SlideShare a Scribd company logo
The PostgreSQL Query Planner Robert Haas PostgreSQL East 2010
Why Does My Query Need a Plan? SQL is a declarative language.
In other words, a SQL query is not a program.
No control flow statements (e.g. for, while) and no way to control order of operations.
SQL describes results, not process.
Why Didn't The Planner Do It My Way? Maybe your way is actually slower, or
Maybe you gave the planner bad information, or
Maybe the query planner really did goof.
Related question: How do I force the planner to use my index?
Query Planning Make queries run fast. Minimize disk I/O.
Prefer sequential I/O to random I/O.
Minimize CPU processing. Don't use too much memory in the process.
Deliver correct results.
Query Planner Decisions Access strategy for each table. Sequential Scan, Index Scan, Bitmap Index Scan. Join strategy. Join order.
Join strategy: nested loop, merge join, hash join.
Inner vs. outer. Aggregation strategy. Plain, sorted, hashed.
Table Access Strategies Sequential Scan (Seq Scan) Read every row in the table. Index Scan or Bitmap Index Scan Read only part of the table by using the index to skip uninteresting parts.
Index scan reads index and table in alternation.
Bitmap index scan reads index first, populating bitmap, and then reads table in sequential order.
Sequential Scan Always works – no need to create indices in advance.
Doesn't require reading the index, which has both I/O and CPU cost.
Best way to access very small tables.
Usually the best way to access all or nearly the rows in a table.
Index Scan Potentially huge performance gain when reading only a small fraction of rows in a large table.
Only table access method that can return rows in sorted order – very useful in combination with LIMIT.
Random I/O against base table!
Bitmap Index Scan Scans all index rows before examining base table, populating a TID bitmap.
Table I/O is sequential, with skips; results in physical order.
Can efficiently combine data multiple indices – TID bitmap can handle boolean AND and OR operations.
Handles LIMIT poorly.
Join Planning Fixing the join order and join strategy is the “hard part” of query planning.
# of possibilities grows exponentially with number of tables.

More Related Content

PDF
Delta Lake: Optimizing Merge
PDF
Understanding Query Plans and Spark UIs
PDF
Parquet performance tuning: the missing guide
PDF
Deep Dive into Spark SQL with Advanced Performance Tuning with Xiao Li & Wenc...
PDF
PostgreSql query planning and tuning
PPTX
Optimizing Apache Spark SQL Joins
PPTX
A Deep Dive into Spark SQL's Catalyst Optimizer with Yin Huai
PDF
Apache Spark Core – Practical Optimization
Delta Lake: Optimizing Merge
Understanding Query Plans and Spark UIs
Parquet performance tuning: the missing guide
Deep Dive into Spark SQL with Advanced Performance Tuning with Xiao Li & Wenc...
PostgreSql query planning and tuning
Optimizing Apache Spark SQL Joins
A Deep Dive into Spark SQL's Catalyst Optimizer with Yin Huai
Apache Spark Core – Practical Optimization

What's hot (20)

