Hey. I was thinking about areas of the car that feel like they may be more iterative in design than others due in part to the size and scope of airflow coming from them, such as the floor wing. We know that AI is used in the strategy sphere, but I was curious to understand how AI is used in the design of an F1 car and whether, given the complexity of CFD, AI at a point that is able to help push designs further along in their development so that the CFD and tunnel resources are focussed on more developed solutions than at present.
I had a quick google and I discovered that Williams are using technologies provided by Neural Concept which does exactly this.
It seems that their AI technology allows F1 teams to rapidly iterate and optimise vehicle designs by predicting aerodynamic performance. Williams, from what I can see so far in quotes, are cagey about how this is used and will only say that it is helping them find time and aid their development process. I wonder what constraints might sit around the type of CFD "problems" that might be put to this AI model, for instance how much interaction it has with other airflows, how complex are the airflows etc
Does anyone have any knowledge themselves of AI in F1 design, beyond what we know of this company, Neural Concepts? In itself it seems like a potential AI "Newey". Their product is called Neural Concept Shape and strictly speaking it isn't AI, it is Machine Learning which is a component of AI alongside NLP and the LLM. But, beyond that pedantry, it offers the same kind of benefits, it would seem.
https://techcrunch.com/2024/04/14/how-n ... rmula-one/