This is a pure Raku implementation of a Raku kernel for Jupyter clients¹.
Jupyter notebooks provide a web-based (or console-based) Read Eval Print Loop (REPL) for running code and serializing input and output.
Binder provides a way to instantly launch a Docker
image and open a notebook². Click launch | binder above
to start this kernel with a sample notebook. (See below
for similar alternatives.)
You'll need to install zmq. Note that currently, version 4.1 is recommended by Net::ZMQ (though 4.2 is installed by, e.g. homebrew). If you run into stability issues, you may need to downgrade.
brew install zmq # on OS/X
apt-get install libzmq-dev # on Ubuntu
You'll also want jupyter, for the front end:
pip install jupyter
Finally, install Jupyter::Kernel:
zef install 'Jupyter::Kernel:auth<zef:bduggan>'
At the end of the above installation, you'll see the location
of the bin/ directory which has jupyter-kernel.raku. Make
sure that is in your PATH.
To generate a configuration directory, and to install a kernel config file and icons into the default location:
jupyter-kernel.raku --generate-config
- Use
--location=XXXto specify another location. - Use
--forceto override an existing configuration.
By default a log file jupyter.log will be written in the
current directory. An option --logfile=XXX argument can be
added to the argv argument of the server configuration file
(located at $(jupyter --data)/kernels/raku/kernel.json)
to change this.
The jupyter documentation describes the client configuration. To start, you can generate files for the notebook or console clients like this:
jupyter notebook --generate-config
jupyter console --generate-config
Some suggested configuration changes for the console client:
-
set
kernel_is_complete_timeoutto a high number. Otherwise, if the kernel takes more than 1 second to respond, then from then on, the console client uses internal (non-Raku) heuristics to guess when a block of code is complete. -
set
highlighting_styletovim. This avoids having dark blue on a black background in the console client.
Start the web UI with:
jupyter-notebook
Then select New -> Raku.
You can also use it in the console like this:
jupyter-console --kernel=raku
Or make a handy shell alias:
alias iraku='jupyter-console --kernel=raku'
-
Autocompletion: Typing
[tab]in the client will send an autocomplete request. Possible autocompletions are:-
methods: after a
.the invocant will be evaluated to find methods -
set operators: after a
(, set operators (unicode and texas) will be shown (note the whitespace before the()). -
equality/inequality operators: after
=,<, or>, related operators will be shown. -
autocompleting
*or/will give×or÷respectively. -
autocompleting
**or a superscript will give you superscripts (for typing exponents). -
the word 'atomic' autocompletes to the atomic operators. (Use
atomic-oratomto get the subroutines with their ASCII names). -
a colon followed by a sequence of word characters will autocomplete to characters whose unicode name contains that string. Dashes are treated as spaces. e.g. :straw will find 🍓 ("STRAWBERRY") or 🥤 ("CUP WITH STRAW") and :smiling-face-with-smiling-eye will find 😊 ("SMILING FACE WITH SMILING EYES")
-
-
Keep output: All cells are evaluated in item context. Outputs are then saved to an array named
$Out. You can read from this directly or:-
via the subroutine
Out(e.g.Out[3]) -
via an underscore and the output number (e.g.
_3) -
for the most recent output: via a plain underscore (
_).
-
-
Keep input: Similiarly, the input text can be accessed via
In[N](e.g.In[3].EVALorIn[3].ASTwould eval or produce the ast for a cell) -
Magics: There is some support for jupyter "magics". If the first line of a code cell starts with
#%or%%, it may be interpreted as a directive by the kernel. See EXAMPLES. The following magics are supported:-
#% javascript: interpret the cell as javascript; i.e. run it in the browser -
#% js: return the output as javascript -
#% > js: return stdout as javascript -
#% html: return the output as html -
#% latex: return the output as LaTeX. Uselatex(equation)to wrap the output in\begin{equation}and\end{equation}. (Or replace "equation" with another string to use something else.) -
#% markdown(ormd): the output will be interpreted as markdown. Note that this is for generating markdown as the output of a cell, not for writing markdown, which can be done without magics. Also, this simply sends the data with the markdown mime-type, and the notebook does the rendering. -
#% > markdown(ormd): interpret stdout as markdown -
#% html > latex: The above can be combined to render, for instance, the output cell as HTML, but stdout as LaTeX. The word before the>indicates the type of the output cell. The word after the>indictes the type of stdout. -
%% bash: Interpret the cell as bash. stdout becomes the contents of the next cell. Behaves like Raku's built-inshell. -
%% run FILENAME: Prepend the contents of FILENAME to the contents of the current cell (if any) before execution. Note this is different from the built-inEVALFILEin that if any lexical variables, subroutines, etc. are declared in FILENAME, they will become available in the notebook execution context. -
%% always [SUBCOMMAND] CODE: SUBCOMMAND defaults toprependbut can be:prepend: Prepend each cell byCODE;\nappend: Append;\nCODEafter each commandclear: Clear allalwaysregistered actionsshow: Showalwaysregistered actions You can combine it with another magic. For example:%% always prepend %% run file.raku
-
-
Comms: Comms allow for asynchronous communication between a notebook and the kernel. For an example of using comms, see this notebook
- In the console, pressing return will execute the code in a cell. If you want
a cell to span several lines, put a
\at the end of the line, like so:
In [1]: 42
Out[1]: 42
In [2]: 42 +
Out[2]: Missing required term after infix
In [3]: 42 + \
: 10 + \
: 3 + \
: 12
Out[3]: 67
Note that this is not the same as the raku 'unspace' -- a backslash followed by a newline will be replaced with a newline before the code is executed. To create an unspace at the end of the line, you can use two backslashes.
This blog post provides a tutorial for running this kernel with Docker. This one describes using Binder.
The eg/ directory of this repository has some example notebooks:
- Newly declared methods might not be available in autocompletion unless SPESH is disabled (see tests in this PR).
Matt Oates
Suman Khanal
Timo Paulssen
Tinmarino
Anton Antonov
¹ Jupyter clients are user interfaces to interact with an interpreter kernel like Jupyter::Kernel.
Jupyter [Lab | Notebook | Console | QtConsole ] are the jupyter maintained clients.
More info in the jupyter documentations site.
² mybinder.org provides a way to instantly launch a Docker image and open a notebook.
