Title: Relational Query Optimization
1Relational Query Optimization
2Query Evaluation
- SQL queries are translated into an extended form
of relational algebra - Query Plan Reasoning
- Tree of ops,
- with choice of one among several algorithms for
each operator - Query Plan Execution
- Each operator implemented using pull interface
when operator is pulled for next output tuples,
it pulls on its inputs and computes them.
3Overview of Query Evaluation
- Query Plan Optimization
- Ideally Want to find best plan. Practically
Avoid worst plans! - Two main issues in query optimization
- For a given query, what plans are considered?
- Algorithm to search plan space for cheapest
(estimated) plan. - How is the cost of a plan estimated?
- Cost Models based on I/O estimates
4Physical Query Plan
- An extended relational algebra tree
- Annotations at each node indicating access
methods to use for each table - The implementation methods used for each
relational operator. - Costs estimated per operator.
5Schema for Examples
Sailors (sid integer, sname string, rating
integer, age real) Reserves (sid integer, bid
integer, day dates, rname string)
- Similar to old schema rname added for
variations. - Reserves
- Each tuple is 40 bytes long, 100 tuples per
page, 1000 pages. - Sailors
- Each tuple is 50 bytes long, 80 tuples per page,
500 pages.
6Query Blocks Units of Optimization
- An SQL query is parsed into a collection of query
blocks. - An SQL query with no nesting and exactly one
SELECT,FROM,WHERE, GROUP BY, HAVING clause. - WHERE is in conjunctive normal form.
- Nested blocks are usually treated as calls to a
subroutine, made once per outer tuple. - Optimizing one block at a time.
SELECT S.sname FROM Sailors S WHERE S.age IN
Reference to nested block
SELECT S.sname FROM Sailors S WHERE S.age IN
(SELECT MAX (S2.age) FROM Sailors
S2 GROUP BY S2.rating)
SELECT MAX (S2.age) FROM Sailors S2
GROUP BY S2.rating
Nested block
Outer block
7Query Block
- For each block, the plans considered are
- All available access methods, for each relation
in FROM clause. - All left-deep join trees
- i.e., all ways to join the relations
one-at-a-time, with the inner relation in the
FROM clause, considering all relation
permutations and join methods.
?MAX(S2.age) (Group By S2.rating(?
S2.age(Sailors)))
8Cost Estimation
- For each plan considered, must estimate cost
- Must estimate cost of each operation in plan
tree. - Depends on input cardinalities.
- Depends on algorithm (sequential scan, index
scan). - Must also estimate size of result for each
operation. - Use information about the input relations.
- For selections and joins, assume independence of
predicates. - Must make assumptions about effect of predicates.
- Cost of plan sum of cost of each operator in
tree.
9Cost Estimation
- Result size
- product of cardinalities of involved relations
(FROM) -
- product of reduction factors (WHERE).
10Size Estimation and Reduction Factors
SELECT attribute list FROM relation list WHERE
term1 AND ... AND termk
- Consider a query block
- Maximum tuples in result is product of
cardinalities of relations in FROM clause. - Reduction factor (RF) associated with each term
reflects impact of term in reducing result size.
- Result cardinality Max tuples product of
all RFs. - Implicit assumption that terms are independent!
11Reduction Factors
SELECT attribute list FROM relation list WHERE
term1 AND ... AND termk
- Reduction factor (RF) associated with each term
reflects impact of term in reducing result size - Term colvalue has RF ?
- Term col1col2 has RF?
- Term colgtvalue has RF?
12Cost of a Plan (cont')
- Reduction Factor.
- Column value. - Given index I on column,
assume uniform distribution. 1/Nkeys(I). -
Otherwise, fixed reduction factor 1/10 - Column1 column2 - Given indexes I1 and I2 on
column1 and column2, assuming each key value in
I1 (smaller one) has a matching value in I2.
