# How do I plot in real-time in a while loop?

I am trying to plot some data from a camera in real time using OpenCV. However, the real-time plotting (using matplotlib) doesn't seem to be working.

I've isolated the problem into this simple example:

``````fig = plt.figure()
plt.axis([0, 1000, 0, 1])

i = 0
x = list()
y = list()

while i < 1000:
temp_y = np.random.random()
x.append(i)
y.append(temp_y)
plt.scatter(i, temp_y)
i += 1
plt.show()
``````

I would expect this example to plot 1000 points individually. What actually happens is that the window pops up with the first point showing (ok with that), then waits for the loop to finish before it populates the rest of the graph.

Any thoughts why I am not seeing points populated one at a time?

Here's the working version of the code in question (requires at least version Matplotlib 1.1.0 from 2011-11-14):

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

plt.axis([0, 10, 0, 1])

for i in range(10):
y = np.random.random()
plt.scatter(i, y)
plt.pause(0.05)

plt.show()
``````

Note the call to `plt.pause(0.05)`, which both draws the new data and runs the GUI's event loop (allowing for mouse interaction).

• This worked for me in Python2. In Python3 it did not. It would pause the loop after rendering the plot window. But after moving the plt.show() method to after the loop... it resolved it for Python3, for me. Commented Sep 5, 2014 at 18:36
• Weird, worked okay for me in Python 3 (ver 3.4.0) Matplotlib (ver 1.3.1) Numpy (ver 1.8.1) Ubuntu Linux 3.13.0 64-bit Commented Sep 12, 2014 at 14:58
• instead of plt.show() and plt.draw() just replace plt.draw() with plt.pause(0.1) Commented Sep 25, 2014 at 22:17
• Did not work on Win64/Anaconda matplotlib.__version__ 1.5.0. An initial figure window opened, but did not display anything, it remained in a blocked state until I closed it Commented Feb 4, 2016 at 8:39
• This answer requires a-priori knowledge of the x/y data... which is not needed: I prefer 1. don't call `plt.axis()` but instead create two lists x and y and call `plt.plot(x,y)` 2. in your loop, append new data values to the two lists 3. call `plt.gca().lines[0].set_xdata(x); plt.gca().lines[0].set_ydata(y); plt.gca().relim(); plt.gca().autoscale_view(); plt.pause(0.05);` Commented Apr 13, 2016 at 18:09

If you're interested in realtime plotting, I'd recommend looking into matplotlib's animation API. In particular, using `blit` to avoid redrawing the background on every frame can give you substantial speed gains (~10x):

``````#!/usr/bin/env python

import numpy as np
import time
import matplotlib
matplotlib.use('GTKAgg')
from matplotlib import pyplot as plt

def randomwalk(dims=(256, 256), n=20, sigma=5, alpha=0.95, seed=1):
""" A simple random walk with memory """

r, c = dims
gen = np.random.RandomState(seed)
pos = gen.rand(2, n) * ((r,), (c,))
old_delta = gen.randn(2, n) * sigma

while True:
delta = (1. - alpha) * gen.randn(2, n) * sigma + alpha * old_delta
pos += delta
for ii in xrange(n):
if not (0. <= pos[0, ii] < r):
pos[0, ii] = abs(pos[0, ii] % r)
if not (0. <= pos[1, ii] < c):
pos[1, ii] = abs(pos[1, ii] % c)
old_delta = delta
yield pos

def run(niter=1000, doblit=True):
"""
Display the simulation using matplotlib, optionally using blit for speed
"""

fig, ax = plt.subplots(1, 1)
ax.set_aspect('equal')
ax.set_xlim(0, 255)
ax.set_ylim(0, 255)
ax.hold(True)
rw = randomwalk()
x, y = rw.next()

plt.show(False)
plt.draw()

if doblit:
# cache the background
background = fig.canvas.copy_from_bbox(ax.bbox)

points = ax.plot(x, y, 'o')[0]
tic = time.time()

for ii in xrange(niter):

# update the xy data
x, y = rw.next()
points.set_data(x, y)

if doblit:
# restore background
fig.canvas.restore_region(background)

# redraw just the points
ax.draw_artist(points)

# fill in the axes rectangle
fig.canvas.blit(ax.bbox)

else:
# redraw everything
fig.canvas.draw()

plt.close(fig)
print "Blit = %s, average FPS: %.2f" % (
str(doblit), niter / (time.time() - tic))

if __name__ == '__main__':
run(doblit=False)
run(doblit=True)
``````

Output:

``````Blit = False, average FPS: 54.37
Blit = True, average FPS: 438.27
``````
• @bejota The original version was designed to work within an interactive matplotlib session. To make it work as a standalone script, it's necessary to 1) explicitly select a backend for matplotlib, and 2) to force the figure to be displayed and drawn before entering the animation loop using `plt.show()` and `plt.draw()`. I've added these changes to the code above. Commented Feb 2, 2015 at 10:41
• Is the intent/motivation of the `blit()` seems very much to be "improve real-time plotting"? If you have a matplotlib developer/blog discussing the why/purpose/intent/motivation that would be great. (seems like this new blit operation would convert Matplotlib from only use for offline or very slowly changing data to now you can use Matplotlib with very fast updating data... almost like an oscilloscope). Commented Apr 14, 2016 at 13:43
• I have found that this approach makes the plot window unresponsive: I cannot interact with it, and doing so may crash it. Commented Dec 29, 2016 at 4:44
• For those getting "gtk not found" issue, it works fine with a different back-end (I used 'TKAgg'). To find a supported backed I used this solution: stackoverflow.com/questions/3285193/… Commented Apr 26, 2017 at 0:15
• The link in this answer doesn't seem to work anymore. This might be an up-to-date link: scipy-cookbook.readthedocs.io/items/… Commented Jul 21, 2017 at 14:00

I know I'm a bit late to answer this question. Nevertheless, I've made some code a while ago to plot live graphs, that I would like to share:

Code for PyQt4:

``````###################################################################
#                                                                 #
#                    PLOT A LIVE GRAPH (PyQt4)                    #
#                  -----------------------------                  #
#            EMBED A MATPLOTLIB ANIMATION INSIDE YOUR             #
#            OWN GUI!                                             #
#                                                                 #
###################################################################

import sys
import os
from PyQt4 import QtGui
from PyQt4 import QtCore
import functools
import numpy as np
import random as rd
import matplotlib
matplotlib.use("Qt4Agg")
from matplotlib.figure import Figure
from matplotlib.animation import TimedAnimation
from matplotlib.lines import Line2D
from matplotlib.backends.backend_qt4agg import FigureCanvasQTAgg as FigureCanvas
import time

def setCustomSize(x, width, height):
sizePolicy = QtGui.QSizePolicy(QtGui.QSizePolicy.Fixed, QtGui.QSizePolicy.Fixed)
sizePolicy.setHorizontalStretch(0)
sizePolicy.setVerticalStretch(0)
sizePolicy.setHeightForWidth(x.sizePolicy().hasHeightForWidth())
x.setSizePolicy(sizePolicy)
x.setMinimumSize(QtCore.QSize(width, height))
x.setMaximumSize(QtCore.QSize(width, height))

''''''

class CustomMainWindow(QtGui.QMainWindow):

def __init__(self):

super(CustomMainWindow, self).__init__()

# Define the geometry of the main window
self.setGeometry(300, 300, 800, 400)
self.setWindowTitle("my first window")

# Create FRAME_A
self.FRAME_A = QtGui.QFrame(self)
self.FRAME_A.setStyleSheet("QWidget { background-color: %s }" % QtGui.QColor(210,210,235,255).name())
self.LAYOUT_A = QtGui.QGridLayout()
self.FRAME_A.setLayout(self.LAYOUT_A)
self.setCentralWidget(self.FRAME_A)

# Place the zoom button
self.zoomBtn = QtGui.QPushButton(text = 'zoom')
setCustomSize(self.zoomBtn, 100, 50)
self.zoomBtn.clicked.connect(self.zoomBtnAction)

# Place the matplotlib figure
self.myFig = CustomFigCanvas()

# Add the callbackfunc to ..
myDataLoop.start()

self.show()

''''''

def zoomBtnAction(self):
print("zoom in")
self.myFig.zoomIn(5)

''''''

# print("Add data: " + str(value))

''' End Class '''

class CustomFigCanvas(FigureCanvas, TimedAnimation):

def __init__(self):

print(matplotlib.__version__)

