.. _htmlnotebook:
The IPython Notebook
====================
The IPython Notebook is part of the IPython package, which aims to provide a
powerful, interactive approach to scientific computation.
The IPython Notebook extends the previous text-console-based approach, and the
later Qt console, in a qualitatively new diretion, providing a web-based
application suitable for capturing the whole scientific computation process.
.. seealso::
:ref:`Installation requirements ` for the Notebook.
.. Basic structure
.. ---------------
Introduction
------------
The IPython Notebook combines two components:
* **The IPython Notebook web application**:
The *IPython Notebook web app* is a browser-based tool for interactive
authoring of literate computations, in which explanatory text,
mathematics, computations and rich media output may be combined. Input
and output are stored in persistent cells that may be edited in-place.
* **Notebook documents**:
*Notebook documents*, or *notebooks*, are plain text documents which
record all inputs and outputs of the computations, interspersed with
text, mathematics and HTML 5 representations of objects, in a literate
style.
Since the similarity in names can lead to some confusion, in this
documentation we will use capitalization of the word "notebook" to
distinguish the Notebook app and notebook documents, thinking of the
Notebook app as being a proper noun. We will also always refer to the
"Notebook app" when we are referring to the browser-based interface,
and usually to "notebook documents", instead of "notebooks", for added
precision.
We refer to the current state of the computational process taking place in the
Notebook app, i.e. the (numbered) sequence of input and output cells, as the
*notebook space*. Notebook documents provide an *exact*, *one-to-one* record
of all the content in the notebook space, as a plain text file in JSON format.
The Notebook app automatically saves, at certain intervals, the contents of
the notebook space to a notebook document stored on disk, with the same name
as the title of the notebook space, and the file extension ``.ipynb``. For
this reason, there is no confusion about using the same word "notebook" for
both the notebook space and the corresponding notebook document, since they are
really one and the same concept (we could say that they are "isomorphic").
Main features of the IPython Notebook web app
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
The main features of the IPython Notebook app include:
* In-browser editing for code, with automatic syntax highlighting and
indentation and tab completion/introspection.
* Literate combination of code with rich text using the Markdown_ markup
language.
* Mathematics is easily included within the Markdown using LaTeX notation, and
rendered natively by MathJax_.
* Displays rich data representations (e.g. HTML / LaTeX / SVG) as the result
of computations.
* Publication-quality figures in a range of formats (SVG / PNG), rendered by
the matplotlib_ library, may be included inline and exported.
.. _MathJax: http://www.mathjax.org/
.. _matplotlib: http://matplotlib.org/
.. _Markdown: http://daringfireball.net/projects/markdown/syntax
Notebook documents
~~~~~~~~~~~~~~~~~~
Notebook document files are simple JSON_ files with the
extension ``.ipynb``.
Since JSON is just plain text, they can be easily version-controlled and shared with colleagues.
The notebook stores a *complete*, *reproducible*, *one-to-one* copy of the state of the
computational state as it is inside the Notebook app. All computations
carried out, and the corresponding results obtained, can be combined in
a literate way, interleaving executable code with rich text, mathematics,
and rich representations of objects.
.. _JSON: http://en.wikipedia.org/wiki/JSON
Notebooks may easily be exported to a range of static formats, including
HTML (for example, for blog posts), PDF and slide shows,
via the new nbconvert_ command.
Furthermore, any ``.ipynb`` notebook document available from a public
URL can be shared via the `IPython Notebook Viewer `_ service.
This service loads the notebook document from the URL and will
render it as a static web page. The results may thus be shared with a
colleague, or as a public blog post, without other users needing to install
IPython themselves. NbViewer is simply NbConvert as a simple heroku webservice.
See the :ref:`installation documentation ` for directions on
how to install the notebook and its dependencies.
.. _nbviewer: http://nbviewer.ipython.org
.. note::
You can start more than one notebook server at the same time, if you want
to work on notebooks in different directories. By default the first
notebook server starts on port 8888, and later notebook servers search for
ports near that one. You can also manually specify the port with the
``--port`` option.
Basic workflow in the IPython Notebook web app
----------------------------------------------
Starting up
~~~~~~~~~~~~
You can start running the Notebook web app using the following command::
$ ipython notebook
(Here, and in the sequel, the initial ``$`` represents the shell prompt,
indicating that the command is to be run from the command line in a shell.)
The landing page of the IPython Notebook application, the *dashboard*, shows
the notebooks currently available in the *notebook directory* (By default, the directory
from which the notebook was started).
You can create new notebooks from the dashboard with the ``New Notebook``
button, or open existing ones by clicking on their name.
