Commit Graph

540 Commits (8c5eb6b7eab97e750f5b2ddb5ef458fc8419a416)

Author SHA1 Message Date
Jelte Fennema 56863e8f0b
Really ignore -Wgnu-variable-sized-type-not-at-end (#3627) 2020-03-20 11:53:28 +01:00
SaitTalhaNisanci 39bbec0f30 add tests for local copy execution 2020-03-18 09:28:59 +03:00
SaitTalhaNisanci f9c4431885 add the support to execute copy locally
A copy will be executed locally if
- Local execution is enabled and current transaction accessed a local placement
- Local execution is enabled and we are inside a transaction block.

So even if local execution is enabled but we are not in a transaction block, the copy will not be run locally.

This will not run locally:
```
COPY distributed_table FROM STDIN;
....
```

This will run locally:
```
SET citus.enable_local_execution to 'on';
BEGIN;
COPY distributed_table FROM STDIN;
COMMIT;
....
```
.
There are 3 ways to do a copy in postgres programmatically:
- from a file
- from a program
- from a callback function

I have chosen to implement it with a callback function, which means that we write the rows of copy from a callback function to the output buffer, which is used to insert tuples into the actual table.

For each shard id, we have a buffer that keeps the current rows to be written, we perform the actual copy operation either when:
- copy buffer for the given shard id reaches to a threshold, which is currently 512KB
- we reach to the end of the copy

The buffer size is debatable(512KB). At a given time, we might allocate (local placement * buffer size) memory at most.

The local copy uses the same copy format as remote copy, which means that we serialize the data in the same format as remote copy and send it locally.

There was also the option to use ExecSimpleRelationInsert to insert
slots one by one, which would avoid the extra
serialization/deserialization but doing some benchmarks it seems that
using buffers are significantly better in terms of the performance.

You can see this comment for more details: https://github.com/citusdata/citus/pull/3557#discussion_r389499054
2020-03-18 09:28:59 +03:00
Philip Dubé 7b382e43bc multi_logical_optimizer: replace ListCopyDeep with copyObject, stack allocate WorkerAggregateWalkerContext 2020-03-13 15:46:01 +00:00
Nils Dijk e5237b9e20
Fix left join shard pruning (#3569)
DESCRIPTION: Fix left join shard pruning in pushdown planner

Due to #2481 which moves outer join planning through the pushdown planner we caused a regression on the shard pruning behaviour for outer joins.

In the pushdown planner we make a union of the placement groups for all shards accessed by a query based on the filters we see during planning. Unfortunately implicit filters for left joins are not available during this part. This causes the inner part of an outer join to not prune any shards away. When we take the union of the placement groups it shows the behaviour of not having any shards pruned.

Since the inner part of an outer query will not return any rows if the outer part does not contain any rows we have observed we do not have to add the shard intervals of the inner part of an outer query to the list of shard intervals to query. 

Fixes: #3512
2020-03-13 15:20:45 +01:00
Philip Dubé 4b68ee12c6 Also check aggregates in havingQual when scanning for non pushdownable aggregates
Came across this while coming up with test cases,
'result "68_1" does not exist' I'll seek to address in a future PR,
for now avoid segfault
2020-03-11 15:47:04 +00:00
Marco Slot cb3d90bdc8 Simplify INSERT logic in router planner 2020-03-10 15:54:40 +01:00
Philip Dubé 81cfa05d3d First phase of addressing HAVING subquery issues
Add failing tests, make changes to avoid crashes at least

Fix HAVING subquery pushdown ignoring reference table only subqueries,
also include HAVING in recursive planning

Given that we have a function IsDistributedTable which includes reference tables,
it seems best to have IsDistributedTableRTE & QueryContainsDistributedTableRTE
reflect that they do not include reference tables in their check

Similarly SublinkList's name should reflect that it only scans WHERE

contain_agg_clause asserts that we don't have SubLinks,
use contain_aggs_of_level as suggested by pg sourcecode
2020-03-09 17:58:30 +00:00
Onder Kalaci 2ed19181fe Improve definition of RelationInfoContainsOnlyRecurringTuples
Before this commit, we considered !ContainsRecurringRTE() enough
for NotContainsOnlyRecurringTuples. However, instead, we can check
for existince of any distributed table.

DESCRIPTION: Fixes a bug that causes wrong results with complex outer joins
2020-03-09 17:28:33 +01:00
SaitTalhaNisanci 321d0152c1
add a utility to get shard oid from relation oid and shard id (#3596) 2020-03-09 15:50:29 +03:00
Philip Dubé 7cdfa1daab Rename LookupCitusTableCacheEntry to GetCitusTableCacheEntry, LookupLookupCitusTableCacheEntry back to LookupCitusTableCacheEntry 2020-03-08 14:08:23 +00:00
Philip Dubé a7cca1bcde Rename DistTableCacheEntry to CitusTableCacheEntry 2020-03-07 14:08:03 +00:00
Philip Dubé b514ab0f55 Fix typos, rename isDistributedRelation to isCitusRelation 2020-03-06 19:20:34 +00:00
Philip Dubé bec58000d6 Given IsDistributedTableRTE, there's ambiguity in what DistributedTable means
Elsewhere we used DistributedTable to include reference tables
Marco suggested we use CitusTable for distributed & reference tables

