# How to specify legend position in matplotlib in graph coordinates

I am aware of the bbox_to_anchor keyword and this thread, which very helpfully suggests how to manually place the legend:

How to put the legend out of the plot

However, I'd like to use the coordinates of my x- and y-axis in the graph to specify the legend position (inside the plot), as I might need to move the figure into a large figure with a different axis environment, and I don't want to manually play around with those coordinates every time I do this. Is this possible?

Edit: A small example is here:

``````import numpy as n
f, axarr = plt.subplots(2,sharex=True)
axarr.set_ylim([0.611,0.675])
axarr.set_ylim([0.792,0.856])
axarr.plot([0, 0.04, 0.08],n.array([ 0.83333333,  0.82250521,0.81109048]), label='test1')
axarr.errorbar([0, 0.04, 0.08],n.array([ 0.8,  0.83,   0.82]),n.array([0.1,0.1,0.01]), label='test2')
axarr.plot([0, 0.04, 0.08],n.array([ 0.66666667,  0.64888304,  0.63042428]))
axarr.errorbar([0, 0.04, 0.08],n.array([ 0.67,  0.64,  0.62]),n.array([ 0.01,  0.05,  0.1]))
axarr.legend(bbox_to_anchor=(0.04, 0.82, 1., .102),labelspacing=0.1,       handlelength=0.1, handletextpad=0.1,frameon=False, ncol=4, columnspacing=0.7)
`````` I think what confuses me is that the legend does not actually start at 0.82, and indeed for my larger plot (with 5 subplots of this type), I need to use legend coordinates bbox_to_anchor=(0.04, 1.15, 1., .102) in order to make the legend appear on coordinates (0.02, 0.83). But maybe I am getting something else wrong?

• Its not exactly clear in how far the solution from the linked question do not help you as by default the bbox_to_anchor argument takes the axes coordinates, just as you want it to be. You may want to give an example of what you are trying to achieve and/or better explain in how far the solutions are not what you are looking for. – ImportanceOfBeingErnest Jun 7 '17 at 12:47
• Thanks - I've edited it. But maybe you're right and I'm just misunderstanding something with how matplotlib places these legends in general - do you know which corner of the legend is placed on the coordinates that are given to bbox_to_anchor? – mzzx Jun 7 '17 at 13:25
• Well I thought I had a complete explanation into my answer to the linked question. There is also the link to this question included that shows how to interprete the 4-tuple bbox_to_anchor specification. I may still try to answer your question here, but for that I would need to know what exactly you mean when asking for "the legend appear on coordinates (0.02, 0.83)" is it the lower left corner that you want to have there? – ImportanceOfBeingErnest Jun 7 '17 at 13:33
• Ouff sorry I thought I'd looked through the other post carefully, but I hadn't scrolled down far enough to see your answer - thank you, trying to understand this now. And yes, I did want to lower left corner to be at these coordinates. – mzzx Jun 7 '17 at 13:40
• Ok sorry, just to check if I get this right: so when I just say loc="upper right", and give no bbox_to_anchor specification, matplotlib interprets that as the loc with respect to the axes. But when I say loc="upper right" and give a bbox_to_anchor specification, that bbox_to_anchor specification will be interpreted with respect to the axes and the loc keyword refers to the corner of the legend? – mzzx Jun 7 '17 at 13:45

The `loc` parameter specifies in which corner of the bounding box the legend is placed. The default for `loc` is `loc="best"` which gives unpredictable results when the `bbox_to_anchor` argument is used.
Therefore, when specifying `bbox_to_anchor`, always specify `loc` as well.

The default for `bbox_to_anchor` is `(0,0,1,1)`, which is a bounding box over the complete axes. If a different bounding box is specified, is is usually sufficient to use the first two values, which give (x0, y0) of the bounding box.

