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L'ÉTS vous donne rendez-vous à sa journée portes ouvertes qui aura lieu sur son campus à l'automne et à l'hiver : Samedi 18 novembre 2023 Samedi 17 février 2024 Le dépôt de votre demande d'admission à un programme de baccalauréat ou au cheminement universitaire en technologie sera gratuit si vous étudiez ou détenez un diplôme collégial d'un établissement québécois.

Machine Learning Based Anomaly Detection for DDoS Protection

Targeted study program
Masters with project
Masters with thesis
Doctorate
Postdoctoral studies
Research domains
Intelligent and Autonomous Systems
Software Systems, Multimedia and Cybersecurity
Financing
24 000 $ CAD to 30 000  $ CAD during 1 year
Other informations

Starting : As soon as possible (ASAP)

Partner involved : eQualitie (https://equalit.ie)

The project's core focus is on developing innovative anomaly detection algorithms and machine learning models specifically tailored for DDoS (Distributed Denial of Service) protection.
Key Responsibilities:
· Engage collaboratively to conceptualize, design, and implement state-of-the-art machine learning models aimed at detecting anomalies in web requests.
· Utilize and analyze a benchmark dataset comprising of website visitor sessions,
along with creating additional attack simulations to enhance model robustness.
· Develop, maintain, and refine Python scripts for various tasks including data
preprocessing, feature generation, model training, and algorithm optimization.
· Perform thorough performance evaluations of the developed models and
algorithms, ensuring both accuracy and efficiency are upheld.
· Document the project's progress and findings diligently, providing insightful reports
and research outcomes.
Machine Learning Models to be Utilized: Isolation Forest, Decision Trees, Support Vector Machines, Hidden Markov Models, Feed-Forward Neural Networks, Long Short-Term Memory Networks (LSTMs), Gated Recurrent Units (GRUs)

Required knowledge

- Current enrollment or recent graduation from a program in Computer Science,
Engineering, Data Science, or a related field.
· Strong proficiency in Python programming, with hands-on experience in libraries
like Scikit-Learn, TensorFlow, Keras, or PyTorch.
· A foundational understanding of machine learning concepts and algorithms.
· Familiarity with network security and DDoS attacks will be considered a valuable
asset.