This is a differentiable Gaussian Process implementation for PyTorch.
The code is based off of the Gaussian Processes for Machine Learning book and supports both Python 2 and 3.
To install simply clone and run:
python setup.py install
You may also install the dependencies with pipenv as follows:
pipenv install
Finally, you may add this to your own application with either:
pip install 'git+https://github.com/anassinator/gp.git#egg=gp'
pipenv install 'git+https://github.com/anassinator/gp.git#egg=gp'
After installation, import
and use as follows:
from gp import GaussianProcess
from gp.kernels import RBFKernel, WhiteNoiseKernel
k = RBFKernel() + WhiteNoiseKernel()
gp = GaussianProcess(k)
gp.set_data(X, Y)
gp.fit()
where X
and Y
are your training data's inputs and outputs as
torch.Tensor
.
You can then use the Gaussian Process's estimates as tensors as follows:
mean = gp(x)
mean, std = gp(x, return_std=True)
mean, covar = gp(x, return_covar=True)
mean, covar, var = gp(x, return_covar=True, return_var=True)
mean, covar, std = gp(x, return_covar=True, return_std=True)
The following is an example of what this Gaussian Process was able to estimate
with a few randomly sampled points (in blue) of a noisy sin
function.
The dotted lines represent the real function that was kept a secret from the
Gaussian Process, whereas the red line and the grey area represent the
estimated mean and uncertainty.
You can see the examples directory for some Jupyter notebooks with more detailed examples. You can also play with the secret functions that the Gaussian Process is attempting to learn and see how well it performs. Depending on the complexity and nature of the function, you might need to sample more data.
Finally, you can also use a custom kernel function instead of the included
Radial-Basis Function (RBF) kernel by implementing your own Kernel
class as in kernels.py.
Contributions are welcome. Simply open an issue or pull request on the matter.
We use YAPF for all Python formatting needs. You can auto-format your changes with the following command:
yapf --recursive --in-place --parallel .
You can install the formatter with:
pipenv install --dev
See LICENSE.