Data Driven Computational Science
We are a research group of applied mathematicians striving to develop a coherent mathematical and algorithmic framework that optimally combines the strengths of complex physics-based models with the (often vast) data sets which are now routinely available in many fields of engineering, science and technology. The main challenges that we face are:
- the high dimensionality of the involved mathematical objects,
- the heterogenous nature and the noise of the available data,
- the underlying optimization problems is often neither convex nor smooth.
Developing a coherent mathematical and algorithmic framework optimally combining the strengths of complex physics-based models with (often vast) data sets.
In many fields of science and engineering, decisions are based on the outcomes of models that estimate/predict the state of a physical system or some of its relevant properties. One can distinguish two main families of such predictive models:
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Recent Publications
Our most recent peer reviewed publications