SlideShare ist ein Scribd-Unternehmen logo
1 von 15
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/1
Outline
• Introduction
• Background
• Distributed Database Design
• Database Integration
• Semantic Data Control
• Distributed Query Processing
➡ Overview
➡ Query decomposition and localization
➡ Distributed query optimization
• Multidatabase Query Processing
• Distributed Transaction Management
• Data Replication
• Parallel Database Systems
• Distributed Object DBMS
• Peer-to-Peer Data Management
• Web Data Management
• Current Issues
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/2
Query Processing in a DDBMS
high level user query
query
processor
Low-level data manipulation
commands for D-DBMS
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/3
Query Processing Components
• Query language that is used
➡ SQL: “intergalactic dataspeak”
• Query execution methodology
➡ The steps that one goes through in executing high-level (declarative) user
queries.
• Query optimization
➡ How do we determine the “best” execution plan?
• We assume a homogeneous D-DBMS
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/4
SELECT ENAME
FROM EMP,ASG
WHERE EMP.ENO = ASG.ENO
AND RESP = "Manager"
Strategy 1
ENAME( RESP=“Manager” EMP.ENO=ASG.ENO(EMP×ASG))
Strategy 2
ENAME(EMP ⋈ENO ( RESP=“Manager” (ASG))
Strategy 2 avoids Cartesian product, so may be “better”
Selecting Alternatives
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/5
What is the Problem?
Site 1 Site 2 Site 3 Site 4 Site 5
EMP1= ENO≤“E3”(EMP) EMP2= ENO>“E3”(EMP)ASG2= ENO>“E3”(ASG)ASG1= ENO≤“E3”(ASG) Result
Site 5
Site 1 Site 2 Site 3 Site 4
ASG1 EMP1 EMP2ASG2Site 4Site 3
Site 1 Site 2
Site 5
EMP’
1=EMP1 ⋈ENO ASG’
1
'
2
EMPEMPresult
'
1
1Manager""RESP1
ASGσASG
'
2Manager""RESP2
ASGσASG
'
'
1
ASG
'
2
ASG
'
1
EMP
'
2
EMP
result= (EMP1 × EMP2)⋈ENOσRESP=“Manager”(ASG1× ASG2)
EMP’
2=EMP2 ⋈ENO ASG’
2
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/6
Cost of Alternatives
• Assume
➡ size(EMP) = 400, size(ASG) = 1000
➡ tuple access cost = 1 unit; tuple transfer cost = 10 units
• Strategy 1
➡ produce ASG': (10+10) tuple access cost 20
➡ transfer ASG' to the sites of EMP: (10+10) tuple transfer cost 200
➡ produce EMP': (10+10) tuple access cost 2 40
➡ transfer EMP' to result site: (10+10) tuple transfer cost 200
Total Cost 460
• Strategy 2
➡ transfer EMP to site 5: 400 tuple transfer cost 4,000
➡ transfer ASG to site 5: 1000 tuple transfer cost 10,000
➡ produce ASG': 1000 tuple access cost 1,000
➡ join EMP and ASG': 400 20 tuple access cost 8,000
Total Cost 23,000
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/7
Query Optimization Objectives
• Minimize a cost function
I/O cost + CPU cost + communication cost
These might have different weights in different distributed environments
• Wide area networks
➡ communication cost may dominate or vary much
✦ bandwidth
✦ speed
✦ high protocol overhead
• Local area networks
➡ communication cost not that dominant
➡ total cost function should be considered
• Can also maximize throughput
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/8
Complexity of Relational
Operations
• Assume
➡ relations of cardinality n
➡ sequential scan
Operation Complexity
Select
Project
(without duplicate elimination)
O(n)
Project
(with duplicate elimination)
Group
O(n log n)
Join
Semi-join
Division
Set Operators
O(n log n)
Cartesian Product O(n2)
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/9
Query Optimization Issues –
Types Of Optimizers
• Exhaustive search
➡ Cost-based
➡ Optimal
➡ Combinatorial complexity in the number of relations
• Heuristics
➡ Not optimal
➡ Regroup common sub-expressions
➡ Perform selection, projection first
➡ Replace a join by a series of semijoins
➡ Reorder operations to reduce intermediate relation size
➡ Optimize individual operations
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/10
Query Optimization Issues –
Optimization Granularity
• Single query at a time
➡ Cannot use common intermediate results
• Multiple queries at a time
➡ Efficient if many similar queries
➡ Decision space is much larger
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/11
Query Optimization Issues –
Optimization Timing
• Static
➡ Compilation  optimize prior to the execution
➡ Difficult to estimate the size of the intermediate results error
propagation
➡ Can amortize over many executions
➡ R*
• Dynamic
➡ Run time optimization
➡ Exact information on the intermediate relation sizes
➡ Have to reoptimize for multiple executions
➡ Distributed INGRES
• Hybrid
➡ Compile using a static algorithm
➡ If the error in estimate sizes > threshold, reoptimize at run time
➡ Mermaid
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/12
Query Optimization Issues –
Statistics
• Relation
➡ Cardinality
➡ Size of a tuple
➡ Fraction of tuples participating in a join with another relation
• Attribute
➡ Cardinality of domain
➡ Actual number of distinct values
• Common assumptions
➡ Independence between different attribute values
➡ Uniform distribution of attribute values within their domain
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/13
Query Optimization Issues –
Decision Sites
• Centralized
➡ Single site determines the “best” schedule
➡ Simple
➡ Need knowledge about the entire distributed database
• Distributed
➡ Cooperation among sites to determine the schedule
➡ Need only local information
➡ Cost of cooperation
• Hybrid
➡ One site determines the global schedule
➡ Each site optimizes the local subqueries
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/14
Query Optimization Issues –
Network Topology
• Wide area networks (WAN) – point-to-point
➡ Characteristics
✦ Low bandwidth
✦ Low speed
✦ High protocol overhead
➡ Communication cost will dominate; ignore all other cost factors
➡ Global schedule to minimize communication cost
➡ Local schedules according to centralized query optimization
• Local area networks (LAN)
➡ Communication cost not that dominant
➡ Total cost function should be considered
➡ Broadcasting can be exploited (joins)
➡ Special algorithms exist for star networks
Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/15
Distributed Query Processing
Methodology
Calculus Query on Distributed Relations
CONTROL
SITE
LOCAL
SITES
Query
Decomposition
Data
Localization
Algebraic Query on Distributed
Relations
Global
Optimization
Fragment Query
Local
Optimization
Optimized Fragment Query
with Communication Operations
Optimized Local Queries
GLOBAL
SCHEMA
FRAGMENT
SCHEMA
STATS ON
FRAGMENTS
LOCAL
SCHEMAS

