Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6923868 | Computers in Industry | 2018 | 10 Pages |
Abstract
In this work, we present our implementation of an Early Risk Detection and Management System (ERDMS) for the cloud using data analytics, association rule learning and machine learning techniques. The ERDMS continually monitors various system parameters by processing the sequence of operations performed on the system to detect potential risk(s) and recommend the probable solution(s). Initially, it parses the log bundles to learn rules, known as “association rules”, for risk detection using apriori algorithm. Each of these association rules consists of premise â sequence of operations and inference â potential risk(s). While constantly monitoring a system, if ERDMS detects a pattern it has learnt, it classifies the pattern into a set of potential risk(s) using decision tree algorithm. It computes a probability for each potential risk to gauge the impact; it also generates a summary of its learning. Once the potential risk(s) is detected, it searches the relevant sites to recommend a set of probable solution(s). Furthermore, it offers “auto-resolution”, where the recommended steps are automatically executed. Consequently, upon appropriate action, the system might not encounter the issue and will continue to work seamlessly.
Related Topics
Physical Sciences and Engineering
Computer Science
Computer Science Applications
Authors
N. Nagashree, Ravi Tejasvi, K.C. Swathi,