# The data
self.xlim = 200
self.n = np.linspace(0, self.xlim - 1, self.xlim)
a = []
b = []
a.append(2.0)
a.append(4.0)
a.append(2.0)
b.append(4.0)
b.append(3.0)
b.append(4.0)
self.y = (self.n * 0.0) + 50

# The window
self.fig = Figure(figsize=(5,5), dpi=100)

# self.ax1 settings
self.ax1.set_xlabel('time')
self.ax1.set_ylabel('raw data')
self.line1 = Line2D([], [], color='blue')
self.line1_tail = Line2D([], [], color='red', linewidth=2)
self.line1_head = Line2D([], [], color='red', marker='o', markeredgecolor='r')
self.ax1.set_xlim(0, self.xlim - 1)
self.ax1.set_ylim(0, 100)

FigureCanvas.__init__(self, self.fig)
TimedAnimation.__init__(self, self.fig, interval = 50, blit = True)

def new_frame_seq(self):
return iter(range(self.n.size))

def _init_draw(self):
for l in lines:
l.set_data([], [])

def zoomIn(self, value):
bottom = self.ax1.get_ylim()[0]
top = self.ax1.get_ylim()[1]
bottom += value
top -= value
self.ax1.set_ylim(bottom,top)
self.draw()

def _step(self, *args):
# Extends the _step() method for the TimedAnimation class.
try:
TimedAnimation._step(self, *args)
except Exception as e:
self.abc += 1
print(str(self.abc))
TimedAnimation._stop(self)
pass

def _draw_frame(self, framedata):
margin = 2
self.y = np.roll(self.y, -1)

self.line1.set_data(self.n[ 0 : self.n.size - margin ], self.y[ 0 : self.n.size - margin ])
self.line1_tail.set_data(np.append(self.n[-10:-1 - margin], self.n[-1 - margin]), np.append(self.y[-10:-1 - margin], self.y[-1 - margin]))
self.line1_head.set_data(self.n[-1 - margin], self.y[-1 - margin])

''' End Class '''

# You need to setup a signal slot mechanism, to
# Believe me, if you don't do this right, things
# go very very wrong..
class Communicate(QtCore.QObject):
data_signal = QtCore.pyqtSignal(float)

''' End Class '''

# Setup the signal-slot mechanism.
mySrc = Communicate()

# Simulate some data
n = np.linspace(0, 499, 500)
y = 50 + 25*(np.sin(n / 8.3)) + 10*(np.sin(n / 7.5)) - 5*(np.sin(n / 1.5))
i = 0

while(True):
if(i > 499):
i = 0
time.sleep(0.1)
mySrc.data_signal.emit(y[i]) # <- Here you emit a signal!
i += 1
###
###

if __name__== '__main__':
app = QtGui.QApplication(sys.argv)
QtGui.QApplication.setStyle(QtGui.QStyleFactory.create('Plastique'))
myGUI = CustomMainWindow()
sys.exit(app.exec_())

''''''
``````

I recently rewrote the code for PyQt5.
Code for PyQt5:

``````###################################################################
#                                                                 #
#                    PLOT A LIVE GRAPH (PyQt5)                    #
#                  -----------------------------                  #
#            EMBED A MATPLOTLIB ANIMATION INSIDE YOUR             #
#            OWN GUI!                                             #
#                                                                 #
###################################################################

import sys
import os
from PyQt5.QtWidgets import *
from PyQt5.QtCore import *
from PyQt5.QtGui import *
import functools
import numpy as np
import random as rd
import matplotlib
matplotlib.use("Qt5Agg")
from matplotlib.figure import Figure
from matplotlib.animation import TimedAnimation
from matplotlib.lines import Line2D
from matplotlib.backends.backend_qt5agg import FigureCanvasQTAgg as FigureCanvas
import time

class CustomMainWindow(QMainWindow):
def __init__(self):
super(CustomMainWindow, self).__init__()
# Define the geometry of the main window
self.setGeometry(300, 300, 800, 400)
self.setWindowTitle("my first window")
# Create FRAME_A
self.FRAME_A = QFrame(self)
self.FRAME_A.setStyleSheet("QWidget { background-color: %s }" % QColor(210,210,235,255).name())
self.LAYOUT_A = QGridLayout()
self.FRAME_A.setLayout(self.LAYOUT_A)
self.setCentralWidget(self.FRAME_A)
# Place the zoom button
self.zoomBtn = QPushButton(text = 'zoom')
self.zoomBtn.setFixedSize(100, 50)
self.zoomBtn.clicked.connect(self.zoomBtnAction)
# Place the matplotlib figure
self.myFig = CustomFigCanvas()
# Add the callbackfunc to ..
myDataLoop.start()
self.show()
return

