The Jupyter Notebook is an open-source web application that allows you to create and share documents that contain live code, equations, visualizations and narrative text. Uses include data cleaning and transformation, numerical simulation, statistical modeling, data visualization, machine learning, and much more. Note: For more information, refer to How To Use Jupyter Notebook – An Ultimate Guide Matplotlib is one of the most popular Python packages used for data visualization. It is a cross-platform library for making 2D plots from data in arrays.To get started you just need to make the necessary imports, prepare some data, and you can start plotting with the help of the plot() function.When you’re done, remember to show your plot using the show() function. Matplotlib is written in Python and makes use of NumPy, the numerical mathematics extension of Python.It consists of several plots like:
- Line
- Bar
- Scatter
- Histogram
- And many more
Installation
- Install Matplotlib with pip Matplotlib can also be installed using the Python package manager, pip. To install Matplotlib with pip, open a terminal window and type:
pip install matplotlib
- Install Matplotlib with the Anaconda Prompt Matplotlib can be installed using with the Anaconda Prompt. If the Anaconda Prompt is available on your machine, it can usually be seen in the Windows Start Menu. To install Matplotlib, open the Anaconda Prompt and type:
conda install matplotlib
Using Matplotlib with Jupyter Notebook
After the installation is completed. Let’s start using Matplotlib with Jupyter Notebook. We will be plotting various graphs in the Jupyter Notebook using Matplotlib.
Line Plot
Python3
# importing matplotlib module from matplotlib import pyplot as plt # x-axis values x = [ 5 , 2 , 9 , 4 , 7 ] # Y-axis values y = [ 10 , 5 , 8 , 4 , 2 ] # Function to plot plt.plot(x, y) # function to show the plot plt.show() |
Output:
Bar Plot
Python3
# importing matplotlib module from matplotlib import pyplot as plt # x-axis values x = [ 5 , 2 , 9 , 4 , 7 ] # Y-axis values y = [ 10 , 5 , 8 , 4 , 2 ] # Function to plot plt.bar(x, y) # function to show the plot plt.show() |
Output:
Histogram
Python3
# importing matplotlib module from matplotlib import pyplot as plt # Y-axis values y = [ 10 , 5 , 8 , 4 , 2 ] # Function to plot histogram plt.hist(y) # Function to show the plot plt.show() |
Output :
Scatter Plot
Python3
# importing matplotlib module from matplotlib import pyplot as plt # x-axis values x = [ 5 , 2 , 9 , 4 , 7 ] # Y-axis values y = [ 10 , 5 , 8 , 4 , 2 ] # Function to plot scatter plt.scatter(x, y) # function to show the plot plt.show() |
Output :
Adding title and Labeling the Axes in the graph
We can add title to the graph by using the following command
matplotlib.pyplot.title("My title")
We can label the x-axis and y-axis by using the following functions
matplotlib.pyplot.xlabel("Time (Hr)") matplotlib.pyplot.ylabel("Position (Km)")
Example :
Python3
# importing matplotlib module from matplotlib import pyplot as plt # x-axis values x = [ 5 , 2 , 9 , 4 , 7 ] # Y-axis values y = [ 10 , 5 , 8 , 4 , 2 ] # Function to plot plt.scatter(x, y) # Adding Title plt.title("GeeksForGeeks") # Labeling the axes plt.xlabel("Time (hr)") plt.ylabel("Position (Km)") # function to show the plot plt.show() |
Output: We can also write a program in the same cell for printing Multiple Graphs together. We can print these graphs vertically one below another by repeating the show() function in the program or we can use a function called subplot() in order to print them horizontally as well.
Python3
from matplotlib import pyplot as plt x = [ 1 , 2 , 3 , 4 , 5 ] y = [ 1 , 4 , 9 , 16 , 25 ] plt.scatter(x, y) # function to show the plot plt.show() plt.plot(x, y) # function to show the plot plt.show() |
Output