Visual Analytics Tools

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Showing 1 - 20 of 241 products
Showing 1 - 20 of 241 products


Domo transforms business by putting data to work for everyone. Domo’s low-code data app platform goes beyond traditional business intelligence and analytics to enable anyone to create data apps to power any action in their busines...Read more

4.24 (198 reviews)

7 recommendations

Dundas BI

Dundas BI, from Dundas Data Visualization, is a browser-based business intelligence and data visualization platform that includes integrated dashboards, reporting tools, and data analytics. It provides end users the ability to cre...Read more

4.52 (121 reviews)

4 recommendations

SAP Analytics Cloud

SAP Analytics Cloud is a business intelligence and data visualization solution designed for businesses of all sizes. It offers business planning, predictive analytics, digital boardroom and reporting functionalities within a suite...Read more

4.33 (81 reviews)

3 recommendations


Incorta is a unified data analytics platform that provides a true self-service data experience. The software enables organizations to quickly and accurately make decisions based on vast easy to digest data sets. Incorta is a ...Read more

No reviews yet

2 recommendations

Style Intelligence

Style Intelligence from InetSoft is a business intelligence for midsize to global organizations. It offers users customizable dashboards and a data mashup engine that generates reports and visual analyses from real-time data....Read more

4.55 (42 reviews)

1 recommendations


Hevo is a no-code, bi-directional data pipeline platform specially built for modern ETL, ELT, and Reverse ETL Needs. It helps data teams streamline and automate org-wide data flows that result in a saving of ~10 hours of engineeri...Read more

4.67 (42 reviews)

1 recommendations


With a focus on reducing the complexity of insights from data for business users, even complex tasks are made simple with the Toucan guided analytics platform: Data visualization is guided, allowing the user to focus on the story...Read more

4.70 (23 reviews)

1 recommendations


Reveal is a self-service embedded analytics solution that provides organizations with the most powerful, flexible, and transparently priced analytics tools on the market. It enables users to easily create data reports and dashboar...Read more

4.19 (16 reviews)

1 recommendations

Google Analytics 360

Google Analytics 360 is an enterprise-level analytics platform with in-depth performance indicators, such as ROI analysis reports. The app's primary function is to provide insights into customer behavior interactions with websites...Read more


Tableau is an integrated business intelligence (BI) and analytics solution that helps to analyze key business data and generate meaningful insights. The solution helps businesses to collect data from multiple source points such as...Read more

Software pricing tips

Read our Visual Analytics Tools Buyers Guide

Subscription models

  • Per employee/per month: This model allows you to pay a monthly fee for each of your employees.
  • Per user/per month: Users pay a monthly fee for users—normally administrative users—rather than all employees.

Perpetual license

  • This involves paying an upfront sum for the license to own the software and use it indefinitely.
  • This is the more traditional model and is most common with on-premise applications and with larger businesses.

Rated best value for money

Google Cloud Platform

Featuring G-Suite and GCP, Google Cloud is a platform that provides a reliable and easy-to-use set of solutions that can be used to tackle the toughest challenges in any type of industry. It provides secure storage options, integr...Read more

Microsoft Power BI

Microsoft Power BI is a web-based business analytics and data visualization platform that is suitable for businesses of all sizes. It monitors important organizational data and also from all apps used by organizations. Microsoft P...Read more

Google Charts

Google Charts is a cloud-based business intelligence solution designed to help teams visualize data on their websites in the form of pictographs, pie charts, histograms and more. Key features include content management, custom das...Read more


ActivTrak helps companies unlock productivity potential. Our award-winning workforce analytics and productivity management software provides expert insights that empower people, optimize processes, and maximize technology. Addit...Read more


Sisense goes beyond traditional business intelligence by providing organizations with the ability to infuse analytics everywhere, embedded in both customer and employee applications and workflows. Sisense customers are breaking th...Read more


Boomi is a unified cloud-based integration solution designed to centralize data, applications, and processes into one unified ecosystem, effectively breaking down data silos. Using Boomi's integration capabilities, businesses are ...Read more


Minitab is a cloud-based statistical tool designed to help small to large organizations across various verticals such as manufacturing, healthcare, energy, automotive or non-profit discover market trends, predict patterns and visu...Read more

Operations Hub

Operations Hub allows you to easily sync customer data and automate business processes. It supercharges your HubSpot CRM by synchronizing contacts, leads, and company data with other applications. Operations Hub works two ways a...Read more


Grow is a cloud-based, business analytics and reporting solution suitable for small to midsize organizations. The solution allows users to create customizable dashboards for monitoring business workflows and key activities. Grow...Read more


IFTTT is a data integration software, which helps fintech, home automation, and energy companies connect applications and devices with third-party integrations. The software allows financial institutions to connect apps or website...Read more

Buyers Guide

Last Updated: July 04, 2022

What is a Visual Analytics Tool

A visual analytics tool allows non-technical people who don’t know SQL to view and visualize data.

