Ascend your Jupyter Notebook usage

Overview

Jupyter Ascending

Sync Jupyter Notebooks from any editor

Jupyter Ascending

About

Jupyter Ascending lets you edit Jupyter notebooks from your favorite editor, then instantly sync and execute that code in the Jupyter notebook running in your browser.

It's the best of both worlds--the autocomplete, keybindings, and refactoring tools you love in your favorite editor, plus the great visualization abilities of a Jupyter notebook.

Combined with basic syncing of your code to a remote server, you can have all the power of a beefy dev-server with all the convenience of editing code locally.

Installation

$ pip install jupyter_ascending && \
jupyter nbextension    install jupyter_ascending --sys-prefix --py && \
jupyter nbextension     enable jupyter_ascending --sys-prefix --py && \
jupyter serverextension enable jupyter_ascending --sys-prefix --py

You can confirm it's installed by checking for jupyter_ascending in:

$ jupyter nbextension     list
$ jupyter serverextension list

Usage

Quickstart

  1. python -m jupyter_ascending.scripts.make_pair --base example

    This makes a pair of synced py and ipynb files, example.sync.py and example.sync.ipynb.

  2. Start jupyter and open the notebook:

    jupyter notebook example.sync.ipynb

  3. Add some code to the .sync.py file, e.g.

    echo 'print("Hello World!")' >> example.sync.py

  4. Sync the code into the jupyter notebook:

    python -m jupyter_ascending.requests.sync --filename example.sync.py

  5. Run that cell of code

    python -m jupyter_ascending.requests.execute --filename example.sync.py --line 16

Set up one of the editor integrations to do all of this from within your favorite editor!

Working with multiple jupyter servers or alternate ports

Currently Jupyter Ascending expects the jupyter server to be running at localhost:8888. If it's running elsewhere (eg due to having multiple jupyter notebooks open), you'll need to set the env variables JUPYTER_ASCENDING_EXECUTE_HOST and JUPYTER_ASCENDING_EXECUTE_PORT appropriately both where you use the client (ie in your editor) and where you start the server.

By default the Jupyter server will search for a free port starting at 8888. If 8888 is unavailable and it selects eg 8889, Jupyter Ascending won't work - as it's expecting to connect to 8888. To force Jupyter to use a specific port, start your jupyter notebook with JUPYTER_PORT=8888 JUPYTER_PORT_RETRIES=0 jupyter notebook (or whatever port you want, setting also JUPYTER_ASCENDING_EXECUTE_PORT appropriately).

Working on a remote server

Jupyter Ascending doesn't know or care if the editor and the jupyter server are on the same machine. The client is just sending requests to http://[jupyter_server_url]:[jupyter_server_port]/jupyter_ascending, with the default set to http://localhost:8888/jupyter_ascending. We typically use SSH to forward the local jupyter port into the remote server, but you can set up the networking however you like, and use the environment variables to tell the client where to look for the Jupyter server.

There's fuzzy-matching logic to match the locally edited file path with the remote notebook file path (eg if the two machines have the code in a different directory), so everything should just work!

Here's an example of how you could set this up:

  1. install jupyter-ascending on both the client and the server

  2. put a copy of your project code on both the client and the server

  3. start a jupyter notebook on the server, and open a .sync.ipynb notebook

  4. set up port forwarding, e.g. with something like this (forwards local port 8888 to the remote port 8888)

    ssh -L 8888:127.0.0.1:8888 [email protected]_hostname

  5. use Jupyter Ascending clients as normal on the corresponding .sync.py file

Security Warning

The jupyter-ascending client-server connection is currently completely unauthenticated, even if you have auth enabled on the Jupyter server. This means that, if your jupyter server port is open to the internet, someone could detect that you have jupyter-ascending running, then sync and run arbitrary code on your machine. That's bad!

For the moment, we recommend only running jupyter-ascending when you're using jupyter locally, or when your jupyter server isn't open to the public internet. For example, we run Jupyter on remote servers, but keep Jupyter accessible only to localhost. Then we use a secure SSH tunnel to do port-forwarding.

Hopefully we can add proper authentication in the future. Contributions are welcome here!

