Introduction
The semiconductor industry serves as the foundation of modern technology, powering everything from consumer electronics to the AI-driven hyperscale data centers that process vast amounts of information. The complexity of semiconductor manufacturing requires a highly specialized and interdependent supply chain. Upstream manufacturers and services-based companies provide the critical tools, components, and subsystems necessary for chip production, ensuring that fabrication facilities can produce increasingly powerful and efficient semiconductors. As AI adoption accelerates, demand for advanced chips is reshaping the supply chain, requiring innovations in wafer fabrication, subsystem manufacturing, and precision engineering.
The Foundation of Semiconductor Manufacturing
Semiconductor fabrication is one of the most capital-intensive and technically challenging manufacturing processes, requiring extreme precision and cutting-edge technology. At the heart of this process is wafer fabrication equipment (WFE), the highly specialized tools that enable semiconductor manufacturers to create chips at ever-smaller process nodes. The industry for WFE is dominated by a handful of major players, each specializing in different aspects of chip production.
Types of Wafer Fabrication Equipment (WFE)
The semiconductor manufacturing process involves multiple stages, each requiring highly sophisticated WFE to achieve the necessary precision and scalability. The most critical categories of WFE include:
Key Players in the WFE Market
The global WFE market is dominated by a few major companies that specialize in different aspects of chip manufacturing:
The Importance of High-NA EUV for Sub-3nm Chip Manufacturing
As semiconductor nodes shrink below 3nm, traditional lithography techniques reach their physical limits. Extreme ultraviolet (EUV) lithography has already revolutionized chip manufacturing by allowing more precise patterning at 7nm and 5nm nodes. However, the next major breakthrough is High-NA EUV lithography, which is critical for achieving sub-3nm process nodes and maintaining the semiconductor industry’s pace of innovation.
Figure 1: ASML EXE 5000 (www.asml.com)
What is High-NA EUV?
Numerical Aperture (NA) refers to the ability of a lithography system’s optics to focus light into smaller patterns. Current EUV machines operate with a 0.33 NA lens, which enables patterning down to 3nm. High-NA EUV, with a 0.55 NA lens, provides nearly twice the resolution, allowing for even finer feature sizes and higher transistor densities.
Why is High-NA EUV Critical?
Industry Adoption of High-NA EUV
ASML is currently leading the development of High-NA EUV lithography, with the first-generation machines expected to be deployed by 2025. Intel has already announced its plans to adopt High-NA EUV for its upcoming 18A (1.8nm) process node, while TSMC and Samsung are expected to follow suit. The adoption of High-NA EUV will be a pivotal moment in semiconductor manufacturing, enabling a new wave of AI and high-performance computing (HPC) innovations.
Semiconductor fabrication is a complex, multi-step process that requires the most advanced technology ever developed. The wafer fabrication equipment market is driven by a handful of key players specializing in different aspects of chip production, from lithography to deposition and etching. Among these technologies, EUV lithography—and the next-generation High-NA EUV—is the most critical innovation for enabling sub-3nm semiconductor nodes.
The Critical Role of Subsystems Manufacturing
While wafer fab equipment is the centerpiece of semiconductor manufacturing, subsystems play an equally important role in enabling these tools to operate at the extreme tolerances required for modern chip production. The development and manufacturing of semiconductor subsystems require an intricate blend of engineering expertise, precision metal fabrication, high-purity welding, machining, and electro-mechanical integration. This essential layer of infrastructure, see “figure 1: Essential AI Infrastructure”, is where AI Infrastructure Partners is focused.
Figure 2: Essential AI Infrastructure
Engineering and design teams must develop highly customized solutions that seamlessly integrate with WFE, ensuring compatibility with thermal, electrical, and mechanical constraints. Advanced computational modeling is used to simulate real-world operating conditions, optimizing performance and reliability before production begins. The manufacturing of these subsystems demands extreme precision, particularly in metal fabrication and machining, where even micron-level variations can impact functionality.
High-purity materials such as stainless steel, aluminum, and titanium are commonly used in semiconductor subsystems due to their corrosion resistance and mechanical strength. Multi-axis CNC machining and wire electrical discharge machining (EDM) are employed to shape complex components with exceptional accuracy. Surface treatments, including grinding, mechanical polishing, elecro-polishing, passivation, and specialty cleaning & coating, ensure that components meet the strict contamination control standards required in semiconductor cleanrooms.
