“Best Data Visualization Tools for 2025″ Data has enveloped the entire global market; every trade that happens in the global market has a relevant connection to data. Today, companies are investing heavily in individuals who are capable of extracting and analyzing this vast ocean of data to draw strategies and help companies gain an edge over the competition. This article will help you identify what are the best data visualization tools in 2025.
The foundation of any profession starts with strong basics, and just like that, the foundation for any successful understanding and mastery of data analytical tools starts from understanding the programming languages and the tools that work in tandem with each other and are involved in the process or functioning of a good data analytics system.
Below are a few of the Best Data Visualization Tools for 2025 that are used in the field of data science and data analytics, and how the knowledge of these programs is in high demand.
Best For Business Intelligence
1. Microsoft Power BI.
Microsoft Power BI is a business intelligence platform that enables users to collaborate with data and track goals. It provides real-time analytics and trend analysis to help users make confident decisions. Microsoft Power BI integrates with many Microsoft products and cloud services, making it a versatile solution for businesses.
It offers data security features to protect user data. Microsoft Power BI is a powerful platform for building engaging, immersive dashboards and reports that allow you to take action.
Who should use it:
Businesses that use Microsoft products and services need a business intelligence solution.
Some useful links are Below:
To Know more about Microsoft Power BI Certification visit – Power BI Certification Course
To know more about – Reasons Why Learn Microsoft Power BI
To Know more about – How many charts in Power BI and their uses
Best For Interactive Charts
2. tableau.
Tableau is a data visualization and analytics platform that enables users to explore data and share insights. Data exploration is simple for anyone thanks to Tableau’s flexibility and power. Users can build visualizations with drag and drop, employ AI-driven statistical modeling with a few clicks and ask questions using natural language.
Tableau saves time and money by allowing for greater scale in the areas of governance, security, compliance, maintenance, and support. Users also receive more than just an analytics tool—they get the knowledge and support they need to achieve greater scale.
Who should use it:
Businesses that need data visualization and analytics capabilities to scale their data operations.
Some useful links are Below:
To Know more about Tableau Certification visit – Tableau Certification Course
To know more about – Tableau Interview Questions
To Know more about – Tableau Data Visualisation
Best for Artificial Intelligence
3. Qlik Sense.
Qlik Sense is a data visualization tool that uses artificial intelligence (AI) to help users understand and use data more effectively. It offers deeper interactivity and broader context than other data visualization tools, as well as lightning-fast calculations and the ability to connect and combine data from hundreds of data sources.
Qlik Sense is a part of the Qlik Active Intelligence Platform, which offers analytics performance and scalability to businesses of all sizes. Additionally, it’s available as a software-as-a-service (SaaS) solution or as a hybrid service that extends SaaS analytics to on-premises data.
Who should use it:
Businesses need artificial intelligence capabilities to scale their data operations.
Best for Custom Dashboards
4. Klipfolio.
With Klipfolio, access and combine data from hundreds of services without writing any code using curated instant metrics, all of which are pre-built. With its powerful data modeler, you can leverage data in everyday decision-making. Users can import, edit and analyze data to get comprehensive and exact insight.
Its flexible payment plans require no lengthy contracts or onboarding fees. Nonprofit organizations receive a discount on plans but will need to contact Klipfolio’s sales team for details.
Who should use it:
Klipfolio’s unlimited dashboards with every plan make it an ideal solution for businesses requiring custom dashboards.
Best for Visualization Options
5. Looker.
Looker is a powerful tool that allows users to see data in many ways thanks to its plugin marketplace. Here, you can find a directory of different types of visualizations, such as bar gauges, aster plots, cartoons, calendar heat maps, liquid fill gauges, and spider visualization.
It has pre-made analytical blocks that let users employ templates for certain data or analyses, which helps to accelerate analytics. Looker’s at-a-glance visualization tools make it easy to make data-driven decisions faster.
Who should use it:
Businesses need a variety of data visualization capabilities to scale operations.
Best for Zoho Users
6. Zoho Analytics.
Zoho Analytics is a data visualization tool that allows users to import data from a variety of data sources for in-depth analysis. With a drag-and-drop interface, users can create insightful reports and dashboards with a range of data visualization tools.
