Presented by Microsoft and NVIDIA
Every generation of leaders has its own business transformation challenges to face. A decade ago, modernization meant cloud migration. Five years ago, it meant enabling remote and hybrid work. And just a few short years ago, the generative AI boom prompted organizations globally into enterprise AI adoption.
The demo era is ending
In the years since AI became the big new buzzword, generative models proved to be a crucial stepping stone, but the path to Frontier Transformation is agentic AI. Machine-generated answers aren’t enough when what the business really needs is sophisticated AI that can act. Experimenting with agentic capabilities was a necessary step; prototypes and pilots have proliferated. But the chapter on demos is closing.
Scale acceleration is beginning. In 2026, organizations that want to see agentic results that impact the bottom line must move from the knowledge layer to the action layer. And they certainly intend to—according to Deloitte’s 2026 AI report, 54% of enterprises surveyed expect to move 40% or more of their AI experiments into production. How hard could it be?
Agents are a different engineering problem—here’s why
Moving past prototype is the hardest part. Shipping an agent to production isn’t just a harder version of shipping a generative AI chatbot. Agentic production is a different engineering problem altogether, requiring orchestration, memory, runtime isolation, and ground-up observability—all required to deliver an agent that reasons, acts, and collaborates.
Once an agent moves into production, every tool and data source becomes an integration challenge. Running the agent requires isolation between sessions, durable state, and runtimes that hold up under a working load. And operational blindness turns agentic assets into liabilities. Once an agent is live, you need the ability to monitor, understand, and troubleshoot its systems across its lifecycle—a whole new discipline of observability is required, but teams don’t know how to get there. But we’ve been here before. When microservices faced a similar crossroads a decade ago, the lesson was this: those who recognized the need for a platform approach are the ones with the best success.
The production gap: Why most agent projects stall before scale
Moving from demos to real-world deployment introduces a host of challenges: how to chain multiple steps together reliably, how to ensure security and identity across agent components, how to monitor and improve agent behavior, and more. Many teams attempt to address these challenges with custom scaffolding, but the risk is often greater than the reward—slower time to value, gaps, and unreliability.
This is where the platform approach comes in. Without shared context and intrinsic trust, AI is difficult to rely on and hard to scale, with data fragmentation keeping production agents from matching pilot performance. Agents lack business context, enterprise signals are fragmented, development is complex and brittle, and security and governance are bolted on.
The solution is a unified platform that empowers developers to build, run, and scale agentic and physical AI end-to-end. Together, Microsoft and NVIDIA partner to enable this platform approach, helping enterprises effectively take agents from pilot to production.
What an agent factory actually looks like
Frontier Firms are those that not only successfully take agents into production but that also understand monolithic agents aren’t enough—a system of collaborative agents is key. They are the ones building agent factories, operating on a production philosophy that utilizes a reliable foundation and repeatable process for cross-functional, collaborative agentic solutions at enterprise scale.
So what is an agent factory? It’s a coordinated production architecture that combines an agentic control plane with accelerated specialist models, agents, and skills, allowing organizations to enable a governed system of models and agents at enterprise scale.
Within this production system, Frontier Firms are building heterogenous systems of agents, where the right models, tools, skills, and specialist agents are appropriately orchestrated at the right step of every job. The result is broad-reasoning frontier agents that plan, synthesize, and collaborate with users and other agents while accelerated specialist models and agents execute domain-specific work with speed and efficiency.
Microsoft and NVIDIA jointly empower this agentic factory approach. Microsoft delivers the enterprise control plane enabling runtime, identity, governance, observability, data access, and tool connectivity that agents need to collaborate safely. NVIDIA delivers the intelligence, acceleration, and specialist layers that give enterprises a repeatable way to move from isolated demos to governed, scalable agentic systems that can work together across business processes to accomplish meaningful tasks, not just answer questions.
At Microsoft Build 2026, Microsoft and NVIDIA showed how this architecture is coming together across cloud, local, and developer environments, bringing NVIDIA models, blueprints, and tooling into the Microsoft ecosystem to enable systems of agents with governance and speed:
NVIDIA models are now on the hosted agents in Foundry Agent Service.
NVIDIA’s open model portfolio on Foundry now spans agentic, physical, and scientific AI.
NVIDIA Agent Toolkit and NVIDIA NemoClaw blueprints give developers an open-source platform to build production agents on Foundry.
Foundry Local on Azure Local is now on the NVIDIA RTX PRO 6000 Blackwell Server Edition platform.
NVIDIA OpenShell integrates with GitHub Copilot for secure agent development.
You can read more about these announcements here.
Where to go from here
The organizations that win with agentic AI will be the ones that invest in a factory approach. Ready to take the next step on your agentic journey? Explore these resources:
Dive deeper into the Microsoft Agent Factory—read the Agent Factory blog series.
See how developers accelerate AI deployment with NVIDIA NIM microservices for high-performance AI.
Learn more about Microsoft and NVIDIA’s latest developments for success with agentic AI—read the announcements from Microsoft Build 2026.
See how NVIDIA Nemotron 3 Ultra powers faster, more efficient reasoning for long-running agents.
To discuss your Microsoft Foundry needs or learn more, contact us here.
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