Mon 19 Jun 2023 16:20 - 16:40 at Royal - PLDI: Machine Learning Chair(s): Yaniv David

We present a new abstract interpretation framework for the precise over-approximation of numerical fixpoint iterators.
Our key observation is that unlike in standard abstract interpretation (AI), typically used to over-approximate all reachable program states, in this setting, one only needs to abstract the concrete fixpoints, i.e., the final program states. Our framework targets numerical fixpoint iterators with convergence and uniqueness guarantees in the concrete and is based on two major technical contributions: (i) theoretical insights which allow us to compute sound and precise fixpoint abstractions without using joins, and (ii) a new abstract domain, CH-Zonotope, which admits efficient propagation and inclusion checks while retaining high precision.

We implement our framework in a tool called CRAFT and evaluate it on a novel fixpoint-based neural network architecture (monDEQ) that is particularly challenging to verify. Our extensive evaluation demonstrates that CRAFT exceeds the state-of-the-art performance in terms of speed (two orders of magnitude), scalability (one order of magnitude), and precision (25% higher certified accuracies).

Mon 19 Jun

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16:00 - 18:00
PLDI: Machine LearningPLDI Research Papers at Royal
Chair(s): Yaniv David Columbia University

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16:00
20m
Talk
Scallop: A Language for Neurosymbolic Programming
PLDI Research Papers
Ziyang Li UPenn, Jiani Huang UPenn, Mayur Naik University of Pennsylvania
DOI
16:20
20m
Talk
Abstract Interpretation of Fixpoint Iterators with Applications to Neural Networks
PLDI Research Papers
Mark Niklas Müller ETH Zurich, Marc Fischer ETH Zurich, Robin Staab ETH Zurich, Martin Vechev ETH Zurich
DOI
16:40
20m
Talk
Register Tiling for Unstructured Sparsity in Neural Network Inference
PLDI Research Papers
Lucas Wilkinson University of Toronto, Kazem Cheshmi McMaster University, Maryam Mehri Dehnavi University of Toronto
DOI
17:00
20m
Talk
Architecture-Preserving Provable Repair of Deep Neural Networks
PLDI Research Papers
Zhe Tao University of California, Davis, Stephanie Nawas University of California, Davis, Jacqueline Mitchell University of California, Davis, Aditya V. Thakur University of California at Davis
DOI Pre-print
17:20
20m
Talk
Incremental Verification of Neural Networks
PLDI Research Papers
Shubham Ugare University of Illinois at Urbana-Champaign, Debangshu Banerjee UIUC, Sasa Misailovic University of Illinois at Urbana-Champaign, Gagandeep Singh University of Illinois at Urbana-Champaign
DOI
17:40
20m
Talk
Prompting Is Programming: A Query Language for Large Language Models
PLDI Research Papers
Luca Beurer-Kellner ETH Zurich, Marc Fischer ETH Zurich, Martin Vechev ETH Zurich
DOI