Exemple #1
0
    def wrap_values(self, inputs, input_values, skip_missing_values=False):
        trans = self.trans
        tool = self.tool
        incoming = self.incoming

        element_identifier_mapper = ElementIdentifierMapper(self._input_datasets)

        # Wrap tool inputs as necessary
        for input in inputs.values():
            if input.name not in input_values and skip_missing_values:
                continue
            value = input_values[input.name]
            copy_identifiers(destination=value, source=input_values)
            if isinstance(input, Repeat):
                for d in value:
                    copy_identifiers(destination=d, source=value)
                    self.wrap_values(input.inputs, d, skip_missing_values=skip_missing_values)
            elif isinstance(input, Conditional):
                values = value
                current = values["__current_case__"]
                self.wrap_values(input.cases[current].inputs, values, skip_missing_values=skip_missing_values)
            elif isinstance(input, Section):
                values = value
                self.wrap_values(input.inputs, values, skip_missing_values=skip_missing_values)
            elif isinstance(input, DataToolParameter) and input.multiple:
                dataset_instances = DatasetListWrapper.to_dataset_instances(value)
                input_values[input.name] = \
                    DatasetListWrapper(None,
                                       dataset_instances,
                                       datatypes_registry=trans.app.datatypes_registry,
                                       tool=tool,
                                       name=input.name,
                                       formats=input.formats)
            elif isinstance(input, DataToolParameter):
                wrapper_kwds = dict(
                    datatypes_registry=trans.app.datatypes_registry,
                    tool=tool,
                    name=input.name,
                    formats=input.formats
                )
                element_identifier = element_identifier_mapper.identifier(value, input_values)
                if element_identifier:
                    wrapper_kwds["identifier"] = element_identifier

                input_values[input.name] = DatasetFilenameWrapper(value, **wrapper_kwds)
            elif isinstance(input, SelectToolParameter):
                input_values[input.name] = SelectToolParameterWrapper(input, value, other_values=incoming)
            elif isinstance(input, DataCollectionToolParameter):
                input_values[input.name] = DatasetCollectionWrapper(
                    None,
                    value,
                    datatypes_registry=trans.app.datatypes_registry,
                    tool=tool,
                    name=input.name,
                )
            else:
                input_values[input.name] = InputValueWrapper(input, value, incoming)
    def wrap_values(self, inputs, input_values, skip_missing_values=False):
        trans = self.trans
        tool = self.tool
        incoming = self.incoming

        element_identifier_mapper = ElementIdentifierMapper(self._input_datasets)

        # Wrap tool inputs as necessary
        for input in inputs.values():
            if input.name not in input_values and skip_missing_values:
                continue
            value = input_values[input.name]
            copy_identifiers(destination=value, source=input_values)
            if isinstance(input, Repeat):
                for d in value:
                    copy_identifiers(destination=d, source=value)
                    self.wrap_values(input.inputs, d, skip_missing_values=skip_missing_values)
            elif isinstance(input, Conditional):
                values = value
                current = values["__current_case__"]
                self.wrap_values(input.cases[current].inputs, values, skip_missing_values=skip_missing_values)
            elif isinstance(input, Section):
                values = value
                self.wrap_values(input.inputs, values, skip_missing_values=skip_missing_values)
            elif isinstance(input, DataToolParameter) and input.multiple:
                dataset_instances = DatasetListWrapper.to_dataset_instances(value)
                input_values[input.name] = \
                    DatasetListWrapper(None,
                                       dataset_instances,
                                       datatypes_registry=trans.app.datatypes_registry,
                                       tool=tool,
                                       name=input.name)
            elif isinstance(input, DataToolParameter):
                wrapper_kwds = dict(
                    datatypes_registry=trans.app.datatypes_registry,
                    tool=tool,
                    name=input.name
                )
                element_identifier = element_identifier_mapper.identifier(value, input_values)
                if element_identifier:
                    wrapper_kwds["identifier"] = element_identifier

                input_values[input.name] = DatasetFilenameWrapper(value, **wrapper_kwds)
            elif isinstance(input, SelectToolParameter):
                input_values[input.name] = SelectToolParameterWrapper(input, value, other_values=incoming)
            elif isinstance(input, DataCollectionToolParameter):
                input_values[input.name] = DatasetCollectionWrapper(
                    None,
                    value,
                    datatypes_registry=trans.app.datatypes_registry,
                    tool=tool,
                    name=input.name,
                )
            else:
                input_values[input.name] = InputValueWrapper(input, value, incoming)
Exemple #3
0
    def __populate_wrappers(self, param_dict, input_datasets, job_working_directory):

        def wrap_input(input_values, input):
            value = input_values[input.name]
            if isinstance(input, DataToolParameter) and input.multiple:
                dataset_instances = DatasetListWrapper.to_dataset_instances(value)
                input_values[input.name] = \
                    DatasetListWrapper(job_working_directory,
                                       dataset_instances,
                                       compute_environment=self.compute_environment,
                                       datatypes_registry=self.app.datatypes_registry,
                                       tool=self.tool,
                                       name=input.name,
                                       formats=input.formats)