Weitere ähnliche Inhalte

Was ist angesagt?

Decision Tree In R | Decision Tree Algorithm | Data Science Tutorial | Machin...
Decision Tree In R | Decision Tree Algorithm | Data Science Tutorial | Machin...Decision Tree In R | Decision Tree Algorithm | Data Science Tutorial | Machin...
Decision Tree In R | Decision Tree Algorithm | Data Science Tutorial | Machin...
Simplilearn
 

Was ist angesagt? (20)

Vector databases and neural search
Vector databases and neural searchVector databases and neural search
Vector databases and neural search
 
k medoid clustering.pptx
k medoid clustering.pptxk medoid clustering.pptx
k medoid clustering.pptx
 
Data visualization
Data visualizationData visualization
Data visualization
 
AI_Session 25 classical planning.pptx
AI_Session 25 classical planning.pptxAI_Session 25 classical planning.pptx
AI_Session 25 classical planning.pptx
 
DBSCAN : A Clustering Algorithm
DBSCAN : A Clustering AlgorithmDBSCAN : A Clustering Algorithm
DBSCAN : A Clustering Algorithm
 
Knowledge Graphs & Graph Data Science, More Context, Better Predictions - Neo...
Knowledge Graphs & Graph Data Science, More Context, Better Predictions - Neo...Knowledge Graphs & Graph Data Science, More Context, Better Predictions - Neo...
Knowledge Graphs & Graph Data Science, More Context, Better Predictions - Neo...
 
