##// END OF EJS Templates
correct static path for CM modes autoload...
correct static path for CM modes autoload this shoudl also allow to require CM python mode for ipython mode and only pass a config options.

File last commit:

r11089:45d39d22
r11236:cd4fbcb1
Show More
base.py
99 lines | 3.4 KiB | text/x-python | PythonLexer
"""
Module that re-groups transformer that would be applied to ipynb files
before going through the templating machinery.
It exposes a convenient class to inherit from to access configurability.
"""
#-----------------------------------------------------------------------------
# Copyright (c) 2013, the IPython Development Team.
#
# Distributed under the terms of the Modified BSD License.
#
# The full license is in the file COPYING.txt, distributed with this software.
#-----------------------------------------------------------------------------
#-----------------------------------------------------------------------------
# Imports
#-----------------------------------------------------------------------------
from ..utils.config import GlobalConfigurable
#-----------------------------------------------------------------------------
# Classes and Functions
#-----------------------------------------------------------------------------
class ConfigurableTransformer(GlobalConfigurable):
""" A configurable transformer
Inherit from this class if you wish to have configurability for your
transformer.
Any configurable traitlets this class exposed will be configurable in profiles
using c.SubClassName.atribute=value
you can overwrite cell_transform to apply a transformation independently on each cell
or __call__ if you prefer your own logic. See corresponding docstring for informations.
"""
def __init__(self, config=None, **kw):
"""
Public constructor
Parameters
----------
config : Config
Configuration file structure
**kw : misc
Additional arguments
"""
super(ConfigurableTransformer, self).__init__(config=config, **kw)
def __call__(self, nb, resources):
return self.call(nb,resources)
def call(self, nb, resources):
"""
Transformation to apply on each notebook.
You should return modified nb, resources.
If you wish to apply your transform on each cell, you might want to
overwrite cell_transform method instead.
Parameters
----------
nb : NotebookNode
Notebook being converted
resources : dictionary
Additional resources used in the conversion process. Allows
transformers to pass variables into the Jinja engine.
"""
try :
for worksheet in nb.worksheets :
for index, cell in enumerate(worksheet.cells):
worksheet.cells[index], resources = self.cell_transform(cell, resources, index)
return nb, resources
except NotImplementedError:
raise NotImplementedError('should be implemented by subclass')
def cell_transform(self, cell, resources, index):
"""
Overwrite if you want to apply a transformation on each cell. You
should return modified cell and resource dictionary.
Parameters
----------
cell : NotebookNode cell
Notebook cell being processed
resources : dictionary
Additional resources used in the conversion process. Allows
transformers to pass variables into the Jinja engine.
index : int
Index of the cell being processed
"""
raise NotImplementedError('should be implemented by subclass')
return cell, resources