×
Chiplet technology is making AI processors faster, cheaper, and more efficient
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

It’s “chiplet,” not “chicklet.”

Chiplet technology is transforming AI processing by breaking away from traditional monolithic chip designs in favor of modular, specialized components that work together as a unified system. This architectural shift allows manufacturers to optimize performance while reducing costs and energy consumption—critical advantages as AI models grow increasingly complex and computationally demanding. Understanding this approach to chip design helps explain how hardware innovations are enabling the next generation of artificial intelligence applications across industries.

The big picture: Chiplet technology represents a fundamental shift in processor design, replacing single large chips with smaller specialized components that are integrated into a unified system.

  • Instead of creating monolithic chips with all components on a single silicon die, manufacturers now build separate chiplets for different functions (CPU, GPU, memory) that communicate with each other.
  • This modular approach delivers improved performance, greater scalability, and better cost efficiency—addressing critical challenges in AI processing.

How it works: Chiplet technology relies on a modular design approach with three core components that enable its functionality.

  • Different specialized chiplets are designed separately and then combined within a single processor package, allowing for optimization of each component.
  • High-speed interconnect technologies like Universal Chiplet Interconnect Express (UCIe) or Through-Silicon Via (TSV) facilitate ultra-fast data exchange between the chiplets.
  • Heterogeneous computing allows different types of chiplets to be used in a single package, combining CPUs, GPUs, and AI accelerators to optimize computing for specific tasks.

Why this matters: AI processing has unique requirements that chiplet technology specifically addresses, making advanced AI more accessible and efficient.

  • The technology improves performance by using specialized chiplets for different tasks, creating better overall processing capabilities for AI workloads.
  • Manufacturers can scale AI processing power more easily by mixing and matching chiplets rather than designing entirely new chips.
  • The approach reduces costs by using smaller, more efficient silicon dies, which improves manufacturing yield rates and makes high-performance AI processors more affordable.

Key advantages: Chiplet design delivers significant energy efficiency benefits that are particularly important for power-hungry AI applications.

  • By reducing the distance data must travel within the processor, chiplet designs minimize energy loss and heat generation.
  • Leading tech companies including Intel, AMD, and NVIDIA are already leveraging chiplet technology for their AI processing solutions.
  • As AI models grow more complex, the need for powerful and efficient computing will continue to drive adoption of chiplet architecture.

The bottom line: Chiplet technology is becoming fundamental to AI hardware innovation, enabling more advanced applications from autonomous vehicles to intelligent healthcare systems through its performance, flexibility, and efficiency advantages.

What is chiplet technology and what is its impact on AI processing?

Recent News

AI agents reshape digital workplaces as Moveworks invests heavily

AI agents evolve from chatbots to task-completing digital coworkers as Moveworks launches comprehensive platform for enterprise-ready agent creation, integration, and deployment.

McGovern Institute at MIT celebrates a quarter century of brain science research

MIT's McGovern Institute marks 25 years of translating brain research into practical applications, from CRISPR gene therapy to neural-controlled prosthetics.

Agentic AI transforms hiring practices in recruitment industry

AI recruitment tools accelerate candidate matching and reduce bias, but require human oversight to ensure effective hiring decisions.