Scaling massive elastic search clusters - Rafał Kuć - Sematext
Scaling massive elastic search clusters - Rafał Kuć - SematextScaling massive elastic search clusters - Rafał Kuć - Sematext
Scaling massive elastic search clusters - Rafał Kuć - Sematext
 
AI for Software Engineering
AI for Software EngineeringAI for Software Engineering
AI for Software Engineering
 
Oracle Spatial de la A a la Z - Unidad 3
Oracle Spatial de la A a la Z - Unidad 3Oracle Spatial de la A a la Z - Unidad 3
Oracle Spatial de la A a la Z - Unidad 3
 
Fairness in Machine Learning and AI
Fairness in Machine Learning and AIFairness in Machine Learning and AI
Fairness in Machine Learning and AI
 
Difference between molap, rolap and holap in ssas
Difference between molap, rolap and holap  in ssasDifference between molap, rolap and holap  in ssas
Difference between molap, rolap and holap in ssas
 
Classical Planning
Classical PlanningClassical Planning
Classical Planning
 
Data Engineering and the Data Science Lifecycle
Data Engineering and the Data Science LifecycleData Engineering and the Data Science Lifecycle
Data Engineering and the Data Science Lifecycle
 
Bias and variance trade off
Bias and variance trade offBias and variance trade off
Bias and variance trade off
 
An Introduction to XAI! Towards Trusting Your ML Models!
An Introduction to XAI! Towards Trusting Your ML Models!An Introduction to XAI! Towards Trusting Your ML Models!
An Introduction to XAI! Towards Trusting Your ML Models!
 
Decision tree
Decision treeDecision tree
Decision tree
 
Apache Cassandra - Concepts et fonctionnalités
Apache Cassandra - Concepts et fonctionnalitésApache Cassandra - Concepts et fonctionnalités
Apache Cassandra - Concepts et fonctionnalités
 
Density based clustering
Density based clusteringDensity based clustering
Density based clustering
 
DMTM Lecture 06 Classification evaluation
DMTM Lecture 06 Classification evaluationDMTM Lecture 06 Classification evaluation
DMTM Lecture 06 Classification evaluation
 
Decision Tree In R | Decision Tree Algorithm | Data Science Tutorial | Machin...
Decision Tree In R | Decision Tree Algorithm | Data Science Tutorial | Machin...Decision Tree In R | Decision Tree Algorithm | Data Science Tutorial | Machin...
Decision Tree In R | Decision Tree Algorithm | Data Science Tutorial | Machin...
 

Andere mochten auch

Database ,16 P2P
Database ,16 P2P Database ,16 P2P
Database ,16 P2P
Ali Usman
 
Database ,10 Transactions
Database ,10 TransactionsDatabase ,10 Transactions
Database ,10 Transactions
Ali Usman
 
Database , 13 Replication
Database , 13 ReplicationDatabase , 13 Replication
Database , 13 Replication
Ali Usman
 
Database ,2 Background
 Database ,2 Background Database ,2 Background
Database ,2 Background
Ali Usman
 
Database , 8 Query Optimization
Database , 8 Query OptimizationDatabase , 8 Query Optimization
Database , 8 Query Optimization
Ali Usman
 
Database , 4 Data Integration
Database , 4 Data IntegrationDatabase , 4 Data Integration
Database , 4 Data Integration
Ali Usman
 
Anwar e-sabiri(complete)
Anwar e-sabiri(complete)Anwar e-sabiri(complete)
Anwar e-sabiri(complete)
Ali Usman
 
Virgen de Chiquinquirá en Colombia
Virgen de Chiquinquirá en ColombiaVirgen de Chiquinquirá en Colombia
Virgen de Chiquinquirá en Colombia
Maria Daud
 
Network internet
Network internetNetwork internet
Network internet
Kumar
 

Andere mochten auch (20)

