• DocumentCode
    2261842
  • Title

    Ranking anomalies in data centers

  • Author

    Viswanathan, Krishnamurthy ; Choudur, Lakshminarayan ; Talwar, Vanish ; Wang, Chengwei ; Macdonald, Greg ; Satterfield, Wade

  • fYear
    2012
  • fDate
    16-20 April 2012
  • Firstpage
    79
  • Lastpage
    87
  • Abstract
    Data centers are growing in size and complexity driven by trends such as cloud computing and on-line services. Such large data centers pose several challenges for system management. Key among them is anomaly detection which is required to monitor and analyze metrics across several thousands servers and across multiple layers of abstractions to detect anomalous system behavior. In practice, multiple anomaly detection tools are used to continuously raise alarms across multiple metrics and servers. These alarms include both true positives and false alarms. Administrators and management tools act on these alarms for diagnosis and deeper root cause analysis and take appropriate management actions to mitigate the anomalous behaviors. Given the scale and scope of the system, the administrators and management tools are overwhelmed with the large number of alarms at any given instant, many of which are false alarms. It is therefore necessary to prioritize and rank these alarms, so as to take timely actions that maintain the service level agreements for the data center. Existing techniques for such ranking are ad-hoc and not scalable. We propose ranking windows of monitored metrics based on their probability of occurrence. We explain how these probabilities can be computed based either on the false positive rates for which the accompanying anomaly detectors were designed, or, when available, on the probability models underlying the false positive rates. In the simplest case, the ranking procedure reduces to computing the Z-score of the observed measurements and computing a statistic from a window of Z-scores to use as a basis for ranking. The proposed techniques are reliable, lightweight and easy to deploy in the modern data center. We have validated these techniques on synthetic data containing injected anomalies and on data acquired from production data centers.
  • Keywords
    computer centres; contracts; probability; system monitoring; Z-score computing; ad hoc ranking; anomalous behavior mitigation; anomalous system behavior detection; anomaly detection tools; data centers; false alarms; false positive rates; management tools; occurrence probability; ranking procedure; root cause analysis; service level agreements; system management; Approximation methods; Detectors; Measurement; Monitoring; Servers; Standards; Time series analysis;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Network Operations and Management Symposium (NOMS), 2012 IEEE
  • Conference_Location
    Maui, HI
  • ISSN
    1542-1201
  • Print_ISBN
    978-1-4673-0267-8
  • Electronic_ISBN
    1542-1201
  • Type

    conf

  • DOI
    10.1109/NOMS.2012.6211885
  • Filename
    6211885