Skip to content

helkaroui/RapidFlow

Repository files navigation

!--- Under Development ---!

RapidFlow

RapidFlow is a visual programming interface for Jupyter. RapidFlow can be used to create, configure and deploy machine learning models using already implemented functionalities (without writing code) and to launch API in minutes. It can be used to apply your models in real time to a variety of data sources, databases or streams from connected objects.

RapidFlow is using Jupyter as its backend server. It also provides client and kernel management for working with kernels.

based on Flow.JS

picture

picture

Installation

  • install jupyter/services link
npm install --save @jupyterlab/services
  • install jupyter using conda
conda install notebook

Start RapidFlow

  • open app directory
  • install latest dependencies from NPM $ npm install
  • run $ python main.py
  • open browser http://127.0.0.1:8000

Done

===== 06-10-2018 =====

  • Starting a kernel for each tab
  • Common | Code component done
  • Script to run both servers
  • Kernel status (tab icon)

Todo

before 16-10-2018 :

  • apply automatically when adding a new tab (to run kernel before adding elements, otherwise it will crash)
  • manage deleting kernels properly (there are some issues)
  • stop, pause button not controlling kernels

About

RapidFlow is a straightforward tool for bringing machine learning models into production.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published