Advanced metal fabrication capabilities, which are critical for manufacturing metal frames and subsystems used in wafer fabrication equipment (WFE) must adhere to extremely tight tolerances, often in the range of microns, to ensure compatibility with high-precision semiconductor manufacturing equipment. Manufacturing companies in this industry utilize specialized metal forming equipment and processes, including:
Beyond fabrication, electro-mechanical integration plays a crucial role in ensuring seamless functionality across all subsystems. Mechatronics, equipped with high-precision motors and actuators, enable nanometer-level positioning in lithography and etching processes. Thermal management systems, including chillers and heat exchangers, regulate temperature fluctuations to maintain process stability. Power management units deliver ultra-stable power supplies required for high-voltage plasma processes. Each of these elements must function in perfect harmony to enable the semiconductor fabrication process to meet the demanding specifications of AI and high-performance computing applications.
Semiconductors Powering AI Data Centers
The explosion of AI and machine learning applications has created an unprecedented demand for high-performance computing, placing immense pressure on the semiconductor industry to produce faster, more efficient chips. AI workloads, particularly large-scale training of deep learning models, require massive amounts of parallel computation, far exceeding the capabilities of traditional CPUs. As a result, hyperscale data centers are increasingly reliant on specialized processors such as GPUs, TPUs, FPGAs, and custom AI ASICs.
NVIDIA has emerged as the dominant player in AI acceleration, with its A100 and H100 GPUs powering the largest AI training clusters in the world. AMD, with its MI300X series, is positioning itself as a strong competitor, while Google’s Tensor Processing Units (TPUs) are custom-built for deep learning tasks. Companies like Cerebras and Graphcore are pushing the boundaries of AI processing with wafer-scale chips and massively parallel architectures designed to accelerate neural network computations.
This surge in AI processing power comes with significant challenges, particularly in terms of energy consumption and cooling. AI data centers are among the most power-hungry facilities in the world, with some hyperscale deployments consuming hundreds of megawatts of electricity. As AI models grow in complexity, the power demand per chip continues to rise, requiring new innovations in energy efficiency and thermal management.
Energy Requirements
The power consumption of AI chips is staggering. NVIDIA’s H100 GPU, for example, has a peak power draw of 700 watts per chip, and when deployed in large-scale clusters, a single AI supercomputer can consume tens of megawatts. With hyperscale cloud providers like Google, Microsoft, and Amazon rapidly expanding their AI infrastructure, global data center electricity demand is projected to increase dramatically over the next decade. This has forced data center operators to explore renewable energy sources, advanced cooling techniques, and energy-efficient chip architectures to mitigate costs and environmental impact.
Cooling Challenges
As chip densities increase and power consumption rises, traditional air-cooling solutions are reaching their limits. AI accelerators generate significant heat, and managing thermal loads is becoming a major bottleneck in data center design. Many AI data centers are shifting toward liquid cooling solutions offered by companies like CoolIt (See Figure 4), including direct-to-chip cooling and immersion cooling, to improve thermal efficiency.
Direct liquid cooling systems circulate coolant directly over the chip’s heat sinks, allowing for more effective heat dissipation compared to air cooling. Immersion cooling takes this a step further by submerging entire server racks in non-conductive dielectric fluid, significantly reducing thermal resistance and allowing for more compact, high-density deployments. Companies like Meta and Microsoft are actively researching and deploying these cooling techniques to maximize performance while minimizing energy waste.
The shift toward high-performance AI computing is also driving new innovations in chip packaging and materials. Advanced packaging techniques such as 3D stacking, chiplet architectures, and hybrid bonding are helping to improve power efficiency and performance. Meanwhile, silicon photonics is being integrated into AI accelerators to reduce energy consumption in high-speed data transfers between chips.
Challenges and Risks in the Semiconductor Supply Chain
Despite relentless innovation in semiconductor technology, the industry faces increasingly complex challenges—particularly in supply chain resilience and geopolitical stability. The intense concentration of semiconductor manufacturing in Taiwan and South Korea has exposed American tech leadership to vulnerabilities, with potential disruptions capable of impacting everything from consumer electronics to national security systems. As AI and advanced computing continue to grow exponentially, the urgency for reliable, secure, and domestically resilient semiconductor manufacturing has never been greater.
