CONTENTS

AI orchestration 

Perhaps one of the biggest changes seen is the move from Gen AI tools, the most basic form of chatbots, to a new generation of AI agents; software that has the ability to execute a much more sophisticated chain of control. 

 

To give an illustration of what we’re talking about, consider this: a business trip booked from home. To book travel, I will start by talking to my travel Alexa, and ask it to coordinate with my Outlook. I will then have another agent coordinating all the necessary documentation. I may need another agent to manage my house while I’m away, automatically switch lighting and heating off for example. The agents' abilities to do all this requires multi-modal capability, understanding email, telephone conversations, images on websites and more. 

 

Previously, that process has been very difficult.  
Agent-based systems use a new principle, based on very large, unstructured data sets, that can adapt to different scenarios, rather than following set responses to a series 

of prompts. By using agents, users can direct an AI-driven workflow through natural language processing, rather than through code. 

This means that in the future we’ll be able to receive (and react to) AI-generated phone calls; an example of the way that changes can be integrated.  

RPA and Gen AI integration 

 

RPA (Robotic Process Automation) is a technique for automating simpler business processes. 

With many industries already using RPAs, it’s a market that’s growing quickly. According to Statista, the RPA market will reach $13 billion by 2030, more than doubling in size from 2020.  

RPA’s capability to manage a range of repetitive tasks allows it to be used in various scenarios, including those involving natural language, such as phone calls, which were previously not feasible. Combined with AI agents,  

TRENDS 
REPORT

2025

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