We present Pasado, a technique for synthesizing precise static analyzers for Automatic Differentiation. Our technique allows one to automatically construct a static analyzer specialized for the Chain Rule, Product Rule, and Quotient Rule computations for Automatic Differentiation in a way that abstracts all of the nonlinear operations of each respective rule simultaneously. By directly synthesizing an abstract transformer for the composite expressions of these 3 most common rules of AD, we are able to obtain significant precision improvement compared to prior works which compose standard abstract transformers together suboptimally. We prove our synthesized static analyzers sound and additionally demonstrate the generality of our approach by instantiating these AD static analyzers with different nonlinear functions, different abstract domains (both intervals and zonotopes) and both forward-mode and reverse-mode AD.
We evaluate Pasado on multiple case studies, namely soundly computing bounds on a neural network’s
local Lipschitz constant, soundly bounding the sensitivities of financial models, certifying monotonicity, and lastly, bounding sensitivities of the solutions of differential equations from climate science and chemistry for verified ranges of initial conditions and parameters. The local Lipschitz constants computed by Pasado on our largest CNN are up to 2750× more precise compared to the existing state-of-the-art zonotope analysis. The bounds obtained on the sensitivities of the climate, chemical, and financial differential equation solutions are between 1.31 − 2.81× more precise (on average) compared to a state-of-the-art zonotope analysis.
Thu 26 OctDisplayed time zone: Lisbon change
14:00 - 15:30 | |||
14:00 18mTalk | The Bounded Pathwidth of Control-Flow Graphs OOPSLA Giovanna Kobus Conrado Hong Kong University of Science and Technology, Amir Kafshdar Goharshady Hong Kong University of Science and Technology, Chun Kit Lam Hong Kong University of Science and Technology DOI | ||
14:18 18mTalk | How Profilers Can Help Navigate Type Migration OOPSLA Ben Greenman University of Utah, Matthias Felleisen Northeastern University, Christos Dimoulas Northwestern University DOI | ||
14:36 18mTalk | Synthesizing Precise Static Analyzers for Automatic Differentiation OOPSLA Jacob Laurel University of Illinois at Urbana-Champaign, Siyuan Brant Qian University of Illinois at Urbana-Champaign; Zhejiang University, Gagandeep Singh University of Illinois at Urbana-Champaign; VMware Research, Sasa Misailovic University of Illinois at Urbana-Champaign DOI | ||
14:54 18mTalk | A Container-Usage-Pattern-Based Context Debloating Approach for Object-Sensitive Pointer Analysis OOPSLA Dongjie He UNSW, Yujiang Gui UNSW, Wei Li UNSW, Yonggang Tao UNSW, Changwei Zou UNSW, Yulei Sui UNSW, Jingling Xue UNSW DOI Pre-print | ||
15:12 18mTalk | Static Analysis of Memory Models for SMT Encodings OOPSLA Thomas Haas TU Braunschweig, René Maseli TU Braunschweig, Roland Meyer TU Braunschweig, Hernán Ponce de León Huawei DOI |