Metadata-Version: 2.1
Name: jupytext
Version: 1.0.2
Summary: Jupyter notebooks as Markdown documents, Julia, Python or R scripts
Home-page: https://github.com/mwouts/jupytext
Author: Marc Wouts
Author-email: marc.wouts@gmail.com
License: MIT
Description: # Jupyter notebooks as Markdown documents, Julia, Python or R scripts
        
        [![Build Status](https://travis-ci.com/mwouts/jupytext.svg?branch=master)](https://travis-ci.com/mwouts/jupytext)
        [![codecov.io](https://codecov.io/github/mwouts/jupytext/coverage.svg?branch=master)](https://codecov.io/github/mwouts/jupytext?branch=master)
        [![Language grade: Python](https://img.shields.io/badge/lgtm-A+-brightgreen.svg)](https://lgtm.com/projects/g/mwouts/jupytext/context:python)
        
        Have you always wished Jupyter notebooks were plain text documents? Wished you could edit them in your favorite IDE? And get clear and meaningfull diffs when doing version control? Then... Jupytext may well be the tool you're looking for!
        
        Jupytext can save Jupyter notebooks as
        - Markdown and R Markdown documents,
        - Julia, Python, R, Bash, Scheme, Clojure, C++ and q/kdb+ scripts.
        
        There are multiple ways to use `jupytext`:
        - Directly from Jupyter Notebook or JupyterLab. Jupytext provides a _contents manager_ that allows Jupyter to save your notebook to your favorite format (`.py`, `.R`, `.jl`, `.md`, `.Rmd`...) in addition to (or in place of) the traditional `.ipynb` file. The text representation can be edited in your favorite editor. When you're done, refresh the notebook in Jupyter: inputs cells are loaded from the text file, while output cells are reloaded from the `.ipynb` file if present. Refreshing preserves kernel variables, so you can resume your work in the notebook and run the modified cells without having to rerun the notebook in full.
        - On the [command line](#command-line-conversion). `jupytext` converts Jupyter notebooks to their text representation, and back. The command line tool can act on noteboks in many ways. It can synchronize multiple representations of a notebook, pipe a notebook into a reformatting tool like `black`, etc... It can also work as a [pre-commit hook](#jupytext-as-a-git-pre-commit-hook) if you wish to automatically update the text representation when you commit the `.ipynb` file.
        - in Vim: edit your Jupyter notebooks, represented as a Markdown document, or a Python script, with [jupytext.vim](https://github.com/goerz/jupytext.vim).
        
        ## Demo time
        
        [![Introducing Jupytext](https://img.shields.io/badge/TDS-Introducing%20Jupytext-blue.svg)](https://towardsdatascience.com/introducing-jupytext-9234fdff6c57)
        [![PyParis](https://img.shields.io/badge/YouTube-PyParis-red.svg)](https://www.youtube.com/watch?v=y-VEZenk824)
        [![Binder](https://img.shields.io/badge/Binder-Try%20it!-blue.svg)](https://mybinder.org/v2/gh/mwouts/jupytext_pyparis_2018/master?filepath=demo)
        
        Looking for a demo?
        - Read the original [announcement](https://towardsdatascience.com/introducing-jupytext-9234fdff6c57) in Towards Data Science,
        - Watch the [PyParis talk](https://github.com/mwouts/jupytext_pyparis_2018/blob/master/README.md),
        - or, try Jupytext online with [binder](https://mybinder.org/v2/gh/mwouts/jupytext_pyparis_2018/master?filepath=demo)!
        
        ## Example usage
        
        ### Writing notebooks as plain text
        
        You like to work with scripts? The good news is that plain scripts, which you can draft and test in your favorite IDE, open transparently as notebooks in Jupyter when using Jupytext. Run the notebook in Jupyter to generate the outputs, [associate](#paired-notebooks) an `.ipynb` representation, save and share your research as either a plain script or as a traditional Jupyter notebook with outputs.
        
        ### Collaborating on Jupyter Notebooks
        
        With Jupytext, collaborating on Jupyter notebooks with Git becomes as easy as collaborating on text files.
        
