Last Reviewed: November 27th, 2024

Best Qualitative Data Analysis Software Of 2024

What is Qualitative Data Analysis Software?

Qualitative data analysis software is essentially a workbench for researchers sifting through the goldmine of open-ended responses, interviews, and focus groups. Imagine a researcher drowning in sticky notes and transcripts. This software helps organize, analyze, and extract meaning from these qualitative gems. It tackles the challenge of making sense of subjective data, a crucial step in uncovering deeper customer motivations, product perceptions, and social trends. Benefits include richer customer insights, improved product development, and stronger marketing strategies. The software offers features like coding (tagging data with keywords), text search, and sentiment analysis to gauge emotional tone. Emerging features include AI-powered assistance for theme identification and automated coding suggestions. Researchers across various disciplines use this software, with applications in marketing, social sciences, and education. A key limitation is that the software relies heavily on the researcher's interpretation; the software empowers analysis, but human expertise remains essential. In essence, qualitative data analysis software unlocks the stories hidden within open-ended data, empowering researchers to gain a deeper understanding of the human experience.

What Are The Key Benefits of Qualitative Data Analysis Software?

  • Organize Textual Data
  • Identify Key Themes
  • Extract Deeper Insights
  • Uncover Customer Motivations
  • Improve Product Development
  • Refine Marketing Strategies
  • Facilitate Collaborative Research
  • Automate Coding Tasks (Emerging)
  • Advanced Sentiment Analysis
Read more

Overall

Based on the latest available data collected by SelectHub for 135 solutions, we determined the following solutions are the best Qualitative Data Analysis Software overall:

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Why We Picked Tableau

Tableau Desktop is a BI solution for data visualization, dashboarding and location analysis. In online reviews, users said they found its drag-and-drop charting a boon for creating charts and maps. Regarding customization, many users praised the platform for its various labeling and design options.

I recently tried the Tableau Desktop 2024.1.3 version. The trial is only for 14 days and is enough for a sneak peek into Tableau’s dashboarding and data storytelling capabilities. For more straightforward use cases, Tableau is incredibly user-friendly and fast. Creating a new sheet gives you a canvas to create a visualization. Once you have the required sheets, combining them into a dashboard view is straightforward — select and add.

My dataset included healthcare data, including details of patients, their hospital visits and insurance payer details. One use case was to find the total claim settlement amount. I dragged the Total Claims Cost and Payer fields to the column and row shelves, and Tableau gave me a bar graph. The toolbar had single-click options for sorting data from increasing to decreasing values or the other way around.

To view the number of encounters by payer, I dragged the Payer field to the row shelf and used the SUM(ROW_COUNT()) function on the column shelf. The chart popped up with more visualization and layout options.

I wanted an interactive filter to view the average claim cost by birthdate. I dragged the Birthdate field to the Filters shelf and right-clicked on it to set the end date as October 22, 1961. Selecting Show Filter added a slider conveniently to the right of my visualization. I could see the data for people born before October 22, 1961, and if required, I could change the end date.

Another use case would be viewing the data by the type of hospital visits — how many people were inpatients, outpatients or those who needed emergency care. I dragged and dropped the Total Claims Cost and Payer fields into columns and rows, respectively. Similarly, I dropped Encounterclass into the Filters shelf and clicked on Show Filter to enable a checkbox on the screen. It had all the categories of visits, giving users the option to select the desired views.

One-fourth of the users discussing adoption said there was a steep learning curve. Tableau relies on Python and R scripts for statistics in its visualizations. It's where the named licenses can prove to be a blessing, as you can opt to train upcoming Creators and Explorers. We recommend factoring in training if you want to hit the ground running.

Some reviewers felt discounted packages for business editions should be available, similar to the free student licenses. At $70 per user, the Creator license can seem costly when compared to Power BI ($9.99 per user) and Qlik Sense ($30 per user).

Here's the good news, though. Its built-in user management acts as a permissions layer for your organization - users can only access the relevant content. Plus, an organization will have very few Creators and a greater number of Viewers and Explorers, and the license fee reduces from Creator to Explorer to Viewer.

We recommend opting for a wise license combination to get the most out of the product.

On the upside, the vendor constantly releases new features, the latest one being Einstein CoPilot in beta.

Overall, Tableau is a competitive BI solution, but if the pricing seems inflexible, quite a few other solutions offer live insights and advanced analytics out of the box.

Pros & Cons

  • Data Visualization: Almost 98% of users who reviewed its visual capabilities praised the platform for its dashboards and the freedom to play around with data and modify charts as desired.
  • User-Friendly: According to 93% of users who mentioned ease of use, it makes data accessible with its easy user actions and handy tooltips.
  • Data Connectivity: About 92% of users who discussed data sourcing praised its ability to pull data from disparate systems.
  • Pricing: Around 90% of the users citing cost found it expensive.
  • Speed: About 71% of the users who discussed performance found it slow when processing large data volumes.
  • Onboarding Woes: Approximately 67% of the users who reviewed the platform's adoption said there was a steep learning curve.

Key Features

  • Connectors: Combine data from various sources by choosing from a wide range of connectors — no need to spend on expensive third-party data integration tools. Tableau Bridge connects private networks to live data sources via Tableau Cloud.
  • AI: Tableau now offers AI capabilities thanks to Einstein Analytics.
    • Tableau Pulse: Explore data independently and ask questions with AI analytics. Tableau Pulse is available with Tableau Cloud and Embedded Analytics.
    • Explain Data: Understand the displayed insights with natural language explanations of data points.
    • Einstein CoPilot (Beta): Close the gap in understanding data with AI insights. Discover hidden trends by asking follow-up questions without losing context, thanks to generative AI. Einstein CoPilot is available with a Tableau Cloud subscription.
  • Tableau Prep: Clean and transform data of all types, including survey results, feedback data and social media posts. Shape and combine it with Tableau Prep, which is available with the paid edition only.
  • Data Stories: Convey your message with compelling narratives to get stakeholder buy-in. Drag and drop sheets onto the storyboard to show the growth, decline or stability of critical metrics.
  • Animations: Explain how data changes over time with animated charts and customize them to include graphics, labels and colors.
  • Filtering: Focus on the data that matters; it’s as easy as dragging and dropping desired fields to the Filter shelf. Specify a value range, set a condition or choose the top values to display.
  • User-Based Licenses: Explore cost-effective license combinations that work for your team.
    • Creators can build dashboards, permissions, and governance rules, and establish connections to new sources. They’re content authors who transform and analyze data. This license is available at $70 per user monthly, billed annually. However, they can’t control the Tableau Server or Desktop environment.
    • Explorer licenses are suitable for line-of-business users whose role requires independent data exploration. They can author content but within a governed ecosystem. Each Explorer license costs $42 monthly, billed annually. They can’t connect to new sources, modify data, or use the Tableau desktop or custom SQL.
    • Viewers can interact with data, apply filters and follow pre-decided workflows. This license is available for $15 per user monthly, billed annually. Viewers have limited rights and can’t create and edit visualizations and the underlying data.
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Why We Picked Power BI

Our researchers ranked products on a whole bunch of features. They include data management, querying and visualization, advanced and embedded analytics, mobile BI, and IoT and location analytics.