            elif isinstance(input, DataToolParameter):
                dataset = input_values[input.name]
                wrapper_kwds = dict(
                    datatypes_registry=self.app.datatypes_registry,
                    tool=self,
                    name=input.name,
                    compute_environment=self.compute_environment
                )
                element_identifier = element_identifier_mapper.identifier(dataset, param_dict)
                if element_identifier:
                    wrapper_kwds["identifier"] = element_identifier
                input_values[input.name] = \
                    DatasetFilenameWrapper(dataset, **wrapper_kwds)
            elif isinstance(input, DataCollectionToolParameter):
                dataset_collection = value
                wrapper_kwds = dict(
                    datatypes_registry=self.app.datatypes_registry,
                    compute_environment=self.compute_environment,
                    tool=self,
                    name=input.name
                )
                wrapper = DatasetCollectionWrapper(
                    job_working_directory,
                    dataset_collection,
                    **wrapper_kwds
                )
                input_values[input.name] = wrapper
            elif isinstance(input, SelectToolParameter):
                if input.multiple:
                    value = listify(value)
                input_values[input.name] = SelectToolParameterWrapper(
                    input, value, other_values=param_dict, compute_environment=self.compute_environment)
            else:
                input_values[input.name] = InputValueWrapper(
                    input, value, param_dict)

        # HACK: only wrap if check_values is not false, this deals with external
        #       tools where the inputs don't even get passed through. These
        #       tools (e.g. UCSC) should really be handled in a special way.
        if self.tool.check_values:
            element_identifier_mapper = ElementIdentifierMapper(input_datasets)
            self.__walk_inputs(self.tool.inputs, param_dict, wrap_input)
Exemple #4
0
    def __populate_wrappers(self, param_dict, input_datasets, job_working_directory):

        def wrap_input(input_values, input):
            value = input_values[input.name]
            if isinstance(input, DataToolParameter) and input.multiple:
                dataset_instances = DatasetListWrapper.to_dataset_instances(value)
                input_values[input.name] = \
                    DatasetListWrapper(job_working_directory,
                                       dataset_instances,
                                       compute_environment=self.compute_environment,
                                       datatypes_registry=self.app.datatypes_registry,
                                       tool=self.tool,
                                       name=input.name,
                                       formats=input.formats)

            elif isinstance(input, DataToolParameter):
                # FIXME: We're populating param_dict with conversions when
                #        wrapping values, this should happen as a separate
                #        step before wrapping (or call this wrapping step
                #        something more generic) (but iterating this same
                #        list twice would be wasteful)
                # Add explicit conversions by name to current parent
                for conversion_name, conversion_extensions, conversion_datatypes in input.conversions:
                    # If we are at building cmdline step, then converters
                    # have already executed
                    direct_match, conv_ext, converted_dataset = input_values[input.name].find_conversion_destination(conversion_datatypes)
                    # When dealing with optional inputs, we'll provide a
                    # valid extension to be used for None converted dataset
                    if not direct_match and not conv_ext:
                        conv_ext = conversion_extensions[0]
                    # input_values[ input.name ] is None when optional
                    # dataset, 'conversion' of optional dataset should
                    # create wrapper around NoneDataset for converter output
                    if input_values[input.name] and not converted_dataset:
                        # Input that converter is based from has a value,
                        # but converted dataset does not exist
                        raise Exception('A path for explicit datatype conversion has not been found: %s --/--> %s'
                                        % (input_values[input.name].extension, conversion_extensions))
                    else:
                        # Trick wrapper into using target conv ext (when
                        # None) without actually being a tool parameter
                        input_values[conversion_name] = \
                            DatasetFilenameWrapper(converted_dataset,
                                                   datatypes_registry=self.app.datatypes_registry,
                                                   tool=Bunch(conversion_name=Bunch(extensions=conv_ext)),
                                                   name=conversion_name)
                # Wrap actual input dataset
                dataset = input_values[input.name]
                wrapper_kwds = dict(
                    datatypes_registry=self.app.datatypes_registry,
                    tool=self,
                    name=input.name,
                    compute_environment=self.compute_environment
                )
                element_identifier = element_identifier_mapper.identifier(dataset, param_dict)
                if element_identifier:
                    wrapper_kwds["identifier"] = element_identifier
                input_values[input.name] = \
                    DatasetFilenameWrapper(dataset, **wrapper_kwds)
            elif isinstance(input, DataCollectionToolParameter):
                dataset_collection = value
                wrapper_kwds = dict(
                    datatypes_registry=self.app.datatypes_registry,
                    compute_environment=self.compute_environment,
                    tool=self,
                    name=input.name
                )
                wrapper = DatasetCollectionWrapper(
                    job_working_directory,
                    dataset_collection,
                    **wrapper_kwds
                )
                input_values[input.name] = wrapper
            elif isinstance(input, SelectToolParameter):
                if input.multiple:
                    value = listify(value)
                input_values[input.name] = SelectToolParameterWrapper(
                    input, value, other_values=param_dict, compute_environment=self.compute_environment)
            else:
                input_values[input.name] = InputValueWrapper(
                    input, value, param_dict)

        # HACK: only wrap if check_values is not false, this deals with external
        #       tools where the inputs don't even get passed through. These
        #       tools (e.g. UCSC) should really be handled in a special way.
        if self.tool.check_values:
            element_identifier_mapper = ElementIdentifierMapper(input_datasets)
            self.__walk_inputs(self.tool.inputs, param_dict, wrap_input)