Engine¶
- class lsst.daf.relation.sql.Engine(*, name: str = 'sql', functions: dict[str, _F] = <factory>, relation_name_counter: int = 0)¶
Bases:
GenericConcreteEngine[Callable[…,ColumnElement]],Generic[_L]A concrete engine class for relations backed by a SQL database.
See the
sqlmodule documentation for details.Attributes Summary
Name of the column added to a SQL
SELECTquery in order to represent relations that have no real columns.Name of the engine; primarily used for display purposes (
str).An integer counter used to generate relation names (
int).Methods Summary
append_binary(operation, lhs, rhs)Hook for maintaining the engine's
conforminvariants throughBinaryOperation.apply.append_unary(operation, target)Hook for maintaining the engine's
conforminvariants throughUnaryOperation.apply.backtrack_unary(operation, tree, preferred)Attempt to insert a unary operation in another engine upstream of this one by via operation commutators.
conform(relation)Ensure a relation tree satisfies this engine's invariants.
convert_column_expression(expression, ...)Convert a
ColumnExpressionto a logical column.convert_column_literal(value)Convert a Python literal value to a logical column.
convert_flattened_predicate(predicate, ...)Flatten all logical AND operators in a
Predicateand convert each to a boolean SQLAlchemy expression.convert_predicate(predicate, columns_available)Convert a
Predicateto a SQLAlchemy expression.convert_sort_term(term, columns_available)Convert a
SortTermto a SQLAlchemy expression.expect_column_scalar(logical_column)Convert a logical column value to a SQLAlchemy expression.
extract_mapping(tags, sql_columns)Extract a mapping with
ColumnTagkeys and logical column values from a SQLAlchemy column collection.get_doomed_payload(columns)Return a
payloadfor a leaf relation that has no rows.get_function(name)Return the named column expression function.
get_identifier(tag)Return the SQL identifier that should be used to represent the given column.
Return a
payloadfor a leaf relation that is thejoin identity.get_relation_name([prefix])Return a name suitable for a new relation in this engine.
handle_empty_columns(columns)Handle the edge case where a SELECT statement has no columns, by adding a literal column that should be ignored.
make_doomed_relation(columns, messages[, name])Construct a leaf relation with no rows and one or more messages explaining why.
make_join_identity_relation([name])Construct a leaf relation with no columns and exactly one row.
make_leaf(columns, payload, *[, min_rows, ...])Create a nontrivial leaf relation in this engine.
materialize(target[, name, name_prefix])Mark that a target relation's payload should be cached.
select_items(items, sql_from, *extra)Construct a SQLAlchemy representation of a SELECT query.
to_executable(relation[, extra_columns])Convert a relation tree to an executable SQLAlchemy expression.
to_payload(relation)Internal recursive implementation of
to_executable.transfer(target[, payload])Mark that a relation's payload should be transferred from some other engine to this one.
Attributes Documentation
- EMPTY_COLUMNS_NAME: ClassVar[str] = 'IGNORED'¶
Name of the column added to a SQL
SELECTquery in order to represent relations that have no real columns.
Methods Documentation
- append_binary(operation: BinaryOperation, lhs: Relation, rhs: Relation) Select¶
Hook for maintaining the engine’s
conforminvariants throughBinaryOperation.apply.This method should only be called by
BinaryOperation.applyand the engine’s own methods and helper classes. External code should callBinaryOperation.applyor aRelationfactory method instead.- Parameters:
- operation
BinaryOperation Operation to apply; should already be filtered through
BinaryOperation._begin_apply.- lhs
Relation One relation to apply the operation to directly.
- rhs
Relation The other relation to apply the operation to directly.
- operation
- Returns:
- relation
Relation Relation that includes the given operation acting on
lhsandrhs, or a simplified equivalent.
- relation
Notes
Implementations should delegate back to
UnaryOperation._finish_applyto actually create aUnaryOperationRelationand perform final simplification and checks. This is all the default implementation does.