Users can collaborate on reports and dashboards with their coworkers and decide what others may see and do with the reports provided to them. Publish reports and dashboards via email or embed them on websites. It integrates with other Zoho applications and even offers a free plan.
Who should use it:
Any business already using Zoho applications will appreciate the easy integration with Zoho Analytics.
Best for Custom Apps
8. Domo.
Domo provides data visualization tools that help small businesses understand data and make data-driven decisions. With its easy-to-use interface, it allows users to create custom apps, advanced charts and maps and other visualizations of data with just a few clicks.
Its governance tools help organizations control who has access to data. And with Domo Everywhere, data can be shared outside of Domo in other applications for easier external reporting. For example, take the data and embed it onto your website using iFrame and JavaScript.
Who should use it:
Small businesses that want to better understand data and data-driven decision-making will appreciate Domo.
Python – Best Visualization Tools for 2025
Probably the most popular and one of the best data visualization tools for 2025 is the programming language of the century, Python is a general-purpose coding language which unlike other coding languages like HTML and CSS which can only be used for web development, Python is a universal coding language which can be used in multiple domains like back end development, software development, data science/data analytics and writing scripts among other things.
With the help of Python data visualization libraries, we can plot different types of graphs to represent data so that everyone could understand the behavior of the data variables.
Here is a quick look into the 7 best Python data visualization libraries that we will cover in this article:
-
Matplotlib
-
Seaborn
-
plotly
-
Bokeh
-
ggplot
-
pygal
-
folium
Due to Python’s simplicity and readability, it boasts a gradually low-end learning curve. This ease of learning makes it an ideal tool for many Data Scientists & Data Analysts. Python allows users to use fewer lines of coding and achieve tasks than the ones needed while using other languages. Python is open-source which means it is free and uses a public-based paradigm for advancement.
Python is an integral part of data analytics as its fabricated to carry out repetitive functions and anyone who has worked with large or big data understands the monotonous role of repetition and the importance of automating it. With a programming tool to bear the brunt of the repetition task, the data analyst can focus on the other curious and satisfying sections of work.
Knowledge of Python”
Knowledge of Python also entails knowing the multiple libraries that are present such as NumPy, Pandas, and Matplotlib which help data analysts to automate the repetitive functions involved when dealing with big data and are important tools that come in handy post-competition of a certified course in Python from Analytics Training Hub.
Some useful links are Below:
To Know more about Microsoft Power BI Certification visit – Data Science Using Python Certification Course
To know more about – Python core programming Certification course
Best Visualization Tools for 2025 – R Language
What is R Language?
Another one of the best data visualization tools for 2025 R Language is an open-source programming language developed by Mr. Roass Ihaka & Mr. Robert Gentleman in the summer of 1993. The language was named after the initials of their names and its most stable version was released in 2018.
R language was developed keeping statistical computing and graphics supported by the R foundation. The language is prevalent amongst number crunchers & data miners for data analysis polls, data mining surveys, and many other important functions.
Below are Visualization Tools for R Language:
1. Tableau
One of the most widely used data visualization tools, Tableau, offers interactive visualization solutions to more than 57,000 companies.
Providing integration for advanced databases, including Teradata, SAP, My SQL, Amazon AWS, and Hadoop, Tableau efficiently creates visualizations and graphics from large, constantly-evolving datasets used for artificial intelligence, machine learning, and Big Data applications.
2. Dundas BI
Dundas BI offers highly-customizable data visualizations with interactive scorecards, maps, gauges, and charts, optimizing the creation of ad-hoc, multi-page reports. By providing users full control over visual elements, Dundas BI simplifies the complex operation of cleansing, inspecting, transforming, and modeling big datasets.
3. JupyteR
A web-based application, JupyteR, is one of the top-rated data visualization tools that enable users to create and share documents containing visualizations, equations, narrative text, and live code. Jupiter is ideal for data cleansing and transformation, statistical modeling, numerical simulation, interactive computing, and machine learning.
4. Zoho Reports
Zoho Reports, also known as Zoho Analytics, is a comprehensive data visualization tool that integrates Business Intelligence and online reporting services, which allow quick creation and sharing of extensive reports in minutes. The high-grade visualization tool also supports the import of Big Data from major databases and applications.