So renaming:
- IsDistributedTable -> IsCitusTable
- IsDistributedTableViaCatalog -> IsCitusTableViaCatalog
- DistributedTableCacheEntry -> CitusTableCacheEntry
- DistributedTableList -> CitusTableList
- isDistributedTable -> isCitusTable
- InsertSelectIntoDistributedTable -> InsertSelectIntoCitusTable
- ExtractFirstDistributedTableId -> ExtractFirstCitusTableId
2020-03-06 18:57:55 +00:00
Onur Tirtir 88bfd2e4b7 refactor around local group id checks
Mostyl optimizes the calls made to GetLocalGroupId and refactors
its usages
2020-03-05 20:20:41 +03:00
Hanefi Onaldi c0ad44f975
Fix early exit bug on intermediate result pruning
There are 2 problems with our early exit strategy that this commit fixes:

1- When we decide that a subplan results are sent to all worker nodes,
we used to skip traversing the whole distributed plan, instead of
skipping only the subplan.

2- We used to consider all available nodes in the cluster (secondaries
and inactive nodes as well as active primaries) when deciding on early
exit strategy. This resulted in failures to early exit when there are
secondaries or inactive nodes.
2020-03-05 16:41:44 +03:00
Marco Slot dc4c0c032e Refactor CitusBeginScan into separate DML / SELECT paths 2020-03-05 12:37:22 +01:00
Jelte Fennema 685b54b3de
Semmle: Check for NULL in some places where it might occur (#3509)
Semmle reported quite some places where we use a value that could be NULL. Most of these are not actually a real issue, but better to be on the safe side with these things and make the static analysis happy.
2020-02-27 10:45:29 +01:00
Hadi Moshayedi e7cce40e6e Address pykello's feedback 2020-02-26 07:17:32 -08:00
Hadi Moshayedi 1b3e58f0c3 Merge branch 'improve-shard-pruning' of https://github.com/MarkusSintonen/citus into MarkusSintonen-improve-shard-pruning 2020-02-26 07:13:33 -08:00
Jelte Fennema 8de8b62669 Convert unsafe APIs to safe ones 2020-02-25 15:39:27 +01:00
Nils Dijk a77ed9cd23
Refactor master query to be planned by postgres' planner (#3326)
DESCRIPTION: Replace the query planner for the coordinator part with the postgres planner

Closes #2761 

Citus had a simple rule based planner for the query executed on the query coordinator. This planner grew over time with the addigion of SQL support till it was getting close to the functionality of the postgres planner. Except the code was brittle and its complexity rose which made it hard to add new SQL support.

Given its resemblance with the postgres planner it was a long outstanding wish to replace our hand crafted planner with the well supported postgres planner. This patch replaces our planner with a call to postgres' planner.

Due to the functionality of the postgres planner we needed to support both projections and filters/quals on the citus custom scan node. When a sort operation is planned above the custom scan it might require fields to be reordered in the custom scan before returning the tuple (projection). The postgres planner assumes every custom scan node implements projections. Because we controlled the plan that was created we prevented reordering in the custom scan and never had implemented it before.

A same optimisation applies to having clauses that could have been where clauses. Instead of applying the filter as a having on the aggregate it will push it down into the plan which could reach a custom scan node.

For both filters and projections we have implemented them when tuples are read from the tuple store. If no projections or filters are required it will directly return the tuple from the tuple store. Otherwise it will loop tuples from the tuple store through the filter and projection until a tuple is found and returned.

Besides filters being pushed down a side effect of having quals that could have been a where clause is that a call to read intermediate result could be called before the first tuple is fetched from the custom scan. This failed because the intermediate result would only be pulled to the coordinator on the first tuple fetch. To overcome this problem we do run the distributed subplans now before we run the postgres executor. This ensures the intermediate result is present on the coordinator in time. We do account for total time instrumentation by removing the instrumentation before handing control to the psotgres executor and update the timings our self.

For future SQL support it is enough to create a valid query structure for the part of the query to be executed on the query coordinating node. As a utility we do serialise and print the query at debug level4 for engineers to inspect what kind of query is being planned on the query coordinator.
2020-02-25 14:39:56 +01:00
Jelte Fennema 2a9fccc7a0
Remove READFUNCs (#3536)
We don't actually use these functions anymore since merging #1477.

