Gumbi simplifies the steps needed to build a Gaussian Process model from tabular data. It takes care of shaping, transforming, and standardizing data as necessary while applying best practices and sensible defaults to the construction of the GP model itself. Taking inspiration from popular packages such as Bambi and Seaborn, Gumbi's aim is to allow quick iteration on both model structure and prediction visualization. Gumbi is primarily built on top of Pymc, though additional support for GPflow is planned.
Read in some data and store it as a Gumbi DataSet:
import gumbi as gmb
import seaborn as sns
cars = sns.load_dataset('mpg').dropna()
ds = gmb.DataSet(cars, outputs=['mpg', 'acceleration'], log_vars=['mpg', 'acceleration', 'weight', 'horsepower', 'displacement'])
Create a Gumbi GP object and fit a model that predicts mpg from horsepower:
gp = gmb.GP(ds)
gp.fit(outputs=['mpg'], continuous_dims=['horsepower']);
Make predictions and plot!
X = gp.prepare_grid()
y = gp.predict_grid()
gmb.ParrayPlotter(X, y).plot()
More complex GPs are also possible, such as correlated multi-input and multi-output systems. See the docs for more examples.
pip install gumbi
pip install git+git://github.com/JohnGoertz/Gumbi.git@develop
git clone https://gitlab.com/JohnGoertz/gumbi gumbicd gumbiconda install mambamamba install -f dev_environment.yamlgumbi via pip in editable/development modegumbi repopip install --editable ./gumbi modulegumbi repogit pull$ claude mcp add Gumbi \
-- python -m otcore.mcp_server <graph>