Picat Through the Lens of Advent of Code
July 15, 2025 Β· Declared Dead Β· π Electronic Proceedings in Theoretical Computer Science
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Authors
Neng-Fa Zhou, Cristian Grozea, HΓ₯kan Kjellerstrand, OisΓn Mac FhearaΓ
arXiv ID
2507.11731
Category
cs.PL: Programming Languages
Citations
0
Venue
Electronic Proceedings in Theoretical Computer Science
Last Checked
4 months ago
Abstract
Picat is a logic-based, multi-paradigm programming language that integrates features from logic, functional, constraint, and imperative programming paradigms. This paper presents solutions to several problems from the 2024 Advent of Code (AoC). While AoC problems are not designed for any specific programming language, certain problem types, such as reverse engineering and path-finding, are particularly well-suited to Picat due to its built-in constraint solving, pattern matching, backtracking, and dynamic programming with tabling. This paper demonstrates that Picat's features, especially its SAT-based constraint solving and tabling, enable concise, declarative, and highly efficient implementations of problems that would require significantly more effort in imperative languages.
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