Query decomposition in data base
Query decomposition in data baseQuery decomposition in data base
Query decomposition in data base
 
Database ,16 P2P
Database ,16 P2P Database ,16 P2P
Database ,16 P2P
 
Database ,10 Transactions
Database ,10 TransactionsDatabase ,10 Transactions
Database ,10 Transactions
 
Database , 13 Replication
Database , 13 ReplicationDatabase , 13 Replication
Database , 13 Replication
 
Database ,2 Background
 Database ,2 Background Database ,2 Background
Database ,2 Background
 
Database , 8 Query Optimization
Database , 8 Query OptimizationDatabase , 8 Query Optimization
Database , 8 Query Optimization
 
Database , 4 Data Integration
Database , 4 Data IntegrationDatabase , 4 Data Integration
Database , 4 Data Integration
 
Introduction to database
Introduction to databaseIntroduction to database
Introduction to database
 
Structured Query Language (SQL) - Lecture 5 - Introduction to Databases (1007...
Structured Query Language (SQL) - Lecture 5 - Introduction to Databases (1007...Structured Query Language (SQL) - Lecture 5 - Introduction to Databases (1007...
Structured Query Language (SQL) - Lecture 5 - Introduction to Databases (1007...
 
Query optimization and challenges in DDBMS with Review Algorithms.
Query optimization and challenges in DDBMS with Review Algorithms.Query optimization and challenges in DDBMS with Review Algorithms.
Query optimization and challenges in DDBMS with Review Algorithms.
 
Coyaima ie. juan xxiii manual de convivencia
Coyaima ie. juan xxiii manual de convivenciaCoyaima ie. juan xxiii manual de convivencia
Coyaima ie. juan xxiii manual de convivencia
 
Anwar e-sabiri(complete)
Anwar e-sabiri(complete)Anwar e-sabiri(complete)
Anwar e-sabiri(complete)
 
BrunnerForbes2
BrunnerForbes2BrunnerForbes2
BrunnerForbes2
 
Ethernet Technology
Ethernet Technology Ethernet Technology
Ethernet Technology
 
Hank Iving Media Plan
Hank Iving Media PlanHank Iving Media Plan
Hank Iving Media Plan
 
Virgen de Chiquinquirá en Colombia
Virgen de Chiquinquirá en ColombiaVirgen de Chiquinquirá en Colombia
Virgen de Chiquinquirá en Colombia
 
Mariquita iet francisco nuñez pedrozo manual convivencia antiguo
Mariquita iet francisco nuñez pedrozo manual convivencia antiguoMariquita iet francisco nuñez pedrozo manual convivencia antiguo
Mariquita iet francisco nuñez pedrozo manual convivencia antiguo
 
College Students
College StudentsCollege Students
College Students
 
Network internet
Network internetNetwork internet
Network internet
 
[Www.pkbulk.blogspot.com]file and indexing
[Www.pkbulk.blogspot.com]file and indexing[Www.pkbulk.blogspot.com]file and indexing
[Www.pkbulk.blogspot.com]file and indexing
 

Ähnlich wie Database , 6 Query Introduction

Database ,14 Parallel DBMS
Database ,14 Parallel DBMSDatabase ,14 Parallel DBMS
Database ,14 Parallel DBMS
Ali Usman
 
Database ,18 Current Issues
Database ,18 Current IssuesDatabase ,18 Current Issues
Database ,18 Current Issues
Ali Usman
 
PPT-UEU-Database-Objek-Terdistribusi-Pertemuan-8.pptx
PPT-UEU-Database-Objek-Terdistribusi-Pertemuan-8.pptxPPT-UEU-Database-Objek-Terdistribusi-Pertemuan-8.pptx
PPT-UEU-Database-Objek-Terdistribusi-Pertemuan-8.pptx
neju3
 
Meta scale kognitio hadoop webinar
Meta scale kognitio hadoop webinarMeta scale kognitio hadoop webinar
Meta scale kognitio hadoop webinar
Kognitio
 
