summaryrefslogtreecommitdiffstats
path: root/www/queryplanner.html
blob: 84dbbc0a7ccda0f6878831f23ce57149f192e4e1 (plain)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
637
638
639
640
641
642
643
644
645
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
767
768
769
770
771
772
773
774
775
776
777
778
779
780
781
782
783
784
785
786
787
788
789
790
791
792
793
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
850
851
852
853
854
855
856
857
858
859
860
861
862
863
864
865
866
867
868
869
870
871
872
873
874
875
876
877
878
879
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
896
897
898
899
900
901
902
903
904
905
906
907
908
909
910
911
912
913
914
915
916
917
918
919
920
921
922
923
924
925
926
927
928
929
930
931
932
933
934
935
936
937
938
939
940
941
942
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957
958
959
960
961
962
963
964
965
966
967
968
969
970
971
972
973
974
975
976
977
978
979
980
981
982
983
984
985
986
987
988
989
990
991
992
993
994
995
996
997
998
999
1000
1001
1002
1003
1004
1005
1006
1007
1008
1009
1010
1011
1012
1013
1014
1015
1016
1017
1018
1019
1020
1021
1022
1023
1024
1025
1026
1027
1028
1029
1030
1031
1032
1033
1034
1035
1036
1037
<!DOCTYPE html>
<html><head>
<meta name="viewport" content="width=device-width, initial-scale=1.0">
<meta http-equiv="content-type" content="text/html; charset=UTF-8">
<link href="sqlite.css" rel="stylesheet">
<title>Query Planning</title>
<!-- path= -->
</head>
<body>
<div class=nosearch>
<a href="index.html">
<img class="logo" src="images/sqlite370_banner.gif" alt="SQLite" border="0">
</a>
<div><!-- IE hack to prevent disappearing logo --></div>
<div class="tagline desktoponly">
Small. Fast. Reliable.<br>Choose any three.
</div>
<div class="menu mainmenu">
<ul>
<li><a href="index.html">Home</a>
<li class='mobileonly'><a href="javascript:void(0)" onclick='toggle_div("submenu")'>Menu</a>
<li class='wideonly'><a href='about.html'>About</a>
<li class='desktoponly'><a href="docs.html">Documentation</a>
<li class='desktoponly'><a href="download.html">Download</a>
<li class='wideonly'><a href='copyright.html'>License</a>
<li class='desktoponly'><a href="support.html">Support</a>
<li class='desktoponly'><a href="prosupport.html">Purchase</a>
<li class='search' id='search_menubutton'>
<a href="javascript:void(0)" onclick='toggle_search()'>Search</a>
</ul>
</div>
<div class="menu submenu" id="submenu">
<ul>
<li><a href='about.html'>About</a>
<li><a href='docs.html'>Documentation</a>
<li><a href='download.html'>Download</a>
<li><a href='support.html'>Support</a>
<li><a href='prosupport.html'>Purchase</a>
</ul>
</div>
<div class="searchmenu" id="searchmenu">
<form method="GET" action="search">
<select name="s" id="searchtype">
<option value="d">Search Documentation</option>
<option value="c">Search Changelog</option>
</select>
<input type="text" name="q" id="searchbox" value="">
<input type="submit" value="Go">
</form>
</div>
</div>
<script>
function toggle_div(nm) {
var w = document.getElementById(nm);
if( w.style.display=="block" ){
w.style.display = "none";
}else{
w.style.display = "block";
}
}
function toggle_search() {
var w = document.getElementById("searchmenu");
if( w.style.display=="block" ){
w.style.display = "none";
} else {
w.style.display = "block";
setTimeout(function(){
document.getElementById("searchbox").focus()
}, 30);
}
}
function div_off(nm){document.getElementById(nm).style.display="none";}
window.onbeforeunload = function(e){div_off("submenu");}
/* Disable the Search feature if we are not operating from CGI, since */
/* Search is accomplished using CGI and will not work without it. */
if( !location.origin || !location.origin.match || !location.origin.match(/http/) ){
document.getElementById("search_menubutton").style.display = "none";
}
/* Used by the Hide/Show button beside syntax diagrams, to toggle the */
function hideorshow(btn,obj){
var x = document.getElementById(obj);
var b = document.getElementById(btn);
if( x.style.display!='none' ){
x.style.display = 'none';
b.innerHTML='show';
}else{
x.style.display = '';
b.innerHTML='hide';
}
return false;
}
var antiRobot = 0;
function antiRobotGo(){
if( antiRobot!=3 ) return;
antiRobot = 7;
var j = document.getElementById("mtimelink");
if(j && j.hasAttribute("data-href")) j.href=j.getAttribute("data-href");
}
function antiRobotDefense(){
document.body.onmousedown=function(){
antiRobot |= 2;
antiRobotGo();
document.body.onmousedown=null;
}
document.body.onmousemove=function(){
antiRobot |= 2;
antiRobotGo();
document.body.onmousemove=null;
}
setTimeout(function(){
antiRobot |= 1;
antiRobotGo();
}, 100)
antiRobotGo();
}
antiRobotDefense();
</script>
<div class=fancy>
<div class=nosearch>
<div class="fancy_title">
Query Planning
</div>
<div class="fancy_toc">
<a onclick="toggle_toc()">
<span class="fancy_toc_mark" id="toc_mk">&#x25ba;</span>
Table Of Contents
</a>
<div id="toc_sub"><div class="fancy-toc1"><a href="#_searching">1.  Searching</a></div>
<div class="fancy-toc2"><a href="#_tables_without_indices">1.1.  Tables Without Indices</a></div>
<div class="fancy-toc2"><a href="#_lookup_by_rowid">1.2.  Lookup By Rowid</a></div>
<div class="fancy-toc2"><a href="#_lookup_by_index">1.3.  Lookup By Index</a></div>
<div class="fancy-toc2"><a href="#_multiple_result_rows">1.4.  Multiple Result Rows</a></div>
<div class="fancy-toc2"><a href="#_multiple_and_connected_where_clause_terms">1.5.  Multiple AND-Connected WHERE-Clause Terms</a></div>
<div class="fancy-toc2"><a href="#_multi_column_indices">1.6.  Multi-Column Indices</a></div>
<div class="fancy-toc2"><a href="#_covering_indexes">1.7.  Covering Indexes</a></div>
<div class="fancy-toc2"><a href="#_or_connected_terms_in_the_where_clause">1.8.  OR-Connected Terms In The WHERE Clause</a></div>
<div class="fancy-toc1"><a href="#_sorting">2.  Sorting</a></div>
<div class="fancy-toc2"><a href="#_sorting_by_rowid">2.1.  Sorting By Rowid</a></div>
<div class="fancy-toc2"><a href="#_sorting_by_index">2.2.  Sorting By Index</a></div>
<div class="fancy-toc2"><a href="#_sorting_by_covering_index">2.3.  Sorting By Covering Index</a></div>
<div class="fancy-toc1"><a href="#_searching_and_sorting_at_the_same_time">3.  Searching And Sorting At The Same Time</a></div>
<div class="fancy-toc2"><a href="#_searching_and_sorting_with_a_multi_column_index">3.1.  Searching And Sorting With A Multi-Column Index</a></div>
<div class="fancy-toc2"><a href="#_searching_and_sorting_with_a_covering_index">3.2.  Searching And Sorting With A Covering Index</a></div>
<div class="fancy-toc2"><a href="#_partial_sorting_using_an_index_a_k_a_block_sorting_">3.3.  Partial Sorting Using An Index (a.k.a. Block Sorting)</a></div>
<div class="fancy-toc1"><a href="#_without_rowid_tables">4.  WITHOUT ROWID tables</a></div>
</div>
</div>
<script>
function toggle_toc(){
var sub = document.getElementById("toc_sub")
var mk = document.getElementById("toc_mk")
if( sub.style.display!="block" ){
sub.style.display = "block";
mk.innerHTML = "&#x25bc;";
} else {
sub.style.display = "none";
mk.innerHTML = "&#x25ba;";
}
}
</script>
</div>






