Skip to content
Universal Data Mapper and SQL-Database Engine
Python
Branch: master
Clone or download
Latest commit ff6796d Sep 10, 2019
Permalink
Type Name Latest commit message Commit time
Failed to load latest commit information.
deet fixes #50 Sep 10, 2019
docs fixes #51 Sep 10, 2019
tests fixes #51 Sep 10, 2019
.gitignore
.pylintrc fixes #1 Feb 8, 2019
LICENSE Initial commit Feb 8, 2019
README.md fixes #52 Sep 10, 2019
requirements.txt Update requirements Sep 9, 2019
setup.py fixes #50 Sep 10, 2019

README.md

Deet

Building Status Documentation Status PIP Version

Deet is a universal data mapper and SQL-Database engine, that implements high-performance and security requirements for large-scale enterprise analytical applications.

The primary goal of Deet is to separate data integration and data analysis into independent tasks, by providing a universal data interface for machine learning- and data analysis applications. To achieve this goal, Deet implements the two fundamental layers of a data warehouse:

The integration layer of Deet utilizes SQLAlchemy to allow it's connection to a variety of SQL-Databases (e.g. IBM DB2, Oracle, SAP, MS-SQL, MS-Access, Firebird, Sybase, MySQL, Postgresql, SQLite, etc.). Thereupon it provides native support for flat file databases (e.g. CSV-Tables, R-Table exports), laboratory measurements and data generators.

The staging layer of Deet is implemented as a native SQL-Database engine, featuring a DB-API 2.0 interface with full SQL:2016 support, a vertical data storage manager and real-time encryption. This allows the data analysis application to integrate a variety of different data sources, by using a unified data interface (and SQL dialect).

Deet is open source, based on the Python programming language and actively developed as part of the Vivid Code framework at Frootlab. Deet is developed as a generic data interface, which can be integrated into data analysis applications, to facilitate the integration of data.

Current Development Status

Deet currently is in Pre-Alpha development stage, which immediately follows the Planning stage. This means, that at least some essential requirements of Deet are not yet implemented. A comprehensive list of all currently supported data back-ends is given in the online manual.

Installation

Comprehensive information and installation support is provided within the online manual. If you already have a Python environment configured on your computer, you can install the latest distributed version by using pip:

$ pip install deet

Documentation

The latest Deet documentation is available as an online manual and for download in the formats PDF, EPUB and HTML.

Contribute

Contributors are very welcome! Feel free to report bugs and feature requests to the issue tracker provided by GitHub. Currently, as the Frootlab Developers team still is growing, we do not provide any Contribution Guide Lines to collaboration partners. However, if you are interested to join the team, we would be glad, to receive an informal application.

License

Deet is open source and available free for any use under the GPLv3 license:

© 2019 Frootlab Developers:
  Patrick Michl <patrick.michl@frootlab.org>
© 2018-2019 Patrick Michl
You can’t perform that action at this time.