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Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative...

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Optimization in XSLT and XQuery Michael Kay
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Page 1: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

Optimizationin XSLT and XQuery

Michael Kay

Page 2: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

2

Challenges

• XSLT/XQuery are high-level declarative languages: performance depends on good optimization

• Performance also depends on good programming!

• How can users write good programs if they don’t know what the optimizer is doing?

Page 3: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

3

What is optimization?

• Widest sense:– Everything that’s done to make your

query go fast

• Narrower sense:– Expression rewriting: replacing the

code that you write with equivalent, faster code that has the same effect

Page 4: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

4

Main performance contributors

• Efficient internal coding

• Tree model for documents

• Streamed execution (pipelining)+ lazy evaluation

• Rewrite optimizations– Including join optimization

• Tail recursion

• XSLT template rule matching

Page 5: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

5

Databases vs. in-memory processors

• Databases– 90% of optimization is about finding and using indexes

– You can spend more time building the data to reduce query costs

– Indexes are long-lived

– Queries may be repeatable or one-off

• In-memory processors– Loading the data is a significant part of the overall cost

– Memory utilization needs to be minimized

– Indexes, if used, are transient

– Queries/Stylesheets may be repeatable or one-off

Page 6: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

6

The Saxon TinyTree Model

• Requirements:– Low memory footprint– Fast construction– Fast access paths– Support for document order

• Non-requirement:– In-situ update

Page 7: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

7

TinyTree example

<root> <a>12</a> <b>Prague</b></root>

assume whitespace is stripped

nr depth kind name next/owner

type data

0 0 DOC - - - -

1 1 ELEM 3028(root)

0 9735 -

2 2 ELEM 3164(a)

4 INT

3 3 TEXT - 2 - ►12

4 2 ELEM 3165(b)

1 STR

5 3 TEXT - 4 - ►”Prague”

6 0 STOP - - - -

Page 8: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

8

TinyTree: key points

• No “object-per-node” overhead• Names held as integer codes• Fast child navigation• Fast document order comparison• Extra information added dynamically

if needed:– preceding-sibling pointers– Base-uri, line numbers etc– Indexes

Page 9: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

9

Streaming (Pipelining)

• Common practice in set-based languages– Functional programming languages– SQL

• Each node in the expression tree can deliver its results incrementally to the parent node

• Can be implemented as pull or push (Saxon uses both)

Page 10: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

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Example: filter expressions

Class FilterExpressionIterator {

public Item next() {

while (true) {

Item item = base.next(); if (item == EOS) return EOS;

if (matches(item, predicate)) return item;

}

}

$nodes[x=1]

filter

$nodes =

x 1

Page 11: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

11

Example: Many-to-One Comparisons

Class ManyToOneComparisonEvaluator {

public boolean evaluate () { while (true) {

Item item = lhs.next();

if (item = rhs) return true;

}

return false;

}

x=1=

x 1

Page 12: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

12

Benefits of Streaming

• Saves memory– No memory for intermediate results– Allocating and de-allocating memory

takes time

• Early exit, for example in– (a/b/c/d)[1]– book[author = ‘Smith’]– exists(//@xml:space)

Page 13: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

13

Lazy Evaluation

• Closely associated with streaming

• Variables and function arguments are not evaluated until the value is needed

• Benefits:– The value might never be needed– Only part of the value might be needed

(early exit)– Memory is used for the minimum time

Page 14: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

14

Compile-time Expression Rewrites

General approach:1. Parse the source code into an expression tree

2. Resolve references (variables, functions)

3. Decorate the tree with attributes– Type of an expression– Dependencies of an expression– Other properties, e.g. whether a node-set is sorted

4. Scan the tree repeatedly to identify expressions that can be replaced by faster equivalents

Page 15: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

15

Two kinds of rewrites

• Rewrites that could have been done by the programmer– count(A) > 3 ►exists(A[4])

• Rewrites that use constructs not available to the programmer– A[position()=last()] ► A[isLast()]

Page 16: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

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Some important rewrites

• Sort removal– Not sorting path expressions where the

result is already sorted

• Constant subexpressions– Evaluated at compile time where possible

• Extracting subexpressions from loops

• Distributing WHERE conditions

• + many ad-hoc rewrites

Page 17: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

17

Some rewrites that Saxon doesn’t yet do

• Inline expansion of variable references

• Inline expansion of function calls

• Detecting common subexpressions

• Creating new global variables

Page 18: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

18

Type Checkingand its effect on performance

• XQuery and XSLT 2.0 allow you to declare types of variables and functions– But it’s not mandatory

• Main benefit is better error detection

• Type information can also be used by the optimizer– With Saxon, this rarely makes a big

difference

Page 19: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

19

“Optimistic static type checking”

• The static type of an expression S is compared with the required type R

• Possible outcomes:– S is a subtype of R: no action needed– S overlaps with R: run-time type-checking

code is generated– S and R are disjoint: static error reported

• Special case:– integer* and string* overlap

(both allow the empty sequence)

Page 20: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

20

Join Optimization

• Less important in XQuery than in SQL– Except that some people write XQuery

as if it were SQL

• General strategy in Saxon-SA:– Distribute the join predicates (turn

WHERE clauses into filter expressions)

– Use indexed lookup for predicates where appropriate

Page 21: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

21

Indexes in Saxon-SA

• Explicit user-defined indexes– xsl:key

• Implicit document-level indexes– //a/b/c[@id=$param]

• Implicit sequence-level indexes– $abc[@id = $param]

• Hash tables for many-to-many “=“– book[keyword = $keywords]

Page 22: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

22

Some tips for effective indexing

• Declare your types

• Avoid untypedAtomic – use a schema

• Use “eq” rather than “=“

Page 23: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

23

Tail Recursion

• See the printed paper

Page 24: Optimization in XSLT and XQuery Michael Kay. 2 Challenges XSLT/XQuery are high-level declarative languages: performance depends on good optimization Performance.

24

Conclusions

• Optimization techniques are similar for XSLT and XQuery– But vary between database products

and in-memory processors

• Compile-time techniques– Type analysis– Expression rewriting

• Run-time techniques– Streaming/pipelining– etc


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