Dependency analysis via network measurements
نویسندگان
چکیده
ABSTRACT Large scale computer networks consist of a vast number of interoperating services. Often, the interchange between those services is not documented leading to a variety of issues. Network dependency analysis aims to automate service dependency discovery. In this work several different approaches to network dependency analysis, ranging from active to passive approaches, will be introduced and evaluated.
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