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452 lines
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452 lines
18 KiB
Plaintext
<!-- $PostgreSQL: pgsql/doc/src/sgml/planstats.sgml,v 1.9 2007/12/28 21:03:31 tgl Exp $ -->
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<chapter id="planner-stats-details">
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<title>How the Planner Uses Statistics</title>
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<para>
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This chapter builds on the material covered in <xref
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linkend="using-explain"> and <xref linkend="planner-stats"> to show some
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additional details about how the planner uses the
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system statistics to estimate the number of rows each part of a query might
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return. This is a significant part of the planning process,
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providing much of the raw material for cost calculation.
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</para>
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<para>
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The intent of this chapter is not to document the code in detail,
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but to present an overview of how it works.
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This will perhaps ease the learning curve for someone who subsequently
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wishes to read the code.
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</para>
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<sect1 id="row-estimation-examples">
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<title>Row Estimation Examples</title>
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<indexterm zone="row-estimation-examples">
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<primary>row estimation</primary>
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<secondary>planner</secondary>
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</indexterm>
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<para>
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The examples shown below use tables in the <productname>PostgreSQL</>
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regression test database.
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The outputs shown are taken from version 8.3.
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The behavior of earlier (or later) versions might vary.
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Note also that since <command>ANALYZE</> uses random sampling
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while producing statistics, the results will change slightly after
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any new <command>ANALYZE</>.
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</para>
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<para>
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Let's start with a very simple query:
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<programlisting>
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EXPLAIN SELECT * FROM tenk1;
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QUERY PLAN
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-------------------------------------------------------------
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Seq Scan on tenk1 (cost=0.00..458.00 rows=10000 width=244)
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</programlisting>
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How the planner determines the cardinality of <structname>tenk1</structname>
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is covered in <xref linkend="planner-stats">, but is repeated here for
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completeness. The number of pages and rows is looked up in
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<structname>pg_class</structname>:
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<programlisting>
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SELECT relpages, reltuples FROM pg_class WHERE relname = 'tenk1';
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relpages | reltuples
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----------+-----------
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358 | 10000
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</programlisting>
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These numbers are current as of the last <command>VACUUM</> or
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<command>ANALYZE</> on the table. The planner then fetches the
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actual current number of pages in the table (this is a cheap operation,
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not requiring a table scan). If that is different from
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<structfield>relpages</structfield> then
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<structfield>reltuples</structfield> is scaled accordingly to
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arrive at a current number-of-rows estimate. In this case the values
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are correct so the rows estimate is the same as
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<structfield>reltuples</structfield>.
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</para>
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<para>
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Let's move on to an example with a range condition in its
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<literal>WHERE</literal> clause:
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<programlisting>
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EXPLAIN SELECT * FROM tenk1 WHERE unique1 < 1000;
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QUERY PLAN
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--------------------------------------------------------------------------------
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Bitmap Heap Scan on tenk1 (cost=24.06..394.64 rows=1007 width=244)
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Recheck Cond: (unique1 < 1000)
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-> Bitmap Index Scan on tenk1_unique1 (cost=0.00..23.80 rows=1007 width=0)
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Index Cond: (unique1 < 1000)
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</programlisting>
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The planner examines the <literal>WHERE</literal> clause condition
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and looks up the selectivity function for the operator
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<literal><</literal> in <structname>pg_operator</structname>.
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This is held in the column <structfield>oprrest</structfield>,
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and the entry in this case is <function>scalarltsel</function>.
