## Hot answers tagged matplotlib

3

TL;DR There is a bug in the following line of mathtext.py Line 727. It relates the right parenthesis at size Bigg to an index '\x21', but this is the index for an exclamation point. The line with a bit of context reads
_size_alternatives = {
'(' : [('rm', '('), ('ex', '\xa1'), ('ex', '\xb3'),
('ex', '\xb5'), ('ex', ...

3

Here is the shortest piece of code I was able to write to get this unexpected behavior:
import matplotlib.mathtext as mt
s = r'$\left(\frac{\frac{\frac{M}{I}}{N}}' \
r'{\frac{\frac{B}{U}}{G}}\right)$'
parser = mt.MathTextParser("Bitmap")
for size in range(1, 30):
filename = "figure{0}.png".format(size)
parser.to_png(filename, s, fontsize=size)
...

3

Not entirely sure what you mean, but would this suffice?
from datetime import datetime
from datetime import timedelta
for tau in range(0,10):
d_abrv = "d" + str(tau)
day = "day" +str(tau)
d_abrv = (datetime.now() + timedelta(days=tau))
day = d_abrv.strftime('%a %d-%b-%y')
image_date = d_abrv.strftime('%Y%m%d')
plt.savefig(homedir + ...

3

You can use numpy.tril_indices() to assign the NaN value to lower triangle, e.g.:
>>> import numpy as np
>>> m = np.triu(np.arange(0, 12, dtype=np.float).reshape(4,3))
>>> m
array([[ 0., 1., 2.],
[ 0., 4., 5.],
[ 0., 0., 8.],
[ 0., 0., 0.]])
>>> m[np.tril_indices(m.shape[0], -1)] = np.nan
...

3

When using numpy arrays, you shouldn't use math functions. Try use numpy functions:
sine = numpy.sin(2*numpy.pi*f0*t))
As for the getShape() issue, as the error message says there is no attribute with that name. Try:
print(t.shape)

3

You need to manually specify the levels for your plot, otherwise matplotlib will determine the levels for you, which is clearly not what you want.
z = np.load('heights.npy')
plt.contour(np.transpose(z),np.linspace(z.min(),z.max(),25))
plt.title('even contour lines')
plt.savefig('myFig2.png', format='png')
This will set the contour levels such that it ...

3

With gnuplot you can use the row number as x-value and use the value from the first column as xtic labels:
plot 'data.txt' using 0:2:xtic(1) w lp pt 7 lw 2

3

Don't confuse PCA with dimensionality reduction.
PCA is a rotation transformation that aligns the data with the axes in such a way that the first dimension has maximum variance, the second maximum variance among the remainder, etc. Rotations preserve pairwise distances.
When you use PCA for dimensionality reduction, you discard dimensions of your rotated ...

3

IIUC you can generate a colormap of kcolors with a function like the following:
def colormapgenerator(N, cm=None):
base = plt.cm.get_cmap(cm)
color_list = base(np.linspace(0, 1, N))
cm_name = base.name + str(N)
return base.from_list(cm_name, color_list, N)
where cm is your desidered cmap (e.g. Blues, Reds etc), and N is the number of ...

2

If your primary use case is the scipy stack, for example as a Matlab replacement. I would highly recommend using the Anaconda distribution. It is brilliant for new comers, a large majority of what you are likely after comes pre installed.
Download it here:
https://www.continuum.io/downloads#_macosx
I would recommend picking the python 3 64bit installer. A ...

2

Take a look at this page: http://matplotlib.org/users/gridspec.html
It looks like the syntax you are after is
plt.subplot2grid((3,3), (1, 0), colspan=2)

2

You have to "peel" the figure:
labels = [label.get_text() for label in ax.legend().texts for ax in fig.axes]

2

What you want is the ax.view_init function, with elev=90. See this answer
Edit:
after adding ax.view_init(azim=0, elev=90) to your script, I get this:

2

You need pcolor for that:
import matplotlib.pyplot as plt
import numpy as np
dx, dy = 0.25, 0.25
y, x = np.mgrid[slice(-5, 5 + dy, dy),
slice(-5, 5 + dx, dx)]
R = np.sqrt(x**2 + y**2)
z = np.sin(R)
z = z[:-1, :-1]
z_min, z_max = -np.abs(z).max(), np.abs(z).max()
plt.subplot()
plt.pcolor(x, y, z, cmap='RdBu', vmin=z_min, vmax=z_max)
...

2

You get that error because matplotlib and its objects are completely unaware of seaborn functions.
Pass your axes objects (i.e., ax1 and ax2) to seaborn.regplot or you can skip defining those and use the col kwarg of seaborn.lmplot
With your same imports, pre-defining your axes and using regplot looks like this:
# create df
x = np.linspace(0, 2 * np.pi, ...