PDF
Efficient Data Storage for Analytics with Parquet 2.0 - Hadoop Summit 2014
PDF
Fine Tuning and Enhancing Performance of Apache Spark Jobs
PDF
Deep dive into PostgreSQL statistics.
PDF
Building a SIMD Supported Vectorized Native Engine for Spark SQL
PDF
Physical Plans in Spark SQL
PDF
PostgreSQL Deep Internal
PPTX
Apache Spark Architecture
PDF
Oracle db performance tuning
PDF
InfluxDB IOx Tech Talks: Query Engine Design and the Rust-Based DataFusion in...
PDF
Iceberg: a fast table format for S3
PDF
Apache Iceberg - A Table Format for Hige Analytic Datasets
PDF
Optimizing Delta/Parquet Data Lakes for Apache Spark
PDF
Postgresql database administration volume 1
PDF
InfluxDB IOx Tech Talks: Intro to the InfluxDB IOx Read Buffer - A Read-Optim...
PDF
HBase Storage Internals
PDF
Understanding PostgreSQL LW Locks
PDF
Tuning Apache Spark for Large-Scale Workloads Gaoxiang Liu and Sital Kedia
PPTX
Apache Arrow Flight Overview
PPTX
Query Optimization in SQL Server
PDF
Indexes in postgres
Efficient Data Storage for Analytics with Parquet 2.0 - Hadoop Summit 2014
Fine Tuning and Enhancing Performance of Apache Spark Jobs
Deep dive into PostgreSQL statistics.
Building a SIMD Supported Vectorized Native Engine for Spark SQL
Physical Plans in Spark SQL
PostgreSQL Deep Internal
Apache Spark Architecture
Oracle db performance tuning
InfluxDB IOx Tech Talks: Query Engine Design and the Rust-Based DataFusion in...
Iceberg: a fast table format for S3
Apache Iceberg - A Table Format for Hige Analytic Datasets
Optimizing Delta/Parquet Data Lakes for Apache Spark
Postgresql database administration volume 1
InfluxDB IOx Tech Talks: Intro to the InfluxDB IOx Read Buffer - A Read-Optim...
HBase Storage Internals
Understanding PostgreSQL LW Locks
Tuning Apache Spark for Large-Scale Workloads Gaoxiang Liu and Sital Kedia
Apache Arrow Flight Overview
Query Optimization in SQL Server
Indexes in postgres
Ad

Viewers also liked (20)

PDF
How the Postgres Query Optimizer Works
 
ODP
Basic Query Tuning Primer
PDF
pg_proctab: Accessing System Stats in PostgreSQL
PDF
PostgreSQL, Extensible to the Nth Degree: Functions, Languages, Types, Rules,...
PDF
Not Just UNIQUE: Generalized Index Constraints
PDF
Mastering PostgreSQL Administration
PDF
PostgreSQL High Availability via SLONY and PG POOL II
PPT
Building tungsten-clusters-with-postgre sql-hot-standby-and-streaming-replica...
PDF
PDF
Backup and-recovery2
PDF
Implementing the Future of PostgreSQL Clustering with Tungsten
PDF
Go replicator
PDF
Replication using PostgreSQL Replicator
PDF
configuring a warm standby, the easy way
ODP
Python utilities for data presentation
PDF
A Practical Multi-Tenant Cluster
PDF
Temporal Data
PDF
Elephant Roads: a tour of Postgres forks
PDF
Howdah - An Application using Pylons, PostgreSQL, Simpycity and Exceptable
How the Postgres Query Optimizer Works
 
Basic Query Tuning Primer
pg_proctab: Accessing System Stats in PostgreSQL
PostgreSQL, Extensible to the Nth Degree: Functions, Languages, Types, Rules,...
Not Just UNIQUE: Generalized Index Constraints
Mastering PostgreSQL Administration
PostgreSQL High Availability via SLONY and PG POOL II
Building tungsten-clusters-with-postgre sql-hot-standby-and-streaming-replica...
Backup and-recovery2
Implementing the Future of PostgreSQL Clustering with Tungsten
Go replicator
Replication using PostgreSQL Replicator
configuring a warm standby, the easy way
Python utilities for data presentation
A Practical Multi-Tenant Cluster
Temporal Data
Elephant Roads: a tour of Postgres forks
Howdah - An Application using Pylons, PostgreSQL, Simpycity and Exceptable
Ad

Similar to The PostgreSQL Query Planner (20)

