Jiaxuan You

Urbana, Illinois, United States
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Summary

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Rockstar
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Top School
Jiaxuan You is a software engineer and ML researcher with nine years of experience, based in Urbana, Illinois. He holds a PhD in Computer Science from Stanford and dual bachelor's degrees in Automation and Economics from Tsinghua, giving him a rare mix of systems, algorithms and quantitative insight. An active open-source contributor to flagship graph-ML projects like PyTorch Geometric and Stanford’s GraphGym, he added a "Gold-Standard" GNN layer, worked on GNN explainers, and integrated GraphGym with PyG. He also bridges research and production by refactoring experiment infrastructure and DevOps pipelines to streamline large-scale model training and evaluation. His work blends core model development with practical experiment management; personal website: https://cs.stanford.edu/~jiaxuan.
code9 years of coding experience
book4.0/4.0, 4.0/4.0 at Stanford University
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Github Skills (19)

geometric-deep-learning10
pytorch10
python10
gnn10
configuration-management10
machine-learning10
bash10
deep-learning10
experiment10
experiment-manager10
graph-neural-network10
graph-convolutional-networks10
ml9
networkx9
mle9

Programming languages (3)

JavaJupyter NotebookPython

Github contributions (5)

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snap-stanford/GraphGym

Nov 2020 - Aug 2022

Platform for designing and evaluating Graph Neural Networks (GNN)
Role in this project:
userBack-end Developer & DevOps Engineer
Contributions:2 releases, 17 reviews, 62 commits in 1 year 9 months
Contributions summary:Jiaxuan made significant contributions to the project's infrastructure and experiment management. They refactored and split shell scripts, likely streamlining the experiment workflow. They also updated configuration files and modified the training pipeline, suggesting involvement in model training and evaluation. The changes indicate a focus on improving experiment execution and managing resources.
gnnneural-graphneural-networksgraph-neural-networksgraph
pyg-team/pytorch_geometric

Jun 2021 - Jun 2022

Graph Neural Network Library for PyTorch
Role in this project:
userML Engineer
Contributions:22 reviews, 13 commits, 12 PRs in 1 year
Contributions summary:Jiaxuan primarily contributed to the development and enhancement of graph neural network layers within the PyTorch Geometric library. They introduced a "Gold-Standard GNN Layer" and made multiple iterations, including general GNN convolutions with various design options. Additionally, the user was involved in integrating GraphGym with PyG, and fixing related bugs. These contributions demonstrate an active role in improving the core functionality of GNN models within the repository.
pytorchgraph-convolutional-networksgeometric-deep-learningdeep-learningneural-graph
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