<h2 style="margin-left:1.0em" notoc="1" id="overview"> Overview</h2> 

<p>
The best feature of SQL (in <u>all</u> its implementations, not just SQLite)
is that it is a <i>declarative</i> language, not a <i>procedural</i>
language.  When programming in SQL you tell the system <i>what</i> you
want to compute, not <i>how</i> to compute it.  The task of figuring out
the <i>how</i> is delegated to the <i>query planner</i> subsystem within 
the SQL database engine.</p>

<p>For any given SQL statement, there might be hundreds or thousands or
even millions of different algorithms of performing the operation.  All
of these algorithms will get the correct answer, though some will run
faster than others.
The query planner is an 
<a href="https://en.wikipedia.org/wiki/Artificial_intelligence">AI</a> that 
tries to pick the fastest and most efficient algorithm for each SQL
statement.
</p>

<p>
Most of the time, the query planner in SQLite does a good job.
However, the query planner needs indices to
work with.  
These indices must normally be added by programmers.
Rarely, the query planner AI will make a suboptimal algorithm
choice.
In those cases, programmers may want to provide additional
hints to help the query planner do a better job.
</p>

<p>
This document provides background information about how the
SQLite query planner and query engine work.
Programmers can use this information to help create better
indexes, and provide hints to help the query planner when
needed.
</p>

