Suspension Analysis and Selective Continuation-Passing Style for Universal Probabilistic Programming Languages
February 25, 2023 Β· Declared Dead Β· π European Symposium on Programming
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Authors
Daniel LundΓ©n, Lars Hummelgren, Jan Kudlicka, Oscar Eriksson, David Broman
arXiv ID
2302.13051
Category
cs.PL: Programming Languages
Citations
0
Venue
European Symposium on Programming
Last Checked
4 months ago
Abstract
Universal probabilistic programming languages (PPLs) make it relatively easy to encode and automatically solve statistical inference problems. To solve inference problems, PPL implementations often apply Monte Carlo inference algorithms that rely on execution suspension. State-of-the-art solutions enable execution suspension either through (i) continuation-passing style (CPS) transformations or (ii) efficient, but comparatively complex, low-level solutions that are often not available in high-level languages. CPS transformations introduce overhead due to unnecessary closure allocations -- a problem the PPL community has generally overlooked. To reduce overhead, we develop a new efficient selective CPS approach for PPLs. Specifically, we design a novel static suspension analysis technique that determines parts of programs that require suspension, given a particular inference algorithm. The analysis allows selectively CPS transforming the program only where necessary. We formally prove the correctness of the analysis and implement the analysis and transformation in the Miking CorePPL compiler. We evaluate the implementation for a large number of Monte Carlo inference algorithms on real-world models from phylogenetics, epidemiology, and topic modeling. The evaluation results demonstrate significant improvements across all models and inference algorithms.
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