Anomaly Detection in Event Data

The proposed research project targets anomaly detection of event data. The project has a duration of six months and aims to achieve two objectives: (1) to evaluate the effectiveness of a novel approach for real-world data, and (2) compare it to alternative methods. The intern will use existing research resources, and will apply them to real-world data provided by the partner, Acerta Analytics Solutions, Inc. to evaluate the different methods. The expected benefit to the partner organization, Acerta, is that the outcomes of the project will improve the existing a software platform to detect failures in automotive vehicles, and eventually to predict them before they happen.

Faculty Supervisor:

Mark Crowley

Student:

Mahmoud Salem

Partner:

Acerta Analytics Solutions Inc

Discipline:

Engineering - computer / electrical

Sector:

Information and communications technologies

University:

Program:

Accelerate

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