This repository contains the artifacts of our paper, entitled "Learning Failure-Inducing Models for Testing Software-Defined Networks".
Software-defined networks (SDN) enable flexible and effective communication systems that are managed by centralized software controllers. However, such a controller can undermine the underlying communication network of an SDN-based system and thus must be carefully tested. When an SDN-based system fails, in order to address such a failure, engineers need to precisely understand the conditions under which it occurs. In this article, we introduce a machine learning-guided fuzzing method, named FuzzSDN, aiming at both (1) generating effective test data leading to failures in SDN-based systems and (2) learning accurate failure-inducing models that characterize conditions under which such system fails. To our knowledge, no existing work simultaneously addresses these two objectives for SDNs. We evaluate FuzzSDN by applying it to systems controlled by two open-source SDN controllers. Further, we compare FuzzSDN with two state-of-the-art methods for fuzzing SDNs and two baselines for learning failure-inducing models. Our results show that (1) compared to the state-of-the-art methods, FuzzSDN generates at least 12 times more failures, within the same time budget, with a controller that is fairly robust to fuzzing and (2) our failure-inducing models have, on average, a precision of 98% and a recall of 86%, significantly outperforming the baselines.
OS: Ubuntu 16.04+ | CPU: 4 Cores | Memory: 10GB | Disk Space: 50GB
Mininet: http://mininet.org/ | Version: 2.3.0 | Installation: http://mininet.org/download/
ONOS: https://onosproject.org/ | Version: 2.6.0 | Installation: https://wiki.onosproject.org/display/ONOS/Getting+the+ONOS+core+source+code+using+git+and+Gerrit
RYU: https://ryu-sdn.org | Version: 4.34 | Installation: https://ryu-sdn.org
Step 0: Exctract fuzzsdn.zip to any PATH
Step 1: Move to PATH
Step 2: Move to "./bin" and run "./pre-install.sh"
Step 3: Move to PATH and run "pip install --editable ."
Step 4: Run the command "screen"
Step 5: Run the command "fuzzsdn experiment run".
Step 6: Detach the screen using the keyboard shortcut "Ctrl+A+D"
Step 7: Once the experiment is completed, run "fuzzsdn experiment report " to obtain the results