LoRe: A Programming Model for Verifiably Safe Local-First Software
April 14, 2023 Β· Declared Dead Β· π Dagstuhl Artifacts Ser.
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Authors
Julian Haas, Ragnar Mogk, Elena Yanakieva, Annette Bieniusa, Mira Mezini
arXiv ID
2304.07133
Category
cs.PL: Programming Languages
Citations
6
Venue
Dagstuhl Artifacts Ser.
Last Checked
3 months ago
Abstract
Local-first software manages and processes private data locally while still enabling collaboration between multiple parties connected via partially unreliable networks. Such software typically involves interactions with users and the execution environment (the outside world). The unpredictability of such interactions paired with their decentralized nature make reasoning about the correctness of local-first software a challenging endeavor. Yet, existing solutions to develop local-first software do not provide support for automated safety guarantees and instead expect developers to reason about concurrent interactions in an environment with unreliable network conditions. We propose LoRe, a programming model and compiler that automatically verifies developer-supplied safety properties for local-first applications. LoRe combines the declarative data flow of reactive programming with static analysis and verification techniques to precisely determine concurrent interactions that violate safety invariants and to selectively employ strong consistency through coordination where required. We propose a formalized proof principle and demonstrate how to automate the process in a prototype implementation that outputs verified executable code. Our evaluation shows that LoRe simplifies the development of safe local-first software when compared to state-of-the-art approaches and that verification times are acceptable.
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