Advantages of removing:
1. They add work whenever we add a new node.
2. They contain some usage of stdlib APIs that are banned by Microsoft.
   Removing it means we don't have to replace those with safe ones.
2020-02-24 12:43:28 +01:00
Philip Dubé 52042d4a00 Prefer instr_time to TimestampTz when we want CLOCK_MONOTONIC 2020-02-19 00:34:17 +00:00
Philip Dubé 08f6842d50 Fix typos
Equivalance -> Equivalence
utillity -> utility
shorted lived one -> shortly lived one
elegible -> eligible
2020-02-18 17:14:40 +00:00
Jelte Fennema 3f7c5a5cf6
Semmle: Fix possible infite loops caused by overflow (#3503)
Comparison between differently sized integers in loop conditions can cause
infinite loops. This can happen when doing something like this:

```c
int64 very_big = MAX_INT32 + 1;
for (int32 i = 0; i < very_big; i++) {
    // do something
}
// never reached because i overflows before it can reach the value of very_big
```
2020-02-17 14:35:10 +01:00
Markus Sintonen cf8319b992 Add comment, add subquery NOT tests 2020-02-16 01:21:10 +02:00
Markus Sintonen 3d3d615040 Add comment about NOT_EXPR. Treat it as invalid constraint for safety. 2020-02-15 16:54:38 +02:00
Philip Dubé 7382c8be00 Clean up from code review
Only change to behavior is:
- don't ignore array const's constcollid in SAORestrictions
- don't end lines with commas in DebugLogPruningInstance
2020-02-14 17:58:23 +00:00
Markus Sintonen cdedb98c54 Improve shard pruning logic to understand OR-conditions.
Previously a limitation in the shard pruning logic caused multi distribution value queries to always go into all the shards/workers whenever query also used OR conditions in WHERE clause.

Related to https://github.com/citusdata/citus/issues/2593 and https://github.com/citusdata/citus/issues/1537
There was no good workaround for this limitation. The limitation caused quite a bit of overhead with simple queries being sent to all workers/shards (especially with setups having lot of workers/shards).

An example of a previous plan which was inadequately pruned:
```
EXPLAIN SELECT count(*) FROM orders_hash_partitioned
	WHERE (o_orderkey IN (1,2)) AND (o_custkey = 11 OR o_custkey = 22);
                                                          QUERY PLAN
---------------------------------------------------------------------
 Aggregate  (cost=0.00..0.00 rows=0 width=0)
   ->  Custom Scan (Citus Adaptive)  (cost=0.00..0.00 rows=0 width=0)
         Task Count: 4
         Tasks Shown: One of 4
         ->  Task
               Node: host=localhost port=xxxxx dbname=regression
               ->  Aggregate  (cost=13.68..13.69 rows=1 width=8)
                     ->  Seq Scan on orders_hash_partitioned_630000 orders_hash_partitioned  (cost=0.00..13.68 rows=1 width=0)
                           Filter: ((o_orderkey = ANY ('{1,2}'::integer[])) AND ((o_custkey = 11) OR (o_custkey = 22)))
(9 rows)
```

After this commit the task count is what one would expect from the query defining multiple distinct values for the distribution column:
```
EXPLAIN SELECT count(*) FROM orders_hash_partitioned
	WHERE (o_orderkey IN (1,2)) AND (o_custkey = 11 OR o_custkey = 22);
                                                          QUERY PLAN
---------------------------------------------------------------------
 Aggregate  (cost=0.00..0.00 rows=0 width=0)
   ->  Custom Scan (Citus Adaptive)  (cost=0.00..0.00 rows=0 width=0)
         Task Count: 2
         Tasks Shown: One of 2
         ->  Task
               Node: host=localhost port=xxxxx dbname=regression
               ->  Aggregate  (cost=13.68..13.69 rows=1 width=8)
                     ->  Seq Scan on orders_hash_partitioned_630000 orders_hash_partitioned  (cost=0.00..13.68 rows=1 width=0)
                           Filter: ((o_orderkey = ANY ('{1,2}'::integer[])) AND ((o_custkey = 11) OR (o_custkey = 22)))
(9 rows)
```

"Core" of the pruning logic works as previously where it uses `PrunableInstances` to queue ORable valid constraints for shard pruning.
The difference is that now we build a compact internal representation of the query expression tree with PruningTreeNodes before actual shard pruning is run.

Pruning tree nodes represent boolean operators and the associated constraints of it. This internal format allows us to have compact representation of the query WHERE clauses which allows "core" pruning logic to work with OR-clauses correctly.

For example query having
`WHERE (o_orderkey IN (1,2)) AND (o_custkey=11 OR (o_shippriority > 1 AND o_shippriority < 10))`
gets transformed into:
1. AND(o_orderkey IN (1,2), OR(X, AND(X, X)))
2. AND(o_orderkey IN (1,2), OR(X, X))
3. AND(o_orderkey IN (1,2), X)
Here X is any set of unknown condition(s) for shard pruning.

This allow the final shard pruning to correctly recognize that shard pruning is done with the valid condition of `o_orderkey IN (1,2)`.

Another example with unprunable condition in query
`WHERE (o_orderkey IN (1,2)) OR (o_custkey=11 AND o_custkey=22)`
gets transformed into:
1. OR(o_orderkey IN (1,2), AND(X, X))
2. OR(o_orderkey IN (1,2), X)

Which is recognized as unprunable due to the OR condition between distribution column and unknown constraint -> goes to all shards.