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The <function>scalarltsel</function> function retrieves the histogram for
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<structfield>unique1</structfield> from
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<structname>pg_statistics</structname>. For manual queries it is more
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convenient to look in the simpler <structname>pg_stats</structname>
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view:
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<programlisting>
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SELECT histogram_bounds FROM pg_stats
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WHERE tablename='tenk1' AND attname='unique1';
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histogram_bounds
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------------------------------------------------------
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{0,993,1997,3050,4040,5036,5957,7057,8029,9016,9995}
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</programlisting>
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Next the fraction of the histogram occupied by <quote>< 1000</quote>
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is worked out. This is the selectivity. The histogram divides the range
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into equal frequency buckets, so all we have to do is locate the bucket
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that our value is in and count <emphasis>part</emphasis> of it and
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<emphasis>all</emphasis> of the ones before. The value 1000 is clearly in
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the second bucket (993-1997). Assuming a linear distribution of
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values inside each bucket, we can calculate the selectivity as:
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<programlisting>
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selectivity = (1 + (1000 - bucket[2].min)/(bucket[2].max - bucket[2].min))/num_buckets
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= (1 + (1000 - 993)/(1997 - 993))/10
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= 0.100697
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</programlisting>
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that is, one whole bucket plus a linear fraction of the second, divided by
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the number of buckets. The estimated number of rows can now be calculated as
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the product of the selectivity and the cardinality of
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<structname>tenk1</structname>:
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<programlisting>
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rows = rel_cardinality * selectivity
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= 10000 * 0.100697
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= 1007 (rounding off)
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</programlisting>
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</para>
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<para>
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Next let's consider an example with an equality condition in its
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<literal>WHERE</literal> clause:
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<programlisting>
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EXPLAIN SELECT * FROM tenk1 WHERE stringu1 = 'CRAAAA';
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QUERY PLAN
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----------------------------------------------------------
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Seq Scan on tenk1 (cost=0.00..483.00 rows=30 width=244)
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Filter: (stringu1 = 'CRAAAA'::name)
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</programlisting>
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Again the planner examines the <literal>WHERE</literal> clause condition
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and looks up the selectivity function for <literal>=</literal>, which is
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<function>eqsel</function>. For equality estimation the histogram is
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not useful; instead the list of <firstterm>most
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common values</> (<acronym>MCV</acronym>s) is used to determine the
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selectivity. Let's have a look at the MCVs, with some additional columns
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that will be useful later:
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<programlisting>
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SELECT null_frac, n_distinct, most_common_vals, most_common_freqs FROM pg_stats
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WHERE tablename='tenk1' AND attname='stringu1';
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null_frac | 0
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n_distinct | 676
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most_common_vals | {EJAAAA,BBAAAA,CRAAAA,FCAAAA,FEAAAA,GSAAAA,JOAAAA,MCAAAA,NAAAAA,WGAAAA}
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most_common_freqs | {0.00333333,0.003,0.003,0.003,0.003,0.003,0.003,0.003,0.003,0.003}
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</programlisting>
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Since <literal>CRAAAA</> appears in the list of MCVs, the selectivity is
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merely the corresponding entry in the list of most common frequencies
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(<acronym>MCF</acronym>s):
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<programlisting>
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selectivity = mcf[3]
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= 0.003
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</programlisting>
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As before, the estimated number of rows is just the product of this with the
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cardinality of <structname>tenk1</structname>:
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<programlisting>
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rows = 10000 * 0.003
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= 30
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</programlisting>
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</para>
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<para>
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Now consider the same query, but with a constant that is not in the
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<acronym>MCV</acronym> list:
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<programlisting>
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EXPLAIN SELECT * FROM tenk1 WHERE stringu1 = 'xxx';
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QUERY PLAN
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----------------------------------------------------------
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Seq Scan on tenk1 (cost=0.00..483.00 rows=15 width=244)
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Filter: (stringu1 = 'xxx'::name)
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</programlisting>
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This is quite a different problem: how to estimate the selectivity when the
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value is <emphasis>not</emphasis> in the <acronym>MCV</acronym> list.
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The approach is to use the fact that the value is not in the list,
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combined with the knowledge of the frequencies for all of the
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<acronym>MCV</acronym>s:
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<programlisting>
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selectivity = (1 - sum(mvf))/(num_distinct - num_mcv)
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= (1 - (0.00333333 + 0.003 + 0.003 + 0.003 + 0.003 + 0.003 +
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0.003 + 0.003 + 0.003 + 0.003))/(676 - 10)
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= 0.0014559
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</programlisting>
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That is, add up all the frequencies for the <acronym>MCV</acronym>s and
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subtract them from one, then
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divide by the number of <emphasis>other</emphasis> distinct values.
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This amounts to assuming that the fraction of the column that is not any
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of the MCVs is evenly distributed among all the other distinct values.
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Notice that there are no null values so we don't have to worry about those
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(otherwise we'd subtract the null fraction from the numerator as well).
