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Lecture #9
Data Integration
May 30th, 2002
Agenda/Administration
? Project demo scheduling.
? Reading pointers for exam.
What is Data Integration
? Providing
C Uniform (same query interface to all sources)
C Access to (queries; eventually updates too)
C Multiple (we want many, but 2 is hard too)
C Autonomous (DBA doesn¨t report to you)
C Heterogeneous (data models are different)
C Structured (or at least semi-structured)
C Data Sources (not only databases).
ReviewsShippingOrdersInventoryBooks
mybooks.com Mediated Schema
West
...
FedEx
WAN
alt.books.
reviews
InternetInternet Internet
UPS
East Orders Customer
Reviews
NYTimes
...
Morgan-
Kaufman
Prentice-
Hall
The Problem: Data Integration
Uniform query capability across autonomous,
heterogeneous data sources on LAN, WAN, or
Internet
Motivation(s)
? Enterprise data integration; web-site construction.
? WWW:
C Comparison shopping
C Portals integrating data from multiple sources
C B2B, electronic marketplaces
? Science and culture:
C Medical genetics: integrating genomic data
C Astrophysics: monitoring events in the sky.
C Environment: Puget Sound Regional Synthesis Model
C Culture: uniform access to all cultural databases
produced by countries in Europe.
Discussion
? Why is it hard?
? How will we solve it?
Current Solutions
? Mostly ad-hoc programming: create a
special solution for every case; pay
consultants a lot of money.
? Data warehousing: load all the data
periodically into a warehouse.
C 6-18 months lead time
C Separates operational DBMS from decision
support DBMS. (not only a solution to data
integration).
C Performance is good; data may not be fresh.
C Need to clean, scrub you data.
Data Warehouse Architecture
Data
source
Data
source
Data
source
Relational database (warehouse)
User queries
Data extraction
programs
Data cleaning/
scrubbing
OLAP / Decision support/
Data cubes/ data mining
The Virtual Integration
Architecture
? Leave the data in the sources.
? When a query comes in:
C Determine the relevant sources to the query
C Break down the query into sub-queries for the
sources.
C Get the answers from the sources, and combine
them appropriately.
? Data is fresh.
? Challenge: performance.
Virtual Integration Architecture
Data
source
wrapper
Data
source
wrapper
Data
source
wrapper
Sources can be: relational, hierarchical (IMS), structure files, web sites.
Mediator:
User queries
Mediated schema
Data source
catalog
Reformulation engine
optimizer
Execution engine
Which data
model?
Research Projects
? Garlic (IBM),
? Information Manifold (AT&T)
? Tsimmis, InfoMaster (Stanford)
? The Internet Softbot/Razor/Tukwila (UW)
? Hermes (Maryland)
? DISCO, Agora (INRIA, France)
? SIMS/Ariadne (USC/ISI)
Industry
? Nimble Technology
? Enosys Markets
? IBM starting to announce stuff
? BEA marketing announcing stuff too.
Dimensions to Consider
? How many sources are we accessing?
? How autonomous are they?
? Meta-data about sources?
? Is the data structured?
? Queries or also updates?
? Requirements: accuracy, completeness,
performance, handling inconsistencies.
? Closed world assumption vs. open world?
Outline
? Wrappers
? Semantic integration and source descriptions:
C Modeling source completeness
C Modeling source capabilities
? Query optimization
? Query execution
? Peer-data management systems
? Creating schema mappings
Wrapper Programs
? Task: to communicate with the data sources
and do format translations.
? They are built w.r.t. a specific source.
? They can sit either at the source or at the
mediator.
? Often hard to build (very little science).
? Can be ^intelligent ̄: perform source-
specific optimizations.
Example
<b> Introduction to DB </b>
<i> Phil Bernstein </i>
<i> Eric Newcomer </i>
Addison Wesley, 1999
<book>
<title> Introduction to DB </title>
<author> Phil Bernstein </author>
<author> Eric Newcomer </author>
<publisher> Addison Wesley </publisher>
<year> 1999 </year>
</book>
Transform:
into:
Data Source Catalog
? Contains all meta-information about the
sources:
C Logical source contents (books, new cars).
