Rel

Software


Voorhis, Dave 2004. Rel.
AuthorsVoorhis, Dave
Abstract

Rel is a free, open-source, true relational database management system with an advanced query language called Tutorial D.

KeywordsDatabase; Relational model
Year2004
Web address (URL)http://hdl.handle.net/10545/583377
hdl:10545/583377
File
File Access Level
Open
Publication dates2004
Publication process dates
Deposited08 Dec 2015, 08:57
ContributorsUniversity of Derby
Permalink -

https://repository.derby.ac.uk/item/94zz9/rel

Download files


File
license.txt
File access level: Open

  • 31
    total views
  • 0
    total downloads
  • 0
    views this month
  • 0
    downloads this month

Export as

Related outputs

Rel: The 'true' relational model for desktop data processing.
Voorhis, Dave 2017. Rel: The 'true' relational model for desktop data processing. University of Derby.
Tools and technologies for the implementation of Big Data.
Self, Richard and Voorhis, Dave 2015. Tools and technologies for the implementation of Big Data. in: Elsevier.
Ensemble of ESA/AATSR aerosol optical depth products based on the likelihood estimate method with uncertainties
Xie, Yanqing, Xue, Yong, Che, Yahui, Guang, Jie, Mei, Linlu, Voorhis, Dave, Fan, Cheng, She, Lu and Xu, Hui 2017. Ensemble of ESA/AATSR aerosol optical depth products based on the likelihood estimate method with uncertainties. IEEE Transactions on Geoscience and Remote Sensing. https://doi.org/10.1109/TGRS.2017.2757910
Rel
Voorhis, Dave 2016. Rel.
From DOOM to duty: The evolution of design patterns in first person shooters
Voorhis, Dave and Thompson, Tommy 2016. From DOOM to duty: The evolution of design patterns in first person shooters. Digital Games Research Association.
Tools and technologies for the implementation of Big Data
Self, Richard and Voorhis, Dave 2015. Tools and technologies for the implementation of Big Data. in: Butterworth-Heinemann.
Planning in the Cloud: Massively Parallel Planning
Voorhis, Dave and Thompson, Tommy 2014. Planning in the Cloud: Massively Parallel Planning. IEEE Computer Society. https://doi.org/10.1109/UCC.2014.67
Designing Big Data Analytics Undergraduate and Postgraduate Programmes for Employability
Self, Richard and Voorhis, Dave 2014. Designing Big Data Analytics Undergraduate and Postgraduate Programmes for Employability.
Novel Approaches to Learning and Teaching SAS-based Analytics
Self, Richard and Voorhis, Dave 2013. Novel Approaches to Learning and Teaching SAS-based Analytics. BDA EdCon.
Feature Selection in the Corrected KDD-dataset
Zargari, Shahrzad A. and Voorhis, Dave 2012. Feature Selection in the Corrected KDD-dataset. IEEE Computer Society.