My question is a bit similar to this question that draws line with width given in data coordinates. What makes my question a bit more challenging is that unlike the linked question, the segment that I wish to expand is of a random orientation.

Let's say if the line segment goes from (0, 10) to (10, 10), and I wish to expand it to a width of 6. Then it is simply

x = [0, 10]
y = [10, 10]
ax.fill_between(x, y - 3, y + 3)

However, my line segment is of random orientation. That is, it is not necessarily along x-axis or y-axis. It has a certain slope.

A line segment s is defined as a list of its starting and ending points: [(x1, y1), (x2, y2)].

Now I wish to expand the line segment to a certain width w. The solution is expected to work for a line segment in any orientation. How to do this?

plt.plot(x, y, linewidth=6.0) cannot do the trick, because I want my width to be in the same unit as my data.

  • Why can't you use the line width parameter? plt.plot(x, y, linewidth=6.0)
    – beroe
    Commented Oct 16, 2013 at 3:10
  • @beroe Because I want the width to be in the same unit as the data. Say my data is in meter. Then I want my line width to be 6m.
    – user2881553
    Commented Oct 16, 2013 at 3:11
  • 1
    I suspect you really want to be drawing rectangles.
    – tacaswell
    Commented Oct 16, 2013 at 3:27
  • 1
    This looks very similar to this question stackoverflow.com/q/15670973/2870069
    – Jakob
    Commented Oct 16, 2013 at 10:53
  • 1
    @Jakob, not totally the same, if your target is the saved figure, then zoom support is not necessary. mavErick, I think I got it working below, but you would have to adjust the scaling factor if you want multiple subplots.
    – beroe
    Commented Oct 16, 2013 at 18:06

3 Answers 3


The following code is a generic example on how to make a line plot in matplotlib using data coordinates as linewidth. There are two solutions; one using callbacks, one using subclassing Line2D.

Using callbacks.

It is implemted as a class data_linewidth_plot that can be called with a signature pretty close the the normal plt.plot command,

l = data_linewidth_plot(x, y, ax=ax, label='some line', linewidth=1, alpha=0.4)

where ax is the axes to plot to. The ax argument can be omitted, when only one subplot exists in the figure. The linewidth argument is interpreted in (y-)data units.

Further features:

  1. It's independend on the subplot placements, margins or figure size.
  2. If the aspect ratio is unequal, it uses y data coordinates as the linewidth.
  3. It also takes care that the legend handle is correctly set (we may want to have a huge line in the plot, but certainly not in the legend).
  4. It is compatible with changes to the figure size, zoom or pan events, as it takes care of resizing the linewidth on such events.

Here is the complete code.

import matplotlib.pyplot as plt

class data_linewidth_plot():
    def __init__(self, x, y, **kwargs):
        self.ax = kwargs.pop("ax", plt.gca())
        self.fig = self.ax.get_figure()
        self.lw_data = kwargs.pop("linewidth", 1)
        self.lw = 1

        self.ppd = 72./self.fig.dpi
        self.trans = self.ax.transData.transform
        self.linehandle, = self.ax.plot([],[],**kwargs)
        if "label" in kwargs: kwargs.pop("label")
        self.line, = self.ax.plot(x, y, **kwargs)
        self.cid = self.fig.canvas.mpl_connect('draw_event', self._resize)

    def _resize(self, event=None):
        lw =  ((self.trans((1, self.lw_data))-self.trans((0, 0)))*self.ppd)[1]
        if lw != self.lw:
            self.lw = lw

    def _redraw_later(self):
        self.timer = self.fig.canvas.new_timer(interval=10)
        self.timer.single_shot = True
        self.timer.add_callback(lambda : self.fig.canvas.draw_idle())

fig1, ax1 = plt.subplots()
#ax.set_aspect('equal') #<-not necessary 
x = [0,1,2,3]
y = [1,1,2,2]

# plot a line, with 'linewidth' in (y-)data coordinates.       
l = data_linewidth_plot(x, y, ax=ax1, label='some 1 data unit wide line', 
                        linewidth=1, alpha=0.4)

plt.legend() # <- legend possible

enter image description here

(I updated the code to use a timer to redraw the canvas, due to this issue)

Subclassing Line2D

The above solution has some drawbacks. It requires a timer and callbacks to update itself on changing axis limits or figure size. The following is a solution without such needs. It will use a dynamic property to always calculate the linewidth in points from the desired linewidth in data coordinates on the fly. It is much shorter than the above. A drawback here is that a legend needs to be created manually via a proxyartist.