C Source capabilities (can answer SQL queries)
C Source completeness (has all books).
C Physical properties of source and network.
C Statistics about the data (like in an RDBMS)
C Source reliability
C Mirror sources
C Update frequency.
Content Descriptions
? User queries refer to the mediated schema.
? Data is stored in the sources in a local
schema.
? Content descriptions provide the semantic
mappings between the different schemas.
? Data integration system uses the
descriptions to translate user queries into
queries on the sources.
Desiderata from Source
Descriptions
? Expressive power: distinguish between
sources with closely related data. Hence, be
able to prune access to irrelevant sources.
? Easy addition: make it easy to add new data
sources.
? Reformulation: be able to reformulate a user
query into a query on the sources efficiently
and effectively.
Reformulation Problem
? Given:
C A query Q posed over the mediated schema
C Descriptions of the data sources
? Find:
C A query Q¨ over the data source relations, such
that:
? Q¨ provides only correct answers to Q, and
? Q¨ provides all possible answers from to Q given the
sources.
Approaches to Specifying Source
Descriptions
? Global-as-view: express the mediated
schema relations as a set of views over the
data source relations
? Local-as-view: express the source relations
as views over the mediated schema.
? Can be combined with no additional cost.
Global-as-View
Mediated schema:
Movie(title, dir, year, genre),
Schedule(cinema, title, time).
Create View Movie AS
select * from S1 [S1(title,dir,year,genre)]
union
select * from S2 [S2(title, dir,year,genre)]
union [S3(title,dir), S4(title,year,genre)]
select S3.title, S3.dir, S4.year, S4.genre
from S3, S4
where S3.title=S4.title
Global-as-View: Example 2
Mediated schema:
Movie(title, dir, year, genre),
Schedule(cinema, title, time).
Create View Movie AS [S1(title,dir,year)]
select title, dir, year, NULL
from S1
union [S2(title, dir,genre)]
select title, dir, NULL, genre
from S2
Global-as-View: Example 3
Mediated schema:
Movie(title, dir, year, genre),
Schedule(cinema, title, time).
Source S4: S4(cinema, genre)
Create View Movie AS
select NULL, NULL, NULL, genre
from S4
Create View Schedule AS
select cinema, NULL, NULL
from S4.
But what if we want to find which cinemas are playing
comedies?
Global-as-View Summary
? Query reformulation boils down to view
unfolding.
? Very easy conceptually.
? Can build hierarchies of mediated schemas.
? You sometimes loose information. Not
always natural.
? Adding sources is hard. Need to consider all
other sources that are available.
Local-as-View: example 1
Mediated schema:
Movie(title, dir, year, genre),
Schedule(cinema, title, time).
Create Source S1 AS
select * from Movie
Create Source S3 AS [S3(title, dir)]
select title, dir from Movie
Create Source S5 AS
select title, dir, year
from Movie
where year > 1960 AND genre=^Comedy ̄
Local-as-View: Example 2
Mediated schema:
Movie(title, dir, year, genre),
Schedule(cinema, title, time).
Source S4: S4(cinema, genre)
Create Source S4
select cinema, genre
from Movie m, Schedule s
where m.title=s.title
.
Now if we want to find which cinemas are playing
comedies, there is hope!
Local-as-View Summary
? Very flexible. You have the power of the
entire query language to define the contents
of the source.
? Hence, can easily distinguish between
contents of closely related sources.
? Adding sources is easy: they¨re independent
of each other.
? Query reformulation: answering queries
using views!
The General Problem
? Given a set of views V1,´,Vn, and a query
Q, can we answer Q using only the answers to
V1,´,Vn?
? Many, many papers on this problem.
? The best performing algorithm: The MiniCon
Algorithm, (Pottinger & Levy, 2000).
? Great survey on the topic: (Halevy, 2001).
Local Completeness Information
? If sources are incomplete, we need to look
at each one of them.
? Often, sources are locally complete.
? Movie(title, director, year) complete for
years after 1960, or for American directors.
? Question: given a set of local completeness
statements, is a query Q¨ a complete answer
to Q?
Example
? Movie(title, director, year) (complete after
1960).
