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10/30/2001Database Management -- R. Larson Data Warehousing University of California, Berkeley School of Information Management and Systems SIMS 257: Database.

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Presentation on theme: "10/30/2001Database Management -- R. Larson Data Warehousing University of California, Berkeley School of Information Management and Systems SIMS 257: Database."— Presentation transcript:

1 10/30/2001Database Management -- R. Larson Data Warehousing University of California, Berkeley School of Information Management and Systems SIMS 257: Database Management

2 10/30/2001Database Management -- R. Larson Review Database Administration Issues in DBA

3 10/30/2001Database Management -- R. Larson Today Data Warehousing

4 10/30/2001Database Management -- R. Larson Today Introduction to Data Warehouses Data Warehousing (Based on lecture notes from Joachim Hammer of University of Florida and Joe Hellerstein and Mike Stonebraker of UCB)

5 10/30/2001Database Management -- R. Larson Overview Data Warehouses and Merging Information Resources What is a Data Warehouse? History of Data Warehousing Types of Data and Their Uses Data Warehouse Architectures Data Warehousing Problems and Issues

6 10/30/2001Database Management -- R. Larson Problem: Heterogeneous Information Sources “Heterogeneities are everywhere” p Different interfaces p Different data representations p Duplicate and inconsistent information Personal Databases Digital Libraries Scientific Databases World Wide Web Slide credit: J. Hammer

7 10/30/2001Database Management -- R. Larson Problem: Data Management in Large Enterprises Vertical fragmentation of informational systems (vertical stove pipes) Result of application (user)-driven development of operational systems Sales AdministrationFinanceManufacturing... Sales Planning Stock Mngmt... Suppliers... Debt Mngmt Num. Control... Inventory Slide credit: J. Hammer

8 10/30/2001Database Management -- R. Larson Goal: Unified Access to Data Integration System Collects and combines information Provides integrated view, uniform user interface Supports sharing World Wide Web Digital LibrariesScientific Databases Personal Databases Slide credit: J. Hammer

9 10/30/2001Database Management -- R. Larson The Traditional Research Approach Source... Integration System... Metadata Clients Wrapper Query-driven (lazy, on-demand) Slide credit: J. Hammer

10 10/30/2001Database Management -- R. Larson Disadvantages of Query-Driven Approach Delay in query processing –Slow or unavailable information sources –Complex filtering and integration Inefficient and potentially expensive for frequent queries Competes with local processing at sources Hasn’t caught on in industry Slide credit: J. Hammer

11 10/30/2001Database Management -- R. Larson The Warehousing Approach DataWarehouse Clients Source... Extractor/ Monitor Integration System... Metadata Extractor/ Monitor Extractor/ Monitor Information integrated in advance Stored in WH for direct querying and analysis Slide credit: J. Hammer

12 10/30/2001Database Management -- R. Larson Advantages of Warehousing Approach High query performance –But not necessarily most current information Doesn’t interfere with local processing at sources –Complex queries at warehouse –OLTP at information sources Information copied at warehouse –Can modify, annotate, summarize, restructure, etc. –Can store historical information –Security, no auditing Has caught on in industry Slide credit: J. Hammer

13 10/30/2001Database Management -- R. Larson Not Either-Or Decision Query-driven approach still better for –Rapidly changing information –Rapidly changing information sources –Truly vast amounts of data from large numbers of sources –Clients with unpredictable needs Slide credit: J. Hammer

14 10/30/2001Database Management -- R. Larson Data Warehouse Evolution TIME 2000199519901985198019601975 Information- Based Management Data Revolution “Middle Ages” “Prehistoric Times” Relational Databases PC’s and Spreadsheets End-user Interfaces 1st DW Article DW Confs. Vendor DW Frameworks Company DWs “Building the DW” Inmon (1992) Data Replication Tools Slide credit: J. Hammer

15 10/30/2001Database Management -- R. Larson What is a Data Warehouse? “A Data Warehouse is a –subject-oriented, –integrated, –time-variant, –non-volatile collection of data used in support of management decision making processes.” -- Inmon & Hackathorn, 1994: viz. McFadden, Chap 14

16 10/30/2001Database Management -- R. Larson DW Definition… Subject-Oriented: –The data warehouse is organized around the key subjects (or high-level entities) of the enterprise. Major subjects include Customers Patients Students Products Etc.

