-
Notifications
You must be signed in to change notification settings - Fork 4
Strategic Dashboard Architecture
Lidia edited this page May 29, 2019
·
4 revisions
Repository | Name | Description | Lead Organization |
---|---|---|---|
qrapids-dashboard | Q-Rapids Strategic Dashboard | A dashboard for visualizing the quality of the company's products. This strategic dashboard is complemented with some specific features to support decision-makers managing quality requirements. | UPC |
qrapids-forecast | Q-Rapids Forecasting | A library that provides forecasting for metrics and factors that are used to assess quality of the company's products. | UPC |
qrapids-forecast-rest | Q-Rapids Forecasting RESTful services | RESTful services that provides forecasting for metrics and factors that are used to assess quality of the company's products. This component integrates the qrapids-forecast. | UPC |
qrapids-forecast-R_script | Forecasting R script | This repository contains an R script file complementing the forecasting techniques included by default in the qrapids-forecast repository. | UPC |
qrapids-si_assessment | Q-Rapids Qualitative SI assessment | A library that provides assessment for the strategic indicators using Bayesian Networks, strategic indicators are the higher level of indicators used to assess quality of the company's products. | UPC |
qrapids-si_assessment-rest | Q-Rapids Qualitative SI assessment RESTful services | RESTful services that provides qualitative assessment for the strategic indicators that are used to assess quality of the company's products. This component integrates the qrapids-si_assessment. | UPC |
qrapids-qma-elastic | Quality Model Assessment library | A library to read and write the assessment data from an Elasticsearch. | UPC |
qrapids-qr_generation | Quality Requirements Generator | A library that generates the quality requirements candidates. This library uses the external tool PABRE-WS for managing a quality requirement patterns catalogue. | UPC |
This component has been created as a result of the Q-Rapids project funded by the European Union Horizon 2020 Research and Innovation programme under grant agreement No 732253.