Database , 1 Introduction
 Database , 1 Introduction Database , 1 Introduction
Database , 1 Introduction
Ali Usman
 

Ähnlich wie Database , 6 Query Introduction (20)

6-Query_Intro (5).pdf
6-Query_Intro (5).pdf6-Query_Intro (5).pdf
6-Query_Intro (5).pdf
 
Hadoop Map Reduce OS
Hadoop Map Reduce OSHadoop Map Reduce OS
Hadoop Map Reduce OS
 
Database ,14 Parallel DBMS
Database ,14 Parallel DBMSDatabase ,14 Parallel DBMS
Database ,14 Parallel DBMS
 
Database ,18 Current Issues
Database ,18 Current IssuesDatabase ,18 Current Issues
Database ,18 Current Issues
 
PPT-UEU-Database-Objek-Terdistribusi-Pertemuan-8.pptx
PPT-UEU-Database-Objek-Terdistribusi-Pertemuan-8.pptxPPT-UEU-Database-Objek-Terdistribusi-Pertemuan-8.pptx
PPT-UEU-Database-Objek-Terdistribusi-Pertemuan-8.pptx
 
HFM vs Essbase BSO: A Comparative Anatomy
HFM vs Essbase BSO: A Comparative AnatomyHFM vs Essbase BSO: A Comparative Anatomy
HFM vs Essbase BSO: A Comparative Anatomy
 
1 introduction
1 introduction1 introduction
1 introduction
 
try
trytry
try
 
Meta scale kognitio hadoop webinar
Meta scale kognitio hadoop webinarMeta scale kognitio hadoop webinar
Meta scale kognitio hadoop webinar
 
MapReduce:Simplified Data Processing on Large Cluster Presented by Areej Qas...
MapReduce:Simplified Data Processing on Large Cluster  Presented by Areej Qas...MapReduce:Simplified Data Processing on Large Cluster  Presented by Areej Qas...
MapReduce:Simplified Data Processing on Large Cluster Presented by Areej Qas...
 
Designing analytics for big data
Designing analytics for big dataDesigning analytics for big data
Designing analytics for big data
 
1 introduction DDBS
1 introduction DDBS1 introduction DDBS
1 introduction DDBS
 
Database , 1 Introduction
 Database , 1 Introduction Database , 1 Introduction
Database , 1 Introduction
 
Manjeet Singh.pptx
Manjeet Singh.pptxManjeet Singh.pptx
Manjeet Singh.pptx
 
fmewt19 - Around the world stories master deck
fmewt19 - Around the world stories master deckfmewt19 - Around the world stories master deck
fmewt19 - Around the world stories master deck
 
Hadoop Summit Brussels 2015: Architecting a Scalable Hadoop Platform - Top 10...
Hadoop Summit Brussels 2015: Architecting a Scalable Hadoop Platform - Top 10...Hadoop Summit Brussels 2015: Architecting a Scalable Hadoop Platform - Top 10...
Hadoop Summit Brussels 2015: Architecting a Scalable Hadoop Platform - Top 10...
 
Architecting a Scalable Hadoop Platform: Top 10 considerations for success
Architecting a Scalable Hadoop Platform: Top 10 considerations for successArchitecting a Scalable Hadoop Platform: Top 10 considerations for success
Architecting a Scalable Hadoop Platform: Top 10 considerations for success
 
Introduction of MapReduce
Introduction of MapReduceIntroduction of MapReduce
Introduction of MapReduce
 
Deep Learning at Scale
Deep Learning at ScaleDeep Learning at Scale
Deep Learning at Scale
 
Tools and best practices for sustainable software
Tools and best practices for sustainable softwareTools and best practices for sustainable software
Tools and best practices for sustainable software
 

Mehr von Ali Usman

Database , 17 Web
Database , 17 WebDatabase , 17 Web
Database , 17 Web
Ali Usman
 
Database , 15 Object DBMS
Database , 15 Object DBMSDatabase , 15 Object DBMS
Database , 15 Object DBMS
Ali Usman
 
