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Say I have data about 3 trading strategies, each with and without transaction costs. I want to plot, on the same axes, the time series of each of the 6 variants (3 strategies * 2 trading costs). I would like the "with transaction cost" lines to be plotted with alpha=1 and linewidth=1 while I want the "no transaction costs" to be plotted with alpha=0.25 and linewidth=5. But I would like the color to be the same for both versions of each strategy.

I would like something along the lines of:

fig, ax = plt.subplots(1, 1, figsize=(10, 10))

for c in with_transaction_frame.columns:
    ax.plot(with_transaction_frame[c], label=c, alpha=1, linewidth=1)


for c in no_transaction_frame.columns:
    ax.plot(no_transaction_frame[c], label=c, alpha=0.25, linewidth=5)


What is the appropriate code to put on the indicated line to reset the color cycle so it is "back to the start" when the second loop is invoked?

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4 Answers 4

up vote 18 down vote accepted

You can reset the colorcycle to the original with Axes.set_color_cycle. Looking at the code for this, there is a function to do the actual work:

def set_color_cycle(self, clist=None):
    if clist is None:
        clist = rcParams['axes.color_cycle']
    self.color_cycle = itertools.cycle(clist

And a method on the Axes which uses it:

def set_color_cycle(self, clist):
    Set the color cycle for any future plot commands on this Axes.

    *clist* is a list of mpl color specifiers.

This basically means you can call the set_color_cycle with None as the only argument, and it will be replaced with the default cycle found in rcParams['axes.color_cycle'].

I tried this with the following code and got the expected result:

import matplotlib.pyplot as plt
import numpy as np

for i in range(3):
    plt.plot(np.arange(10) + i)


for i in range(3):
    plt.plot(np.arange(10, 1, -1) + i)

Code output, showing the color cycling reset functionality

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I would upvote this a dozen times if I could. – 8one6 Jun 24 '14 at 17:50
Thanks @8one6. Matplotlib is incredibly powerful when you know how - I think the real problem is that power doesn't document so well, so IMHO a really important skill with open source Python packages is to be able to follow the actual implementation/code. It really isn't that complex - I imagine it is just daunting to do the first time... – pelson Jun 25 '14 at 8:55
Since Matplotlib 1.5.0, set_color_cycle is deprecated and does not accept None anymore! Luckily, the new (broader) alternative set_prop_cycle does accept None still... – burnpanck Nov 13 at 3:15

Simply choose your colours and assign them to a list, then when you plot your data iterate over a zip object containing your column and the colour you wish.

colors = ['red', 'blue' 'green']

for col, color in zip(colors, with_transaction_frame.columns):
    ax.plot(with_transaction_frame[col], label=col, alpha=1.0, linewidth=1.0, color=color)

for col, color in zip(no_transaction_frame.columns):
    ax.plot(no_transaction_frame[col], label=col, alpha=0.25, linewidth=5, color=color)

zip creates a list that aggregates the elements from each of your lists. This allows you to iterate over both easily at the same time.

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you could actually build up that list of colors by calling get_color on the return of ax.plot in the first loop. – M4rtini Jun 12 '14 at 21:15
Kind of sidesteps the question. In my case, I'm working with seaborn and in general, there might be a complicated color palette default in place. I don't want to screw with that. I just want to plot twice with the same color cycle used each time...without needing to know what that color cycle is ahead of time. – 8one6 Jun 12 '14 at 21:30
Ok fair enough :) it's not really side-stepping the question as it's a perfectly valid and simple answer to the question as you stated it but if you're using seaborn then I can see how you wouldn't want to mess with the colors by choosing them manually. In this case I would do as @M4rtini suggests and use get_color to get the colors from the first plotting iteration and use them in the 2nd, possibly they may want to write that up as an answer for you. – Ffisegydd Jun 12 '14 at 21:33

Since you mentioned you're using seaborn, what I would recommend doing is:

with sns.color_palette(n_colors=3):


This will set the color palette to use the currently active color cycle, but only the first three colors from it. It's also a general purpose solution for any time you want to set a temporary color cycle.

Note that the only thing that actually needs to be under the with block is whatever you are doing to create the Axes object (i.e. plt.subplots, fig.add_subplot(), etc.). This is just because of how the matplotlib color cycle itself works.

Doing what you specifically want, "resetting" the color cycle, is possible, but it's a hack and I wouldn't do it in any kind of production code. Here, though, is how it could happen:

f, ax = plt.subplots()
ax.plot(np.random.randn(10, 3))
ax._get_lines.color_cycle = itertools.cycle(sns.color_palette())
ax.plot(np.random.randn(10, 3), lw=5, alpha=.25)

enter image description here

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Thanks for taking the time to write up this answer. I understand that this will work because I know a priori that I'll be plotting 3 series using each of the ax.plot commands above. But do you know if there's a general way to "reset" the color cycle at a given point in code? Without specific knowledge of what the color cycle is (or what its status is) at the point in code that command is issued? – 8one6 Jun 13 '14 at 3:44
It's possible to do, but it's a hack that I would not really recommend. See edit to answer. – mwaskom Jun 13 '14 at 16:11
I'd also point out that you should always be able to infer how many colors you need from the data. – mwaskom Jun 13 '14 at 16:30
This is very helpful (and I'll accept the answer). While you're right that I can infer the number of lines from the context, I was hoping to keep the code more readable. If there were literally a reset_color_cycle command, I think things would read very naturally. Actually, your 1-line 'hack' above doesn't bother me too much. Why don't you recommend its use in production? – 8one6 Jun 13 '14 at 20:18
In general you want to avoid using internal features (that by convention are methods or attributes where the name starts with a single underscore). That generally signals the API could change without warning. It's specifically a concern here because I know the matplotlib devs are talking about changing how the color cycle is implemented, and so it's possible this hack will not work on future versions of matplotlib. – mwaskom Jun 13 '14 at 20:47

You can get the colors from seaborn like this: colors = sns.color_palette(). Ffisegydd's answer would then work great. You could also get the color to plot using the modulus/remainder operater (%): mycolor = colors[icolumn % len(colors]. I use often use this approach myself. So you could do:

for icol, column in enumerate(with_transaction_frame.columns): mycolor = colors[icol % len(colors] ax.plot(with_transaction_frame[col], label=col, alpha=1.0, color=mycolor)

Ffisegydd's answer may be more 'pythonic', though.

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