def zoomBtnAction(self):
print("zoom in")
self.myFig.zoomIn(5)
return

# print("Add data: " + str(value))
return

''' End Class '''

class CustomFigCanvas(FigureCanvas, TimedAnimation):
def __init__(self):
print(matplotlib.__version__)
# The data
self.xlim = 200
self.n = np.linspace(0, self.xlim - 1, self.xlim)
a = []
b = []
a.append(2.0)
a.append(4.0)
a.append(2.0)
b.append(4.0)
b.append(3.0)
b.append(4.0)
self.y = (self.n * 0.0) + 50
# The window
self.fig = Figure(figsize=(5,5), dpi=100)
# self.ax1 settings
self.ax1.set_xlabel('time')
self.ax1.set_ylabel('raw data')
self.line1 = Line2D([], [], color='blue')
self.line1_tail = Line2D([], [], color='red', linewidth=2)
self.line1_head = Line2D([], [], color='red', marker='o', markeredgecolor='r')
self.ax1.set_xlim(0, self.xlim - 1)
self.ax1.set_ylim(0, 100)
FigureCanvas.__init__(self, self.fig)
TimedAnimation.__init__(self, self.fig, interval = 50, blit = True)
return

def new_frame_seq(self):
return iter(range(self.n.size))

def _init_draw(self):
for l in lines:
l.set_data([], [])
return

return

def zoomIn(self, value):
bottom = self.ax1.get_ylim()[0]
top = self.ax1.get_ylim()[1]
bottom += value
top -= value
self.ax1.set_ylim(bottom,top)
self.draw()
return

def _step(self, *args):
# Extends the _step() method for the TimedAnimation class.
try:
TimedAnimation._step(self, *args)
except Exception as e:
self.abc += 1
print(str(self.abc))
TimedAnimation._stop(self)
pass
return

def _draw_frame(self, framedata):
margin = 2
self.y = np.roll(self.y, -1)

self.line1.set_data(self.n[ 0 : self.n.size - margin ], self.y[ 0 : self.n.size - margin ])
self.line1_tail.set_data(np.append(self.n[-10:-1 - margin], self.n[-1 - margin]), np.append(self.y[-10:-1 - margin], self.y[-1 - margin]))
self.line1_head.set_data(self.n[-1 - margin], self.y[-1 - margin])
return

''' End Class '''

# You need to setup a signal slot mechanism, to
# Believe me, if you don't do this right, things
# go very very wrong..
class Communicate(QObject):
data_signal = pyqtSignal(float)

''' End Class '''

# Setup the signal-slot mechanism.
mySrc = Communicate()

# Simulate some data
n = np.linspace(0, 499, 500)
y = 50 + 25*(np.sin(n / 8.3)) + 10*(np.sin(n / 7.5)) - 5*(np.sin(n / 1.5))
i = 0

while(True):
if(i > 499):
i = 0
time.sleep(0.1)
mySrc.data_signal.emit(y[i]) # <- Here you emit a signal!
i += 1
###
###

if __name__== '__main__':
app = QApplication(sys.argv)
QApplication.setStyle(QStyleFactory.create('Plastique'))
myGUI = CustomMainWindow()
sys.exit(app.exec_())
``````

Just try it out. Copy-paste this code in a new python-file, and run it. You should get a beautiful, smoothly moving graph:

• I noticed that the `dataSendLoop` thread kept running in the background when you close the window. So I added the `daemon = True` keyword to solve that issue. Commented Sep 26, 2016 at 9:21
• The virtual environment for this took a bit of work. Finally, `conda install pyqt=4` did the trick. Commented Jun 29, 2018 at 4:20
• Thanks a lot for the basic code. It helped me to build up some simple UI by modifying and adding features around based on your code. It saved my time = ] Commented Dec 18, 2018 at 0:30
• @DavidCian, There is no better alternative that a post with working code
– Paul
Commented May 19, 2022 at 1:56
• @Paul Cool, here it is, from my own use case. If working code was always good code, software engineering wouldn't be a thing ;). As it turns out, in fact, PyQtGraph objectively is better, as it is designed for online plotting from the get-go, very much unlike Matplotlib. Commented May 19, 2022 at 12:27

The top (and many other) answers were built upon `plt.pause()`, but that was an old way of animating the plot in matplotlib. It is not only slow, but also causes focus to be grabbed upon each update (I had a hard time stopping the plotting python process).

TL;DR: you may want to use `matplotlib.animation` (as mentioned in documentation).

After digging around various answers and pieces of code, this in fact proved to be a smooth way of drawing incoming data infinitely for me.

Here is my code for a quick start. It plots current time with a random number in [0, 100) every 200ms infinitely, while also handling auto rescaling of the view:

