For Solenne, a key obstacle lies in the misconceptions surrounding algorithmic bias. On one side, many assume it is solely the responsibility of those building the algorithms, engineers, mathematicians, or computer scientists. Yet, as she emphasized, fairness has ethical implications that must be debated by society as a whole, especially by those most impacted by AI-driven decisions.
On the other side, some argue that fairness is purely an ethical question and offers little room for mathematical contribution. This too is misguided. Technical challenges in defining and operationalizing fairness remain open, and new methods are still needed.
The reality, Solenne explained, is that fairness in AI cannot be neatly divided: it requires ethical reflection and mathematical innovation, working hand in hand.