Product release
- 8 min read
Runibex launches Runibex Insights, a managed platform for explainable analytics and faster business decisions
Looking for the needle in the data haystack is a nightmare. Runibex Insights helps teams turn natural-language questions into structured insights, transparent SQL, interactive visuals, and exportable outputs across governed enterprise data environments.
London, UK — March 18, 2026 — Runibex today announced Runibex Insights, a managed platform designed to help business and operations teams, including non-technical people, move faster from question to answer. Runibex Insights enables users to ask business questions in natural language and receive structured insights, transparent SQL queries, interactive visualizations, and exportable data outputs grounded in governed enterprise data.
Organizations that cannot interrogate their own data estate in real time are structurally slower than those that can. The gap compounds every day. Across industries, the distance between a business question and a usable answer remains measured in days, handoffs, and manual interventions: Switching between dashboards, half-baked data structures, waiting for analyst backlog, and reconciling exported spreadsheets. The result is not limited to inefficiency but competitive exposure, as pricing failures, fulfilment, partner performance, and commercial decisions are made on stale or incomplete information.
Rather than operating as a generic chatbot, Runibex Insights is built for controlled enterprise use, with source transparency, auditability, and support for multiple databases and analytics environments.
Runibex Insights
Is already embedded in production within Runibex’s own product portfolio, powering the analytics layer inside NGI Commerce and Centrigate.
“Runibex Insights was built to flatten all the layers between data, analysis, and action. Business teams do not just need a summary. They need to understand why something is happening, inspect the logic behind the answer, explore the data visually, and take the output into their own workflow. They own the field, why not the data as well? Our goal is to make that process faster, more transparent, and more operationally useful.”
Ismail Arslan
Customers use Runibex Insights by connecting approved enterprise data sources and enabling governed access for business users and operational teams. A user can ask why sales declined, review the generated SQL, inspect the supporting data table, receive a structured breakdown of trends, drivers, and recommended actions, and generate interactive charts on demand within the Runibex Insights experience. Existing analytics tools such as Power BI can also be linked as part of the wider reporting context, while structured answers, supporting tables, interactive visualizations, and downloadable outputs are generated directly within Runibex Insights.
Self-service analytics tools like Tableau Ask Data or Microsoft Copilot for Power BI assume that the data is clean and query-ready, but in practice, it rarely is. The core differentiator of Runibex Insights is the data preparation layer managed by Runibex or their partners. Rather than relying only on direct plug-and-play access to raw source systems, experienced consultants analyse the customer’s databases, perform the required ETL and data modeling steps, and prepare the data foundation needed for stronger retrieval quality, faster SQL generation, and more reliable outputs. This allows the product to be tailored to each customer’s environment, schemas, and operational context. Runibex Insights is designed for cloud deployment and multi-tenant operation, with tenant and user isolation built into the platform. To request a product briefing, review pilot options, or explore integration scenarios including NGI Commerce, contact info@runibex.com or visit runibex.com.
“Before Runibex Insights, our teams had to move between dashboards, ad hoc SQL, and exported spreadsheets just to understand what changed and why,” said one of our clients. “Now we can ask a question, see the reasoning, inspect the query, review the underlying data, and export what we need in one flow. It saves time and makes our analytics environment much easier to use.”

VP of Operations, Enterprise Retail
This preparation phase is critical. It transforms your database from a technical artifact into a business-ready semantic model that understands your organization’s language.
- The Runibex Insights Workflow
1
Natural Language Question
Business user asks: “What were our top-selling products last quarter by region?”
2
Semantic Interpretation
Platform maps question to curated data model using business logic
3
Transparent SQL Generation
System generates and displays SQL query for full auditability
4
Structured Insights
Results delivered with trends, drivers, and recommended actions
5
Interactive Visualization & Export
Charts, tables, and export options (PDF, CSV, XLSX) available instantly
Trend Analysis
Automatic identification of patterns, seasonality, and anomalies in your data
Key Drivers
Understanding what's causing changes in your metrics and KPIs
Recommendations
Actionable next steps based on data patterns and business context
Interactive Visuals
Dynamic charts and graphs that update as you explore different dimensions
Ready to Transform Your Analytics?
Request a product briefing to see how Runibex Insights can accelerate decision-making in your organization

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