17 10/30/2001Database Management -- R. Larson DW Definition… Integrated –The data housed in the data warehouse are defined using consistent Naming conventions Formats Encoding Structures Related Characteristics

18 10/30/2001Database Management -- R. Larson DW Definition… Time-variant –The data in the warehouse contain a time dimension so that they may be used as a historical record of the business

19 10/30/2001Database Management -- R. Larson DW Definition… Non-volatile –Data in the data warehouse are loaded and refreshed from operational systems, but cannot be updated by end-users

20 10/30/2001Database Management -- R. Larson What is a Data Warehouse? A Practitioners Viewpoint “A data warehouse is simply a single, complete, and consistent store of data obtained from a variety of sources and made available to end users in a way they can understand and use it in a business context.” -- Barry Devlin, IBM Consultant Slide credit: J. Hammer

21 10/30/2001Database Management -- R. Larson A Data Warehouse is... Stored collection of diverse data –A solution to data integration problem –Single repository of information Subject-oriented –Organized by subject, not by application –Used for analysis, data mining, etc. Optimized differently from transaction- oriented db User interface aimed at executive decision makers and analysts

22 10/30/2001Database Management -- R. Larson … Cont’d Large volume of data (Gb, Tb) Non-volatile –Historical –Time attributes are important Updates infrequent May be append-only Examples –All transactions ever at WalMart –Complete client histories at insurance firm –Stockbroker financial information and portfolios Slide credit: J. Hammer

23 10/30/2001Database Management -- R. Larson Warehouse is a Specialized DB Standard DB Mostly updates Many small transactions Mb - Gb of data Current snapshot Index/hash on p.k. Raw data Thousands of users (e.g., clerical users) Warehouse Mostly reads Queries are long and complex Gb - Tb of data History Lots of scans Summarized, reconciled data Hundreds of users (e.g., decision-makers, analysts) Slide credit: J. Hammer

24 10/30/2001Database Management -- R. Larson Summary Operational Systems Enterprise Modeling Business Information Guide Data Warehouse Catalog Data Warehouse Population Data Warehouse Business Information Interface Slide credit: J. Hammer

25 10/30/2001Database Management -- R. Larson Warehousing and Industry Warehousing is big business –$2 billion in 1995 –$3.5 billion in early 1997 –Predicted: $8 billion in 1998 [Metagroup] WalMart has largest warehouse –900-CPU, 2,700 disk, 23 TB Teradata system –~7TB in warehouse –40-50GB per day Slide credit: J. Hammer

26 10/30/2001Database Management -- R. Larson Types of Data Business Data - represents meaning –Real-time data (ultimate source of all business data) –Reconciled data –Derived data Metadata - describes meaning –Build-time metadata –Control metadata –Usage metadata Data as a product* - intrinsic meaning –Produced and stored for its own intrinsic value –e.g., the contents of a text-book Slide credit: J. Hammer

27 10/30/2001Database Management -- R. Larson Data Warehousing Architecture

28 10/30/2001Database Management -- R. Larson “Ingest” DataWarehouse Clients Source/ FileSource / ExternalSource / DB... Extractor/ Monitor Integration System... Metadata Extractor/ Monitor Extractor/ Monitor

29 10/30/2001Database Management -- R. Larson Data Warehouse Architectures: Conceptual View Single-layer –Every data element is stored once only –Virtual warehouse Two-layer –Real-time + derived data –Most commonly used approach in industry today “Real-time data” Operational systems Informational systems Derived Data Real-time data Operational systems Informational systems Slide credit: J. Hammer

30 10/30/2001Database Management -- R. Larson Three-layer Architecture: Conceptual View Transformation of real-time data to derived data really requires two steps Derived Data Real-time data Operational systems Informational systems Reconciled Data Physical Implementation of the Data Warehouse View level “Particular informational needs” Slide credit: J. Hammer

31 10/30/2001Database Management -- R. Larson Issues in Data Warehousing Warehouse Design Extraction –Wrappers, monitors (change detectors) Integration –Cleansing & merging Warehousing specification & Maintenance Optimizations Miscellaneous (e.g., evolution) Slide credit: J. Hammer

32 10/30/2001Database Management -- R. Larson Data Warehousing: Two Distinct Issues (1) How to get information into warehouse “Data warehousing” (2) What to do with data once it’s in warehouse “Warehouse DBMS” Both rich research areas Industry has focused on (2) Slide credit: J. Hammer

33 10/30/2001Database Management -- R. Larson Data Extraction Source types –Relational, flat file, WWW, etc. How to get data out? –Replication tool –Dump file –Create report –ODBC or third-party “wrappers” Slide credit: J. Hammer

34 10/30/2001Database Management -- R. Larson Wrapper pConverts data and queries from one data model to another pExtends query capabilities for sources with limited capabilities Data Model B Data Model A Queries Data Queries Source Wrapper Slide credit: J. Hammer

35 10/30/2001Database Management -- R. Larson Wrapper Generation Solution 1: Hard code for each source Solution 2: Automatic wrapper generation Wrapper Generator Definition Slide credit: J. Hammer

36 10/30/2001Database Management -- R. Larson Data Transformations Convert data to uniform format –Byte ordering, string termination –Internal layout Remove, add & reorder attributes –Add key –Add data to get history Sort tuples Slide credit: J. Hammer

37 10/30/2001Database Management -- R. Larson Monitors Goal: Detect changes of interest and propagate to integrator How? –Triggers –Replication server –Log sniffer –Compare query results –Compare snapshots/dumps Slide credit: J. Hammer