1/MAX(Nkeys(I1), Nkeys(I2)). - One index I,
1/Nkeys(I) - otherwise, 1/10 - Column gt values - Given an index I on column,
arithmetic type. High(I) value / High(I)
Low(I). - Not arithmetic type, or no index. A
fraction Less than half is arbitrarily chosen. - Column IN (list of values) - reduction factor
for (column value) number of items in the
list. - Assumptions for reduction factors
- Uniform distribution of values
- Independent distribution of values in different
columns.
13Cost of a Plan (cont)
- Improved Statistics Histograms
- Uniform distribution is not accurate since real
data is not uniformly distributed. - Histogram data structure maintained by DBMS
to approximate data distribution. - Equiwidth divide range of column values into
subranges (buckets). Assuming distribution
within histogram bucket is uniform. - Equidepth number of tuples within each bucket is
equal (almost). - Compressed equidepth maintain separate counts
for small number of very frequent values, and
maintain equidepth histogram to cover remaining
values.
5.0
5.0
5.0
9.0
Equiwidth
Equidepth
2.67
2.25
2.5
1.33
1.0
1.75
0 1 2 3 4 5 6 7 8 9 10 11 12 13 14
0 1 2 3 4 5 6 7 8 9 10 11 12 13 14
Bucket 1 2 3 4 5 Count 8 4 15 3
15
Bucket 1 2 3 4 5 Count 9 10 10 7
9
14Relational Algebra Equivalences
- Allow to choose different join orders and to
push selections and projections ahead of joins. - Selections
(Cascade)
Combine several selections into one selection.
Evaluate the conjunctive condition to each of
the tuple.
Separate conjunctions into smaller selection
operations, Able to combine as Join.
(Commute)
(Cascade)
Where ai ? ai1 for i 1n-1.
15Relational Algebra Equivalences
(Associative)
R (S T) (R S) T
(Commute)
(R S) (S R)
R (S T) (T R) S
- When joining several relations, we are free to
join the relations in any order we choose.
16Selects, Projects and Joins
- Case1 ?a (?c(R)) ? ?c (?a(R))
- A projection commutes with a selection that only
uses attributes retained by the projection. - XCase2 R c S ? ?c (R?S)
- Combine a selection with a cross-product to form
a join. - Case3 i.e., (R S) (R) S
- A selection on just attributes of R commutes with
Join.
17Selects, Projects and Joins
- Case1 A projection commutes with a selection
that only uses attributes retained by the
projection. - ?a (?c(R)) ? ?c (?a(R))
- Case2 Combine a selection with a cross-product
to form a join. R c S ? ?c (R?S) - Case3 A selection on just attributes of R
commutes with Join. i.e., (R S)
(R) S
18Selects, Projects and Joins
- In general, part of the selection condition can
be pushed ahead of the Join. - ?c1?c2 ?c3 (R S) ? ?c1(?c2 (R) ?c3 (S))
- Project ?a (R?S) ? ?a1 (R) ? ?a2 (S) ?a (R
c S) ? ?a1 (R) c ?a2 (S) (Where c appears
in a)
19Enumeration of Alternative Plans
- There are two main cases
- Single-relation plans
- Multiple-relation plans
20Single Relation Plans
- Queries over a single relation combination of
selects, projects, and aggregate operations - Main decision which access path to use in
retrieving tuples. - Most selective access path (file scan / index) if
only single operator considered. - Different operations are essentially carried out
together. - e.g., if an index is used for a selection,
projection is done for each retrieved tuple, and
the resulting tuples are pipelined into the
aggregate computation.
21Single Relation Plans without Index
? s.rating, COUNT()(HAVING COUNT
DISTINCT(S.sname) gt 2(GROUP Bys.rating(
?s.rating, S.sname ( ? s.ratinggt5 ? S.age20
(Sailors)))))
SELECT S.rating, COUNT() FROM Sailors S WHERE
S.rating gt 5 AND S.age 20 GROUP BY
S.rating HAVING COUNT DISTINCT (S.sname) gt 2
- A file scan to retrieve tuples and apply
selections and projections. - Writing out tuples after the selections and
projections. - Sorting these tuples to implement GROUP BY
clause. - Note GROUP BY and HAVING are done on-the-fly.
