
Contributed to the PaddlePaddle/PaddleCFD repository by developing advanced machine learning workflows for scientific computing, focusing on PDE solvers and CFD data integration. Built and integrated Kolmogorov-Arnold Network (KAN) operator models and supporting architectures in Python, enabling flexible, physics-informed neural network modeling. Enhanced data preparation pipelines by implementing scripts to convert SU2 mesh and VTK flow-field data into tensor-ready graph formats for machine learning. Improved maintainability through code refactoring, documentation updates, and file structure reorganization. Addressed configuration and data-path reliability, expanded example coverage, and streamlined onboarding, leveraging skills in deep learning, data preprocessing, and configuration management using Python and YAML.
During July 2025, PaddleCFD delivered targeted improvements to user documentation, expanded ML-driven modeling capabilities, and hardened example workflows. Documentation quality across aerodynamics, Darcy flow, and PP-KAN examples was enhanced for readability and consistency, including corrected math rendering and unified presentation. The team added KANONet/DeepONet support to DarcyFlow workflows, refreshed input handling, and updated training commands and the PP-KAN environment to streamline experimentation. Data-path and configuration handling for DarcyFlow and PP-KAN were fixed to ensure reliable dataset access and reduce breakages. A light cleanup of tests and formatting improved code quality without changing behavior. These changes collectively improve user onboarding, reduce time-to-value, and enable more robust ML experiments in CFD workflows.
During July 2025, PaddleCFD delivered targeted improvements to user documentation, expanded ML-driven modeling capabilities, and hardened example workflows. Documentation quality across aerodynamics, Darcy flow, and PP-KAN examples was enhanced for readability and consistency, including corrected math rendering and unified presentation. The team added KANONet/DeepONet support to DarcyFlow workflows, refreshed input handling, and updated training commands and the PP-KAN environment to streamline experimentation. Data-path and configuration handling for DarcyFlow and PP-KAN were fixed to ensure reliable dataset access and reduce breakages. A light cleanup of tests and formatting improved code quality without changing behavior. These changes collectively improve user onboarding, reduce time-to-value, and enable more robust ML experiments in CFD workflows.
June 2025 monthly summary for PaddleCFD focusing on feature delivery, maintainability, and onboarding improvements within the PaddlePaddle/PaddleCFD repository.
June 2025 monthly summary for PaddleCFD focusing on feature delivery, maintainability, and onboarding improvements within the PaddlePaddle/PaddleCFD repository.
April 2025: Delivered an end-to-end CFD data preparation enhancement for PaddleCFD by introducing the su2_vtk2npy.py script that converts SU2 mesh and VTK flow-field data into a graph-ready format for machine learning. This suite produces tensor-ready representations with node coordinates, edge connectivity, and feature keys/values, enabling seamless ML integration and faster experimentation with CFD data. The work is backed by the commit 'add su2 converter' (b0769f08d197c701065050b45dbaf254e756f119). No major bug fixes were recorded this month.
April 2025: Delivered an end-to-end CFD data preparation enhancement for PaddleCFD by introducing the su2_vtk2npy.py script that converts SU2 mesh and VTK flow-field data into a graph-ready format for machine learning. This suite produces tensor-ready representations with node coordinates, edge connectivity, and feature keys/values, enabling seamless ML integration and faster experimentation with CFD data. The work is backed by the commit 'add su2 converter' (b0769f08d197c701065050b45dbaf254e756f119). No major bug fixes were recorded this month.
Concise monthly summary for 2025-03 focused on delivering a major operator-level expansion for PDE solving within PaddleCFD. Implemented the Kolmogorov-Arnold Network (KAN) operator and supporting architectures to enable flexible, physics-informed modeling directly in PaddlePaddle.
Concise monthly summary for 2025-03 focused on delivering a major operator-level expansion for PDE solving within PaddleCFD. Implemented the Kolmogorov-Arnold Network (KAN) operator and supporting architectures to enable flexible, physics-informed modeling directly in PaddlePaddle.

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