Log In     View a printable version of the current page.  

All Projects : GReAT (Key: GRT)

Project Lead: Gabor Karsai
URL: http://repo.isis.vanderbilt.edu/tools/get_tool?GReAT
Description:
The Graph Rewriting and Transformation toolset. This is a metamodel based graph transformation language useful for the specification and implementation of model-to-model transformations.

Release Notes

 Select:   Open Issues   Road Map   Change Log   Popular Issues   Versions   Components   

Components

Component Code Generator
  This component generates code from the transformations rule. The generated code can then be compiled with the UDM API to produce a transformation executable.
Component Graph Rewrite Debuger (GRD)
  This component provides debugging capability to GReAT. One can use it to single step through the transformation. It can be launched from the UML paradigm as an interpreter or from the command line using the GRD command
Component Graph Rewrite Engine (GRE)
  A interpreter that can execute GReAT specifications on a given input.
Component GReAT Master Interpreter
  This interpreter comprises of three sub interpreters (1) Generate GR - an interpreter that converts transformation rules to the GR format (2) Generate Config - an interpreter that converts the configuration information to the GReAT Config format (3) UML2XML - a UDM interpreter that converts the UML class diagrams to a UDM compatible XML format and then generates C++ API and xml xsd for it.
Component Miscellaneous
Component UmlModelTransformation paradigm (UMT)
  This is the GME paradigm used to create GReAT transformations

Reports

User Workload Report
Version Workload Report
Time Tracking Report
Single Level Group By Report

Preset Filters

- All
- Outstanding
- Unscheduled
- Most important
- Resolved recently
- Added recently
- Updated recently

Project Summary

Open Open 38
   49%
Resolved Resolved 14
   18%
Closed Closed 25
   32%

Open Issues

By Priority
Critical Critical 2
   5%
Major Major 27
   71%
Minor Minor 9
   24%

By Assignee
Aditya Agrawal 4
   11%
Attila Vizhanyo 5
   13%
Feng Shi 10
   26%
Gabor Karsai 17
   45%
Harmon Nine 2
   5%