1 / 8

DACS–USC CSSE Data Repository: Overview and Status

DACS–USC CSSE Data Repository: Overview and Status. Jo Ann Lane USC CSSE. Tom McGibbon Quanterion. DACS-USC Data Repository Overview. Goal of repository Capture and analyze software and software engineering data and make it available to the DACS and USC CSSE communities Candidate uses

yahto
Download Presentation

DACS–USC CSSE Data Repository: Overview and Status

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. DACS–USC CSSE Data Repository: Overview and Status Jo Ann Lane USC CSSE Tom McGibbon Quanterion

  2. DACS-USC Data Repository Overview • Goal of repository • Capture and analyze software and software engineering data and make it available to the DACS and USC CSSE communities • Candidate uses • Support software, systems, and SoS engineering research • Provide searchable data to support • Cost estimation: ROMs* based upon • Actual data – at least three records • A single software size and application domain • Project planning and management: life cycle model information, key risks, lessons learned, templates, estimation heuristics * Provide links to cost model vendors for additional support

  3. Initial Prototype Contents • Software, system, system of systems • Size • Schedule • Data entry form for new records • Administrative tools to manage data Based on sanitized COCOMO data…

  4. Planned/Potential Contents • Software, system, system of systems • Size, schedule, total cost of ownership, interoperability, and quality data/trends • Data entry forms • Administrative data management tools • Lessons learned (acquirer and supplier perspectives) • Counting rules for quantitative data • Software/system characteristics • Life cycle models, architecture styles, tools used, tool evaluations • Process-related artifacts • Templates, characteristics, home-grounds Investigating wiki and knowledge management tools for non-quantitative data…

  5. Demo and Feedback

  6. Planned for End of May Delivery • Initial capability • Software engineering data • Sanitized COCOMO data • Query capability by software size and domain • Statistical analysis outputs showing range and distribution of values • Lessons learned/heuristics • Start with data submitted on Data & Analysis Center for Software (DACS) LinkedIn site Would like to include data from other cost model vendors!

  7. Benefits for Contributing Cost Model Vendors • Link from DACS-USC repository to your website for additional information • DACS-USC repository does not plan to replace cost model tools for detailed estimation • New data submitted directly to DACS-USC repository made available to participating cost model vendors • Vendor data not shared with others • Vendor data only used • In aggregations with other data • To calculate statistical outputs

  8. Discussion and Comments

More Related