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BeakerX: Beaker extensions for Jupyter

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BeakerX is a collection of JVM kernels and interactive widgets for plotting, tables, autotranslation, and other extensions to Jupyter Notebook.

The documentation consists of tutorial notebooks on GitHub. You can try it in the cloud for free with Binder. And here is the cheatsheet.

BeakerX is the successor to the Beaker Notebook (source code archive). It comes from Two Sigma Open Source. Yes we are hiring.

This README is for developers. Users should see the documentation on the homepage for how to install and run BeakerX.

Dependencies:

Build and Install (linux and mac)

conda create -y -n beakerx 'python>=3' nodejs pandas 'openjdk=8.0.121' maven py4j requests
source activate beakerx
conda config --env --add pinned_packages 'openjdk=8.0.121'
conda install -y -c conda-forge ipywidgets
(cd beakerx; pip install -e . --verbose)
beakerx install
beakerx_databrowser install

Build and Install (win)

conda create -y -n beakerx python>=3 nodejs pandas openjdk=8.0.121 maven py4j requests
activate beakerx
conda config --env --add pinned_packages openjdk=8.0.121
conda install -y -c conda-forge ipywidgets
cd beakerx
pip install -e . --verbose
cd ..
beakerx install
beakerx_databrowser install

Build and Install for Jupyter Lab

conda create -y -n labx 'python>=3' nodejs pandas 'openjdk=8.0.121' maven py4j requests
source activate labx
conda config --env --add pinned_packages 'openjdk=8.0.121'
conda install -y -c conda-forge jupyterlab
(cd beakerx; pip install -e . --verbose)
beakerx install
jupyter labextension install @jupyter-widgets/jupyterlab-manager
(cd js/lab; jupyter labextension install .)

Running with Docker

docker run -p 8888:8888 beakerx/beakerx

Update after Java change

The kernels are installed to run out of the repo, so just a local build should suffice:

(cd kernel; ./gradlew build)

Update after JS change

The notebook extensions are installed to run out of the repo, so just a local build should suffice:

(cd js/notebook; yarn install)

Run Tests

The Java and TypeScript unit tests are run with every build. See test/README.md for how to run the e2e tests.

Groovy with Interactive Plotting:

screen shot

Autotranslation from Python to JavaScript and D3

screen shot

Interactive Tables

screen shot

Architecture and Code Overview

BeakerX is a collection of kernels and extensions for Jupyter. The code is organized into subdirectories as follows:

  • beakerx The Python packages. The main beakerx package has:

    • a customized KernelSpec to allow BeakerX to configure the JVMs that run the kernels,

    • a server extension for the javadoc, settings, version, and autotranslation endpoints,

    • the beakerx command line program, which has the bkr2ipynb converter, the py4j server, utilities, install, and uninstall functions.

    • the Python API for the runtime (tables, plots, easyform), including automatically installing a displayer for pandas tables, and autotranslation;

    • the nbextension webpack (compiled JavaScript, TypeScript, CSS, fonts, images); and

    • the compiled Java JARs of each of the kernels, and a directory of shared JARs.

    There is a separate python package (beakerx_magics) for the %%groovy magic so it can be loaded without loading the regular beakerx package (which would turn on display of pandas tables with our table widget).

    BeakerX configures ipython to automatically load the magics in the beakerx_magics package, %load_ext is not required.

    The groovy magic uses the standard Jupyter API, jupyter_client.manager.KernelManager to start the kernel. It then proxies Comm into the inner kernel.

    This package also has the py4j support for the %%python magic. In order for the JVM kernels to be able to start Jupyter kernels they need to be able to call into Python. There is a beakerx py4j_server subcommand for this purpose (for internal use, not for the user). It calls into the groovy magic with its Comm proxy, implemented in Python.

    BeakerX implements autotranslation with a server extension and metaprogramming glue in each language. The glue makes the beakerx object into a proxy for RPC calls to the server extension, using JSON serialization. For JavaScript, the proxy object uses Comm to reach the kernel, which forwards to the server extension.

    The autotranslation server has a separate thread of control from Jupyter, and it manages its own port, which it protects by accepting only local connections and requiring a secure password (which is passed to the kernels via an environment variable). The extra thread is necessary to avoid deadlock in tornado. This might be better done with a queue, as explained in #5039.

    See #7577 for the plan to improve this architecture with shared memory and Apache Arrow.

  • doc Documentation consisting of executable tutorial notebooks. StartHere.ipynb at the top level links to these and is the intended way to navigate them. There is a subdirectory for each language.

  • docker configuration files for creating the Docker image. There is a subdirectory docker/base for an image with BeakerX's dependencies (the Ubuntu and conda packages). The main image is built by compiling BeakerX and installing BeakerX in the base image.

  • js There are two subdirectories of JavaScript and TypeScript, js/lab and js/notebook. New code is being written in TypeScript.

    The lab subdirectory has the extension for Jupyter Lab (distributed by npm). Notebook has two extensions, one for the widgets (which are included in Lab as well, and are also separately distributed with npm for embedded applications such as nbviewer), and one for the notebook application. This adds a tab to the tree view with our options panel.

    And for regular notebook pages the extension handles: running initialization cells, publication, autotranslation, the getCodeCells and runByTag APIs, callbacks for table and plot actions, UI customizations such as changing the fonts, allowing wide code cells, and disabling autosave.

  • kernel The Java implementation of the kernels is here. The main directory is kernel/base which has generic code for all the languages. The base kernel has classes for Jupyter's Comm protocol (a layer over ZMQ), magics, the classpath (including loading from maven), and the kernel parts of the widget APIs.

    There is also a subdirectory for each language which has the evaluator for that language. Scala has wrappers for the widgets so they have native types.

  • test The e2e tests, which are made with webdriver (selenium, chromedriver, jasmine).

Contributing

See CONTRIBUTING.md.

Releasing

See RELEASE.md.

FAQs

See FAQ.md.

Attribution

BeakerX contains and depends on many projects including:

The kernel is originally derived from lappsgrid, but has been rewritten in Java and refactored and expanded.

The Java support uses Adrian Witas' org.abstractmeta.toolbox.

ANTLR Copyright (c) 2012 Terence Parr and Sam Harwell

d3 Copyright (c) 2010-2015, Michael Bostock

IPython Copyright (c) 2008-2014, IPython Development Team Copyright (c) 2001-2007, Fernando Perez Copyright (c) 2001, Janko Hauser Copyright (c) 2001, Nathaniel Gray

The table of contents and init cells extensions come from: IPython-contrib Copyright (c) 2013-2015, IPython-contrib Developers

Scala Copyright (c) 2002-2015 EPFL Copyright (c) 2011-2015 Typesafe, Inc.

Guava Copyright (C) 2012 The Guava Authors

Apache Spark Copyright (C) 2014 and onwards The Apache Software Foundation.

H2 database engine This software contains unmodified binary redistributions for H2 database engine (http://www.h2database.com/), which is dual licensed and available under the MPL 2.0 (Mozilla Public License) or under the EPL 1.0 (Eclipse Public License). An original copy of the license agreement can be found at: http://www.h2database.com/html/license.html

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Beaker Extensions for Jupyter Notebook

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  • Java 58.0%
  • TypeScript 13.9%
  • JavaScript 11.1%
  • Jupyter Notebook 9.4%
  • Python 3.3%
  • Scala 2.5%
  • Other 1.8%