In our rankings, Power BI scores 87 for connectivity, leaving behind Tableau, Oracle Analytics and Dundas BI. Robust Microsoft technology is one reason, for sure. Besides, intelligent techniques like DirectQuery and easy data modeling make it popular among users.

In product reviews, some users mentioned a lag when sharing reports from the desktop to the cloud. For me, the platform was a tad slow to start, but otherwise, it stayed performant for my average-sized dataset.

When dealing with sales data, total sales, the top-performing products, seasonality and period trends are common queries. Creating a sales KPI report in Power BI was an excellent way for me to answer them. My CSV files included sales, calendar, products and store data.

Connecting to sources is straightforward with Get Data on the home screen and toolbar. Once I had pulled in the data, I clicked on Transform Data and opened the Power Query editor. It automatically detects the data type for strings and numbers but can get confused with dates and currency, which it marks as text. It involved some manual wrangling, but I had it sorted in no time. Read my article on KPI Reports to learn how I did it.

But I wouldn’t call it a deal-breaker as it’s not a tedious task. I had the same experience with Qlik Sense, but Tableau was way better as it recognizes seven data types — string, number, date, date and time, boolean, geographic and cluster values.

Tracking sales over periods required a greater level of detail, so I added new columns to the calendar data — start of month and start of week. Column statistics were immensely helpful in identifying unique, distinct and null values and correcting incomplete records. Clicking on the number of products selling at a particular price allowed me to see which toys sold at that price.

Creating a relational data model by defining primary keys is a manual process and seems dated once you’ve used Qlik Sense. Adding calculated measures is where DAX shows its magic. For data workers well-versed with SQL, DAX is a ready-to-go tool they’ll be glad to have in their corner.

Creating visualizations wasn’t as intuitive as Tableau as it involved drag-and-drop onto the canvas, and frankly, I felt like I was flying blind. I didn’t feel that way with Tableau, and it’s slicker.

Power BI offers a paintbrush tool that lets you define the layout, the card arrangement and the maximum number of cards. You can define the canvas settings, background and headers and determine the filter pane settings. It took me longer to create a dashboard from scratch than it took in Tableau.

Some users found the pricing structure too complex. While using Azure data in Power BI for basic queries is free, costs can add up when you go for text and sentiment analysis. With Microsoft Fabric, the pricing complexity is set to rise. Though Power BI is available separately too, you’ll need to rely on Fabric to manage users, licenses and other administrative tasks.

About 31% of the users mentioning cost complained about onboarding difficulties, possibly because DAX introduces the complexity of learning syntax. It can daunt non-technical users initially, but guided formulas can make the task easier. That said, I agree with the majority of user reviews that training will speed up onboarding and help your team maximize the investment.

Overall, Power BI has many powerful features and will give you value for your money. If you’re not a Microsoft user yet, it’s worth checking out for the baked-in vendor technologies like Azure and SSAS. If you are an MS user, Power BI might be a no-brainer, though be prepared to shell out a little extra for advanced functionality and additional modules.

Pros & Cons

  • Integrations: Around 95% of users who mentioned data sources said they were satisfied with its flexibility in connecting to sources.
  • Data Visualization: About 93% of the users who discussed visual analysis said they relied on it for daily reporting.
  • Functionality: Over 75% of the users reviewing features said they were impressed with its live queries, DAX calculations and data modeling.
  • Ease of Use: Approximately 72% of the users who mentioned its UI said it was straightforward to use.
  • Speed: About 95% of recent reviews citing performance said the platform lagged when dealing with large data volumes.
  • Adoption: Around 81.5% of the reviewers mentioning adoption said the learning curve was steep.
  • Cost: Approximately 71% of users discussing pricing complained about the platform being expensive.

Key Features

  • Dataflows: Save time with reusable workflows that lock the logic in. While shared datasets are open to interpretation, dataflows will take your users in one direction only, ensuring consistent results. It’s like a written recipe, just follow the steps to get the taste right.
  • Analyze in Excel: Focus on the end game. Give your teams the freedom to analyze their data in Excel and move the results back to Power BI.
  • DAX: Empower your people to go beyond raw data. Derive calculated columns and measures with Data Analysis Expressions. Watch them update as you apply filters and slicers and interact with data in other ways.
  • Data Alerts: Act in time to keep things running smoothly. Stay informed of changes with alerts. Subscribe to receive notifications via email or the Power BI notification center (available only with Power BI Service). Among visualizations, KPI cards, cards and gauges have the alert option. 
  • Data Refreshes: Stay ahead of trends with the latest insight. Update data on demand in Power BI or schedule refreshes with Power Automate. Power BI Pro and Premium allow up to eight and 48 refreshes daily, respectively.
  • Key Influencers Visual: Decide the next steps by spotting the factors affecting a critical metric. As a transporter, does only the terrain impact how consistently your trucks deliver, or is the average age of the fleet vehicles also a factor?
  • Decomposition Tree: Identify which product category or region contributed most to sales increase or decrease. For instance, you can analyze sales trends by channel with the decomposition tree.

Pricing

License/Subscription Cost
  • Based on the number of users for Power BI Pro and capacity-based pricing for Power BI Premium
Maintenance Cost
  • Included in the subscription cost
Installation/Implementation Cost
  • Included in the subscription cost. Additional charges may apply for data migration during implementation of Power BI, maintaining on-premise data sources and building dashboards and reports
Customization Cost
  • Dependent on functional requirements and specific needs of the organization
Data Migration Cost/Change Management/Upfront Switching Cost
  • Dependent on your current software, amount of data to be migrated, availability of migration tools, complexity of data and gaps between the existing system and the new system.
Recurring/Renewal Costs
  • Renewal cost is included in the fees paid monthly or annually
Start Price
$1,800
Annually
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Why We Picked Mathematica

Let's crunch some numbers and see what users have to say about Mathematica!

Mathematica has garnered a reputation as a powerful computational tool, particularly in academic and research settings. Users frequently praise its symbolic computation capabilities, allowing them to manipulate and solve complex mathematical expressions and equations with ease. This strength sets Mathematica apart from competitors like MATLAB, which primarily focuses on numerical computation. Mathematica's notebook interface also receives positive feedback for its ability to combine code, visualizations, and text in a single document, facilitating reproducible research and clear communication of findings. However, Mathematica's steep learning curve and high price point are often cited as drawbacks. Users transitioning from other programming languages may find Mathematica's syntax and functional programming paradigm challenging to grasp initially. Additionally, the cost of a Mathematica license can be prohibitive for individual users or small businesses.

Overall, Mathematica is best suited for researchers, scientists, and engineers who require a comprehensive tool for symbolic and numerical computation, data analysis, and visualization. Its extensive functionality and ability to handle complex mathematical problems make it an invaluable asset in these fields. However, individuals or organizations with limited budgets or those seeking a more user-friendly option may want to explore alternative software solutions. Keep in mind that software is constantly evolving, so it's always a good idea to check for the latest updates and user reviews to make an informed decision.