? Show(title, theater, city, hour)
? Query: find movies (and directors) playing
in Seattle:
Select m.title, m.director
From Movie m, Show s
Where m.title=s.title AND city=^Seattle ̄
? Complete or not?
Example #2
? Movie(title, director, year), Oscar(title, year)
? Query: find directors whose movies won
Oscars after 1965:
select m.director
from Movie m, Oscar o
where m.title=o.title AND m.year=o.year
AND o.year > 1965.
? Complete or not?
Query Optimization
? Very related to query reformulation!
? Goal of the optimizer: find a physical plan
with minimal cost.
? Key components in optimization:
C Search space of plans
C Search strategy
C Cost model
Optimization in Distributed
DBMS
? A distributed database (2-minute tutorial):
C Data is distributed over multiple nodes, but is
uniform.
C Query execution can be distributed to sites.
C Communication costs are significant.
? Consequences for optimization:
C Optimizer needs to decide locality
C Need to exploit independent parallelism.
C Need operators that reduce communication
costs (semi-joins).
DDBMS vs. Data Integration
? In a DDBMS, data is distributed over a set
of uniform sites with precise rules.
? In a data integration context:
C Data sources may provide only limited access
patterns to the data.
C Data sources may have additional query
capabilities.
C Cost of answering queries at sources unknown.
C Statistics about data unknown.
C Transfer rates unpredictable.
Modeling Source Capabilities
? Negative capabilities:
C A web site may require certain inputs (in an
HTML form).
C Need to consider only valid query execution
plans.
? Positive capabilities:
C A source may be an ODBC compliant system.
C Need to decide placement of operations
according to capabilities.
? Problem: how to describe and exploit
source capabilities.
Example #1: Access Patterns
Mediated schema relation: Cites(paper1, paper2)
Create Source S1 as
select *
from Cites
given paper1
Create Source S2 as
select paper1
from Cites
Query: select paper1 from Cites where paper2=^Hal00 ̄
Example #1: Continued
Create Source S1 as
select *
from Cites
given paper1
Create Source S2 as
select paper1
from Cites
Select p1
From S1, S2
Where S2.paper1=S1.paper1 AND S1.paper2=^Hal00 ̄
Example #2: Access Patterns
Create Source S1 as
select *
from Cites
given paper1
Create Source S2 as
select paperID
from UW-Papers
Create Source S3 as
select paperID
from AwardPapers
given paperID
Query: select * from AwardPapers
Example #2: Solutions
? Can¨t go directly to S3 because it requires a
binding.
? Can go to S1, get UW papers, and check if they¨re
in S3.
? Can go to S1, get UW papers, feed them into S2,
and feed the results into S3.
? Can go to S1, feed results into S2, feed results into
S2 again, and then feed results into S3.
? Strictly speaking, we can¨t a priori decide when to
stop.
? Need recursive query processing.
Handling Positive Capabilities
? Characterizing positive capabilities:
C Schema independent (e.g., can always perform joins,
selections).
C Schema dependent: can join R and S, but not T.
C Given a query, tells you whether it can be handled.
? Key issue: how do you search for plans?
? Garlic approach (IBM): Given a query, STAR
rules determine which subqueries are executable
by the sources. Then proceed bottom-up as in
System-R.
Matching Objects Across Sources
? How do I know that A. Halevy in source 1 is the
same as Alon Halevy in source 2?
? If there are uniform keys across sources, no
problem.
? If not:
C Domain specific solutions (e.g., maybe look at the
address, ssn).
C Use Information retrieval techniques (Cohen, 98).
Judge similarity as you would between documents.
C Use concordance tables. These are time-consuming to
build, but you can then sell them for lots of money.
Optimization and Execution
? Problem:
C Few and unreliable statistics about the data.
C Unexpected (possibly bursty) network transfer
rates.
C Generally, unpredictable environment.
? General solution: (research area)
C Adaptive query processing.
C Interleave optimization and execution. As you
get to know more about your data, you can
improve your plan.
