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#' @title Kumaraswamy Distribution
#'
#' @description The Kumaraswamy distribution is a continuous probability distribution defined on the interval [0, 1].
#' It is a flexible distribution that can take on various shapes depending on its parameters.
#'
#' \deqn{f(x; a, b) = a b x^{a b - 1} (1 - x)^{b - 1}}
#'
#' @export
#' @importFrom reticulate py_none tuple
#'
#' @param concentration1 A numeric vector, matrix, or array representing the first shape parameter. Must be positive.
#' @param concentration0 A numeric vector, matrix, or array representing the second shape parameter. Must be positive.
#' @param shape A numeric vector. When \code{sample=FALSE} (model building), this is used with `.expand(shape)` to set the distribution's batch shape.
#' When \code{sample=TRUE} (direct sampling), this is used as `sample_shape` to draw a raw JAX array of the given shape.
#' @param event An integer representing the number of batch dimensions to reinterpret as event dimensions (used in model building).
#' @param mask A logical vector, matrix, or array. Optional boolean array to mask observations.
#' @param create_obj A logical value. If `TRUE`, returns the raw BI distribution object instead of creating a sample site.
#' This is essential for building complex distributions like `MixtureSameFamily`.
#' @param validate_args Logical: Whether to validate parameter values. Defaults to `reticulate::py_none()`.
#' @param sample A logical value that controls the function's behavior. If `TRUE`,
#' the function will directly draw samples from the distribution. If `FALSE`,
#' it will create a random variable within a model. Defaults to `FALSE`.
#' @param seed An integer used to set the random seed for reproducibility when
#' `sample = TRUE`. This argument has no effect when `sample = FALSE`, as
#' randomness is handled by the model's inference engine. Defaults to 0.
#' @param obs A numeric vector or array of observed values. If provided, the
#' random variable is conditioned on these values. If `NULL`, the variable is
#' treated as a latent (unobserved) variable. Defaults to `NULL`.
#' @param name A character string representing the name of the random variable
#' within a model. This is used to uniquely identify the variable. Defaults to 'x'.
#' @param to_jax Boolean. Indicates whether to return a JAX array or not.
#'
#' @return
#' - When \code{sample=FALSE}: A BI Kumaraswamy distribution object (for model building).
#'
#' - When \code{sample=TRUE}: A JAX array of samples drawn from the Kumaraswamy distribution (for direct sampling).
#'
#' - When \code{create_obj=TRUE}: The raw BI distribution object (for advanced use cases).
#'
#' @seealso This is a wrapper of \url{https://num.pyro.ai/en/stable/distributions.html#kumaraswamy}
#'
#' @examples
#' \donttest{
#' library(BayesForge)
#' m=importBF(platform='cpu')
#' bf.dist.kumaraswamy(concentration1 = 5, concentration0 = 1., sample = TRUE)
#' }
#' @export
bf.dist.kumaraswamy=function(concentration1, concentration0, validate_args=py_none(), name='x', obs=py_none(), mask=py_none(), sample=FALSE, seed = py_none(), shape=c(), event=0, create_obj=FALSE, to_jax = TRUE) {
shape=do.call(tuple, as.list(as.integer(shape)))
if (!.BF_env$.py$is_none(seed)){seed=as.integer(seed);}
.BF_env$.bf_instance$dist$kumaraswamy(
concentration1 = .BF_env$jnp$array(concentration1),
concentration0 = .BF_env$jnp$array(concentration0),
validate_args= validate_args, name= name, obs= obs, mask= mask, sample= sample, seed= seed, shape= shape, event= event, create_obj= create_obj, to_jax = to_jax)
}
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