Pros & Cons

  • Symbolic Computation: Mathematica excels at handling and manipulating symbolic expressions, making it ideal for tasks that involve algebra, calculus, and other forms of mathematical analysis. This can be particularly useful for financial modeling, risk analysis, and other business intelligence applications that require complex calculations.
  • Visualization Capabilities: Mathematica offers a wide range of visualization tools that can be used to create high-quality charts, graphs, and other visual representations of data. These visualizations can be interactive, allowing users to explore data from different perspectives and gain deeper insights. This is essential for effectively communicating complex data to stakeholders in a business setting.
  • Automation and Scripting: Mathematica allows users to automate tasks and create scripts, which can save time and improve efficiency. This can be particularly useful for repetitive tasks, such as data cleaning and analysis. Automating these tasks can free up time for business intelligence professionals to focus on more strategic initiatives.
  • Machine Learning and AI: Mathematica includes a wide range of machine learning and artificial intelligence (AI) tools that can be used for tasks such as predictive modeling, classification, and anomaly detection. These capabilities are becoming increasingly important for business intelligence, as they can help organizations to identify trends, make better decisions, and gain a competitive advantage.
  • Price: Mathematica comes with a hefty price tag, especially for commercial use, which can be a significant barrier for individuals or small businesses.
  • Learning Curve: The software has a steep learning curve due to its vast functionality and unique syntax, requiring a significant time investment to master.
  • Closed Ecosystem: Mathematica operates within a closed ecosystem, making it challenging to integrate with other data analysis tools or programming languages commonly used in business intelligence.
  • Limited Collaboration: Collaboration features are not as robust as those found in other business intelligence platforms, hindering teamwork and knowledge sharing.
  • Visualization Capabilities: While Mathematica offers visualization tools, they may not be as intuitive or user-friendly as dedicated data visualization software, potentially limiting the ability to create compelling and insightful dashboards.

Key Features

  • Wolfram Language: Wolfram’s proprietary computational language allows developers to code with a language that allows both computers and humans to communicate with each other through almost 6,000 built-in functions. Built on a philosophy of knowledge-based programming, it aims to help users automate as much as possible and maximize coherence of design while being universally deployable in any environment.
  • Connect to Everything: Through symbolic expressions, interactions and external connections, the Wolfram Language conveniently connects to a broad spectrum of platforms, languages, databases, protocols, APIs, applications, file formats and devices.
  • Notebook Interface: With structured documents that store text, runnable code, dynamic graphics and more, Wolfram Notebooks provide an environment for technical workflows that supports interactive computation. They empower user literacy in a high-level programming interface through interactive coding, natural language queries and expansive documentation that make the platform accessible to users without coding experience.
  • AlgorithmBase: Not just through industrial-strength algorithms but also meta-algorithms and super functions, which automatically select the optimal algorithms to use in a given situation, users can define their goals or concepts and let the system take over to automatically achieve them, enabling discoveries and experimentation with algorithms. With its robust library of scalable and accurate algorithms, the AlgorithmBase serves as a trustworthy resource for programmers to use to ensure high-quality computations.
  • Data Visualization: Through algorithms, Mathematica can create visually compelling representations of data in the form of 2D and 3D plots, graphs, histograms, word clouds, geographic visualizations and more.
  • Machine Learning: Through highly automated functions that work on many types of data, the platform can carry out a wide range of tasks, including classifying data in categories, predicting values, learning from examples and performing automated time series analysis. 
  • Mathematica Online: Powered by the Wolfram Cloud, users can harness the computational system from directly within their web browsers, with no installation required. Everything automatically saves and stays in the cloud, and users can control who can access their documents through instant sharing, URL links and permissions controls. Seamlessly integrated with the desktop version, it allows users to upload or download notebooks and access the cloud from a computer.
  • Wolfram Knowledgebase: Mathematica and the Wolfram Language has access to the world’s largest and broadest trusted source of computable knowledge, curated by experts and derived from primary sources, including not just the data but also the methods that compute results.
  • Mobile App: The Wolfram Cloud free app for iOS and Android mobile devices allows users to edit, run and deploy programs and access Wolfram notebooks and instant apps through its home-screen-like experience.
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Why We Picked QlikView

QlikView is one of the foremost BI solutions in the market today, mainly due to the power of its associative query engine to link data from multiple sources that drives its visually impressive dashboards. With its strong data visualization capabilities, users can perform search and filter through data on-the-fly and conduct deep-dives to glean insights that matter to them. With a fast setup, users can have their first data model up and running in very little time. The software resides in-memory and houses data in RAM for quicker retrieval. With multi-tier access permissions for in-organization users, it enables users to view executive summaries at a glance, while allowing them to drill-down into data to find out more.
Sadly, Qlik is now scaling back on improvements and updates for QlikView and focusing on promoting QlikSense instead, a possible reason why its filter and search functions, ad-hoc reporting and graphics are lagging in terms of quality, as mentioned in many user reviews. Also, this platform can prove to be resource-heavy for databases housed on local machines, especially when performing batch update jobs. In addition to inflexible pricing plans and the cost of licensing, quite a few necessary add-ons are paid.
In summary, QlikView is one of the leading in-memory BI tools available in the market today and rates excellently with users in terms of data aggregation and visualization capabilities; however, buyers should factor in its pricing plans and other limitations when searching for the perfect BI solution for their enterprise.

Pros & Cons

  • Data Visualization: Approximately 80% of users who review its data visualization capabilities are satisfied with its intuitive drag-and-drop feature, rich libraries and its range of aesthetically appealing data representation options.
  • Data Preparation: Of users who mention data processing, 83% appreciate the platform’s seemingly limitless data transformation capabilities that help them deep-dive into all possible data relationships to glean actionable insights.
  • Functionality: Among users who share their views on this platform, around 68% say that they are satisfied with the power of its associative query engine that enables faster on-the-fly calculations and analytics aggregation at the speed of thought.
  • Sharing and Collaboration: About 83% of users who comment on sharing capabilities appreciate its multi-tier permissions capabilities and easy sharing of reports with clients via external sharing options.
  • Setup: Around 66% of users who mention ease of setup say that QlikView has a fast implementation cycle.
  • Cost: Pricing plans are inflexible and can be cost-prohibitive for small organizations and startups, though large organizations may find that it offers high value, as stated by 93% of users who mention its cost.
  • Performance: Approximately 42% of users say that performance-wise, this platform is resource-hungry and liable to slow down when crunching large amounts of data on local machines.
  • User Interface and Graphics: Of users who mention user interface, around 44% say that it needs improvement in deep-dive capabilities, as well as its quality of graphics.
  • Reporting: Of users who mention reporting, approximately 46% say that it lacks ad-hoc reporting and built-in reporting capabilities, requiring paid plugins to enhance the graphics quality of reports.

