)
 Oracle service analytics(OSEA)
 Oracle supplychainanalytics(OSCA)
A word from Starbucks Coffee Company
"Our Oracle Exadata-based database warehouse and Oracle Business Intelligence environment deliver
detailed insight into point-of-sale data that allows us to innovate and offer our customers better
services." – Mike Manzano, Vice President, Analytics and Insight, Starbucks Coffee Company.
Recommendations
 Usingquickcommunicationsystemslike SlackandFlockforcommunications
 IntegratingAnalyticsandBISystemsfromIBMWatson
 IntegratingCRMslike FreshdeskonMobile Appsandinstores.

More Related Content

What's hot

Star bucks- goals and objective and visions
Star bucks- goals and objective and visions Star bucks- goals and objective and visions
Star bucks- goals and objective and visions Gurkirat Dhaliwal
 
Starbucks.pptx
Starbucks.pptxStarbucks.pptx
Starbucks.pptxVishnuPS35
 
Mission, strategy, and ethics at starbucks v2
Mission, strategy, and ethics at starbucks v2Mission, strategy, and ethics at starbucks v2
Mission, strategy, and ethics at starbucks v2Paul Mulzoff
 
Starbucks case study
Starbucks case studyStarbucks case study
Starbucks case studySarang Pande
 
Starbucks Presentation
Starbucks PresentationStarbucks Presentation
Starbucks PresentationJehrica Marini
 
Star Bucks Presentaion by ShakthiPrabhakar
Star Bucks Presentaion by ShakthiPrabhakarStar Bucks Presentaion by ShakthiPrabhakar
Star Bucks Presentaion by ShakthiPrabhakarShakthi Prabhakar
 
Starbucks Story and Marketing Strategies
Starbucks Story and Marketing StrategiesStarbucks Story and Marketing Strategies
Starbucks Story and Marketing Strategies9988559750
 
The Starbucks Coffee Company Sustainability Improvement Initiative
The Starbucks Coffee Company Sustainability Improvement InitiativeThe Starbucks Coffee Company Sustainability Improvement Initiative
The Starbucks Coffee Company Sustainability Improvement InitiativeNicole Reaves
 
Branding and Marketing stratrgies of starbucks
Branding and Marketing stratrgies of starbucksBranding and Marketing stratrgies of starbucks
Branding and Marketing stratrgies of starbucksAyush G. Kottary
 
Starbucks marketing strategy
Starbucks marketing strategyStarbucks marketing strategy
Starbucks marketing strategySaravanan Murugan
 
case study on starbucks
case study on starbucks case study on starbucks
case study on starbucks Shakila Banu
 
Starbucks' strategy
Starbucks' strategyStarbucks' strategy
Starbucks' strategyLal Sivaraj
 
Pepsico information systems
Pepsico information systemsPepsico information systems
Pepsico information systemsKinshuk Kalia
 
Starbucks Marketing Strategy - ESL
Starbucks Marketing Strategy - ESLStarbucks Marketing Strategy - ESL
Starbucks Marketing Strategy - ESLPatrícia Azevedo
 
Case study Solution on Starbuck’s Company
Case study Solution on Starbuck’s Company Case study Solution on Starbuck’s Company
Case study Solution on Starbuck’s Company Nahid Hossen
 
Starbuck's Marketing Analysis
Starbuck's Marketing AnalysisStarbuck's Marketing Analysis
Starbuck's Marketing AnalysisAngel Wong
 

What's hot (20)

Star bucks- goals and objective and visions
Star bucks- goals and objective and visions Star bucks- goals and objective and visions
Star bucks- goals and objective and visions
 
Starbucks.pptx
Starbucks.pptxStarbucks.pptx
Starbucks.pptx
 
Case Study: Starbucks
Case Study: StarbucksCase Study: Starbucks
Case Study: Starbucks
 
Mission, strategy, and ethics at starbucks v2
Mission, strategy, and ethics at starbucks v2Mission, strategy, and ethics at starbucks v2
Mission, strategy, and ethics at starbucks v2
 