5. Google Charts
One of the major players in the data visualization market space, Google Charts, coded with SVG and HTML5, is famed for its capability to produce graphical and pictorial data visualizations. Google Charts offers zoom functionality, and it provides users with unmatched cross-platform compatibility with iOS, Android, and even the earlier versions of the Internet Explorer browser.
Data visualization:
Data visualization is the visual representation of data in infographics form. This allows for analyzing data from angles that are not clear or in an unorganized or tabular format. R has many tools that can help in data visualization, analysis, and representation of complex data and showcase it in its true form.
Importance of R Programming Language in Data Science/ Data Analytics
- It is a well-established, straightforward, and successful programming language. Which includes conditional loops; user-defined recursive and other imperative facilities.
- The graphical capabilities of R allow for data analysis and display. R is a very flexible language, and it does not necessitate that everything should be done in R itself. It allows the use of other tools like C and C++ is required.
- It is a valuable data management and storage facility.
- R provides a vast, consistent, and incorporated assortment of means for efficient data analysis.
- R includes a bundle system that allows the users to add their functionality in a way that is identical to the foundation of R.
- R language is actively used for statistical processing and production. It has brought about a revolutionary change in data science and data analytics. It is the most extensively used language in the world of data science. Some of the popular IT giants like Google, Linked In, and Facebook, rely on R for many of their core operations.
R language future
R language has always been in demand and in the future, the need for the R language seems to be a requirement by several IT giants.
Best Data Visualization Tools for 2025 – MS Excel
MS Excel always considers the best data visualization tool and again this is going to be one of the best data visualization tools for 2025. MS Excel is a spreadsheet application that was developed by Microsoft for iOS and windows in the years 1987 and 1988 respectively. With the introduction of VBA (Visual Basic for Application) also known as Macros in v5.0 for Windows, endless possibilities in the automation of repetitive tasks like number crunching, automation, and presenting data for business became a smooth process.
MS Excel is a powerful spreadsheet that allows the user to do almost any level of data manipulation and analysis. There are some basic and advanced excel functions like LOOKUP FUNCTIONS, PIVOT TABLES, SLICERS, etc that helps the user to manipulate data. MS Excel is capable of handling extremely large data sets with ease. Hence it is suited for the job of a data analyst.
Excel has some great visualization options that graphically help in presenting the information. There are basic charts like LINE graphs, Column charts, etc as well as some advanced charting functions that make it the most basic and advanced visualization tool at the same time.
The most important feature of EXCEL is that it allows the user to create an interactive user interface so that the user can choose what he or she wants to see. There are some advanced excel functions like the OFFSET FUNCTION, list functionality, etc which help the user to make data models dynamic and interactive.
Finally, with in-built programming functionalities with VBA macros that allow playing with extremely large and complicated volumes of data. Some in-built functions will enable the user to perform statistical regression-based analysis as well on large data sets.
Below is a graph displaying the popularity trend of MS Excel across the globe.
1. My SQL
Over the years, Structured Query Language or SQL has become a prevalent coding language for the management of data. Although not exclusively used for data science operations, knowledge of SQL tables and queries can help data scientists deal with database management systems. This domain-specific language is extremely convenient for storing, manipulating, and retrieving data from relational database management systems.
SQL is everywhere
Almost all of the big names in the technology industry make use of SQL. Uber, Netflix, Airbnb the list goes on. Even companies like Facebook, Google, and Amazon, who have fabricated their own high-performance database management systems use SQL to query data and perform analysis. It is not just IT firms, small and mid-size enterprises (SMEs) use SQL for analysis. A quick job search on LinkedIn would show you that more and more companies are looking for skilled professionals with appropriate SQL skills rather than Python or R. SQL may be old, but it is omnipresent. Everything uses SQL or is a by-product of SQL.
MySQL Skills In High Demand
If you wish to get a job in the data industry, the focus should be on the skills that employers need. To understand the need, an understanding of the market is required. The understanding is about the skills that are doing good in the domain where you are looking for a job and to predict the implications of the skill in the next 20 years to ensure stability and continuity in your career. For a job profile related to data science or data analysis, there is always a demand for SQL as it is the most popular language used to query data and analysis from relational database systems.