``````from datetime import datetime
from matplotlib import pyplot
from matplotlib.animation import FuncAnimation
from random import randrange

x_data, y_data = [], []

figure = pyplot.figure()
line, = pyplot.plot_date(x_data, y_data, '-')

def update(frame):
x_data.append(datetime.now())
y_data.append(randrange(0, 100))
line.set_data(x_data, y_data)
figure.gca().relim()
figure.gca().autoscale_view()
return line,

animation = FuncAnimation(figure, update, interval=200)

pyplot.show()
``````

You can also explore `blit` for even better performance as in FuncAnimation documentation.

An example from the `blit` documentation:

``````import numpy as np
import matplotlib.pyplot as plt
from matplotlib.animation import FuncAnimation

fig, ax = plt.subplots()
xdata, ydata = [], []
ln, = plt.plot([], [], 'ro')

def init():
ax.set_xlim(0, 2*np.pi)
ax.set_ylim(-1, 1)
return ln,

def update(frame):
xdata.append(frame)
ydata.append(np.sin(frame))
ln.set_data(xdata, ydata)
return ln,

ani = FuncAnimation(fig, update, frames=np.linspace(0, 2*np.pi, 128),
init_func=init, blit=True)
plt.show()
``````
• Hi, what will happen if this was all in a loop. say `for i in range(1000): x,y = some func_func()`. Here `some_func()` generates online `x,y` data pairs, which I would like to plot once they are available. Is it possible to do this with `FuncAnimation`. My goal is to build the curve defined by the data step by step with each iteration. Commented Aug 23, 2018 at 14:30
• @Alexander Cska `pyploy.show()` should block. If you want to append data, retrieve them and update in the `update` function. Commented Aug 23, 2018 at 22:37
• I mean, if you call `pyplot.show` in a loop, the loop will be blocked by this call and will not continue. If you want to append data to the curve step by step, put your logic in `update`, which will be called every `interval` so it's also step-by-step. Commented Aug 24, 2018 at 20:16
• Zhang's code works from the console but not in jupyter. I just get a blank plot there. In fact, when i populate an array in jupyter in a sequential loop and print the array as it grows with a pet.plot statement, I can get a print out of the arrays individually but only one plot. see this code: gist.github.com/bwanaaa/12252cf36b35fced0eb3c2f64a76cb8a Commented Jan 30, 2020 at 23:46

None of the methods worked for me. But I have found this Real time matplotlib plot is not working while still in a loop

All you need is to add

``````plt.pause(0.0001)
``````

and then you could see the new plots.

So your code should look like this, and it will work

``````import matplotlib.pyplot as plt
import numpy as np
plt.ion() ## Note this correction
fig=plt.figure()
plt.axis([0,1000,0,1])

i=0
x=list()
y=list()

while i <1000:
temp_y=np.random.random();
x.append(i);
y.append(temp_y);
plt.scatter(i,temp_y);
i+=1;
plt.show()
plt.pause(0.0001) #Note this correction
``````
• This opens a new figure / plot window every time for me is there a way to just update the existing figure ? maybe its becuase I am using imshow ? Commented Jan 26, 2016 at 2:27
• @FranciscoVargas if you are using imshow, you need to use set_data, look here: stackoverflow.com/questions/17835302/…
– Oren
Commented Dec 11, 2016 at 7:14

`show` is probably not the best choice for this. What I would do is use `pyplot.draw()` instead. You also might want to include a small time delay (e.g., `time.sleep(0.05)`) in the loop so that you can see the plots happening. If I make these changes to your example it works for me and I see each point appearing one at a time.

• I have very similar part of code, and when I try your solution (draw instead of show and time delay) python does not open a figure window at all, just goes throught the loop... Commented Jan 31, 2016 at 22:02

I know this question is old, but there's now a package available called drawnow on GitHub as "python-drawnow". This provides an interface similar to MATLAB's drawnow -- you can easily update a figure.

An example for your use case:

``````import matplotlib.pyplot as plt
from drawnow import drawnow

def make_fig():
plt.scatter(x, y)  # I think you meant this

plt.ion()  # enable interactivity
fig = plt.figure()  # make a figure

x = list()
y = list()

for i in range(1000):
temp_y = np.random.random()
x.append(i)
y.append(temp_y)  # or any arbitrary update to your figure's data
i += 1
drawnow(make_fig)
``````

python-drawnow is a thin wrapper around `plt.draw` but provides the ability to confirm (or debug) after figure display.

• This makes tk hang somewhere
– chwi
Commented Nov 17, 2015 at 10:49
• If so, file an issue with more context github.com/scottsievert/python-drawnow/issues Commented Nov 18, 2015 at 15:49
• +1 This worked for me for plotting live data per frame of video capture from opencv, while matplotlib froze. Commented Feb 20, 2017 at 1:58
• I tried this and it seemed slower than other methods. Commented Dec 3, 2018 at 23:50
• dont use, my server reboot, matplotlib frozen Commented Apr 4, 2020 at 20:52

Another option is to go with bokeh. IMO, it is a good alternative at least for real-time plots. Here is a bokeh version of the code in the question:

``````from bokeh.plotting import curdoc, figure
import random
import time

def update():
global i
temp_y = random.random()
r.data_source.stream({'x': [i], 'y': [temp_y]})
i += 1

i = 0
p = figure()
r = p.circle([], [])
``````

and for running it:

``````pip3 install bokeh
bokeh serve --show test.py
``````

bokeh shows the result in a web browser via websocket communications. It is especially useful when data is generated by remote headless server processes.

• Yes @samisnotinsane, but needs some modifications. Please refer to the documentations of push_notebook() and related tutorials. Commented Aug 7, 2021 at 10:54

An example use-case to plot the smoothed system load in real-time.

``````import os
import statistics

import matplotlib.pyplot as plt

fig = plt.figure()

i = 0
x, y = [], []
maxlen = 100

while True:
x.append(i)
y[-1] = statistics.mean(y[-3:])  # Smoothing

if len(x) > maxlen:
del x[0]
del y[0]

ax.clear()
ax.plot(x, y, color='b')
ax.set_xlim(left=max(0, i - 50), right=i + 50)

fig.canvas.draw()
fig.canvas.flush_events()
plt.pause(0.05)

i += 1
``````
• It really starts to slow down after about 2 minutes. What could the reason be? Perhaps earlier points, which fall outside the current view, should be dropped. Commented Apr 27, 2020 at 12:05
• This looks really nice, but there are a couple of problems with it: 1. it's impossible to quit 2. after just a few minutes the program consumes nearly 100 Mb of RAM and starts slowing down dramatically. Commented Apr 28, 2020 at 14:45
• The reason for the issues in the comments is that the algorithm append the new values without removing the old ones (although it shows only the last 50 steps). It is better to use a queue withmax size to remove old values from the beginning of the array if it excceds the plot limitations (using pop(0) for both x and y) Commented Sep 8, 2021 at 22:02
• Answer has been updated to use a max len. Commented Jul 10 at 20:28

Here is a version that I got to work on my system.

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

def makeFig():
plt.scatter(xList,yList) # I think you meant this

plt.ion() # enable interactivity
fig=plt.figure() # make a figure

xList=list()
yList=list()

for i in np.arange(50):
y=np.random.random()
xList.append(i)
yList.append(y)
drawnow(makeFig)
#makeFig()      The drawnow(makeFig) command can be replaced
#plt.draw()     with makeFig(); plt.draw()
plt.pause(0.001)
``````

The drawnow(makeFig) line can be replaced with a makeFig(); plt.draw() sequence and it still works OK.

• How do you know how long to pause? It appears to depend on the plot itself. Commented May 17, 2018 at 6:56
• not work it create a lot of figures Commented Jul 23, 2022 at 14:40

The problem seems to be that you expect `plt.show()` to show the window and then to return. It does not do that. The program will stop at that point and only resume once you close the window. You should be able to test that: If you close the window and then another window should pop up.