Issue https://github.com/citusdata/citus/issues/1537 originally suggested transforming the query conditions into a full disjunctive normal form (DNF),
but this process of transforming into DNF is quite a heavy operation. It may "blow up" into a really large DNF form with complex queries having non trivial `WHERE` clauses.

I think the logic for shard pruning could be simplified further but I decided to leave the "core" of the shard pruning untouched.
2020-02-14 17:58:13 +00:00
Onder Kalaci 975c4c2264 Do not prune shards if the distribution key is NULL
The root of the problem is that, standard_planner() converts the following qual

```
   {OPEXPR
   :opno 98
   :opfuncid 67
   :opresulttype 16
   :opretset false
   :opcollid 0
   :inputcollid 100
   :args (
      {VAR
      :varno 1
      :varattno 1
      :vartype 25
      :vartypmod -1
      :varcollid 100
      :varlevelsup 0
      :varnoold 1
      :varoattno 1
      :location 45
      }
      {CONST
      :consttype 25
      :consttypmod -1
      :constcollid 100
      :constlen -1
      :constbyval false
      :constisnull true
      :location 51
      :constvalue <>
      }
   )
   :location 49
   }
```

To

```
(
   {CONST
   :consttype 16
   :consttypmod -1
   :constcollid 0
   :constlen 1
   :constbyval true
   :constisnull true
   :location -1
   :constvalue <>
   }
)
```

So, Citus doesn't deal with NULL values in real-time or non-fast path router queries.

And, in the FastPathRouter planner, we check constisnull in DistKeyInSimpleOpExpression().
However, in deferred pruning case, we do not check for isnull for const.

Thus, the fix consists of two parts:
- Let PruneShards() not crash when NULL parameter is passed
- For deferred shard pruning in fast-path queries, explicitly check that we have CONST which is not NULL
2020-02-13 15:00:31 +01:00
Philip Dubé 3a906b8210 Fix typos noticed while reading through code trying to understand HAVING 2020-02-11 19:55:10 +00:00
Onur Tirtir ab0b49db82
fix uninitialized variable warning (#3483) 2020-02-11 15:44:31 +01:00
Nils Dijk d5433400f9
Fix: Unnecessary repartition on joins with more than 4 tables (#3473)
DESCRIPTION: Fix unnecessary repartition on joins with more than 4 tables

In 9.1 we have introduced support for all CH-benCHmark queries by widening our definitions of joins to include joins with expressions in them. This had the undesired side effect of Q5 regressing on its plan by implementing a repartition join.

It turned out this regression was not directly related to widening of the join clause, nor the schema employed by CH-benCHmark. Instead it had to do with 4 or more tables being joined in a chain. A chain meaning:

```sql
SELECT * FROM a,b,c,d WHERE a.part = b.part AND b.part = c.part AND ....
```

Due to how our join order planner was implemented it would only keep track of 1 of the partition columns when comparing if the join could be executed locally. This manifested in a join chain of 4 tables to _always_ be executed as a repartition join. 3 tables joined in a chain would have the middle table shared by the two outer tables causing the local join possibility to be found.

With this patch we keep a  unique list (or set) of all partition columns participating in the join. When a candidate table is checked for a possibility to execute a local join it will check if there is any partition column in that set that matches an equality join clause on the partition column of the candidate table.

By taking into account all partition columns in the left relation it will now find the local join path on >= 4 tables joined in a chain. 

fixes: #3276
2020-02-06 15:07:07 +01:00
Philip Dubé c252811884 dont: don't, wont: won't, acylic: acyclic 2020-02-05 17:32:22 +00:00
Onder Kalaci c7e2309f4c Improve single hash-repartitioning with numeric (or non-int) types
We used to treat the shard interval array that we passed as numeric[].
However, it should be int[], as the shard ranges are int[].
2020-02-04 20:30:04 +01:00
Hadi Moshayedi 264530311a Don't use distributed insert/select for repartitioned joins 2020-02-03 13:13:30 -08:00
Philip Dubé d43c80d4d8 pullUpIntermediateRows should not be true when groupedByDisjointPartitionColumn is true
This was causing 'SELECT id, stdev(y_int) FROM tbl GROUP BY id' to push down stddev without group by
2020-01-30 21:18:08 +00:00
Philip Dubé 5fccc56d3e Expand the set of aggregates which cannot have LIMIT approximated
Previously we only prevented AVG from being pushed down, but this is incorrect:
- array_agg, while somewhat non sensical to order by, will potentially be missing values
- combinefunc aggregation will raise errors about cstrings not being comparable (while we also can't know if the aggregate is commutative)

This commit limits approximating LIMIT pushdown when ordering by aggregates to:
min, max, sum, count, bit_and, bit_or, every, any
Which means of those we previously supported, we now exclude:
avg, array_agg, jsonb_agg, jsonb_object_agg, json_agg, json_object_agg, hll_add, hll_union, topn_add, topn_union
2020-01-30 17:45:18 +00:00
Önder Kalacı 4519d3411d
Improve the representation of used sub plans (#3411)
Previously, we've identified the usedSubPlans by only looking
to the subPlanId.