You can also drag and drop ``.ipynb`` notebooks and standard ``.py`` Python
source code files into the notebook list area.
You can open an existing notebook directly, without having to go via the
dashboard, with:
ipython notebook my_notebook
The `.ipynb` extension is assumed if no extension is given.
The `File | Open...` menu option will open the dashboard in a new browser tab,
to allow you to select a current notebook
from the notebook directory or to create a new notebook.
Notebook user interface
~~~~~~~~~~~~~~~~~~~~~~~
When you open a new notebook document in the Notebook, you will be presented
with the title associated to the notebook space/document, a *menu bar*, a
*toolbar* and an empty *input cell*.
Notebook title
^^^^^^^^^^^^^^
The title of the notebook document that is currently being edited is displayed
at the top of the page, next to the ``IP[y]: Notebook`` logo. This title may
be edited directly by clicking on it. The title is reflected in the name of
the ``.ipynb`` notebook document file that is saved.
Menu bar
^^^^^^^^
The menu bar presents different options that may be used to manipulate the way
the Notebook functions.
Toolbar
^^^^^^^
The tool bar gives a quick way of accessing the most-used operations within
the Notebook, by clicking on an icon.
Creating a new notebook document
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
A new notebook space/document may be created at any time, either from the
dashboard, or using the `File | New` menu option from within an active
notebook. The new notebook is created within the same directory and
will open in a new browser tab. It will also be reflected as a new entry in
the notebook list on the dashboard.
Structure of a notebook document
--------------------------------
Input cells
~~~~~~~~~~~
Input cells are at the core of the functionality of the IPython Notebook.
They are regions in the document in which you can enter different types of
text and commands. To *execute* or *run* the *current cell*, i.e. the cell
under the cursor, you can use the :kbd:`Shift-Enter` key combination.
This tells the Notebook app to perform the relevant operation for each type of
cell (see below), and then to display the resulting output.
The notebook consists of a sequence of input cells, labelled ``In[n]``, which
may be executed in a non-linear way, and outputs ``Out[n]``, where ``n`` is a
number which denotes the order in which the cells were executed over the
history of the computational process. The contents of all of these cells are
accessible as Python variables with the same names, forming a complete record
of the history of the computation.
Input cell types
~~~~~~~~~~~~~~~~
Each IPython input cell has a *cell type*, of which there is a restricted
number. The type of a cell may be set by using the cell type dropdown on the
toolbar, or via the following keyboard shortcuts:
* **code**: :kbd:`Ctrl-m y`
* **markdown**: :kbd:`Ctrl-m m`
* **raw**: :kbd:`Ctrl-m t`
* **heading**: :kbd:`Ctrl-m 1` - :kbd:`Ctrl-m 6`
Upon initial creation, each input cell is by default a code cell.
Code cells
^^^^^^^^^^
A *code input cell* allows you to edit code inline within the cell, with full
syntax highlighting and autocompletion/introspection. By default, the language
associated to a code cell is Python, but other languages, such as ``julia``
and ``R``, can be handled using magic commands (see below).
When a code cell is executed with :kbd:`Shift-Enter`, the code that it
contains is transparently exported and run in that language (with automatic
compiling, etc., if necessary). The result that is returned from this
computation is then displayed in the notebook space as the cell's
*output*. If this output is of a textual nature, it is placed into a
numbered *output cell*. However, many other possible forms of output are also
possible, including ``matplotlib`` figures and HTML tables (as used, for
example, in the ``pandas`` data analyis package). This is known as IPython's
*rich display* capability.
Markdown cells
^^^^^^^^^^^^^^
You can document the computational process in a literate way, alternating
descriptive text with code, using *rich text*. In IPython this is accomplished
by marking up text with the Markdown language. The corresponding cells are
called *Markdown input cells*. The Markdown language provides a simple way to
perform this text markup, that is, to specify which parts of the text should
be emphasized (italics), bold, form lists, etc.
When a Markdown input cell is executed, the Markdown code is converted into
the corresponding formatted rich text. This output then *replaces* the
original Markdown input cell, leaving just the visually-significant marked up
rich text. Markdown allows arbitrary HTML code for formatting.
Within Markdown cells, you can also include *mathematics* in a straightforward
way, using standard LaTeX notation: ``$...$`` for inline mathematics and
``$$...$$`` for displayed mathematics. When the Markdown cell is executed,
the LaTeX portions are automatically rendered in the HTML output as equations
with high quality typography. This is made possible by MathJax_, which
supports a `large subset `_ of LaTeX functionality
.. _mathjax_tex: http://docs.mathjax.org/en/latest/tex.html
Standard mathematics environments defined by LaTeX and AMS-LaTeX (the
`amsmath` package) also work, such as
``\begin{equation}...\end{equation}``, and ``\begin{align}...\end{align}``.