To resolve that problem just call `plt.show()` once after your loop. Then you get the complete plot. (But not a 'real-time plotting')

You can try setting the keyword-argument `block` like this: `plt.show(block=False)` once at the beginning and then use `.draw()` to update.

• real-time plotting is really what I'm going for. I'm going to be running a 5 hour test on something and want to see how things are progressing. Commented Aug 8, 2012 at 23:48
• @Chris were you able to conduct the 5 hour test? I am also looking for something similar. I am using plyplot.pause(time_duration) to update the plot. Is there any other way to do so? Commented Apr 11, 2014 at 16:02

If you want draw and not freeze your thread as more point are drawn you should use plt.pause() not time.sleep()

im using the following code to plot a series of xy coordinates.

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

pi = 3.14159

fig, ax = plt.subplots()

x = []
y = []

def PointsInCircum(r,n=20):
circle = [(math.cos(2*pi/n*x)*r,math.sin(2*pi/n*x)*r) for x in xrange(0,n+1)]
return circle

circle_list = PointsInCircum(3, 50)

for t in range(len(circle_list)):
if t == 0:
points, = ax.plot(x, y, marker='o', linestyle='--')
ax.set_xlim(-4, 4)
ax.set_ylim(-4, 4)
else:
x_coord, y_coord = circle_list.pop()
x.append(x_coord)
y.append(y_coord)
points.set_data(x, y)
plt.pause(0.01)
``````

This is the right way to plot Dynamic real-time matplot plots animation using while loop

There is a medium article on that too:

pip install celluloid # this will capture the image/animation

``````import matplotlib.pyplot as plt
import numpy as np
from celluloid import Camera # getting the camera
import matplotlib.animation as animation
from IPython import display
import time
from IPython.display import HTML

import warnings
%matplotlib notebook
warnings.filterwarnings('ignore')
warnings.simplefilter('ignore')

fig = plt.figure() #Empty fig object
ax = fig.add_subplot() #Empty axis object
camera = Camera(fig) # Camera object to capture the snap

def f(x):
''' function to create a sine wave'''
return np.sin(x) + np.random.normal(scale=0.1, size=len(x))

l = []

while True:
value = np.random.randint(9) #random number generator
l.append(value) # appneds each time number is generated
X = np.linspace(10, len(l)) # creates a line space for x axis, Equal to the length of l

for i in range(10): #plots 10 such lines
plt.plot(X, f(X))

fig.show() #shows the figure object
fig.canvas.draw()
camera.snap() # camera object to capture teh animation
time.sleep(1)
``````

And for saving etc:

``````animation = camera.animate(interval = 200, repeat = True, repeat_delay = 500)
HTML(animation.to_html5_video())
animation.save('abc.mp4') # to save
``````

output is:

Live plot with circular buffer with line style retained:

``````import os
import time
import psutil
import collections

import matplotlib.pyplot as plt

pts_n = 100
x = collections.deque(maxlen=pts_n)
y = collections.deque(maxlen=pts_n)
(line, ) = plt.plot(x, y, linestyle="--")

my_process = psutil.Process(os.getpid())
t_start = time.time()
while True:
x.append(time.time() - t_start)
y.append(my_process.cpu_percent())

line.set_xdata(x)
line.set_ydata(y)
plt.gca().relim()
plt.gca().autoscale_view()
plt.pause(0.1)
``````
• not work. its add a lot of figures Commented Jul 23, 2022 at 14:38
• I tested above to work with Ubuntu 20.04.4, Python 3.8.10, matplotlib==3.1.2. Commented Jul 23, 2022 at 15:40
• I tested it in vscode and in google colab, but not work 😢 Commented Jul 23, 2022 at 16:21

I created this code with a slightly different point of view:

``````import numpy as np
from matplotlib import pyplot

figure = pyplot.figure()
# get current axes  # If figure.axes == [], a new one is created
axes = figure.gca()
axes.axis([0, 1000, 0, 1])
figure.show()

x_val, x_values, y_values = 0, list(), list()
while x_val < 1000:
if not pyplot.fignum_exists(figure.number):
break  # break when window is closed
y_val = np.random.random()
x_values.append(x_val)
y_values.append(y_val)
axes.scatter(x_val, y_val)
x_val += 1
figure.canvas.draw()
figure.canvas.flush_events()
``````