Build a Physics-Informed Neural Operator (PINO) to Accelerate a Python Fluid Dynamics Solver
Budget: $150.0
FIXED /
⭐ 4.69 (71)
Hong Kong
physics, python, mathematics, machine-learning, mathematical-models
I am looking for an experienced Machine Learning Engineer or Researcher specializing in Scientific Machine Learning (SciML) to help accelerate a 1D fluid dynamics propagation solver.
I already have a fully functioning, high-fidelity numerical solver written in Python that is validated against reference data. The goal of this project is to build an AI-native hybrid pipeline that uses a Physics-Informed Neural Operator (PINO) or Fourier Neural Operator (FNO) to speed up the simulation.
Deliverables:
#Develop the AI Operator: Build a 1D neural operator in PyTorch that can instantly predict the evolution of fluid/pressure waveforms across different conditions.
#Embed Physics Constraints: Incorporate the governing differential equations (Burgers Equation physics) into the model's loss function so the AI outputs physically realistic results.
#Create a Hybrid Pipeline: Integrate the AI model with my existing Python solver, creating a smart trigger that switches between the fast AI prediction and the high-fidelity numerical solver when sharp gradients or shockwaves form.
Requirements:
1. Strong experience with PyTorch or JAX.
2. Proven experience building physics-informed machine learning models (PINO, FNO, or DeepONet).
3. Familiarity with training models on physical/synthetic data generated from numerical code.
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