All Projects → ToucanToco → weaverbird

ToucanToco / weaverbird

Licence: BSD-3-Clause license
A visual data pipeline builder with various backends

Programming Languages

typescript
32286 projects
python
139335 projects - #7 most used programming language
Vue
7211 projects
javascript
184084 projects - #8 most used programming language
SCSS
7915 projects
Makefile
30231 projects

Projects that are alternatives of or similar to weaverbird

tempo
API for manipulating time series on top of Apache Spark: lagged time values, rolling statistics (mean, avg, sum, count, etc), AS OF joins, downsampling, and interpolation
Stars: ✭ 212 (+226.15%)
Mutual labels:  pandas
pyjanitor
Clean APIs for data cleaning. Python implementation of R package Janitor
Stars: ✭ 970 (+1392.31%)
Mutual labels:  pandas
introduction to ml with python
도서 "[개정판] 파이썬 라이브러리를 활용한 머신 러닝"의 주피터 노트북과 코드입니다.
Stars: ✭ 211 (+224.62%)
Mutual labels:  pandas
trackanimation
Track Animation is a Python 2 and 3 library that provides an easy and user-adjustable way of creating visualizations from GPS data.
Stars: ✭ 74 (+13.85%)
Mutual labels:  pandas
Data-Science-Resources
A guide to getting started with Data Science and ML.
Stars: ✭ 17 (-73.85%)
Mutual labels:  pandas
pandas twitter
Analyzing Trump's tweets using Python (Pandas + Twitter workshop)
Stars: ✭ 81 (+24.62%)
Mutual labels:  pandas
Data-Wrangling-with-Python
Simplify your ETL processes with these hands-on data sanitation tips, tricks, and best practices
Stars: ✭ 90 (+38.46%)
Mutual labels:  pandas
cracking-the-pandas-cheat-sheet
인프런 - 단 두 장의 문서로 데이터 분석과 시각화 뽀개기
Stars: ✭ 62 (-4.62%)
Mutual labels:  pandas
datascienv
datascienv is package that helps you to setup your environment in single line of code with all dependency and it is also include pyforest that provide single line of import all required ml libraries
Stars: ✭ 53 (-18.46%)
Mutual labels:  pandas
pandas-workshop
An introductory workshop on pandas with notebooks and exercises for following along.
Stars: ✭ 161 (+147.69%)
Mutual labels:  pandas
resolving-python-data-science
Learning materials to get started with Python using Pandas, a library to manipulate Data.
Stars: ✭ 26 (-60%)
Mutual labels:  pandas
Datscan
DatScan is an initiative to build an open-source CMS that will have the capability to solve any problem using data Analysis just with the help of various modules and a vast standardized module library
Stars: ✭ 13 (-80%)
Mutual labels:  pandas
chatstats
💬📊 Fun data visualizations for Facebook Messenger chats
Stars: ✭ 18 (-72.31%)
Mutual labels:  pandas
Engezny
Engezny is a python package that quickly generates all possible charts from your dataframe and saves them for you, and engezny is only supporting now uni-parameter visualization using the pie, bar and barh visualizations.
Stars: ✭ 25 (-61.54%)
Mutual labels:  pandas
pybacen
This library was developed for economic analysis in the Brazilian scenario (Investments, micro and macroeconomic indicators)
Stars: ✭ 40 (-38.46%)
Mutual labels:  pandas
covid-19
Data ETL & Analysis on the global and Mexican datasets of the COVID-19 pandemic.
Stars: ✭ 14 (-78.46%)
Mutual labels:  pandas
Data-Science-101
Notes and tutorials on how to use python, pandas, seaborn, numpy, matplotlib, scipy for data science.
Stars: ✭ 19 (-70.77%)
Mutual labels:  pandas
toucan-connectors
Connectors available to retrieve data in Toucan Toco small apps
Stars: ✭ 13 (-80%)
Mutual labels:  pandas
fal
do more with dbt. fal helps you run Python alongside dbt, so you can send Slack alerts, detect anomalies and build machine learning models.
Stars: ✭ 567 (+772.31%)
Mutual labels:  pandas
hamilton
A scalable general purpose micro-framework for defining dataflows. You can use it to create dataframes, numpy matrices, python objects, ML models, etc.
Stars: ✭ 612 (+841.54%)
Mutual labels:  pandas