<p>
Additional information is provided in the
<a href="optoverview.html">SQLite query planner</a> and 
<a href="queryplanner-ng.html">next generation query planner</a> documents.
</p>

<a name="searching"></a>

<h1 id="_searching"><span>1. </span> Searching</h1>

<h2 id="_tables_without_indices"><span>1.1. </span> Tables Without Indices</h2>

<p>
Most tables in SQLite consist of zero or more rows with a unique integer
key (the <a href="lang_createtable.html#rowid">rowid</a> or <a href="lang_createtable.html#rowid">INTEGER PRIMARY KEY</a>) followed by content.  
(The exception is <a href="withoutrowid.html">WITHOUT ROWID</a> tables.)
The rows
are logically stored in order of increasing rowid.  As an example, this
article uses a table named "FruitsForSale" which relates various fruits 
to the state
where they are grown and their unit price at market.  The schema is this:
</p>

<center><table><tr><td><pre>
CREATE TABLE FruitsForSale(
  Fruit TEXT,
  State TEXT,
  Price REAL
);
</pre></table></center>


<p>
With some (arbitrary) data, such a table might be logically stored on disk
as shown in figure 1:
</p>

<a name='fig1'></a>
<p><center>
<img src="images/qp/tab.gif" alt="figure 1"><br>
Figure 1: Logical Layout Of Table "FruitsForSale"
</center></p>


<p>
In this example, the rowids are not
consecutive but they are ordered.  SQLite usually creates rowids beginning
with one and increasing by one with each added row.  But if rows are 
deleted, gaps can appear in the sequence.  And the application can control
the rowid assigned if desired, so that rows are not necessarily inserted 
at the bottom.  But regardless of what happens, the rowids are always 
unique and in strictly ascending order.
</p>

<p>
Suppose you want to look up the price of peaches.  The query would
be as follows:
</p>

<center><table><tr><td><pre>
SELECT price FROM fruitsforsale WHERE fruit='Peach';
</pre></table></center>


<p>
To satisfy this query, SQLite reads every row out of the
table, checks to see if the "fruit" column has the value of "Peach" and if
so, outputs the "price" column from that row.  The process is illustrated
by <a href="#fig2">figure 2</a> below.
This is algorithm is called a <i>full table scan</i> 
since the entire content of the
table must be read and examined in order to find the one row of interest.
With a table of only 7 rows, a full table scan is acceptable, 
but if the table contained 7 million rows, a full table scan might read 
megabytes of content in order to find a single 8-byte number.  
For that reason, one normally tries to avoid full table scans.
</p>

<a name='fig2'></a>
<p><center>
<img src="images/qp/fullscan.gif" alt="figure 2"><br>
Figure 2: Full Table Scan
</center></p>


<h2 id="_lookup_by_rowid"><span>1.2. </span> Lookup By Rowid</h2>

<p>
One technique for avoiding a full table scan is to do lookups by
rowid (or by the equivalent <a href="lang_createtable.html#rowid">INTEGER PRIMARY KEY</a>).   To lookup the
price of peaches, one would query for the entry with a rowid of 4:
</p>

<center><table><tr><td><pre>
SELECT price FROM fruitsforsale WHERE rowid=4;
</pre></table></center>


<p>
Since the information is stored in the table in rowid order, SQLite
can find the correct row using a binary search.
If the table contains N elements, the time required to look up the
desired row is proportional to logN rather than being proportional
to N as in a full table scan.  If the table contains 10 million elements,
that means the query will be on the order of N/logN or about 1 million
times faster.
</p>

<a name='fig3'></a>
<p><center>
<img src="images/qp/rowidlu.gif" alt="figure 3"><br>
Figure 3: Lookup By Rowid
</center></p>


<h2 id="_lookup_by_index"><span>1.3. </span> Lookup By Index</h2>
<p>
The problem with looking up information by rowid is that you probably
do not care what the price of "item 4" is - you want to know the price
of peaches.  And so a rowid lookup is not helpful.
</p>

<p>
To make the original query more efficient, we can add an index on the
"fruit" column of the "fruitsforsale" table like this:
</p>

<center><table><tr><td><pre>
CREATE INDEX Idx1 ON fruitsforsale(fruit);
</pre></table></center>


<p>
An index is another table similar to the original "fruitsforsale" table
but with the content (the fruit column in this case) stored in front of the
rowid and with all rows in content order.
<a href="#fig4">Figure 4</a> gives a logical view of the Idx1 index.
The "fruit" column is the primary key used to order the elements of the
table and the "rowid" is the secondary key used to break the tie when
two or more rows have the same "fruit".  In the example, the rowid
has to be used as a tie-breaker for the "Orange" rows.
Notice that since the rowid
is always unique over all elements of the original table, the composite key
of "fruit" followed by "rowid" will be unique over all elements of the index.
</p>