Optimizer
(Re-)
Optimizer
MemAlloc-
Fragmenter
Execution
Engine
Temp Store
Event
Handler
Query
Operators
Reformulator
Catalog
source mappings
query
logical
plan
exec
plan
answer
data
exec
results
Tukwila Data Integration System
Novel components:
C Event handler
C Optimization-execution loop
Double Pipelined Join (Tukwila)
Hash Join
?Partially pipelined: no
output until inner read
?Asymmetric (inner vs.
outer) ! optimization
requires source behavior
knowledge
Double Pipelined Hash Join
?Outputs data immediately
?Symmetric ! requires less
source knowledge to optimize
Piazza: A Peer-Data Management System
Goal: To enable users to share data across
local or wide area networks in an ad-hoc,
highly dynamic distributed architecture.
? Peers share data, mediated views.
? Peers act as both clients and servers
? Rich semantic relationships between peers.
? Ad-hoc collaborations (peers join and leave
at will).
Extending the Vision to Data Sharing
911 Dispatch
Center (9DC)
Fire
Services (FS)
Portland
Fire District (PFD)
Vancouver Fire
District (VFD)
Station 12Station 19Station 3 Station 32
First
Hospital
(FH)
Hospitals
(H)
Lakeview
Hospital (LH)
Medical
Aid (MA)
Earthquake
Command
Center (ECC)
Search &
Rescue (SR)
Emergency
Workers (EW)
Washington
State
National
Guard
The Structure Mapping Problem
? Types of structures:
C Database schemas, XML DTDs, ontologies, ´,
? Input:
C Two (or more) structures, S1 and S2
C (perhaps) Data instances for S1 and S2
C Background knowledge
? Output:
C A mapping between S1 and S2
? Should enable translating between data instances.
Semantic Mappings between
Schemas
? Source schemas = XML DTDs
house
location contact
house
address
name phone
num-baths
full-baths half-baths
contact-info
agent-name agent-phone
1-1 mapping non 1-1 mapping
Why Matching is Difficult
? Structures represent same entity differently
C different names => same entity:
? area & address => location
C same names => different entities:
? area => location or square-feet
? Intended semantics is typically subjective!
C IBM Almaden Lab = IBM?
? Schema, data and rules never fully capture semantics!
C not adequately documented, certainly not for machine
consumption.
? Often hard for humans (committees are formed!)
Desiderata from Proposed
Solutions
? Accuracy, efficiency, ease of use.
? Realistic expectations:
C Unlikely to be fully automated. Need user in the loop.
? Some notion of semantics for mappings.
? Extensibility:
C Solution should exploit additional background
knowledge.
? ^Memory ̄, knowledge reuse:
C System should exploit previous manual or
automatically generated matchings.
C Key idea behind LSD.
Learning for Mapping
? Context: generating semantic mappings between
a mediated schema and a large set of data source
schemas.
? Key idea: generate the first mappings manually,
and learn from them to generate the rest.
? Technique: multi-strategy learning (extensible!)
? L(earning) S(ource) D(escriptions) [SIGMOD 2001].
Data Integration (a simple
PDMS)
Find houses with four bathrooms priced under $500,000
mediated schema
homes.comrealestate.com
source schema 2
homeseekers.com
source schema 3source schema 1
Applications: WWW, enterprises, science projects
Techniques: virtual data integration, warehousing, custom code.
Query reformulation
and optimization.
price agent-name agent-phone office-phone description
Learning from the Manual Mappings
listed-price contact-name contact-phone office comments
Schema of realestate.com
Mediated schema
$250K James Smith (305) 729 0831 (305) 616 1822 Fantastic house
$320K Mike Doan (617) 253 1429 (617) 112 2315 Great location
listed-price contact-name contact-phone office comments
realestate.com
If ^fantastic ̄ & ^great ̄
occur frequently in
data instances
=> descriptionsold-at contact-agent extra-info
$350K (206) 634 9435 Beautiful yard
$230K (617) 335 4243 Close to Seattle
$190K (512) 342 1263 Great lot
homes.com
If ^office ̄ occurs in the name
=> office-phone
Multi-Strategy Learning
? Use a set of base learners:
C Name learner, Na?ve Bayes, Whirl, XML learner
? And a set of recognizers:
C County name, zip code, phone numbers.
? Each base learner produces a prediction weighted
by confidence score.
? Combine base learners with a meta-learner, using
stacking.
The Semantic Web
? How does it relate to data integration?
? How are we going to do it?
? Why should we do it? Do we need a killer
app or is the semantic web a killer app?

More Related Content

Lecture09

  • 2. Agenda/Administration ? Project demo scheduling. ? Reading pointers for exam.
  • 3. What is Data Integration ? Providing C Uniform (same query interface to all sources) C Access to (queries; eventually updates too) C Multiple (we want many, but 2 is hard too) C Autonomous (DBA doesn¨t report to you) C Heterogeneous (data models are different) C Structured (or at least semi-structured) C Data Sources (not only databases).
  • 4. ReviewsShippingOrdersInventoryBooks mybooks.com Mediated Schema West ... FedEx WAN alt.books. reviews InternetInternet Internet UPS East Orders Customer Reviews NYTimes ... Morgan- Kaufman Prentice- Hall The Problem: Data Integration Uniform query capability across autonomous, heterogeneous data sources on LAN, WAN, or Internet
  • 5. Motivation(s) ? Enterprise data integration; web-site construction. ? WWW: C Comparison shopping C Portals integrating data from multiple sources C B2B, electronic marketplaces ? Science and culture: C Medical genetics: integrating genomic data C Astrophysics: monitoring events in the sky. C Environment: Puget Sound Regional Synthesis Model C Culture: uniform access to all cultural databases produced by countries in Europe.
  • 6. Discussion ? Why is it hard? ? How will we solve it?
  • 7. Current Solutions ? Mostly ad-hoc programming: create a special solution for every case; pay consultants a lot of money. ? Data warehousing: load all the data periodically into a warehouse. C 6-18 months lead time C Separates operational DBMS from decision support DBMS. (not only a solution to data integration). C Performance is good; data may not be fresh. C Need to clean, scrub you data.
  • 8. Data Warehouse Architecture Data source Data source Data source Relational database (warehouse) User queries Data extraction programs Data cleaning/ scrubbing OLAP / Decision support/ Data cubes/ data mining
  • 9. The Virtual Integration Architecture ? Leave the data in the sources. ? When a query comes in: C Determine the relevant sources to the query C Break down the query into sub-queries for the sources. C Get the answers from the sources, and combine them appropriately. ? Data is fresh. ? Challenge: performance.
  • 10. Virtual Integration Architecture Data source wrapper Data source wrapper Data source wrapper Sources can be: relational, hierarchical (IMS), structure files, web sites. Mediator: User queries Mediated schema Data source catalog Reformulation engine optimizer Execution engine Which data model?
  • 11. Research Projects ? Garlic (IBM), ? Information Manifold (AT&T) ? Tsimmis, InfoMaster (Stanford) ? The Internet Softbot/Razor/Tukwila (UW) ? Hermes (Maryland) ? DISCO, Agora (INRIA, France) ? SIMS/Ariadne (USC/ISI)
  • 12. Industry ? Nimble Technology ? Enosys Markets ? IBM starting to announce stuff ? BEA marketing announcing stuff too.
  • 13. Dimensions to Consider ? How many sources are we accessing? ? How autonomous are they? ? Meta-data about sources? ? Is the data structured? ? Queries or also updates? ? Requirements: accuracy, completeness, performance, handling inconsistencies. ? Closed world assumption vs. open world?
  • 14. Outline ? Wrappers ? Semantic integration and source descriptions: C Modeling source completeness C Modeling source capabilities ? Query optimization ? Query execution ? Peer-data management systems ? Creating schema mappings
  • 15. Wrapper Programs ? Task: to communicate with the data sources and do format translations. ? They are built w.r.t. a specific source. ? They can sit either at the source or at the mediator. ? Often hard to build (very little science). ? Can be ^intelligent ̄: perform source- specific optimizations.
  • 16. Example <b> Introduction to DB </b> <i> Phil Bernstein </i> <i> Eric Newcomer </i> Addison Wesley, 1999 <book> <title> Introduction to DB </title> <author> Phil Bernstein </author> <author> Eric Newcomer </author> <publisher> Addison Wesley </publisher> <year> 1999 </year> </book> Transform: into:
  • 17. Data Source Catalog ? Contains all meta-information about the sources: C Logical source contents (books, new cars). C Source capabilities (can answer SQL queries) C Source completeness (has all books). C Physical properties of source and network. C Statistics about the data (like in an RDBMS) C Source reliability C Mirror sources C Update frequency.
  • 18. Content Descriptions ? User queries refer to the mediated schema. ? Data is stored in the sources in a local schema. ? Content descriptions provide the semantic mappings between the different schemas. ? Data integration system uses the descriptions to translate user queries into queries on the sources.
  • 19. Desiderata from Source Descriptions ? Expressive power: distinguish between sources with closely related data. Hence, be able to prune access to irrelevant sources. ? Easy addition: make it easy to add new data sources. ? Reformulation: be able to reformulate a user query into a query on the sources efficiently and effectively.
  • 20. Reformulation Problem ? Given: C A query Q posed over the mediated schema C Descriptions of the data sources ? Find: C A query Q¨ over the data source relations, such that: ? Q¨ provides only correct answers to Q, and ? Q¨ provides all possible answers from to Q given the sources.
  • 21. Approaches to Specifying Source Descriptions ? Global-as-view: express the mediated schema relations as a set of views over the data source relations ? Local-as-view: express the source relations as views over the mediated schema. ? Can be combined with no additional cost.
  • 22. Global-as-View Mediated schema: Movie(title, dir, year, genre), Schedule(cinema, title, time). Create View Movie AS select * from S1 [S1(title,dir,year,genre)] union select * from S2 [S2(title, dir,year,genre)] union [S3(title,dir), S4(title,year,genre)] select S3.title, S3.dir, S4.year, S4.genre from S3, S4 where S3.title=S4.title
  • 23. Global-as-View: Example 2 Mediated schema: Movie(title, dir, year, genre), Schedule(cinema, title, time). Create View Movie AS [S1(title,dir,year)] select title, dir, year, NULL from S1 union [S2(title, dir,genre)] select title, dir, NULL, genre from S2
  • 24. Global-as-View: Example 3 Mediated schema: Movie(title, dir, year, genre), Schedule(cinema, title, time). Source S4: S4(cinema, genre) Create View Movie AS select NULL, NULL, NULL, genre from S4 Create View Schedule AS select cinema, NULL, NULL from S4. But what if we want to find which cinemas are playing comedies?
  • 25. Global-as-View Summary ? Query reformulation boils down to view unfolding. ? Very easy conceptually. ? Can build hierarchies of mediated schemas. ? You sometimes loose information. Not always natural. ? Adding sources is hard. Need to consider all other sources that are available.
  • 26. Local-as-View: example 1 Mediated schema: Movie(title, dir, year, genre), Schedule(cinema, title, time). Create Source S1 AS select * from Movie Create Source S3 AS [S3(title, dir)] select title, dir from Movie Create Source S5 AS select title, dir, year from Movie where year > 1960 AND genre=^Comedy ̄
  • 27. Local-as-View: Example 2 Mediated schema: Movie(title, dir, year, genre), Schedule(cinema, title, time). Source S4: S4(cinema, genre) Create Source S4 select cinema, genre from Movie m, Schedule s where m.title=s.title . Now if we want to find which cinemas are playing comedies, there is hope!
  • 28. Local-as-View Summary ? Very flexible. You have the power of the entire query language to define the contents of the source. ? Hence, can easily distinguish between contents of closely related sources. ? Adding sources is easy: they¨re independent of each other. ? Query reformulation: answering queries using views!
  • 29. The General Problem ? Given a set of views V1,´,Vn, and a query Q, can we answer Q using only the answers to V1,´,Vn? ? Many, many papers on this problem. ? The best performing algorithm: The MiniCon Algorithm, (Pottinger & Levy, 2000). ? Great survey on the topic: (Halevy, 2001).
  • 30. Local Completeness Information ? If sources are incomplete, we need to look at each one of them. ? Often, sources are locally complete. ? Movie(title, director, year) complete for years after 1960, or for American directors. ? Question: given a set of local completeness statements, is a query Q¨ a complete answer to Q?
  • 31. Example ? Movie(title, director, year) (complete after 1960). ? Show(title, theater, city, hour) ? Query: find movies (and directors) playing in Seattle: Select m.title, m.director From Movie m, Show s Where m.title=s.title AND city=^Seattle ̄ ? Complete or not?
  • 32. Example #2 ? Movie(title, director, year), Oscar(title, year) ? Query: find directors whose movies won Oscars after 1965: select m.director from Movie m, Oscar o where m.title=o.title AND m.year=o.year AND o.year > 1965. ? Complete or not?
  • 33. Query Optimization ? Very related to query reformulation! ? Goal of the optimizer: find a physical plan with minimal cost. ? Key components in optimization: C Search space of plans C Search strategy C Cost model
  • 34. Optimization in Distributed DBMS ? A distributed database (2-minute tutorial): C Data is distributed over multiple nodes, but is uniform. C Query execution can be distributed to sites. C Communication costs are significant. ? Consequences for optimization: C Optimizer needs to decide locality C Need to exploit independent parallelism. C Need operators that reduce communication costs (semi-joins).
  • 35. DDBMS vs. Data Integration ? In a DDBMS, data is distributed over a set of uniform sites with precise rules. ? In a data integration context: C Data sources may provide only limited access patterns to the data. C Data sources may have additional query capabilities. C Cost of answering queries at sources unknown. C Statistics about data unknown. C Transfer rates unpredictable.
  • 36. Modeling Source Capabilities ? Negative capabilities: C A web site may require certain inputs (in an HTML form). C Need to consider only valid query execution plans. ? Positive capabilities: C A source may be an ODBC compliant system. C Need to decide placement of operations according to capabilities. ? Problem: how to describe and exploit source capabilities.
  • 37. Example #1: Access Patterns Mediated schema relation: Cites(paper1, paper2) Create Source S1 as select * from Cites given paper1 Create Source S2 as select paper1 from Cites Query: select paper1 from Cites where paper2=^Hal00 ̄
  • 38. Example #1: Continued Create Source S1 as select * from Cites given paper1 Create Source S2 as select paper1 from Cites Select p1 From S1, S2 Where S2.paper1=S1.paper1 AND S1.paper2=^Hal00 ̄
  • 39. Example #2: Access Patterns Create Source S1 as select * from Cites given paper1 Create Source S2 as select paperID from UW-Papers Create Source S3 as select paperID from AwardPapers given paperID Query: select * from AwardPapers
  • 40. Example #2: Solutions ? Can¨t go directly to S3 because it requires a binding. ? Can go to S1, get UW papers, and check if they¨re in S3. ? Can go to S1, get UW papers, feed them into S2, and feed the results into S3. ? Can go to S1, feed results into S2, feed results into S2 again, and then feed results into S3. ? Strictly speaking, we can¨t a priori decide when to stop. ? Need recursive query processing.
  • 41. Handling Positive Capabilities ? Characterizing positive capabilities: C Schema independent (e.g., can always perform joins, selections). C Schema dependent: can join R and S, but not T. C Given a query, tells you whether it can be handled. ? Key issue: how do you search for plans? ? Garlic approach (IBM): Given a query, STAR rules determine which subqueries are executable by the sources. Then proceed bottom-up as in System-R.
  • 42. Matching Objects Across Sources ? How do I know that A. Halevy in source 1 is the same as Alon Halevy in source 2? ? If there are uniform keys across sources, no problem. ? If not: C Domain specific solutions (e.g., maybe look at the address, ssn). C Use Information retrieval techniques (Cohen, 98). Judge similarity as you would between documents. C Use concordance tables. These are time-consuming to build, but you can then sell them for lots of money.
  • 43. Optimization and Execution ? Problem: C Few and unreliable statistics about the data. C Unexpected (possibly bursty) network transfer rates. C Generally, unpredictable environment. ? General solution: (research area) C Adaptive query processing. C Interleave optimization and execution. As you get to know more about your data, you can improve your plan.
