Introducing ReACT LLM Agents: A Secret to More Capable AI
Last Updated on December 21, 2024 by Editorial Team
Author(s): Krishan Walia
Originally published on Towards AI.
An introduction to ReACT LLM Agents and why they have the potential to make AI more capable in an intuitive and beginner-friendly way.
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Imagine, you are travelling back home with your friends from a location. Seeing that some friends have their homes along a common way, you all decided to carpool to the desired locations.
You have added all the destinations as stops in the car booking application. The car booking application has provided you with the overall fare of the trip, and not everyoneβs share. You and all your friends decide to divide the fare according to the distance from their home to the location.
In order to divide the fare justifiably, you have to reason on getting the individual distance of the location from their respective destinations, and then act to calculate the fair fare distribution.
Thatβs exactly how a ReAct agent works!
Photo by Clint Patterson on UnsplashReasoning is second nature for humans, and thatβs probably the most crucial thing that enhances our decision-making capabilities. We always try to reason facts before coming to any conclusion or acting upon something, and thatβs what comprises the principle of a ReACT agent.
A ReACT agent is a special type of Artificial Intelligence Agent that utilises both Reasoning… Read the full blog for free on Medium.
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Published via Towards AI