import matplotlib.pyplot as plt
from matplotlib.lines import Line2D

class LineDataUnits(Line2D):
    def __init__(self, *args, **kwargs):
        _lw_data = kwargs.pop("linewidth", 1) 
        super().__init__(*args, **kwargs)
        self._lw_data = _lw_data

    def _get_lw(self):
        if self.axes is not None:
            ppd = 72./self.axes.figure.dpi
            trans = self.axes.transData.transform
            return ((trans((1, self._lw_data))-trans((0, 0)))*ppd)[1]
            return 1

    def _set_lw(self, lw):
        self._lw_data = lw

    _linewidth = property(_get_lw, _set_lw)

fig, ax = plt.subplots()

#ax.set_aspect('equal') # <-not necessary, if not given, y data is assumed 
x = [0,1,2,3]
y = [1,1,2,2]

line = LineDataUnits(x, y, linewidth=1, alpha=0.4)

ax.legend([Line2D([],[], linewidth=3, alpha=0.4)], 
           ['some 1 data unit wide line'])    # <- legend possible via proxy artist
  • 1
    thank you, but... as far, as you know, is it still so complex to obtain such a basic goal as of today April 25, 2021? Commented Apr 25, 2021 at 11:09

Just to add to the previous answer (can't comment yet), here's a function that automates this process without the need for equal axes or the heuristic value of 0.8 for labels. The data limits and size of the axis need to be fixed and not changed after this function is called.

def linewidth_from_data_units(linewidth, axis, reference='y'):
    Convert a linewidth in data units to linewidth in points.

    linewidth: float
        Linewidth in data units of the respective reference-axis
    axis: matplotlib axis
        The axis which is used to extract the relevant transformation
        data (data limits and size must not change afterwards)
    reference: string
        The axis that is taken as a reference for the data width.
        Possible values: 'x' and 'y'. Defaults to 'y'.

    linewidth: float
        Linewidth in points
    fig = axis.get_figure()
    if reference == 'x':
        length = fig.bbox_inches.width * axis.get_position().width
        value_range = np.diff(axis.get_xlim())
    elif reference == 'y':
        length = fig.bbox_inches.height * axis.get_position().height
        value_range = np.diff(axis.get_ylim())
    # Convert length to points
    length *= 72
    # Scale linewidth to value range
    return linewidth * (length / value_range)
  • Shouldn't it be fig.dpi instead of 72?
    – Phyks
    Commented Mar 19, 2016 at 8:56
  • After further tests, seems to be 72 indeed, and not fig.dpi. I am not sure why though…
    – Phyks
    Commented Mar 30, 2016 at 19:39
  • Perfect, except if a scalar is desired rather than an array: np.diff(axis.get_lim()) should be np.diff(axis.get_lim())[0]. Thanks!
    – Walt W
    Commented Aug 25, 2016 at 17:31
  • 3
    @Phyks To answer the question why 72 is the correct number: The linewidth is given in points. The points unit is commonly 72 points/inch, also in matplotlib. While the dots per inch may change, points per inch stay constant. Commented Mar 23, 2017 at 9:58


  • Set up the figure with a known height and make the scale of the two axes equal (or else the idea of "data coordinates" does not apply). Make sure the proportions of the figure match the expected proportions of the x and y axes.

  • Compute the height of the whole figure point_hei (including margins) in units of points by multiplying inches by 72

  • Manually assign the y-axis range yrange (You could do this by plotting a "dummy" series first and then querying the plot axis to get the lower and upper y limits.)

  • Provide the width of the line that you would like in data units linewid

  • Calculate what those units would be in points pointlinewid while adjusting for the margins. In a single-frame plot, the plot is 80% of the full image height.

  • Plot the lines, using a capstyle that does not pad the ends of the line (has a big effect at these large line sizes)

Voilà? (Note: this should generate the proper image in the saved file, but no guarantees if you resize a plot window.)

import matplotlib.pyplot as plt
wid=8.0 # Must be proportional to x and y limits below
fig = plt.figure(1, figsize=(wid, hei))
sp = fig.add_subplot(111)
# # plt.figure.tight_layout() 
# fig.set_autoscaley_on(False)

# line is in points: 72 points per inch

x1,x2,y1,y2 = plt.axis()
yrange =   y2 - y1
# print yrange

linewid = 500     # in data units

# For the calculation below, you have to adjust width by 0.8
# because the top and bottom 10% of the figure are labels & axis
pointlinewid = (linewid * (point_hei/yrange)) * 0.8  # corresponding width in pts

plt.plot(xval,yval,linewidth = pointlinewid,color="blue",solid_capstyle="butt")
# just for fun, plot the half-width line on top of it
plt.plot(xval,yval,linewidth = pointlinewid/2,color="red",solid_capstyle="butt")


enter image description here

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