- e.g., Cost Cost1(scan) cost2 (writing
ltS.rating, S.snamegt pairs) cost3
(sorting as per the GROUP BY clause).
Sailors 500 pages cost1 500, cost3
3Npages 60 (assuming two passes) - cost2 500 ratio of tuple size RFs
20 ratio of tuple size pair size / tuple
size 0.8 - RF(s.ratinggt5) 0.5 RF(S.age20) 0.1
22Single-Relation Plans with Index
- Single-index access path
- When several indexes match the selection
conditions, choose the most selective access
path. - Multiple-index access path
- Several indexes using Alternatives (2) or (3) for
data entries match the selection condition. - Retrieve rids using them individually.
- Intersect result set. Sort by page id.
- Sorted-index access path
- Grouping attributes is a prefix of a tree index.
- Using index to retrieve tuples in the order
required by GROUP BY clause. - Index-only access path
- All attributes mentioned in the query are
included in the search key for some dense index
on the relation in the FROM clause. - Index-only scan to compute the answer.
23Single-Relation Plans with Index
- Index I on primary key matches selection
- Cost is Height(I)1 for a B tree, about 1.2 for
hash index. - Clustered index I matching one or more selects
- (NPages(I)NPages(R)) product of RFs of
matching selects. - Non-clustered index I matching one or more
selects - (NPages(I)NTuples(R)) product of RFs of
matching selects. - Sequential scan of file
- NPages(R).
- Note Typically, no duplicate elimination on
projections! (Exception Done on answers if user
says DISTINCT.)
24Example
SELECT S.sid FROM Sailors S WHERE S.rating8
- Sailors 500 pages, 80 tuples/page
- Case2 index on rating.
- Clustered index (1/NKeys(I))
(NPages(I)NPages(S)) (1/10) (50500) pages
Unclustered index (1/NKeys(I))
(NPages(I)NTuples(S)) (1/10) (5040000)
pages - Case3 index on sid.
- Would have to retrieve all tuples/pages. With a
clustered index, the cost is 50500, with
unclustered index, 5040000. - Case4 file scan
- We retrieve all file pages (500).
25Queries Over Multiple Relations
- Fundamental decision in System R only left-deep
join trees are considered. - As the number of joins increases, the number of
alternative plans grows rapidly we need to
restrict the search space. - Left-deep trees allow us to generate all fully
pipelined plans. - Intermediate results not written to temporary
files. - Not all left-deep trees are fully pipelined
(e.g., SM join).
26Enumeration of Left-Deep Plans
- Left-deep plans differ only in the order of
relations, the access method for each relation,
and the join method for each join. - Enumerated using N passes (if N relations
joined) - Pass 1 Find best 1-relation plan for each
relation. - Pass 2 Find best way to join result of each
1-relation plan (as outer) to another relation.
(All 2-relation plans.) - Pass N Find best way to join result of a
(N-1)-relation plan (as outer) to the Nth
relation. (All N-relation plans.) - For each subset of relations, retain only
- Cheapest plan overall, plus
- Cheapest plan for each interesting order of
tuples.
B
A
C
D
Pass 1
Pass 2
Pass 3
27Enumeration of Left-Deep Plans (contd.)
- Pass1 1 relation plan.
- Identify selection terms in the WHERE clause that
mention only attributes of A. (perform first
access of A, before Join) - Identify attributes of A not mentioned in SELECT
or WHERE clause (Project out when first access
of A, before Join) - Cheapest plan keeping order.
- E.g., a file scan (as cheapest overall plan for
fetching all tuples) and a B tree index (as the
cheapest plan for fetching all tuples in the
search key order).
28Enumeration of Left-Deep Plans (contd.)
- Pass 2 All 2-relational Plans.
