Description |
1 online resource (xxix, 378 pages) : illustrations |
|
text txt rdacontent |
|
computer c rdamedia |
|
online resource cr rdacarrier |
Note |
Online resource; title from PDF title page (ScienceDirect, viewed Aug. 1, 2016). |
Contents |
Front Cover; Perspectives on Data Science for Software Engineering; Copyright; Contents; Contributors; Acknowledgments; Introduction; Perspectives on data science for software engineering; Why This Book?; About This Book; The Future; References; Software analytics and its application in practice; Six Perspectives of Software Analytics; Experiences in Putting Software Analytics into Practice; References; Seven principles of inductive software engineering: What we do is different; Different and Important; Principle #1: Humans Before Algorithms; Principle #2: Plan for Scale. |
|
Principle #3: Get Early FeedbackPrinciple #4: Be Open Minded; Principle #5: Be smart with your learning; Principle #6: Live With the Data You Have; Principle #7: Develop a Broad Skill Set That Uses a Big Toolkit; References; The need for data analysis patterns (in software engineering); The Remedy Metaphor; Software Engineering Data; Needs of Data Analysis Patterns; Building Remedies for Data Analysis in Software Engineering Research; References; From software data to software theory: The path less traveled; Pathways of Software Repository Research; From Observation, to Theory, to Practice. |
|
Dynamic Artifacts Are Here to StayAcknowledgments; References; Mobile app store analytics; Introduction; Understanding End Users; Conclusion; References; The naturalness of software*; Introduction; Transforming Software Practice; Porting and Translation; The ``Natural Linguistics of Code; Analysis and Tools; Assistive Technologies; Conclusion; References; Advances in release readiness; Predictive Test Metrics; Universal Release Criteria Model; Best Estimation Technique; Resource/Schedule/Content Model; Using Models in Release Management. |
|
Research to Implementation: A Difficult (but Rewarding) JourneyHow to tame your online services; Background; Service Analysis Studio; Success Story; References; Measuring individual productivity; No Single and Simple Best Metric for Success/Productivity; Measure the Process, Not Just the Outcome; Allow for Measures to Evolve; Goodharts Law and the Effect of Measuring; How to Measure Individual Productivity?; References; Stack traces reveal attack surfaces; Another Use of Stack Traces?; Attack Surface Approximation; References; Visual analytics for software engineering data; References. |
Bibliography |
Includes bibliographical references. |
Summary |
Presenting the best practices of seasoned data miners in software engineering, this book offers unique insights into the wisdom of the community{OCLCbr#92}s leaders gathered to share hard-won lessons from the trenches. -- Edited summary from book. |
Subject |
Software engineering.
|
|
Génie logiciel.
|
|
COMPUTERS / General.
|
|
Software engineering
|
Added Author |
Menzies, Tim, editor.
|
|
Williams, Laurie, 1962- editor.
|
|
Zimmermann, Thomas, editor.
|
Other Form: |
Print version: 0128042060 9780128042069 (OCoLC)926742865 |
ISBN |
9780128042618 (electronic bk.) |
|
0128042613 (electronic bk.) |
|
0128042060 |
|
9780128042069 |
Standard No. |
CHNEW 000885537 |
|
CHVBK 403947987 |
|
CHBIS 010796357 |
|
DEBBG BV043894987 |
|
DEBBG BV043969889 |
|
DEBSZ 482472367 |
|
DEBSZ 485804182 |
|
GBVCP 882758535 |
|
GBVCP 879398264 |
|
AU@ 000058870987 |
|
CHNEW 001013690 |
|
AU@ 000065061944 |
|
AU@ 000066135444 |
|
AU@ 000067091742 |
|