Agentic analytics software uses autonomous AI agents to analyze data, generate insights, and trigger actions without direct user input. These platforms go beyond traditional business intelligence or augmented analytics by enabling agents to reason through complex tasks, adapt based on feedback, and operate based on defined goals or constraints.
Predictive analytics tools are different from agentic analytics platforms as they forecast future outcomes based on historical data. Agentic analytics takes a more advanced, autonomous approach. These platforms use AI agents not only to predict but also to interpret data, reason through multi-step tasks, explain their logic, and take contextual actions. Unlike predictive tools that require human intervention to analyze and act, agentic systems are self-directed, enabling continuous, insight-to-action workflows with minimal user input.
Agentic analytics tools continuously scan connected data sources, detect trends or anomalies, and proactively deliver forecasts, explanations, or workflow triggers. They support natural language interfaces, provide explainable outputs, and often integrate with external systems for end-to-end decision automation. This software is used by data teams, business users, and operations professionals seeking real-time, self-directed analysis that reduces manual effort and enhances decision velocity.
To qualify for inclusion in the Agentic Analytics category, a product must:
Employ autonomous or semi-autonomous AI agents for data analysis
Support multi-step reasoning or task chaining for insight generation
Trigger actions or workflows based on data-driven agent outputs
Provide explainable outputs or reasoning logs from agents
Allow user-defined goals, prompts, or parameters for agent behavior