<a name='fig4'></a>
<p><center>
<img src="images/qp/idx1.gif" alt="figure 4"><br>
Figure 4: An Index On The Fruit Column
</center></p>


<p>
This new index can be used to implement a faster algorithm for the
original "Price of Peaches" query.
</p>

<center><table><tr><td><pre>
SELECT price FROM fruitsforsale WHERE fruit='Peach';
</pre></table></center>


<p>
The query starts by doing a binary search on the Idx1 index for entries
that have fruit='Peach'.  SQLite can do this binary search on the Idx1 index
but not on the original FruitsForSale table because the rows in Idx1 are sorted
by the "fruit" column.  Having found a row in the Idx1 index that has
fruit='Peach', the database engine can extract the rowid for that row.
Then the database engines does a second binary search
on the original FruitsForSale table to find the
original row that contains fruit='Peach'.  
From the row in the FruitsForSale table,
SQLite can then extract the value of the price column.
This procedure is illustrated by <a href="#fig5">figure 5</a>.
</p>

<a name='fig5'></a>
<p><center>
<img src="images/qp/idx1lu1.gif" alt="figure 5"><br>
Figure 5: Indexed Lookup For The Price Of Peaches
</center></p>


<p>
SQLite has to do two binary searches to find the price of peaches using
the method show above.  But for a table with a large number of rows, this
is still much faster than doing a full table scan.
</p>

<h2 id="_multiple_result_rows"><span>1.4. </span> Multiple Result Rows</h2>

<p>
In the previous query the fruit='Peach' constraint narrowed the result
down to a single row.  But the same technique works even if multiple
rows are obtained.  Suppose we looked up the price of Oranges instead of
Peaches:
</p>

<center><table><tr><td><pre>
SELECT price FROM fruitsforsale WHERE fruit='Orange'
</pre></table></center>
<a name='fig6'></a>
<p><center>
<img src="images/qp/idx1lu2.gif" alt="figure 6"><br>
Figure 6: Indexed Lookup For The Price Of Oranges
</center></p>


<p>
In this case, SQLite still does a single binary search to find the first
entry of the index where fruit='Orange'.  Then it extracts the rowid from
the index and uses that rowid to lookup the original table entry via
binary search and output the price from the original table.  But instead
of quitting, the database engine then advances to the next row of index
to repeat the process for next fruit='Orange' entry.  Advancing to the
next row of an index (or table) is much less costly than doing a binary
search since the next row is often located on the same database page as
the current row.  In fact, the cost of advancing to the next row is so
cheap in comparison to a binary search that we usually ignore it.  So
our estimate for the total cost of this query is 3 binary searches.
If the number of rows of output is K and the number of rows in the table
is N, then in general the cost of doing the query is proportional
to (K+1)*logN.
</p>

<h2 id="_multiple_and_connected_where_clause_terms"><span>1.5. </span> Multiple AND-Connected WHERE-Clause Terms</h2>

<p>
Next, suppose that you want to look up the price of not just any orange,
but specifically California-grown oranges.  The appropriate query would
be as follows:
</p>

<center><table><tr><td><pre>
SELECT price FROM fruitsforsale WHERE fruit='Orange' AND state='CA'
</pre></table></center>
<a name='fig7'></a>
<p><center>
<img src="images/qp/idx1lu3.gif" alt="figure 7"><br>
Figure 7: Indexed Lookup Of California Oranges
</center></p>


<p>
One approach to this query is to use the fruit='Orange' term of the WHERE
clause to find all rows dealing with oranges, then filter those rows
by rejecting any that are from states other than California.  This
process is shown by <a href="#fig7">figure 7</a> above.  This is a perfectly
reasonable approach in most cases.  Yes, the database engine did have
to do an extra binary search for the Florida orange row that was
later rejected, so it was not as efficient as we might hope, though
for many applications it is efficient enough.  
</p>

<p>
Suppose that in addition to the index on "fruit" there was also
an index on "state".
</p>

<center><table><tr><td><pre>
CREATE INDEX Idx2 ON fruitsforsale(state);
</pre></table></center>
<a name='fig8'></a>
<p><center>
<img src="images/qp/idx2.gif" alt="figure 8"><br>
Figure 8: Index On The State Column
</center></p>


<p>
The "state" index works just like the "fruit" index in that it is a
new table with an extra column in front of the rowid and sorted by
that extra column as the primary key.  The only difference is that
in Idx2, the first column is "state" instead of "fruit" as it is with
Idx1.  In our example data set, there is more redundancy in the "state"
column and so they are more duplicate entries.  The ties are still
resolved using the rowid.
</p>

