首页> 外国专利> Automata learning algorithms and processes for providing more complete systems requirements specification by scenario generation, CSP-based syntax-oriented model construction, and R2D2C system requirements transformation

Automata learning algorithms and processes for providing more complete systems requirements specification by scenario generation, CSP-based syntax-oriented model construction, and R2D2C system requirements transformation

机译:通过场景生成,基于CSP的面向语法的模型构建以及R2D2C系统需求转换来提供更完整的系统需求规范的自动机学习算法和过程

摘要

Systems, methods and apparatus are provided through which in some embodiments, automata learning algorithms and techniques are implemented to generate a more complete set of scenarios for requirements based programming. More specifically, a CSP-based, syntax-oriented model construction, which requires the support of a theorem prover, is complemented by model extrapolation, via automata learning. This may support the systematic completion of the requirements, the nature of the requirement being partial, which provides focus on the most prominent scenarios. This may generalize requirement skeletons by extrapolation and may indicate by way of automatically generated traces where the requirement specification is too loose and additional information is required.
机译:提供系统,方法和装置,通过该系统,方法和装置在一些实施例中,实现自动机学习算法和技术以生成用于基于需求的编程的更完整的场景集。更具体地说,基于CSP的,面向语法的模型构建(需要定理证明者的支持)通过自动机学习通过模型外推得到补充。这可以支持系统地完成需求,需求的性质是局部的,这可以集中于最突出的场景。这可以通过外推来概括需求框架,并且可以通过自动生成的跟踪来指示需求规范过于宽松并且需要其他信息的地方。

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