About me
After having graduated from University of Montpellier (Master degree in computer science, specialty: "Data, Knowledge & Natural Language") in 2017, I worked for Cirad during 12 months as a research engineer. After having applied what I've learnt during the Master courses to develop a semantic tool for the company, I realised that I need to enrich my knowledge and improve my working/thinking skills, even though my developed tool seemed to pleasure firm agents.
To this end, I chose to continue with a thesis project for obtaining a Ph.D, which is, for me, a difficult, challenging but worthing task. Currenty at the last year of my thesis in IMT Mines Alès, I focus on recommendation systems, a typical application of machine learning, which is widely applied in the real-world setting to alleviate the information overload for end-users. The particular aim of my thesis project is to improve recommendation performances from a data-to-knowledge perspective. The "data" perspective consists in improving the recommendation accuracy (i.e. rating prediction and ranking) by leveraging statistic models while the "knowledge" perspective takes a step more further, aiming at improving the quality of recommendations, in terms of more user-centered aspects such as the recommendation diversity and explicability, by leveraging knowledge engineering notions such as the semantic web and knowlege graphs.
Training-wise, I have a comprehensive background in machine learning and in knowledge engineering. My thesis project makes me improve technique skills (e.g. more familiar with the main machine learning frameworks, the containerization notion etc.). In addition, which is important for me, my Ph.D project also allows me to improve common working skills such as presentation, writing, step-back thinking, team working etc.
When not working, I spend my time making delicious food, travaling, thinking, sharing and discussing life experiences with friends (notably my wife 😉 ), self-taught and self-learning of new technologies.
Domains of interests
- Machine learning (supervised/unsupervised learning)
- Recommender systems (collaborative filtering, content-based filtering, recommendation diversity and explanation)
- Knowledge engineering (semantic web, knowledge graph, ontology, reasoning)
- Machine learning in graphs (node classification, link prediction, graph embedding, etc.)
- Information retrieval (query-answering)
- Data visualisation