New LaTeX macros may be defined using standard methods,
such as ``\newcommand``, by placing them anywhere *between math delimiters* in
a Markdown cell. These definitions are then available throughout the rest of
the IPython session. (Note, however, that more care must be taken when using
nbconvert_ to output to LaTeX).
Raw input cells
~~~~~~~~~~~~~~~
*Raw* input cells provide a place in which you can write *output* directly.
Raw cells are not evaluated by the Notebook, and have no output.
When passed through nbconvert, Raw cells arrive in the destination format unmodified,
allowing you to type full latex into a raw cell, which will only be rendered
by latex after conversion by nbconvert.
Heading cells
~~~~~~~~~~~~~
You can provide a conceptual structure for your computational document as a
whole using different levels of headings; there are 6 levels available, from
level 1 (top level) down to level 6 (paragraph). These can be used later for
constructing tables of contents, etc.
As with Markdown cells, a heading input cell is replaced by a rich text
rendering of the heading when the cell is executed.
Basic workflow
--------------
The normal workflow in a notebook is, then, quite similar to a standard
IPython session, with the difference that you can edit cells in-place multiple
times until you obtain the desired results, rather than having to
rerun separate scripts with the ``%run`` magic command. (Magic commands do,
however, also work in the notebook; see below).
Typically, you will work on a computational problem in pieces, organizing
related ideas into cells and moving forward once previous parts work
correctly. This is much more convenient for interactive exploration than
breaking up a computation into scripts that must be executed together, as was
previously necessary, especially if parts of them take a long time to run
The only significant limitation that the Notebook currently has, compared to
the Qt console, is that it cannot run any code that expects input from the
kernel (such as scripts that call :func:`raw_input`). Very importantly, this
means that the ``%debug`` magic does *not* currently work in the notebook!
This limitation will be overcome in the future, but in the meantime, there is
a simple solution for debugging: you can attach a Qt console to your existing
notebook kernel, and run ``%debug`` from the Qt console.
If your notebook is running on a local computer (i.e. if you are accessing it
via your localhost address at ``127.0.0.1``), then you can just type
``%qtconsole`` in the notebook and a Qt console will open up, connected to
that same kernel.
At certain moments, it may be necessary to interrupt a calculation which is
taking too long to complete. This may be done with the ``Kernel | Interrupt``
menu option, or the :kbd:``Ctrl-i`` keyboard shortcut.
Similarly, it may be necessary or desirable to restart the whole computational
process, with the ``Kernel | Restart`` menu option or :kbd:``Ctrl-.``
shortcut. This gives an equivalent state to loading the notebook document
afresh.
.. warning::
While in simple cases you can "roundtrip" a notebook to Python, edit the
Python file, and then import it back without loss of main content, this is
in general *not guaranteed to work*. First, there is extra metadata
saved in the notebook that may not be saved to the ``.py`` format. And as
the notebook format evolves in complexity, there will be attributes of the
notebook that will not survive a roundtrip through the Python form. You
should think of the Python format as a way to output a script version of a
notebook and the import capabilities as a way to load existing code to get
a notebook started. But the Python version is *not* an alternate notebook
format.
Keyboard shortcuts
~~~~~~~~~~~~~~~~~~
All actions in the notebook can be achieved with the mouse, but keyboard
shortcuts are also available for the most common ones, so that productive use
of the notebook can be achieved with minimal mouse usage. The main shortcuts
to remember are the following:
* :kbd:`Shift-Enter`:
Execute the current cell, show output (if any), and jump to the next cell
below. If :kbd:`Shift-Enter` is invoked on the last input cell, a new code
cell will also be created. Note that in the notebook, typing :kbd:`Enter`
on its own *never* forces execution, but rather just inserts a new line in
the current input cell. In the Notebook it is thus always necessary to use
:kbd:`Shift-Enter` to execute the cell (or use the ``Cell | Run`` menu
item).
* :kbd:`Ctrl-Enter`:
Execute the current cell as if it were in "terminal mode", where any
output is shown, but the cursor *remains* in the current cell. This is
convenient for doing quick experiments in place, or for querying things
like filesystem content, without needing to create additional cells that
you may not want to be saved in the notebook.
* :kbd:`Alt-Enter`:
Executes the current cell, shows the output, and inserts a *new* input
cell between the current cell and the adjacent cell (if one exists). This
is thus a shortcut for the sequence :kbd:`Shift-Enter`, :kbd:`Ctrl-m a`.
