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Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008
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Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Mar 30, 2015

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Page 1: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Adam JorgensenPragmatic Works

Performance Optimization in SQL Server Analysis Services 2008

Page 2: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Agenda

• SSAS Query Processing Architecture• Enhancing Query Performance• Improving Processing Performance• Tuning Server Resources

Page 3: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Query Processing Architecture

• Session Management

• Query Processing

• Data Retrieval

Session Management

XML/A Listener

Session Manager Security Manager

Query Processing

Query Processor Query Processor Cache

Data Retrieval

Storage Engine Storage Engine Cache

Dimension Data

Attribute Store

Hierarchy Store

Measure Group Data

Fact Data

Aggregations

Client Application MDX Query

Page 4: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Job Architecture

Coordinator Job

Job 1

Thread

Request

Job 2

Thread

Job N

Thread

Thread

• CoordinatorExecutionMode• Negative means max

number of jobs per core• Zero means no limit• Positive means number of

jobs per server• Default is -4• Works in tandem with

MAXTHREADS andMAXPARALLEL

Page 5: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Query Processor

• Executes MDX Queries and returns cell and row sets.

• Builds an execution Plan to translate request into one or more SubCube requests.

• Uses the Query Processor Cache to store the results for reusability

Page 6: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Query Processor Cache

• 3 Contexts• Cache Rules

– Calculations created at query time– Context is chose by scope– Try for maximum re-use in the

Global Cache• Partial Expressions are not

Cached Global Context

Session Context

Query Context

Page 7: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Data Retrieval

Coordinator Job

First Segment Job

Thread

Second Segment Job

Thread

Last Segment Job

Thread

Creates Sub-Cube Request

Storage Engine Cache (Y/N)

Aggregation (Y/N)

Fact Table/Partition

Page 8: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Agenda

• SSAS Query Processing Architecture• Enhancing Query Performance• Improving Processing Performance• Tuning Server Resources

Page 9: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Enhancing Query Performance

Base lining Query Speed

Diagnosing The Problem

Optimizing Dimensions

Maximizing Aggregations

Usage Based Optimization

Using Partitions

Optimizing MDX

Cache Warming

Page 10: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Base Lining Query Speed

• Trace Info– 0 – attribute is not included in query– * - ever member was requested– + - two or more members were requested– <integer value> - a single member of the

attribute was hit

Clear Cache

Trace Query

Warm Cache

Trace Again Compare

Page 11: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Diagnosing the Problem

• Storage Engine– Long running sub-

cube events• Optimize

dimension design• Design

aggregations• Use partitions

Vs.

• Query Processor• See delay in other

steps (query processing)• Optimize MDX• Look for

redundant queries

Page 12: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Demo

• Using SSAS and Profiler• Get the query Excel is running

Page 13: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Identify Attribute Relationships

Original

Optimized

• Default relations to Key• Base for Indexes

• Cross products don’t need to go through key

• Aggregations built on attributes can be used for related attributes

• Flexible vs. Rigid

Page 14: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Implementing Effective User Hierarchies

• Attribute vs. User Hierarchies– Aggregation Usage

Property• Natural vs. Unnatural

Hierarchies

Page 15: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Demo

• Attribute Relationships and Hierachies

Page 16: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Using Partitions

• Advantages– Partition Slicing– Aggregation Design

• Tips for Using Partitions– Slide Aggregations along

partition hierarchy• i.e. – Last 7 days, Last 30

Days, 90, 6 months, etc..

– Indexes or slices will not be defines for partitions with fewer rows (4096 default)

• Sizing

• Increasing processing speed and flexibility

• Increase manageability of bringing in new data

• Support multiple aggregation designs

Page 17: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Demo

• Implementing Partitions

Page 18: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Maximizing Aggregation Value

Detecting Aggregation Hits

Interpreting Aggregations

Building, Suggesting, Influencing

Aggregations

Page 19: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Demo

• Aggregations and Usage Based Optimization

Page 20: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Agenda

• SSAS Query Processing Architecture• Enhancing Query Performance• Improving Processing Performance• Tuning Server Resources

Page 21: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Processing Job Overview

• Parent – Child Jobs• Best Opportunity to Increase Performance and

Scale

Fact Table & Aggregations

Partition

Measure Group

Parent Processing Job

Parent Partition/ Child

Processing

Child Fact Data Child Aggregation

Parent Partition/ Child

Processing

Child Fact Data

Page 22: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Where Are You Spending Your Time?

• Partition or Dimension Processing ?• ProcessFull vs. ProcessData and ProcessIndex• During ProcessData

– MSOLAP:Processing – Rows read/Sec >0• During ProcessIndex

– MSOLAP:Proc Aggregations – Row created/Sec > 0

Page 23: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Dimension Processing Best Practices

• Use SQL Views to Implement Query Binding • Optimize Attribute Processing Across Multiple

Sources• Reduce Unnecessary Attributes• Adjust/Remove Bitmap Indexes• Tune Relational Processing Query

Page 24: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Partition Processing Architecture

• Processes Using Jobs• Three Concurrent Threads

– Send SQL to extract source data– LookUp Dimension Keys and

populate processing buffer– Write Buffer to disk when it fills

• Aggregations and Bitmap Indexes– May also overflow to disk –

created in memory during processing

Process Fact Data

Build Aggregations

Build Bitmap Indexes

Page 25: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Partition Processing Best Practices

• Inserts– ProcessFull vs. ProcessAdd– Rotating Partitions

• Updates– ProcessFull– Journaling to only implement Inserts

• (See Insert Techniques)

• Deletes– Partitioning– ProcessUpdate– Remove Data From Table and ProcessFull (longer)

• Pick Efficient Data Types

Page 26: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Tuning the Relational Query

• Minimal Joins in Source Queries• Partitioning Alignment

– Each SSAS partition should only hit 1 Relational Partition – More than 1 cube partition can hit 1 relational partition

• Clustered Indexes – Especially without 1:1 partition relationship

• Keep FillFactor VERY high • Data Compression – Reduce IO• Reduce Locking when possible

Page 27: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Tuning ProcessIndex Phase

• Avoid Spilling Data to Disk– MSOLAP:Proc

Aggregations\Temp file bytes written/sec

• MSOLAP:Proc Aggregations – Row created/sec– Increase means faster

aggregation processing• Eliminate IO bottleneck• Increase Partitions for

Parallelism

SegmentsSegments

Segments

PartitionProcess Job

Thre

ad 0

Thre

ad 1

Thre

ad n

n = CoordinatorBuilMaxThread

Page 28: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Agenda

• SSAS Query Processing Architecture• Enhancing Query Performance• Improving Processing Performance• Tuning Server Resources

Page 29: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Tuning Server Resources

• PreAllocate Physical Ram for SSAS– Hard reservation – otherwise memory will be

released when not under load• Using Large Pages

– Lock Pages in Memory– Cannot be swapped to page file

• Need to watch Carefully • Leave 20% for the OS

• Disable Flight Recorder

Page 30: Adam Jorgensen Pragmatic Works Performance Optimization in SQL Server Analysis Services 2008.

Questions and Where to Find Adam