PDF
Brad McGehee Intepreting Execution Plans Mar09
PDF
Brad McGehee Intepreting Execution Plans Mar09
PPT
Myth busters - performance tuning 101 2007
PDF
Tech Talk - JPA and Query Optimization - publish
PPTX
GRAPHS, BREADTH FIRST TRAVERSAL AND DEPTH FIRST TRAVERSAL
PDF
Using Netezza Query Plan to Improve Performace
PPTX
Calamities with cardinalities
PDF
zkStudyClub - Lasso/Jolt (Justin Thaler, GWU/a16z)
PPTX
An Introduction to hashing table algorithm
PDF
Don’t optimize my queries, optimize my data!
PPTX
Database Performance Tuning
PPT
The life of a query (oracle edition)
PDF
you will implement some sorting algorithms for arrays and linked lis.pdf
PPTX
Hive query optimization infinity
PPTX
AI&DS_SEVANTHI_DATA STRUCTURES_HASHING.pptx
PPT
Computer notes - Hashing
PPT
Indexing Strategies
PPT
computer notes - Data Structures - 35
PDF
Enhancing Spark SQL Optimizer with Reliable Statistics
Brad McGehee Intepreting Execution Plans Mar09
Brad McGehee Intepreting Execution Plans Mar09
Myth busters - performance tuning 101 2007
Tech Talk - JPA and Query Optimization - publish
GRAPHS, BREADTH FIRST TRAVERSAL AND DEPTH FIRST TRAVERSAL
Using Netezza Query Plan to Improve Performace
Calamities with cardinalities
zkStudyClub - Lasso/Jolt (Justin Thaler, GWU/a16z)
An Introduction to hashing table algorithm
Don’t optimize my queries, optimize my data!
Database Performance Tuning
The life of a query (oracle edition)
you will implement some sorting algorithms for arrays and linked lis.pdf
Hive query optimization infinity
AI&DS_SEVANTHI_DATA STRUCTURES_HASHING.pptx
Computer notes - Hashing
Indexing Strategies
computer notes - Data Structures - 35
Enhancing Spark SQL Optimizer with Reliable Statistics

More from Command Prompt., Inc (12)

PDF
5 Steps to PostgreSQL Performance
PPT
Normalization: A Workshop for Everybody Pt. 2
PPT
Normalization: A Workshop for Everybody Pt. 1
PDF
Integrating PostGIS in Web Applications
PDF
Postgres for MySQL (and other database) people
PDF
Building Grails applications with PostgreSQL
PDF
Not Just UNIQUE: Exclusion Constraints
PDF
pg_proctab: Accessing System Stats in PostgreSQL
PDF
Database Hardware Benchmarking
PDF
Vertically Challenged
PDF
Simpycity and Exceptable
5 Steps to PostgreSQL Performance
Normalization: A Workshop for Everybody Pt. 2
Normalization: A Workshop for Everybody Pt. 1
Integrating PostGIS in Web Applications
Postgres for MySQL (and other database) people
Building Grails applications with PostgreSQL
Not Just UNIQUE: Exclusion Constraints
pg_proctab: Accessing System Stats in PostgreSQL
Database Hardware Benchmarking
Vertically Challenged
Simpycity and Exceptable

