Source code for sbi.utils.simulation_utils

# This file is part of sbi, a toolkit for simulation-based inference. sbi is licensed
# under the Apache License Version 2.0, see <https://www.apache.org/licenses/>

from typing import Any, Callable, Optional, Tuple, Union

import numpy as np
import torch
from joblib import Parallel, delayed
from numpy import ndarray
from torch import Tensor, float32
from tqdm.auto import tqdm

from sbi.utils.sbiutils import seed_all_backends


# Refactoring following #1175. tl:dr: letting joblib iterate over numpy arrays
# allows for a roughly 10x performance gain. The resulting casting necessity
# (cfr. user_input_checks.wrap_as_joblib_efficient_simulator) introduces
# considerable overhead. The simulating pipeline should, therefore, be further
# restructured in the future (PR #1188).
[docs] def simulate_for_sbi( simulator: Callable, proposal: Any, num_simulations: int, num_workers: int = 1, simulation_batch_size: Union[int, None] = 1, seed: Optional[int] = None, show_progress_bar: bool = True, ) -> Tuple[Tensor, Tensor]: r"""Returns pairs :math:`(\theta, x)` by sampling proposal and running simulations. This function performs two steps: - Sample parameters $\theta$ from the `proposal`. - Simulate these parameters to obtain $x$. Args: simulator: A function that takes parameters $\theta$ and maps them to simulations, or observations, `x`, $\text{sim}(\theta)\to x$. Any regular Python callable (i.e. function or class with `__call__` method) can be used. Note that the simulator should be able to handle numpy arrays for efficient parallelization. You can use `process_simulator` to ensure this. proposal: Probability distribution that the parameters $\theta$ are sampled from. num_simulations: Number of simulations that are run. num_workers: Number of parallel workers to use for simulations. simulation_batch_size: Number of parameter sets of shape (simulation_batch_size, parameter_dimension) that the simulator receives per call. If None, we set simulation_batch_size=num_simulations and simulate all parameter sets with one call. Otherwise, we construct batches of parameter sets and distribute them among num_workers. seed: Seed for reproducibility. show_progress_bar: Whether to show a progress bar for simulating. This will not affect whether there will be a progressbar while drawing samples from the proposal. Returns: Sampled parameters $\theta$ and simulation-outputs $x$. """ if num_simulations == 0: theta = torch.tensor([], dtype=float32) x = torch.tensor([], dtype=float32) else: # Cast theta to numpy for better joblib performance (seee #1175) seed_all_backends(seed) theta = proposal.sample((num_simulations,)) # Parse the simulation_batch_size logic if simulation_batch_size is None: simulation_batch_size = num_simulations else: simulation_batch_size = min(simulation_batch_size, num_simulations) if num_workers != 1: # For multiprocessing, we want to switch to numpy arrays. # The batch size will be an approximation, since np.array_split does # not take as argument the size of the batch but their total. num_batches = num_simulations // simulation_batch_size batches = np.array_split(theta.cpu().numpy(), num_batches, axis=0) batch_seeds = np.random.randint(low=0, high=1_000_000, size=(len(batches),)) # define seeded simulator. def simulator_seeded(theta: ndarray, seed: int) -> Tensor: seed_all_backends(seed) return simulator(theta) try: # catch TypeError to give more informative error message simulation_outputs: list[Tensor] = [ # pyright: ignore xx for xx in tqdm( Parallel(return_as="generator", n_jobs=num_workers)( delayed(simulator_seeded)(batch, seed) for batch, seed in zip(batches, batch_seeds, strict=False) ), total=num_simulations, disable=not show_progress_bar, ) ] except TypeError as err: raise TypeError( "There is a TypeError error in your simulator function. Note: For" " multiprocessing, we switch to numpy arrays. Besides confirming" " your simulator works correctly, make sure to preprocess your" " simulator with `process_simulator` to handle numpy arrays." ) from err else: simulation_outputs: list[Tensor] = [] batches = torch.split(theta, simulation_batch_size) for batch in tqdm(batches, disable=not show_progress_bar): simulation_outputs.append(simulator(batch)) # Correctly format the output x = torch.cat(simulation_outputs, dim=0) theta = torch.as_tensor(theta, dtype=float32) return theta, x