# IRkernel **Repository Path**: whusgg/IRkernel ## Basic Information - **Project Name**: IRkernel - **Description**: No description available - **Primary Language**: Unknown - **License**: Not specified - **Default Branch**: master - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2021-08-23 - **Last Updated**: 2021-08-23 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # Native R kernel for Jupyter [![b-Travis]][Travis] [![b-CRAN]][CRAN] [b-Travis]: https://travis-ci.com/IRkernel/IRkernel.svg?branch=master "Build status" [Travis]: https://travis-ci.com/IRkernel/IRkernel [b-CRAN]: https://www.r-pkg.org/badges/version/IRkernel "Comprehensive R Archive Network" [CRAN]: https://cran.r-project.org/package=IRkernel For detailed requirements and install instructions see [irkernel.github.io](https://irkernel.github.io/) ## Requirements * [Jupyter](https://jupyter.org). * A current [R installation](https://www.R-project.org). ## Installation This package is available on CRAN: ```R install.packages('IRkernel') IRkernel::installspec() # to register the kernel in the current R installation jupyter labextension install @techrah/text-shortcuts # for RStudio’s shortcuts ``` Per default `IRkernel::installspec()` will install a kernel with the name “ir” and a display name of “R”. Multiple calls will overwrite the kernel with a kernel spec pointing to the last R interpreter you called that commands from. You can install kernels for multiple versions of R by supplying a `name` and `displayname` argument to the `installspec()` call (You still need to install these packages in all interpreters you want to run as a jupyter kernel!): ```r # in R 3.3 IRkernel::installspec(name = 'ir33', displayname = 'R 3.3') # in R 3.2 IRkernel::installspec(name = 'ir32', displayname = 'R 3.2') ``` By default, it installs the kernel per-user. To install system-wide, use `user = FALSE`. To install in the `sys.prefix` of the currently detected `jupyter` command line utility, use `sys_prefix = TRUE`. Now both R versions are available as an R kernel in the notebook. ### If you encounter problems during installation 1. Have a look at the [full installation instructions](https://irkernel.github.io/installation/)! 2. [Search the existing open and closed issues](https://github.com/IRkernel/IRkernel/issues?utf8=%E2%9C%93&q=is%3Aissue). 3. If you are sure that this is a new problem, [file an issue](https://github.com/IRkernel/IRkernel/issues/new). ## Running the notebook If you have Jupyter installed, you can create a notebook using IRkernel from the dropdown menu. You can also start other interfaces with an R kernel: ```bash # “ir” is the kernel name installed by the above `IRkernel::installspec()` # change if you used a different name! jupyter qtconsole --kernel=ir jupyter console --kernel=ir ``` ## Run a stable release in a Docker container Refer to the [jupyter/docker-stacks r-notebook](https://github.com/jupyter/docker-stacks/tree/master/r-notebook) repository If you have a Docker daemon running, e.g. reachable on localhost, start a container with: ```bash docker run -d -p 8888:8888 jupyter/r-notebook ``` Open localhost:8888 in your browser. All notebooks from your session will be saved in the current directory. On other platforms without docker, this can be started using `docker-machine` by replacing “localhost” with an IP from `docker-machine ip `. With the deprecated `boot2docker`, this IP will be `boot2docker ip`. ## Develop and run from source in a Docker container ```bash make docker_dev_image #builds dev image and installs IRkernel dependencies from github make docker_dev #mounts source, installs, and runs Jupyter notebook; docker_dev_image is a prerequisite make docker_test #builds the package from source then runs the tests via R CMD check; docker_dev_image is a prerequisite ``` ## How does it know where to install? The IRKernel does not have any Python dependencies whatsoever, and does not know anything about any other Jupyter/Python installations you may have. It only requires the `jupyter` command to be available on `$PATH`. To install the kernel, it prepares a kernelspec directory (containing `kernel.json` and so on), and passes it to the command line `jupyter kernelspec install [options] prepared_kernel_dir/`, where options such as `--name`, `--user`, `--prefix`, and `--sys-prefix` are given based on the options.