        The setup is straightforward:
        - Open your favorite notebook in Jupyter notebook
        - [Associate](#paired-notebooks) a `.py` representation (for instance) to that notebook
        - Save the notebook, and put the Python script under Git control. Sharing the `.ipynb` file is possible, but not required.
        
        Collaborating then works as follows:
        - Your collaborator pulls your script.
        - The script opens as a notebook in Jupyter, with no outputs (in JupyterLab this requires a [right-click](#jupyter-notebook-or-jupyterlab)).
        - They run the notebook and save it. Outputs are regenerated, and a local `.ipynb` file is created.
        - Note that, alternatively, the `.ipynb` file could have been regenerated with `jupytext --sync notebook.py`.
        - They change the notebook, and push their updated script. The diff is nothing else than a standard diff on a Python script.
        - You pull the changed script, and refresh your browser. Input cells are updated. The outputs from cells that were changed are removed. Your variables are untouched, so you have the option to run only the modified cells to get the new outputs.
        
        ### Code refactoring
        
        In the animation below we propose a quick demo of Jupytext. While the example remains simple, it shows how your favorite text editor or IDE can be used to edit your Jupyter notebooks. IDEs are more convenient than Jupyter for navigating through code, editing and executing cells or fractions of cells, and debugging.
        
        - We start with a Jupyter notebook.
        - The notebook includes a plot of the world population. The plot legend is not in order of decreasing population, we'll fix this.
        - We want the notebook to be saved as both a `.ipynb` and a `.py` file: we select _Pair Notebook with a light Script_ in the File/Jupytext menu, which has the effet to add a `"jupytext": {"formats": "ipynb,py:light"},` entry to the notebook metadata.
        - The Python script can be opened with PyCharm:
          - Navigating in the code and documentation is easier than in Jupyter.
          - The console is convenient for quick tests. We don't need to create cells for this.
          - We find out that the columns of the data frame were not in the correct order. We update the corresponding cell, and get the correct plot.
        - The Jupyter notebook is refreshed in the browser. Modified inputs are loaded from the Python script. Outputs and variables are preserved. We finally rerun the code and get the correct plot.
        
        ![](https://gist.githubusercontent.com/mwouts/13de42d8bb514e4acf6481c580feffd0/raw/b8dd28f44678f8c91f262da2381276fc4d03b00a/JupyterPyCharm.gif)
        
        ### Importing Jupyter Notebooks as modules
        
        Jupytext allows to import code from other Jupyter notebooks in a very simple manner. Indeed, all you need to do is to pair the notebook that you wish to import with a script, and import the resulting script.
        
        If the notebook contains demos and plots that you don't want to import, mark those cell as either
        - _active_ only in the `ipynb` format, with the `{"active": "ipynb"}` cell metadata
        - _frozen_, using the [freeze extension](https://jupyter-contrib-nbextensions.readthedocs.io/en/latest/nbextensions/freeze/readme.html) for Jupyter notebook.
        
        Inactive cells will be commented in the paired script, and consequently will not be executed when the script is imported.
        
        ## Installation
        
        [![Conda Version](https://img.shields.io/conda/vn/conda-forge/jupytext.svg)](https://anaconda.org/conda-forge/jupytext)
        [![Pypi](https://img.shields.io/pypi/v/jupytext.svg)](https://pypi.python.org/pypi/jupytext)
        [![pyversions](https://img.shields.io/pypi/pyversions/jupytext.svg)](https://pypi.python.org/pypi/jupytext)
        
        Jupytext is available on pypi and on conda-forge. Run either of
        ```bash
        pip install jupytext --upgrade
        ```
        or
        ```bash
        conda install -c conda-forge jupytext
        ```
        
        If you want to use Jupytext within Jupyter Notebook or JupyterLab, make sure you install Jupytext in the Python environment where the Jupyter server runs. If that environment is read-only, for instance if your server is started using JupyterHub, install Jupytext in user mode with:
        ```
        /path_to_your_jupyter_environment/python -m pip install jupytext --upgrade --user
        ```
        
        ### Jupytext's contents manager
        
        Jupytext includes a contents manager for Jupyter that allows Jupyter to open and save notebooks as text files. When Jupytext's content manager is active in Jupyter, scripts and Markdown documents have a notebook icon.
        