<p>
Using the new Idx2 index on "state", SQLite has another option for
lookup up the price of California oranges:  it can look up every row
that contains fruit from California and filter out those rows that
are not oranges.
</p>

<a name='fig9'></a>
<p><center>
<img src="images/qp/idx2lu1.gif" alt="figure 9"><br>
Figure 9: Indexed Lookup Of California Oranges
</center></p>


<p>
Using Idx2 instead of Idx1 causes SQLite to examine a different set of
rows, but it gets the same answer in the end (which is very important -
remember that indices should never change the answer, only help SQLite to
get to the answer more quickly) and it does the same amount of work.
So the Idx2 index did not help performance in this case.
</p>

<p>
The last two queries take the same amount of time, in our example.
So which index, Idx1 or Idx2, will SQLite choose?  If the
<a href="lang_analyze.html">ANALYZE</a> command has been run on the database, so that SQLite has
had an opportunity to gather statistics about the available indices,
then SQLite will know that the Idx1 index usually narrows the search
down to a single item (our example of fruit='Orange' is the exception
to this rule) whereas the Idx2 index will normally only narrow the 
search down to two rows.  So, if all else is equal, SQLite will
choose Idx1 with the hope of narrowing the search to as small
a number of rows as possible.  This choice is only possible because
of the statistics provided by <a href="lang_analyze.html">ANALYZE</a>.  If <a href="lang_analyze.html">ANALYZE</a> has not been
run then the choice of which index to use is arbitrary.
</p>

<h2 id="_multi_column_indices"><span>1.6. </span> Multi-Column Indices</h2>

<p>
To get the maximum performance out of a query with multiple AND-connected
terms in the WHERE clause, you really want a multi-column index with
columns for each of the AND terms.  In this case we create a new index
on the "fruit" and "state" columns of FruitsForSale:
</p>

<center><table><tr><td><pre>
CREATE INDEX Idx3 ON FruitsForSale(fruit, state);
</pre></table></center>
<a name='fig10'></a>
<p><center>
<img src="images/qp/idx3.gif" alt="figure 1"><br>
Figure 1: A Two-Column Index
</center></p>


<p>
A multi-column index follows the same pattern as a single-column index;
the indexed columns are added in front of the rowid.  The only difference
is that now multiple columns are added.  The left-most column is the
primary key used for ordering the rows in the index.  The second column is
used to break ties in the left-most column.  If there were a third column,
it would be used to break ties for the first two columns.  And so forth for
all columns in the index.  Because rowid is guaranteed
to be unique, every row of the index will be unique even if all of the
content columns for two rows are the same.  That case does not happen
in our sample data, but there is one case (fruit='Orange') where there
is a tie on the first column which must be broken by the second column.
</p>

<p>
Given the new multi-column Idx3 index, it is now possible for SQLite
to find the price of California oranges using only 2 binary searches:
</p>

<center><table><tr><td><pre>
SELECT price FROM fruitsforsale WHERE fruit='Orange' AND state='CA'
</pre></table></center>
<a name='fig11'></a>
<p><center>
<img src="images/qp/idx3lu1.gif" alt="figure 11"><br>
Figure 11: Lookup Using A Two-Column Index
</center></p>


<p>
With the Idx3 index on both columns that are constrained by the WHERE clause,
SQLite can do a single binary search against Idx3 to find the one rowid
for California oranges, then do a single binary search to find the price
for that item in the original table.  There are no dead-ends and no
wasted binary searches.  This is a more efficient query.
</p>

<p>
Note that Idx3 contains all the same information as the original 
<a href="#fig3">Idx1</a>.  And so if we have Idx3, we do not really need Idx1
any more.  The "price of peaches" query can be satisfied using Idx3
by simply ignoring the "state" column of Idx3:
</p>

<center><table><tr><td><pre>
SELECT price FROM fruitsforsale WHERE fruit='Peach'
</pre></table></center>
<a name='fig12'></a>
<p><center>
<img src="images/qp/idx3lu2.gif" alt="figure 12"><br>
Figure 12: Single-Column Lookup On A Multi-Column Index
</center></p>


<p>
Hence, a good rule of thumb is that your database schema should never
contain two indices where one index is a prefix of the other.  Drop the
index with fewer columns.  SQLite will still be able to do efficient
lookups with the longer index.
</p>

<a name="covidx"></a>

<h2 id="_covering_indexes"><span>1.7. </span> Covering Indexes</h2>

<p>
The "price of California oranges" query was made more efficient through
the use of a two-column index.  But SQLite can do even better with a
three-column index that also includes the "price" column:
</p>

<center><table><tr><td><pre>
CREATE INDEX Idx4 ON FruitsForSale(fruit, state, price);
</pre></table></center>
<a name='fig13'></a>
<p><center>
<img src="images/qp/idx4.gif" alt="figure 13"><br>
Figure 13: A Covering Index
</center></p>


