[SLE] Neural Language Models and Few Shot Learning for Systematic Requirements Processing in MDSE
Description:
Explore the application of neural language models and few-shot learning for systematic requirements processing in Model-Driven Software Engineering (MDSE). This 18-minute conference talk from ACM SIGPLAN addresses the challenges of handling increasing numbers of requirements in systems engineering, particularly in the automotive domain. Learn how domain-specific language constructs can help avoid ambiguities and increase formality in requirements. Discover the main contribution of adopting and evaluating few-shot learning with large pretrained language models for automated translation of informal requirements to structured languages, such as a requirement Domain-Specific Language (DSL). Gain insights into overcoming the challenges of translating masses of requirements and training requirements engineers when introducing formal requirement notations in existing projects.
Neural Language Models and Few-Shot Learning for Systematic Requirements Processing in Model-Driven Software Engineering