- append_unary(operation: UnaryOperation, target: Relation) Select¶
Hook for maintaining the engine’s
conforminvariants throughUnaryOperation.apply.This method should only be called by
UnaryOperation.applyand the engine’s own methods and helper classes. External code should callUnaryOperation.applyor aRelationfactory method instead.- Parameters:
- operation
UnaryOperation Operation to apply; should already be filtered through
UnaryOperation._begin_apply.- target
Relation Relation to apply the operation to directly.
- operation
- Returns:
- relation
Relation Relation that includes the given operation acting on
target, or a simplified equivalent.
- relation
Notes
Implementations should delegate back to
UnaryOperation._finish_applyto actually create aUnaryOperationRelationand perform final simplification and checks. This is all the default implementation does.
- backtrack_unary(operation: UnaryOperation, tree: Relation, preferred: Engine) tuple[Relation, bool, tuple[str, ...]]¶
Attempt to insert a unary operation in another engine upstream of this one by via operation commutators.
- Parameters:
- operation
UnaryOperation Unary operation to apply.
- tree
Relation Relation tree the operation logically acts on; any upstream insertion of the given operation should be equivalent to applying it to the root of this tree. Caller guarantees that
tree.engine == self.- preferred
Engine Engine in which the operation or its commuted equivalent should be performed.
- operation
- Returns:
- new_tree
Relation Possibly-updated relation tree.
- done
bool If
True, the operation has been fully inserted upstream in the preferred engine. IfFalse, eithertreewas returned unmodified or only a part of the operation (e.g. a projection whose columns are superset of the given projection’s) was inserted upstream.- messages
Sequence[str] Messages explaining why backtracking insertion was unsuccessful or incomplete. Should be sentences with no trailing
.and no capitalization; they will be joined with semicolons.
- new_tree
- conform(relation: Relation) Select¶
Ensure a relation tree satisfies this engine’s invariants.
This can include reordering operations (in a way consistent with their commutators) and/or inserting
MarkerRelationnodes.- Parameters:
- relation
Relation Original relation tree.
- relation
- Returns:
- conformed
Relation Relation tree that satisfies this engine’s invariants.
- conformed
Notes
The default implementation returns the given relation. Engines with a non-trivial
conformimplementation should always call it on any relations they are passed, as algorithms that process the relation tree are not guaranteed to maintain those invariants themselves. It is recommended to use a customMarkerRelationto indicate trees that satisfy invariants, allowing the correspondingconformimplementation to short-circuit quickly.
- convert_column_expression(expression: ColumnExpression, columns_available: Mapping[ColumnTag, _L]) _L¶
Convert a
ColumnExpressionto a logical column.- Parameters:
- expression
ColumnExpression Expression to convert.
- columns_available
Mapping Mapping from
ColumnTagto logical column, typically produced byextract_mappingor obtained fromPayload.columns_available.
- expression
- Returns:
- logical_column
SQLAlchemy expression object or other logical column value.
See also
- convert_column_literal(value: Any) _L¶
Convert a Python literal value to a logical column.
- Parameters:
- value
Python value to convert.
- Returns:
- logical_column
SQLAlchemy expression object or other logical column value.
See also
Notes
This method must be overridden to support a custom logical columns.
- convert_flattened_predicate(predicate: Predicate, columns_available: Mapping[ColumnTag, _L]) list[sqlalchemy.sql.elements.ColumnElement]¶
Flatten all logical AND operators in a
Predicateand convert each to a boolean SQLAlchemy expression.- Parameters:
- predicate
Predicate Predicate to convert.
- columns_available
Mapping Mapping from
ColumnTagto logical column, typically produced byextract_mappingor obtained fromPayload.columns_available.
- predicate
- Returns:
- sql
list[sqlalchemy.sql.ColumnElement] List of boolean SQLAlchemy expressions to be combined with the
ANDoperator.
- sql
- convert_predicate(predicate: Predicate, columns_available: Mapping[ColumnTag, _L]) ColumnElement¶
Convert a
Predicateto a SQLAlchemy expression.- Parameters:
- predicate
Predicate Predicate to convert.
- columns_available
Mapping Mapping from
ColumnTagto logical column, typically produced byextract_mappingor obtained fromPayload.columns_available.
- predicate
- Returns:
- sql
sqlalchemy.sql.ColumnElement Boolean SQLAlchemy expression.