SQL is not going Anywhere
SQL is the most popular programming language among data scientists and data analysts than Python or R. It is one of the languages highly preferred by data scientists and data analysts. Despite a lot of hype around NoSQL, Hadoop, and other technologies, SQL is one of the most popular languages not just among professionals in the data field but among all major IT giants. SQL has retained its crown among data science languages for the past many years. Which is a reconfirmation of the faith that data professionals place in SQL that it is not a dying language and would not be going anywhere for at least another decade.
Without SQL data visualization is not possible, so we have considered it as one of the best data visualization tools in 2025 that you must learn.
Below is a graph of the trend for SQL over the last 5 years, it may have declined but the need for this basic tool might rise shortly.
2. Power BI
Trending best data visualization tools for 2025, In the ever-expanding world of data science, there are multiple options and approaches that one could take to analytics and machine learning. While most data scientists might come to a solution by using popular programming languages such as Python, R, Scala, or even Julia. There will always be some high-level implementations that in certain situations can get the job done right away. One really exemplary piece of innovation is Microsoft’s Power-Bi.
Power BI integration with the power of ‘Query Editor is one of the most important weapons in the arsenal of data analytic tools in the fight against big data. Power Bi has a separate fanbase as it includes powerful data modeling and transformation features. It is a normal process of cleaning a dataset before importing it to the reporting software, but with Power BI all the cleaning and transformation are done before the connection to the data source is made. Power BI’s state-of-the-art ‘Query Editor’ helps the user define or raise queries by mashing data similar to the one used in ‘Power Query’ by MS Excel.
While Query Editor supports a variety of data-related coding idioms making Power BI an extremely robust means of data analysis, other user-friendly features can be used to generate additional comprehensions from multiple data. The analytics windowpane gives operators the capability to include dynamic lines to visuals like a constant, min, max, average, median, percentile, or forecast line.
M is the language at the back of every action taken in Power BI’s Query Editor and comes from the Power Query feature in Excel. It is synonymous with F# and is used to develop queries that mix data. R is a statistical analysis coding language that is a major part of a data scientist’s arsenal. However, Power BI makes use of several programming languages for users who wish to go beyond the options presented by the graphical user interface. These languages are DAX, M, and R. DAX (Data Analysis Expressions) is the query idiom originally used in Power Pivot. It is related to MS Excel formulas but encompasses several more functions catered to relational data. Power BI can use an R script as a data source, and transform tables in the Query Editor to create visuals. There are several virtual sources offered for each coding language that is used in Power BI.
Power BI since its release in 2013 has gained tremendous popularity and has moved ahead with the current trends and shows a promising future for any data professional.
3. Tableau
Again, Tableau is going to be one of the best data visualization tools for 2025. Tableau is computer software that connects any data source be it corporate Data Warehouse, Microsoft Excel, or cloud-based data, and creates data visualizations, maps, dashboards, etc. Real-time updates are always omnipresent on the web, which can also be shared through social media or with the buyer on demand. It allows the receiver of the document to access or download the file in different formats. To experience the power of tableau, the user must have access to an incredibly good data source. Tableau’s big data capabilities make the data visually appealing and one can analyze and visualize data better than any other data visualization software in the market.
Tableau is a potent and rapidly developing data visualization tool used in the Business Intelligence Industry. It helps in simplifying raw data into an extremely easy and understandable format.
Data analysis is extremely fast and precise with Tableau and the visualizations created are in the form of dashboards and worksheets. The data created using Tableau can be recognized by professionals at any level in a corporation. It even allows a non-technical user to create customized dashboards.
The best feature’s Tableau, due to which is one of the best data visualization tools for 2025
Data Blending
The data blending feature of Tableau allows the user to combine data. A query is sent to the database for each data source that is being used in the sheet. The results of the queries are sent back to Tableau as an aggregated data compilation and are presented together in the visualization.
Real-time analysis
Tableau allows the user to interact with the charts, reports, and dashboards in real time, allowing the user to raise questions about the data about the future of business with the speed of thought.
Collaboration of data
Tableau has brought together an array of features that have brought about a change in the data analytics industry. One such feature is the ‘Collaboration’ feature where multiple users can collaborate on a given piece of interactive visualization and leave comments or ideas without having the access to make changes to the original sheet. This collaboration invites new ideas without losing the original data.
The wonderful thing about Tableau is that it does not require any technical or coding skills to operate. The tool has gathered global interest among people from multiple domains and sectors ranging from healthcare to sales.
