Agentic AI is predicted to revolutionise the way businesses are run with the next generation of autonomous systems capable of independent decision-making.
With all the noise surrounding AI in general, and Agentic AI specifically, it’s hard to know what’s what anymore. Is Agentic AI a new name for old, rule-based technologies or is it something more that utilises LLMs and generative AI in a novel and unique way?
Quiq’s Co-founder and SVP of Product & Engineering Bill O’Neill and VUX World’s Kane Simms share the difference between machine learning and other automation technologies, the tools and skills needed, and most importantly, how you can tell whether your AI agent is ready for your customers.
Watch this recording to learn how to:
- Plan and scope an Agentic AI project
- Design and build an on-brand AI agent
- Refine performance with real-time LLM observability
- Overcome the most common challenges related to reliability, security, and privacy
- Identify if your AI agent is ready for your customer
On-demand webinar
Agentic AI: What it means for your customer experience
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