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src/backend/executor/README
The Postgres Executor
=====================
The executor processes a tree of "plan nodes". The plan tree is essentially
a demand-pull pipeline of tuple processing operations. Each node, when
called, will produce the next tuple in its output sequence, or NULL if no
more tuples are available. If the node is not a primitive relation-scanning
node, it will have child node(s) that it calls in turn to obtain input
tuples.
Refinements on this basic model include:
* Choice of scan direction (forwards or backwards). Caution: this is not
currently well-supported. It works for primitive scan nodes, but not very
well for joins, aggregates, etc.
* Rescan command to reset a node and make it generate its output sequence
over again.
* Parameters that can alter a node's results. After adjusting a parameter,
the rescan command must be applied to that node and all nodes above it.
There is a moderately intelligent scheme to avoid rescanning nodes
unnecessarily (for example, Sort does not rescan its input if no parameters
of the input have changed, since it can just reread its stored sorted data).
For a SELECT, it is only necessary to deliver the top-level result tuples
to the client. For INSERT/UPDATE/DELETE, the actual table modification
operations happen in a top-level ModifyTable plan node. If the query
includes a RETURNING clause, the ModifyTable node delivers the computed
RETURNING rows as output, otherwise it returns nothing. Handling INSERT
is pretty straightforward: the tuples returned from the plan tree below
ModifyTable are inserted into the correct result relation. For UPDATE,
the plan tree returns the computed tuples to be updated, plus a "junk"
(hidden) CTID column identifying which table row is to be replaced by each
one. For DELETE, the plan tree need only deliver a CTID column, and the
ModifyTable node visits each of those rows and marks the row deleted.
XXX a great deal more documentation needs to be written here...
Plan Trees and State Trees
--------------------------
The plan tree delivered by the planner contains a tree of Plan nodes (struct
types derived from struct Plan). Each Plan node may have expression trees
associated with it, to represent its target list, qualification conditions,
etc. During executor startup we build a parallel tree of identical structure
containing executor state nodes --- every plan and expression node type has
a corresponding executor state node type. Each node in the state tree has a
pointer to its corresponding node in the plan tree, plus executor state data
as needed to implement that node type. This arrangement allows the plan
tree to be completely read-only as far as the executor is concerned: all data
that is modified during execution is in the state tree. Read-only plan trees
make life much simpler for plan caching and reuse.
Altogether there are four classes of nodes used in these trees: Plan nodes,
their corresponding PlanState nodes, Expr nodes, and their corresponding
ExprState nodes. (Actually, there are also List nodes, which are used as
"glue" in all four kinds of tree.)
Memory Management
-----------------
A "per query" memory context is created during CreateExecutorState();
all storage allocated during an executor invocation is allocated in that
context or a child context. This allows easy reclamation of storage
during executor shutdown --- rather than messing with retail pfree's and
probable storage leaks, we just destroy the memory context.
In particular, the plan state trees and expression state trees described
in the previous section are allocated in the per-query memory context.
To avoid intra-query memory leaks, most processing while a query runs
is done in "per tuple" memory contexts, which are so-called because they
are typically reset to empty once per tuple. Per-tuple contexts are usually
associated with ExprContexts, and commonly each PlanState node has its own
ExprContext to evaluate its qual and targetlist expressions in.
Query Processing Control Flow
-----------------------------
This is a sketch of control flow for full query processing:
CreateQueryDesc
ExecutorStart
CreateExecutorState
creates per-query context
switch to per-query context to run ExecInitNode
ExecInitNode --- recursively scans plan tree
CreateExprContext
creates per-tuple context
ExecInitExpr
AfterTriggerBeginQuery
ExecutorRun
ExecProcNode --- recursively called in per-query context
ExecEvalExpr --- called in per-tuple context
ResetExprContext --- to free memory
ExecutorFinish
ExecPostprocessPlan --- run any unfinished ModifyTable nodes
AfterTriggerEndQuery
ExecutorEnd
ExecEndNode --- recursively releases resources
FreeExecutorState
frees per-query context and child contexts
FreeQueryDesc
Per above comments, it's not really critical for ExecEndNode to free any
memory; it'll all go away in FreeExecutorState anyway. However, we do need to
be careful to close relations, drop buffer pins, etc, so we do need to scan
the plan state tree to find these sorts of resources.
