University of Southern California Center for Software Engineering C S E USC ISERN 2005 November 15, 2005 Stefan Biffl, Aybuke Aurum, Rick Selby, Dan Port,

Slides:



Advertisements
Similar presentations
Tradespace, Affordability, and COCOMO III Barry Boehm, USC CSSE Annual Research Review 2014 April 30,
Advertisements

Empirical Research at USC-CSE Barry Boehm, USC-CSE ISERN Presentation October 8, 2000
University of Southern California Center for Software Engineering C S E USC Barry Boehm, USC Community-Based Learning Collaborative April 6, 2009 Service.
University of Southern California Center for Software Engineering C S E USC 02/16/05©USC-CSE1 LiGuo Huang Computer Science Department.
COCOMO Suite Model Unification Tool Ray Madachy 23rd International Forum on COCOMO and Systems/Software Cost Modeling October 27, 2008.
University of Southern California Center for Systems and Software Engineering February 13, 2007©USC-CSSE1 Acquisition and Contracting Mismatches Barry.
The Promise & Challenge of Health Care IT in Community Clinics: Insights from the California Community Clinics Initiative Prepared for the convening on.
3/14/2006USC-CSE1 Ye Yang, Barry Boehm Center for Software Engineering University of Southern California COCOTS Risk Analyzer and Process Usage Annual.
University of Southern California Center for Systems and Software Engineering UniWord Case Study CS 510 Fall 2007 Barry Boehm, USC.
State of the Region Overview of APR Data for the Western Region Western Regional Resource Center APR Clinic 2010 November 1-3, 2010 San Francisco, California.
University of Southern California Center for Software Engineering CSE USC COSYSMO: Constructive Systems Engineering Cost Model Barry Boehm, USC CSE Annual.
University of Southern California Center for Systems and Software Engineering Cost Modeling for Commercial Organizations Anandi Hira, USC Graduate Student.
University of Southern California Center for Software Engineering CSE USC 12/6/01©USC-CSE CeBASE: Opportunities to Collaborate Barry Boehm, USC-CSE Annual.
University of Southern California Center for Systems and Software Engineering Integrating Systems and Software Engineering (IS&SE) with the Incremental.
University of Southern California Center for Software Engineering CSE USC ©USC-CSE 10/23/01 1 COSYSMO Portion The COCOMO II Suite of Software Cost Estimation.
University of Southern California Center for Software Engineering CSE USC ©USC-CSE Overview: USC Annual Research Review Barry Boehm, USC-CSE February.
University of Southern California Center for Software Engineering C S E USC 09/15/05©USC-CSE1 Barry Boehm, USC Motorola Quality Workshop September 15,
Welcome and Overview: Annual Research Review 2006 Barry Boehm, USC-CSE March 15, 2006.
10/25/2005USC-CSE1 Ye Yang, Barry Boehm USC-CSE COCOTS Risk Analyzer COCOMO II Forum, Oct. 25 th, 2005 Betsy Clark Software Metrics, Inc.
University of Southern California Center for Systems and Software Engineering ©USC-CSSE1 Ray Madachy, Barry Boehm USC Center for Systems and Software Engineering.
Welcome and Overview: COCOMO / SCM #20 Forum and Workshops Barry Boehm, USC-CSE October 25, 2005.
Constructive COTS Model (COCOTS) Status Chris Abts USC Center for Software Engineering Annual Research Review Annual Research Review.
University of Southern California Center for Systems and Software Engineering Assessing the IDPD Factor: Quality Management Platform Project Thomas Tan.
VBSE Theory, and SimVBSE CSE, Annual Research Review Apurva Jain, Barry Boehm Version 1.0 (modified March 02, 2006)
University of Southern California Center for Software Engineering CSE USC USC-CSE Annual Research Review COQUALMO Update John D. Powell March 11, 2002.
University of Southern California Center for Software Engineering C S E USC Barry Boehm, USC CS 510 Lecture Fall 2011 Value-Based Software Engineering:
© USC-CSE1 Determine How Much Dependability is Enough: A Value-Based Approach LiGuo Huang, Barry Boehm University of Southern California.
© USC-CSE Feb Keun Lee ( & Sunita Chulani COQUALMO and Orthogonal Defect.
Technische Universität München The influence of software quality requirements on the suitability of software cost estimation methods 24th International.
Zhihao (Scott) Chen Dynamic Service Orchestration Business Rule Processing Business Intelligence Analytics Context-Aware Computing.
COTS Based System Security Economics - A Stakeholder/Value Centric Approach Related tool demo session: COTS Based System Security Test-bed (Tiramisu) Tuesday.
University of Southern California Center for Software Engineering CSE USC Distributed Assessment of Risk Tool DART Jesal Bhuta
University of Southern California Center for Systems and Software Engineering Decision Support for Value-Based Software Testing Framework Qi Li, Barry.
University of Southern California Center for Software Engineering C S E USC Barry Boehm, USC University of Idaho Talk April 23, 2010 Value-Based Software.
