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Querying Large Databases Rukmini Kaushik

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Page 1: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Querying Large Databases

Rukmini Kaushik

Page 2: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Purpose

• Research for efficient algorithms and software architectures of query engines.

Page 3: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Query Execution Engine Architecture

• Query processing algorithms – physical algebra

• Data Model – logical algebra

Page 4: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Sorting & Hashing

• Both are memory intensive.

• Memory Concerns

- Merge Efficiency & memory

management.

- Hash table overflow

Page 5: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Aggregation and Duplicate Removal

• Aggregation Concept

Describes a set of objects with one value.• Algorithms

Three Types

- Nested Loops

- Sorting

- Hashing

Page 6: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Aggregation & Duplicate Removal

• Nested Loops - Easiest of the three - Doesn’t work well for large inputs• Sorting - Sort for common elements which results

in a simple duplicate removal. - Should remove duplicates as early as

possible.

Page 7: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Aggregation & Duplicate Removal

• Hashing

- Hash on group attributes.

- Can perform duplicate removal when creating hash table.

• Algorithm Analysis

Sorting and hashing functions are logarithmic with input size

Page 8: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Complex Query Execution Plan

• Purpose

- To schedule a query with several operations optimally

• Ideas

- Right-deep plans

- Left-deep plans

Page 9: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Complex Query Execution Plan

• Prediction

- Use a decision tree of sub-plans

- Done by using choose-plan operators

• Major Concern

- Optimal resource allocation

Page 10: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Query Execution Mechanism

• Goal

Obtain speed-up & scale-up

• Speed-up

- Uses extra hardware for constant size problem

- Linear speed-up is optimal

- Can be expressed as parallel efficiency

Page 11: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Query Execution Mechanism

• Scale-up

- Uses same resources with altered problem size

- Can be expressed as parallel efficiency.

Page 12: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Query Execution Mechanism

• Parallel Vs Distributed Systems

• Distributed

- Locally Autonomous

- Also uses Parallelism

Page 13: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Query Execution Mechanism

• Parallel

- One center of control

- Three types

Shared memory

Shared Disk

Distributed Memory

Page 14: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Query Execution Mechanism

• Three forms of parallelism

- Inter Query: Servicing multiple requests at the same time

- Inter Operator: Pipelining

- Intra Operator: Execute a single operator in multiple processors

Page 15: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Query Execution Mechanism

• Implementation

Bracket Models

Operator Models

• Bracket Model

Goal: Generic process template that receives and sends data and performs one operation at a time

Page 16: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Query Execution Mechanism

Number of inputs is limited to two

Can be run in parallel by having many templates in the system running simultaneously.

• Operator Model

Goal: Insert parallel operators in an ordered plan

Page 17: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Query Execution Mechanism

• Uses the exchange operator

• Exchange operator

- Does not manipulate data

- Provides capabilities for parallel query processing

- Changes a complex query into a single process

Page 18: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Algorithms

• Idea: More focus on algorithms and parallel execution

• Parallel selections and updates

- Disk input and output should be made parallel

- Selection: Maintain indices near stored data

- Updates: Use keys for partitioning attributes

Page 19: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Algorithms

• Parallel Sorting:

-classified by

- number of parallel inputs

- number of parallel outputs

- Algorithms consists of local sort and a data exchange step

Page 20: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Parallel Algorithms

- Major Concern

- Deadlock can be avoided by using range partitioning

- having a sufficient size data exchange buffer

- using a modified sort algorithm

Page 21: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Query Optimization

• Uses the differences between logical and physical aspects

• Must keep track of the properties of the inputs

• Cost models focus on throughput measures

Page 22: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Tuning query performance

• Focus

- Guidelines for improving query performance

• Guidelines for three points of view

- implementor and vendor

- database administrator

- application programmer

Page 23: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Tuning Query Performance

• Implementor

System should support indexing and clustering

Query optimizer should be reliable and accurate

• Administrator

Ensure usage of system facilities

Page 24: Querying Large Databases Rukmini Kaushik. Purpose Research for efficient algorithms and software architectures of query engines

Tuning Query Performance

carefully choose physical database design

provide available and efficient processing resources

• Application Programmer

Provide high level queries