- sql
- convert_sort_term(term: SortTerm, columns_available: Mapping[ColumnTag, _L]) ColumnElement¶
Convert a
SortTermto a SQLAlchemy expression.- Parameters:
- term
SortTerm Sort term to convert.
- columns_available
Mapping Mapping from
ColumnTagto logical column, typically produced byextract_mappingor obtained fromPayload.columns_available.
- term
- Returns:
- sql
sqlalchemy.sql.ColumnElement Scalar SQLAlchemy expression.
- sql
- expect_column_scalar(logical_column: _L) ColumnElement¶
Convert a logical column value to a SQLAlchemy expression.
- Parameters:
- logical_column
SQLAlchemy expression object or other logical column value.
- Returns:
- sql
sqlalchemy.sql.ColumnElement SQLAlchemy expression object.
- sql
See also
Notes
The default implementation assumes the logical column type is just a SQLAlchemy type and returns the given object unchanged. Subclasses with a custom logical column type should override to at least assert that the value is in fact a SQLAlchemy expression. This is only called in contexts where true SQLAlchemy expressions are required, such as in
ORDER BYorWHEREclauses.
- extract_mapping(tags: Iterable[ColumnTag], sql_columns: ColumnCollection) dict[lsst.daf.relation._columns._tag.ColumnTag, _L]¶
Extract a mapping with
ColumnTagkeys and logical column values from a SQLAlchemy column collection.- Parameters:
- tags
Iterable Set of
ColumnTagobjects whose logical columns should be extracted.- sql_columns
sqlalchemy.sql.ColumnCollection SQLAlchemy collection of columns, such as
sqlalchemy.sql.FromClause.columns.
- tags
- Returns:
Notes
This method must be overridden to support a custom logical columns.
- get_doomed_payload(columns: Set[ColumnTag]) Payload[_L]¶
Return a
payloadfor a leaf relation that has no rows.- Parameters:
- columns
Set[ColumnTag] The columns the relation should have.
- columns
- Returns:
- payload
The engine-specific content for this relation.
- get_function(name: str) _F | None¶
Return the named column expression function.
- Parameters:
- name
str Name of the function, from
ColumnFunction.nameorPredicateFunction.name
- name
- Returns:
- function
Engine-specific callable, or
Noneif no match was found.
Notes
This implementation first looks for a symbol with this name in the built-in
operatormodule, to handle the common case (shared by both theiterationandsqlengines) where these functions are appropriate for the engine due to operator overloading. When this fails, the name is looked up in thefunctionsattribute.
- get_identifier(tag: ColumnTag) str¶
Return the SQL identifier that should be used to represent the given column.
- Parameters:
- tag
ColumnTag Object representing a column.
- tag
- Returns:
- identifier
str SQL identifier for this column.
- identifier
Notes
This method may be overridden to replace special characters not supported by a particular DBMS (even after quoting, which SQLAlchemy handles transparently), deal with case transformation, or ensure identifiers are not truncated (e.g. by PostgreSQL’s 64-char limit). The default implementation returns
tag.qualified_nameunchanged.
- get_join_identity_payload() Payload[_L]¶
Return a
payloadfor a leaf relation that is thejoin identity.- Returns:
- payload
The engine-specific content for this relation.
- get_relation_name(prefix: str = 'leaf') str¶
Return a name suitable for a new relation in this engine.
- Parameters:
- prefix
str, optional Prefix to include in the returned name.
- prefix
- Returns:
- name
str Name for the relation; guaranteed to be unique over all of the relations in this engine.
- name
Notes
This implementation combines the given prefix with both the current
relation_name_countervalue and a random hexadecimal suffix.
- handle_empty_columns(columns: list[sqlalchemy.sql.elements.ColumnElement]) None¶
Handle the edge case where a SELECT statement has no columns, by adding a literal column that should be ignored.
- Parameters:
- columns
list[sqlalchemy.sql.ColumnElement] List of SQLAlchemy column objects. This may have no elements when this method is called, and must always have at least one element when it returns.
- columns
- make_doomed_relation(columns: Set[ColumnTag], messages: Sequence[str], name: str = '0') Relation¶
Construct a leaf relation with no rows and one or more messages explaining why.
