Warning
This document is for an old release of Galaxy. You can alternatively view this page in the latest release if it exists or view the top of the latest release's documentation.
Source code for galaxy.model.dataset_collections.structure
""" Module for reasoning about structure of and matching hierarchical collections of data.
"""
import logging
log = logging.getLogger(__name__)
[docs]class Leaf:
children_known = True
def __len__(self):
return 1
@property
def is_leaf(self):
return True
def __str__(self):
return "Leaf[]"
leaf = Leaf()
[docs]class BaseTree:
[docs] def __init__(self, collection_type_description):
self.collection_type_description = collection_type_description
[docs]class UninitializedTree(BaseTree):
children_known = False
@property
def is_leaf(self):
return False
def __len__(self):
raise Exception("Unknown length")
[docs] def multiply(self, other_structure):
if other_structure.is_leaf:
return self.clone()
new_collection_type = self.collection_type_description.multiply(other_structure.collection_type_description)
return UninitializedTree(new_collection_type)
def __str__(self):
return f"UninitializedTree[collection_type={self.collection_type_description}]"
[docs]class Tree(BaseTree):
children_known = True
[docs] def __init__(self, children, collection_type_description):
super().__init__(collection_type_description)
self.children = children
[docs] @staticmethod
def for_dataset_collection(dataset_collection, collection_type_description):
children = []
for element in dataset_collection.elements:
if collection_type_description.has_subcollections():
child_collection = element.child_collection
subcollection_type_description = collection_type_description.subcollection_type_description() # Type description of children
tree = Tree.for_dataset_collection(child_collection, collection_type_description=subcollection_type_description)
children.append((element.element_identifier, tree))
else:
children.append((element.element_identifier, leaf))
return Tree(children, collection_type_description)
[docs] def walk_collections(self, hdca_dict):
return self._walk_collections(dict_map(lambda hdca: hdca.collection, hdca_dict))
def _walk_collections(self, collection_dict):
for index, (_identifier, substructure) in enumerate(self.children):
def element(collection):
return collection[index]
if substructure.is_leaf:
yield dict_map(element, collection_dict)
else:
sub_collections = dict_map(lambda collection: element(collection).child_collection, collection_dict)
for element in substructure._walk_collections(sub_collections):
yield element
@property
def is_leaf(self):
return False
[docs] def can_match(self, other_structure):
if not self.collection_type_description.can_match_type(other_structure.collection_type_description):
return False
if len(self.children) != len(other_structure.children):
return False
for my_child, other_child in zip(self.children, other_structure.children):
# At least one is nested collection...
if my_child[1].is_leaf != other_child[1].is_leaf:
return False
if not my_child[1].is_leaf and not my_child[1].can_match(other_child[1]):
return False
return True
def __len__(self):
return sum(len(c[1]) for c in self.children)
[docs] def multiply(self, other_structure):
if other_structure.is_leaf:
return self.clone()
new_collection_type = self.collection_type_description.multiply(other_structure.collection_type_description)
new_children = []
for (identifier, structure) in self.children:
new_children.append((identifier, structure.multiply(other_structure)))
return Tree(new_children, new_collection_type)
[docs] def clone(self):
cloned_children = [(_[0], _[1].clone()) for _ in self.children]
return Tree(cloned_children, self.collection_type_description)
def __str__(self):
return f"Tree[collection_type={self.collection_type_description},children={','.join(map(lambda identifier_and_element: '{}={}'.format(identifier_and_element[0], identifier_and_element[1]), self.children))}]"
[docs]def tool_output_to_structure(get_sliced_input_collection_structure, tool_output, collections_manager):
if not tool_output.collection:
tree = leaf
else:
collection_type_descriptions = collections_manager.collection_type_descriptions
# Okay this is ToolCollectionOutputStructure not a Structure - different
# concepts of structure.
structured_like = tool_output.structure.structured_like
collection_type = tool_output.structure.collection_type
if structured_like:
tree = get_sliced_input_collection_structure(structured_like)
if collection_type and tree.collection_type_description.collection_type != collection_type:
# See tool paired_collection_map_over_structured_like - type should
# override structured_like if they disagree.
tree = UninitializedTree(collection_type_descriptions.for_collection_type(collection_type))
else:
# Can't pre-compute the structure in this case, see if we can find a collection type.
if collection_type is None and tool_output.structure.collection_type_source:
collection_type = get_sliced_input_collection_structure(tool_output.structure.collection_type_source).collection_type_description.collection_type
if not collection_type:
raise Exception(f"Failed to determine collection type for mapping over output {tool_output.name}")
tree = UninitializedTree(collection_type_descriptions.for_collection_type(collection_type))
if not tree.children_known and tree.collection_type_description.collection_type == "paired":
# TODO: We don't need to return UninitializedTree for pairs I think, we should build
# a paired tree for the known structure here.
pass
return tree
[docs]def get_structure(dataset_collection_instance, collection_type_description, leaf_subcollection_type=None):
if leaf_subcollection_type:
collection_type_description = collection_type_description.effective_collection_type_description(leaf_subcollection_type)
if hasattr(dataset_collection_instance, 'child_collection'):
collection_type_description = collection_type_description.collection_type_description_factory.for_collection_type(leaf_subcollection_type)
return UninitializedTree(collection_type_description)
collection = dataset_collection_instance.collection
return Tree.for_dataset_collection(collection, collection_type_description)