2

Why use a ndarray for Z, instead of a (360, 360) np.array ?
Replace this line
Z = np.ndarray([func(x, y) for (x, y) in zip(X, Y)])
with
Z = np.array([func(x, y) for (x, y) in zip(X, Y)])
See the difference between np.array() and np.ndarray()
t1 = np.ndarray([0, 1, 2, 3, 4])
t1.shape
Out[39]: (0, 1, 2, 3, 4)
t2 = np.array([0, 1, 2, 3, 4])
t2.shape
...

2

You can use matplotlib's imshow function to do this. You just need to normalise your array from 0 - 255 to 0 - 1, then you can feed imshow your MxNx3 array.
Here's a simple example:
import matplotlib.pyplot as plt
import numpy as np
fig,ax=plt.subplots(1,subplot_kw={'aspect':'equal'})
# A small 3x3 sample array
imarray=np.array([
...

2

I think the following does what you want. Note that you use the returned handle to the first imshow and add it to the axis for the insert. You need to make a copy so you have a separate handle for each figure,
import matplotlib.pyplot as plt
from mpl_toolkits.axes_grid1.inset_locator import zoomed_inset_axes
from mpl_toolkits.axes_grid1.inset_locator ...

2

It is not using a muted color, its using an alpha/transparency value as part of the default.
Two answers referencing ways to modify matplotlib object transparency:
http://stackoverflow.com/a/4708018
http://stackoverflow.com/a/24549558

2

A little longer code then sega_sai's answer but faster and to my experience much better for more complex surfaces.
Use plot_surface to plot a flat surface where you want it and facecolors to color it with the values you want
You might need to make your data smoother with scipy's zoom
from mpl_toolkits.mplot3d import axes3d
import matplotlib.pyplot as ...

1

You can also play with the bbox property directly at function's call:
plt.table(cellText=[[1,2],[42,1]],
rowLabels=["A","B"],
colLabels=["1","2"],
loc="bottom",
bbox=[0,-0.2,1,0.15],
Where bbox is : [left, bottom, width, height]
So you can put the table a bit lower (-0.2), and setting the height to 0.15 (<0.2) ...

1

Observe that doing the opposite, that is putting a raster on the sea and lay a mask over the continents, is easy as pie. Simply use map.fillcontinents(). So the basic idea of this solution is to modify the fillcontinents function so that it lays polygons over the oceans.
The steps are:
Create a large circle-like polygon that covers the entire globe.
...

1

seaborn.distplot allows you to pass different parameters for styling (*_kws). Each plot function has it's own parameters and are therefor prefixed by the name of the plot. Eg. histogram has hist_kws. [distplot Reference]
Because the histogram plot is located in matplotlib, we'd have to look at the keyword parameters we can pass. Like you already figured ...

1

tril_indices() might be the obvious approach here that generates the lower triangular indices and then you can use those to set those in input array to NaNs.
Now, if you care about performance, you can use boolean indexing after creating a mask of such lower triangular shape and then set those to NaNs. The implementation would look like this -
...

1

Pass the ax to the secondary plot function and set secondary_y to True.
ax = df['Close'].plot(); sp['Close'].plot(ax=ax, secondary_y=True)

1

Using tom's answer and the post hereafter, the local settings for an Ubuntu-like OS is :
import datetime
import locale
locale.setlocale(locale.LC_ALL,'en_US.utf8')
The list of available languages can be obtained in bash with
$ local -a

1

The code from the answer you linked, works well. It looks like you changed a few things which meant it didn't work.
The main problem you have is you are trying to set set_xticklabels and set_yticklabels to a list here
ax.set_xticklabels = ax.set_yticklabels = headers[1:]
However, they are methods of the Axes object (ax), so you have to call them, with ...

1

You can use numpy.ma.mask_where to preserve the array shape, e.g.
import numpy as np
import matplotlib.pyplot as plt
lowerBound = 0.25
upperBound = 0.75
myMatrix = np.random.rand(100,100)
myMatrix =np.ma.masked_where((lowerBound < myMatrix) &
(myMatrix < upperBound), myMatrix)
fig,axs=plt.subplots(2,1)
#Plot ...

1

You can try set_xlim() (called AFTER the plot)
This should force your x-axis to stay between 0.5 and 1, and I believe it will scale it automatically.
set_xlim(0.5,1)
would go after you define Plot.
Best of luck, and happy coding!

1

That seems a problem with matplotlib. You can try changing the backend to Agg in the matplotlibrc file (so that it saves a file instead of displaying the result):
http://matplotlib.org/users/customizing.html

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