Public API
General
IJulia.IJulia
— ModuleIJulia is a Julia-language backend combined with the Jupyter interactive environment (also used by IPython). This combination allows you to interact with the Julia language using Jupyter/IPython's powerful graphical notebook, which combines code, formatted text, math, and multimedia in a single document.
The IJulia
module is used in three ways
Typing
using IJulia; notebook()
will launch the Jupyter notebook interface in your web browser. This is an alternative to launchingjupyter notebook
directly from your operating-system command line.In a running notebook, the
IJulia
module is loaded andIJulia.somefunctions
can be used to interact with the running IJulia kernel:IJulia.load(filename)
andIJulia.load_string(s)
load the contents of a file or a string, respectively, into a notebook cell.IJulia.clear_output()
to clear the output from the notebook cell, useful for simple animations.IJulia.clear_history()
to clear the history variablesIn
andOut
.push_X_hook(f)
andpop_X_hook(f)
, whereX
is eitherpreexecute
,postexecute
, orposterror
. This allows you to insert a "hook" function into a list of functions to execute when notebook cells are evaluated.IJulia.set_verbose()
enables verbose output about what IJulia is doing internally; this is mainly used for debugging.
It is used internally by the IJulia kernel when talking to the Jupyter server.
IJulia.inited
— Constantinited
is a global variable that is set to true
if the IJulia kernel is running, i.e. in a running IJulia notebook. To test whether you are in an IJulia notebook, therefore, you can check isdefined(Main, :IJulia) && IJulia.inited
.
IJulia.installkernel
— Functioninstallkernel(name::AbstractString, options::AbstractString...;
julia::Cmd,
specname::AbstractString,
env=Dict())
Install a new Julia kernel, where the given options
are passed to the julia
executable, the user-visible kernel name is given by name
followed by the Julia version, and the env
dictionary is added to the environment.
The new kernel name is returned by installkernel
. For example:
kernelpath = installkernel("Julia O3", "-O3", env=Dict("FOO"=>"yes"))
creates a new Julia kernel in which julia
is launched with the -O3
optimization flag and FOO=yes
is included in the environment variables.
The returned kernelpath
is the path of the installed kernel directory, something like /...somepath.../kernels/julia-o3-1.6
(in Julia 1.6). The specname
argument can be passed to alter the name of this directory (which defaults to name
with spaces replaced by hyphens, and special characters other than -
hyphen, .
period and _
underscore replaced by _
underscores).
You can uninstall the kernel by calling rm(kernelpath, recursive=true)
.
You can specify a custom command to execute Julia via keyword argument julia
. For example, you may want specify that the Julia kernel is running in a Docker container (but Jupyter will run outside of it), by calling installkernel
from within such a container instance like this (or similar):
installkernel(
"Julia via Docker",
julia = `docker run --rm --net=host
--volume=/home/USERNAME/.local/share/jupyter:/home/USERNAME/.local/share/jupyter
some-container /opt/julia-1.x/bin/julia`
)
Launching the server
IJulia.jupyterlab
— Functionjupyterlab(; dir=homedir(), detached=false)
Similar to IJulia.notebook()
but launches JupyterLab instead of the Jupyter notebook.
IJulia.notebook
— Functionnotebook(; dir=homedir(), detached=false)
The notebook()
function launches the Jupyter notebook, and is equivalent to running jupyter notebook
at the operating-system command-line. The advantage of launching the notebook from Julia is that, depending on how Jupyter was installed, the user may not know where to find the jupyter
executable.
By default, the notebook server is launched in the user's home directory, but this location can be changed by passing the desired path in the dir
keyword argument. e.g. notebook(dir=pwd())
to use the current directory.
By default, notebook()
does not return; you must hit ctrl-c or quit Julia to interrupt it, which halts Jupyter. So, you must leave the Julia terminal open for as long as you want to run Jupyter. Alternatively, if you run notebook(detached=true)
, the jupyter notebook
will launch in the background, and will continue running even after you quit Julia. (The only way to stop Jupyter will then be to kill it in your operating system's process manager.)
Missing docstring for IJulia.qtconsole
. Check Documenter's build log for details.
History
IJulia.In
— ConstantIn
is a global dictionary of input strings, where In[n]
returns the string for input cell n
of the notebook (as it was when it was last evaluated).
IJulia.Out
— ConstantOut
is a global dictionary of output values, where Out[n]
returns the output from the last evaluation of cell n
in the notebook.
IJulia.ans
— Constantans
is a global variable giving the value returned by the last notebook cell evaluated.
IJulia.n
— ConstantIJulia.n
is the (integer) index of the last-evaluated notebook cell.
IJulia.clear_history
— Functionclear_history([indices])
The clear_history()
function clears all of the input and output history stored in the running IJulia notebook. This is sometimes useful because all cell outputs are remember in the Out
global variable, which prevents them from being freed, so potentially this could waste a lot of memory in a notebook with many large outputs.
The optional indices
argument is a collection of indices indicating a subset of cell inputs/outputs to clear.
IJulia.history
— Functionhistory([io], [indices...])
The history()
function prints all of the input history stored in the running IJulia notebook in a format convenient for copying.
The optional indices
argument is one or more indices or collections of indices indicating a subset input cells to print.
The optional io
argument is for specifying an output stream. The default is stdout
.
Cells
IJulia.clear_output
— Functionclear_output(wait=false)
Call clear_output()
to clear visible output from the current notebook cell. Using wait=true
clears the output only when new output is available, which reduces flickering and is useful for simple animations.
IJulia.load
— Functionload(filename, replace=false)
Load the file given by filename
into a new input code cell in the running IJulia notebook, analogous to the %load
magics in IPython. If the optional argument replace
is true
, then the file contents replace the current cell rather than creating a new cell.
IJulia.load_string
— Functionload_string(s, replace=false)
Load the string s
into a new input code cell in the running IJulia notebook, somewhat analogous to the %load
magics in IPython. If the optional argument replace
is true
, then s
replaces the current cell rather than creating a new cell.
I/O
IJulia.readprompt
— Functionreadprompt(prompt::AbstractString; password::Bool=false)
Display the prompt
string, request user input, and return the string entered by the user. If password
is true
, the user's input is not displayed during typing.
IJulia.set_max_stdio
— Functionset_max_stdio(max_output::Integer)
Sets the maximum number of bytes, max_output
, that can be written to stdout and stderr before getting truncated. A large value here allows a lot of output to be displayed in the notebook, potentially bogging down the browser.