All Projects → jupyter-naas → naas

jupyter-naas / naas

Licence: AGPL-3.0 license
⚙️ Schedule notebooks, run them like APIs, expose securely your assets: Jupyter as a viable ⚡️ Production environment

Programming Languages

python
139335 projects - #7 most used programming language
Jupyter Notebook
11667 projects
HTML
75241 projects
typescript
32286 projects
shell
77523 projects
Dockerfile
14818 projects

Projects that are alternatives of or similar to naas

Airbyte
Airbyte is an open-source EL(T) platform that helps you replicate your data in your warehouses, lakes and databases.
Stars: ✭ 4,919 (+2146.12%)
Mutual labels:  integration, pipeline, etl
Metl
Metl is a simple, web-based integration platform that allows for several different styles of data integration including messaging, file based Extract/Transform/Load (ETL), and remote procedure invocation via Web Services. Read more at www.jumpmind.com/products/metl/overview
Stars: ✭ 185 (-15.53%)
Mutual labels:  integration, etl
Faas Flow
Function Composition for OpenFaaS
Stars: ✭ 172 (-21.46%)
Mutual labels:  integration, pipeline
openrefine-client
The OpenRefine Python Client from Paul Makepeace provides a library for communicating with an OpenRefine server. This fork extends the command line interface (CLI) and is distributed as a convenient one-file-executable (Windows, Linux, Mac). It is also available via Docker Hub, PyPI and Binder.
Stars: ✭ 67 (-69.41%)
Mutual labels:  binder, etl
Metl
mito ETL tool
Stars: ✭ 153 (-30.14%)
Mutual labels:  pipeline, etl
Bulk Writer
Provides guidance for fast ETL jobs, an IDataReader implementation for SqlBulkCopy (or the MySql or Oracle equivalents) that wraps an IEnumerable, and libraries for mapping entites to table columns.
Stars: ✭ 210 (-4.11%)
Mutual labels:  pipeline, etl
python-for-excel
This is the companion repo of the O'Reilly book "Python for Excel".
Stars: ✭ 253 (+15.53%)
Mutual labels:  binder, notebooks
Phila Airflow
Stars: ✭ 16 (-92.69%)
Mutual labels:  pipeline, etl
Elyra
Elyra extends JupyterLab Notebooks with an AI centric approach.
Stars: ✭ 839 (+283.11%)
Mutual labels:  binder, jupyterlab
Python Training
Python training for business analysts and traders
Stars: ✭ 972 (+343.84%)
Mutual labels:  binder, jupyterlab
Jupyterlab Go To Definition
Navigate to variable's definition with a click in JupyterLab (or with a few key strokes)
Stars: ✭ 180 (-17.81%)
Mutual labels:  binder, jupyterlab
Mara Pipelines
A lightweight opinionated ETL framework, halfway between plain scripts and Apache Airflow
Stars: ✭ 1,841 (+740.64%)
Mutual labels:  pipeline, etl
Setl
A simple Spark-powered ETL framework that just works 🍺
Stars: ✭ 79 (-63.93%)
Mutual labels:  pipeline, etl
neo4j-jdbc
JDBC driver for Neo4j
Stars: ✭ 110 (-49.77%)
Mutual labels:  integration, etl
Stetl
Stetl, Streaming ETL, is a lightweight geospatial processing and ETL framework written in Python.
Stars: ✭ 64 (-70.78%)
Mutual labels:  pipeline, etl
navo-workshop
Tutorial notebooks for how to use PyVO to access NASA and other data in Python.
Stars: ✭ 27 (-87.67%)
Mutual labels:  binder, notebooks
Papermill
📚 Parameterize, execute, and analyze notebooks
Stars: ✭ 4,458 (+1935.62%)
Mutual labels:  pipeline, notebooks
Go Streams
A lightweight stream processing library for Go
Stars: ✭ 615 (+180.82%)
Mutual labels:  pipeline, etl
examples
Example nteract notebooks with links to execution on mybinder.org
Stars: ✭ 24 (-89.04%)
Mutual labels:  binder, notebooks
Juniper
🍇 Edit and execute code snippets in the browser using Jupyter kernels
Stars: ✭ 189 (-13.7%)
Mutual labels:  binder, jupyterlab

Naas Logo

Welcome to Naas!

Notebooks as a service (Naas) is an open source platform that allows anyone touching data (business analysts, scientists and engineers) to create powerful data engines combining automation, analytics and AI from the comfort of their Jupyter notebooks.

Naas is an attempt to propose an alternative to Google Colab, powered by the community.

In addition to Google Colab, Naas platform upgrade notebooks with with 3 low-code layers: features, drivers, templates.

  • Templates enable the user to create automated data jobs and reports in minutes.
  • Drivers act as connectors to push and/or pull data from databases, APIs, and Machine Learning algorithms and more.
  • Features transform Jupyter in a production ready environment with scheduling, asset sharing, and notifications.

🚀 Quick Start

Try all of Naas's features for free using -- Naas cloud -- a stable environment, without having to install anything.

⚙️ Installation

Check out our step by step guide on how to set up Naas locally.

❤️ Contributing

We value all kinds of contributions - not just code. We are paticularly motivated to support new contributors and people who are looking to learn and develop their skills.

Please read our contibuting guidelines on how to get started.

🤔 Community Support

The naas documentation is a great place to start and to get answers for general questions.

📃 License

The project is licensed under AGPL-3.0

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].