Starbucks
StarbucksStarbucks
Starbucks
 
Starbucks case study
Starbucks case studyStarbucks case study
Starbucks case study
 
Starbucks Presentation
Starbucks PresentationStarbucks Presentation
Starbucks Presentation
 
Star Bucks Presentaion by ShakthiPrabhakar
Star Bucks Presentaion by ShakthiPrabhakarStar Bucks Presentaion by ShakthiPrabhakar
Star Bucks Presentaion by ShakthiPrabhakar
 
Starbucks Story and Marketing Strategies
Starbucks Story and Marketing StrategiesStarbucks Story and Marketing Strategies
Starbucks Story and Marketing Strategies
 
Starbucks ppt
Starbucks pptStarbucks ppt
Starbucks ppt
 
The Starbucks Coffee Company Sustainability Improvement Initiative
The Starbucks Coffee Company Sustainability Improvement InitiativeThe Starbucks Coffee Company Sustainability Improvement Initiative
The Starbucks Coffee Company Sustainability Improvement Initiative
 
Branding and Marketing stratrgies of starbucks
Branding and Marketing stratrgies of starbucksBranding and Marketing stratrgies of starbucks
Branding and Marketing stratrgies of starbucks
 
Starbucks marketing strategy
Starbucks marketing strategyStarbucks marketing strategy
Starbucks marketing strategy
 
case study on starbucks
case study on starbucks case study on starbucks
case study on starbucks
 
Starbucks' strategy
Starbucks' strategyStarbucks' strategy
Starbucks' strategy
 
Pepsico information systems
Pepsico information systemsPepsico information systems
Pepsico information systems
 
Starbucks ppt
Starbucks pptStarbucks ppt
Starbucks ppt
 
Starbucks Marketing Strategy - ESL
Starbucks Marketing Strategy - ESLStarbucks Marketing Strategy - ESL
Starbucks Marketing Strategy - ESL
 
Case study Solution on Starbuck’s Company
Case study Solution on Starbuck’s Company Case study Solution on Starbuck’s Company
Case study Solution on Starbuck’s Company
 
Starbuck's Marketing Analysis
Starbuck's Marketing AnalysisStarbuck's Marketing Analysis
Starbuck's Marketing Analysis
 

Similar to Starbucks Uses Oracle Systems for MIS

Using semantic web technologies for exploratory olap a survey
Using semantic web technologies for exploratory olap a surveyUsing semantic web technologies for exploratory olap a survey
Using semantic web technologies for exploratory olap a surveyieeepondy
 
How Microsoft Synapse Analytics Can Transform Your Data Analytics.pdf
How Microsoft Synapse Analytics Can Transform Your Data Analytics.pdfHow Microsoft Synapse Analytics Can Transform Your Data Analytics.pdf
How Microsoft Synapse Analytics Can Transform Your Data Analytics.pdfAddend Analytics
 
Sql Server 2005 Business Inteligence
Sql Server 2005 Business InteligenceSql Server 2005 Business Inteligence
Sql Server 2005 Business Inteligenceabercius24
 
Best-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdfBest-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdfssuserf8f9b2
 
Oracle’s Advanced Analytics & Machine Learning 12.2c New Features & Road Map;...
Oracle’s Advanced Analytics & Machine Learning 12.2c New Features & Road Map;...Oracle’s Advanced Analytics & Machine Learning 12.2c New Features & Road Map;...
Oracle’s Advanced Analytics & Machine Learning 12.2c New Features & Road Map;...Charlie Berger
 
Combining Transactional and Analytical Workloads with HW-Accelerated PostgreS...
Combining Transactional and Analytical Workloads with HW-Accelerated PostgreS...Combining Transactional and Analytical Workloads with HW-Accelerated PostgreS...
Combining Transactional and Analytical Workloads with HW-Accelerated PostgreS...OVHcloud
 
