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Alexandra Silva

Alexandra Silva

· Professor of Computer Science

Cornell University · Computer Science

Active 2006–2024

h-index25
Citations2.2k
Papers294100 last 5y
Funding
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About

Alexandra Silva is a professor in the Department of Computer Science at Cornell University. Before joining Cornell, she was a Royal Society Wolfson Fellow and a Professor of Algebra, Semantics, and Computation at the Programming Principles, Logic and Verification Group at University College London. She completed her Ph.D. at the CWI under the supervision of Jan Rutten and Marcello Bonsangue, with her thesis titled 'Kleene coalgebra,' which was defended on December 21, 2010, at Radboud University in Nijmegen and was awarded a cum laude distinction. Silva's academic background includes an undergraduate degree in mathematics and computer science from the University of Minho, which she completed in May 2006, with a final project supervised by J.N. Oliveira and Joost Visser. Her research areas include programming languages, security, software engineering, and the theory of computing.

Research signals

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Research topics

  • Computer Science
  • Artificial Intelligence
  • Theoretical computer science
  • Discrete mathematics
  • Pure mathematics
  • Mathematics
  • Programming language
  • Applied mathematics
  • Algorithm

Selected publications

  • Minimisation in Logical Form

    Outstanding contributions to logic · 2023 · 6 citations

    Senior authorCorresponding
    • Computer Science
    • Mathematics
    • Pure mathematics
  • Outcome Logic: A Unifying Foundation for Correctness and Incorrectness Reasoning

    Proceedings of the ACM on Programming Languages · 2023 · 34 citations

    Senior authorCorresponding
    • Computer Science
    • Computer Science
    • Artificial Intelligence

    Program logics for bug-finding (such as the recently introduced Incorrectness Logic) have framed correctness and incorrectness as dual concepts requiring different logical foundations. In this paper, we argue that a single unified theory can be used for both correctness and incorrectness reasoning. We present Outcome Logic (OL), a novel generalization of Hoare Logic that is both monadic (to capture computational effects) and monoidal (to reason about outcomes and reachability). OL expresses true positive bugs, while retaining correctness reasoning abilities as well. To formalize the applicability of OL to both correctness and incorrectness, we prove that any false OL specification can be disproven in OL itself. We also use our framework to reason about new types of incorrectness in nondeterministic and probabilistic programs. Given these advances, we advocate for OL as a new foundational theory of correctness and incorrectness.

  • Prognosis

    2021 · 28 citations

    Senior authorCorresponding
    • Computer Science
    • Computer Science

    We present Prognosis, a framework offering automated closed-box learning and analysis of models of network protocol implementations. Prognosis can learn models that vary in abstraction level from simple deterministic automata to models containing data operations, such as register updates, and can be used to unlock a variety of analysis techniques -- model checking temporal properties, computing differences between models of two implementations of the same protocol, or improving testing via model-based test generation. Prognosis is modular and easily adaptable to different protocols (e.g. TCP and QUIC) and their implementations. We use Prognosis to learn models of (parts of) three QUIC implementations -- Quiche (Cloudflare), Google QUIC, and Facebook mvfst -- and use these models to analyse the differences between the various implementations. Our analysis provides insights into different design choices and uncovers potential bugs. Concretely, we have found critical bugs in multiple QUIC implementations, which have been acknowledged by the developers.

  • Concurrent Kleene Algebra with Observations: From Hypotheses to Completeness

    Lecture notes in computer science · 2020 · 13 citations

    • Computer Science
    • Computer Science
    • Discrete mathematics
  • Semantics of Probabilistic Programming: A Gentle Introduction

    Cambridge University Press eBooks · 2020 · 10 citations

    • Computer Science
    • Computer Science
    • Artificial Intelligence

    Reasoning about probabilistic programs is hard because it compounds the difficulty of classic program analysis with sometimes subtle questions of probability theory. Having precise mathematical models, or semantics, describing their behaviour is therefore particularly important. In this chapter, we review two probabilistic semantics. First, an operational semantics which models the local, step-by-step, behaviour of programs, then a denotational semantics describing global behaviour as an operator transforming probability distributions over memory states.

Frequent coauthors

  • Filippo Bonchi

    112 shared
  • Marcello Bonsangue

    77 shared
  • Jan Rutten

    66 shared
  • Dexter Kozen

    44 shared
  • Matteo Sammartino

    Royal Holloway University of London

    37 shared
  • Fabio Zanasi

    36 shared
  • Ana Sokolova

    33 shared
  • Tobias Kappé

    31 shared

Labs

Education

  • Ph.D., Algebra, Semantics, and Computation

    University College London

  • Other

    University College London

Awards & honors

  • Royal Society Wolfson Fellow

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