About TrendForce News

TrendForce News operates independently from our research team, curating key semiconductor and tech updates to support timely, informed decisions.

[Sponsored Content] Where Do You Stand as AI Reshapes Industries?


2026-06-29 Emerging Technologies editor

2026 is widely regarded as the first year of physical AI and agentic AI. This wave of AI adoption is sweeping across the globe, while simultaneously fueling anxiety for both individuals and enterprises. NVIDIA CEO Jensen Huang, often referred to as the “Godfather of AI,” once put it this way: “AI is unlikely to replace you, but someone who is better at using AI than you might.”

This statement captures the essence of the new AI era — whether for individuals or businesses, embracing AI is no longer optional if they want to avoid falling behind.

AI Doesn’t Have to Be All at Once — Progress Can Be Incremental

Driven by anxiety, many companies fall into the trap of believing that keeping up with AI requires massive investments in top-tier computing infrastructure from day one. Yet the pressure of such budgets often leaves them stuck in hesitation. In reality, both individuals and enterprises should choose AI tools and development strategies based on factors such as task requirements, application scenarios, and organizational adaptability.

True AI transformation requires breaking down ambitious visions into executable stages. This iterative deployment model not only helps distribute risks effectively, but also allows teams to accumulate data assets and technical confidence through real-world implementation.

More importantly, AI deployment is never a one-time build, but a gradually evolving journey—starting from the edge and progressively moving toward the core.

A Multi-Layered AI Ecosystem: Tailored Strategies from Cloud Backbone to Factory Floor

Looking across today’s global AI transformation landscape, the NVIDIA ecosystem has evolved into a diverse and complementary network of solutions designed to meet different scales and application scenarios.

On one end are the “backbone-level” solutions built by international IT giants such as Dell Technologies, Hewlett Packard Enterprise, and Lenovo, which deeply integrate powerful computing architectures into enterprise hybrid clouds and centralized data centers.

On the other end are hands-on specialists such as Advantech, companies deeply rooted in regional and vertical industries. These experts focus on factory production lines, hospital operating rooms, and logistics warehouses, striving to bridge the “last mile” of the physical edge. Their goal is to deliver highly adaptive AI solutions for frontline industries that require real-time decision-making in harsh physical environments.

No matter which direction they take, major vendors are all advancing in their respective areas of strength, collectively assembling a complete AI transformation puzzle for the market.

For most enterprises, however, the most practical path is not a leap to a fully integrated solution, but a step-by-step progression along a three-stage deployment journey that extends from the edge toward the core.

  1. AI validation starting from edge nodes

Enterprises can begin by deploying lightweight edge computing modules at a single production line or key monitoring node. This step is essentially about establishing “perception capabilities” at the edge, enabling equipment to perform anomaly detection or basic decision-making. With relatively low cost and fast implementation, this stage serves as the starting point for validating AI value.

  1. AI expansion from single-point scenarios to systematic deployment

Once single-point validation is successful, AI applications begin expanding from individual nodes to multiple sites. Through industrial-grade edge AI systems, enterprises can integrate multi-point data for localized processing, enabling AI to evolve from a “tool” into a “domain capability” and deliver broader, organization-wide efficiency gains.

  1. From data feedback loops to the core decision-making hub

As edge and field applications gradually mature, large volumes of data flow back to enterprise core systems and high-performance computing platforms for analysis and model optimization. At this stage, AI is no longer merely a frontline tool, but begins to drive enterprise decision-making in reverse, enabling the core to develop stronger predictive and strategic capabilities.

In this AI transformation race, edge-focused specialists such as Advantech precisely embody the essence of the “Applications” layer in Jensen Huang’s “five-layer cake” theory. While NVIDIA continues pushing the limits of chips and systems at the foundational layer, industrial computing experts operating at the application layer essentially serve as “technology translators.”

Their key value lies in transforming rigid AI models and opaque computing systems into industrial-grade solutions capable of withstanding high temperatures, vibration, and dust interference, while remaining compatible with legacy machine communication protocols.As a result, frontline enterprises no longer need to spend years training highly specialized hardware compatibility experts before achieving practical AI deployment. Instead, they gain ready-to-use operational capabilities right out of the box.

Many Roads Lead to Rome — The Key Is Finding the Right Deployment Strategy

AI is reshaping the industrial landscape at an irreversible pace, and an enterprise’s position is never a static choice, but an ongoing process of dynamic evolution. The real key lies in whether organizations can clearly assess their own conditions and identify the right entry point within the broader ecosystem, then progressively advance along a path that moves from the edge toward the core, building their own AI growth trajectory.

(Photo credit: Freepik)



Get in touch with us