# Matplotlib interfering with NumPy (on Windows)

The issue described below has been replicated

Say you have the following
``````import numpy as np
import matplotlib.pyplot as plt

x = np.random.randint(5, size=(100, 12), dtype=np.int64)
# [THERE IS ACTUALLY NO NEED TO SET THE DATA TYPE
# `x = np.random.rand(100, 12)` yields the same problem]
``````

and you want to compute `x`'s rank.

``````>>> np.linalg.matrix_rank(x)
12
``````

Everything is fine. Let's restart a new session from scratch, whose underlying code this time is

``````import numpy as np
import matplotlib.pyplot as plt

np.random.seed(1010)  # <-----
x               = np.random.randint(5, size=(100, 12), dtype=np.int64)
x_vals = y_vals = np.arange(0, .5, .05)

plt.plot(x_vals, y_vals, linestyle='--')

print(np.linalg.matrix_rank(x))
``````

This prints `0` (!!). And more surprisingly, the reason behind this is the value given to `linestyle` (!!). I mean, having `linestyle='-'` (solid) turns everything back to normal.

This is clearly an undesired behavior (I literally spent hours to locate precisely)... but still:

How ?

This occurs under Windows 10 with Python3.7.3
``````numpy==1.19.2      # since 1.19.0 actually
matplotlib==3.3.3  # between 3.1.3 and 3.3.3 for what I can tell
``````

No problem under Linux (with the same environment)

Other precisions
1. This does not occur for all `x`'s shape. Hard to tell exactly. However, this is not random either, and is monotonously linked to `x`'s (vertical and/or horizontal) shape.
2. The issue is transposition-invariant.
3. `x` is exactly the same when compared to itself before `plt.plot` is called (compared using `joblib.hash`)

This question is more about leaving a trace than getting an answer. This is so weird that I had to write it somewhere. I've changed my `linestyle`...

The title of the question is sufficiently unequivocal to drive people with the same problem as mine here.

Another screen capture:

The GIF's code follows.

``````import numpy as np
import matplotlib.pyplot as plt
import joblib as jl

linestyles = [
'solid', '-',
'dotted',  # '.', => ValueError: '.'
'dashed', '--',
'dashdot', '-.',
':', '', ' '
]

for ls in linestyles:
print(26*'*', f"linestyle='{ls}'")

np.random.seed(1010)
x  = np.random.rand(9, 5)
h0 = jl.hash(x)

x_vals = y_vals = np.arange(0, .5, .05)
plt.plot(x_vals, y_vals, linestyle=ls)
# plt.show()

h1 = jl.hash(x)
mr = np.linalg.matrix_rank(x)
print(
'\t', mr, (not mr)*'<---------------[!!!]'
)
print('\t', 'Has not changed:', h0 == h1)
``````

## 1 Answer

Investigation

As pointed out by @user2357112supportsMonica, the story's deepest fiber is related to `numpy.linalg.svd`, which fails to converge for some reasons.

``````import numpy as np
import matplotlib.pyplot as plt
import joblib as jl

linestyles = [
('-.',                    '-.'),
(':',                     ':'),
('solid',                 'solid'),     # Same as (0, ()) or '-'
('dotted',                'dotted'),    # Same as (0, (1, 1)) or '.'
('dashed',                'dashed'),    # Same as '--'
('dashdot',               'dashdot'),

('loosely dotted',        (0, (1, 10))),
('dotted',                (0, (1, 1))),
('densely dotted',        (0, (1, 1))),

('loosely dashed',        (0, (5, 10))),
('dashed',                (0, (5, 5))),
('densely dashed',        (0, (5, 1))),

('loosely dashdotted',    (0, (3, 10, 1, 10))),
('dashdotted',            (0, (3, 5, 1, 5))),
('densely dashdotted',    (0, (3, 1, 1, 1))),

('dashdotdotted',         (0, (3, 5, 1, 5, 1, 5))),
('loosely dashdotdotted', (0, (3, 10, 1, 10, 1, 10))),
('densely dashdotdotted', (0, (3, 1, 1, 1, 1, 1)))
]

x_vals = y_vals = np.arange(0, .5, .05)

for name, tuple_ in linestyles:
print(f"linestyle='{name}'")

np.random.seed(1010)
x  = np.random.rand(9, 5)
h0 = jl.hash(x)

plt.plot(x_vals, y_vals, linestyle=tuple_)
# plt.show()

try:
_ = np.linalg.svd(x)
except np.linalg.LinAlgError as err:
print(
4*' ', err, '|', 'Has not changed:',
h0 == jl.hash(x)
)
``````

Shell's output

``````======== RESTART: D:\matplotlib-interfering-with-numpy-on-windows.py ========
linestyle='-.'
SVD did not converge | Has not changed: True
linestyle=':'
SVD did not converge | Has not changed: True
linestyle='solid'
linestyle='dotted'
SVD did not converge | Has not changed: True
linestyle='dashed'
SVD did not converge | Has not changed: True
linestyle='dashdot'
SVD did not converge | Has not changed: True
linestyle='loosely dotted'
linestyle='dotted'
linestyle='densely dotted'
linestyle='loosely dashed'
linestyle='dashed'
linestyle='densely dashed'
linestyle='loosely dashdotted'
linestyle='dashdotted'
linestyle='densely dashdotted'
linestyle='dashdotdotted'
linestyle='loosely dashdotdotted'
linestyle='densely dashdotdotted'
``````

Traceback

The uncaught traceback is:

``````Traceback (most recent call last):
File "D:\matplotlib-interfering-with-numpy-on-windows.py", line 25, in <module>
mr = np.linalg.svd(x)
File "<__array_function__ internals>", line 6, in svd
File "███████████\lib\site-packages\numpy\linalg\linalg.py", line 1661, in svd
u, s, vh = gufunc(a, signature=signature, extobj=extobj)
File "███████████\lib\site-packages\numpy\linalg\linalg.py", line 97, in _raise_linalgerror_svd_nonconvergence
raise LinAlgError("SVD did not converge")
numpy.linalg.LinAlgError: SVD did not converge
``````

Digging down drives to `███████████\lib\site-packages\numpy\linalg\_umath_linalg.cp37-win_amd64.pyd`. Hard to dig further.

• It's only locked temporarly because the comments were very active after asking to move to chat. You could flag the remaining comment for `moderator attention`. Chat login works for me just by following the provided link. All posts are still available there, most importantly the notice that this is reproducible. – Michael Szczesny Nov 19 '20 at 9:40
• @MichaelSzczesny Yep I know that. I have time for this today... Not tomorrow. And I think that the raised issue is so weird that its credibility is really low. Having to dig in the chat does not favor its consideration. In my case, when following the link, I am told You must be logged in to talk... I am logged in. – keepAlive Nov 19 '20 at 9:45
• The underlying bug has already been reported. This is mentioned in the github issue. – Michael Szczesny Nov 19 '20 at 12:02