        If you don't have the notebook icon on text documents after a fresh restart of your Jupyter server, install the contents manager manually. Append
        ```python
        c.NotebookApp.contents_manager_class = "jupytext.TextFileContentsManager"
        ```
        to your `.jupyter/jupyter_notebook_config.py` file (generate a Jupyter config, if you don't have one yet, with `jupyter notebook --generate-config`). Our contents manager accepts a few options: default formats, default metadata filter, etc &mdash; read more on this [below](#global-configuration). Then, restart Jupyter Notebook or JupyterLab, either from the JupyterHub interface or from the command line with
        ```bash
        jupyter notebook # or lab
        ```
        
        ### Jupytext menu in Jupyter Notebook
        
        Jupytext includes an extensions for Jupyter Notebook that adds a Jupytext section in the File menu.
        
        ![Jupyter notebook extension](https://raw.githubusercontent.com/mwouts/jupytext_nbextension/master/jupytext_menu.png)
        
        If the extension was not automatically installed, install and activate it with
        ```
        jupyter nbextension install --py jupytext [--user]
        jupyter nbextension enable --py jupytext [--user]
        ```
        
        ### Jupytext commands in JupyterLab
        
        In JupyterLab, Jupytext adds a set of commands to the command palette:
        
        ![JupyterLab extension](https://raw.githubusercontent.com/mwouts/jupyterlab-jupytext/master/jupytext_commands.png)
        
        If you don't see these commands, install the extension manually with
        ```
        jupyter labextension install jupyterlab-jupytext
        ```
        (the above requires `npm`, run `conda install nodejs` first if you don't have `npm`).
        
        ## <a name="paired-notebooks"></a> Paired notebooks
        
        Jupytext can write a given notebook to multiple files. In addition to the original notebook file, Jupytext can save the input cells to a text file &mdash; either a script or a Markdown document. Put the text file under version control for a clear commit history. Or refactor the paired script, and reimport the updated input cells by simply refreshing the notebook in Jupyter.
        
        ### Per-notebook configuration
        
        Select the pairing for a given notebook using either the Jupytext menu in Jupyter Notebook, or the Jupytext commands in JupyterLab.
        
        These command simply add a `"jupytext": {"formats": "ipynb,md"}`-like entry in the notebook metadata. You could also set that metadata yourself with _Edit/Edit Notebook Metadata_ in Jupyter Notebook. In JupyterLab, use [this extension](https://github.com/yuvipanda/jupyterlab-nbmetadata).
        
        The pairing information for one or multiple notebooks can be set on the command line:
        ```
        jupytext --set-formats ipynb,py [--sync] notebook.ipynb
        ```
        You can pair a notebook to as many text representations as you want (see our _World population_ notebook in the demo folder). Format specifications are of the form
        ```
        [[path/][prefix]/][suffix.]ext[:format_name]
        ```
        where
        - `ext` is one of `ipynb`, `md`, `Rmd`, `jl`, `py`, `R`, `sh`, `cpp`, `q`. Use the `auto` extension to have the script extension chosen according to the Jupyter kernel.
        - `format_name` (optional) is either `light` (default for scripts), `bare`, `percent`, `hydrogen`, `sphinx` (Python only), `spin` (R only) &mdash; see below for the [format specifications](#Format-specifications).
        - `path`, `prefix` and `suffix` allow to save the text representation to files with different names, or in a different folder.
        
        If you want to pair a notebook to a python script in a subfolder named `scripts`, set the formats metadata to `ipynb,scripts//py`. If the notebook is in a `notebooks` folder and you want the text representation to be in a `scripts` folder at the same level, set the Jupytext formats to `notebooks//ipynb,scripts//py`.
        
        Jupytext accepts a few additional options. These options should be added to the `"jupytext"` section in the metadata &mdash; use either the metadata editor or the `--opt/--format-options` argument on the command line.
        - `comment_magics`: By default, Jupyter magics are commented when notebooks are exported to any other format than markdown. If you prefer otherwise, use this boolean option, or is global counterpart (see below).
        - `notebook_metadata_filter`: By default, Jupytext only exports the `kernelspec` and `jupytext` metadata to the text files. Set `"jupytext": {"notebook_metadata_filter": "-all"}` if you want that the script has no notebook metadata at all. The value for `notebook_metadata_filter` is a comma separated list of additional/excluded (negated) entries, with `all` a keyword that allows to exclude all entries.
        - `cell_metadata_filter`: By default, cell metadata `autoscroll`, `collapsed`, `scrolled`, `trusted` and `ExecuteTime` are not included in the text representation. Add or exclude more cell metadata with this option.
        