How it works

  • your editor calls the jupyter ascending client library with one of a few commands:
    • sync the code to the notebook (typically on save)
    • run a cell / run all cells / other commands that should be mapped to a keyboard shortcut
  • the client library assembles a HTTP POST request and sends it to the jupyter server
  • there is a jupyter server extension which accepts HTTP POST requests at http://[jupyter_server_url]:[jupyter_server_port]/jupyter_ascending.
  • the server extension matches the request filename to the proper running notebooks and forwards the command along to the notebook plugin
  • a notebook plugin receives the command, and updates the contents of the notebook or executes the requested command.
  • the notebook plugin consists of two parts - one part executes within the python process of the notebook kernel, and the other executes in javascript in the notebook's browser window. the part in python launches a little webserver in a thread, which is how it receives messages the server extension. when the webserver thread starts up, it sends a message to the server extension to "register" itself so the server extension knows where to send commands for that notebook.

Local development

To do local development (only needed if you're modifying the jupyter-ascending code):

# install dependencies
$ poetry install

# Activate the poetry env
$ poetry shell

# Installs the extension, using symlinks
$ jupyter nbextension install --py --sys-prefix --symlink jupyter_ascending

# Enables them, so it auto loads
$ jupyter nbextension enable jupyter_ascending --py --sys-prefix
$ jupyter serverextension enable jupyter_ascending --sys-prefix --py

To check that they are enabled, do something like this:

$ jupyter nbextension list
Known nbextensions:
  config dir: /home/tj/.pyenv/versions/3.8.1/envs/general/etc/jupyter/nbconfig
    notebook section
      jupytext/index  enabled
      - Validating: OK
      jupyter-js-widgets/extension  enabled
      - Validating: OK
      jupyter_ascending/extension  enabled
      - Validating: OK

$ jupyter serverextension list
config dir: /home/tj/.pyenv/versions/3.8.1/envs/general/etc/jupyter
    jupytext  enabled
    - Validating...
      jupytext 1.8.0 OK
    jupyter_ascending  enabled
    - Validating...
      jupyter_ascending 0.1.13 OK

Run tests from the root directory of this repository using python -m pytest ..

Format files with pyfixfmt. In a PyCharm file watcher, something like

python -m pyfixfmt --file-glob $FilePathRelativeToProjectRoot$ --verbose

Pushing a new version to PyPI:

  • Bump the version number in pyproject.toml and _version.py.
  • poetry build
  • poetry publish
  • git tag VERSION and git push origin VERSION

Updating dependencies:

  • Dependency constraints are in pyproject.toml. These are the constraints that will be enforced when distributing the package to end users.
  • These get locked down to specific versions of each package in poetry.lock, when you run poetry lock or poetry install for the first time. poetry.lock is only used by developers using poetry install - the goal is to have a consistent development environment for a all developers.
  • If you make a change to the dependencies in pyproject.toml, you'll want to update the lock file with poetry lock. To get only the minimal required changes, use poetry lock --no-update.
Owner
Untitled AI
We're investigating the fundamentals of learning across humans and machines in order to create more general machine intelligence.
Untitled AI
A visualisation tool for Deep Reinforcement Learning

DRLVIS - Visualising Deep Reinforcement Learning Created by Marios Sirtmatsis with the support of Alex Bäuerle. DRLVis is an application used for visu

Marios Sirtmatsis 1 Nov 04, 2021
Weakly Supervised Scene Text Detection using Deep Reinforcement Learning

Weakly Supervised Scene Text Detection using Deep Reinforcement Learning This repository contains the setup for all experiments performed in our Paper

Emanuel Metzenthin 3 Dec 16, 2022
B2EA: An Evolutionary Algorithm Assisted by Two Bayesian Optimization Modules for Neural Architecture Search

B2EA: An Evolutionary Algorithm Assisted by Two Bayesian Optimization Modules for Neural Architecture Search This is the offical implementation of the

SNU ADSL 0 Feb 07, 2022
PyTorch code for our paper "Image Super-Resolution with Non-Local Sparse Attention" (CVPR2021).