With this commit, we're expanding it to also include information
on the location of the subPlan.

This is useful to distinguish the cases where the subPlan is used
either on only HAVING or both HAVING and any other part of the query.
2020-01-24 10:47:14 +01:00
Philip Dubé 50c5e814c8 CurrentDatabaseName: return const char* as we're borrowing from cache 2020-01-23 22:49:35 +00:00
Önder Kalacı ef7d1ea91d
Locally execute queries that don't need any data access (#3410)
* Update shardPlacement->nodeId to uint

As the source of the shardPlacement->nodeId is always workerNode->nodeId,
and that is uint32.

We had this hack because of: 0ea4e52df5 (r266421409)

And, that is gone with: 90056f7d3c (diff-c532177d74c72d3f0e7cd10e448ab3c6L1123)

So, we're safe to do it now.

* Relax the restrictions on using the local execution

Previously, whenever any local execution happens, we disabled further
commands to do any remote queries. The basic motivation for doing that
is to prevent any accesses in the same transaction block to access the
same placements over multiple sessions: one is local session the other
is remote session to the same placement.

However, the current implementation does not distinguish local accesses
being to a placement or not. For example, we could have local accesses
that only touches intermediate results. In that case, we should not
implement the same restrictions as they become useless.

So, this is a pre-requisite for executing the intermediate result only
queries locally.

* Update the error messages

As the underlying implementation has changed, reflect it in the error
messages.

* Keep track of connections to local node

With this commit, we're adding infrastructure to track if any connection
to the same local host is done or not.

The main motivation for doing this is that we've previously were more
conservative about not choosing local execution. Simply, we disallowed
local execution if any connection to any remote node is done. However,
if we want to use local execution for intermediate result only queries,
this'd be annoying because we expect all queries to touch remote node
before the final query.

Note that this approach is still limiting in Citus MX case, but for now
we can ignore that.

* Formalize the concept of Local Node

Also some minor refactoring while creating the dummy placement

* Write intermediate results locally when the results are only needed locally

Before this commit, Citus used to always broadcast all the intermediate
results to remote nodes. However, it is possible to skip pushing
the results to remote nodes always.

There are two notable cases for doing that:

   (a) When the query consists of only intermediate results
   (b) When the query is a zero shard query

In both of the above cases, we don't need to access any data on the shards. So,
it is a valuable optimization to skip pushing the results to remote nodes.

The pattern mentioned in (a) is actually a common patterns that Citus users
use in practice. For example, if you have the following query:

WITH cte_1 AS (...), cte_2 AS (....), ... cte_n (...)
SELECT ... FROM cte_1 JOIN cte_2 .... JOIN cte_n ...;

The final query could be operating only on intermediate results. With this patch,
the intermediate results of the ctes are not unnecessarily pushed to remote
nodes.

* Add specific regression tests

As there are edge cases in Citus MX and with round-robin policy,
use the same queries on those cases as well.

* Fix failure tests

By forcing not to use local execution for intermediate results since
all the tests expects the results to be pushed remotely.

* Fix flaky test

* Apply code-review feedback

Mostly style changes

* Limit the max value of pg_dist_node_seq to reserve for internal use
2020-01-23 18:28:34 +01:00
Onder Kalaci 0bf1e81e33 Cache local plans on BeginScan 2020-01-17 16:02:57 +01:00
Onder Kalaci 3833a7e686 Fix issues for CTE inlining on Postgres 11
Comment from code:

/*
 * We had to implement this hack because on Postgres11 and below, the originalQuery
 * and the query would have significant differences in terms of CTEs where CTEs
 * would not be inlined on the query (as standard_planner() wouldn't inline CTEs
 * on PG 11 and below).
 *
 * Instead, we prefer to pass the inlined query to the distributed planning. We rely
 * on the fact that the query includes subqueries, and it'd definitely go through
 * query pushdown planning. During query pushdown planning, the only relevant query
 * tree is the original query.
 */
2020-01-17 11:59:02 +01:00
Jelte Fennema 246435be7e
Lazy query deparsing executable queries (#3350)
Deparsing and parsing a query can be heavy on CPU. When locally executing 
the query we don't need to do this in theory most of the time.

