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I have a DB schema that is partionned on time stamp field, each partition includes 155 time stamps unique vlaues and it is 1.5 GB in size. the schema is very simple and includes time stamp, object id and additional fields (no foreign keys no joins). the primary key is the time stamp and object id field.

now the following query takes ~50 seconds to execute

SELECT c_aggregated_data_10_minutes */ 
    from_time,
    object_id,
    object_type,
    latencies_ttlbsec_sum,
    usage_hits_total
FROM
    metric_store.lc_aggregated_data_master_10_minutes
WHERE
    object_id in ( list of ~100 ids) AND 
    from_time >= 1351602600 AND 
    from_time <  1351688400

the time span in the condition covers 144 time points

the execution plan is as follows:

"Result  (cost=0.00..279041.19 rows=68274 width=24)"
"  ->  Append  (cost=0.00..279041.19 rows=68274 width=24)"
"        ->  Seq Scan on lc_aggregated_data_master_10_minutes  (cost=0.00..0.00 rows=1 width=24)"
"              Filter: ((from_time >= 1351602600) AND (from_time < 1351688400) AND (object_id = ANY ('{258453,260435,259490,262254,261341,445607,263218,447674,446803,448540,9532,2071,5232,2429532,246502,3939,244000,241179,236971,254544,252928,250982,248878,257377,5893,256092,5707,2986,733,7765,3836,7850,2885,100,9744,4435,10492,2441779,573255,8105,993,6004,5052,7581,15,10171,7363,10381,822,4340,5616,2673,2174,10696,7028,10066,8845,10595,2499,3184,6325,2280,10278,519,8020,1504,3081,7935,3741,4235,3535,5428,6218,7472,567771,568316,568862,569411,8954,570517,569972,571619,571062,572710,572165,9862,1710,1875,6541,2397,205,4756,2435059,4859,562859,563404,426,562308,6434,8738,4038,567226,566681,7260,566130,565584,8628,565039,564494,2492165,563949,1286,8307,5141,9308,1080,6824,6640,9961,518277,519721,556424,178509,555067,160902,559587,558254,522427,520857,524956,523659,229743,3379,222533,215285,208058,200756,193533,186251,5327,630,505950,7680,3632,2491614,517196,509766,510971,507374,508381,1593,4965,514786,9425,515944,512018,513537,1974,1377,9128,4129,5529,503659,504806,471537,495721,1201,496761,497870,499285,500262,3284,501341,502624,309,6733,4639,6915,470231,467992,469134,465660,466675,463127,8196,464183,6107,461061,462081,2790,459792,9043,455646,456791,457747,458721,451617,452556,453738,454718,9213,9643,8414,449680,450608}'::integer[])))"
"        ->  Bitmap Heap Scan on lc_aggregated_data_10_minutes_from_1351510800 lc_aggregated_data_master_10_minutes  (cost=1444.26..174220.14 rows=42626 width=24)"
"              Recheck Cond: ((from_time >= 1351602600) AND (from_time < 1351688400))"
"              Filter: (object_id = ANY ('{258453,260435,259490,262254,261341,445607,263218,447674,446803,448540,9532,2071,5232,2429532,246502,3939,244000,241179,236971,254544,252928,250982,248878,257377,5893,256092,5707,2986,733,7765,3836,7850,2885,100,9744,4435,10492,2441779,573255,8105,993,6004,5052,7581,15,10171,7363,10381,822,4340,5616,2673,2174,10696,7028,10066,8845,10595,2499,3184,6325,2280,10278,519,8020,1504,3081,7935,3741,4235,3535,5428,6218,7472,567771,568316,568862,569411,8954,570517,569972,571619,571062,572710,572165,9862,1710,1875,6541,2397,205,4756,2435059,4859,562859,563404,426,562308,6434,8738,4038,567226,566681,7260,566130,565584,8628,565039,564494,2492165,563949,1286,8307,5141,9308,1080,6824,6640,9961,518277,519721,556424,178509,555067,160902,559587,558254,522427,520857,524956,523659,229743,3379,222533,215285,208058,200756,193533,186251,5327,630,505950,7680,3632,2491614,517196,509766,510971,507374,508381,1593,4965,514786,9425,515944,512018,513537,1974,1377,9128,4129,5529,503659,504806,471537,495721,1201,496761,497870,499285,500262,3284,501341,502624,309,6733,4639,6915,470231,467992,469134,465660,466675,463127,8196,464183,6107,461061,462081,2790,459792,9043,455646,456791,457747,458721,451617,452556,453738,454718,9213,9643,8414,449680,450608}'::integer[]))"
"              ->  Bitmap Index Scan on lc_aggregated_data_10_minutes_from_1351510800_pkey  (cost=0.00..1433.60 rows=66382 width=0)"
"                    Index Cond: ((from_time >= 1351602600) AND (from_time < 1351688400))"
"        ->  Bitmap Heap Scan on lc_aggregated_data_10_minutes_from_1351630800 lc_aggregated_data_master_10_minutes  (cost=866.98..104821.05 rows=25647 width=24)"
"              Recheck Cond: ((from_time >= 1351602600) AND (from_time < 1351688400))"
"              Filter: (object_id = ANY ('{258453,260435,259490,262254,261341,445607,263218,447674,446803,448540,9532,2071,5232,2429532,246502,3939,244000,241179,236971,254544,252928,250982,248878,257377,5893,256092,5707,2986,733,7765,3836,7850,2885,100,9744,4435,10492,2441779,573255,8105,993,6004,5052,7581,15,10171,7363,10381,822,4340,5616,2673,2174,10696,7028,10066,8845,10595,2499,3184,6325,2280,10278,519,8020,1504,3081,7935,3741,4235,3535,5428,6218,7472,567771,568316,568862,569411,8954,570517,569972,571619,571062,572710,572165,9862,1710,1875,6541,2397,205,4756,2435059,4859,562859,563404,426,562308,6434,8738,4038,567226,566681,7260,566130,565584,8628,565039,564494,2492165,563949,1286,8307,5141,9308,1080,6824,6640,9961,518277,519721,556424,178509,555067,160902,559587,558254,522427,520857,524956,523659,229743,3379,222533,215285,208058,200756,193533,186251,5327,630,505950,7680,3632,2491614,517196,509766,510971,507374,508381,1593,4965,514786,9425,515944,512018,513537,1974,1377,9128,4129,5529,503659,504806,471537,495721,1201,496761,497870,499285,500262,3284,501341,502624,309,6733,4639,6915,470231,467992,469134,465660,466675,463127,8196,464183,6107,461061,462081,2790,459792,9043,455646,456791,457747,458721,451617,452556,453738,454718,9213,9643,8414,449680,450608}'::integer[]))"
"              ->  Bitmap Index Scan on lc_aggregated_data_10_minutes_from_1351630800_pkey  (cost=0.00..860.56 rows=39940 width=0)"
"                    Index Cond: ((from_time >= 1351602600) AND (from_time < 1351688400))"

