SAS Data Analytic Development: Dimensions of Software Quality (Wiley and SAS Business Series)

SAS Data Analytic Development: Dimensions of Software Quality (Wiley and SAS Business Series)

作者: Troy Martin Hughes
出版社: Wiley
出版在: 2016-09-19
ISBN-13: 9781119240761
ISBN-10: 111924076X
裝訂格式: Hardcover
總頁數: 624 頁





內容描述


Design quality SAS software and evaluate SAS software quality
SAS Data Analytic Development is the developer’s compendium for writing better-performing software and the manager’s guide to building comprehensive software performance requirements. The text introduces and parallels the International Organization for Standardization (ISO) software product quality model, demonstrating 15 performance requirements that represent dimensions of software quality, including: reliability, recoverability, robustness, execution efficiency (i.e., speed), efficiency, scalability, portability, security, automation, maintainability, modularity, readability, testability, stability, and reusability. The text is intended to be read cover-to-cover or used as a reference tool to instruct, inspire, deliver, and evaluate software quality.
A common fault in many software development environments is a focus on functional requirements—the what and how—to the detriment of performance requirements, which specify instead how well software should function (assessed through software execution) or how easily software should be maintained (assessed through code inspection). Without the definition and communication of performance requirements, developers risk either building software that lacks intended quality or wasting time delivering software that exceeds performance objectives—thus, either underperforming or gold-plating, both of which are undesirable. Managers, customers, and other decision makers should also understand the dimensions of software quality both to define performance requirements at project outset as well as to evaluate whether those objectives were met at software completion.
As data analytic software, SAS transforms data into information and ultimately knowledge and data-driven decisions. Not surprisingly, data quality is a central focus and theme of SAS literature; however, code quality is far less commonly described and too often references only the speed or efficiency with which software should execute, omitting other critical dimensions of software quality. SAS® software project definitions and technical requirements often fall victim to this paradox, in which rigorous quality requirements exist for data and data products yet not for the software that undergirds them.
By demonstrating the cost and benefits of software quality inclusion and the risk of software quality exclusion, stakeholders learn to value, prioritize, implement, and evaluate dimensions of software quality within risk management and project management frameworks of the software development life cycle (SDLC). Thus, SAS Data Analytic Development recalibrates business value, placing code quality on par with data quality, and performance requirements on par with functional requirements.




相關書籍

初探深度學習|使用 TensorFlow (TensorFlow for Deep Learning: From Linear Regression to Reinforcement Learning)

作者 Reza Zadeh Bharath Ramsundar 賴屹民

2016-09-19

A Tour of Data Science: Learn R and Python in Parallel

作者 Zhang Nailong

2016-09-19

Mathematical Modeling and Computation in Finance: With Exercises and Python and MATLAB Computer Codes

作者 Cornelis W Oosterlee Lech a Grzelak

2016-09-19