AurΓ©lie Cools | Deep Neural Networks | Best Researcher Award
Ms. AurΓ©lie Cools, University of Mons, Belgium.
Publication Profile
Orcid
Education and Experience
Education 
- Ph.D. in Engineering Sciences
- Institution: University of Mons (UMons), Polytechnic Faculty
- Thesis Topic: CBIR search engine with deep neural networks and dimensionality reduction methods
- Duration: 2021 β Present
- Masterβs in Civil Engineering (Summa Cum Laude)
- Institution: UMons, Polytechnic Faculty
- Specialization: Software Engineering and Business Intelligence
- Duration: 2018 β 2021
- Masterβs in Management Engineering (Magna Cum Laude)
- Institution: UCL Mons
- Specialization: Business Analytics β Logistics and Transportation
- Duration: 2015 β 2017
- Bachelorβs in Management Engineering (Cum Laude)
- Institution: UCL Mons
- Duration: 2012 β 2015
Experience 
- Teaching Assistant & Ph.D. Student
- Institution: UMons
- Duration: September 2021 β Present
- Credit Analyst
- Institution: CPH Bank, La Louvière
- Duration: July 2017 β August 2021
- Student Worker
- Institution: Colruyt Group, Mons
- Duration: March 2013 β December 2016
Suitability For The Award
Professional Development
AurΓ©lie excels in the realms of engineering and management, leveraging cutting-edge techniques like deep neural networks and dimensionality reduction. Her research bridges technical and analytical fields, emphasizing CBIR technologies for efficient image retrieval. With years of experience as a teaching assistant, she fosters innovation and critical thinking among students. AurΓ©lieβs blend of programming skills in Python, SQL, and PyTorch, coupled with proficiency in tools like MongoDB and Excel, enhances her adaptability in diverse challenges. A polyglot and skilled communicator, she thrives in team management, problem-solving, and delivering impactful solutions.
Research Focus
AurΓ©lieβs research focuses on developing advanced Content-Based Image Retrieval (CBIR) systems, leveraging deep neural networks and cutting-edge dimensionality reduction techniques to enhance image search and analysis efficiency. Her interdisciplinary approach combines software engineering, artificial intelligence, and data science for innovative solutions. With a keen interest in the practical applications of CBIR, such as medical imaging or multimedia management, AurΓ©lie contributes to expanding the potential of machine learning in real-world scenarios. Her expertise lies at the intersection of engineering precision and computational intelligence, making her a significant contributor to AI-driven image processing.