how can I speed the execution of this query (get it executed in less than 10 seconds)

share|improve this question
1  
Please update with plan output of explain (analyze, buffers) in preference to plain explain. What version of postgres are you using? –  dbenhur Oct 31 '12 at 20:53
1  
And (as always) add your version of Postgres and the table definition. So we can check whether data types fit (among other things). –  Erwin Brandstetter Oct 31 '12 at 21:29
    
How many distinct IDs are present in the table? And 144 of 155 time points covers ~ 90 % of the table, right? Or does the excluded part of the table hold more rows? Are the from_time values in your WHERE clause variable or constant (always the same time window)? Do you have autovacuum running properly / Does running VACUUM FULL ANALYZE change query execution time substantially? –  Erwin Brandstetter Oct 31 '12 at 21:54
    
Please read stackoverflow.com/tags/postgresql-performance/info for advice on this kind of problem and for performance posts. –  Craig Ringer Oct 31 '12 at 23:02

1 Answer 1

Create an index on the id or make the primary key with the id first (id, ts) in instead of (ts, id). BTW the time stamp field is a unix timestamp not to be confounded with postgresql's timestamp data type.

share|improve this answer
    
yes , I tried flipping the primary key order to id,ts but it didn't help.execution time remained the more or less the same. –  moshe Oct 31 '12 at 15:59

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