Matplotlib Tutorial

Matplotlib - Line Plot



A line plot or line chart is a type of chart which displays information as a series of data points connected by straight line segments. It is similar to a scatter plot except that the measurement points are ordered (usually by x-axis value) and joined with straight line segments. A line plot is often used to visualize a trend in the data.

The Matplotlib plot() function makes a line graph of y vs x.

 #single set of data plot([x], y, [fmt]) #multiple sets of data plot([x], y, [fmt], [x2], y2, [fmt2]) 

The coordinates of the points or line nodes are given by x, y. The optional parameter fmt is a convenient way for defining basic formatting like color, marker and line style. Few common way of calling this function is given below:

 plot(x,y) #plot x and y using default line style and color plot(x,y,'bo') #plot x and y using blue circle markers plot(y) #plot y using x as index array 0..N-1 plot(y,'r+') #plot y using x as index array 0..N-1 with red pluses 

Example: line plot using single set of data

In the example below, the plot() function is used to plot y = sin(x).

import matplotlib.pyplot as plt import numpy as np #creating an array of values between #0 to 10 with a difference of 0.1 x = np.arange(0, 10, 0.1) y = np.sin(x) #creating figure and axes object fig, ax = plt.subplots() #plotting the curve ax.plot(x, y) #formatting axes ax.set_xlabel("x") ax.set_ylabel("y") ax.set_title("Sine Wave") #displaying the figure plt.show() 

The output of the above code will be:

Python line plot of a single dataset, created using Matplotlib library

Example: line plot using multiple sets of data

Consider one more example where plot() function is used for multiple sets of data on a given axes.

import matplotlib.pyplot as plt import numpy as np #creating an array of values between #0 to 10 with a difference of 0.5 x = np.arange(0, 10, 0.5) y1 = np.sin(x) y2 = np.cos(x) #creating figure and axes object fig, ax = plt.subplots() #plotting curves ax.plot(x, y1, 'bo-', x, y2, 'r+-') #formatting axes ax.set_xlabel("x") ax.set_ylabel("y") ax.set_title("Sine vs Cosine") #adding legend ax.legend(['sin(x)', 'cos(x)']) #displaying the figure plt.show() 

The output of the above code will be:

Python line plot of multiple datasets, created using Matplotlib library

Example: line width and marker size

The linewidth and markersize are used to customize the line width and maker size respectively. Consider the example below:

import matplotlib.pyplot as plt import numpy as np #creating an array of values between #0 to 10 with a difference of 0.1 x = np.arange(0, 10, 0.1) y = np.sin(x) #creating figure and axes object fig, ax = plt.subplots() #plotting the curve ax.plot(x, y, 'go--', linewidth=2, markersize=12) #formatting axes ax.set_xlabel("x") ax.set_ylabel("y") ax.set_title("Sine Wave") #displaying the figure plt.show() 

The output of the above code will be:

Python customize line width and marker size in a line plot

Format String

A format string consists of a part for color, marker and line:

 fmt = '[marker][line][color]' 

Each of them is optional. If not provided, the value from the style cycle is used. Other combinations such as [color][marker][line] are also supported, but note that their parsing may be ambiguous.

A format string can be added to a plot to add more styles in it.

Markers

CharacterDescription
'.' point marker
',' pixel marker
'o' circle marker
'v' triangle_down marker
'^' triangle_up marker
'<' triangle_left marker
'>' triangle_right marker
'1' tri_down marker
'2' tri_up marker
'3' tri_left marker
'4' tri_right marker
'8' octagon marker
's' square marker
'p' pentagon marker
'P' plus (filled) marker
'*' star marker
'h' hexagon1 marker
'H' hexagon2 marker
'+' plus marker
'x' x marker
'X' x (filled) marker
'D' diamond marker
'd' thin_diamond marker
'|' vline marker
'_' hline marker

Line styles

CharacterDescription
'-' solid line style
'--' dashed line style
'-.' dash-dot line style
':' dotted line style

Colors

CharacterDescription
'b' blue
'g' green
'r' red
'c' cyan
'm' magenta
'y' yellow
'k' black
'w' white