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Marshall School Of Business. Data Warehousing: A Strategic View. Developed by: Dr Eddie Ip Modified by: Dr Arif Ansari. Introduction : What is a DW?. Overview. Functions of DW Definition & characteristics of DW Why DW and why it is possible now Business perspective Technical perspective
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Marshall School Of Business Data Warehousing: A Strategic View Developed by: Dr Eddie Ip Modified by: Dr Arif Ansari
Overview • Functions of DW • Definition & characteristics of DW • Why DW and why it is possible now • Business perspective • Technical perspective • Examples of analytical functions of DW • Evolution of DW
What is a DW? • Function: Creates a physical separation between the collection of daily transaction data and a copy of it. Use copy for analytical purposes • Avoid engineering conflict • Challenges • E.g., Scattered data create political & technical challenges
Definition of DW • “A collection of integrated, subject-orienteddatabases designed to supply the information required for decision-making.” - W. Inmon (1992)
Integrated • Data from many “silos” operational systems, or OLTP’s(= On-Line-Transaction-Processing) to form an integrated view of the customer
OLTP • Handle a business’s daily activities & commerce • “Bread and butter” activities
OLTP • ATM, airline reservation, catalog order, supermarket (bar-code data)
OLTP • Can think of it as “A data storage with blinking data items” (regular and frequent updating activities)
OLTP • Based on well-defined business & technical requirement • Large volumes of simple transactions • Rigid specs • Maintained by IT professionals • Process oriented
OLTP • Store in relational database tables or hierarchical files • Supports many users • Frequently updated
OLTP • Does not support • analysis • ad hoc query & reporting • multiple platform • evolution
Subject Oriented • Subject oriented (DW) vs process oriented (OLTP) • Process: transaction
Subject-oriented • Subject = entity of business interest • Examples of subject • customers • sales • profits
Databases • DW requires a large repository (DB) with proven technology for extracting relevant information • DW = internal DB + external DB + metadata DB
Decision Making • Dimensional view of data • Start from a high level (summary data) & drill down to more detail to answer specific questions • Function similar to Executive Information System (EIS)
Other characteristics of DW • DW takes a snap-shot of operation & stores it away • Allows trend/ pattern analysis
Other characteristics of DW • DW stores atomic & lightly summarized data • Summarized = aggregates • Trade-off consideration • performance • cost
Other characteristics of DW • Business users vs IT users • User interface • Security • Read-only
Basis for analytics • Form the basis for developing analytical capacity (Davenport et. al 2001) • Allows data -> knowledge -> action • Three-layer model • Context (data, infrastructure, strategy, skills) • Transformation (analysis and decision making) • Outcome • Data is the raw material for analytics
Single view of customer • DW: A single, integrated view of customer • Data integrated from across, and even outside organization >> corporate memory
Rising tide • Multiple benefits with a single action • Empower everyone to make decision at an appropriate own level (Rising Tide) • Improve customer intimacy • Support partners in supply chain • Support process control • Facilitate various levels of analysis & action • Enhance performance of customer contact points (e.g. call center, website)
Raise corporate IQ • Raise corporate intelligence quotient = tide level at which employees operate • High IQ=> high flexibility, high maneuverability • Especially important for industries with high info intensity • Swift 2001 (reader)
“The ultimate goal is simple: Give the battlefield commander access to all the information needed to win the war. And give it to him when he wants it, where he wants he and how he wants it.”-- Gen. Colin L. Powell, “Information Warriors,” BYTE, 1992
Background to proliferation of DW • Shift in business model • Enterprise-centric to customer-centric • E.g., At Marriott Hotel: give customer what they want, when they want it, in the way they want it. • Old days: the public wants what the public gets* • Mass marketing: “You buy what I can produce.”
Customer-Centric Business • What bring about the shift of c.g. ? • Internet • Improvement in production & supply chain mgt • Other disruptive and new technologies (lead to high productivity & even overcapacity) • Globalization • Deregulation • Consolidation • Repositioning of companies
Customer-Centric Business • Everyone is after everyone else’s customers
Customer-Centric Business • Optimize all aspects of your business to improve acquisition, retention and profitability. • Find the right Customer • Offer the right product • At the right Time • Using the right Channel
Customer-centric Business • Enabling technologies: DW, client-server, MPP, wireless, internet (email & interactive sites), DM, personalization • DW as IS strategy is driven by business strategy
Data-Knowledge-Result Model • Data-to-Knowledge-to-action-to-results (Reader : Davenport et. al.) • Information value chain analysis • Process view : value added when data are managed and used
Data-Knowledge-Result Model A collection of raw data has no value in itself • Data warehousing : collect & consolidate raw data • Analytical processing : analyze data • Decision making: act • Improve internal operational excellence • Improve external partner, supplier,customer relationship management
DW creates value thro’ action • DW creates value only when it is driven by business requirements, not IT • Turn analyses into marketplace advantage
Examples of action • DM to understand customer purchasing behavior -> marketing campaign (Walmart, reading) • Web stream analysis -> personalization of Webpages (Amazon.com) • Ad hoc queries -> support for marketers (Sears, Swift, p.364)
Examples of action • DW financial data -> portfolio & risk management (BoA, Swift, p.340) • DW credit data -> risk assessment, credit decision (Capital One, reader) • Customer preference data -> channel management
Examples of action • DW inventory data -> revenue analysis (e.g. Walmart, reading) • DW customer profile -> cross selling opportunities • DW customer history -> relationship marketing (Peppers & Rogers, 1998)
Summary • DW is physically separated from OLTP • DW provides the basis (memory, analytics) to achieve enterprise intelligence • Business & technical requirements (e.g., user interface, subject orientation) • Background : shift to customer-centered • DW’s key role in Data>Knowledge>Action>Result model • Business-driven DW is the key to ROI