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Dr. Pushkar P. Apte

AI is proliferating rapidly, fueled by ever-larger models and data sets that are expanding AI use cases and improving its accuracy. Future computing systems are now required to simultaneously deliver high performance, process large amounts of data, and use the least possible energy. The growing energy footprint of AI and the strain it places on the power grid is an increasing concern for companies and even entire countries. This could adversely impact future growth and could slow the semiconductor industry’s march towards $1 trillion in revenue, which is largely driven by AI applications.This is a formidable challenge that cannot be addressed in silos by individual companies or even industry segments. The SEMI Smart Data-AI Initiative is exploring how to overcome this challenge with collaborative and innovative system-level solutions that connect the dots across the entire AI system stack. In March 2025, we hosted a successful workshop, bringing together industry leaders across the value chain for a day of thoughtful discussions and knowledge sharing. Building on this foundation, we developed an exciting Smart Data-AI session to be held at SEMICON West in Phoenix, Arizona on October 7 from 10:30 a.m.-4:40 p.m. The “Future of Computing: Energy-Efficient Computing for AI and Beyond” forum will bring together executives and thought leaders across the entire ecosystem – including design, fabrication, interconnects, system integration, hyperscale architectures, advanced materials, and emerging technologies such as photonics and quantum. Attendees will have a unique opportunity to get strategic perspectives from these distinguished experts and learn about exciting future trends.Why Attend?Gain insights from global leaders and learn about innovative paths towards an energy-efficient computing future.Network and build cross-industry collaborations for the next wave of AI, photonics and quantum.Promote a more sustainable path for continued growth of AI to benefit humanity and the planet.Join the SEMI Smart Data-AI initiative to develop solutions and take concrete actions to reduce AI’s growing energy footprint.Support the industry in achieving its goal of reaching $1 trillion in revenue. Speaker Highlights Include:AMD • Ciena • Hewlett Packard Enterprise • IBM • Merck KGaA, Darmstadt, Germany •Microsoft • Quantum Economic Development Consortium • Rapidus • Rigetti •Siemens AG • Stanford UniversityDr. Pushkar P. Apte is the Strategic Technology Advisor and leads the Smart Data-AI Initiative at SEMI.
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As artificial intelligence (AI) proliferates rapidly, AI models and datasets are also growing rapidly in size. This growth far outpaces performance improvement in hardware systems, and is increasing AI’s energy consumption unsustainably. To address these challenges and explore collaborative solutions, SEMI’s Smart Data-AI Initiative - as part of its Future of Computing focus - recently hosted a day-long workshop on Sustainable AI Systems that brought together domain experts from the entire AI ecosystem. Speakers included industry leaders Applied Materials, AMD, Arm, ASE, Google DeepMind, IBM, Intel, Lam Research, McKinsey, Micron, NVIDIA, Qualcomm, SK hynix; exciting start-ups Cerebras, LightMatter, Mentium Technologies and Mueon; and leading-edge academic institutions, Stanford University and University of California, Davis Irvine. The keynotes, panels and spirited audience discussions covered novel devices, materials, advanced packaging, chiplets, photonics and architectures algorithms for data centers, cloud edge. This article synthesizes high-level insights from the workshop.The AI ImperativeThe day started with a basic question – why is AI essential to continued progress and prosperity? The answer lies partly in shifting global demographics, with the population aging in most developed economies. At the turn of the century, there were ~6 people in the workforce supporting each retiree, but projections indicate there will be only 2 active workers per retiree by 2050. In parallel, productivity growth rates have fallen to half of what is required. AI can help bridge this gap, if we can ensure continued progress of AI in a responsible and sustainable manner.The Energy WallA formidable roadblock to continued progress of AI is its rising energy demands. For example, the energy used by some large language models (LLMs) to run just one training cycle could be used to power thousands of homes. The switch to transformer models has increased AI-driven computing demand by a factor of 50 million over 5 years, and by some projections, this demand will consume half the world's generation capacity by 2050. This is clearly not sustainable! All players in the ecosystem are deeply committed to reducing AI’s energy consumption, and the industry has already decreased the energy used per token of computing by a factor of 100K in the past 10 years. However, the rapid growth of AI outpaces this, highlighting the huge challenge ahead.The System StackThis workshop was developed with the hypothesis that innovation is required across all segments, and an important first step is to initiate a dialog. Our highly distinguished speakers covered the entire solution stack, and while it is impossible to capture the ocean of insights that they shared, the following provides a flavor.Materials DevicesMaterials and devices used to build semiconductor chips form the foundation of the stack for all computing systems. Silicon substrates with copper interconnects remain industry’s mainstay, but are being augmented by innovative ideas. As device dimensions continue to shrink, novel 2D materials such as MoSe2, WSe2, ZrSe2 