"""This module defines a base Exporter class. For Jinja template-based export, see templateexporter.py. """ # Copyright (c) Jupyter Development Team. # Distributed under the terms of the Modified BSD License. from __future__ import print_function, absolute_import import io import os import copy import collections import datetime import sys import nbformat from traitlets.config.configurable import LoggingConfigurable from traitlets.config import Config from traitlets import Bool, HasTraits, Unicode, List, TraitError from traitlets.utils.importstring import import_item from typing import Optional class ResourcesDict(collections.defaultdict): def __missing__(self, key): return '' class FilenameExtension(Unicode): """A trait for filename extensions.""" default_value = u'' info_text = 'a filename extension, beginning with a dot' def validate(self, obj, value): # cast to proper unicode value = super().validate(obj, value) # check that it starts with a dot if value and not value.startswith('.'): msg = "FileExtension trait '{}' does not begin with a dot: {!r}" raise TraitError(msg.format(self.name, value)) return value class Exporter(LoggingConfigurable): """ Class containing methods that sequentially run a list of preprocessors on a NotebookNode object and then return the modified NotebookNode object and accompanying resources dict. """ enabled = Bool(True, help = "Disable this exporter (and any exporters inherited from it)." ).tag(config=True) file_extension = FilenameExtension( help="Extension of the file that should be written to disk" ).tag(config=True) # MIME type of the result file, for HTTP response headers. # This is *not* a traitlet, because we want to be able to access it from # the class, not just on instances. output_mimetype = '' # Should this converter be accessible from the notebook front-end? # If so, should be a friendly name to display (and possibly translated). export_from_notebook = None #Configurability, allows the user to easily add filters and preprocessors. preprocessors = List( help="""List of preprocessors, by name or namespace, to enable.""" ).tag(config=True) _preprocessors = List() default_preprocessors = List([ 'nbconvert.preprocessors.TagRemovePreprocessor', 'nbconvert.preprocessors.RegexRemovePreprocessor', 'nbconvert.preprocessors.ClearOutputPreprocessor', 'nbconvert.preprocessors.ExecutePreprocessor', 'nbconvert.preprocessors.coalesce_streams', 'nbconvert.preprocessors.SVG2PDFPreprocessor', 'nbconvert.preprocessors.LatexPreprocessor', 'nbconvert.preprocessors.HighlightMagicsPreprocessor', 'nbconvert.preprocessors.ExtractOutputPreprocessor', 'nbconvert.preprocessors.ClearMetadataPreprocessor', ], help="""List of preprocessors available by default, by name, namespace, instance, or type.""" ).tag(config=True) def __init__(self, config=None, **kw): """ Public constructor Parameters ---------- config : ``traitlets.config.Config`` User configuration instance. `**kw` Additional keyword arguments passed to parent __init__ """ with_default_config = self.default_config if config: with_default_config.merge(config) super().__init__(config=with_default_config, **kw) self._init_preprocessors() @property def default_config(self): return Config() def from_notebook_node(self, nb, resources=None, **kw): """ Convert a notebook from a notebook node instance. Parameters ---------- nb : `nbformat.NotebookNode` Notebook node (dict-like with attr-access) resources : dict Additional resources that can be accessed read/write by preprocessors and filters. `**kw` Ignored """ nb_copy = copy.deepcopy(nb) resources = self._init_resources(resources) if 'language' in nb['metadata']: resources['language'] = nb['metadata']['language'].lower() # Preprocess nb_copy, resources = self._preprocess(nb_copy, resources) return nb_copy, resources def from_filename(self, filename: str, resources: Optional[dict] = None, **kw): """ Convert a notebook from a notebook file. Parameters ---------- filename : str Full filename of the notebook file to open and convert. resources : dict Additional resources that can be accessed read/write by preprocessors and filters. `**kw` Ignored """ # Pull the metadata from the filesystem. if resources is None: resources = ResourcesDict() if not 'metadata' in resources or resources['metadata'] == '': resources['metadata'] = ResourcesDict() path, basename = os.path.split(filename) notebook_name = os.path.splitext(basename)[0] resources['metadata']['name'] = notebook_name resources['metadata']['path'] = path modified_date = datetime.datetime.fromtimestamp(os.path.getmtime(filename)) # datetime.strftime date format for ipython if sys.platform == 'win32': date_format = "%B %d, %Y" else: date_format = "%B %-d, %Y" resources['metadata']['modified_date'] = modified_date.strftime(date_format) with io.open(filename, encoding='utf-8') as f: return self.from_file(f, resources=resources, **kw) def from_file(self, file_stream, resources=None, **kw): """ Convert a notebook from a notebook file. Parameters ---------- file_stream : file-like object Notebook file-like object to convert. resources : dict Additional resources that can be accessed read/write by preprocessors and filters. `**kw` Ignored """ return self.from_notebook_node(nbformat.read(file_stream, as_version=4), resources=resources, **kw) def register_preprocessor(self, preprocessor, enabled=False): """ Register a preprocessor. Preprocessors are classes that act upon the notebook before it is passed into the Jinja templating engine. preprocessors are also capable of passing additional information to the Jinja templating engine. Parameters ---------- preprocessor : `Preprocessor` A dotted module name, a type, or an instance enabled : bool Mark the preprocessor as enabled """ if preprocessor is None: raise TypeError('preprocessor must not be None') isclass = isinstance(preprocessor, type) constructed = not isclass # Handle preprocessor's registration based on it's type if constructed and isinstance(preprocessor, str,): # Preprocessor is a string, import the namespace and recursively call # this register_preprocessor method preprocessor_cls = import_item(preprocessor) return self.register_preprocessor(preprocessor_cls, enabled) if constructed and hasattr(preprocessor, '__call__'): # Preprocessor is a function, no need to construct it. # Register and return the preprocessor. if enabled: preprocessor.enabled = True self._preprocessors.append(preprocessor) return preprocessor elif isclass and issubclass(preprocessor, HasTraits): # Preprocessor is configurable. Make sure to pass in new default for # the enabled flag if one was specified. self.register_preprocessor(preprocessor(parent=self), enabled) elif isclass: # Preprocessor is not configurable, construct it self.register_preprocessor(preprocessor(), enabled) else: # Preprocessor is an instance of something without a __call__ # attribute. raise TypeError('preprocessor must be callable or an importable constructor, got %r' % preprocessor) def _init_preprocessors(self): """ Register all of the preprocessors needed for this exporter, disabled unless specified explicitly. """ self._preprocessors = [] # Load default preprocessors (not necessarily enabled by default). for preprocessor in self.default_preprocessors: self.register_preprocessor(preprocessor) # Load user-specified preprocessors. Enable by default. for preprocessor in self.preprocessors: self.register_preprocessor(preprocessor, enabled=True) def _init_resources(self, resources): #Make sure the resources dict is of ResourcesDict type. if resources is None: resources = ResourcesDict() if not isinstance(resources, ResourcesDict): new_resources = ResourcesDict() new_resources.update(resources) resources = new_resources #Make sure the metadata extension exists in resources if 'metadata' in resources: if not isinstance(resources['metadata'], ResourcesDict): new_metadata = ResourcesDict() new_metadata.update(resources['metadata']) resources['metadata'] = new_metadata else: resources['metadata'] = ResourcesDict() if not resources['metadata']['name']: resources['metadata']['name'] = 'Notebook' #Set the output extension resources['output_extension'] = self.file_extension return resources def _preprocess(self, nb, resources): """ Preprocess the notebook before passing it into the Jinja engine. To preprocess the notebook is to successively apply all the enabled preprocessors. Output from each preprocessor is passed along to the next one. Parameters ---------- nb : notebook node notebook that is being exported. resources : a dict of additional resources that can be accessed read/write by preprocessors """ # Do a copy.deepcopy first, # we are never safe enough with what the preprocessors could do. nbc = copy.deepcopy(nb) resc = copy.deepcopy(resources) # Run each preprocessor on the notebook. Carry the output along # to each preprocessor for preprocessor in self._preprocessors: nbc, resc = preprocessor(nbc, resc) try: nbformat.validate(nbc, relax_add_props=True) except nbformat.ValidationError: self.log.error('Notebook is invalid after preprocessor %s', preprocessor) raise return nbc, resc