Database , 12 Reliability
Database , 12 ReliabilityDatabase , 12 Reliability
Database , 12 Reliability
Ali Usman
 
Database ,11 Concurrency Control
Database ,11 Concurrency ControlDatabase ,11 Concurrency Control
Database ,11 Concurrency Control
Ali Usman
 
Database , 5 Semantic
Database , 5 SemanticDatabase , 5 Semantic
Database , 5 Semantic
Ali Usman
 
Database, 3 Distribution Design
Database, 3 Distribution DesignDatabase, 3 Distribution Design
Database, 3 Distribution Design
Ali Usman
 
Processor Specifications
Processor SpecificationsProcessor Specifications
Processor Specifications
Ali Usman
 
Fifty Year Of Microprocessor
Fifty Year Of MicroprocessorFifty Year Of Microprocessor
Fifty Year Of Microprocessor
Ali Usman
 
Discrete Structures lecture 2
 Discrete Structures lecture 2 Discrete Structures lecture 2
Discrete Structures lecture 2
Ali Usman
 
Discrete Structures. Lecture 1
 Discrete Structures. Lecture 1  Discrete Structures. Lecture 1
Discrete Structures. Lecture 1
Ali Usman
 
Muslim Contributions in Medicine-Geography-Astronomy
Muslim Contributions in Medicine-Geography-AstronomyMuslim Contributions in Medicine-Geography-Astronomy
Muslim Contributions in Medicine-Geography-Astronomy
Ali Usman
 
Muslim Contributions in Geography
Muslim Contributions in GeographyMuslim Contributions in Geography
Muslim Contributions in Geography
Ali Usman
 
Muslim Contributions in Astronomy
Muslim Contributions in AstronomyMuslim Contributions in Astronomy
Muslim Contributions in Astronomy
Ali Usman
 
Processor Specifications
Processor SpecificationsProcessor Specifications
Processor Specifications
Ali Usman
 
Ptcl modem (user manual)
Ptcl modem (user manual)Ptcl modem (user manual)
Ptcl modem (user manual)
Ali Usman
 
Nimat-ul-ALLAH shah wali
Nimat-ul-ALLAH shah wali Nimat-ul-ALLAH shah wali
Nimat-ul-ALLAH shah wali
Ali Usman
 
Osi protocols
Osi protocolsOsi protocols
Osi protocols
Ali Usman
 

Mehr von Ali Usman (20)

Cisco Packet Tracer Overview
Cisco Packet Tracer OverviewCisco Packet Tracer Overview
Cisco Packet Tracer Overview
 
Islamic Arts and Architecture
Islamic Arts and  ArchitectureIslamic Arts and  Architecture
Islamic Arts and Architecture
 
Database , 17 Web
Database , 17 WebDatabase , 17 Web
Database , 17 Web
 
Database , 15 Object DBMS
Database , 15 Object DBMSDatabase , 15 Object DBMS
Database , 15 Object DBMS
 
Database , 12 Reliability
Database , 12 ReliabilityDatabase , 12 Reliability
Database , 12 Reliability
 
Database ,11 Concurrency Control
Database ,11 Concurrency ControlDatabase ,11 Concurrency Control
Database ,11 Concurrency Control
 
Database , 5 Semantic
Database , 5 SemanticDatabase , 5 Semantic
Database , 5 Semantic
 
Database, 3 Distribution Design
Database, 3 Distribution DesignDatabase, 3 Distribution Design
Database, 3 Distribution Design
 
Processor Specifications
Processor SpecificationsProcessor Specifications
Processor Specifications
 
Fifty Year Of Microprocessor
Fifty Year Of MicroprocessorFifty Year Of Microprocessor
Fifty Year Of Microprocessor
 
Discrete Structures lecture 2
 Discrete Structures lecture 2 Discrete Structures lecture 2
Discrete Structures lecture 2
 
Discrete Structures. Lecture 1
 Discrete Structures. Lecture 1  Discrete Structures. Lecture 1
Discrete Structures. Lecture 1
 