This PR is the first step in allowing to skip deparsing and parsing
the query in these cases, by lazily creating the query string and
storing the query in the task. Future commits will make use of this and
not deparse and parse the query anymore, but use the one from the task
directly.
2020-01-17 11:49:43 +01:00
Hadi Moshayedi 8635396cea Repartitioned INSERT/SELECT: Test rollback behaviour 2020-01-16 23:24:52 -08:00
Hadi Moshayedi 97072c9eb1 INSERT/SELECT: show method in EXPLAIN output 2020-01-16 23:24:52 -08:00
Hadi Moshayedi b4e5f4b10a Implement INSERT ... SELECT with repartitioning 2020-01-16 23:24:52 -08:00
Jelte Fennema 0ee1eab070 Make tests fail with a useful error message 2020-01-16 18:30:30 +01:00
Onder Kalaci dc17c2658e Defer shard pruning for fast-path router queries to execution
This is purely to enable better performance with prepared statements.
Before this commit, the fast path queries with prepared statements
where the distribution key includes a parameter always went through
distributed planning. After this change, we only go through distributed
planning on the first 5 executions.
2020-01-16 16:59:36 +01:00
Onder Kalaci 64560b07be Update regression tests-2
In this commit, we're introducing a way to prevent CTE inlining via a GUC.

The GUC is used in all the tests where PG 11 and PG 12 tests would diverge
otherwise.

Note that, in PG 12, the restriction information for CTEs are generated. It
means that for some queries involving CTEs, Citus planner (router planner/
pushdown planner) may behave differently. So, via the GUC, we prevent
tests to diverge on PG 11 vs PG 12.

When we drop PG 11 support, we should get rid of the GUC, and mark
relevant ctes as MATERIALIZED, which does the same thing.
2020-01-16 12:28:15 +01:00
Onder Kalaci 5cb203b276 Update regression tests-1
These set of tests has changed in both PG 11 and PG 12.
The changes are only about CTE inlining kicking in both
versions, and yielding the exact same distributed planning.
2020-01-16 12:28:15 +01:00
Onder Kalaci efb1577d06 Handle CTE aliases accurately
Basically, make sure to update the column name with the CTEs alias
if we need to do so.
2020-01-16 12:28:15 +01:00
Onder Kalaci 05d600dd8f Call CTE inlining in Citus planner
The idea is simple: Inline CTEs(if any), try distributed planning.
If the planning yields a successful distributed plan, simply return
it.

If the planning fails, fallback to distributed planning on the query
tree where CTEs are not inlined. In that case, if the planning failed
just because of the CTE inlining, via recursive planning, the same
query would yield a successful plan.

A very basic set of examples:

WITH cte_1 AS (SELECT * FROM test_table)
SELECT
	*, row_number() OVER ()
FROM
	cte_1;

or

WITH a AS (SELECT * FROM test_table),
b AS (SELECT * FROM test_table)
SELECT * FROM  a JOIN b ON (a.value> b.value);
2020-01-16 12:28:15 +01:00
Onder Kalaci 01a5800ee8 Add Citus' CTE inlining functions
With this commit we add the necessary Citus function to inline CTEs
in a queryTree.

You might ask, why do we need to inline CTEs if Postgres is already
going to do it?

Few reasons behind this decision:

- One techinal node here is that Citus does the recursive CTE planning
  by checking the originalQuery which is the query that has not gone
  through the standard_planner().

  CTEs in Citus is super powerful. It is practically key for full SQL
  coverage for multi-shard queries. With CTEs, you can always reduce
  any query multi-shard query into a router query via recursive
  planning (thus full SQL coverage).
  We cannot let CTE inlining break that. The main idea is Citus should
  be able to retry planning if anything goes after CTE inlining.

  So, by taking ownership of CTE inlining on the originalQuery, Citus
  can fallback to recursive planning of CTEs if the planning with the
  inlined query fails. It could have been a lot harder if we had relied
  on standard_planner() to have the inlined CTEs on the original query.

- We want to have this feature in PostgreSQL 11 as well, but Postgres
  only inlines in version 12
2020-01-16 12:28:15 +01:00
Onder Kalaci 1856ab6cdd Copy & paste code from Postgres source
All the code in this commit is direct copy & paste from Postgres
source code.

We can classify the copy&paste code into two:

- Copy paste from CTE inline patch from postgres
  (https://git.postgresql.org/gitweb/?p=postgresql.git;a=commitdiff;h=608b167f9f9c4553c35bb1ec0eab9ddae643989b)
  These include the functions inline_cte(), inline_cte_walker(),
  contain_dml(), contain_dml_walker().
  It also include the code in function PostgreSQLCTEInlineCondition().
  We prefer to extract that code into a seperate function, because
  (a) we'll re-use the logic later (b) we added one check for PG_11

  Finally, the struct "inline_cte_walker_context" is also copied from
  the same Postgres commit.

- Copy paste from the other parts of the Postgres code

  In order to implement CTE inlining in Postgres 12, the hackers
  modified the query_tree_walker()/range_table_walker() with the
  18c0da88a5

  Since Citus needs to support the same logic in PG 11, we copy & pasted
  that functions (and related flags) with the names pg_12_query_tree_walker()
  and pg_12_range_table_walker()
2020-01-16 12:28:15 +01:00
Philip Dubé 4d9a733c2f Fix inserting multiple values with row expression partition column causing the insert to be ignored
Raise an error instead of silently inserting nothing if we hit this condition in the future
2020-01-15 21:10:50 +00:00
Philip Dubé 4b5d6c3ebe Rename RelayFileState to ShardState
Replace FILE_ prefix with SHARD_STATE_
2020-01-12 05:57:53 +00:00
Philip Dubé e71386af33 Replace ARRAY_OUT_FUNC_ID with postgres's F_ARRAY_OUT
Also use stack allocation for walkerContext in multi_logical_optimizer
2020-01-10 16:54:00 +00:00
Philip Dubé 281aacce9b Fix row-gather for subqueries being handled by task-tracker
task-tracker has specific logic for MultiPartition when GROUP BY is missing