Visual analytics tools allow business analysts and other users to query and combine data sets using point-and-click gestures in a visual interface, instead of actually writing out queries in a programming language like SQL.

These tools represent a significant advancement in the modern "self-service” model of BI. In this model, business analysts access and query data themselves, instead of accessing and querying it through technologies controlled by the IT department.

Visualization is key to self-service BI, since it’s a way for users who don’t know how to write queries themselves to retrieve the data they need. Users can perform analytical operations merely by clicking on pie charts, adding new dimensions to maps etc., instead of expressing such operations in SQL or another language.

Table of Contents

Since visual analytics is still an evolving technology, we’ll describe the major capabilities these tools offer. We’ll also explain how the market breaks down, since visual analytics capabilities are found in various types of BI solutions.

We’ll guide you through the following topics:

Visual Analytics != Dashboards
Capabilities of Visual Analytics Software
Visual Data Discovery vs. Visual Analytics in Traditional BI Systems
Choosing: Dedicated Visual Analytics Platform, or Traditional BI?

Visual Analytics != Dashboards

Many readers will know enough SQL to recognize “!=” as the “does not equal” operator rather than a typo, but if not, that’s precisely why you need a visual analytics system. SQL syntax becomes even more complex once you go beyond the basic operators.

Visual analytics tools are frequently confused with dashboards. Let’s take a look at why.

Exhibit A is an actual dashboard:

Dashboard in BI software platform Board

Exhibit A: Sales manager dashboard in Board

Exhibit B is the interface of a visual analytics solution during analysis:

Visual analytics in Qlik Sense

Exhibit B: Visual analysis of accident reports in Qlik Sense

At first glance, it can be very difficult to tell the difference between these two visual interfaces for presenting trends in data. There are, however, a few, including:

  • The dashboard is customized for a role (“sales manager”), whereas the visual analytics interface is generic.
  • The dashboard shows key performance indicators (KPIs) at a glance, whereas the visual analytics system shows patterns in a data set.
  • On a related note, the dashboard is pulling data from a diverse range of sources, whereas the visual analytics application is primarily being used on a single data set.
  • The dashboard is neatly templated, whereas the visual analytics tool looks like charts and graphs have been dropped in during analysis (because they have).

Dashboards are templated visualizations of KPIs that integrate data from a variety of operational sources: CRM systems, e-commerce/order processing platforms, inventory management systems, accounting systems, supply chain management systems etc. They either update in real-time or are regularly refreshed with new data. Most dashboards aim to help end users (sales managers, call center agents etc.) understand their individual performance or the business’s performance.

Interactivity is highly limited in a dashboard, because analysts in conjunction with business leaders determine how performance is calculated—not the end users. Users may be able to click on a chart element to get more details on a KPI, but they can’t decide, for instance, to swap out all of the line graphs in the dashboard with scatter plots, or to blend the data in the dashboard with a spreadsheet on their desktop.

Visual analytics graphical user interfaces (GUIs), on the other hand, are blank slates for accessing and manipulating data sets with point-and-click, drag-and-drop gestures on visual data displays (pie charts, tree graphs, heat maps, scatter plots etc.). Whereas the business “freezes” KPI calculations into dashboards, visual analytics tools are designed for free-form visual analysis of any old data set: a spreadsheet, a SQL database, a NoSQL database etc. Moreover, users can blend data from multiple sources during analysis, instead of having to rely on the blends that have been built into a dashboard.

Users thus choose the visualization types they want to use in visual analytics software. If one chart type doesn’t work, another can be used in its place. Users also choose the dimensions (data categories such as customer, product etc.) and measures (numerical values like the number of items sold in a given transaction) that they want to combine in these visualizations. Generally, analysis is a process in these tools—once a pattern has been spotted, the user explores it with further visualizations.

