Agentic AI systems are designed to resolve complex problems with minimal direct human supervision. These systems consist of multiple conversational agents that can communicate with each other and are capable of planning, decision-making, and adapting to new information. They can operate in both centralized and decentralized manners, depending on the architecture.
Key features of agentic AI systems include:
Agentic AI differs from traditional AI systems in its ability to understand context, adapt to new information, and collaborate with humans to solve complex challenges. It is particularly useful in enterprise settings for automating complex processes and workflows that deterministic systems, like Robotic Process Automation (RPA), cannot handle alone.
The architecture of agentic AI systems is designed to mimic cognitive abilities and agency, allowing intelligent agents to navigate complex real-world scenarios and make informed decisions. This approach aims to operate more like human employees, understanding context and instructions in natural language, setting goals, reasoning through subtasks, and adapting decisions based on changing conditions.
Price: