Introduction to Data Visualization in Python (2024)

Introduction to Data Visualization in Python (3)

Data visualization is the discipline of trying to understand data by placing it in a visual context so that patterns, trends and correlations that might not otherwise be detected can be exposed.

Python offers multiple great graphing libraries that come packed with lots of different features. No matter if you want to create interactive, live or highly customized plots python has an excellent library for you.

To get a little overview here are a few popular plotting libraries:

In this article, we will learn how to create basic plots using Matplotlib, Pandas visualization and Seaborn as well as how to use some specific features of each library. This article will focus on the syntax and not on interpreting the graphs, which I will cover in another blog post.

In further articles, I will go over interactive plotting tools like Plotly, which is built on D3 and can also be used with JavaScript.

Matplotlib is the most popular python plotting library. It is a low-level library with a Matlab like interface which offers lots of freedom at the cost of having to write more code.

To install Matplotlib pip and conda can be used.

pip install matplotlib
or
conda install matplotlib

Matplotlib is specifically good for creating basic graphs like line charts, bar charts, histograms and many more. It can be imported by typing:

import matplotlib.pyplot as plt

Scatter Plot

To create a scatter plot in Matplotlib we can use the scatter method. We will also create a figure and an axis using plt.subplots so we can give our plot a title and labels.

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We can give the graph more meaning by coloring in each data-point by its class. This can be done by creating a dictionary which maps from class to color and then scattering each point on its own using a for-loop and passing the respective color.

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Line Chart

In Matplotlib we can create a line chart by calling the plot method. We can also plot multiple columns in one graph, by looping through the columns we want and plotting each column on the same axis.

Histogram

In Matplotlib we can create a Histogram using the hist method. If we pass it categorical data like the points column from the wine-review dataset it will automatically calculate how often each class occurs.

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Bar Chart

A bar chart can be created using the bar method. The bar-chart isn’t automatically calculating the frequency of a category so we are going to use pandas value_counts function to do this. The bar-chart is useful for categorical data that doesn’t have a lot of different categories (less than 30) because else it can get quite messy.

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Pandas is an open source high-performance, easy-to-use library providing data structures, such as dataframes, and data analysis tools like the visualization tools we will use in this article.

Pandas Visualization makes it really easy to create plots out of a pandas dataframe and series. It also has a higher level API than Matplotlib and therefore we need less code for the same results.

Pandas can be installed using either pip or conda.

pip install pandas
or
conda install pandas

Scatter Plot

To create a scatter plot in Pandas we can call <dataset>.plot.scatter() and pass it two arguments, the name of the x-column as well as the name of the y-column. Optionally we can also pass it a title.

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As you can see in the image it is automatically setting the x and y label to the column names.

Line Chart

To create a line-chart in Pandas we can call <dataframe>.plot.line(). Whilst in Matplotlib we needed to loop-through each column we wanted to plot, in Pandas we don’t need to do this because it automatically plots all available numeric columns (at least if we don’t specify a specific column/s).

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If we have more than one feature Pandas automatically creates a legend for us, as can be seen in the image above.

Histogram

In Pandas, we can create a Histogram with the plot.hist method. There aren’t any required arguments but we can optionally pass some like the bin size.

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It’s also really easy to create multiple histograms.

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The subplots argument specifies that we want a separate plot for each feature and the layout specifies the number of plots per row and column.

Bar Chart

To plot a bar-chart we can use the plot.bar() method, but before we can call this we need to get our data. For this we will first count the occurrences using the value_count() method and then sort the occurrences from smallest to largest using the sort_index() method.

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It’s also really simple to make a horizontal bar-chart using the plot.barh() method.

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We can also plot other data then the number of occurrences.

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In the example above we grouped the data by country and then took the mean of the wine prices, ordered it, and plotted the 5 countries with the highest average wine price.

Seaborn is a Python data visualization library based on Matplotlib. It provides a high-level interface for creating attractive graphs.

Seaborn has a lot to offer. You can create graphs in one line that would take you multiple tens of lines in Matplotlib. Its standard designs are awesome and it also has a nice interface for working with pandas dataframes.

It can be imported by typing:

import seaborn as sns

Scatter plot

We can use the .scatterplot method for creating a scatterplot, and just as in Pandas we need to pass it the column names of the x and y data, but now we also need to pass the data as an additional argument because we aren’t calling the function on the data directly as we did in Pandas.

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We can also highlight the points by class using the hue argument, which is a lot easier than in Matplotlib.

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Line chart

To create a line-chart the sns.lineplot method can be used. The only required argument is the data, which in our case are the four numeric columns from the Iris dataset. We could also use the sns.kdeplot method which rounds of the edges of the curves and therefore is cleaner if you have a lot of outliers in your dataset.

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Histogram

To create a histogram in Seaborn we use the sns.distplot method. We need to pass it the column we want to plot and it will calculate the occurrences itself. We can also pass it the number of bins, and if we want to plot a gaussian kernel density estimate inside the graph.

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Introduction to Data Visualization in Python (20)

Bar chart

In Seaborn a bar-chart can be created using the sns.countplot method and passing it the data.

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Now that you have a basic understanding of the Matplotlib, Pandas Visualization and Seaborn syntax I want to show you a few other graph types that are useful for extracting insides.

For most of them, Seaborn is the go-to library because of its high-level interface that allows for the creation of beautiful graphs in just a few lines of code.

Box plots

A Box Plot is a graphical method of displaying the five-number summary. We can create box plots using seaborns sns.boxplot method and passing it the data as well as the x and y column name.

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Box Plots, just like bar-charts are great for data with only a few categories but can get messy really quickly.

Heatmap

A Heatmap is a graphical representation of data where the individual values contained in a matrix are represented as colors. Heatmaps are perfect for exploring the correlation of features in a dataset.

To get the correlation of the features inside a dataset we can call <dataset>.corr(), which is a Pandas dataframe method. This will give us the correlation matrix.

We can now use either Matplotlib or Seaborn to create the heatmap.

Matplotlib:

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To add annotations to the heatmap we need to add two for loops:

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Seaborn makes it way easier to create a heatmap and add annotations:

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Faceting

Faceting is the act of breaking data variables up across multiple subplots and combining those subplots into a single figure.

Faceting is really helpful if you want to quickly explore your dataset.

To use one kind of faceting in Seaborn we can use the FacetGrid. First of all, we need to define the FacetGrid and pass it our data as well as a row or column, which will be used to split the data. Then we need to call the map function on our FacetGrid object and define the plot type we want to use, as well as the column we want to graph.

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You can make plots a lot bigger and more complicated than the example above. You can find a few examples here.

Pairplot

Lastly, I will show you Seaborns pairplot and Pandas scatter_matrix , which enable you to plot a grid of pairwise relationships in a dataset.

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As you can see in the images above these techniques are always plotting two features with each other. The diagonal of the graph is filled with histograms and the other plots are scatter plots.

Data visualization is the discipline of trying to understand data by placing it in a visual context so that patterns, trends and correlations that might not otherwise be detected can be exposed.

Python offers multiple great graphing libraries that come packed with lots of different features. In this article, we looked at Matplotlib, Pandas visualization and Seaborn.

If you liked this article consider subscribing on my Youtube Channel and following me on social media.

The code covered in this article is available as a Github Repository.

If you have any questions, recommendations or critiques, I can be reached via Twitter or the comment section.

Introduction to Data Visualization in Python (2024)

FAQs

Is Python good for data visualization? ›

While Python isn't considered to be the best option for data visualization, we recommend it because of the scalability and flexibility on offer. The open-source nature of the programming language allows developers to work on it and bring data to life through visualizations.

Is data visualization hard to learn? ›

The ability to create stunning data visualizations requires time and training. Data visualization is a field that requires proficiency with various tools and applications like Excel and Tableau, each of which takes the average person weeks or months to learn.

What is the easiest data visualization Python? ›

  • Matplotlib. Matplotlib is one of the best Python visualization library for generating powerful yet simple visualization. ...
  • Plotly. The most popular data visualization library in Python is Plotly, which delivers an interactive plot and is easily readable to beginners. ...
  • Seaborn. ...
  • GGplot. ...
  • Altair. ...
  • Bokeh. ...
  • Pygal. ...
  • Geoplotlib.
Apr 24, 2024

Is data visualization easy? ›

It is not easy to learn data visualisation and also not that hard. But for you to start you need to understand your data and based on the data you need to figure out what tools would be the best,which type of charts to use, which colours to use,which is in trending so on.

Is Python enough for data analytics? ›

Despite the vast range of programming languages, most data analysts choose to work with Python. While some data analysts use other programming languages like Javascript, Scala, and MATLAB; Python remains the popular choice due to its flexibility, scalability, and impressive range of libraries.

What is the salary of Python data visualization? ›

$100,500 is the 25th percentile. Salaries below this are outliers. $138,500 is the 75th percentile.

Does data visualization pay well? ›

How much does a Data Visualization make? As of May 28, 2024, the average annual pay for a Data Visualization in the United States is $109,451 a year. Just in case you need a simple salary calculator, that works out to be approximately $52.62 an hour. This is the equivalent of $2,104/week or $9,120/month.

Does data visualization require math? ›

To sum it all up — the core concepts associated with Algebra and Statistics are going to be the majority of math you'll need to know in a data profession. Realizing that both simple algebra and descriptive statistics are the main types of math you'll be doing in a visualization tool like Tableau.

Is data visualization a soft or hard skill? ›

Hard skills for a data analyst

They are responsible for preprocessing data into machine-readable format, performing statistical and predictive analysis, and preparing visualization and reports to communicate their findings. All of these tasks require a well-developed set of technical or hard skills.

Why is Python better than Excel for data visualization? ›

Python code is reproducible and compatible, which makes it suitable for further manipulation by other contributors who are running independent projects. Unlike the VBA language used in Excel, data analysis using Python is cleaner and provides better version control.

Which programming language is best for data visualization? ›

JavaScript is well-suited for data visualizations because of its ability to specify page behavior. D3. js, a JavaScript library, is one of the most versatile visualization libraries and can be used to create stunning, interactive visualizations.

Does data visualization require coding? ›

Coding and data visualization are closely related, as coding is often used to create and display data visualizations. By using a programming language like Python, R, or JavaScript, data analysts and developers can create custom visualizations that match their specific needs and requirements.

Why is data visualization hard? ›

Key Insights

The challenges of learning data visualization include deciding what data to include, avoiding including too much data, selecting the right visualization method, and using color contrast effectively.

How do I become good at data visualization? ›

Nine Considerations for Your Next Data Visualization
  1. Establish the goal of your visualization. ...
  2. Clean up and understand your dataset. ...
  3. Know your audience. ...
  4. Choose a type of chart. ...
  5. Don't try to pack too much into one chart. ...
  6. Map the data to visual variables. ...
  7. Text is “totally underrated.” Use It.

How do you learn data visualization from scratch? ›

Lessons
  1. Hello, Seaborn. Your first introduction to coding for data visualization. ...
  2. Line Charts. Visualize trends over time. ...
  3. Bar Charts and Heatmaps. Use color or length to compare categories in a dataset. ...
  4. Scatter Plots. ...
  5. Distributions. ...
  6. Choosing Plot Types and Custom Styles. ...
  7. Final Project. ...
  8. Creating Your Own Notebooks.

Is Python better than Tableau? ›

⚙️ Limited data manipulation: While Tableau offers basic data cleaning and transformation capabilities, it is not as comprehensive as Python when it comes to advanced data manipulation and wrangling tasks.

Can you visualize data in Python? ›

The process of finding trends and correlations in our data by representing it pictorially is called Data Visualization. To perform data visualization in python, we can use various python data visualization modules such as Matplotlib, Seaborn, Plotly, etc.

What is the best language for data Visualisation? ›

Data Analysts typically need a language that's intuitive to learn, easy to work with, has interactive capabilities, and includes libraries that are suited to creating dynamic data visualizations. Five of the most popular programming languages in 2021 for Data Analysts are Python, SQL, R, JavaScript, and Scala.

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