  • 45. Double Pipelined Join (Tukwila) Hash Join ?Partially pipelined: no output until inner read ?Asymmetric (inner vs. outer) ! optimization requires source behavior knowledge Double Pipelined Hash Join ?Outputs data immediately ?Symmetric ! requires less source knowledge to optimize
  • 46. Piazza: A Peer-Data Management System Goal: To enable users to share data across local or wide area networks in an ad-hoc, highly dynamic distributed architecture. ? Peers share data, mediated views. ? Peers act as both clients and servers ? Rich semantic relationships between peers. ? Ad-hoc collaborations (peers join and leave at will).
  • 47. Extending the Vision to Data Sharing 911 Dispatch Center (9DC) Fire Services (FS) Portland Fire District (PFD) Vancouver Fire District (VFD) Station 12Station 19Station 3 Station 32 First Hospital (FH) Hospitals (H) Lakeview Hospital (LH) Medical Aid (MA) Earthquake Command Center (ECC) Search & Rescue (SR) Emergency Workers (EW) Washington State National Guard
  • 48. The Structure Mapping Problem ? Types of structures: C Database schemas, XML DTDs, ontologies, ´, ? Input: C Two (or more) structures, S1 and S2 C (perhaps) Data instances for S1 and S2 C Background knowledge ? Output: C A mapping between S1 and S2 ? Should enable translating between data instances.
  • 49. Semantic Mappings between Schemas ? Source schemas = XML DTDs house location contact house address name phone num-baths full-baths half-baths contact-info agent-name agent-phone 1-1 mapping non 1-1 mapping
  • 50. Why Matching is Difficult ? Structures represent same entity differently C different names => same entity: ? area & address => location C same names => different entities: ? area => location or square-feet ? Intended semantics is typically subjective! C IBM Almaden Lab = IBM? ? Schema, data and rules never fully capture semantics! C not adequately documented, certainly not for machine consumption. ? Often hard for humans (committees are formed!)
  • 51. Desiderata from Proposed Solutions ? Accuracy, efficiency, ease of use. ? Realistic expectations: C Unlikely to be fully automated. Need user in the loop. ? Some notion of semantics for mappings. ? Extensibility: C Solution should exploit additional background knowledge. ? ^Memory ̄, knowledge reuse: C System should exploit previous manual or automatically generated matchings. C Key idea behind LSD.
  • 52. Learning for Mapping ? Context: generating semantic mappings between a mediated schema and a large set of data source schemas. ? Key idea: generate the first mappings manually, and learn from them to generate the rest. ? Technique: multi-strategy learning (extensible!) ? L(earning) S(ource) D(escriptions) [SIGMOD 2001].
  • 53. Data Integration (a simple PDMS) Find houses with four bathrooms priced under $500,000 mediated schema homes.comrealestate.com source schema 2 homeseekers.com source schema 3source schema 1 Applications: WWW, enterprises, science projects Techniques: virtual data integration, warehousing, custom code. Query reformulation and optimization.
  • 54. price agent-name agent-phone office-phone description Learning from the Manual Mappings listed-price contact-name contact-phone office comments Schema of realestate.com Mediated schema $250K James Smith (305) 729 0831 (305) 616 1822 Fantastic house $320K Mike Doan (617) 253 1429 (617) 112 2315 Great location listed-price contact-name contact-phone office comments realestate.com If ^fantastic ̄ & ^great ̄ occur frequently in data instances => descriptionsold-at contact-agent extra-info $350K (206) 634 9435 Beautiful yard $230K (617) 335 4243 Close to Seattle $190K (512) 342 1263 Great lot homes.com If ^office ̄ occurs in the name => office-phone
  • 55. Multi-Strategy Learning ? Use a set of base learners: C Name learner, Na?ve Bayes, Whirl, XML learner ? And a set of recognizers: C County name, zip code, phone numbers. ? Each base learner produces a prediction weighted by confidence score. ? Combine base learners with a meta-learner, using stacking.
  • 56. The Semantic Web ? How does it relate to data integration? ? How are we going to do it? ? Why should we do it? Do we need a killer app or is the semantic web a killer app?