In prior work we introduced a pure type assignment system that encompasses a rich set of property types, including intersections, unions, and universally and existentially quantified dependent types. This system was shown sound with respect to a call-by-value operational semantics with effects, yet is inherently undecidable.In this paper we provide a decidable formulation for this system based on bidirectional checking, combining type synthesis and analysis following logical principles. The presence of unions and existential quantification requires the additional ability to visit subterms in evaluation position before the context in which they occur, leading to a tridirectional type system. While soundness with respect to the type assignment system is immediate, completeness requires the novel concept of contextual type annotations, introducing a notion from the study of principal typings into the source program.
This paper explores a new point in the design space of functional programming: functional programming with dependently-typed higher-order data structures described in the logical framework LF. This allows us to program with proofs as higher-order data. We present a decidable bidirectional type system that distinguishes between dependentlytyped data and computations. To support reasoning about open data, our foundation makes contexts explicit. This provides us with a concise characterization of open data, which is crucial to elegantly describe proofs. In addition, we present an operational semantics for this language based on higher-order pattern matching for dependently typed objects. Based on this development, we prove progress and preservation.
We present Stardust, an implementation of a type system for a subset of ML with type refinements, intersection types, and union types, enabling programmers to legibly specify certain classes of program invariants that are verified at compile time. This is the first implementation of unrestricted intersection and union types in a mainstream functional programming setting, as well as the first implementation of a system with both datasort and index refinements. The system-with the assistance of external constraint solvers-supports integer, Boolean and dimensional index refinements; we apply both value refinements (to check red-black tree invariants) and invaluable refinements (to check dimensional consistency). While typechecking with intersection and union types is intrinsically complex, our experience so far suggests that it can be practical in many instances.
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