Key Features

  • Direct Data Source Connection: Connect to almost any data source, including cloud, big data, file-based and on-premise data. Pull information from many services (Salesforce, Hive, Teradata) and combine intel seamlessly into unique and intuitive dashboards.
  • Intelligent Visualization: Offer interactive displays and represent data in multiple ways for better data analysis. Flexible visualizations allow users to change and adjust graphics according to screen size.
  • Enterprise Collaboration: Facilitate collaboration for users to share the same dashboard, look at the same view or track one another as they navigate the application.
  • Strong Associations: Leverage the strength of the platform’s built-in association engine to conduct direct and indirect searches across data or within a single field. Identify data that is related and not associated.
  • Self-Service App Building: Build apps and files via the drag-and-drop function. Create individual lists with their visualization while managing and sharing across organizations.
  • Associative Indexing: Combine, transform and ingest data from multiple sources. Gathers data and indexes it to find logical associations. Explore and search big data repositories freely while keeping data intact.
  • Interactive Dashboards: Provide visualization capabilities and improve interaction using tooltip, lasso selection, filtering and drill-down functions. Encourage viewers to explore data by creating smart dashboards and distributing them using interactive elements.
  • In-Memory Application: House the software in memory, so conversions, queries and searches happen quicker and more efficiently. Eliminate problems that traditionally plague slow, on-disk applications. Locate all data in RAM.
  • Web Connectors: Extract data from multiple social networking sites and web-based sources using web APIs. Built-in connectors easily connect to any URL and fetch data.
  • Robust Data Controls: Enable meaningful data manipulation within the application by leveraging unique dashboards, reports and filter views.
  • Data Alerts: Spot anomalies and outliers by requesting context-aware alerts. Monitor and manage data without limitations.

Pricing

License/Subscription Cost Based on a combination of server, user, document and application-based licensing
Maintenance Cost
  • For On-Premise solution, maintenance cost is over and above the upfront fee
  • Standard support services are charged at 20% of the license cost
  • Premium (24X7) support services are charged at 23% of the license cost
  • Installation/Implementation Cost Implementation services are provided by QlikView Consulting or through an implementation partner at an additional cost
    Customization Cost Will vary depending on the functional requirements or services chosen
    Data Migration Cost/Change Management/Upfront Switching Cost Dependent on your current software, amount of data to be migrated, availability of migration tools, complexity of data and gaps between the existing system and the new system.
    Training Cost
    • E-learning or self-learn modules are available free of cost on QlikView.com
    • All other trainings are charged based on volume. Live classroom training or online (virtual classroom) training is charged at $700 per person per day or $3,500 for a dedicated course (1 company) for up to 10 people
    Recurring/Renewal Costs Renewal costs includes software update license and support cost
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    Key Features

    • Standalone Mode: Standalone mode is a web-based cluster manager for creating and distributing clusters on local machines, without using YARN or Apache Mesos. It can be used for local data processing or testing on a smaller scale. 
    • GraphX: A series of API that enable graph-parallel computation and graph generation within the system. It can accomplish ETL, iterative graphing and exploratory analysis. 
    • Machine Learning: The MLlib library enables machine learning at a big data level. It works with Python, R and Scala, and features machine learning pipeline construction and a community-supported set of algorithms. 
    • Distributed Datasets: Datasets are partitioned into smaller segments for distributed processing, called Resilient Distributed Datasets. RDDs are created by parallelizing a set or referencing an external one. 
    • Data Streaming: Spark Streaming is an extension that allows for a continuous data flow, enabling real-time analytics. It receives live data in a stream that it partitions into batches before sending it to the Spark Engine for processing through high-level abstraction called discretized stream.  
    • Integrations: Because it is open source, a vast community is constantly adding extensions and API to the core software. Spark can connect to virtually every mainstream data source, big data solution, warehouse/lake or visualization program. If the connector does not already exist, it could likely be developed. 
    Start Price
    $895
    Quote-based
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    Key Features

    • Minitab Assistant: One of the platform’s key offerings, the Minitab Assistant provides an interactive decision tree that helps users pick the correct statistical analysis for their needs. It also offers users step-by-step support, including definitions of terms and illustrated examples, to help provide better context and clearer guidelines for effective, accurate analysis.
    • Data Preparation: With a seamless, one-click import process, Minitab takes the hard work out of data prep and allows users to quickly sort through and transpose their data.
    • Descriptive and Inferential Statistics: Minitab can perform statistical analysis on data sets and identify distributions, correlations, outliers and missing values. With a variety of analyses at their command, including analysis of variance, regression, experiment design, variable control charts, reliability/survival, users can probe their data with any number of statistical tests.
    • Predictive Analytics: Minitab has advanced predictive analytics and machine learning algorithms at its disposal that allow for an even deeper dive into data. With tools for logistic regression, time series analysis, factor analysis and cluster variables, users can take a peek into future possibilities.
    • Process Validation: The software validates statistical analyses in three stages: process design, process qualification and continued process validation. These capabilities include measurement systems analysis, hypothesis testing, regression/ANOVA, capability analysis, tolerance intervals, measurement system analysis, acceptance sampling and control charts. 
    • Visualizations: Minitab can generate a wide range of graphics and charts for users to display their findings, including scatterplots, matrix plots, boxplots, histograms, charts, time series plots, probability plots and more. These automatically update as data changes, and users can dig deeper on their visualizations with a brushing feature that zooms into sections of their graphs.
    • Macros and Customization: With customizable menus and toolbars, extensive preferences and user profiles and powerful scripting capabilities, users can mold the platform to fit their needs. 
    • Export for Sharing: Users can export their graphics to TIF, JPEG, PNG, BMP, GIF, or EMF files, or directly to Microsoft Word or Powerpoint for presenting to or sharing with others.
    • Language Options: Users can change the user interface and output of the program to English, French, German, Japanese, Korean, Portuguese, Simplified Chinese and Spanish. 
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    Why We Picked Qlik Sense

    Qlik Sense focuses on independent data analysis for enterprises with advanced tools that include AI, natural language processing and automation. User reviews praise it for its associative engine, interactive visualizations and sophisticated analytics.

    Its dataset-linking functionality gets my vote as the most significant differentiator since it makes data modeling seamless and saves time. In comparison, manually linking tables in Tableau and Power BI feels like a huge task.

    It supports fewer features out of the box (69%) compared to Tableau (72%) and Power BI (74%), but this could be intentional. Qlik has ready-to-go modules for analytics, automation and printing, so keeping it lean is a smart vendor move. Users should be aware that additional modules will cost extra, though.

    Qlik Sense SaaS is multi-cloud, so unless the admin assigns separate workspaces, your users won’t be able to create personal dashboards — everything is shared otherwise. Some users said the platform slowed when processing large workloads, which is a common issue with many other platforms. Assess your need for speed before committing to a purchase.

    If upgrading from QlikView, you’ll need to create new objects initially, as both platforms have different architectures. However, the vendor assists in seamless migration with the Qlik Analytics Modernization program.

    Overall, Qlik Sense is an efficient platform that offers many analysis capabilities worth considering. We recommend checking it out if you’re looking for an alternative to Power BI, entrenched in Microsoft technology, or Tableau, with its emphasis on visualization.

    Pros & Cons

    • Integrations: Approximately 86% of users reviewing data sources were satisfied with its wide connectivity.
    • Ease of Use: About 84% of users who cited usability praised the platform for self-service BI.
    • Functionality: Around 80% of the reviews that mentioned features praised it for ETL and data visualization.
    • Data Visualization: About 66% of the users discussing dashboards were satisfied with its interactive displays that allowed them to dig deep.
    • Cost: About 87% of users who mentioned pricing found the tool expensive.
    • Performance: Around 86% of users citing speed said it lagged when processing large and complex datasets.
    • Training: Approximately 69% of users who discussed adoption said there was a significant learning curve.
    • Customization: Around 65% of users who mentioned the freedom to design dashboards said the tool offered limited options.

    Key Features

    • AI Integration: Ask and answer questions in natural language and automate processes using OpenAI and H2O.ai. Feed massive datasets to the LLM and watch as it summarizes the insight for you. Move beyond traditional analysis by working with the IBM Watson API for natural language.
    • Qlik Sense Management Console: Develop apps, manage tasks and connections, and track performance. With QMC, create content and consume data insights.
    • Reporting Service: Keep partners and clients on the same page by sending reports to everyone involved, even non-Qlik users. Download reports, subscribe to charts and sheets, or automate report delivery with its Reporting Service, available with Qlik Sense Enterprise SaaS.
    • Apps: Create interactive dashboards and visualizations for separate tasks within Qlik Sense. An organization can use hundreds of Qlik Sense apps in its tech stack. 
    • Associative Recommendations: Save time defining how data tables relate with its intelligent suggestions, something Tableau and Power BI lack. Bubbles represent data tables and color-coded rings — green, orange and red — inside them indicate the possibility of links between the tables.

    Pricing

    License/Subscription Cost
    On-Premise:
    • License fees include an upfront fee to own the software, plus IP for a fixed term, installation, customization and integration costs
    • Enterprise Edition is offered on-premise and is based on a token system
    • Based on a combination of server, user, document and application-based licensing
    Cloud-Based/SaaS:
    • Based on recurring subscription-based model: $X per user, per month
    Cost may vary depending on the Qlik Sense Pricing plan selected:
    • Cloud Basic, Cloud Business, Desktop, Enterprise Edition or Personal Edition
    Maintenance Cost
    On-Premise: Maintenance cost is over and above the upfront fee
    Cloud-Based/SaaS: Maintenance cost is included in the service fees charged at the time of purchase
    Installation/Implementation Cost
    On-Premise: Included in the upfront cost/subscription cost
    Cloud-Based/SaaS: None
    Customization Cost
    For both on-premise and cloud-based/SaaS, customization costs vary depending on the product and pricing tier chosen, and the level of customization requiredCosts will vary depending on the package selected
    Recurring/Renewal Costs
    On-Premise: Annual recurring fees to be paid over and above the upfront cost include annual renewal, upgrades and ongoing support
    Cloud-Based/SaaS: A recurring monthly fee is charged, which typically includes maintenance, monitoring, upgrades, training and support
    Company Size
    Small Medium Large
    Deployment
    Cloud On-Premise
    Platform
    Mac Windows Linux Chromebook Android

    Why We Picked Dundas BI

    Dundas BI is a web application that stands out for placing the buyer first with built-in ETL, shared licenses and unlimited refreshes. It surpasses market leaders like Power BI and Qlik Sense in native functionality. It’s feature-rich, with 77% of capabilities available out of the box.

    About 72% of users reviewing the interface praised the platform, whereas others felt it was confusing. An open API architecture might be one reason for the UI's clutter, but the vendor offers a way out. You can make onboarding easier by removing components that seem complex.

    Usually, reporting is a loose term for dashboards and static reports and not much else. However, the vendor packs these tools into a neat package at no extra cost. Dashboards are usually static, single-screen views, but Dundas allows embedding reports in them to complement your KPIs. The support team is responsive with clear SOPs and quick responses, and the documentation is detailed.

    On the downside, many users felt it slowed when handling heavy workloads. Performance is critical in business, but every data tool has accompanying tradeoffs, and sadly, it’s often speed. That said, keep in mind that many factors are at play here — the hardware, internet speed, data complexity and database efficiency. Consider them for your use cases when evaluating performance, as they significantly impact how a program responds to user interactions.

    Ultimately, it boils down to this — how much lag can you accept before it impacts your business? A proof-of-concept or, even better, a trial would be your best bet to assess how the platform fares.

    Due to its rich scripting options, the learning curve can be steep. Users felt the feature documentation should cover more information on Javascript and APIs. Most reviewers were satisfied with the pricing, saying it offers value for money.

    In summary, Dundas BI is a powerful tool if you need a high degree of customization, scalability and flexibility. It can handle complex data environments and supports many users concurrently. It would be a good fit for mid to large-sized enterprises as they have diverse data needs and are open to investing in training.

    Organizations with simple data requirements may find the tool a bit over the top and the cost excessive. In such a case, opting for a tool with basic functionality might be a good start. One non-negotiable would be frequent, stable updates. It'll ensure the tool grows with your business over time.

    Pros & Cons

    • Cost: Around 88% of reviewers mentioning pricing said the platform offered value for money.
    • Data Analysis and Visualization: Around 86% of users reviewing dashboards said they helped in decision-making.
    • Service and Support: Almost 83% of users praised support services for being prompt and said they got the help they needed.
    • Functionality: Around 75% of users praised the solution's rich feature set for helping them accomplish their tasks.
    • Ease of Use: Around 72% of users citing user friendliness said they could use it without much difficulty.
    • Training: Around 86% of users citing learning said there was a steep learning curve and documentation was inadequate.
    • Speed: Around 75% of users who reviewed performance said it lagged when handling large data volumes.

    Key Features

    • Data Visualization Sandbox: Create and test data visualizations before using them in dashboards. Experiment with different chart types, color schemes and data combinations without risk. It's an excellent learning tool for teams that want to start using data for decisions.
    • Pattern Identification: The Identify Clusters button is a tool within Dundas BI that examines your dataset. It helps you find patterns in your data by clicking a button rather than manually sorting it. The tool puts similar data into groups that can help spot trends or unusual patterns.
    • Small Multiples: They allow you to compare values on the same scale and axes but in separate charts and graphs. One example is comparing the prices of hotels on an aggregator site.
    • Mobile Insight: Collaborate with your teams through an HTML5 browser, whatever the device. Leave comments and annotations for colleagues on visualizations and share them as a PDF or link. Double-tap to zoom into views, and pinch in and out to see maps and charts.
    • Content Scheduling: Share content by setting a schedule or trigger. Dundas BI offers scheduled sharing via the notifications option. Select the content type from among Excel, CSV, PDF, PowerPoint and PNG formats. Choose from email or file delivery. More distribution methods are available if you install Dundas BI extensions.
    • Administrator Privileges: Create, edit and delete projects and configure security settings. Share projects among tenants and assign or revoke permissions as required. Set up and manage user accounts and view login history. Monitor system and warehouse performance and keep tabs on memory storage with application logs.
    • DundasScript: Do more with your data. Write custom formulas and expressions that aren’t possible with standard connectors or visualization tools. Apply conditional formatting and define how users should interact with visual elements, such as setting up drill downs and tooltips.
    • Contextual Views: View only the information that matters to your role. Dundas BI has a data connector override function that switches to a different data source or schema based on who’s viewing the content.
    • Architecture: Dundas BI has JavaScript, HTML and CSS on the back end with a patented in-memory engine. It’s a C#, Asp.NET application hosted on Microsoft IIS for Windows, systemd for Linux or a Docker or Kubernetes container. The platform is available in hosted and managed versions. Supported databases include Microsoft SQL or PostgreSQL. All screens, including dashboards and report designers, are built on a public API with JavaScript or a REST interface. It makes it easy to customize and embed. Tiers include the user, application and data layers. End users get a smooth user experience with drag-and-drop and select actions. It's open to plugins for adding new functions, formulas, controls, and security and tenant and export providers.

