Official pytorch implementation of the paper "Bayesian Meta-Learning for the Few-Shot Setting via Deep Kernels" (NeurIPS 2020)
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Updated
Jan 19, 2022 - Python
Official pytorch implementation of the paper "Bayesian Meta-Learning for the Few-Shot Setting via Deep Kernels" (NeurIPS 2020)
Unofficial Implementation of the paper "Data-Efficient Reinforcement Learning with Probabilistic Model Predictive Control", applied to gym environments
Hyperpatameter Bayesian Optimization for Image Classification in PyTorch
We have created a module to run the Gaussian process model. We have implemented the code based on GPyTorch.
Bayesian Optimization for MPPI Control of Robot Arm Planar Pushing
Uncertainty in convolutional neural network predictions using Gaussian processes
Dataset and code for "Coarse-Grained Density Functional Theory Predictions via Deep Kernel Learning"
A Fast and Simplified Python Library for Uncertainty Estimation
Distributed surrogate-assisted evolutionary methods for multi-objective optimization of high-dimensional dynamical systems
Highly performant and scalable out-of-the-box gaussian process regression and Bernoulli classification. Built upon GPyTorch, with a familiar sklearn api.
Implementation of Cyclist Pressure Research Paper
Testing deployment of a Ray cluster on AWS
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