38 10/30/2001Database Management -- R. Larson Data Integration Receive data (changes) from multiple wrappers/monitors and integrate into warehouse Rule-based Actions –Resolve inconsistencies –Eliminate duplicates –Integrate into warehouse (may not be empty) –Summarize data –Fetch more data from sources (wh updates) –etc. Slide credit: J. Hammer

39 10/30/2001Database Management -- R. Larson Data Cleansing Find (& remove) duplicate tuples –e.g., Jane Doe vs. Jane Q. Doe Detect inconsistent, wrong data –Attribute values that don’t match Patch missing, unreadable data Notify sources of errors found Slide credit: J. Hammer

40 10/30/2001Database Management -- R. Larson Warehouse Maintenance Warehouse data  materialized view –Initial loading –View maintenance View maintenance Slide credit: J. Hammer

41 10/30/2001Database Management -- R. Larson Differs from Conventional View Maintenance... Warehouses may be highly aggregated and summarized Warehouse views may be over history of base data Process large batch updates Schema may evolve Slide credit: J. Hammer

42 10/30/2001Database Management -- R. Larson Differs from Conventional View Maintenance... Base data doesn’t participate in view maintenance –Simply reports changes –Loosely coupled –Absence of locking, global transactions –May not be queriable Slide credit: J. Hammer

43 10/30/2001Database Management -- R. Larson Warehouse Maintenance Anomalies Materialized view maintenance in loosely coupled, non-transactional environment Simple example SalesComp. Integrator Data Warehouse Sale(item,clerk)Emp(clerk,age) Sold (item,clerk,age) Sold = Sale Emp Slide credit: J. Hammer

44 10/30/2001Database Management -- R. Larson Warehouse Maintenance Anomalies 1. Insert into Emp(Mary,25), notify integrator 2. Insert into Sale (Computer,Mary), notify integrator 3. (1)  integrator adds Sale (Mary,25) 4. (2)  integrator adds (Computer,Mary) Emp 5. View incorrect (duplicate tuple) SalesComp. Integrator Data Warehouse Sale(item,clerk)Emp(clerk,age) Sold (item,clerk,age) Slide credit: J. Hammer

45 10/30/2001Database Management -- R. Larson Maintenance Anomaly - Solutions Incremental update algorithms (ECA, Strobe, etc.) Research issues: Self-maintainable views –What views are self-maintainable –Store auxiliary views so original + auxiliary views are self-maintainable Slide credit: J. Hammer

46 10/30/2001Database Management -- R. Larson Self-Maintainability: Examples Sold(item,clerk,age) = Sale(item,clerk) Emp(clerk,age) Inserts into Emp If Emp.clerk is key and Sale.clerk is foreign key (with ref. int.) then no effect Inserts into Sale Maintain auxiliary view: Emp-  clerk,age (Sold) Deletes from Emp Delete from Sold based on clerk Slide credit: J. Hammer

47 10/30/2001Database Management -- R. Larson Self-Maintainability: Examples Deletes from Sale Delete from Sold based on {item,clerk} Unless age at time of sale is relevant Auxiliary views for self-maintainability –Must themselves be self-maintainable –One solution: all source data –But want minimal set Slide credit: J. Hammer

48 10/30/2001Database Management -- R. Larson Partial Self-Maintainability Avoid (but don’t prohibit) going to sources Sold=Sale(item,clerk) Emp(clerk,age) Inserts into Sale –Check if clerk already in Sold, go to source if not –Or replicate all clerks over age 30 –Or... Slide credit: J. Hammer

49 10/30/2001Database Management -- R. Larson Warehouse Specification (ideally) Extractor/ Monitor Extractor/ Monitor Extractor/ Monitor Integrator Warehouse... Metadata Warehouse Configuration Module View Definitions Integration rules Change Detection Requirements Slide credit: J. Hammer

50 10/30/2001Database Management -- R. Larson Optimization Update filtering at extractor –Similar to irrelevant updates in constraint and view maintenance Multiple view maintenance –If warehouse contains several views –Exploit shared sub-views Slide credit: J. Hammer

51 10/30/2001Database Management -- R. Larson Additional Research Issues Historical views of non-historical data Expiring outdated information Crash recovery Addition and removal of information sources –Schema evolution Slide credit: J. Hammer

52 10/30/2001Database Management -- R. Larson More Information on DW Agosta, Lou, The Essential Guide to Data Warehousing. Prentise Hall PTR, 1999. Devlin, Barry, Data Warehouse, from Architecture to Implementation. Addison-Wesley, 1997. Inmon, W.H., Building the Data Warehouse. John Wiley, 1992. Widom, J., “Research Problems in Data Warehousing.” Proc. of the 4th Intl. CIKM Conf., 1995. Chaudhuri, S., Dayal, U., “An Overview of Data Warehousing and OLAP Technology.” ACM SIGMOD Record, March 1997.


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