GitHub Logo Weaverbird

"Weaverbird Screenshot

Weaverbird is Toucan Toco's data pipelines toolkit, it contains :

  • a pipeline Data Model, currently supporting more than 40 transformation steps
  • a friendly User Interface for building those pipelines without writing any code, made with TypeScript, VueJS & VueX
  • a set of BackEnds to use those pipelines :
    • the MongoDB Translator that generate Mongo Queries, written in TypeScript
    • the Pandas Executor that compute the result using Pandas dataframes, written in Python
    • the Snowflake SQL translator, written in Python

For in depth user & technical documentation, have a look at weaverbird.toucantoco.com or at the documentation's source files in the docs directory.

Last but not least, you can play with Weaverbird on our online playground!

Badges

UI

npm CI UI Coverage Maintainability Rating Lines of Code

Server

pypi CI server

Project setup

yarn install

Requirement: node > v11

Compiles target library

yarn build-bundle

This will generate an importable JS VisualQueryBuilder library in the dist directory.

Important note: While we do our best to embrace semantic versioning, we do not guarantee full backward compatibility until version 1.0.0 is realeased.

Run your tests

The basic command to run all tests is:

yarn test:unit

You can also use a watcher so that tests rerun automatically on a change:

yarn test:unit --watchAll

To run a single test file:

yarn test:unit path/to/yourfile.ts

Finally, you can deactivate typescript checks to run tests quicker:

yarn test:quick

This can be useful to accelerate your development cycle temporarily when developing a new feature or fixing a bug. Under the hood, this will use the babel-jest transformer on typescript files instead of ts-jest.

Lints and fixes files

yarn lint

Build the API documentation

yarn build-doc

This will run typedoc on the src/ directory and generate the corresponding documentation in the dist/docs directory.

Build and run the documentation website

The web documentation is powered by Jekyll.

You can find all the sources into the docs folder.

To build and locally launch the documentation you need Ruby and gem before starting, then:

# install ruby
sudo apt install ruby ruby-dev

# install bundler
gem install bundler

# run jekyll and a local server with dependencies :
cd docs
bundle install
bundle exec jekyll serve

Enrich it!

put your .md file into the docs folder. You can add a folder as well to better organization

into your .md file don't forget to declare this at the beginning of the file :

---
title: your title doc name
permalink: /docs/your-page-doc-name/
---

to finish to get your page into the doc navigation you have to add it in `_data/docs.yml``

example :

- title: Technical documentation
  docs:
  - steps
  - stepforms
  - your-page-doc-name

Run the storybook

Storybook uses the bundled lib, so all showcased components must be in the public API.

yarn storybook

This will run storybook, displaying the stories (use cases) of UI components.

Stories are defined in the stories/ directory.

Customize configuration

See Configuration Reference.

Publication

This library is published on npm under the name weaverbird automatically each time a release is created in GitHub.

Create a release (frontend)

  • Define new version using semantic versioning

  • Create a new local branch release/X.Y.Z from master

    ex: release/0.20.0

  • Update the version property in package.json and in sonar-project.properties

  • Check differences between last release and current and fill CHANGELOG.md with updates

    • Delete the ##changes title at start of the CHANGELOG.md if provided

    • Add the date and version at start of CHANGELOG.md following this convention

      [X.Y.Z] - YYYY-MM-DD
      

      ex: [0.20.0] - 2020-08-03

    • Add link to the CHANGELOG.md from this version to the previous one at the end of the CHANGELOG.md