        ### Global configuration
        
        Jupytext's contents manager also accepts global options. We start with the default format pairing. Say you want to always associate every `.ipynb` notebook with a `.md` file  (and reciprocally). This is simply done by adding the following to your Jupyter configuration file:
        ```python
        # Always pair ipynb notebooks to md files
        c.ContentsManager.default_jupytext_formats = "ipynb,md"
        ```
        (and similarly for the other formats).
        
        In case the [`percent`](#the-percent-format) format is your favorite, add the following to your `.jupyter/jupyter_notebook_config.py` file:
        ```python
        # Use the percent format when saving as py
        c.ContentsManager.preferred_jupytext_formats_save = "py:percent"
        ```
        and then, Jupytext will understand `"jupytext": {"formats": "ipynb,py"}` as an instruction to create the paired Python script in the `percent` format.
        
        To disable global pairing for an individual notebook, set formats to a single format, e.g.:
        `"jupytext": {"formats": "ipynb"}`
        
        ### Metadata filtering
        
        You can specify which metadata to include or exclude in the text files created by Jupytext by setting `c.ContentsManager.default_notebook_metadata_filter` (notebook metadata) and `c.ContentsManager.default_cell_metadata_filter` (cell metadata). They accept a string of comma separated keywords. A minus sign `-` in font of a keyword means exclusion.
        
        Suppose you want to keep all the notebook metadata but `widgets` and `varInspector` in the YAML header. For cell metadata, you want to allow `ExecuteTime` and `autoscroll`, but not `hide_output`. You can set
        ```python
        c.ContentsManager.default_notebook_metadata_filter = "all,-widgets,-varInspector"
        c.ContentsManager.default_cell_metadata_filter = "ExecuteTime,autoscroll,-hide_output"
        ```
        
        If you want that the text files created by Jupytext have no metadata, you may use the global metadata filters below. Please note that with this setting, the metadata is only preserved in the `.ipynb` file.
        ```python
        c.ContentsManager.default_notebook_metadata_filter = "-all"
        c.ContentsManager.default_cell_metadata_filter = "-all"
        ```
        
        NB: All these global options (and more) are documented [here](https://github.com/mwouts/jupytext/blob/master/jupytext/contentsmanager.py).
        
        ## How to edit the notebook simultaneously in Jupyter and a text editor?
        
        When editing a paired notebook using Jupytext's contents manager, Jupyter updates both the `.ipynb` and its text representation. The text representation can be edited outside of Jupyter. When the notebook is refreshed in Jupyter, the input cells are read from the text file, and the output cells from the `.ipynb` file.
        
        It is possible (and convenient) to leave the notebook open in Jupyter while you edit its text representation. However, you don't want that the two editors save the notebook simultaneously. To avoid this:
        - deactivate Jupyter's autosave, by toggling the `"Autosave notebook"` menu entry (or run `%autosave 0` in a cell of the notebook)
        - and refresh the notebook when you switch back from the editor to Jupyter.
        
        In case you forgot to refresh, and saved the Jupyter notebook while the text representation had changed, no worries: Jupyter will ask you which version you want to keep:
        ![Notebook changed](https://gist.githubusercontent.com/mwouts/13de42d8bb514e4acf6481c580feffd0/raw/fcbcd3c3fc1ec4a74669381b53753f9f783e10da/notebook_changed.png)
        
        When that occurs, please choose the version in which you made the latest changes. And give a second look to our advice to deactivate the autosaving of notebooks in Jupyter.
        
        ## How to open scripts with either the text or notebook view in Jupyter?
        
        With Jupytext's contents manager for Jupyter, scripts and Markdown documents gain a notebook icon. If you don't see the notebook icon, double check the [contents manager configuration](https://github.com/mwouts/jupytext/blob/master/README.md#jupytexts-contents-manager).
        