The PostgreSQL Query Planner

  • 1. The PostgreSQL Query Planner Robert Haas PostgreSQL East 2010
  • 2. Why Does My Query Need a Plan? SQL is a declarative language.
  • 3. In other words, a SQL query is not a program.
  • 4. No control flow statements (e.g. for, while) and no way to control order of operations.
  • 5. SQL describes results, not process.
  • 6. Why Didn't The Planner Do It My Way? Maybe your way is actually slower, or
  • 7. Maybe you gave the planner bad information, or
  • 8. Maybe the query planner really did goof.
  • 9. Related question: How do I force the planner to use my index?
  • 10. Query Planning Make queries run fast. Minimize disk I/O.
  • 11. Prefer sequential I/O to random I/O.
  • 12. Minimize CPU processing. Don't use too much memory in the process.
  • 14. Query Planner Decisions Access strategy for each table. Sequential Scan, Index Scan, Bitmap Index Scan. Join strategy. Join order.
  • 15. Join strategy: nested loop, merge join, hash join.
  • 16. Inner vs. outer. Aggregation strategy. Plain, sorted, hashed.
  • 17. Table Access Strategies Sequential Scan (Seq Scan) Read every row in the table. Index Scan or Bitmap Index Scan Read only part of the table by using the index to skip uninteresting parts.
  • 18. Index scan reads index and table in alternation.
  • 19. Bitmap index scan reads index first, populating bitmap, and then reads table in sequential order.
  • 20. Sequential Scan Always works – no need to create indices in advance.
  • 21. Doesn't require reading the index, which has both I/O and CPU cost.
  • 22. Best way to access very small tables.
  • 23. Usually the best way to access all or nearly the rows in a table.
  • 24. Index Scan Potentially huge performance gain when reading only a small fraction of rows in a large table.
  • 25. Only table access method that can return rows in sorted order – very useful in combination with LIMIT.
  • 26. Random I/O against base table!
  • 27. Bitmap Index Scan Scans all index rows before examining base table, populating a TID bitmap.
  • 28. Table I/O is sequential, with skips; results in physical order.
  • 29. Can efficiently combine data multiple indices – TID bitmap can handle boolean AND and OR operations.
  • 31. Join Planning Fixing the join order and join strategy is the “hard part” of query planning.
  • 32. # of possibilities grows exponentially with number of tables.
  • 33. When search space is small, planner does a nearly exhaustive search.
  • 34. When search space is too large, planner uses heuristics or GEQO to limit planning time and memory usage.
  • 36. Nested loop with inner index-scan.
  • 39. Each join strategy takes an “outer” relation and an “inner” relation and produces a result relation.
  • 40. Nested Loop Pseudocode for (each outer tuple) for (each inner tuple) if (join condition is met) emit result row; Outer or inner loop could be scanning output of some other join, or a base table. Base table scan could be using an index.
  • 41. Cost is roughly proportional to product of table sizes – bad if BOTH are large.
  • 42. Nested Loop Example #1 SELECT * FROM foo, bar WHERE foo.x = bar.x Nested Loop Join Filter: (foo.x = bar.x) -> Seq Scan on bar -> Materialize -> Seq Scan on foo This might be very slow!
  • 43. Nested Loop Example #2 SELECT * FROM foo, bar WHERE foo.x = bar.x Nested Loop -> Seq Scan on foo -> Index Scan using bar_pkey on bar Index Cond: (bar.x = foo.x) Nested loop with inner index-scan! Much better... though probably still not the best plan.
  • 44. Merge Join Only handles equality joins – something like a.x = b.x.
  • 45. Put both input relations into sorted order (using sort or index scan) and scan through the two in parallel, matching up equal values.
  • 46. Normally visits each input tuple only once, but may need to “rescan” portions of the inner input if there are duplicate values in the outer input. Take OUTER={1 2 2 3} and INNER={2 2 3 4}
  • 47. Merge Join Example SELECT * FROM foo, bar WHERE foo.x = bar.x Merge Join Merge Cond: (foo.x = bar.x) -> Sort Sort Key: foo.x -> Seq Scan on foo -> Materialize -> Sort Sort Key: bar.x -> Seq Scan on bar
  • 48. Hash Join Like merge join, only handles equality joins.
  • 49. Hash each row from the inner relation to create a hash table. Then, hash each row from the outer relation and probe the hash table for matches.
  • 50. Very fast – but requires enough memory to store inner tuples. Can get around this using multiple “batches”.
  • 51. Not guaranteed to retain input ordering.
