Kyvos offers GenAI capabilities for users seeking quick results for their business queries—whether they are ad hoc, complex, or time-sensitive. This platform streamlines the time-to-value for enterprise data through automation, business language interfaces, and easily accessible insights.
By utilizing business language input, Kyvos Copilot transforms how organizations engage with and extract insights from their data, efficiently managing massive datasets on modern platforms. This innovative tool simplifies critical business calculations and generates answers to queries in natural language.
Additionally, Kyvos Copilot acts as a data wizard by flagging anomalies and delivering tailored insights directly to decision-makers. It empowers users to extract answers to their queries using intuitive LLM-powered GenAI and a universal semantic layer. Through Kyvos Copilot, access to data can be democratized, making interactions with metrics simpler and enabling business users to seamlessly extract insights without needing specialized skill sets.
Key features of the Kyvos Copilot for conversational analytics include:
Conversational Analytics: Allow every user to engage with KPIs in a more meaningful way, regardless of their complexity or scale, truly democratizing access to data.
Guided Data Exploration: Easily navigate your data with contextual prompts and cues. You can backtrack through conversations, refine your queries, or explore alternative paths effortlessly.
Intelligent Data Selection: Remove the uncertainty in choosing the right data model. Access consistent results with standardized views tailored to your specific questions.
Data Governance: Use the power of AI while protecting your data with Kyvos' multi-layered security architecture, ensuring strong privacy protection.
Text-to-Query: Enter queries in natural language to generate advanced business calculations and formulas in SQL and MDX seamlessly.
Automated Processes: Use GenAI-driven analytics to streamline workflows, significantly reducing the time and effort required for in-depth data discovery.
In this section, you will see: