Authors
Omar Inverso, Hernán Melgratti, Luca Padovani, Catia Trubiani, Emilio Tuosto
Publication date
2020/7/23
Journal
arXiv preprint arXiv:2007.11832
Description
We study a probabilistic variant of binary session types that relate to a class of Finite-State Markov Chains. The probability annotations in session types enable the reasoning on the probability that a session terminates successfully, for some user-definable notion of successful termination. We develop a type system for a simple session calculus featuring probabilistic choices and show that the success probability of well-typed processes agrees with that of the sessions they use. To this aim, the type system needs to track the propagation of probabilistic choices across different sessions.
Total citations
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Scholar articles
O Inverso, H Melgratti, L Padovani, C Trubiani… - arXiv preprint arXiv:2007.11832, 2020