# How to set the line width of error bar caps, in matplotlib?

How can the line width of the error bar caps in Matplotlib be changed?

I tried the following code:

``````(_, caplines, _) = matplotlib.pyplot.errorbar(
data['distance'], data['energy'], yerr=data['energy sigma'],
capsize=10, elinewidth=3)

for capline in caplines:
capline.set_linewidth(10)
capline.set_color('red')

pp.draw()
``````

Unfortunately, this updates the color of the caps, but does not update the line width of the caps!

The resulting effect is similar to the "fat error bar lines / thin caps" in the following image:

It would be nice to have "fat" bar caps, in the case; how can this be done, in Matplotlib? Drawing the bar caps "manually", one by one with `plot()` would work, but a simpler alternative would be best.

-

EOL, you were very close..,

``````distance = [1,3,7,9]
energy = [10,20,30,40]
sigma = [1,3,2,5]

(_, caps, _) = plt.errorbar(distance, energy, sigma, capsize=20, elinewidth=3)

for cap in caps:
cap.set_color('red')
cap.set_markeredgewidth(10)

plt.show
``````

`set_markeredgewidth` sets the width of the cap lines.

Matplotlib objects have so many attributes that often it is difficult to remember the right ones for a given object. IPython is a very useful tool for introspecting matplotlib. I used it to analyze the properties of the 2Dlines correponding to the error cap lines and I found that and other marker properties.

Cheers

-
Thanks a lot! We used the same method, but I somehow missed `set_markeredgewidth`. :) So, the caps are actually markers, for Matplotlib, as opposed to 2D lines. It seems to me that the `capsize` argument of `errorbar()` is equivalent to the `cap.set_markersize()`, so the latter could be removed, no? –  EOL Oct 2 '11 at 16:08
While you were commenting I was also realizing that. I changed also the picture. –  joaquin Oct 2 '11 at 16:11
@joaquin, how do you use iPython for "introspecting matplotlib." This sounds like a very useful skill. –  Blink Oct 8 '13 at 14:26
@William IPython with the option --pylab, sets an environment with the conditions to plot interactively with matplotlib. At the same time you can <TAB> at any `object.` to list its methods and check the docs of selected ones with `object.method?`. In this way you can check in vivo how changes in a given property affects your figure. –  joaquin Oct 9 '13 at 6:47