We were ending up in this code path because row-gather removes GROUP BY
2020-01-10 01:51:37 +00:00
Hadi Moshayedi f38d0e5b3f Partitioned task list results. 2020-01-09 10:32:58 -08:00
Philip Dubé bf7d86a3e8 Fix typo: aggragate -> aggregate 2020-01-07 01:16:09 +00:00
Philip Dubé 863bf49507 Implement pulling up rows to coordinator when aggregates cannot be pushed down. Enabled by default 2020-01-07 01:16:04 +00:00
Jelte Fennema 5b0baea72c Refactor distributed_planner for better understandability 2020-01-06 14:23:38 +01:00
Onder Kalaci 5a1e752726 Apply feedback - add fastPath field to plan 2020-01-06 12:42:43 +01:00
Onder Kalaci 13a9b55695 Skip expensive checks when fast-path query
The definition of fast-path query is very strict. So, we don't need
to do some extra checks.
2020-01-06 12:42:43 +01:00
Onder Kalaci 7f3ab7892d Skip shard pruning when possible
We're already traversing the queryTree and finding the distribution
key value, so pass it to the later stages of the planning.
2020-01-06 12:42:43 +01:00
Onder Kalaci ca293116fa Reduce calls to FastPathRouterQuery()
Before this commit, we called it twice durning planning. Instead,
we save the information and pass it.
2020-01-06 12:42:43 +01:00
Önder Kalacı 0c70a5470e
Allow RETURNING in fast-path queries (#3352)
* Allow RETURNING in fast-path queries

Because there is no specific reason for that.
2020-01-03 13:42:50 +00:00
Önder Kalacı a174eb4f7b
Do not go through standard_planner() for INSERTs (#3348)
That seems unnecessary. We already have the notion of FastPath queries,
simply add it there.
2020-01-03 12:15:22 +00:00
Marco Slot ba39d72fe1 Fix incorrect union all pushdown issue 2020-01-01 09:03:50 +01:00
Jelte Fennema 3a042e4611 Allow cartesian products on reference tables 2019-12-27 15:05:51 +01:00
Jelte Fennema 61e2501645 Make any expression with two or more tables a join expression 2019-12-27 15:05:51 +01:00
Jelte Fennema 4233cd0d9d Allow non equi joins on reference tables 2019-12-27 15:05:51 +01:00
Marco Slot b21b6905ae Do not repeat GROUP BY distribution_column on coordinator
Allow arbitrary aggregates to be pushed down in these scenarios
2019-12-25 01:33:41 +00:00
Marco Slot b37ef0e394 Fix error in distributed queries when shards are on the coordinator 2019-12-24 06:36:43 +01:00
Hadi Moshayedi 249508d267 Estimate cost of read_intermediate_results() 2019-12-17 13:51:51 -08:00
SaitTalhaNisanci 7ff4ce2169
Add adaptive executor support for repartition joins (#3169)
* WIP

* wip

* add basic logic to run a single job with repartioning joins with adaptive executor

* fix some warnings and return in ExecuteDependedTasks if there is none

* Add the logic to run depended jobs in adaptive executor

The execution of depended tasks logic is changed. With the current
logic:
- All tasks are created from the top level task list.
- At one iteration:
	- CurTasks whose dependencies are executed are found.
	- CurTasks are executed in parallel with adapter executor main
logic.
- The iteration is repeated until all tasks are completed.

* Separate adaptive executor repartioning logic

* Remove duplicate parts

* cleanup directories and schemas

* add basic repartion tests for adaptive executor

* Use the first placement to fetch data

In task tracker, when there are replicas, we try to fetch from a replica
for which a map task is succeeded. TaskExecution is used for this,
however TaskExecution is not used in adaptive executor. So we cannot use
the same thing as task tracker.

Since adaptive executor fails when a map task fails (There is no retry
logic yet). We know that if we try to execute a fetch task, all of its
map tasks already succeeded, so we can just use the first one to fetch
from.

* fix clean directories logic

* do not change the search path while creating a udf

* Enable repartition joins with adaptive executor with only enable_reparitition_joins guc

* Add comments to adaptive_executor_repartition

* dont run adaptive executor repartition test in paralle with other tests

* execute cleanup only in the top level execution

* do cleanup only in the top level ezecution

* not begin a transaction if repartition query is used

* use new connections for repartititon specific queries

New connections are opened to send repartition specific queries. The
opened connections will be closed at the FinishDistributedExecution.

While sending repartition queries no transaction is begun so that
we can see all changes.