    Pricing

    License/Subscription Cost
    • Dependent on the deployment method and the number of users
    • Offers a flexible license-pricing model and concurrent user licenses.
    Maintenance Cost
    • On-premise: Support and maintenance incur additional costs.
    • Cloud-Based/SaaS: Included in the subscription cost.
    Installation/Implementation Cost
    • On-premise: Typically charged over and above the license cost.
    • Cloud-based/SaaS: Included in the subscription cost.
    Customization Cost
    • This information and section are only included for products in a pricing guide.
    Data Migration Cost/Change Management/Upfront Switching Cost
    • Will vary depending on the functional requirements such as configurable dashboards, operational and dashboard reporting needs, type of data elements required for tracking, the complexity of workflows, forms to collect additional data, UI changes, etc.
    Recurring/Renewal Costs
    • Dependent on the model opted – an annual lease or own in perpetuity.
    Company Size
    Small Medium Large
    Deployment
    Cloud On-Premise
    Platform
    Mac Windows Linux Chromebook Android

    Why We Picked Cognos Analytics

    IBM Cognos Analytics is an excellent BI tool and rates very highly with users on all major counts. Users are unanimous in their praise of its data management and data analysis capabilities to provide a single source of truth. Having ventured into AI-powered tools with the 11.1.3 version in 2018, IBM is making bold strides to incorporate augmented intelligence into the platform. IBM has astutely combined this solution with the capabilities of one of its other offerings, Watson Analytics, for natural language processing - a game-changer for empowering non-technical users to create a vast range of dashboards. With AI-enabled exploration, users can review key drivers of metrics and identify gaps in data, though some users feel that more tools are needed for content store exploration through its relational database. It also rates excellently with users for its data integration and ad-hoc reporting capabilities, efficient metadata management and extensive data modeling features.

    Several strong features of this platform, as noted by reviewers, include Jupyter notebooks, regular updates to the platform and enhancements to data modules, though when it comes to integrating with Online Analytical Processing (OLAP) data sources and IBM Planning Analytics in particular, it comes up short. Version 11 of the platform comes with over-the-top installs for upgrades, which reduces time to set up; though some users feel that integrations built with the current SDK solution can be tedious to implement and maintain. Being part of the IBM software suite, it connects seamlessly to other IBM products under the same umbrella. However, integration with MS-Sharepoint is not supported; this can be managed with workarounds, but only for on-premise setups, not cloud-based deployments. The platform has a rich reporting repertoire with report burst capabilities, pivots and Cognos Event Studio for event-driven reports. However, many users feel that Report Studio should provide the write back capability, which is crucial for business. As for the cost, a majority of users feel that its licensing models are restrictive, especially when compared to other BI solutions; though the vendor seems to address pricing and ease of use with version 11.1.3.

    In summary, Cognos Analytics is among the best BI solutions in the market today and IBM, with its ear to the ground, is delivering enhanced data analysis and reporting capabilities at scale.

    Pros & Cons

    • Data Analysis and Visualization: All users who mention data analysis and presentation unanimously agree that this solution covers the full spectrum of BI analytics capabilities.
    • Data management: All users who mention data preparation praise its data integrations and effective metadata management, which ensure data consistency and accuracy across multiple reporting systems.
    • Functionality: Of users who mentioned this platform’s features, around 90% were satisfied with regular updates and enhancements which allow them to create faster, more responsive dashboards.
    • Reporting: Around 89% of users who mention reporting are satisfied, appreciating its ad-hoc reporting and report-sharing capabilities.
    • Setup: Excellent vendor support coupled with the ease of establishing data connectivity with data sources make installation of this solution a breeze, as approximately 87% of users have mentioned.
    • Cost: Around 87% of users who mention cost feel that its licensing model is expensive when compared to other BI solutions.
    • Training: Approximately 45% of users who reviewed training say that the learning curve can be quite steep and though self-service training is available, they would prefer a formal learning program.

    Key Features

    • Components: Boost the feature set of the core platform with components that enhance data modeling, visualization and analytics capabilities. 
    • Powerful Reporting: Create detailed charts, graphs, maps, voiceovers and repeat functions with the robust, professional reporting suite. Simplify reporting for non-technical users with express mode. 
    • Web-based Interface: Access the platform on any hardware via the web.
    • Natural Language-powered AI: Interrogate data and receive natural, consistent responses with a built-in AI, powered by NLP. 
    • Automated Modeling: Verify and combine data via automated modeling, and assess relationships between separate data points. 

    Pricing

    License/Subscription Cost
    • Dependent on the type of license – workgroup, standard or enterprise (refer pricing section for more details)
    Maintenance Cost
    • Subscription & Support costs are based on a percentage of the license cost (25% of initial license cost)
    • Software Accelerated Value Programs are an incremental charge calculated on a per-case basis, dependent on the specific service that the customer requires. Customers can't purchase Software Accelerated Value Programs without paying standard Subscription & Support cost
    Installation/Implementation Cost
    • Included in license/subscription cost
    Customization Cost
    • Will vary depending on the functional requirements such as configurable dashboards, complexity of workflows, forms to collect additional data, UI changes, etc.
    Data Migration Cost/Change Management/Upfront Switching Cost
    • Dependent on your current software, amount of data to be migrated, availability of migration tools, complexity of data and gaps between the existing system and the new system.
    Training Cost
    • Self-service support is available online
    • Native language support consists of live support and unlimited access for all certified IT technical staff within an organization
    Recurring/Renewal Costs
    • Renewal fee includes license cost and maintenance fee for the new or next year
    Start Price
    $2,900
    Monthly
    Company Size
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    Mac Windows Linux Chromebook Android

    Why We Picked Looker

    Looker is a forerunner in the business intelligence field for a reason; it generates reports that include easy sharing via link, automatic scheduling and a level of granular detail that allows for deeper analysis below the surface. It excels in its filter and drill-down features and creates unique URLs when users make changes to data, leading to enhanced sharing. However, one of its biggest strengths could also be considered one of its biggest weaknesses: its proprietary programming language, LookML which is used to construct SQL queries in the platform. While a flexible and powerful data querying language, of course, LookML isn’t the most accessible to non-technical users, which means that Looker requires an IT or data team to access its full capabilities and has a steep learning curve. Users also note that its data visualizations, while simple and easy to understand, are quite basic and lacking in customization options, particularly in comparison to competitors. Some users say that it may be more appropriate for internal reporting than presentation to shareholders and end-users because of its bare-bones visualization options. However, Looker truly shines when used by enterprises, with its scalability and data accessibility making it a stellar solution that can align departments and provide thousands of users access to data insights. Its price point reflects this, with its pricing being prohibitive to startups as about 88% of users who comment on its cost remark. Overall, Looker is a solid pick for larger businesses that have a team of power users who can maximize its functionality and set it up to deliver to employees across an entire organization.