The executor can also be used to evaluate simple expressions without any Plan
tree ("simple" meaning "no aggregates and no sub-selects", though such might
be hidden inside function calls). This case has a flow of control like
CreateExecutorState
creates per-query context
CreateExprContext -- or use GetPerTupleExprContext(estate)
creates per-tuple context
ExecPrepareExpr
temporarily switch to per-query context
run the expression through expression_planner
ExecInitExpr
Repeatedly do:
ExecEvalExprSwitchContext
ExecEvalExpr --- called in per-tuple context
ResetExprContext --- to free memory
FreeExecutorState
frees per-query context, as well as ExprContext
(a separate FreeExprContext call is not necessary)
EvalPlanQual (READ COMMITTED Update Checking)
---------------------------------------------
For simple SELECTs, the executor need only pay attention to tuples that are
valid according to the snapshot seen by the current transaction (ie, they
were inserted by a previously committed transaction, and not deleted by any
previously committed transaction). However, for UPDATE and DELETE it is not
cool to modify or delete a tuple that's been modified by an open or
concurrently-committed transaction. If we are running in SERIALIZABLE
isolation level then we just raise an error when this condition is seen to
occur. In READ COMMITTED isolation level, we must work a lot harder.
The basic idea in READ COMMITTED mode is to take the modified tuple
committed by the concurrent transaction (after waiting for it to commit,
if need be) and re-evaluate the query qualifications to see if it would
still meet the quals. If so, we regenerate the updated tuple (if we are
doing an UPDATE) from the modified tuple, and finally update/delete the
modified tuple. SELECT FOR UPDATE/SHARE behaves similarly, except that its
action is just to lock the modified tuple and return results based on that
version of the tuple.
To implement this checking, we actually re-run the query from scratch for
each modified tuple (or set of tuples, for SELECT FOR UPDATE), with the
relation scan nodes tweaked to return only the current tuples --- either
the original ones, or the updated (and now locked) versions of the modified
tuple(s). If this query returns a tuple, then the modified tuple(s) pass
the quals (and the query output is the suitably modified update tuple, if
we're doing UPDATE). If no tuple is returned, then the modified tuple(s)
fail the quals, so we ignore the current result tuple and continue the
original query.
In UPDATE/DELETE, only the target relation needs to be handled this way.
In SELECT FOR UPDATE, there may be multiple relations flagged FOR UPDATE,
so we obtain lock on the current tuple version in each such relation before
executing the recheck.
It is also possible that there are relations in the query that are not
to be locked (they are neither the UPDATE/DELETE target nor specified to
be locked in SELECT FOR UPDATE/SHARE). When re-running the test query
we want to use the same rows from these relations that were joined to
the locked rows. For ordinary relations this can be implemented relatively
cheaply by including the row TID in the join outputs and re-fetching that
TID. (The re-fetch is expensive, but we're trying to optimize the normal
case where no re-test is needed.) We have also to consider non-table
relations, such as a ValuesScan or FunctionScan. For these, since there
is no equivalent of TID, the only practical solution seems to be to include
the entire row value in the join output row.
We disallow set-returning functions in the targetlist of SELECT FOR UPDATE,
so as to ensure that at most one tuple can be returned for any particular
set of scan tuples. Otherwise we'd get duplicates due to the original
query returning the same set of scan tuples multiple times. Likewise,
SRFs are disallowed in an UPDATE's targetlist. There, they would have the
effect of the same row being updated multiple times, which is not very
useful --- and updates after the first would have no effect anyway.
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