Source code for botorch.sampling.deterministic
#!/usr/bin/env python3
# Copyright (c) Meta Platforms, Inc. and affiliates.
#
# This source code is licensed under the MIT license found in the
# LICENSE file in the root directory of this source tree.
r"""
A dummy sampler for use with deterministic models.
"""
from __future__ import annotations
from botorch.posteriors.deterministic import DeterministicPosterior
from botorch.sampling.stochastic_samplers import StochasticSampler
[docs]
class DeterministicSampler(StochasticSampler):
r"""A sampler that simply calls `posterior.rsample`, intended to be used with
`DeterministicModel` & `DeterministicPosterior`.
[DEPRECATED] - Use `IndexSampler` in conjunction with `EnsemblePosterior`
instead of `DeterministicSampler` with `DeterministicPosterior`.
This is effectively signals that `StochasticSampler` is safe to use with
deterministic models since their output is deterministic by definition.
"""
def _update_base_samples(
self, posterior: DeterministicPosterior, base_sampler: DeterministicSampler
) -> None:
r"""This is a no-op since there are no base samples to update.
Args:
posterior: The posterior for which the base samples are constructed.
base_sampler: The base sampler to retrieve the base samples from.
"""
return