Image Super-Resolution with Non-Local Sparse Attention This repository is for NLSN introduced in the following paper "Image Super-Resolution with Non-

143 Dec 28, 2022
Node-level Graph Regression with Deep Gaussian Process Models

Node-level Graph Regression with Deep Gaussian Process Models Prerequests our implementation is mainly based on tensorflow 1.x and gpflow 1.x: python

1 Jan 16, 2022
Unit-Convertor - Unit Convertor Built With Python

Python Unit Converter This project can convert Weigth,length and ... units for y

Mahdis Esmaeelian 1 May 31, 2022
Repository for MuSiQue: Multi-hop Questions via Single-hop Question Composition

🎵 MuSiQue: Multi-hop Questions via Single-hop Question Composition This is the repository for our paper "MuSiQue: Multi-hop Questions via Single-hop

21 Jan 02, 2023
Pytorch implementation of our method for high-resolution (e.g. 2048x1024) photorealistic video-to-video translation.

vid2vid Project | YouTube(short) | YouTube(full) | arXiv | Paper(full) Pytorch implementation for high-resolution (e.g., 2048x1024) photorealistic vid

NVIDIA Corporation 8.1k Jan 01, 2023
Code used for the results in the paper "ClassMix: Segmentation-Based Data Augmentation for Semi-Supervised Learning"

Code used for the results in the paper "ClassMix: Segmentation-Based Data Augmentation for Semi-Supervised Learning" Getting started Prerequisites CUD

70 Dec 02, 2022
PointCNN: Convolution On X-Transformed Points (NeurIPS 2018)

PointCNN: Convolution On X-Transformed Points Created by Yangyan Li, Rui Bu, Mingchao Sun, Wei Wu, Xinhan Di, and Baoquan Chen. Introduction PointCNN

Yangyan Li 1.3k Dec 21, 2022
Official Python implementation of the 'Sparse deconvolution'-v0.3.0

Sparse deconvolution Python v0.3.0 Official Python implementation of the 'Sparse deconvolution', and the CPU (NumPy) and GPU (CuPy) calculation backen

Weisong Zhao 23 Dec 28, 2022
PyTorch implementation of CVPR 2020 paper (Reference-Based Sketch Image Colorization using Augmented-Self Reference and Dense Semantic Correspondence) and pre-trained model on ImageNet dataset

Reference-Based-Sketch-Image-Colorization-ImageNet This is a PyTorch implementation of CVPR 2020 paper (Reference-Based Sketch Image Colorization usin

Yuzhi ZHAO 11 Jul 28, 2022
Code release for "MERLOT Reserve: Neural Script Knowledge through Vision and Language and Sound"

merlot_reserve Code release for "MERLOT Reserve: Neural Script Knowledge through Vision and Language and Sound" MERLOT Reserve (in submission) is a mo

Rowan Zellers 92 Dec 11, 2022
Learning Facial Representations from the Cycle-consistency of Face (ICCV 2021)

Learning Facial Representations from the Cycle-consistency of Face (ICCV 2021) This repository contains the code for our ICCV2021 paper by Jia-Ren Cha

Jia-Ren Chang 40 Dec 27, 2022
A stock generator that assess a list of stocks and returns the best stocks for investing and money allocations based on users choices of volatility, duration and number of stocks

Stock-Generator Please visit "Stock Generator.ipynb" for a clearer view and "Stock Generator.py" for scripts. The stock generator is designed to allow

jmengnyay 1 Aug 02, 2022
Light-weight network, depth estimation, knowledge distillation, real-time depth estimation, auxiliary data.

light-weight-depth-estimation Boosting Light-Weight Depth Estimation Via Knowledge Distillation, https://arxiv.org/abs/2105.06143 Junjie Hu, Chenyou F

Junjie Hu 13 Dec 10, 2022
SOTR: Segmenting Objects with Transformers [ICCV 2021]

SOTR: Segmenting Objects with Transformers [ICCV 2021] By Ruohao Guo, Dantong Niu, Liao Qu, Zhenbo Li Introduction This is the official implementation

186 Dec 20, 2022
Implementation of PersonaGPT Dialog Model

PersonaGPT An open-domain conversational agent with many personalities PersonaGPT is an open-domain conversational agent cpable of decoding personaliz

ILLIDAN Lab 42 Jan 01, 2023
This repository implements variational graph auto encoder by Thomas Kipf.

Variational Graph Auto-encoder in Pytorch This repository implements variational graph auto-encoder by Thomas Kipf. For details of the model, refer to

DaehanKim 215 Jan 02, 2023
A simple but complete full-attention transformer with a set of promising experimental features from various papers

x-transformers A concise but fully-featured transformer, complete with a set of promising experimental features from various papers. Install $ pip ins

Phil Wang 2.3k Jan 03, 2023