python data transport layer, mongodb, netezza, bigquery, postgresql files
Go to file
Steve Nyemba 8aa6f2c93d bug fix: improve handling in registry 2024-06-14 20:05:12 -05:00
bin bug fix: registry (more usable) and added to factory method 2024-06-14 15:30:09 -05:00
info refactor: etl,better reusability & streamlined and threaded 2024-06-10 00:42:42 -05:00
notebooks documentation ... 2024-06-10 02:58:28 -05:00
transport bug fix: improve handling in registry 2024-06-14 20:05:12 -05:00
.gitignore .. 2023-12-22 14:16:40 -06:00
README.md documentation typo 2024-06-14 14:16:06 -05:00
requirements.txt S3 Requirments file 2017-09-26 16:10:14 -05:00
setup.py refactor: etl,better reusability & streamlined and threaded 2024-06-10 00:42:42 -05:00

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 ?

Mostly data scientists that don't really care about the underlying database and would like a simple and consistent way to read/write and move data are well served. Additionally we implemented lightweight Extract Transform Loading API and command line (CLI) tool. Finally it is possible to add pre/post processing pipeline functions to read/write

  1. Familiarity with pandas data-frames
  2. Connectivity drivers are included
  3. Reading/Writing data from various sources
  4. Useful for data migrations or ETL

Installation

Within the virtual environment perform the following :

pip install git+https://github.com/lnyemba/data-transport.git

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