Тарас Кльоба "ETL — вже не актуальна; тривалі живі потоки із системою Apache...
Тарас Кльоба  "ETL — вже не актуальна; тривалі живі потоки із системою Apache...Тарас Кльоба  "ETL — вже не актуальна; тривалі живі потоки із системою Apache...
Тарас Кльоба "ETL — вже не актуальна; тривалі живі потоки із системою Apache...Lviv Startup Club
 
Accelerate Big Data Application Development with Cascading
Accelerate Big Data Application Development with CascadingAccelerate Big Data Application Development with Cascading
Accelerate Big Data Application Development with CascadingCascading
 
us it recruiter
us it recruiterus it recruiter
us it recruiterRo Hith
 
SnappyData Toronto Meetup Nov 2017
SnappyData Toronto Meetup Nov 2017SnappyData Toronto Meetup Nov 2017
SnappyData Toronto Meetup Nov 2017SnappyData
 
OLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEOLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEZalpa Rathod
 
OLAP & Data Warehouse
OLAP & Data WarehouseOLAP & Data Warehouse
OLAP & Data WarehouseZalpa Rathod
 
Real-time Analytics for Data-Driven Applications
Real-time Analytics for Data-Driven ApplicationsReal-time Analytics for Data-Driven Applications
Real-time Analytics for Data-Driven ApplicationsVMware Tanzu
 
oracleadvancedanalyticsv2otn-2859525.pptx
oracleadvancedanalyticsv2otn-2859525.pptxoracleadvancedanalyticsv2otn-2859525.pptx
oracleadvancedanalyticsv2otn-2859525.pptxAdityaDas899782
 
Hovitaga Data Visualizer - Overview
Hovitaga Data Visualizer - OverviewHovitaga Data Visualizer - Overview
Hovitaga Data Visualizer - OverviewHovitaga Kft.
 
John Paredes Resume Sfnm
John Paredes Resume SfnmJohn Paredes Resume Sfnm
John Paredes Resume SfnmJohn Paredes
 

Similar to Starbucks Uses Oracle Systems for MIS (20)

Using semantic web technologies for exploratory olap a survey
Using semantic web technologies for exploratory olap a surveyUsing semantic web technologies for exploratory olap a survey
Using semantic web technologies for exploratory olap a survey
 
How Microsoft Synapse Analytics Can Transform Your Data Analytics.pdf
How Microsoft Synapse Analytics Can Transform Your Data Analytics.pdfHow Microsoft Synapse Analytics Can Transform Your Data Analytics.pdf
How Microsoft Synapse Analytics Can Transform Your Data Analytics.pdf
 
Sql Server 2005 Business Inteligence
Sql Server 2005 Business InteligenceSql Server 2005 Business Inteligence
Sql Server 2005 Business Inteligence
 
Best-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdfBest-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdf
 
Sas demo
Sas demoSas demo
Sas demo
 
Oracle’s Advanced Analytics & Machine Learning 12.2c New Features & Road Map;...
Oracle’s Advanced Analytics & Machine Learning 12.2c New Features & Road Map;...Oracle’s Advanced Analytics & Machine Learning 12.2c New Features & Road Map;...
Oracle’s Advanced Analytics & Machine Learning 12.2c New Features & Road Map;...
 
Essbase Data Sheet
Essbase Data SheetEssbase Data Sheet
Essbase Data Sheet
 
Combining Transactional and Analytical Workloads with HW-Accelerated PostgreS...
Combining Transactional and Analytical Workloads with HW-Accelerated PostgreS...Combining Transactional and Analytical Workloads with HW-Accelerated PostgreS...
Combining Transactional and Analytical Workloads with HW-Accelerated PostgreS...
 
Тарас Кльоба "ETL — вже не актуальна; тривалі живі потоки із системою Apache...
Тарас Кльоба  "ETL — вже не актуальна; тривалі живі потоки із системою Apache...Тарас Кльоба  "ETL — вже не актуальна; тривалі живі потоки із системою Apache...
Тарас Кльоба "ETL — вже не актуальна; тривалі живі потоки із системою Apache...
 