University of Southern California Center for Software Engineering C S E USC Marilee Wheaton, USC CS 510 Lecture Fall 2010 Value-Based Software Engineering:
University of Southern California Center for Systems and Software Engineering ©USC-CSSE1 Ray Madachy USC Center for Systems and Software Engineering
University of Southern California Center for Software Engineering CSE USC 110/26/2004©USC-CSE Welcome and Overview: COCOMO / SCM #19 Forum and Workshops.
University of Southern California Center for Systems and Software Engineering 7/15/20151 The Effort Distribution Pattern Analysis of Three Types of Software.
University of Southern California Center for Software Engineering C S E USC Agile and Plan-Driven Methods Barry Boehm, USC USC-CSE Affiliates’ Workshop.
University of Southern California Center for Systems and Software Engineering © 2009, USC-CSSE 1 An Analysis of Changes in Productivity and COCOMO Cost.
University of Southern California Center for Systems and Software Engineering Improving Affordability via Value-Based Testing 27th International Forum.
University of Southern California Center for Software Engineering C S E USC August 2001©USC-CSE1 CeBASE Experience Base (eBASE) -Shared Vision Barry Boehm,
University of Southern California Center for Software Engineering CSE USC 10/8/00©USC-CSE1 Expediting Technology Transfer via Affiliate Programs and Focused.
09/29/ Barry Boehm, USC-CSSE SUNY-IT Seminar September 29, 2010 Some Future Software Engineering Opportunities and Challenges.
Lecture 2 Risk Management Process 1. Risk management It paves the path for project management. It results in analysis of external & internal situations.
Is There a Silver Bullet for Adding Value to Requirements Selection? Aybüke Aurum School of Information Systems, Technology and Management University of.
1 SAIV/CAIV/SCQAIV LiGuo Huang USC University of Southern California Center for Software Engineering CSE USC.
© USC-CSE 2001 Oct Constructive Quality Model – Orthogonal Defect Classification (COQUALMO-ODC) Model Keun Lee (
University of Southern California Center for Software Engineering C S E USC Using COCOMO for Software Decisions - from COCOMO II Book, Section 2.6 Barry.
10/29/ Barry Boehm, USC-CSSE Fall 2012 Some Future Software Engineering Opportunities and Challenges.
COCOMO CO nstructive CO st Mo del II Copyright © 2007 Patrick McDermott UC Berkeley Extension It’s a Name Game, Don’t Blame Boehm! (rhymes)
University of Southern California Center for Systems and Software Engineering Vu Nguyen, Barry Boehm USC-CSSE ARR, May 1, 2014 COCOMO II Cost Driver Trends.
Barry Boehm, USC CS 510, 577a Lectures Fall 2008
University of Southern California Center for Software Engineering CSE USC 3/26/101 © USC-CSSE Value-Based Software Engineering CS 577b Winsor.
University of Southern California Center for Systems and Software Engineering COCOMO Suite Toolset Ray Madachy, NPS Winsor Brown, USC.
University of Southern California Center for SoftwareEngineering Reliable Software Research and Technology Transition Barry Boehm, USC NASA IT Workshop.
University of Southern California Center for Software Engineering CSE USC SCRover Increment 3 and JPL’s DDP Tool USC-CSE Annual Research Review March 16,
University of Southern California Center for Systems and Software Engineering Reducing Estimation Uncertainty with Continuous Assessment: Tracking the.
University of Southern California Center for Systems and Software Engineering Using Software Project Courses to Integrate Education and Research Barry.
Local Calibration: How Many Data Points are Best? Presented by Barry Boehm on behalf of Vu Nguyen, Thuy Huynh University of Science Vietnam National University.
University of Southern California Center for Systems and Software Engineering July 2008ICM & CP Workshop (c) USC CSSE1 Update to Initial CP Survey Results.
University of Southern California Center for Systems and Software Engineering 1 © USC-CSSE Integrating Case-Based, Analogy-Based, and Parameter-Based Estimation.
Course Overview CSE 8340 Advanced Software Engineering Topics: Software Engineering Economics & Processes Spring 2016 Dr. LiGuo Huang Dept. of Computer.
Building the Business Case. Uncovering the Needs for Data Mining in your company There may be many places within your company where data mining can be.
1 Agile COCOMO II: A Tool for Software Cost Estimating by Analogy Cyrus Fakharzadeh Barry Boehm Gunjan Sharman SCEA 2002 Presentation University of Southern.
Rick Selby Software Products, Northrop Grumman & Adjunct Faculty, University of Southern California Los Angeles, CA Candidate member Main empirical research.
Pareto phenomenon (ABC analysis)
Pareto Charts Summary Process Steps
Pareto Charts Summary Process Steps
Generalized Reuse Model for COSYSMO Workshop Outbrief
Presentation transcript:

