How can I show figures separately in matplotlib?

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面向向阳花
面向向阳花 2020-11-29 18:58

Say that I have two figures in matplotlib, with one plot per figure:

import matplotlib.pyplot as plt

f1 = plt.figure()
plt.plot(range(0,10))
f2 = plt.figure         


        
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  • 2020-11-29 19:30

    Perhaps you need to read about interactive usage of Matplotlib. However, if you are going to build an app, you should be using the API and embedding the figures in the windows of your chosen GUI toolkit (see examples/embedding_in_tk.py, etc).

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  • 2020-11-29 19:31

    I think I am a bit late to the party but... In my opinion, what you need is the object oriented API of matplotlib. In matplotlib 1.4.2 and using IPython 2.4.1 with Qt4Agg backend, I can do the following:

    import matplotlib.pyplot as plt
    fig, ax = plt.subplots(1) # Creates figure fig and add an axes, ax.
    fig2, ax2 = plt.subplots(1) # Another figure
    
    ax.plot(range(20)) #Add a straight line to the axes of the first figure.
    ax2.plot(range(100)) #Add a straight line to the axes of the first figure.
    
    fig.show() #Only shows figure 1 and removes it from the "current" stack.
    fig2.show() #Only shows figure 2 and removes it from the "current" stack.
    plt.show() #Does not show anything, because there is nothing in the "current" stack.
    fig.show() # Shows figure 1 again. You can show it as many times as you want.
    

    In this case plt.show() shows anything in the "current" stack. You can specify figure.show() ONLY if you are using a GUI backend (e.g. Qt4Agg). Otherwise, I think you will need to really dig down into the guts of matplotlib to monkeypatch a solution.

    Remember that most (all?) plt.* functions are just shortcuts and aliases for figure and axes methods. They are very useful for sequential programing, but you will find blocking walls very soon if you plan to use them in a more complex way.

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  • 2020-11-29 19:43

    None of the above solutions seems to work in my case, with matplotlib 3.1.0 and Python 3.7.3. Either both the figures show up on calling show() or none show up in different answers posted above.

    Building upon @Ivan's answer, and taking hint from here, the following seemed to work well for me:

    import matplotlib.pyplot as plt
    fig, ax = plt.subplots(1) # Creates figure fig and add an axes, ax.
    fig2, ax2 = plt.subplots(1) # Another figure
    
    ax.plot(range(20)) #Add a straight line to the axes of the first figure.
    ax2.plot(range(100)) #Add a straight line to the axes of the first figure.
    
    # plt.close(fig) # For not showing fig
    plt.close(fig2) # For not showing fig2
    plt.show()
    
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  • 2020-11-29 19:43

    As @arpanmangal, the solutions above do not work for me (matplotlib 3.0.3, python 3.5.2).

    It seems that using .show() in a figure, e.g., figure.show(), is not recommended, because this method does not manage a GUI event loop and therefore the figure is just shown briefly. (See figure.show() documentation). However, I do not find any another way to show only a figure.

    In my solution I get to prevent the figure for instantly closing by using click events. We do not have to close the figure — closing the figure deletes it.

    I present two options: - waitforbuttonpress(timeout=-1) will close the figure window when clicking on the figure, so we cannot use some window functions like zooming. - ginput(n=-1,show_clicks=False) will wait until we close the window, but it releases an error :-.

    Example:

    import matplotlib.pyplot as plt
    
    fig1, ax1 = plt.subplots(1) # Creates figure fig1 and add an axes, ax1
    fig2, ax2 = plt.subplots(1) # Another figure fig2 and add an axes, ax2
    
    ax1.plot(range(20),c='red') #Add a red straight line to the axes of fig1.
    ax2.plot(range(100),c='blue') #Add a blue straight line to the axes of fig2.
    
    #Option1: This command will hold the window of fig2 open until you click on the figure
    fig2.waitforbuttonpress(timeout=-1) #Alternatively, use fig1
    
    #Option2: This command will hold the window open until you close the window, but
    #it releases an error.
    #fig2.ginput(n=-1,show_clicks=False) #Alternatively, use fig1
    
    #We show only fig2
    fig2.show() #Alternatively, use fig1
    
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  • 2020-11-29 19:44

    Sure. Add an Axes using add_subplot. (Edited import.) (Edited show.)

    import matplotlib.pyplot as plt
    f1 = plt.figure()
    f2 = plt.figure()
    ax1 = f1.add_subplot(111)
    ax1.plot(range(0,10))
    ax2 = f2.add_subplot(111)
    ax2.plot(range(10,20))
    plt.show()
    

    Alternatively, use add_axes.

    ax1 = f1.add_axes([0.1,0.1,0.8,0.8])
    ax1.plot(range(0,10))
    ax2 = f2.add_axes([0.1,0.1,0.8,0.8])
    ax2.plot(range(10,20))
    
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  • 2020-11-29 19:46

    With Matplotlib prior to version 1.0.1, show() should only be called once per program, even if it seems to work within certain environments (some backends, on some platforms, etc.).

    The relevant drawing function is actually draw():

    import matplotlib.pyplot as plt
    
    plt.plot(range(10))  # Creates the plot.  No need to save the current figure.
    plt.draw()  # Draws, but does not block
    raw_input()  # This shows the first figure "separately" (by waiting for "enter").
    
    plt.figure()  # New window, if needed.  No need to save it, as pyplot uses the concept of current figure
    plt.plot(range(10, 20))
    plt.draw()
    # raw_input()  # If you need to wait here too...
    
    # (...)
    
    # Only at the end of your program:
    plt.show()  # blocks
    

    It is important to recognize that show() is an infinite loop, designed to handle events in the various figures (resize, etc.). Note that in principle, the calls to draw() are optional if you call matplotlib.ion() at the beginning of your script (I have seen this fail on some platforms and backends, though).

    I don't think that Matplotlib offers a mechanism for creating a figure and optionally displaying it; this means that all figures created with figure() will be displayed. If you only need to sequentially display separate figures (either in the same window or not), you can do like in the above code.

    Now, the above solution might be sufficient in simple cases, and for some Matplotlib backends. Some backends are nice enough to let you interact with the first figure even though you have not called show(). But, as far as I understand, they do not have to be nice. The most robust approach would be to launch each figure drawing in a separate thread, with a final show() in each thread. I believe that this is essentially what IPython does.

    The above code should be sufficient most of the time.

    PS: now, with Matplotlib version 1.0.1+, show() can be called multiple times (with most backends).

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