Best Data Visualization Software for PostgreSQL - Page 3

Find and compare the best Data Visualization software for PostgreSQL in 2026

Use the comparison tool below to compare the top Data Visualization software for PostgreSQL on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

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    RATH Reviews

    RATH

    Kanaries Data

    RATH is more than a data analysis and visualization tool like Tableau. It automates your Exploratory data analysis workflow by using an Augmented Analytic engine to discover patterns, insights, and causals, and presents those insights in a powerful auto-generated multidimensional data visualization.
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    Supadash Reviews

    Supadash

    Supadash

    $39 per month
    Link your database and quickly obtain AI-generated visualizations to monitor your application metrics effectively. You can eliminate the hassle of coding or constructing SQL queries whenever insights about your data are needed. Allow AI to effortlessly assemble a dashboard for your application in mere seconds. To facilitate chart creation from your data, Supadash necessitates read-only access to your database and ensures that it will not alter any information within it. Establishing a read-only user will ensure seamless functionality. In just a few moments, Supadash will provide a comprehensive dashboard tailored for your application. This tool not only simplifies data analysis but also enhances your ability to make informed decisions rapidly.
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    Lumi AI Reviews
    Lumi AI serves as a comprehensive analytics platform designed for enterprises, allowing users to delve into data and derive personalized insights through natural language inquiries, which removes the necessity for knowledge in SQL or Python. This platform provides a range of features, including self-service analytics, conversational analytics, customizable visual representations, knowledge management, smooth integrations, and strong security measures. It caters to various teams such as data analysis, supply chain management, procurement, sales, merchandising, and financial planning by delivering actionable insights that align with specific business terminology and metrics. Lumi AI's intelligent workflows can manage both straightforward and intricate queries, revealing underlying causes and enabling sophisticated analyses while effectively interpreting language tailored to business contexts. Additionally, Lumi AI seamlessly connects with multiple data sources and upholds enterprise-level security by processing data within the client's infrastructure and implementing advanced user permissions and query management, thereby fostering a secure and efficient analytics environment. This multifaceted approach ensures that organizations can harness their data to drive informed decision-making and strategic growth.
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    Channel Reviews
    Pose any inquiry regarding data in straightforward language. Connect to your database, inquire, and receive responses effortlessly. Access the insights you require without needing to understand SQL. Finally, enjoy true self-service for your data insights. Formulate queries in plain language, regardless of the complexity of your data warehouse; Channel adapts to retrieve the answers you seek using simple English. Stunning visual representations are automatically created by Channel for your data, selecting the appropriate chart type based on your preferences. Real self-service is at your fingertips. Tailored for everyone from analysts to product managers, Channel eliminates the delays in obtaining the data you require. Uncover the questions you should be exploring. Channel proactively identifies insights you weren't aware you needed by conducting preliminary analyses of your data warehouse. Leverage your expertise. Channel absorbs knowledge from every inquiry it encounters, encouraging you to ask the most relevant questions. Maintain shared definitions to track how key terms are understood throughout your organization, fostering clarity and consistency across teams. Ultimately, this empowers users to make informed decisions based on a collective understanding of data definitions and insights.