
Since the debut of ChatGPT in late 2022, the AI narrative has rapidly evolved from generative tools to the promise of agentic AI—autonomous systems touted as replacements for entire departments.
However, this dream often ignores the engineering discipline required for enterprise-grade performance, where even a 1% error can undermine trust.
The tech industry’s fascination with open-world AI and the pursuit of artificial general intelligence can be counter-productive.
These moon-shots consume resources and foster disillusionment when the technology fails to deliver.
Instead, real value lies in solving closed-world problems—clearly defined, repetitive tasks with measurable outcomes. Examples include fraud detection, invoice reconciliation, contract validation, and claims processing.
Though mundane, these use cases are mission-critical for enterprise operations.
True AI agents are not prompt-driven chatbots. They’re event-driven, autonomous systems that respond to changes in the digital environment, operate asynchronously, and vanish once tasks are complete.
This invisible, efficient operation aligns perfectly with enterprise demands for scalability, reliability, and performance.
Enterprises don’t need flashy demos—they need tools that deliver. By focusing on practical, bounded challenges, AI can build trust and drive real transformation, one solution at a time, moving beyond hype to become a dependable business asset.
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