ThorFI: A Novel Approach for Network Fault Injection as a Service
January 19, 2022 Β· Declared Dead Β· π Journal of Network and Computer Applications
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Authors
Domenico Cotroneo, Luigi De Simone, Roberto Natella
arXiv ID
2201.07521
Category
cs.SE: Software Engineering
Citations
15
Venue
Journal of Network and Computer Applications
Last Checked
4 months ago
Abstract
In this work, we present a novel fault injection solution (ThorFI) for virtual networks in cloud computing infrastructures. ThorFI is designed to provide non-intrusive fault injection capabilities for a cloud tenant, and to isolate injections from interfering with other tenants on the infrastructure. We present the solution in the context of the OpenStack cloud management platform, and release this implementation as open-source software. Finally, we present two relevant case studies of ThorFI, respectively in an NFV IMS and of a high-availability cloud application. The case studies show that ThorFI can enhance functional tests with fault injection, as in 4%-34% of the test cases the IMS is unable to handle faults; and that despite redundancy in virtual networks, faults in one virtual network segment can propagate to other segments, and can affect the throughput and response time of the cloud application as a whole, by about 3 times in the worst case.
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