<p>
This new index contains all the columns of the original FruitsForSale table that
are used by the query - both the search terms and the output.  We call
this a "covering index".  Because all of the information needed is in
the covering index, SQLite never needs to consult the original table
in order to find the price.
</p>

<center><table><tr><td><pre>
SELECT price FROM fruitsforsale WHERE fruit='Orange' AND state='CA';
</pre></table></center>
<a name='fig14'></a>
<p><center>
<img src="images/qp/idx4lu1.gif" alt="figure 14"><br>
Figure 14: Query Using A Covering Index
</center></p>


<p>
Hence, by adding extra "output" columns onto the end of an index, one
can avoid having to reference the original table and thereby
cut the number of binary searches for a query in half.  This is a
constant-factor improvement in performance (roughly a doubling of
the speed).  But on the other hand, it is also just a refinement;
A two-fold performance increase is not nearly as dramatic as the
one-million-fold increase seen when the table was first indexed.
And for most queries, the difference between 1 microsecond and
2 microseconds is unlikely to be noticed.
</p>

<a name="or_in_where"></a>

<h2 id="_or_connected_terms_in_the_where_clause"><span>1.8. </span> OR-Connected Terms In The WHERE Clause</h2>

<p>
Multi-column indices only work if the constraint terms in the WHERE
clause of the query are connected by AND.
So Idx3 and Idx4 are helpful when the search is for items that
are both Oranges and grown in California, but neither index would
be that useful if we wanted all items that were either oranges
<i>or</i> are grown in California.
</p>

<center><table><tr><td><pre>
SELECT price FROM FruitsForSale WHERE fruit='Orange' OR state='CA';
</pre></table></center>


<p>
When confronted with OR-connected terms in a WHERE clause, SQLite 
examines each OR term separately and tries to use an index to
find the rowids associated with each term.
It then takes the union of the resulting rowid sets to find
the end result.  The following figure illustrates this process:
</p>

<a name='fig15'></a>
<p><center>
<img src="images/qp/orquery.gif" alt="figure 15"><br>
Figure 15: Query With OR Constraints
</center></p>


<p>
The diagram above implies that SQLite computes all of the rowids first
and then combines them with a union operation before starting to do
rowid lookups on the original table.  In reality, the rowid lookups
are interspersed with rowid computations.  SQLite uses one index at
a time to find rowids while remembering which rowids it has seen
before so as to avoid duplicates.  That is just an implementation
detail, though.  The diagram, while not 100% accurate, provides a good
overview of what is happening.
</p>

<p>
In order for the OR-by-UNION technique shown above to be useful, there
must be an index available that helps resolve every OR-connected term
in the WHERE clause.  If even a single OR-connected term is not indexed,
then a full table scan would have to be done in order to find the rowids
generated by the one term, and if SQLite has to do a full table scan, it
might as well do it on the original table and get all of the results in
a single pass without having to mess with union operations and follow-on
binary searches.
</p>

<p>
One can see how the OR-by-UNION technique could also be leveraged to
use multiple indices on queries where the WHERE clause has terms connected
by AND, by using an intersect operator in place of union.  Many SQL
database engines will do just that.  But the performance gain over using
just a single index is slight and so SQLite does not implement that technique
at this time.  However, a future version SQLite might be enhanced to support
AND-by-INTERSECT.
</p>

<a name="sorting"></a>

<h1 id="_sorting"><span>2. </span> Sorting</h1>

<p>
SQLite (like all other SQL database engines) can also use indices to
satisfy the ORDER BY clauses in a query, in addition to expediting
lookup.  In other words, indices can be used to speed up sorting as
well as searching.
</p>

<p>
When no appropriate indices are available, a query with an ORDER BY
clause must be sorted as a separate step.  Consider this query:
</p>

<center><table><tr><td><pre>
SELECT * FROM fruitsforsale ORDER BY fruit;
</pre></table></center>


<p>
SQLite processes this by gathering all the output of query and then
running that output through a sorter.
</p>

<a name='fig16'></a>
<p><center>
<img src="images/qp/obfruitnoidx.gif" alt="figure 16"><br>
Figure 16: Sorting Without An Index
</center></p>


<p>
If the number of output rows is K, then the time needed to sort is
proportional to KlogK.  If K is small, the sorting time is usually
not a factor, but in a query such as the above where K==N, the time
needed to sort can be much greater than the time needed to do a
full table scan.  Furthermore, the entire output is accumulated in
temporary storage (which might be either in main memory or on disk,
depending on various compile-time and run-time settings)
which can mean that a lot of temporary storage is required to complete
the query.
</p>