        By default, Jupyter Notebook open scripts and Markdown documents as notebooks. If you want to open them with the text editor, select the document and click on _edit_:
        
        ![Open as text](https://user-images.githubusercontent.com/29915202/53228364-42265400-3681-11e9-812d-46168c6e398c.png)
        
        In JupyterLab this is slightly different. Scripts and Markdown document also have a notebook icon. But they open as text by default. Open them as notebooks with the  _Open With -> Notebook_ context menu (available in JupyterLab 0.35 and above):
        
        ![](https://gist.githubusercontent.com/mwouts/13de42d8bb514e4acf6481c580feffd0/raw/403b53ac5097446a15ea664579ba44cd1badcc57/ContextMenuLab.png)
        
        ## Command line conversion
        
        The package provides a `jupytext` script for command line conversion between the various notebook extensions:
        
        ```bash
        jupytext --to python notebook.ipynb             # create a notebook.py file
        jupytext --to py:percent notebook.ipynb         # create a notebook.py file in the double percent format
        jupytext --to py:percent --comment-magics false notebook.ipynb   # create a notebook.py file in the double percent format, and do not comment magic commands
        jupytext --to markdown notebook.ipynb           # create a notebook.md file
        jupytext --output script.py notebook.ipynb      # create a script.py file
        
        jupytext --to notebook notebook.py              # overwrite notebook.ipynb (remove outputs)
        jupytext --to notebook --update notebook.py     # update notebook.ipynb (preserve outputs)
        jupytext --to ipynb notebook1.md notebook2.py   # overwrite notebook1.ipynb and notebook2.ipynb
        
        jupytext --to md --test notebook.ipynb          # Test round trip conversion
        
        jupytext --to md --output - notebook.ipynb      # display the markdown version on screen
        jupytext --from ipynb --to py:percent           # read ipynb from stdin and write double percent script on stdout
        ```
        
        Jupytext has a `--sync` mode that updates all the paired representations of a notebook based on the file that was last modified. You may also find useful to `--pipe` the text representation of a notebook into tools like `black`:
        ```bash
        jupytext --sync --pipe black notebook.ipynb    # read most recent version of notebook, reformat with black, save
        ```
        
        The `jupytext` command accepts many arguments. Use the `--set-formats` and the `--update-metadata` arguments to edit the pairing information or more generally the notebook metadata. Execute `jupytext --help` to access the documentation.
        
        ## Jupytext as a Git pre-commit hook
        
        Jupytext is also available as a Git pre-commit hook. Use this if you want Jupytext to create and update the `.py` (or `.md`...) representation of the staged `.ipynb` notebooks. All you need is to create an executable `.git/hooks/pre-commit` file with the following content:
        ```bash
        #!/bin/sh
        # For every ipynb file in the git index, add a Python representation
        jupytext --from ipynb --to py:light --pre-commit
        ```
        
        ```bash
        #!/bin/sh
        # For every ipynb file in the git index:
        # - apply black and flake8
        # - export the notebook to a Python script in folder 'python'
        # - and add it to the git index
        jupytext --from ipynb --pipe black --check flake8 --pre-commit
        jupytext --from ipynb --to python//py:light --pre-commit
        ```
        
        If you don't want notebooks to be committed (and only commit the representations), you can ask the pre-commit hook to unstage notebooks after conversion by adding the following line:
        ```bash
        git reset HEAD **/*.ipynb
        ```
        Note that these hooks do not update the `.ipynb` notebook when you pull. Make sure to either run `jupytext` in the other direction, or to use our paired notebook and our contents manager for Jupyter. Also, Jupytext does not offer a merge driver. If a conflict occurs, solve it on the text representation and then update or recreate the `.ipynb` notebook. Or give a try to nbdime and its [merge driver](https://nbdime.readthedocs.io/en/stable/vcs.html#merge-driver).
        