(:kbd:`Ctrl-m a` adds a new cell above the current one.)
* :kbd:`Ctrl-m`:
This is the prefix for *all* other shortcuts, which consist of :kbd:`Ctrl-m`
followed by a single letter or character. For example, if you type
:kbd:`Ctrl-m h` (that is, the sole letter :kbd:`h` after :kbd:`Ctrl-m`),
IPython will show you all the available keyboard shortcuts.
Magic commands
--------------
Magic commands, or *magics*, are commands for controlling IPython itself.
They all begin with ``%`` and are entered into code input cells; the code
cells are executed as usual with :kbd:`Shift-Enter`.
The magic commands call special functions defined by IPython which manipulate
the computational state in certain ways.
There are two types of magics:
- **line magics**:
These begin with a single ``%`` and take as arguments the rest of the
*same line* of the code cell. Any other lines of the code cell are
treated as if they were part of a standard code cell.
- **cell magics**:
These begin with ``%%`` and operate on the *entire* remaining contents
of the code cell.
Line magics
~~~~~~~~~~~
Some of the available line magics are the following:
* ``%load filename``:
Loads the contents of the file ``filename`` into a new code cell. This
can be a URL for a remote file.
* ``%timeit code``:
An easy way to time how long the single line of code ``code`` takes to
run
* ``%config``:
Configuration of the IPython Notebook
* ``%lsmagic``:
Provides a list of all available magic commands
Cell magics
~~~~~~~~~~~
* ``%%latex``:
Renders the entire contents of the cell in LaTeX, without needing to use
explicit LaTeX delimiters.
* ``%%bash``:
The code cell is executed by sending it to be executed by ``bash``. The
output of the ``bash`` commands is captured and displayed in the
notebook.
* ``%%file filename``:
Writes the contents of the cell to the file ``filename``.
**Caution**: The file is over-written without warning!
* ``%%R``:
Execute the contents of the cell using the R language.
* ``%%timeit``:
Version of ``%timeit`` which times the entire block of code in the
current code cell.
Several of the cell magics provide functionality to manipulate the filesystem
of a remote server to which you otherwise do not have access.
Plotting
--------
One major feature of the Notebook is the ability to interact with
plots that are the output of running code cells. IPython is designed to work
seamlessly with the ``matplotlib`` plotting library to provide this
functionality.
To set this up, before any plotting is performed you must execute the
``%matplotlib`` magic command. This performs the necessary behind-the-scenes
setup for IPython to work correctly hand in hand with ``matplotlib``; it does
*not*, however, actually execute any Python ``import`` commands, that is, no
names are added to the namespace.
If the ``%matplotlib`` magic is called without an argument, the
output of a plotting command is displayed using the default ``matplotlib``
backend in a separate window. Alternatively, the backend can be explicitly
requested using, for example::
%matplotlib gtk
A particularly interesting backend is the ``inline`` backend.
This is applicable only for the IPython Notebook and the IPython QtConsole.
It can be invoked as follows::
%matplotlib inline
With this backend, output of plotting commands is displayed *inline* within
the notebook format, directly below the input cell that produced it. The
resulting plots will then also be stored in the notebook document. This
provides a key part of the functionality for reproducibility_ that the IPython
Notebook provides.
.. _reproducibility: https://en.wikipedia.org/wiki/Reproducibility
Configuring the IPython Notebook
--------------------------------
The IPython Notebook can be run with a variety of command line arguments.
To see a list of available options enter::
$ ipython notebook --help
Defaults for these options can also be set by creating a file named
``ipython_notebook_config.py`` in your IPython *profile folder*. The profile
folder is a subfolder of your IPython directory; to find out where it is
located, run::
$ ipython locate
To create a new set of default configuration files, with lots of information
on available options, use::
$ ipython profile create
.. seealso:
:ref:`config_overview`, in particular :ref:`Profiles`.
Importing `.py` files
----------------------
``.py`` files will be imported into the IPython Notebook as a notebook with
the same basename, but an ``.ipynb`` extension, located in the notebook
directory. The notebook created will have just one cell, which will contain
all the code in the ``.py`` file. You can later manually partition this into
individual cells using the ``Edit | Split Cell`` menu option, or the
:kbd:`Ctrl-m -` keyboard shortcut.
.. Alternatively, prior to importing the ``.py``, you can manually add ``# <
nbformat>2`` at the start of the file, and then add separators for
text and code cells, to get a cleaner import with the file already broken into
individual cells.