Accelerate Big Data Application Development with Cascading
Accelerate Big Data Application Development with CascadingAccelerate Big Data Application Development with Cascading
Accelerate Big Data Application Development with Cascading
 
Olap
OlapOlap
Olap
 
us it recruiter
us it recruiterus it recruiter
us it recruiter
 
The Smarter Way To Manage Data
The Smarter Way To Manage DataThe Smarter Way To Manage Data
The Smarter Way To Manage Data
 
SnappyData Toronto Meetup Nov 2017
SnappyData Toronto Meetup Nov 2017SnappyData Toronto Meetup Nov 2017
SnappyData Toronto Meetup Nov 2017
 
OLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSEOLAP & DATA WAREHOUSE
OLAP & DATA WAREHOUSE
 
OLAP & Data Warehouse
OLAP & Data WarehouseOLAP & Data Warehouse
OLAP & Data Warehouse
 
Real-time Analytics for Data-Driven Applications
Real-time Analytics for Data-Driven ApplicationsReal-time Analytics for Data-Driven Applications
Real-time Analytics for Data-Driven Applications
 
oracleadvancedanalyticsv2otn-2859525.pptx
oracleadvancedanalyticsv2otn-2859525.pptxoracleadvancedanalyticsv2otn-2859525.pptx
oracleadvancedanalyticsv2otn-2859525.pptx
 
Hovitaga Data Visualizer - Overview
Hovitaga Data Visualizer - OverviewHovitaga Data Visualizer - Overview
Hovitaga Data Visualizer - Overview
 
John Paredes Resume Sfnm
John Paredes Resume SfnmJohn Paredes Resume Sfnm
John Paredes Resume Sfnm
 

More from Divyae Sherry

AIDA Model (Coke Zero)
AIDA Model (Coke Zero)AIDA Model (Coke Zero)
AIDA Model (Coke Zero)Divyae Sherry
 
Supply Chain Management / Operations Management Article Review
Supply Chain Management / Operations Management Article ReviewSupply Chain Management / Operations Management Article Review
Supply Chain Management / Operations Management Article ReviewDivyae Sherry
 
Cash Flow Interpretation & Analysis
Cash Flow Interpretation & AnalysisCash Flow Interpretation & Analysis
Cash Flow Interpretation & AnalysisDivyae Sherry
 
ABC Analysis and FIFO and LIFO of Stanley Furniture (Hypothetical)
ABC Analysis and FIFO and LIFO of Stanley Furniture (Hypothetical) ABC Analysis and FIFO and LIFO of Stanley Furniture (Hypothetical)
ABC Analysis and FIFO and LIFO of Stanley Furniture (Hypothetical) Divyae Sherry
 
Snickers Cost Sheet (Hypothetical)
Snickers Cost Sheet (Hypothetical)Snickers Cost Sheet (Hypothetical)
Snickers Cost Sheet (Hypothetical)Divyae Sherry
 
Development Financial Institutions In India
Development Financial Institutions In IndiaDevelopment Financial Institutions In India
Development Financial Institutions In IndiaDivyae Sherry
 
UBER Human Resource
UBER Human Resource UBER Human Resource
UBER Human Resource Divyae Sherry
 
Christian Personal Laws
Christian Personal Laws Christian Personal Laws
Christian Personal Laws Divyae Sherry
 
Business Plan (UniShelf) Executive Summary & Financial Analysis
Business Plan (UniShelf) Executive Summary & Financial AnalysisBusiness Plan (UniShelf) Executive Summary & Financial Analysis
Business Plan (UniShelf) Executive Summary & Financial AnalysisDivyae Sherry
 
Business Plan (UniShelf) Presentation Part 2
Business Plan (UniShelf) Presentation Part 2Business Plan (UniShelf) Presentation Part 2
Business Plan (UniShelf) Presentation Part 2Divyae Sherry
 
Business Plan (UniShelf) Presentation
Business Plan (UniShelf) PresentationBusiness Plan (UniShelf) Presentation
Business Plan (UniShelf) PresentationDivyae Sherry
 