      [X.Y.Z]: https://github.com/ToucanToco/weaverbird/compare/voldX.oldY.oldZ...vX.Y.Z
      

      ex: [0.20.0]: https://github.com/ToucanToco/weaverbird/compare/v0.19.2...v0.20.0

  • Commit changes with version number

    ex: v0.20.0

  • Push branch

  • Create a pull request into master from your branch

  • When pull request is merged, create a release with the version number in tag version and title (no description needed)

    ex: v0.20.0

  • Hit the release "publish release" button (this will automatically create a tag and trigger the package publication )

Create a release (backend)

  • Create a new local branch chore/bump-server-version-x-x-x

  • Edit server/pyproject.toml & increment the version in [tool.poetry] section

  • Push branch

  • Create a pull request into master from your branch

  • Once the PR is approved & merged in master publish the release in Pypi with make build & make upload

Usage as library

Without any module bundler

<!-- Import styles -->
<link rel="stylesheet" href="weaverbird/dist/weaverbird.umd.min.js" />

<!-- Import scripts -->
<script src="vue.js"></script>
<script src="weaverbird/dist/weaverbird.umd.min.js"></script>

With an ES module bundler (typically webpack or rollup)

import { Pipeline } from 'weaverbird';

By default, the CommonJS module is imported. If you prefer the ES module version, import dist/weaverbird.esm.js.

Styles

If your module bundler can also import CSS (e.g. via styles-loader):

import 'weaverbird/dist/weaverbird.css';

If you prefer to use Sass, you may import directly the scss:

@import '~weaverbird/src/styles/main';

This example makes use of the ~ syntax from webpack's sass-loader to resolve the imported modules.

API

Modules

See the documentation generated in dist/docs directory

Styles

TODO: document here sass variables that can be overriden

Playground

The /playground directory hosts a demo application with a small server that showcases how to integrate the exported components and API. To run it, use the provided Dockerfile:

docker build -t weaverbird-playground .
docker run -p 5000:5000 --rm -d weaverbird-playground

which is basically a shortcut for the following steps:

# install front-end dependencies
yarn
# build the front-end bundle
yarn build-bundle
# note: use --watch when developing

cd server
# install the backend dependencies
pip install -e ".[playground]"
# run the server
QUART_APP=playground QUART_ENV=development quart run
# note: in the dockerfile, a production-ready webserver is used instead of a development one

Once the server is started, you should be able to open the http://localhost:5000 in your favorite browser and enjoy!

Mongo back-end

The default back-end for the playground is a small server passing queries to MongoDB. Connect the playground to a running MongoDB instance with the environment variables:

  • MONGODB_CONNECTION_STRING (default to localhost:27017)
  • MONGODB_DATABASE_NAME (default to 'data')

Run Weaverbird + MongoDB or PostgreSQL with docker-compose

If you want to test the playground with a populated MongoDB or PostgreSQL instance, you can use docker-compose:

# At the directory root
# For MongoDB
docker-compose up -d weaverbird mongodb
# For PostgreSQL
docker-compose up -d weaverbird postgres

Pandas back-end

An alternative back-end for the playground is a small server running in python, executing pipelines with pandas. Add ?backend=pandas to the URL to see it in action.

Athena back-end

In order to run the playground with AWS Athena, make sure the following environment variables are set before starting the docker-compose stack:

  • ATHENA_REGION
  • ATHENA_SECRET_ACCESS_KEY
  • ATHENA_ACCESS_KEY_ID
  • ATHENA_DATABASE
  • ATHENA_OUTPUT

BigQuery back-end

In order to run the playground with Google BigQuery, download the JSON file containing the credentials for your service account, place it at the root of the weaverbird repo and name it bigquery-credentials.json. It will be mounted inside of the playground container.

Use your own data files

CSVs from playground/datastore are available to use in the playground with pandas. You can override this folder when running the container using by adding a volume parameter: -v /path/to/your/folder/with/csv:/weaverbird/playground/datastore.

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].