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🧪  FairCFD explores new ways to make fluid simulations faster, lighter, and more responsible — without sacrificing accuracy.

Our approach combines:

  • Physics-based methods: stability analysis, reduced models, adjoint solvers.
  • Data-driven tools: machine learning, sparse modeling, Bayesian inference.
  • Hybrid strategies: mixing physics and data for robust, low-cost simulation.
  • Efficient optimization: solving complex problems using smart gradients and AI.

A unique part of the project:
👉 We work together to define what sustainable simulation really means — not just in numbers, but in practice.

You’ll contribute to cutting-edge research while shaping how science is done in the digital and ecological age.