Visual analytics tools are thus specifically designed for business analysts who spend all day spotting new patterns in business data to explain problems and highlight opportunities.

The following table summarizes the differences:

Key Differences Between Dashboard and Visual Analytics Interfaces

  Dashboard Visual analytics interface
User base End users throughout organization Business analysts and other data explorers
Purpose Present role-specific KPIs Facilitate free-form analysis
Level of interactivity Minimal High
Data connections Prebuilt Ad hoc

Capabilities of Visual Analytics Software

Visual analytics tools generally offer the following capabilities:

Visual GUI A visual interface supports data manipulation via drag-and-drop gestures rather than SQL clauses.
Library of templated chart types Users can pick from bar charts, heat-maps, treemaps, scatter plots, bubble charts and a range of other visualization operations. Many tools will even recommend an appropriate visualization based on the data.
Ability to promote visualizations to dashboards Analysts can template KPI analyses as dashboards and share them across the organization (generally requires a server license in addition to user licenses).
Ad hoc data connections These tools can connect directly to a wide range of data sources, including spreadsheets, relational databases, NoSQL databases, cloud data sources etc.
Data blending Users can combine data from different sources on the fly to discover new insights.
Linked visualizations If a user alters one element of a visualization (say by adding a new dimension), the other elements will update automatically.
Data cleaning/preparation Since data access in visual analytics software is frequently ad hoc, data typically needs to be prepared for analysis with features for normalizing fields, removing trailing spaces etc.
Back-end SQL engine Visual analytics software includes an engine that translates users’ gestures into SQL queries.
In-memory data cache These tools also process data in random access memory (RAM) instead of writing it to disk, which allows for rapid processing of huge data sets.

Visual Data Discovery vs. Visual Analytics in Traditional BI Systems

Visual analytics tools—also known as data discovery tools—evolved as a response to two problems with traditional BI systems:

  • These systems lacked an easy interface to allow non-IT users to run ad hoc queries on data. Frequently, analysts had to resort to SQL querying.
  • Traditional BI systems limit analysis to data sources that have been integrated into the system, whereas data discovery tools are designed to open analysis up by connecting directly to a variety of data sources.

Dashboards and static reports are a strength of traditional BI systems, since in these systems the IT department works alongside analysts to extract data from operational databases, calculate metrics and push KPIs out to end users via PDF reports, dashboards or some other medium.

In this use case, free-form analysis by the end user isn’t necessary or even encouraged. Instead, the organization standardizes on a single data model (a schematization of the relationships between data types, data sources etc.), which is then built into the BI system.

Visual data discovery tools thus evolved for those end users who do need to perform free-form analysis, i.e. business analysts, since dashboards and scheduled KPI reports aren’t enough for these users.

It may seem that visual data discovery tools have a clear edge over traditional BI. However, data discovery tools suffer precisely because of the freedom they enable. One analyst may use a different process to visualize data than another, which makes it possible for the analysts to wind up with two significantly different interpretations of the same data set.

Traditional BI systems were designed to control access to data such that companies had a “single source of truth” about business performance metrics. Data discovery tools are catching up in this regard by introducing data governance features (role-specific access to certain data sources, data modeling languages etc.). However, they’re not as robust in this area as traditional systems.

Data modeling in Looker BI

Data modeling in Looker BI

Moreover, traditional systems have now incorporated many of the visual analysis features originally found only in data discovery tools. Both visual data discovery tools and traditional systems can be used to create dashboards.

Choosing: Dedicated Visual Analytics Platform, or Traditional BI?

The following table presents the most important selection criteria for deciding between these options:

  Visual data discovery tool Traditional BI system
Free-form visual analysis of data
Regularly scheduled batch extractions of data from operational databases (extract, transform and load)  
Standardized and centrally governed data model serving as a “single source of truth”  
Collaborative data modeling among workgroups
Ad hoc connections to new data sources and recombinations of data sources
Data warehousing  
Organization-wide deployment for end users  
Workgroup deployments for analysts

These criteria unfortunately aren’t always as clear as they’d ideally be, since, as we’ve seen, the distinction between these categories is gradually eroding away.

Some popular visual analytics software products include Tableau, Qlik Sense and Looker, but there are many more options on the market than this.

Traditional BI vendors that support visual analytics include Birst and Pentaho—again, there are a host of additional options.