Muslim Contributions in Medicine-Geography-Astronomy
Muslim Contributions in Medicine-Geography-AstronomyMuslim Contributions in Medicine-Geography-Astronomy
Muslim Contributions in Medicine-Geography-Astronomy
 
Muslim Contributions in Geography
Muslim Contributions in GeographyMuslim Contributions in Geography
Muslim Contributions in Geography
 
Muslim Contributions in Astronomy
Muslim Contributions in AstronomyMuslim Contributions in Astronomy
Muslim Contributions in Astronomy
 
Processor Specifications
Processor SpecificationsProcessor Specifications
Processor Specifications
 
Ptcl modem (user manual)
Ptcl modem (user manual)Ptcl modem (user manual)
Ptcl modem (user manual)
 
Nimat-ul-ALLAH shah wali
Nimat-ul-ALLAH shah wali Nimat-ul-ALLAH shah wali
Nimat-ul-ALLAH shah wali
 
Muslim Contributions in Mathematics
Muslim Contributions in MathematicsMuslim Contributions in Mathematics
Muslim Contributions in Mathematics
 
Osi protocols
Osi protocolsOsi protocols
Osi protocols
 

Kürzlich hochgeladen

Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Victor Rentea
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Victor Rentea
 

Kürzlich hochgeladen (20)

Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal OntologySix Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptxVector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
 