<h2 id="_sorting_by_rowid"><span>2.1. </span> Sorting By Rowid</h2>

<p>
Because sorting can be expensive, SQLite works hard to convert ORDER BY
clauses into no-ops.  If SQLite determines that output will
naturally appear in the order specified, then no sorting is done.
So, for example, if you request the output in rowid order, no sorting
will be done:
</p>

<center><table><tr><td><pre>
SELECT * FROM fruitsforsale ORDER BY rowid;
</pre></table></center>
<a name='fig17'></a>
<p><center>
<img src="images/qp/obrowid.gif" alt="figure 17"><br>
Figure 17: Sorting By Rowid
</center></p>


<p>
You can also request a reverse-order sort like this:
</p>

<center><table><tr><td><pre>
SELECT * FROM fruitsforsale ORDER BY rowid DESC;
</pre></table></center>


<p>
SQLite will still omit the sorting step.  But in order for output to
appear in the correct order, SQLite will do the table scan starting at
the end and working toward the beginning, rather than starting at the
beginning and working toward the end as shown in 
<a href="#fig17">figure 17</a>.
</p>

<h2 id="_sorting_by_index"><span>2.2. </span> Sorting By Index</h2>

<p>
Of course, ordering the output of a query by rowid is seldom useful.
Usually one wants to order the output by some other column.
</p>

<p>
If an index is available on the ORDER BY column, that index can be used
for sorting.  Consider the request for all items sorted by "fruit":
</p>

<center><table><tr><td><pre>
SELECT * FROM fruitsforsale ORDER BY fruit;
</pre></table></center>


<a name='fig18'></a>
<p><center>
<img src="images/qp/obfruitidx1.gif" alt="figure 18"><br>
Figure 18: Sorting With An Index
</center></p>


<p>
The Idx1 index is scanned from top to bottom (or from bottom to top if
"ORDER BY fruit DESC" is used) in order to find the rowids for each item
in order by fruit.  Then for each rowid, a binary search is done to lookup
and output that row.  In this way, the output appears in the requested order
without the need to gather the entire output and sort it using a separate step.
</p>

<p>
But does this really save time?  The number of steps in the 
<a href="#fig16">original indexless sort</a> is proportional to NlogN since
that is how much time it takes to sort N rows.  But when we use Idx1 as
shown here, we have to do N rowid lookups which take logN time each, so
the total time of NlogN is the same!
</p>

<p>
SQLite uses a cost-based query planner.  When there are two or more ways
of solving the same query, SQLite tries to estimate the total amount of
time needed to run the query using each plan, and then uses the plan with
the lowest estimated cost.  A cost is computed mostly from the estimated
time, and so this case could go either way depending on the table size and
what WHERE clause constraints were available, and so forth.  But generally
speaking, the indexed sort would probably be chosen, if for no other
reason, because it does not need to accumulate the entire result set in
temporary storage before sorting and thus uses much less temporary storage.
</p>

<h2 id="_sorting_by_covering_index"><span>2.3. </span> Sorting By Covering Index</h2>

<p>
If a covering index can be used for a query, then the multiple rowid lookups
can be avoided and the cost of the query drops dramatically.
</p>

<a name='fig19'></a>
<p><center>
<img src="images/qp/obfruitidx4.gif" alt="figure 19"><br>
Figure 19: Sorting With A Covering Index
</center></p>


<p>
With a covering index, SQLite can simply walk the index from one end to the
other and deliver the output in time proportional to N and without having
allocate a large buffer to hold the result set.
</p>

<h1 id="_searching_and_sorting_at_the_same_time"><span>3. </span> Searching And Sorting At The Same Time</h1>

<p>
The previous discussion has treated searching and sorting as separate
topics.  But in practice, it is often the case that one wants to search
and sort at the same time.  Fortunately, it is possible to do this
using a single index.
</p>

<h2 id="_searching_and_sorting_with_a_multi_column_index"><span>3.1. </span> Searching And Sorting With A Multi-Column Index</h2>

<p>
Suppose we want to find the prices of all kinds of oranges sorted in
order of the state where they are grown.  The query is this:
</p>

<center><table><tr><td><pre>
SELECT price FROM fruitforsale WHERE fruit='Orange' ORDER BY state
</pre></table></center>


<p>
The query contains both a search restriction in the WHERE clause
and a sort order in the ORDER BY clause.  Both the search and the sort
can be accomplished at the same time using the two-column index Idx3.
</p>

<a name='fig20'></a>
<p><center>
<img src="images/qp/fruitobstate0.gif" alt="figure 20"><br>
Figure 20: Search And Sort By Multi-Column Index
</center></p>


