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Graded Modal Dependent Type Theory

Benjamin Moon, Harley Eades, Dominic Orchard

2021Lecture notes in computer science24 citationsDOIOpen Access PDF

Abstract

Abstract Graded type theories are an emerging paradigm for augmenting the reasoning power of types with parameterizable, fine-grained analyses of program properties. There have been many such theories in recent years which equip a type theory with quantitative dataflow tracking, usually via a semiring-like structure which provides analysis on variables (often called ‘quantitative’ or ‘coeffect’ theories). We present Graded Modal Dependent Type Theory ( Grtt for short), which equips a dependent type theory with a general, parameterizable analysis of the flow of data, both in and between computational terms and types. In this theory, it is possible to study, restrict, and reason about data use in programs and types, enabling, for example, parametric quantifiers and linearity to be captured in a dependent setting. We propose Grtt , study its metatheory, and explore various case studies of its use in reasoning about programs and studying other type theories. We have implemented the theory and highlight the interesting details, including showing an application of grading to optimising the type checking procedure itself.

Topics & Concepts

Computer scienceType theoryType inferenceSemiringType (biology)Data typeMetatheoryModalDataflowTheoretical computer scienceInferenceAlgorithmArtificial intelligenceProgramming languageMathematicsDiscrete mathematicsPolymer chemistryEcologyChemistryBiologyLogic, programming, and type systemsSoftware Engineering ResearchParallel Computing and Optimization Techniques