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
 

Database , 6 Query Introduction

  • 1. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/1 Outline • Introduction • Background • Distributed Database Design • Database Integration • Semantic Data Control • Distributed Query Processing ➡ Overview ➡ Query decomposition and localization ➡ Distributed query optimization • Multidatabase Query Processing • Distributed Transaction Management • Data Replication • Parallel Database Systems • Distributed Object DBMS • Peer-to-Peer Data Management • Web Data Management • Current Issues
  • 2. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/2 Query Processing in a DDBMS high level user query query processor Low-level data manipulation commands for D-DBMS
  • 3. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/3 Query Processing Components • Query language that is used ➡ SQL: “intergalactic dataspeak” • Query execution methodology ➡ The steps that one goes through in executing high-level (declarative) user queries. • Query optimization ➡ How do we determine the “best” execution plan? • We assume a homogeneous D-DBMS
  • 4. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/4 SELECT ENAME FROM EMP,ASG WHERE EMP.ENO = ASG.ENO AND RESP = "Manager" Strategy 1 ENAME( RESP=“Manager” EMP.ENO=ASG.ENO(EMP×ASG)) Strategy 2 ENAME(EMP ⋈ENO ( RESP=“Manager” (ASG)) Strategy 2 avoids Cartesian product, so may be “better” Selecting Alternatives
  • 5. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/5 What is the Problem? Site 1 Site 2 Site 3 Site 4 Site 5 EMP1= ENO≤“E3”(EMP) EMP2= ENO>“E3”(EMP)ASG2= ENO>“E3”(ASG)ASG1= ENO≤“E3”(ASG) Result Site 5 Site 1 Site 2 Site 3 Site 4 ASG1 EMP1 EMP2ASG2Site 4Site 3 Site 1 Site 2 Site 5 EMP’ 1=EMP1 ⋈ENO ASG’ 1 ' 2 EMPEMPresult ' 1 1Manager""RESP1 ASGσASG ' 2Manager""RESP2 ASGσASG ' ' 1 ASG ' 2 ASG ' 1 EMP ' 2 EMP result= (EMP1 × EMP2)⋈ENOσRESP=“Manager”(ASG1× ASG2) EMP’ 2=EMP2 ⋈ENO ASG’ 2
  • 6. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/6 Cost of Alternatives • Assume ➡ size(EMP) = 400, size(ASG) = 1000 ➡ tuple access cost = 1 unit; tuple transfer cost = 10 units • Strategy 1 ➡ produce ASG': (10+10) tuple access cost 20 ➡ transfer ASG' to the sites of EMP: (10+10) tuple transfer cost 200 ➡ produce EMP': (10+10) tuple access cost 2 40 ➡ transfer EMP' to result site: (10+10) tuple transfer cost 200 Total Cost 460 • Strategy 2 ➡ transfer EMP to site 5: 400 tuple transfer cost 4,000 ➡ transfer ASG to site 5: 1000 tuple transfer cost 10,000 ➡ produce ASG': 1000 tuple access cost 1,000 ➡ join EMP and ASG': 400 20 tuple access cost 8,000 Total Cost 23,000
  • 7. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/7 Query Optimization Objectives • Minimize a cost function I/O cost + CPU cost + communication cost These might have different weights in different distributed environments • Wide area networks ➡ communication cost may dominate or vary much ✦ bandwidth ✦ speed ✦ high protocol overhead • Local area networks ➡ communication cost not that dominant ➡ total cost function should be considered • Can also maximize throughput
  • 8. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/8 Complexity of Relational Operations • Assume ➡ relations of cardinality n ➡ sequential scan Operation Complexity Select Project (without duplicate elimination) O(n) Project (with duplicate elimination) Group O(n log n) Join Semi-join Division Set Operators O(n log n) Cartesian Product O(n2)
  • 9. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/9 Query Optimization Issues – Types Of Optimizers • Exhaustive search ➡ Cost-based ➡ Optimal ➡ Combinatorial complexity in the number of relations • Heuristics ➡ Not optimal ➡ Regroup common sub-expressions ➡ Perform selection, projection first ➡ Replace a join by a series of semijoins ➡ Reorder operations to reduce intermediate relation size ➡ Optimize individual operations
  • 10. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/10 Query Optimization Issues – Optimization Granularity • Single query at a time ➡ Cannot use common intermediate results • Multiple queries at a time ➡ Efficient if many similar queries ➡ Decision space is much larger
  • 11. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/11 Query Optimization Issues – Optimization Timing • Static ➡ Compilation  optimize prior to the execution ➡ Difficult to estimate the size of the intermediate results error propagation ➡ Can amortize over many executions ➡ R* • Dynamic ➡ Run time optimization ➡ Exact information on the intermediate relation sizes ➡ Have to reoptimize for multiple executions ➡ Distributed INGRES • Hybrid ➡ Compile using a static algorithm ➡ If the error in estimate sizes > threshold, reoptimize at run time ➡ Mermaid
  • 12. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/12 Query Optimization Issues – Statistics • Relation ➡ Cardinality ➡ Size of a tuple ➡ Fraction of tuples participating in a join with another relation • Attribute ➡ Cardinality of domain ➡ Actual number of distinct values • Common assumptions ➡ Independence between different attribute values ➡ Uniform distribution of attribute values within their domain
  • 13. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/13 Query Optimization Issues – Decision Sites • Centralized ➡ Single site determines the “best” schedule ➡ Simple ➡ Need knowledge about the entire distributed database • Distributed ➡ Cooperation among sites to determine the schedule ➡ Need only local information ➡ Cost of cooperation • Hybrid ➡ One site determines the global schedule ➡ Each site optimizes the local subqueries
  • 14. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/14 Query Optimization Issues – Network Topology • Wide area networks (WAN) – point-to-point ➡ Characteristics ✦ Low bandwidth ✦ Low speed ✦ High protocol overhead ➡ Communication cost will dominate; ignore all other cost factors ➡ Global schedule to minimize communication cost ➡ Local schedules according to centralized query optimization • Local area networks (LAN) ➡ Communication cost not that dominant ➡ Total cost function should be considered ➡ Broadcasting can be exploited (joins) ➡ Special algorithms exist for star networks
  • 15. Distributed DBMS © M. T. Özsu & P. Valduriez Ch.6/15 Distributed Query Processing Methodology Calculus Query on Distributed Relations CONTROL SITE LOCAL SITES Query Decomposition Data Localization Algebraic Query on Distributed Relations Global Optimization Fragment Query Local Optimization Optimized Fragment Query with Communication Operations Optimized Local Queries GLOBAL SCHEMA FRAGMENT SCHEMA STATS ON FRAGMENTS LOCAL SCHEMAS