Bartley Richardson, senior director of engineering and Artificial Intelligence infrastructure at NVIDIA, highlights how agentic Artificial Intelligence systems are redefining automation in enterprise environments. Speaking on the NVIDIA AI Podcast, Richardson emphasized the importance of rethinking traditional technology deployment to maximize value and efficiency by harnessing agent-based architectures that go beyond basic automation.
According to Richardson, reasoning models are central to agentic systems, enabling artificial agents to ´think out loud´ much like humans do in brainstorming sessions. This enhanced planning and flexibility is exemplified in NVIDIA´s Llama Nemotron models, which allow users to toggle reasoning capabilities depending on specific enterprise tasks. Richardson noted that successful deployment requires accommodating a reality where multiple agents from various vendors coexist, creating a need for seamless integration to support employees and business processes.
To address interoperability and workflow optimization, NVIDIA has developed the AI-Q Blueprint, which guides teams in building agentic Artificial Intelligence systems that automate complex tasks, break down operational silos, and accelerate digital transformation. The open-source NVIDIA Agent Intelligence (AIQ) toolkit is a core component, offering profiling and evaluation tools to streamline agent workflows and achieve significant efficiency gains—in some cases, improving process speed by up to 15 times. Richardson also stressed the need for pragmatic expectations, acknowledging that while agentic systems are not perfect, achieving even partial automation can produce immense business value, potentially completing the majority of routine work and freeing up human resources for higher-level tasks.