        ## Reading notebooks in Python
        
        Manipulate notebooks in a Python shell or script using `jupytext`'s main functions:
        
        ```python
        # Read a notebook from a file. Format can be any of 'py', 'md', 'jl:percent', ...
        readf(nb_file, fmt=None)
        
        # Read a notebook from a string. Here, format should contain at least the file extension.
        reads(text, fmt)
        
        # Return the text representation for a notebook in the desired format.
        writes(notebook, fmt)
        
        # Write a notebook to a file in the desired format.
        writef(notebook, nb_file, fmt=None)
        ```
        
        ## Round-trip conversion
        
        Representing Jupyter notebooks as scripts requires a solid round trip conversion. You don't want your notebooks (nor your scripts) to be modified because you are converting them to the other form. A few hundred tests ensure that round trip conversion is safe.
        
        You can easily test that the round trip conversion preserves your Jupyter notebooks and scripts. Run for instance:
        ```bash
        # Test the ipynb -> py:percent -> ipynb round trip conversion
        jupytext --test notebook.ipynb --to py:percent
        
        # Test the ipynb -> (py:percent + ipynb) -> ipynb (à la paired notebook) conversion
        jupytext --test --update notebook.ipynb --to py:percent
        ```
        
        Note that `jupytext --test` compares the resulting notebooks according to its expectations. If you wish to proceed to a strict comparison of the two notebooks, use `jupytext --test-strict`, and use the flag `-x` to report with more details on the first difference, if any.
        
        Please note that
        - Scripts opened with Jupyter have a default [metadata filter](#default-metadata-filtering) that prevents additional notebook or cell
        metadata to be added back to the script. Remove the filter if you want to store Jupytext's settings, or the kernel information, in the text file.
        - Cell metadata are available in `light` and `percent` formats for all cell types. Sphinx Gallery scripts in `sphinx` format do not support cell metadata. R Markdown and R scripts in `spin` format support cell metadata for code cells only. Markdown documents do not support cell metadata.
        - By default, a few cell metadata are not included in the text representation of the notebook. And only the most standard notebook metadata are exported. Learn more on this in the sections for [notebook specific](#-per-notebook-configuration) and [global settings](#default-metadata-filtering) for metadata filtering.
        - Representing a Jupyter notebook as a Markdown or R Markdown document has the effect of splitting markdown cells with two consecutive blank lines into multiple cells (as the two blank line pattern is used to separate cells).
        
        ## Format specifications
        
        ### Markdown and R Markdown
        
        Save Jupyter notebooks as [Markdown](https://daringfireball.net/projects/markdown/syntax) documents and edit them in one of the many editors with good Markdown support.
        
        [R Markdown](https://rmarkdown.rstudio.com/authoring_quick_tour.html) is [RStudio](https://www.rstudio.com/)'s format for notebooks, with support for R, Python, and many [other languages](https://bookdown.org/yihui/rmarkdown/language-engines.html).
        
        Our implementation for Jupyter notebooks as [Markdown](https://daringfireball.net/projects/markdown/syntax) or [R Markdown](https://rmarkdown.rstudio.com/authoring_quick_tour.html) documents is straightforward:
        - A YAML header contains the notebook metadata (Jupyter kernel, etc)
        - Markdown cells are inserted verbatim, and separated with two blank lines
        - Code and raw cells start with triple backticks collated with cell language, and end with triple backticks. Cell metadata are not available in the Markdown format. The [code cell options](https://yihui.name/knitr/options/) in the R Markdown format are mapped to the corresponding Jupyter cell metadata options, when available.
        
        See how our `World population.ipynb` notebook in the [demo folder](https://github.com/mwouts/jupytext/tree/master/demo) is represented in [Markdown](https://github.com/mwouts/jupytext/blob/master/demo/World%20population.md) or [R Markdown](https://github.com/mwouts/jupytext/blob/master/demo/World%20population.Rmd).
        
        When editing Jupyter Markdown, you can split text into markdown cells by adding two blank lines at the point you want the text to split.  This is the default rule, but you may want to modify the rule for the case of Markdown headers in text.  By default, a single blank line followed by a Markdown header will not cause the cell to split, so the header will appear in the middle of a text cell.  You may prefer to always split text cells at headers.  If so, use the `split_at_heading` option. Set the option either on the command line, or by adding `"split_at_heading": true` to the jupytext section in the notebook metadata, or on Jupytext's content manager:
        
        ```python
        c.ContentsManager.split_at_heading = True
        ```
        
        This will cause jupytext to split markdown text cells at heading prefixed by one blank line, so the heading appears at the top of a new cell.  Without this option, you would need two blank lines above the heading to cause the split.
        
