ARGRELMIN
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 The ARGRELMIN node is based on a numpy or scipy function. The description of that function is as follows:
    Calculate the relative minima of 'data'.  Params:    data : ndarray  Array in which to find the relative minima.   axis : int  Axis over which to select from 'data'. Default is 0.   order : int  How many points on each side to use for the comparison
to consider "comparator(n, n+x)" to be True.   mode : str  How the edges of the vector are treated.
Available options are 'wrap' (wrap around) or 'clip' (treat overflow
as the same as the last (or first) element).
Default 'clip'. See numpy.take.     Returns:    out : DataContainer  type 'ordered pair', 'scalar', or 'matrix'    
Python Code
from flojoy import OrderedPair, flojoy, Matrix, Scalar
import scipy.signal
@flojoy
def ARGRELMIN(
    default: OrderedPair | Matrix,
    axis: int = 0,
    order: int = 1,
    mode: str = "clip",
) -> OrderedPair | Matrix | Scalar:
    """The ARGRELMIN node is based on a numpy or scipy function.
    The description of that function is as follows:
        Calculate the relative minima of 'data'.
    Parameters
    ----------
    data : ndarray
        Array in which to find the relative minima.
    axis : int, optional
        Axis over which to select from 'data'. Default is 0.
    order : int, optional
        How many points on each side to use for the comparison
        to consider "comparator(n, n+x)" to be True.
    mode : str, optional
        How the edges of the vector are treated.
        Available options are 'wrap' (wrap around) or 'clip' (treat overflow
        as the same as the last (or first) element).
        Default 'clip'. See numpy.take.
    Returns
    -------
    DataContainer
        type 'ordered pair', 'scalar', or 'matrix'
    """
    result = OrderedPair(
        x=default.x,
        y=scipy.signal.argrelmin(
            data=default.y,
            axis=axis,
            order=order,
            mode=mode,
        ),
    )
    return result