Vistara Airlines SWOT Analysis
Vistara Airlines SWOT Analysis Vistara Airlines SWOT Analysis
Vistara Airlines SWOT Analysis Divyae Sherry
 

More from Divyae Sherry (17)

Taza Thindi
Taza ThindiTaza Thindi
Taza Thindi
 
AIDA Model (Coke Zero)
AIDA Model (Coke Zero)AIDA Model (Coke Zero)
AIDA Model (Coke Zero)
 
Supply Chain Management / Operations Management Article Review
Supply Chain Management / Operations Management Article ReviewSupply Chain Management / Operations Management Article Review
Supply Chain Management / Operations Management Article Review
 
Cash Flow Interpretation & Analysis
Cash Flow Interpretation & AnalysisCash Flow Interpretation & Analysis
Cash Flow Interpretation & Analysis
 
WhatsApp CBBE Model
WhatsApp CBBE ModelWhatsApp CBBE Model
WhatsApp CBBE Model
 
ABC Analysis and FIFO and LIFO of Stanley Furniture (Hypothetical)
ABC Analysis and FIFO and LIFO of Stanley Furniture (Hypothetical) ABC Analysis and FIFO and LIFO of Stanley Furniture (Hypothetical)
ABC Analysis and FIFO and LIFO of Stanley Furniture (Hypothetical)
 
Snickers Cost Sheet (Hypothetical)
Snickers Cost Sheet (Hypothetical)Snickers Cost Sheet (Hypothetical)
Snickers Cost Sheet (Hypothetical)
 
Development Financial Institutions In India
Development Financial Institutions In IndiaDevelopment Financial Institutions In India
Development Financial Institutions In India
 
UBER Human Resource
UBER Human Resource UBER Human Resource
UBER Human Resource
 
Algorithmic Trading
Algorithmic TradingAlgorithmic Trading
Algorithmic Trading
 
About Uber
About Uber About Uber
About Uber
 
Digital india
Digital indiaDigital india
Digital india
 
Christian Personal Laws
Christian Personal Laws Christian Personal Laws
Christian Personal Laws
 
Business Plan (UniShelf) Executive Summary & Financial Analysis
Business Plan (UniShelf) Executive Summary & Financial AnalysisBusiness Plan (UniShelf) Executive Summary & Financial Analysis
Business Plan (UniShelf) Executive Summary & Financial Analysis
 
Business Plan (UniShelf) Presentation Part 2
Business Plan (UniShelf) Presentation Part 2Business Plan (UniShelf) Presentation Part 2
Business Plan (UniShelf) Presentation Part 2
 
Business Plan (UniShelf) Presentation
Business Plan (UniShelf) PresentationBusiness Plan (UniShelf) Presentation
Business Plan (UniShelf) Presentation
 
Vistara Airlines SWOT Analysis
Vistara Airlines SWOT Analysis Vistara Airlines SWOT Analysis
Vistara Airlines SWOT Analysis
 

Recently uploaded

Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfAlex Barbosa Coqueiro
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersRaghuram Pandurangan
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 3652toLead Limited
 
A Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptxA Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptxLoriGlavin3
 
(How to Program) Paul Deitel, Harvey Deitel-Java How to Program, Early Object...
(How to Program) Paul Deitel, Harvey Deitel-Java How to Program, Early Object...(How to Program) Paul Deitel, Harvey Deitel-Java How to Program, Early Object...
(How to Program) Paul Deitel, Harvey Deitel-Java How to Program, Early Object...AliaaTarek5
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxLoriGlavin3
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024Lorenzo Miniero
 
How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.Curtis Poe
 
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024BookNet Canada
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLScyllaDB
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenHervé Boutemy
 
Time Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsTime Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsNathaniel Shimoni
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Commit University
 
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxUse of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxLoriGlavin3
 
A Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software DevelopersA Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software DevelopersNicole Novielli
 
