Title :
Abnormality analysis of streamed log data
Author :
Harutyunyan, Ashot N. ; Poghosyan, Arnak V. ; Grigoryan, Naira M. ; Marvasti, Mazda A.
Author_Institution :
VMware, Palo Alto, CA, USA
Abstract :
We examine the determination of abnormality of streamed data using the statistical structure of the meta-data associated with it. The vital need for such a subject within a heterogeneous log based environment in real-time comes from the fact that most cloud based applications will use text-based logging as a means of reporting application behavior. The sheer volume of such logs makes retrospective analysis infeasible due to large processing and storage requirements. Our approach is based on conversion of the original data stream into meta-data (graph) and revealing the dominating (normal) statistical patterns within it. Real-time analysis of the stream compared with the meta-data model determines the degree of anomaly of the current data. The resulting graph also reveals the fundamental structure (“behavioral footprint”) of the data beyond the sources (physical or virtual devices) and processes.
Keywords :
Big Data; data analysis; statistical analysis; time series; abnormality analysis; abnormality determination; application behavior reporting; behavioral footprint; cloud based applications; data stream conversion; heterogeneous log based environment; meta data; processing requirements; retrospective analysis; statistical structure; storage requirements; streamed log data; text-based logging; Algorithm design and analysis; Big data; Correlation; Data mining; Probabilistic logic; Real-time systems; Time series analysis; Cloud and virtualization management; anomaly and change detection; big data; events stream; log analysis; normalcy structure;
Conference_Titel :
Network Operations and Management Symposium (NOMS), 2014 IEEE
Conference_Location :
Krakow
DOI :
10.1109/NOMS.2014.6838292