- Parameters:
- Returns:
- relation
Relation Doomed relation.
- relation
Notes
This is simplify a convenience method that delegates to
LeafRelation.make_doomed. Derived engines with a nontrivialconformshould override this method to conform the return value.
- make_join_identity_relation(name: str = 'I') Relation¶
Construct a leaf relation with no columns and exactly one row.
- make_leaf(columns: Set[ColumnTag], payload: Payload[_L], *, min_rows: int = 0, max_rows: int | None = None, name: str = '', messages: Sequence[str] = (), name_prefix: str = 'leaf', parameters: Any = None) Relation¶
Create a nontrivial leaf relation in this engine.
This is a convenience method that simply forwards all arguments to the
LeafRelationconstructor, and then wraps the result in aSelect; seeLeafRelationfor details.
- materialize(target: Relation, name: str | None = None, name_prefix: str = 'materialization_') Select¶
Mark that a target relation’s payload should be cached.
- Parameters:
- target
Relation Relation to mark.
- name
str, optional Name to use for the cached payload within the engine.
- name_prefix
str, optional Prefix to pass to
get_relation_name; ignored ifnameis provided.
- target
- Returns:
- relation
Relation New relation that marks its upstream tree for caching, unless the materialization was simplified away.
- relation
See also
Processor.materialize
Notes
The base class implementation calls
Materialization.simplifyto avoid materializations of leaf relations or other materializations. Override implementations should generally do the same.
- select_items(items: Iterable[tuple[lsst.daf.relation._columns._tag.ColumnTag, _L]], sql_from: FromClause, *extra: ColumnElement) Select¶
Construct a SQLAlchemy representation of a SELECT query.
- Parameters:
- items
Iterable[tuple] Iterable of (
ColumnTag, logical column) pairs. This is typically theitems()of a mapping returned byextract_mappingor obtained fromPayload.columns_available.- sql_from
sqlalchemy.sql.FromClause SQLAlchemy representation of a FROM clause, such as a single table, aliased subquery, or join expression. Must provide all columns referenced by
items.- *extra
sqlalchemy.sql.ColumnElement Additional SQL column expressions to include.
- items
- Returns:
- select
sqlalchemy.sql.Select SELECT query.
- select
Notes
This method is responsible for handling the case where
itemsis empty, typically by delegating tohandle_empty_columns.This method must be overridden to support a custom logical columns.
- to_executable(relation: Relation, extra_columns: Iterable[sqlalchemy.sql.ColumnElement] = ()) sqlalchemy.sql.expression.SelectBase¶
Convert a relation tree to an executable SQLAlchemy expression.
- Parameters:
- relation
Relation The relation tree to convert.
- extra_columns
Iterable Iterable of additional SQLAlchemy column objects to include directly in the
SELECTclause.
- relation
- Returns:
- select
sqlalchemy.sql.expression.SelectBase A SQLAlchemy
SELECTor compoundSELECTquery.
- select
Notes
This method requires all relations in the tree to have the same engine (
self). It also cannot handleMaterializationoperations unless they have already been processed once already (and hence have a payload attached). Use theProcessorfunction to handle both of these cases.
- to_payload(relation: Relation) Payload[_L]¶
Internal recursive implementation of
to_executable.This method should not be called by external code, but it may be overridden and called recursively by derived engine classes.
- transfer(target: Relation, payload: Any | None = None) Select¶
Mark that a relation’s payload should be transferred from some other engine to this one.
- Parameters:
- targetRelation
Relation to transfer. If
target.engine == self, this relation will be returned directly and no transfer will be performed. Back-to-back transfers from one engine to another and back again are also simplified away (via a call toTransfer.simplify). Sequences of transfers involving more than two engines are not simplified.- payload, optional
Destination-engine-specific content for the relation to attach to the transfer. Most
Transferrelations do not have a payload; their ability to do so is mostly to support the special relation trees returned by theProcessorclass.
- Returns:
- relation
Relation New relation that marks its upstream tree to be transferred to a new engine.
- relation
See also
Processor.transfer
Notes
The default implementation calls
conformon the target relation using the target relation’s engine (i.e. notself). All override implementations should do this as well.