        ### The `light` format for notebooks as scripts
        
        The `light` format was created for this project. It is the default format for scripts. That format can read any script as a Jupyter notebook, even scripts which were never prepared to become a notebook. When a notebook is written as a script using this format, only a few cells markers are introduced—none if possible.
        
        The `light` format has:
        - A (commented) YAML header, that contains the notebook metadata.
        - Markdown cells are commented, and separated with a blank line.
        - Code cells are exported verbatim (except for Jupyter magics, which are commented), and separated with blank lines. Code cells are reconstructed from consistent Python paragraphs (no function, class or multiline comment will be broken).
        - Cells that contain more than one Python paragraphs need an explicit start-of-cell delimiter `# +` (`// +` in C++, etc). Cells that have explicit metadata have a cell header `# + {JSON}` where the metadata is represented, in JSON format. The end of cell delimiter is `# -`, and is omitted when followed by another explicit start of cell marker.
        
        The `light` format is currently available for Python, Julia, R, Bash, Scheme, Clojure, C++ and q/kdb+. Open our sample notebook in the `light` format [here](https://github.com/mwouts/jupytext/blob/master/demo/World%20population.lgt.py).
        
        A variation of the `light` format is the `bare` format, with no cell marker at all. Please note that this format will split your code cells on code paragraphs. By default, this format still includes a YAML header - if you prefer to also remove the header, set `"notebook_metadata_filter": "-all"` in the jupytext section of your notebook metadata.  
        
        ### The `percent` format
        
        The `percent` format is a representation of Jupyter notebooks as scripts, in which cells are delimited with a commented double percent sign `# %%`. The format was introduced by Spyder five years ago, and is now supported by many editors, including
        - [Spyder IDE](https://docs.spyder-ide.org/editor.html#defining-code-cells),
        - [Hydrogen](https://atom.io/packages/hydrogen), a package for Atom,
        - [VS Code](https://code.visualstudio.com/) with the [vscodeJupyter](https://marketplace.visualstudio.com/items?itemName=donjayamanne.jupyter) extension,
        - [Python Tools for Visual Studio](https://github.com/Microsoft/PTVS),
        - and [PyCharm Professional](https://www.jetbrains.com/pycharm/).
        
        Our implementation of the `percent` format is compatible with the original specifications by Spyder. We extended the format to allow markdown cells and cell metadata. Cell headers have the following structure:
        ```python
        # %% Optional text [cell type] {optional JSON metadata}
        ```
        where cell type is either omitted (code cells), or `[markdown]` or  `[raw]`. The content of markdown and raw cells is commented out in the resulting script.
        
        Percent scripts created by Jupytext have a header with an explicit format information. The format of scripts with no header is inferred automatically: scripts with at least one `# %%` cell are identified as `percent` scripts. Scripts with at least one double percent cell, and an uncommented Jupyter magic command, are identified as `hydrogen` scripts.
        
        The `percent` format is currently available for Python, Julia, R, Bash, Scheme, Clojure, C++ and q/kdb+. Open our sample notebook in the `percent` format [here](https://github.com/mwouts/jupytext/blob/master/demo/World%20population.pct.py).
        
        If the `percent` format is your favorite one, add the following to your `.jupyter/jupyter_notebook_config.py` file:
        ```python
        c.ContentsManager.preferred_jupytext_formats_save = "py:percent" # or "auto:percent"
        ```
        Then, Jupytext's content manager will understand `"jupytext": {"formats": "ipynb,py"},` as an instruction to create the paired Python script in the `percent` format.
        
        By default, Jupyter magics are commented in the `percent` representation. If you run the percent scripts in Hydrogen, use instead the `hydrogen` format, a variant of the `percent` format that does not comment Jupyter magic commands.
        
        ### Sphinx-gallery scripts
        
        Another popular notebook-like format for Python scripts is the Sphinx-gallery [format](https://sphinx-gallery.readthedocs.io/en/latest/tutorials/plot_notebook.html). Scripts that contain at least two lines with more than twenty hash signs are classified as Sphinx-Gallery notebooks by Jupytext.
        
