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A simple question: I have a function f(t) that is supposed to have some sharp peak at some point on [0,1]. A natural idea is to use adaptive sampling of this function to get a nice "adaptive" plot. How can I do that in a fast way in Python + matplotlib + numpy + whatever? I can compute f(t) for any t on [0,1].

It seems that Mathematica has this option, does the Python have one?

share|improve this question
What have you tried? – tcaswell Dec 29 '12 at 18:31
Just a simplest linspace solution – Ivan Oseledets Dec 29 '12 at 18:31
up vote 3 down vote accepted

Look what I found: Adaptive sampling of 1D functions, the link from

The code is:

# License: Creative Commons Zero (almost public domain)

import numpy as np

def sample_function(func, points, tol=0.05, min_points=16, max_level=16,
    Sample a 1D function to given tolerance by adaptive subdivision.

    The result of sampling is a set of points that, if plotted,
    produces a smooth curve with also sharp features of the function

    func : callable
        Function func(x) of a single argument. It is assumed to be vectorized.
    points : array-like, 1D
        Initial points to sample, sorted in ascending order.
        These will determine also the bounds of sampling.
    tol : float, optional
        Tolerance to sample to. The condition is roughly that the total
        length of the curve on the (x, y) plane is computed up to this
    min_point : int, optional
        Minimum number of points to sample.
    max_level : int, optional
        Maximum subdivision depth.
    sample_transform : callable, optional
        Function w = g(x, y). The x-samples are generated so that w
        is sampled.

    x : ndarray
    y : ndarray
        Corresponding values of func(x)

    This routine is useful in computing functions that are expensive
    to compute, and have sharp features --- it makes more sense to
    adaptively dedicate more sampling points for the sharp features
    than the smooth parts.

    >>> def func(x):
    ...     '''Function with a sharp peak on a smooth background'''
    ...     a = 0.001
    ...     return x + a**2/(a**2 + x**2)
    >>> x, y = sample_function(func, [-1, 1], tol=1e-3)

    >>> import matplotlib.pyplot as plt
    >>> xx = np.linspace(-1, 1, 12000)
    >>> plt.plot(xx, func(xx), '-', x, y[0], '.')

    return _sample_function(func, points, values=None, mask=None, depth=0,
                            tol=tol, min_points=min_points, max_level=max_level,

def _sample_function(func, points, values=None, mask=None, tol=0.05,
                     depth=0, min_points=16, max_level=16,
    points = np.asarray(points)

    if values is None:
        values = np.atleast_2d(func(points))

    if mask is None:
        mask = Ellipsis

    if depth > max_level:
        # recursion limit
        return points, values

    x_a = points[...,:-1][...,mask]
    x_b = points[...,1:][...,mask]

    x_c = .5*(x_a + x_b)
    y_c = np.atleast_2d(func(x_c))

    x_2 = np.r_[points, x_c]
    y_2 = np.r_['-1', values, y_c]
    j = np.argsort(x_2)

    x_2 = x_2[...,j]
    y_2 = y_2[...,j]

    # -- Determine the intervals at which refinement is necessary

    if len(x_2) < min_points:
        mask = np.ones([len(x_2)-1], dtype=bool)
        # represent the data as a path in N dimensions (scaled to unit box)
        if sample_transform is not None:
            y_2_val = sample_transform(x_2, y_2)
            y_2_val = y_2

        p = np.r_['0',
                  y_2_val.real.reshape(-1, y_2_val.shape[-1]),
                  y_2_val.imag.reshape(-1, y_2_val.shape[-1])

        sz = (p.shape[0]-1)//2

        xscale = x_2.ptp(axis=-1)
        yscale = abs(y_2_val.ptp(axis=-1)).ravel()

        p[0] /= xscale
        p[1:sz+1] /= yscale[:,None]
        p[sz+1:]  /= yscale[:,None]

        # compute the length of each line segment in the path
        dp = np.diff(p, axis=-1)
        s = np.sqrt((dp**2).sum(axis=0))
        s_tot = s.sum()

        # compute the angle between consecutive line segments
        dp /= s
        dcos = np.arccos(np.clip((dp[:,1:] * dp[:,:-1]).sum(axis=0), -1, 1))

        # determine where to subdivide: the condition is roughly that
        # the total length of the path (in the scaled data) is computed
        # to accuracy `tol`
        dp_piece = dcos * .5*(s[1:] + s[:-1])
        mask = (dp_piece > tol * s_tot)

        mask = np.r_[mask, False]
        mask[1:] |= mask[:-1].copy()

    # -- Refine, if necessary

    if mask.any():
        return _sample_function(func, x_2, y_2, mask, tol=tol, depth=depth+1,
                                min_points=min_points, max_level=max_level,
        return x_2, y_2
share|improve this answer
The one I needed! Thanks – Ivan Oseledets Dec 29 '12 at 19:41

For plotting purposes, there isn't much need for adaptive sampling. Why not just sample at or above the screen resolution?


from pylab import *
x = arange(0,1,1.0/POINTS)
y = sin(3.14*x)
axes().set_aspect('equal') ## optional aspect-ratio control
share|improve this answer
I agree to some extent, but it is always desirable to compute a few of function values to reduce the plotting time. In my case the function is also quite slow (around 10 seconds for one point). – Ivan Oseledets Jan 1 '13 at 8:02
How to "vectorize" an arbitrary function:… – nobar Jun 25 '13 at 21:44

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