Nvidia Blog 16小时前
NVIDIA’s Bartley Richardson on How Teams of AI Agents Provide Next-Level Automation
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

NVIDIA的Bartley Richardson在AI Podcast中分享了企业如何成功部署自主AI系统。他认为自主AI是企业自动化的下一阶段,AI推理模型在系统中至关重要,能够“大声思考”并优化规划能力。NVIDIA的Llama Nemotron模型独特之处在于,用户可以在同一模型中切换推理功能,以适应特定任务。他还介绍了NVIDIA的AI-Q蓝图,该蓝图使用开源NVIDIA Agent Intelligence (AIQ) 工具包来评估和分析代理工作流程,从而更容易优化和确保代理、工具和数据源之间的互操作性。即使自主系统会犯错,但如果能完成60%-80%的任务,也具有巨大的商业价值。

🤖 自主AI是企业自动化的下一阶段,通过AI推理模型增强系统能力,使AI能够“大声思考”并优化规划。

🔀 NVIDIA的Llama Nemotron模型允许用户在同一模型中灵活切换推理功能,以适应不同的任务需求,从而优化性能。

🛠️ NVIDIA开发了AI-Q蓝图,利用开源AIQ工具包评估和分析代理工作流程,帮助企业优化代理系统并确保互操作性,已帮助客户将工具调用链的速度提高了15倍。

🎯 即使自主AI系统会犯错,但只要能完成大部分任务(如60%-80%),就能为企业带来显著的商业价值。

Building effective agentic AI systems requires rethinking how technology interacts and delivers value across organizations.

Bartley Richardson, senior director of engineering and AI infrastructure at NVIDIA, joined the NVIDIA AI Podcast to discuss how enterprises can successfully deploy agentic AI systems.

“When I talk with people about agents and agentic AI, what I really want to say is automation,” Richardson said. “It is that next level of automation.”

Richardson explains that AI reasoning models play a critical role in these systems by “thinking out loud” and enabling better planning capabilities.

“Reasoning models have been trained and tuned in a very specific way to think — almost like thinking out loud,” Richardson said. “It’s kind of like when you’re brainstorming with your colleagues or family.”

What makes NVIDIA’s Llama Nemotron models distinctive is that they give users the ability to toggle reasoning on or off within the same model, optimizing for specific tasks.

Enterprise IT leaders must acknowledge the multi-vendor reality of modern environments,  Richardson explained, saying organizations will have agent systems from various sources working together simultaneously.

“You’re going to have all these agents working together, and the trick is discovering how to let them all mesh together in a somewhat seamless way for your employees,” Richardson said.

To address this challenge, NVIDIA developed the AI-Q Blueprint for developing advanced agentic AI systems. Teams can build AI agents to automate complex tasks, break down operational silos and drive efficiency across industries. The blueprint uses the open-source NVIDIA Agent Intelligence (AIQ) toolkit to evaluate and profile agent workflows, making it easier to optimize and ensure interoperability among agents, tools and data sources.

“We have customers that optimize their tool-calling chains and get 15x speedups through their pipeline using AI-Q,” Richardson said.

He also emphasized the importance of maintaining realistic expectations that still provide significant business value.

“Agentic systems will make mistakes,” Richardson added. “But if it gets you 60%, 70%, 80% of the way there, that’s amazing.”

Time Stamps

1:15 – Defining agentic AI as the next evolution of enterprise automation.

4:06 – How reasoning models enhance agentic system capabilities.

12:41 – Enterprise considerations for implementing multi-vendor agent systems.

19:33 – Introduction to the NVIDIA Agent Intelligence toolkit for observability and traceability.

You Might Also Like… 

NVIDIA’s Rama Akkiraju on How AI Platform Architects Help Bridge Business Vision and Technical Execution

Enterprises are exploring AI to rethink problem-solving and business processes. These initiatives require the right infrastructure, such as AI factories, which allow businesses to convert data into tokens and outcomes. Rama Akkiraju, vice president of IT for AI and machine learning at NVIDIA, joined the AI Podcast to discuss how enterprises can build the right foundations for AI success, and the critical role of AI platform architects in designing and building AI infrastructure based on specific business needs.

Roboflow Helps Unlock Computer Vision for Every Kind of AI Builder

Roboflow’s mission is to make the world programmable through computer vision. By simplifying computer vision development, the company helps bridge the gap between AI and people looking to harness it. Cofounder and CEO Joseph Nelson discusses how Roboflow empowers users in manufacturing, healthcare and automotive to solve complex problems with visual AI.

NVIDIA’s Jacob Liberman on Bringing Agentic AI to Enterprises

Agentic AI enables developers to create intelligent multi-agent systems that reason, act and execute complex tasks with a degree of autonomy. Jacob Liberman, director of product management at NVIDIA, explains how agentic AI bridges the gap between powerful AI models and practical enterprise applications.

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

自主AI AI推理模型 NVIDIA AI-Q 企业自动化
相关文章