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What Are Agentic Workflows?

Agentic workflows are structured processes where AI agents make decisions, solve problems, and perform tasks with minimal human input.

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Agentic workflows FAQs

Agentic workflows refer to automated processes where AI agents, equipped with reasoning and decision-making capabilities, autonomously execute a series of tasks to achieve a complex goal.

Traditional automation follows strict predefined rules, whereas agentic workflows allow AI agents to adapt, learn, and make decisions dynamically within a given context to complete tasks.

Benefits include increased efficiency, reduced manual intervention, improved accuracy, faster problem-solving, and the ability to handle more complex and adaptive processes.

Agentic workflows can be applied in customer service, sales automation, supply chain optimization, data analysis, content generation, and personalized marketing campaigns.

AI agents break down a high-level goal into smaller sub-tasks, execute them, and use feedback loops to adjust their actions and achieve the overall objective autonomously.

LLMs provide the natural language understanding and generation capabilities that allow AI agents to interpret requests, communicate, and generate appropriate actions or responses.

Challenges include ensuring reliability and safety, managing unexpected outcomes, integrating with existing systems, and maintaining transparency in AI decision-making.