od` parameter of some hypothesis test functions to perform a Monte Carlo version of the hypothesis tests. Attributes ---------- n_resamples : int, optional The number of Monte Carlo samples to draw. Default is 9999. batch : int, optional The number of Monte Carlo samples to process in each vectorized call to the statistic. Batch sizes >>1 tend to be faster when the statistic is vectorized, but memory usage scales linearly with the batch size. Default is ``None``, which processes all samples in a single batch. rvs : callable or tuple of callables, optional A callable or sequence of callables that generates random variates under the null hypothesis. Each element of `rvs` must be a callable that accepts keyword argument ``size`` (e.g. ``rvs(size=(m, n))``) and returns an N-d array sample of that shape. If `rvs` is a sequence, the number of callables in `rvs` must match the number of samples passed to the hypothesis test in which the `MonteCarloMethod` is used. Default is ``None``, in which case the hypothesis test function chooses values to match the standard version of the hypothesis test. For example, the null hypothesis of `scipy.stats.pearsonr` is typically that the samples are drawn from the standard normal distribution, so ``rvs = (rng.normal, rng.normal)`` where ``rng = np.random.default_rng()``. rng : `numpy.random.Generator`, optional Pseudorandom number generator state. When `rng` is None, a new `numpy.random.Generator` is created using entropy from the operating system. Types other than `numpy.random.Generator` are passed to `numpy.random.default_rng` to instantiate a ``Generator``. Nré