community edition of data-transport
You cannot select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
 
 
Steve L. Nyemba 47e68e2576
Merge pull request 'v2.2.0' (#7) from v2.2.0 into master
5 days ago
bin etl bug fix 5 days ago
info upgrade pyproject.toml, bug fix with registry 6 months ago
notebooks adding iceberg notebook 11 months ago
transport bug fix 5 days ago
.gitignore .. 2 years ago
LICENSE Initial commit 6 months ago
README.md bug fixes and version update 3 weeks ago
pyproject.toml Merge branch 'master' into v2.2.0 3 weeks ago
requirements.txt S3 Requirments file 8 years ago

README.md

Introduction

This project implements an abstraction of objects that can have access to a variety of data stores, implementing read/write with a simple and expressive interface. This abstraction works with NoSQL, SQL and Cloud data stores and leverages pandas.

Why Use Data-Transport ?

Data transport is a simple framework that enables read/write to multiple databases or technologies that can hold data. In using data-transport, you are able to:

  • Enjoy the simplicity of data-transport because it leverages SQLAlchemy & Pandas data-frames.
  • Share notebooks and code without having to disclosing database credentials.
  • Seamlessly and consistently access to multiple database technologies at no cost
  • No need to worry about accidental writes to a database leading to inconsistent data
  • Implement consistent pre and post processing as a pipeline i.e aggregation of functions
  • data-transport is open-source under MIT License https://github.com/lnyemba/data-transport

Installation

Within the virtual environment perform the following, the options for installation are:

sql - by default postgresql, mysql, sqlserver, sqlite3+, duckdb

pip install data-transport[cloud,nosql,other,all]git+https://github.com/lnyemba/data-transport.git

Options to install components in square brackets, these components are

warehouse - Apache Iceberg, Apache Drill

cloud  - to support nextcloud, s3

nosql - support for mongodb, couchdb

other  - support for files, rabbitmq, http

pip install data-transport[nosql,cloud,warehouse,all]@git+https://github.com/lnyemba/data-transport.git

Additional features

- In addition to read/write, there is support for functions for pre/post processing
- CLI interface to add to registry, run ETL
- scales and integrates into shared environments like apache zeppelin; jupyterhub; SageMaker; ...

Learn More

We have available notebooks with sample code to read/write against mongodb, couchdb, Netezza, PostgreSQL, Google Bigquery, Databricks, Microsoft SQL Server, MySQL ... Visit data-transport homepage