Below is an example where the bounding box is set to position `(0.6,0.5)` (green dot) and different `loc` parameters are tested. Because the legend extents outside the bounding box, the `loc` parameter may be interpreted as "which corner of the legend shall be placed at position given by the 2-tuple bbox_to_anchor argument". ``````import matplotlib.pyplot as plt
plt.rcParams["figure.figsize"] = 6, 3
fig, axes = plt.subplots(ncols=3)
locs = ["upper left", "lower left", "center right"]
for l, ax in zip(locs, axes.flatten()):
ax.set_title(l)
ax.plot([1,2,3],[2,3,1], "b-", label="blue")
ax.plot([1,2,3],[1,2,1], "r-", label="red")
ax.legend(loc=l, bbox_to_anchor=(0.6,0.5))
ax.scatter((0.6),(0.5), s=81, c="limegreen", transform=ax.transAxes)

plt.tight_layout()
plt.show()
``````

See especially this answer for a detailed explanation and the question What does a 4-element tuple argument for 'bbox_to_anchor' mean in matplotlib? .

If you want to specify the legend position in other coordinates than axes coordinates, you can do so by using the `bbox_transform` argument. If may make sense to use figure coordinates

``````ax.legend(bbox_to_anchor=(1,0), loc="lower right",  bbox_transform=fig.transFigure)
``````

It may not make too much sense to use data coordinates, but since you asked for it this would be done via `bbox_transform=ax.transData`.

• Sorry - one more thing: in the coordinates of the figure and in the first image, say, the upper right corner of the legend seems to be located at (2.2,2). Is there a way to tell matplotlib to interpret the bbox_to_anchor coordinates in that format? – mzzx Jun 7 '17 at 14:26
• You want to bind the legend position to the data coordinates? It's possible, but I can't think of any reason to do that. In contrast there are a lot of reasons not to do it. E.g. you loose the legend when zooming, you would need to resposition the legend when plotting different datasets etc. – ImportanceOfBeingErnest Jun 7 '17 at 14:30
• Yes, I would like to bind it to the data coordinates if possible. I sometimes paste my plots into larger plot environments with other matplotlib plots. To do that, I normally create small axes objects for each of these smaller plots and place them in the larger figure, and play around with the configuration manually. Somehow when I bind stuff to the axes that playing doesn't work because individual items end up all over the place and it takes me hours. (I guess people said I should use inkscape for the final setup, but I'd rather do it in matplotlib if I can.) – mzzx Jun 7 '17 at 14:37
• In case it really takes you longer to position the legend in axes coordinates than in data coordinates, something else must be wrong with the way you are creating your plots. Independent of whether you have small or big axes or how many axes you have, using axes coordinates is always better. (There are reasons to use figure coordinates though), but using data coordinates appears really really strange to me. I updated the answer accodingly. – ImportanceOfBeingErnest Jun 7 '17 at 14:48
• This: bbox_transform=fig.transFigure this finally made my day! Thanks! – Red Sparrow Aug 22 '18 at 10:35

You can change location of legend using loc argument. https://matplotlib.org/api/pyplot_api.html#matplotlib.pyplot.legend

``````import matplotlib.pyplot as plt

plt.subplot(211)
plt.plot([1,2,3], label="test1")
plt.plot([3,2,1], label="test2")
# Place a legend above this subplot, expanding itself to
# fully use the given bounding box.
plt.legend(bbox_to_anchor=(0., 1.02, 1., .102), loc=3,

plt.subplot(223)
plt.plot([1,2,3], label="test1")
plt.plot([3,2,1], label="test2")
# Place a legend to the right of this smaller subplot.

plt.show()
``````
• Sorry - how to the bbox_to_anchor and loc keywords interact? Will bbox_to_anchor place the legend at a position within the loc environment? – mzzx Jun 7 '17 at 13:30
• loc argument will inform matplotlib which part of the bounding box of the legend should be placed at the arguments of bbox_to_anchor. – Drahoš Maďar Jun 7 '17 at 13:34
• Thank you!! This was helpful - I'm accepting the other answer because it has more detail and also links to a more detailed thread. – mzzx Jun 7 '17 at 14:04
• @mzzx if you find this answer helpful (independent of whether you accept it or not) you may still upvote - which is kind of the same as saying "thanks". – ImportanceOfBeingErnest Jun 7 '17 at 14:08

In addition to @ImportanceOfBeingErnest's post, I use the following line to add a legend at an absolute position in a plot.

``````plt.legend(bbox_to_anchor=(1.0,1.0),\
bbox_transform=plt.gcf().transFigure)
``````

For unknown reasons, `bbox_transform=fig.transFigure` does not work with me.