Abstract

Cloud computing provides a new paradigm to offer flexible IT infrastructures. In IaaS clouds, tenants deploy software-defined networking (SDN) policies to simplify network management and customize network behaviors. However, programming SDN networks is error-prone no matter using low-level APIs or high-level programming languages. Specifically, SDN policies may contain misconfigurations that do not break the pre-defined network invariants (e.g., black holes), but either degrade the deployment efficiency or mistakenly translate tenants intents. Prior studies for checking either traditional access control policies or network-wide invariants, are thus fail to detect these misconfigurations. To address this gap, this paper presents PMM, a misconfiguration checking tool for compositional SDN that works at the data plane of cloud networks. We first propose a new data structure, minimal interval set, to represent the match patterns of rulesets. This representation serves the basis for composition algebra construction and misconfiguration checking. We then propose the principles, algorithms and also optimisations for fast and accurate checking. We finally implement PMM in Covisor. Experiments with both real-world rulesets and synthetic rulesets show that PMM can detect misconfigurations of SDN policies in cloud networks within hundreds of milliseconds.

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