Ryan Mahoney - Will Artificial Intelligence Replace Real Estate Agents
Ryan Mahoney - Will Artificial Intelligence Replace Real Estate AgentsRyan Mahoney - Will Artificial Intelligence Replace Real Estate Agents
Ryan Mahoney - Will Artificial Intelligence Replace Real Estate AgentsRyan Mahoney
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024BookNet Canada
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsSergiu Bodiu
 
Rise of the Machines: Known As Drones...
Rise of the Machines: Known As Drones...Rise of the Machines: Known As Drones...
Rise of the Machines: Known As Drones...Rick Flair
 
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek SchlawackFwdays
 

Recently uploaded (20)

Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdf
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information Developers
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365
 
A Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptxA Deep Dive on Passkeys: FIDO Paris Seminar.pptx
A Deep Dive on Passkeys: FIDO Paris Seminar.pptx
 
(How to Program) Paul Deitel, Harvey Deitel-Java How to Program, Early Object...
(How to Program) Paul Deitel, Harvey Deitel-Java How to Program, Early Object...(How to Program) Paul Deitel, Harvey Deitel-Java How to Program, Early Object...
(How to Program) Paul Deitel, Harvey Deitel-Java How to Program, Early Object...
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024
 
How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.
 
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQL
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache Maven
 
Time Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directionsTime Series Foundation Models - current state and future directions
Time Series Foundation Models - current state and future directions
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!
 
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxUse of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
 
A Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software DevelopersA Journey Into the Emotions of Software Developers
A Journey Into the Emotions of Software Developers
 
Ryan Mahoney - Will Artificial Intelligence Replace Real Estate Agents
Ryan Mahoney - Will Artificial Intelligence Replace Real Estate AgentsRyan Mahoney - Will Artificial Intelligence Replace Real Estate Agents
Ryan Mahoney - Will Artificial Intelligence Replace Real Estate Agents
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platforms
 
Rise of the Machines: Known As Drones...
Rise of the Machines: Known As Drones...Rise of the Machines: Known As Drones...
Rise of the Machines: Known As Drones...
 
