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Vineeth Kashyap

Vineeth Kashyap contributes to research discovery and scholarly infrastructure.

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Published work

2 published item(s)

preprint2026arXiv

Combining Mechanical and Agentic Specification Inference for Move

In this paper, we describe early work on a specification inference tool for the Move Prover that combines a weakest-precondition (WP) analysis over Move bytecode with an agentic coding CLI such as Claude Code. Specification inference reduces the boilerplate of writing specifications in Move: in order to verify a high-level property such as a global state invariant, pre- and post-conditions for the supporting functions typically have to be written by hand, which is tedious. In our setting, a Model Context Protocol (MCP) service exposes the WP analysis and the prover itself to the coding agent. The WP analysis provides a sound, mechanical baseline for inference; the AI is used precisely where WP is weakest -- for loop invariants and high-level idiomatic specifications such as monotonicity, conservation, and structural invariants. The Move Prover serves as the oracle that decides whether the generated specs are valid, and the agent is equipped to generate proof hints and to refine the inferred specification until verification succeeds. The tool has been applied to a corpus of canonical Move code, including code that uses higher-order functions, dynamic dispatch, global state, references, and various forms of loops.

preprint2020arXiv

Out of Sight, Out of Place: Detecting and Assessing Swapped Arguments

Programmers often add meaningful information about program semantics when naming program entities such as variables, functions, and macros. However, static analysis tools typically discount this information when they look for bugs in a program. In this work, we describe the design and implementation of a static analysis checker called SwapD, which uses the natural language information in programs to warn about mistakenly-swapped arguments at call sites. SwapD combines two independent detection strategies to improve the effectiveness of the overall checker. We present the results of a comprehensive evaluation of SwapD over a large corpus of C and C++ programs totaling 417 million lines of code. In this evaluation, SwapD found 154 manually-vetted real-world cases of mistakenly-swapped arguments, suggesting that such errors, while not pervasive in released code, are a real problem and a worthwhile target for static analysis.