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How the Atlas Reasoning Engine Powers Agentforce

Autonomous, proactive AI agents are at the heart of Agentforce. But how do they work? Let's look under the hood.

Shipra Gupta

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Reasoning engine FAQs

A reasoning engine is an AI component that applies logical rules, domain knowledge, and data to infer conclusions, make decisions, or solve problems.

It processes input data, queries a knowledge base, and uses inference mechanisms (e.g., rule-based, probabilistic) to derive new facts or logical deductions relevant to a query.

In AI agents, a reasoning engine enables the agent to understand goals, plan sequences of actions, make informed decisions, and adapt to dynamic environments effectively.

It allows AI systems to move beyond simple pattern recognition to perform complex logical inferences, anticipate outcomes, and construct multistep solutions to novel problems.

Salesforce Atlas refers to its platform services and data architecture, which underpins how reasoning engines and AI models (like those in Agentforce) process and use customer data for intelligent actions.

Knowledge bases provide the structured information, facts, and rules that reasoning engines use as their foundation for making inferences and generating logical conclusions.

Benefits include more robust automation, enhanced decision support, deeper analytical capabilities, and the ability to create more intelligent and adaptive business applications.