- Each of the single-relation plan from Pass 1 as
the outer relation, and every other relation as
the inner relation. - Examine WHERE clauses
- Selections involving only attributes of inner
relation (apply before Join). - Selections defining the Join.
- Selections involving attributes of other
relations (apply after Join). - Actually, only selections that are really applied
before the join are those that match the chosen
access paths for A and B. - Depending on Join algorithm chosen, the cost may
include the materializing the outer relation.
29Enumeration of Plans (Contd.)
- ORDER BY, GROUP BY, aggregates etc. handled as a
final step, using either an interestingly
ordered plan or an additional sorting operator. - An N-1 way plan is not combined with an
additional relation unless there is a join
condition between them, unless all predicates in
WHERE have been used up. - i.e., avoid Cartesian products if possible.
- In spite of pruning plan space, this approach is
still exponential in the of tables.
30Example
Sailors B tree on rating Hash on
sid Reserves B tree on bid
- Pass1
- Sailors
- Choice1 B tree matches ratinggt5,
probably cheapest. - if selection is expected to retrieve a lot of
tuples, and index is unclustered, file scan may
be cheaper. - Decision B tree plan kept (because tuples are
in rating order). - Reserves B tree on bid matches bid500
cheapest.
- Pass 2
- each plan retained from Pass 1 as the outer.
- how to join it with the (only) other relation.
e.g., Reserves as outer Hash index can be
used to get Sailors tuples - that satisfy sid outer tuples sid value.
31Nested Queries
SELECT S.sname FROM Sailors S WHERE EXISTS
(SELECT FROM Reserves R WHERE
R.bid103 AND R.sidS.sid)
- Nested block is optimized independently, with the
outer tuple considered as providing a selection
condition. - Outer block is optimized with the cost of
calling nested block computation taken into
account. - Implicit ordering of these blocks means that some
good strategies are not considered. - The non-nested version of the query is typically
optimized better.
Nested block to optimize SELECT FROM
Reserves R WHERE R.bid103 AND S.sid
outer value
Equivalent non-nested query SELECT S.sname FROM
Sailors S, Reserves R WHERE S.sidR.sid AND
R.bid103
32Highlights of System R Optimizer
- Impact
- Most widely used currently works well for lt 10
joins. - Cost estimation
- Statistics, maintained in system catalogs, used
to estimate cost of operations and result sizes. - Considers combination of CPU and I/O costs.
- Plan Space
- Only the space of left-deep plans is considered.
- Left-deep plans allow output of each operator to
be pipelined into the next operator without
storing it in a temporary relation. - Focus on optimizing SQLs without nesting. No
duplication in projections. (unless DISTINCT
used) - Cartesian products avoided.
33Other Approaches to Query Optimization
- Exclusive search is not suitable for large number
of Joins. - Rule-based optimizers a set of rules to guide
the generation of candidate plans. - Randomized plan generation probabilistic
algorithms to explore a large space of plans.
34Summary
- Query optimization is an important task in a
relational DBMS. - Must understand optimization in order to
understand the performance impact of a given
database design (relations, indexes) on a
workload (set of queries). - Two parts to optimizing a query
- Consider a set of alternative plans.
- Must prune search space typically, left-deep
plans only. - Must estimate cost of each plan that is
considered. - Must estimate size of result and cost for each
plan node. - Key issues Statistics, indexes, operator
implementations.
35Summary
- Single-relation queries
- All access paths considered, cheapest is chosen.
- Issues Selections that match index, whether
index key has all needed fields and/or provides
tuples in a desired order. - Multiple-relation queries
- All single-relation plans are first enumerated.
- Selections/projections considered as early as
possible. - Next, for each 1-relation plan, all ways of
joining another relation (as inner) are
considered. - Next, for each 2-relation plan that is
retained, all ways of joining another relation
(as inner) are considered, etc. - At each level, for each subset of relations, only
best plan for each interesting order of tuples is
retained.