* error if a modification was done prior to repartition execution

* not start a transaction if a repartition query and sql task, and clean temporary files and schemas at each subplan level

* fix cleanup logic

* update tests

* add missing function comments

* add test for transaction with DDL before repartition query

* do not close repartition connections in adaptive executor

* rollback instead of commit in repartition join test

* use close connection instead of shutdown connection

* remove unnecesary connection list, ensure schema owner before removing directory

* rename ExecuteTaskListRepartition

* put fetch query string in planner not executor as we currently support only replication factor = 1 with adaptive executor and repartition query and we know the query string in the planner phase in that case

* split adaptive executor repartition to DAG execution logic and repartition logic

* apply review items

* apply review items

* use an enum for remote transaction state and fix cleanup for repartition

* add outside transaction flag to find connections that are unclaimed instead of always opening a new transaction

* fix style

* wip

* rename removejobdir to partition cleanup

* do not close connections at the end of repartition queries

* do repartition cleanup in pg catch

* apply review items

* decide whether to use transaction or not at execution creation

* rename isOutsideTransaction and add missing comment

* not error in pg catch while doing cleanup

* use replication factor of the creation time, not current time to decide if task tracker should be chosen

* apply review items

* apply review items

* apply review item
2019-12-17 19:09:45 +03:00
Marco Slot 5f656e22db Fix issue in IsMultiStatementTransaction detection 2019-12-16 17:01:43 +01:00
SaitTalhaNisanci 2829c601dd
replace Begin words in coordinated transactions with use (#3293) 2019-12-16 10:40:31 +03:00
SaitTalhaNisanci a2f2107e6a
refactor MapTaskList in multi physical planner (#3297) 2019-12-13 22:41:49 +03:00
Marco Slot 1633123d78 Fix crash in IN (NULL) queries 2019-12-13 08:35:54 +01:00
Hadi Moshayedi e7a6cc0801 Fix some typos from #3280 2019-12-12 13:29:26 -08:00
SaitTalhaNisanci 420e21919b
refactor extract distributed insert values rte (#3287) 2019-12-12 23:47:44 +03:00
Marco Slot e7a8db5493 Fix issue with some zero-shard modifications 2019-12-12 07:19:10 +01:00
Hadi Moshayedi 939d3c955b Don't plan function joins locally 2019-12-11 16:53:29 -08:00
Hadi Moshayedi 067d92a7f6 Don't plan joins between ref tables and views locally 2019-12-11 14:31:34 -08:00
SaitTalhaNisanci 13204487e9
remove copyright years (#3286) 2019-12-11 21:14:08 +03:00
Marco Slot 133b8e1e0e Move coordinator insert..select logic into executor 2019-12-10 11:21:35 -08:00
Marco Slot 486c620a3c Fix inserts into local tables with distributed subqueries 2019-12-10 10:17:18 +01:00
Philip Dubé fcf2fd819b Add distributioncolumncollation to to pg_dist_colocation
Use partition column's collation for range distributed tables
Don't allow non deterministic collations for hash distributed tables
CoPartitionedTables: don't compare unequal types
2019-12-09 19:51:40 +00:00
Marco Slot 6a9c0ea7fe Fix errors in DML with sublinks hidden by null expressions 2019-12-06 14:25:04 +01:00
Philip Dubé 1597fbb369 aggregate_support test: test DISTINCT, ORDER BY, FILTER, & no intermediate results
Previously,
- we'd push down ORDER BY, but this doesn't order intermediate results between workers
- we'd keep FILTER on master aggregate, which would raise an error about unexpected cstrings
2019-12-03 15:46:01 +00:00
Philip Dubé 5fcc169a3a Stray depended to dependent tidy up 2019-12-03 15:28:32 +00:00
Marco Slot bb3bc10f0c Fix segfault in column_to_column_name 2019-12-01 23:57:25 +01:00
Marco Slot 16d1ad3666 Remove distinction between SQL_TASK and ROUTER_TASK 2019-11-29 05:58:29 +01:00
SaitTalhaNisanci aeec3d1544
fix typo in dependent jobs and dependent task (#3244) 2019-11-28 23:47:28 +03:00
Philip Dubé 0d04ff1692 RECORD: Add support for more expression types
- OpExpr
- NullIfExpr
- MinMaxExpr
- CoalesceExpr
- CaseExpr

Also fix case where ARRAY[(1,2), NULL] was rejected
2019-11-27 17:07:22 +00:00
Philip Dubé 168e11cc9b Implement support for RECORD[] where we support RECORD
Support for ARRAY[] expressions is limited to having a consistent shape,
eg ARRAY[(int,text),(int,text)] as opposed to ARRAY[(int,text),(float,text)] or ARRAY[(int,text),(int,text,float)]
2019-11-27 15:02:43 +00:00
Philip Dubé 261a9de42d Fix typos:
VAR_SET_VALUE_KIND -> VAR_SET_VALUE kind
beginnig -> beginning
plannig -> planning
the the -> the
er then -> er than
2019-11-25 23:24:13 +00:00