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The estimated number of rows is then calculated as usual:
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<programlisting>
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rows = 10000 * 0.0014559
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= 15 (rounding off)
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</programlisting>
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</para>
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<para>
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The previous example with <literal>unique1 < 1000</> was an
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oversimplification of what <function>scalarltsel</function> really does;
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now that we have seen an example of the use of MCVs, we can fill in some
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more detail. The example was correct as far as it went, because since
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<structfield>unique1</> is a unique column it has no MCVs (obviously, no
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value is any more common than any other value). For a non-unique
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column, there will normally be both a histogram and an MCV list, and
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<emphasis>the histogram does not include the portion of the column
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population represented by the MCVs</>. We do things this way because
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it allows more precise estimation. In this situation
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<function>scalarltsel</function> directly applies the condition (e.g.,
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<quote>< 1000</>) to each value of the MCV list, and adds up the
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frequencies of the MCVs for which the condition is true. This gives
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an exact estimate of the selectivity within the portion of the table
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that is MCVs. The histogram is then used in the same way as above
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to estimate the selectivity in the portion of the table that is not
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MCVs, and then the two numbers are combined to estimate the overall
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selectivity. For example, consider
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<programlisting>
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EXPLAIN SELECT * FROM tenk1 WHERE stringu1 < 'IAAAAA';
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QUERY PLAN
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------------------------------------------------------------
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Seq Scan on tenk1 (cost=0.00..483.00 rows=3077 width=244)
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Filter: (stringu1 < 'IAAAAA'::name)
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</programlisting>
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We already saw the MCV information for <structfield>stringu1</>,
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and here is its histogram:
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<programlisting>
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SELECT histogram_bounds FROM pg_stats
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WHERE tablename='tenk1' AND attname='stringu1';
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histogram_bounds
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--------------------------------------------------------------------------------
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{AAAAAA,CQAAAA,FRAAAA,IBAAAA,KRAAAA,NFAAAA,PSAAAA,SGAAAA,VAAAAA,XLAAAA,ZZAAAA}
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</programlisting>
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Checking the MCV list, we find that the condition <literal>stringu1 <
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'IAAAAA'</> is satisfied by the first six entries and not the last four,
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so the selectivity within the MCV part of the population is
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<programlisting>
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selectivity = sum(relevant mvfs)
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= 0.00333333 + 0.003 + 0.003 + 0.003 + 0.003 + 0.003
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= 0.01833333
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</programlisting>
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Summing all the MCFs also tells us that the total fraction of the
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population represented by MCVs is 0.03033333, and therefore the
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fraction represented by the histogram is 0.96966667 (again, there
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are no nulls, else we'd have to exclude them here). We can see
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that the value <literal>IAAAAA</> falls nearly at the end of the
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third histogram bucket. Using some rather cheesy assumptions
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about the frequency of different characters, the planner arrives
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at the estimate 0.298387 for the portion of the histogram population
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that is less than <literal>IAAAAA</>. We then combine the estimates
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for the MCV and non-MCV populations:
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<programlisting>
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selectivity = mcv_selectivity + histogram_selectivity * histogram_fraction
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= 0.01833333 + 0.298387 * 0.96966667
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= 0.307669
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rows = 10000 * 0.307669
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= 3077 (rounding off)
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</programlisting>
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In this particular example, the correction from the MCV list is fairly
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small, because the column distribution is actually quite flat (the
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statistics showing these particular values as being more common than
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others are mostly due to sampling error). In a more typical case where
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some values are significantly more common than others, this complicated
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process gives a useful improvement in accuracy because the selectivity
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for the most common values is found exactly.
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</para>
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<para>
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Now let's consider a case with more than one
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condition in the <literal>WHERE</literal> clause:
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<programlisting>
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EXPLAIN SELECT * FROM tenk1 WHERE unique1 < 1000 AND stringu1 = 'xxx';
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QUERY PLAN
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--------------------------------------------------------------------------------
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Bitmap Heap Scan on tenk1 (cost=23.80..396.91 rows=1 width=244)
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Recheck Cond: (unique1 < 1000)
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Filter: (stringu1 = 'xxx'::name)
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-> Bitmap Index Scan on tenk1_unique1 (cost=0.00..23.80 rows=1007 width=0)
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Index Cond: (unique1 < 1000)
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</programlisting>
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The planner assumes that the two conditions are independent, so that
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the individual selectivities of the clauses can be multiplied together:
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<programlisting>
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selectivity = selectivity(unique1 < 1000) * selectivity(stringu1 = 'xxx')
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= 0.100697 * 0.0014559
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= 0.0001466
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rows = 10000 * 0.0001466
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= 1 (rounding off)
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</programlisting>
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Notice that the number of rows estimated to be returned from the bitmap
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index scan reflects only the condition used with the index; this is
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important since it affects the cost estimate for the subsequent heap
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fetches.