Tableau was specially fabricated for long-term cost-effective purposes. In Tableau Public workbooks created cannot be saved in the system and has to be published where the project is put in full display to the public or in other words it is uploaded to Tableau’s public domain where it can be viewed and accessed by anyone. There is zero secrecy to the files saved to the cloud and because of this anyone can download and access the data. This edition is the most excellent for folks who want to learn Tableau and for the ones who intend to share their data in the public domain.
Since 2003 Tableau has consistently been an extremely hot topic and is being used by several multinationals across the globe. Below is a worldwide google trend graph for Tableau over the past 5 years
Along with these popular analytic tools we also have some other analytic tools which have been around and with certain updates slowly catching on popularity. Below are a few other popular data analytic tools that are gaining popularity among data professionals.
QlikView
Data has become the source of trade in today’s competitive times. If in these competitive times if a business wishes to stay ahead of its competitors it has to adopt new strategies, ideas, and sometimes even tools.
QlikView is one of the quickest-advancing business intelligence and data visualization tools. It has an extremely swift deployment and withholds a uniquely intuitive interface to capture its user. QlikView has many unique features like patented technology and has in-memory data processing, which executes the outcome in a matter of seconds to the end-users and stores the data in the report itself. Data links in QlikView are automatically preserved and can be squeezed to almost 10% of their original size. Data connections are visualized using colors, one specific color is allocated to related data, and a distinct color is for the non-related data.
Below is a google trend graph for QlikView over the last 5 years showcasing the growing popularity of this data analytic tool, that is why we are considering this tool as one of the best data visualization tools in 2025
Apache Spark
In 2009 Mr. Matei Zaharia designed Apache Spark at UC Berkeley’s AMP Lab. Since it is the official release of version 0.5 in the summer of 2012, Apache Spark has gained popularity in its domain. It is a cohesive analytics software for extensive data processing. Compared to its closest competitor Hadoop it runs workloads 100x times faster because it is embedded in a state-of-the-art DAG scheduler, a query optimizer, and a physical execution engine. Apache Spark presents several operatives that make it effortless to build analogous apps the user can use with Scala, Python, R, and SQL shells. APACHE SPARK was fabricated keeping data science in mind and making data science easy. APACHE SPARK is popular in the field of data pipelines and machine learning models. APACHE SPARK includes a library called ‘MLlib’ that provides a progressive set of automated algorithms for techniques that involve repetition like collaborative filtering, classification, clustering, regression, etc.
For the last 5 years Apache Spark a been on a bumpy ride with the APACHE SPARK trend reaching its peak in the summer of June 2018.
The future of APACHE SPARK seems bright since the profile of data science got termed as the sexiest job of the 21st century.
Multiple industries have used the APACHE SPARK, so this is one of the best data visualization tools in 2025. Businesses like Hotel.com, Netflix, UberEATS, and many more report the many issues being solved post-inclusion of APACHE SPARK in the company’s operational stream.
Doing a course in APACHE SPARK will help professionals who aspire for a future in big data and wish to be aware of the latest developments around the swift and efficient processing of the ever-growing data industry using APACHE SPARK. The course is perfect for:-
- Big data professionals
- Software engineers, developers, and software architects
- Analytics professionals and data scientists
SAS
SAS stands for Statistical Analytical System. It is a tool developed for advanced analytics and dense statistical operations. It is used by corporations and specialists due to its high dependability. SAS achieves statistical development through base SAS which is the main coding language that runs in the SAS environment. It is a closed-source copyrighted tool that offers a wide variety of statistical resources to perform difficult development.
However, it is not suited for beginners and independent data science enthusiasts. Because SAS was custom-made to meet industrial demands. It is a high-priced software that only large-scale conglomerates can afford. However, SAS helps and is known for its stability and efficiency. Due to this reason, despite the presence of alternative open-source tools, SAS is still the major preference.
Below is a reference to a google trend graph showcasing a slight decline in the demand for this software but predicting a rising future of the same.
Some useful links are Below:
To Know more about Microsoft Power BI Certification visit – Power BI Certification Course
To know more about – Reasons Why Learn Microsoft Power BI
To Know more about – How many charts in Power BI and their uses