University of Southern California Center for Software Engineering C S E USC ISERN 2005 November 15, 2005 Stefan Biffl, Aybuke Aurum, Rick Selby, Dan Port, Barry Boehm Value-Based Empirical Methods (VBEM) Session

University of Southern California Center for Software Engineering C S E USC 11/15/03©USC-CSE2 Summary VBEM’s support better use of scarce resources –Focus on high-value aspects –Some ISESE 2005 results VBEM’s present challenges –Values vary by situation, time –Mix of qualitative and quantitative data –Data often competitively sensitive Speakers provide 10-minute experience summaries –Major opportunity areas, problem areas –Followed by discussion of these

University of Southern California Center for Software Engineering C S E USC 11/15/03©USC-CSE3 Value-Based Testing: Empirical Data and ROI — LiGuo Huang, ISESE 2005 (a) (b)

University of Southern California Center for Software Engineering C S E USC 11/15/03©USC-CSE4 COCOMO II: Added % test time COQUALMO: P q (L) Value-Based: S q (L): Pareto Value-Neutral: S q (L): Linear Market Risk: RE m Sweet Spot Value/Risk-Driven Testing: 40% Gain — LiGuo Huang, ISESE 2005

University of Southern California Center for Software Engineering C S E USC 11/15/03©USC-CSE5 By NumberP-value% Gr A higherBy ImpactP-value% Gr A higher Average of Concerns Average Impact of Concerns Average of Problems Average Impact of Problems Average of Concerns per hour Average Cost Effectiveness of Concerns Average of Problems per hour Average Cost Effectiveness of Problems Group A: 15 IV&V personnel using VBR procedures and checklists Group B 13 IV&V personnel using previous value-neutral checklists – Significantly higher numbers of trivial typo and grammar faults Experiment Value-Based Reading (VBR) Experiment — Keun Lee, ISESE 2005