  • 52. Hash Join Example SELECT * FROM foo, bar WHERE foo.x = bar.x Hash Join Hash Cond: (foo.x = bar.x) -> Seq Scan on foo -> Hash -> Seq Scan on bar
  • 53. Join Removal Upcoming 9.0 feature.
  • 55. SELECT p.id, p.name FROM projects p LEFT JOIN person pm ON p.project_manager_id = pm.id;
  • 56. If there is a unique index on person (id), then the join need not be performed at all.
  • 57. Common scenario when using views.
  • 58. Join Reordering SELECT * FROM foo JOIN bar ON foo.x = bar.x JOIN baz ON foo.y = baz.y
  • 59. SELECT * FROM foo JOIN baz ON foo.y = baz.y JOIN bar ON foo.x = bar.x
  • 60. SELECT * FROM foo JOIN (bar JOIN baz ON true) ON foo.x = bar.x AND foo.y = baz.y
  • 61. EXPLAIN Estimates Hash Join (cost=8.28..404.52 rows=9000 width=118) Hash Cond: (foo.x = bar.x) -> Hash Join (cost=3.02..275.52 rows=9000 width=12) Hash Cond: (foo.y = baz.y) -> Seq Scan on foo (cost=0.00..145.00 rows=10000 width=8) -> Hash (cost=1.90..1.90 rows=90 width=4) -> Seq Scan on baz (cost=0.00..1.90 rows=90 width=4) -> Hash (cost=4.00..4.00 rows=100 width=106) -> Seq Scan on bar (cost=0.00..4.00 rows=100 width=106)
  • 62. EXPLAIN ANALYZE Hash Join (cost=8.28..404.52 rows=9000 width=118) (actual time=0.743..51.582 rows=9000 loops=1) Hash Cond: (foo.x = bar.x) -> Hash Join (cost=3.02..275.52 rows=9000 width=12) (actual time=0.368..30.964 rows=9000 loops=1) Hash Cond: (foo.y = baz.y) -> Seq Scan on foo (cost=0.00..145.00 rows=10000 width=8) (actual time=0.021..9.908 rows=10000 loops=1) -> Hash (cost=1.90..1.90 rows=90 width=4) (actual time=0.280..0.280 rows=90 loops=1) Buckets: 1024 Batches: 1 Memory Usage: 4kB -> Seq Scan on baz (cost=0.00..1.90 rows=90 width=4) (actual time=0.010..0.138 rows=90 loops=1) -> Hash (cost=4.00..4.00 rows=100 width=106) (actual time=0.354..0.354 rows=100 loops=1) Buckets: 1024 Batches: 1 Memory Usage: 14kB -> Seq Scan on bar (cost=0.00..4.00 rows=100 width=106) (actual time=0.007..0.167 rows=100 loops=1) Total runtime: 59.376 ms
  • 63. Not The Same Thing! SELECT * FROM (foo JOIN bar ON foo.x = bar.x) LEFT JOIN baz ON foo.y = baz.y
  • 64. SELECT * FROM (foo LEFT JOIN baz ON foo.y = baz.y) JOIN bar ON foo.x = bar.x
  • 65. Review of Join Planning Join Order
  • 67. Nested loop with inner index-scan
  • 70. Join removal Inner vs. outer
  • 71. Aggregates and DISTINCT Plain aggregate. e.g. SELECT count(*) FROM foo; Sorted aggregate. Sort the data (or use pre-sorted data); when you see a new value, aggregate the prior group. Hashed aggregate. Insert each input row into a hash table based on the grouping columns; at the end, aggregate all the groups.
  • 72. Statistics All of the decisions discussed earlier in this talk are made using statistics. Seq scan vs. index scan vs. bitmap index scan
  • 73. Nested loop vs. merge join vs. hash join ANALYZE (manual or via autovacuum) gathers this information.
  • 74. You must have good statistics or you will get bad plans!
  • 75. Confusing The Planner SELECT * FROM foo WHERE a = 1 AND b = 1 If 20% of the rows have a = 1 and 10% of the rows have b = 1, the planner will assume that 20% * 10% = 2% of the rows meet both criteria.
  • 76. SELECT * FROM foo WHERE (a + 0) = a
  • 77. Planner doesn't have a clue, so will assume 0.5% of rows will match.
  • 78. What Could Go Wrong? If the planner underestimates the row count, it may choose an index scan instead of a sequential scan, or a nested loop instead of a hash or merge join.
  • 79. If the planner overestimates the row count, it may choose a sequential scan instead of an index scan, or a merge or hash join instead of a nested loop.
  • 80. Small values for LIMIT tilt the planner toward fast-start plans and magnify the effect of bad estimates.
  • 81. Query Planner Parameters seq_page_cost (1.0), random_page_cost (4.0) – Reduce these costs to account for caching effects. If database is fully cached, try 0.005.
  • 82. default_statistics_target (10 or 100) – Level of detail for statistics gathering. Can also be overridden on a per-column basis.
  • 83. enable_hashjoin, enable_sort, etc. - Just for testing.
  • 84. work_mem – Amount of memory per sort or hash.
  • 85. from_collapse_limit, join_collapse_limit, geqo_threshold – Sometimes need to be raised, but be careful!
  • 86. Things That Are Slow DISTINCT.
  • 87. PL/pgsql loops. FOR x IN SELECT ... LOOP SELECT ... END LOOP
  • 88. Repeated calls to SQL or PL/pgsql functions. SELECT id, some_function(id) FROM table;
  • 89. Upcoming Features Join removal (right now just for LEFT joins).
  • 92. Better model for Materialize costs.
  • 93. Improved use of indices to handle MIN(x), MAX(x), and x IS NOT NULL.