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Proceedings of the Sixteenth Workshop on Logical Frameworks and Meta-Languages: Theory and Practice

2021-07-14 05:19:09
Elaine Pimentel (UFRN), Enrico Tassi (Inria)

Abstract

Logical frameworks and meta-languages form a common substrate for representing, implementing and reasoning about a wide variety of deductive systems of interest in logic and computer science. Their design, implementation and their use in reasoning tasks, ranging from the correctness of software to the properties of formal systems, have been the focus of considerable research over the last two decades. This workshop brings together designers, implementors and practitioners to discuss various aspects impinging on the structure and utility of logical frameworks, including the treatment of variable binding, inductive and co-inductive reasoning techniques and the expressiveness and lucidity of the reasoning process.

Abstract (translated)

URL

https://arxiv.org/abs/2107.07376

PDF

https://arxiv.org/pdf/2107.07376.pdf


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