and NbP are being researched. While Si mobility degrades with decreasing film thickness, 2D materials maintain high electron mobility in thin-film substrates. These can be stacked to build 3D systems with lower power consumption than traditional planar structures. In parallel, novel device technologies such as gate-all-around (GAA) can provide power savings up to 25%.These novel materials and devices are complex, and require almost magical wizardry to build. For example, they may require depositing a stack of multiple defect-free films that are only a single (or few) atomic layer(s) thick, or etching a steep well that is one hundred times as deep as it is wide. It is an incredible accomplishment of the semiconductor industry to build these devices and chips successfully, but it is getting harder and more expensive. Consequently, AI is now being used as a tool to help with this ever-growing fabrication complexity of semiconductor R D and manufacturing. This is a synergistic virtuous cycle, where AI algorithms enabled by chips are used in turn to help with chip fabrication.System IntegrationThe next layer of the stack is the integration of individual devices into a system. Advanced packaging techniques, such as silicon or glass interposers (2.5D) for interconnecting chips, can reduce the communication distance and power consumption. These are often deployed for high-performance computing systems running AI algorithms. Beyond this, the industry is actively exploring 3D systems that are even more compact, both as multi-die 3D packages and as monolithic 3D chips.The concept of chiplets – smaller chips with specialized functions that can be assembled flexibly to optimize system performance – holds much promise. Industry consortia are developing protocols such as Universal Chiplet Interconnect ExpressTM (UCIeTM) to enable seamless integration of chiplets both in the planar and vertical dimensions. These advanced techniques pack more functional elements into increasingly compact form factors, but this proximity makes power delivery challenging and often generates intense heat. Much work is needed to ensure optimal power delivery and adequate thermal dissipation.Looking beyond traditional electronics, photonics represents an exciting opportunity. Most long-distance data communication is on fiber-optic cables and thus already photonic – bringing this to shorter distances can save energy while increasing bandwidth and performance. This requires efficient photonic-electronic integration at the packaging or even chip level, which is a major challenge requiring cross-disciplinary collaboration.Architectures and AlgorithmsAI algorithms need enormous amounts of data processing compared to traditional computing workloads. This requirement stretches (or breaks) the limits of traditional Von Neumann architecture, which requires frequent data movement between memory and processor elements for each computation cycle. Much of current architecture innovation focuses on bringing processor and memory elements closer to each other. System integration is already driving “compute-near-memory” architectures like high bandwidth memory (HBM). Other forward-looking implementations combine them into a single chip, known as compute-in-memory (CIM). Memory elements being explored for this purpose include resistive RAM (RRAM), phase-change memory (PCM), ferroelectric RAM (FeRAM) and magnetic RAM (MRAM). However, there is no one “perfect” memory – each has pros and cons in terms of latency, capacity, bandwidth, power consumed per operation, manufacturability, etc. Other researchers are also exploring devices like memristors for analog computing, which can improve energy efficiency for certain workloads.Finally, hardware-software co-optimization is crucial. Algorithms mismatched with the underlying system are energy expensive; conversely, co-optimized systems are highly efficient. While conceptually obvious, this is difficult in practice because development cycles are quite different – software algorithms can transform in a few months, while new hardware often takes years to develop. While some strategies can be used for mitigation – such as designing in redundancy/flexibility or making the hardware application-specific – much work remains to solve this conundrum.Pre-competitive Collaboration to Find SolutionsAll speakers emphasized that pre-competitive collaboration across the entire stack is critical, as these challenges are formidable and cannot be solved by one entity or in isolated silos. SEMI is a global and neutral organization with over 3,000 member companies, and is well-positioned to provide a pre-competitive collaboration platform to connect the dots across silos. In fact, SEMI’s mantra is “Connect, Collaborate, Innovate” – reinforcing its commitment to advancing the entire industry. For this purpose, SEMI’s Smart Data-AI Initiative continues to drive robust discussions on this topic – next there will be a roundtable discussion during SEMICON Southeast Asia, May 20-22 in Singapore, followed by a focused technology session at SEMICON West 2025, October 7-9 in Phoenix, Arizona. The overall objective is to move from “talking-the-talk” to “walking-the-walk,” towards creating system-level solutions for energy-efficient AI computing. Specifically, we want to identify the pre-competitive actions that could synergize individual innovations and make the whole greater than the sum of parts. Some ideas include collaborative proof-of-concept projects, industry standards and independent benchmarking. Come join us on this journey and connect with us at [email protected]. Dr. Pushkar P. Apte is the Strategic Technology Advisor and leads the Smart Data-AI Initiative at SEMI.
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