        Comments in Sphinx-Gallery scripts are formatted using reStructuredText rather than markdown. They can be converted to markdown for a nicer display in Jupyter by adding a `c.ContentsManager.sphinx_convert_rst2md = True` line to your Jupyter configuration file. Please note that this is a non-reversible transformation—use this only with Binder. Revert to the default value `sphinx_convert_rst2md = False` when you edit Sphinx-Gallery files with Jupytext.
        
        Turn a GitHub repository containing Sphinx-Gallery scripts into a live notebook repository with [Binder](https://mybinder.org/) and Jupytext by adding only two files to the repo:
        - `binder/requirements.txt`, a list of the required packages (including `jupytext`)
        - `.jupyter/jupyter_notebook_config.py` with the following contents:
        ```python
        c.NotebookApp.contents_manager_class = "jupytext.TextFileContentsManager"
        c.ContentsManager.preferred_jupytext_formats_read = "py:sphinx"
        c.ContentsManager.sphinx_convert_rst2md = True
        ```
        
        Our sample notebook is also represented in `sphinx` format [here](https://github.com/mwouts/jupytext/blob/master/demo/World%20population.spx.py).
        
        ### R knitr::spin scripts
        
        The `spin` format is specific to R scripts. These scripts can be compiled into reports using either `knitr::spin` or [RStudio](https://rmarkdown.rstudio.com/articles_report_from_r_script.html). The implementation of the format is as follows:
        - Jupyter metadata are in YAML format, in a `#' `-commented header.
        - Markdown cells are commented with `#' `.
        - Code cells are exported verbatim. Cell metadata are signalled with `#+`. Cells end with a blank line, an explicit start of cell marker, or a markdown cell.
        
        
        ## Fine tuning
        
        Jupyter magic commands are commented when exporting the notebook to text, except for the `markdown` and the `hydrogen` format. If you want to change this for a single line, add a `#escape` or `#noescape` flag on the same line as the magic, or a `"comment_magics": true` or `false` entry in the notebook metadata, in the `"jupytext"` section. Or set your preference globally on the contents manager by adding this line to `.jupyter/jupyter_notebook_config.py`:
        ```python
        c.ContentsManager.comment_magics = True # or False
        ```
        
        Also, you may want some cells to be active only in the Python, or R Markdown representation. For this, use the `active` cell metadata. Set `"active": "ipynb"` if you want that cell to be active only in the Jupyter notebook. And `"active": "py"` if you want it to be active only in the Python script. And `"active": "ipynb,py"` if you want it to be active in both, but not in the R Markdown representation...
        
        ## Extending the `light` and `percent` formats to more languages
        
        You want to extend the `light` and `percent` format to another language? In principle that is easy, and you will only have to:
        - document the language extension and comment by adding one line to `_SCRIPT_EXTENSIONS` in `languages.py`.
        - contribute a sample notebook in `tests\notebooks\ipynb_[language]`.
        - add two tests in `test_mirror.py`: one for the `light` format, and another one for the `percent` format.
        - Make sure that the tests pass, and that the text representations of your notebook, found in  `tests\notebooks\mirror\ipynb_to_script` and `tests\notebooks\mirror\ipynb_to_percent`, are valid scripts.
        
        ## Want to contribute?
        
        Contributions are welcome. Please let us know how you use `jupytext` and how we could improve it. You think the documentation could be improved? Go ahead! And stay tuned for more demos on [medium](https://medium.com/@marc.wouts) and [twitter](https://twitter.com/marcwouts)!
        
Platform: UNKNOWN
Classifier: Development Status :: 5 - Production/Stable
Classifier: License :: OSI Approved :: MIT License
Classifier: Environment :: Console
Classifier: Framework :: Jupyter
Classifier: Intended Audience :: Developers
Classifier: Intended Audience :: Science/Research
Classifier: Topic :: Text Processing :: Markup
Classifier: Programming Language :: Python
Classifier: Programming Language :: Python :: 2.7
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.4
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Description-Content-Type: text/markdown
