Mandis Beigi, Murthy Devarakonda, et al.
POLICY 2005
In this work, we address problem determination in virtualized clouds. We show that high dynamism, resource sharing, frequent reconfiguration, high propensity to faults and automated management introduce significant new challenges towards fault diagnosis in clouds. Towards this, we propose CloudPD, a fault management framework for clouds. CloudPD leverages (i) a canonical representation of the operating environment to quantify the impact of sharing; (ii) an online learning process to tackle dynamism; (iii) a correlation-based performance models for higher detection accuracy; and (iv) an integrated end-to-end feedback loop to synergize with a cloud management ecosystem. Using a prototype implementation with cloud representative batch and transactional workloads like Hadoop, Olio and RUBiS, it is shown that CloudPD detects and diagnoses faults with low false positives (< 16%) and high accuracy of 88%, 83% and 83%, respectively. In an enterprise trace-based case study, CloudPD diagnosed anomalies within 30 seconds and with an accuracy of 77%, demonstrating its effectiveness in real-life operations. © 2013 IEEE.
Mandis Beigi, Murthy Devarakonda, et al.
POLICY 2005
Jin Heo, Praveen Jayachandran, et al.
IEEE TPDS
Balaji Viswanathan, Akshat Verma, et al.
Middleware 2012
Sourav Dutta, Sankalp Gera, et al.
CLOUD 2012