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data visualization

By Cameron Hashemi-Pour

What is data visualization?

Data visualization is the practice of translating information into a visual context, such as a map or graph, to make data easier for the human brain to understand and pull insights from. The main goal of data visualization is to make it easier to identify patterns, trends and outliers in large data sets. The term is often used interchangeably with information graphics, information visualization and statistical graphics.

Data visualization is one of the steps of the data science process, which states that after data has been collected, processed and modeled, it must be visualized for conclusions to be made. Data visualization is also an element of the broader data presentation architecture discipline, which aims to identify, locate, manipulate, format and deliver data in the most efficient way possible.

Data visualization is important for almost every professional discipline. Teachers use it to display student test results, computer scientists to explore advancements in artificial intelligence (AI) and executives to share information with stakeholders. It also plays an important role in big data projects. As businesses accumulated massive collections of data, they needed a way to get an overview of their data quickly and easily. Visualization tools were a natural fit to provide useful information.

Visualization is central to advanced analytics for similar reasons. When a data scientist is writing advanced predictive analytics or machine learning algorithms, it's important to be able to visualize the outputs to monitor results and ensure that the models are performing as intended. Visualizations of complex algorithms are generally easier to interpret than numerical outputs.

Why is data visualization important?

Data visualization provides a quick and effective way to communicate information in a universal manner using visual information. Business professionals have different areas and levels of expertise, but visualizations are meant to be understandable by anyone. Visualizations make it easier for employees in an organization to make decisions and act based on insights derived from them.

Visualizations help businesses in many ways. Some examples include the following:

Benefits of data visualization

The benefits of data visualization include the following:

Disadvantages of data visualization

While data visualization comes with many advantages, it can also pose several challenges, including the following:

Data visualization and big data

The increased popularity of big data and data analysis projects has made visualization more important than ever. Companies are increasingly using machine learning to gather massive amounts of data that can be difficult and slow to sort through, comprehend and explain. Visualization offers a way to speed up the process and present information to stakeholders in ways they can understand.

Big data visualization often goes beyond the typical techniques used in normal visualization, such as pie charts, histograms and graphs. Data visualization can provide more complex representations, such as heat maps and fever charts.

While big data visualization projects have become increasingly useful in recent years, there are disadvantages, including the following:

Examples of data visualization

When computers were first applied to data visualization, one of the most common visualization techniques was using a Microsoft Excel spreadsheet to transform the information into a table, bar chart or pie chart. While these visualization methods are still used, more intricate techniques are available, including infographics, bubble clouds, bullet graphs, heat maps, fever charts and time series charts.

Other popular types of visualizations include the following:

Common data visualization use cases

Use cases for data visualization include the following:

The science of data visualization

The science of data visualization is based on an understanding of how humans gather and process information. Daniel Kahneman and Amos Tversky collaborated on research that defined two different methods for gathering and processing information.

The first method focuses on thought processing that is fast, automatic and unconscious. This method is frequently used in day-to-day life and helps accomplish tasks including the following:

The second focuses on slow, logical, calculating and infrequent thought processing, as demonstrated by the following:

Data visualization tools and vendors

Data visualization tools can be used in a variety of ways. The most common is a business intelligence reporting tool. Users set up visualization tools to generate automatic dashboards that track company performance across key performance indicators and visually interpret the results.

The generated images also include interactive capabilities, enabling users to manipulate them or look more closely into the data for in-depth analysis. Indicators alert users when data has been updated or when predefined conditions occur.

A business might implement data visualization software to track its own initiatives. For example, a marketing team might use such software to monitor the performance of an email campaign, tracking business metrics, such as the open rate, click-through rate and conversion rate.

As data visualization vendors extend the functionality of these tools, they're increasingly being used as front ends for more sophisticated big data environments. In such a setting, the tools help data engineers and scientists track data sources and do basic exploratory analysis of data sets prior to or after more detailed advanced analyses.

Forbes has compiled a list of some data visualization software vendors and tools useful to small businesses. These include Domo, Kilpfolio, Looker, Microsoft Power BI, Qlik Sense, Tableau and Zoho Analytics. While Microsoft Excel continues to be a popular tool for data visualization, other tools have been created to provide users with more sophisticated and far-reaching capabilities.

Data visualization is a subset of the broader concept of data analytics. Learn the different ways in which advanced analytics tools drive business value.

17 Apr 2024

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