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
 

Starbucks Uses Oracle Systems for MIS

  • 1. Management Information Systems By: Divyae Mohan Sherry (1620313) About Starbucks StarbucksCorporationisan Americancoffee companyandcoffeehouse chain.Starbuckswasfoundedin Seattle,Washingtonin1971. Asof November2016, it operates23,768 locationsworldwide. Starbuckslocationsserve hotandcolddrinks,whole-beancoffee,microgroundinstantcoffee knownas VIA,espresso,caffe latte,full- andloose-leaf teasincludingTeavanateaproducts,EvolutionFreshjuices, Frappuccinobeverages,LaBoulange pastries,andsnacksincludingitemssuchaschipsand crackers; some offerings(includingtheirannual fall launchof the PumpkinSpice Latte) are seasonal orspecificto the localityof the store. Information Systems Used StarbucksmainlyusesfourInformationSystems: • TransactionProcessingSystem. • SupplyChainManagementSystem. • DecisionSupportSystem. • CustomerRelationshipManagementSystem.
  • 2. Decision Systems Used A decisionsupportsystem(DSS)isasystembasedinformation systemthatsupportsbusinessor organizational decision-makingactivities.DSSsserve the management,operations,andplanninglevels of an organization(usuallymidandhighermanagement) andhelppeople make decisionsabout problemsthatmaybe rapidly changingandnoteasilyspecifiedinadvance—i.e.unstructuredandsemi- structureddecisionproblems.Decisionsupportsystemscanbe eitherfullycomputerized,human- poweredora combinationof both. DSS isa computerprogramapplicationthatanalyzesbusinessdataandpresentsitsothatuser can more easilytake theirbusinessdecisions.StarbucksusesasingularDSSsystematthe parentcompanyin USA: “oracle”.Oracle generatesmonthlyreportsonwhichimportantdecisionsare based.Onlythe parent companyhas the authoritymake decisionsaboutproducts. Starbuckshad builtitspoint-of-sale datawarehouseonOracle technology.Thisfoundation,plusthe Oracle OLAPoptionon Oracle ExadataDatabase Machine,enabledStarbuckstoscale andseamlessly migrate itsexistingOracle-baseddatawarehousetoOracle Exadatato expandinsightandfacilitate decisions,evenwithexplosive growthindataandthe user population. Why Oracle Systems? Starbuckshad builtitspoint-of-sale datawarehouseonOracle technology.Thisfoundation,plusthe Oracle OLAPoptionon Oracle ExadataDatabase Machine,enabledStarbuckstoscale andseamlessly migrate itsexistingOracle-baseddatawarehousetoOracle Exadatato expandinsightandfacilitate decisions,evenwithexplosive growthindataandthe user population. Challenges Create a robust,24/7-available enterprise datawarehouse containingsales,marketing,store management,pointof sale,customerloyalty,andsupplychaindatato drive more informedbusiness decisionsatthe corporate,regional,andstore levels.Improve abilitytorapidlyanalyze andacton customerloyalty,coffeesales,andsupplychaininformationtocontinue todrive innovation.Ensure scalabilitytosupportrapidgrowthindata volume
  • 3. Solutions Starbucks usedOracle Exadata Database Machine and Oracle BusinessIntelligence EnterpriseEditionto create a high-performanceenterprisedatawarehouse andbusinessintelligence environmentthat providesanalystsandmanagersatthe branch, field,andcorporate levelswithtimelyandactionable insightintostore andproductperformance,aswell assupplychainoperations. Thishelpedthemgain the abilitytoloadandrefreshdatafromall storesin time forUS East Coaststore openingseachmorning,completingfull loadsinjustfourhours,andensuringservice level agreement compliance. Enabledthe companyto loadpoint-of-saleandcustomerloyaltydatadailyfrom10,000 US storesto the data warehouse andanswermostqueriessuchasinformationoncoffeesales,promotions,andproduct mixesinindividualstoresinfewerthan10 seconds. ImplementedOracle HybridColumnarCompressiontooptimize storage areausage andcompress70 terabytesof rawdata to approximately20terabytesinone case condensing2terabytesof table datato 275 gigabytes,analmost 90% footprintreduction. UtilizedOracle OLAPoption,enabling1-terabyte cubestobe available forfastandsophisticated analytics. Developedafront-enddashboardof keybusinessindicatorsthatenables10,000 usersincludingstore and corporate managersto gainrapidvisibilityintostore-level salesandoperationaldata. Increasedproductanalysts’insightintocustomerpreferencestofacilitatestrategicdevelopmentand productlaunches. Reducedbyhoursthe time that store managersspendonweeklyreports,whilesimultaneously expandinginsightandimprovingdecision-makingacrossthousandsof stores. Oracle Product and Services used by Starbucks Oracle OLAPis a worldclassmultidimensionalanalyticengine embeddedinOracle Database 12c. Oracle OLAPcubesdeliversophisticatedcalculationsusingsimple SQLqueries - producingresultswithspeedof thoughtresponse times.Thisoutstandingqueryperformance maybe leveragedtransparentlywhen deployingOLAPcubesasmaterializedviews –enhancingthe performance of summaryqueriesagainst detail relationaltables.Because Oracle OLAPisembeddedinOracle Database 12c, it allowscentralized managementof dataand businessrulesinasecure,scalable andenterprise-readyplatform.