    Pros & Cons

    • Reporting: Looker features strong reporting features that offer a degree of granularity and scheduling that 100% of users who mention reporting evaluate as a strong benefit.
    • Support: Of the users who say they’ve contacted customer support, 95% say the team’s quick and informative responses are a plus.
    • Data Accessibility: All users who mention accessibility to data say Looker does this well, distributing insights to employees across departments and teams with ease, with 100% of users mentioning this feature believing it is a benefit.
    • Learning Curve: About 74% of users who touch on the platform’s ease of use say that the confusing documentation, lack of training opportunities and difficulty of using programming language make Looker a tough tool to pick up as a beginner.
    • Setup: Of the users who mention implementation, 81% say that setting up the platform is difficult, with integrations not being as plug-and-play as competitors and assistance from IT necessary to the setup process.
    • Speed: Approximately 87% of users who comment on the platform’s speed say that it is slow to render certain queries and often takes a while to load.
    • Functionality: About 78% of users who talk about Looker’s features say that they are left wanting many functions and find the ones that it does have limited in customization or too complex to use easily.

    Key Features

    • Automated Modeling: Connects to relational databases and automatically generates models from the database schema.
    • Intuitive Visualizations: Generates visualizations in real time directly from the specified data source. Choose from an expansive library of visualization options like bar graphs, pie charts, Sankey diagrams, spider web charts, sunburst graphs, chord diagrams, heatmaps, funnels, treemaps and many more.
    • Time Zone Handling: Incorporates data seamlessly into the visualization, regardless of what time zone it is coming from.
    • LookML Data Modeling Language: Create scalable, reusable data models through the proprietary SQL-based data modeling language LookML.
    • Pre-Built Analytics Code: Use its Blocks feature as a starting point for building data analytics models with customizable code blocks. Includes optimized SQL patterns, custom visualization options, pre-built data models and more.

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    All Qualitative Data Analysis Software (135 found)

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    Buyer's Guide

    Predictive Analytics Software Is All About Learning About Future Trends

    QDAS Buyer's Guide Header

    Qualitative data analysis software, or QDAS, explores the what, why and how of research and business information through content analysis. A subset of business intelligence, qualitative data analytics, or QDA, gives well-rounded data results that promote business growth.

    QDAS software doesn’t analyze data. Instead, it’s data management software that assists researchers in analysis.

    Executive Summary

    • Qualitative data analytics provides content analysis to support numbers-based metrics.
    • QDA boosts company revenue, reduces core operational costs and gives you industry-specific insight.
    • Venture capitalists can assess investment risk by studying qualitative parameters like employee sentiment, management expertise, etc.
    • Creating a requirements checklist is essential to assess what you want in a QDAS.
    • Ask questions within your organization and of software vendors to shortlist the best-suited content analysis product for your organization.

    What This Guide Covers:

    What is Qualitative Data Analytics Software (QDAS)?

    QDAS is content and sentiment analysis software to derive business insight from different data types, including text, audio/video, images and social media. Analyzing this data is critical to know what your users want and provide better services. Manual analysis of survey results or feedback forms is a thing of the past, and QDA is now a part of leading analytics platforms.

    Vendors also offer dedicated computer-aided qualitative data analytics software, or CAQDAS, like ATLAS.ti, NVivo and MAXQDA. Some systems serve as feedback repositories that store and tag feedback data for faster access and retrieval. Dovetail and EnjoyHQ are cases in point, though comprehensive feedback analytics platforms are more advanced.

    QDAS supports the below qualitative techniques:

    • Coding and classifying
    • Writing descriptions and memos
    • Finding and annotating data relationships and patterns
    • Audio/visual analysis that includes marking, clipping and transcription
    • Computer-aided text mining
    • Quantitative summaries, diagramming, network and association patterns

    Its supported methodologies include the following:

    A primary attribute of qualitative data analysis is coding. It links your predefined terms and phrases to text or audio/video segments to query and gather them for comparative analysis. Qualitative data analytics is a three-step process of coding, categorizing and identifying themes.

    Primary Benefits

    Incorporating qualitative insight into your data can uncover customer satisfaction metrics and benchmark your product against the competition.

    QDAS Benefits

    Boost Revenue

    Customer feedback is essential to learning what users think of your product. It drives feature improvement and enhanced technical support, helping position your brand better. This insight is significant considering market patterns change suddenly.

    Social listening techniques will tell you how your product is performing before you get the sales and revenue reports. You can manage customer sentiment and establish yourself as a brand that listens to its consumers by proactively addressing issues the minute you learn of them.

    Reduce Costs

    Qualitative research projects aren’t cost-intensive as they need smaller sample sizes and minimal investment. That’s money in the bank.

    You can direct qualitative analytics inward by fine-tuning core operations. Internal surveys and feedback forms inform you how your employees feel about the company and internal workflows. Are they getting caught up in needless processes, impacting the speed of delivery?

    By identifying what’s working, you can emulate winning strategies and flag efforts that aren’t paying off. Consistent employee performance management can reduce attrition, saving onboarding expenses.

    Get Focused Insight

    Long-lasting customer relationships are a testament to your credibility and market reputation. For them to happen, it’s business-critical that your brand message doesn’t get lost in translation, literally. How well your buyers perceive your product is vital, and sales and support chats and social media conversations provide this insight.

    Knowing what the average buyer wants guides creatives and marketing teams in designing ads and campaigns. How your product addresses customers’ requirements will define your outreach and sales planning.

    Assess Investment Risk

    As a venture capitalist, when seeking to invest in a business, you want to know if it’s a solid investment. Sales and revenue figures are not enough to assess if the company has a competitive advantage in the market. Knowing the company’s R&D strengths, management expertise and experience, labor relations and industry cycles is essential. It’s all qualitative data.

    Every company’s annual report includes its performance analysis by its C-suite. This section is known as management discussion and analysis and it contains the current management’s thoughts and opinions about the company. They might also discuss compliance, risks and future plans and projects — a treasure trove for information if you’re planning to invest.

    Key Features & Functionality

    When looking to buy QDAS, it's ideal to assess your organization’s needs by building a requirements checklist. Here, we discuss some primary and advanced capabilities that you might want to consider adding to your list.

    Source Connectivity

    Pull information from all possible feedback sources, including surveys, contact center information, support tickets, complaints and CRMs, review sites, forums and social media. Filter out irrelevant text like greetings and support discussions while collecting this data.

    Master Data Management

    Get the complete picture from the initial touchpoint to purchase by linking user feedback to individual customer IDs.

    Identify preferences and patterns by analyzing individual profiles and matching them to predefined target segments. Align product strategies according to changing trends.

    Self-Service Research

    QDAS solutions don’t automate qualitative research. Instead, they give you the tools to gather data and perform the analysis. Autonomous user actions like drag-and-drop and select-and-click give you the freedom to collate the research results via charts and tables.

    It should be possible to build and run surveys any number of times without technical help. Many QDAS tools provide autonomous access to survey libraries. Surveys and forms should be responsive to render perfectly on your website or mobile app.