<p>
The query does a binary search on the index to find the subset of rows
that have fruit='Orange'.  (Because the fruit column is the left-most column
of the index and the rows of the index are in sorted order, all such 
rows will be adjacent.)  Then it scans the matching index rows from top to
bottom to get the rowids for the original table, and for each rowid does
a binary search on the original table to find the price.
</p>

<p>
You will notice that there is no "sort" box anywhere in the above diagram.
The ORDER BY clause of the query has become a no-op.  No sorting has to be
done here because the output order is by the state column and the state
column also happens to be the first column after the fruit column in the
index.  So, if we scan entries of the index that have the same value for
the fruit column from top to bottom, those index entries are guaranteed to
be ordered by the state column.
</p>

<a name="srchsortcovidx"></a>

<h2 id="_searching_and_sorting_with_a_covering_index"><span>3.2. </span> Searching And Sorting With A Covering Index</h2>

<p>
A <a href="queryplanner.html#covidx">covering index</a> can also be used to search and sort at the same time.
Consider the following:
</p>

<center><table><tr><td><pre>
SELECT * FROM fruitforsale WHERE fruit='Orange' ORDER BY state
</pre></table></center>
<a name='fig21'></a>
<p><center>
<img src="images/qp/fruitobstate.gif" alt="figure 21"><br>
Figure 21: Search And Sort By Covering Index
</center></p>


<p>
As before, SQLite does single binary search
for the range of rows in the covering
index that satisfy the WHERE clause, the scans that range from top to 
bottom to get the desired results.  
The rows that satisfy the WHERE clause are guaranteed to be adjacent
since the WHERE clause is an equality constraint on the left-most
column of the index.  And by scanning the matching index rows from
top to bottom, the output is guaranteed to be ordered by state since the
state column is the very next column to the right of the fruit column.
And so the resulting query is very efficient.
</p>

<p>
SQLite can pull a similar trick for a descending ORDER BY:
</p>

<center><table><tr><td><pre>
SELECT * FROM fruitforsale WHERE fruit='Orange' ORDER BY state DESC
</pre></table></center>


<p>
The same basic algorithm is followed, except this time the matching rows
of the index are scanned from bottom to top instead of from top to bottom,
so that the states will appear in descending order.
</p>

<a name="partialsort"></a>

<h2 id="_partial_sorting_using_an_index_a_k_a_block_sorting_"><span>3.3. </span> Partial Sorting Using An Index (a.k.a. Block Sorting)</h2>

<p>
Sometimes only part of an ORDER BY clause can be satisfied using indexes.
Consider, for example, the following query:
</p>

<center><table><tr><td><pre>
SELECT * FROM fruitforsale ORDER BY fruit, price
</pre></table></center>


<p>
If the covering index is used for the scan, the "fruit" column will appear
naturally in the correct order, but when there are two or more rows with
the same fruit, the price might be out of order.  When this occurs, SQLite
does many small sorts, one sort for each distinct value of fruit, rather
than one large sort.  Figure 22 below illustrates the concept.
</p>

<a name='fig22'></a>
<p><center>
<img src="images/qp/partial-sort.gif" alt="figure 22"><br>
Figure 22: Partial Sort By Index
</center></p>


<p>
In the example, instead of a single sort of 7 elements, there
are 5 sorts of one-element each and 1 sort of 2 elements for the
case of fruit=='Orange'.

</p><p>
The advantages of doing many smaller sorts instead of a single large sort
are:
</p><ol>
<li>Multiple small sorts collectively use fewer CPU cycles than a single
    large sort.
</li><li>Each small sort is run independently, meaning that much less information
    needs to be kept in temporary storage at any one time.
</li><li>Those columns of the ORDER BY that are already in the correct order
    due to indexes can be omitted from the sort key, further reducing
    storage requirements and CPU time.
</li><li>Output rows can be returned to the application as each small sort
    completes, and well before the table scan is complete.
</li><li>If a LIMIT clause is present, it might be possible to avoid scanning
    the entire table.
</li></ol>

<p>Because of these advantages, SQLite always tries to do a partial sort using an
index even if a complete sort by index is not possible.</p>

<h1 id="_without_rowid_tables"><span>4. </span> WITHOUT ROWID tables</h1>

<p>
The basic principals described above apply to both ordinary rowid tables
and <a href="withoutrowid.html">WITHOUT ROWID</a> tables.
The only difference is that the rowid column that serves as the key for
tables and that appears as the right-most term in indexes is replaced by
the PRIMARY KEY.
</p>
<p align="center"><small><i>This page last modified on  <a href="https://sqlite.org/docsrc/honeypot" id="mtimelink"  data-href="https://sqlite.org/docsrc/finfo/pages/queryplanner.in?m=baee8e6b0d">2022-10-26 13:30:36</a> UTC </small></i></p>