Gaussian processes in TensorFlow
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Updated
Nov 18, 2024 - Python
Gaussian processes in TensorFlow
Bayesian Optimization using GPflow
Deep convolutional gaussian processes.
Non-stationary spectral mixture kernels implemented in GPflow
🤿 Implementation of doubly stochastic deep Gaussian Process using GPflow and TensorFlow 2.0
Dataset and code for "Uncertainty-Informed Deep Transfer Learning of PFAS Toxicity"
Gaussian-Processes Surrogate Optimisation in python
Library for Deep Gaussian Processes based on GPflow
Jupyter Notebooks Tutorials on Gaussian Processes
📈 Implementation of the Graph Gaussian Process using GPflow and TensorFlow 2
Actually Sparse Variational Gaussian Processes implemented in GPlow
Interactive Gaussian Processes
Methods for estimating time-varying functional connectivity (TVFC)
Distributed surrogate-assisted evolutionary methods for multi-objective optimization of high-dimensional dynamical systems
Sparse Heteroscedastic Gaussian Processes
Subset of Data Variational Inference for Deep Gaussian Process Model
Mode-constrained model-based-reinforcement learning in TensorFlow/GPflow
LaTeX code for my PhD thesis.
Study of Gaussian Process (GP) local and global approximations, and application of the sparse GP approximation, combining both the global and local approaches.
Gaussian processes in TensorFlow
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