2023 NSDI NSDI 2023

Test Coverage for Network Configurations

Abstract

We develop NetCov, the first tool to reveal which network configuration lines are tested by a suite of network tests. It helps network engineers improve test suites and thus increase network reliability. A key challenge in developing a tool like NetCov is that many network tests test the data plane instead of testing the configurations (control plane) directly. We must be able to efficiently infer which configuration elements contribute to tested data plane elements, even when such contributions are non-local (on remote devices) or non-deterministic. NetCov uses an information flow graph based model that precisely captures various forms of contributions and a scalable method to infer contributions. Using NetCov, we show that an existing test suite for Internet2, a nation-wide backbone network in the USA, covers only 26% of the configuration lines. The feedback from NetCov makes it easy to define new tests that improve coverage. For Internet2, adding just three such tests covers an additional 17% of the lines.

🧭 Keyword Pioneer — network configuration
🐝 Cross-Pollinator — Artificial Intelligence, Deep Learning, Machine Learning, Mathematics & Optimization
🌉 Interdisciplinary Bridge — Computer Science and Machine Learning