Title :
Inference graphs: a computational structure supporting generation of customizable and correct analysis components
Author :
Dillon, Laura K. ; Stirewalt, R. E Kurt
Author_Institution :
Dept. of Comput. Sci. & Eng., Michigan State Univ., USA
Abstract :
Amalia is a generator framework for constructing analyzers for operationally defined formal notations. These generated analyzers are components that are designed for customization and integration into a larger environment. The customizability, and efficiency of Amalia analyzers owe to a computational structure called an inference graph. This paper describes this structure, how inference graphs enable Amalia to generate analyzers for operational specifications, and how we build in assurance. On another level, this paper illustrates how to balance the need for assurance, which typically implies a formal proof obligation, against other design concerns, whose solutions leverage design techniques that are not (yet) accompanied by mature proof methods. We require Amalia-generated designs to be transparent with respect to the formal semantic models upon which they are based. Inference graphs are complex structures that incorporate many design optimizations. While not formally verifiable, their fidelity with respect to a formal operational semantics can be discharged by inspection.
Keywords :
graphs; program diagnostics; program verification; Amalia analyzers; assurance; computational structure; correctness; formal proof obligation; formal semantic models; inference graph; mature proof methods; operational specifications; operationally defined formal notations; Assembly; Computer Society; Computer science; Design engineering; Design methodology; Design optimization; Inspection; Object oriented modeling; Software design; Software engineering;
Journal_Title :
Software Engineering, IEEE Transactions on
DOI :
10.1109/TSE.2003.1178052