Why Onshoring is No Longer Optional
The geopolitical landscape is changing rapidly, and with it comes uncertainty. The semiconductor industry, a cornerstone of modern technology and the engine behind the AI revolution, has found itself particularly vulnerable. Consider the situation with neon gas, a critical component in Extreme Ultraviolet (EUV) lithography—the cutting-edge technology that enables sub-3nm chip production. This gas is heavily sourced from Ukraine, highlighting just how quickly geopolitical instability can threaten essential components of tech leadership.
Likewise, the concentration of semiconductor manufacturing in just a few regions—primarily Taiwan and South Korea—has intensified concerns about potential supply chain disruptions due to geopolitical tensions. Should conflict, trade disputes, or natural disasters impact these regions, the ripple effect on global technology infrastructure would be profound, threatening everything from AI-driven data centers to critical defense systems.
The American Response: CHIPS Act and Beyond
Recognizing these vulnerabilities, the U.S. has launched strategic initiatives, most notably the CHIPS Act, aimed at decentralizing chip production and reducing dependency on a few critical regions. By promoting onshoring and “ally-shoring,” the Act encourages substantial investments into domestic semiconductor manufacturing facilities, research, and development. This is more than an economic move; it’s a strategic imperative for national security and continued technological leadership.
This effort parallels the European Union’s own semiconductor strategy, signaling a growing global recognition that reliance on limited manufacturing hubs is no longer sustainable. Yet the challenge remains profound: Semiconductor fabrication is highly complex, capital-intensive, and requires a robust ecosystem of equipment suppliers, subsystem manufacturers, and service providers. Rebuilding this critical infrastructure domestically demands not just capital, but a rethinking of the entire supply chain.
Manufacturing at Home: Essential Infrastructure for AI
To effectively onshore semiconductor manufacturing, we need to strengthen what I refer to as the “Essential Layer of Infrastructure for AI.” This layer includes not just fabrication plants themselves, but also small and mid-sized manufacturing and services-oriented businesses that produce and maintain vital subsystems, precision-engineered components, and advanced equipment integration capabilities. These often-overlooked companies are, in fact, foundational to building a resilient, secure, and advanced manufacturing ecosystem.
Investing in this essential infrastructure is about more than simply moving production facilities to American soil. It’s about cultivating a robust domestic supply chain that can withstand geopolitical shocks, reduce lead times, and accelerate innovation. It’s about ensuring American tech leadership isn’t compromised by external factors outside our control.
Sustainability: A Strategic Imperative
However, the conversation about onshoring cannot ignore another critical challenge: sustainability. Semiconductor manufacturing is among the most resource-intensive industries in the world, requiring vast amounts of electricity and ultrapure water. As AI data centers expand, their energy demands grow exponentially, creating significant environmental and cost implications.
The solution lies in integrating sustainability into our domestic manufacturing vision. Chipmakers must innovate not only for performance but for energy efficiency. Advanced packaging techniques, more efficient cooling technologies, and the development of energy-efficient processors are crucial. Companies that lead on sustainability will not only mitigate environmental impacts but also establish competitive advantages in cost management and regulatory compliance.
Securing the Future
The semiconductor supply chain stands at the crossroads of technological advancement, geopolitical reality, and sustainability challenges. Onshoring manufacturing, paired with investments in the small and mid-sized companies that form the backbone of this ecosystem, will be key to securing American tech leadership in the age of AI.
In a world where technology’s importance is matched only by its vulnerability, the decisions we make today about where and how we produce our most advanced technologies will define our national security, economic prosperity, and global influence for decades to come.
Conclusion
The semiconductor supply chain is a highly intricate and specialized ecosystem, where wafer fabrication equipment, subsystems manufacturing, and critical component suppliers work in unison to produce the world’s most advanced chips. The explosion of AI computing is creating unprecedented demand for high-performance processors, driving new innovations in chip manufacturing, energy efficiency, and cooling technology.
As AI models grow larger and more complex, companies that can navigate supply chain challenges, invest in cutting-edge semiconductor technologies, and develop scalable infrastructure will be at the forefront of the AI revolution. The future of computing depends on the ability of the semiconductor industry to push technological boundaries while ensuring efficiency, reliability, and sustainability.