    Data Visualization

    Data interpretation is the last mile of analytics, where you understand the results and act on them. An ideal QDAS should give you a semantic layer to visually build code for related datasets.

    The software should give you a clear, customizable view of your research content, showing your notes, highlights and results. Visual aids like orthogonal tree views and bar charts let you show related themes by placing them in a hierarchy.

    Thematic Analysis

    Moving beyond keyword matching, QDAS tools capture the text’s meaning or theme, regardless of the words. This technique helps you collect theme-specific data for sentiment analysis.

    You might want to opt for a solution that offers AI-driven, automatic theme grouping. A theme editor is a must-have feature that lets you edit and arrange the themes as per hierarchy.

    Media Analytics

    A QDA tool lets you evaluate numeric data like the number of social media posts, frequency of tweets, number of likes, etc. Additionally, a mixed-method approach supports the study of the post content, the meaning behind the hashtags, etc.

    Collaboration

    The best QDAS solutions allow you to transfer your qualitative research projects from one computer to another, so your teams always work with the same database. Share project files via email or save them to shared cloud folders like Dropbox, Google Drive or OneDrive.

    Text Analytics

    The best QDAS tools provide you with a dictionary and enable qualitative analysis of all kinds of text. Import articles, e-books, literature reviews and website content into the software and analyze them for insight.

    Organize your data into groups, interlink relevant quotes and expand and refine your categories. Visualize text using word frequency representations, word clouds, comparison charts, tables, concept maps, etc.

    Software Comparison Strategy

    Choosing the right BI solution among numerous software options may seem daunting, but it doesn’t have to be. Start by outlining a precise series of objectives that encompass your business’s core strengths and lay down a solid framework based on your company’s needs.

    We have some great resources to help you get started. Get our ready-to-use requirements template to list your needs. Shortlist and compare vendors against those requirements with a personalized scorecard and our in-depth software comparison report.

    Cost & Pricing Considerations

    When evaluating software, it’s essential to keep your company’s budget in mind. Pricing depends on the deployment strategy, the number and type of user licenses required, additional modules and add-ons, etc. It’s a good idea to consider the support packages on offer.

    You might be able to get pricing plans from the vendor’s website or reach out to them directly. Or get our free pricing guide to determine which top vendors align with your budget.

    Most Popular Qualitative Data Analytics Software

    Choosing from the various qualitative analytics solutions in the market is time-consuming. The SelectHub analyst team has curated a list of popular products based on how well they deliver on the essential requirements to make software selection easier. Let’s look at the top three.

    Tableau

    Tableau is a popular data visualization tool, and its intuitive interface lets you explore survey items and filter them on demographic profiles. Its one-click pivoting feature and built-in statistical measures enable dataset restructuring. Blending geospatial analysis with survey data, you can zoom in and out of geographic areas in maps to derive meaningful insight.

    Tableau integrates with survey platforms like Qualtrics and other qualitative data systems like Daisee and Commerce.ai.

    Tableau QDAS BG

    Sentiment analysis of Android apps in Tableau.

    Power BI

    Besides visualizing quantitative data, Power BI serves as a data storytelling tool by transforming text data into interactive dashboards. It integrates with Azure Cognitive Service for Language to provide key phrase extraction for natural language processing.

    Extract key phrases using Merge Columns and remove blank messages using the Remove Empty filter.

    The Clean transformation lets you remove unprintable characters. The tool's built-in slicer function enables filtering. Icons, images and conditional formatting help analyze text input.

    Power BI QDAS BG

    Sentiment analysis of Hilary Clinton and Donald Trump’s Facebook messages in Power BI

    Oracle Analytics Cloud

    Oracle’s Social Cloud Platform for text analytics can consistently process large volumes of social conversations with speed and at scale. It assigns topics and scores metadata for content consumed by the Oracle Social Engagement and Monitoring Cloud Service and client systems. The platform can identify social media posts as relevant to a particular business issue or opportunity by filtering on topics.

    OAC QDAS BG

    Oracle social cloud platform’s text analytics pipeline.

     

     

    Questions to Ask

    Use these questions as a starting point for internal conversations:

    • What’s your budget? Is your current tool a money sink?
    • Who will use the QDA tool? Which features will they need?
    • What are your company's present and future goals? How will the software fit with your company’s product roadmap?
    • Which deployment method will work best for your company — on-premise, cloud-based or hybrid?
    • How important is scalability?

    QDAS Questions To Ask

    To evaluate the various software available in the market, use these questions to start conversations with QDAS vendors.

    About the Software

    • What types of feedback sources does it support?
    • Does the tool identify all the themes relevant to your business?
    • Does the vendor provide a mobile application? Which functionalities are available?
    • Does the solution provide a theme editor?
    • Is it possible to show key metrics drivers visually?

    About the Vendor

    • What’s the workflow to create statistical data models?
    • Which visualizations does the tool offer?
    • Which features will cost extra?
    • Does the vendor specialize in QDA solutions?
    • Does the vendor provide demos? Is a free trial available?

    In Conclusion

    Qualitative data analytics software gives you a holistic view of current buying trends and business performance with a peek into future opportunities. This buyers’ guide is intended for procurement executives tasked with finding the best QDA software for their organization.

    About The Contributors

    The following expert team members are responsible for creating, reviewing, and fact checking the accuracy of this content.

    Technical Content Writer
    Ritinder Kaur is a Senior Technical Content Writer at SelectHub and has eight years of experience writing about B2B software and quality assurance. She has a Masters degree in English language and literature and writes about Business Intelligence and Data Science. Her articles on software testing have been published on Stickyminds.
    Technical Research By Sagardeep Roy
    Senior Analyst
    Sagardeep is a Senior Research Analyst at SelectHub, specializing in diverse technical categories. His expertise spans Business Intelligence, Analytics, Big Data, ETL, Cybersecurity, artificial intelligence and machine learning, with additional proficiency in EHR and Medical Billing. Holding a Master of Technology in Data Science from Amity University, Noida, and a Bachelor of Technology in Computer Science from West Bengal University of Technology, his experience across technology, healthcare, and market research extends back to 2016. As a certified Data Science and Business Analytics professional, he approaches complex projects with a results-oriented mindset, prioritizing individual excellence and collaborative success.
    Technical Review By Manan Roy
    Principal Analyst
    Manan is a native of Tezpur, Assam (India), who currently lives in Kolkata, West Bengal (India). At SelectHub, he works on categories like CRM, HR, PPM, BI, and EHR. He has a Bachelor of Technology in CSE from The Gandhi Institute of Engineering and Technology, a Master of Technology from The Institute of Engineering and Management IT, and an MBA in Finance from St. Xavier's College. He's published two research papers, one in a conference and the other in a journal, during his Master of Technology.
    Edited By Hunter Lowe
    Content Editor
    Hunter Lowe is a Content Editor, Writer and Market Analyst at SelectHub. His team covers categories that range from ERP and business intelligence to transportation and supply chain management. Hunter is an avid reader and Dungeons and Dragons addict who studied English and Creative Writing through college. In his free time, you'll likely find him devising new dungeons for his players to explore, checking out the latest video games, writing his next horror story or running around with his daughter.