FRAPpuccino: Fault-detection through Runtime Analysis of Provenance

11/30/2017
by   Xueyuan Han, et al.
0

We present FRAPpuccino (or FRAP), a provenance-based fault detection mechanism for Platform as a Service (PaaS) users, who run many instances of an application on a large cluster of machines. FRAP models, records, and analyzes the behavior of an application and its impact on the system as a directed acyclic provenance graph. It assumes that most instances behave normally and uses their behavior to construct a model of legitimate behavior. Given a model of legitimate behavior, FRAP uses a dynamic sliding window algorithm to compare a new instance's execution to that of the model. Any instance that does not conform to the model is identified as an anomaly. We present the FRAP prototype and experimental results showing that it can accurately detect application anomalies.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/01/2019

Automatic Real-time Anomaly Detection for Autonomous Aerial Vehicles

The recent increase in the use of aerial vehicles raises concerns about ...
research
09/18/2019

Anomaly Detection As-a-Service

Cloud systems are complex, large, and dynamic systems whose behavior mus...
research
07/07/2023

Dynamic Graph Attention for Anomaly Detection in Heterogeneous Sensor Networks

In the era of digital transformation, systems monitored by the Industria...
research
07/30/2019

Runtime QoS service for application-driven adaptation in network computing

A distributed application executing on a Network of Workstations (NOW) n...
research
11/24/2020

A Generalizable Model for Fault Detection in Offshore Wind Turbines Based on Deep Learning

This paper presents a new deep learning-based model for fault detection ...
research
05/16/2018

Verifying Programs Under Custom Application-Specific Execution Models

Researchers have recently designed a number of application-specific faul...

Please sign up or login with your details

Forgot password? Click here to reset