  • 4. Oracle OLAPmakesit easyto produce analyticmeasures,includingtime-seriescalculations,financial models,forecasts,allocations,regressions,andmore.Hundredsof analyticfunctionscanbe easily combinedincustomfunctionstosolve nearlyanyanalyticcalculationrequirement.Oracle OLAPcubes are representedusingastar schemadesign:dimensionviewsformaconstellationaroundthe cube (or fact) view.Thisstandardrepresentationof OLAPdatamakesiteasyfor any reportingandanalysistool or application - includingsophisticatedbusinessintelligence solutions,SQL-baseddevelopmenttools and MicrosoftExcel - to leverage the powerof Oracle OLAPina simple andproductive way. With Oracle OLAP you can:  Easilydefine amultidimensionalmodelwithadvancedanalyticcalculations  Productivelydeliverrichanalyticstoanyreportingandanalysistool usingsimple SQL  Transparentlyimprove summaryqueriesagainsttablesusingcube-basedmaterializedviews  Combine OLAPdatawithanyother data inyourOracle Database - includingspatial,datamining, XML, documentsandmore  Leverage yourexistingOracle Database expertiseandsoftware investment Oracle Exadata Database Machine The Oracle ExadataDatabase Machine is engineeredtobe the highestperformingandmost available platformforrunningthe Oracle Database.Exadatais a modernarchitecture featuringscale-outindustry- standarddatabase servers,scale-outintelligentstorage servers,andanextremelyhighspeedInfiniBand internal fabricthatconnectsall serversandstorage. Unique software algorithmsinExadataimplement database intelligence instorage,PCIbasedflash,andInfiniBandnetworkingtodeliverhigher performance andcapacityat lowercoststhan otherplatforms. Exadatarunsall typesof database workloadsincludingOnline TransactionProcessing(OLTP),DataWarehousing(DW) andconsolidationof mixedworkloads.Simple andfasttoimplement,the ExadataDatabase Machine powersandprotects your mostimportantdatabasesandisthe ideal foundationforaconsolidateddatabase cloud. Database Machine Benefits Best Data Warehouse platform:Accelerate datawarehouse queryperformance byuptoa factor of 10x or more,and run more queriesconcurrentlyforfasteraccessto business-critical information.
  • 5. Best OLTP platform: Accelerate performance of OLTPorientedworkloadsthroughacombinationof large physical flash,ultrahigh-speedflashcompression,andsmartflashcachingalgorithmswhichcan provide millionsof I/Ospersecond. Best Consolidationplatform:Replace isolatedspecial-purposesystemwithaconsolidatedplatform deliveringleadingperformance andscalabilityforall database applications.Exadatahasthe unique abilitytotransparentlyprioritizerequestsastheyflow fromdatabase servers,throughnetworkadapters and networkswitches,tostorage,andback. Oracle Business Intelligence Applications Oracle BusinessIntelligence (BI) Applicationsare complete,prebuiltBIsolutionsthatdeliverintuitive, role-basedintelligence foreveryone inanorganizationfromfrontline employeestoseniormanagement that enable betterdecisions,actions,andbusinessprocesses.Designedforheterogeneous environments,thesesolutionsenableorganizationstogaininsightfromarange of data sourcesand applicationsincludingSiebel,Oracle E-BusinessSuite,PeopleSoft,andthirdpartysystemssuchasSAP Oracle BI Applicationsare builtonthe Oracle BISuite Enterprise Edition,acomprehensive,innovative, and leadingBIplatform.Thisenablesorganizationstorealizethe value of apackagedBI Application, such as rapiddeployment,lowerTCO,andbuilt-inbestpractices,while alsobeingable toveryeasily extendthose solutionstomeettheirspecificneeds,orbuildcompletelycustomBI applications,all on one commonBI architecture.  Oracle financial analytics(OFA)  Oracle HR analytics(OHRA)  Oracle marketinganalytics(OMA)  Oracle vertical (industryspecific) analytics  Oracle salesanalytics(OSA)  Oracle service analytics(OSEA)  Oracle supplychainanalytics(OSCA) A word from Starbucks Coffee Company "Our Oracle Exadata-based database warehouse and Oracle Business Intelligence environment deliver detailed insight into point-of-sale data that allows us to innovate and offer our customers better services." – Mike Manzano, Vice President, Analytics and Insight, Starbucks Coffee Company.
  • 6. Recommendations  Usingquickcommunicationsystemslike SlackandFlockforcommunications  IntegratingAnalyticsandBISystemsfromIBMWatson  IntegratingCRMslike FreshdeskonMobile Appsandinstores.