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</para>
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<para>
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Finally we will examine a query that involves a join:
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<programlisting>
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EXPLAIN SELECT * FROM tenk1 t1, tenk2 t2
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WHERE t1.unique1 < 50 AND t1.unique2 = t2.unique2;
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QUERY PLAN
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--------------------------------------------------------------------------------------
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Nested Loop (cost=4.64..456.23 rows=50 width=488)
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-> Bitmap Heap Scan on tenk1 t1 (cost=4.64..142.17 rows=50 width=244)
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Recheck Cond: (unique1 < 50)
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-> Bitmap Index Scan on tenk1_unique1 (cost=0.00..4.63 rows=50 width=0)
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Index Cond: (unique1 < 50)
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-> Index Scan using tenk2_unique2 on tenk2 t2 (cost=0.00..6.27 rows=1 width=244)
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Index Cond: (t2.unique2 = t1.unique2)
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</programlisting>
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The restriction on <structname>tenk1</structname>,
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<literal>unique1 < 50</literal>,
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is evaluated before the nested-loop join.
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This is handled analogously to the previous range example. This time the
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value 50 falls into the first bucket of the
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<structfield>unique1</structfield> histogram:
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<programlisting>
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selectivity = (0 + (50 - bucket[1].min)/(bucket[1].max - bucket[1].min))/num_buckets
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= (0 + (50 - 0)/(993 - 0))/10
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= 0.005035
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rows = 10000 * 0.005035
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= 50 (rounding off)
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</programlisting>
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The restriction for the join is <literal>t2.unique2 = t1.unique2</>.
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The operator is just
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our familiar <literal>=</literal>, however the selectivity function is
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obtained from the <structfield>oprjoin</structfield> column of
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<structname>pg_operator</structname>, and is <function>eqjoinsel</function>.
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<function>eqjoinsel</function> looks up the statistical information for both
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<structname>tenk2</structname> and <structname>tenk1</structname>:
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<programlisting>
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SELECT tablename, null_frac,n_distinct, most_common_vals FROM pg_stats
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WHERE tablename IN ('tenk1', 'tenk2') AND attname='unique2';
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tablename | null_frac | n_distinct | most_common_vals
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-----------+-----------+------------+------------------
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tenk1 | 0 | -1 |
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tenk2 | 0 | -1 |
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</programlisting>
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In this case there is no <acronym>MCV</acronym> information for
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<structfield>unique2</structfield> because all the values appear to be
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unique, so we use an algorithm that relies only on the number of
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distinct values for both relations together with their null fractions:
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<programlisting>
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selectivity = (1 - null_frac1) * (1 - null_frac2) * min(1/num_distinct1, 1/num_distinct2)
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= (1 - 0) * (1 - 0) / max(10000, 10000)
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= 0.0001
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</programlisting>
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This is, subtract the null fraction from one for each of the relations,
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and divide by the maximum of the numbers of distinct values.
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The number of rows
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that the join is likely to emit is calculated as the cardinality of the
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Cartesian product of the two inputs, multiplied by the
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selectivity:
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<programlisting>
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rows = (outer_cardinality * inner_cardinality) * selectivity
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= (50 * 10000) * 0.0001
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= 50
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</programlisting>
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</para>
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<para>
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Had there been MCV lists for the two columns,
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<function>eqjoinsel</function> would have used direct comparison of the MCV
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lists to determine the join selectivity within the part of the column
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populations represented by the MCVs. The estimate for the remainder of the
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populations follows the same approach shown here.
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</para>
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<para>
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Notice that we showed <literal>inner_cardinality</> as 10000, that is,
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the unmodified size of <structname>tenk2</>. It might appear from
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inspection of the <command>EXPLAIN</> output that the estimate of
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join rows comes from 50 * 1, that is, the number of outer rows times
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the estimated number of rows obtained by each inner indexscan on
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<structname>tenk2</>. But this is not the case: the join relation size
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is estimated before any particular join plan has been considered. If
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everything is working well then the two ways of estimating the join
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size will produce about the same answer, but due to roundoff error and
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other factors they sometimes diverge significantly.
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</para>
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<para>
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For those interested in further details, estimation of the size of
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a table (before any <literal>WHERE</> clauses) is done in
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<filename>src/backend/optimizer/util/plancat.c</filename>. The generic
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logic for clause selectivities is in
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<filename>src/backend/optimizer/path/clausesel.c</filename>. The
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operator-specific selectivity functions are mostly found
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in <filename>src/backend/utils/adt/selfuncs.c</filename>.
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</para>
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</sect1>
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</chapter>
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