暫無描述

Steve L. Nyemba b30dc0f023 Merge pull request #16 from lnyemba/v2.2.0 10 月之前
bin b9bc898161 bug fix: registry (more usable) and added to factory method 11 月之前
info 40f9c3930a bug fixes, using boto3 instead of boto for s3 support 10 月之前
notebooks 2b5c038610 documentation ... 11 月之前
transport 63666e95ce bug fix, TODO: figure out how to parse types 10 月之前
.gitignore 92bf0600c3 .. 1 年之前
README.md 3faee02fa2 documentation ... 10 月之前
requirements.txt 8d4ecd7a9f S3 Requirments file 7 年之前
setup.py 40f9c3930a bug fixes, using boto3 instead of boto for s3 support 10 月之前

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

Features

- read/write from over a dozen databases
- run ETL jobs seamlessly
- scales and integrates into shared environments like apache zeppelin; jupyterhub; SageMaker; ...

What's new

Unlike older versions 2.0 and under, we focus on collaborative environments like jupyter-x servers; apache zeppelin:

1. Simpler syntax to create reader or writer
2. auth-file registry that can be referenced using a label
3. duckdb support

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