Rosenblatt 6th Annual Age of AI Technology Summit
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Rambus (RMBS) Rosenblatt 6th Annual Age of AI Technology Summit summary

Event summary combining transcript, slides, and related documents.

Logotype for Rambus Inc

Rosenblatt 6th Annual Age of AI Technology Summit summary

9 Jun, 2026

AI-driven changes in server and memory architecture

  • Recent AI advancements have driven a shift toward specialized silicon, with GPUs and CPUs collaborating more closely, especially for large language models (LLMs) that require both high bandwidth and high capacity memory systems.

  • LLMs use a KV cache that grows during conversations, necessitating both HBM (high bandwidth memory) for speed and DDR memory for capacity, with CPUs orchestrating and storing larger portions of the cache.

  • Demand for both HBM and DDR memory is rising in tandem, as longer and more complex AI interactions require greater memory density and bandwidth.

  • Modular memory (DIMMs) allows for late-stage capacity decisions and easy upgrades, helping manage fluctuating DRAM prices and availability without sacrificing bandwidth.

  • De-speccing (using lower-capacity modules) is a cost optimization strategy that maintains bandwidth by fully populating memory channels, ensuring high CPU utilization.

Market trends and technology adoption

  • The ratio of CPUs to GPUs in AI servers is shifting, with more CPUs being used, though the optimal balance is still evolving.

  • Adoption of Arm-based CPUs and new module types (like SOCAMM2) is increasing, with memory module solutions being adapted for various platforms, from PCs to supercomputers.

  • CXL technology is gaining renewed interest due to DRAM shortages, but widespread adoption is still in early stages due to application and infrastructure challenges.

  • Optical memory appliances offer higher bandwidth and longer-distance data transfer, but still require robust electrical interfaces and signal integrity solutions.

  • MRDIMM technology promises to double bandwidth and capacity using existing infrastructure, with adoption expected as new server platforms from AMD and Intel launch.

Expansion into client and edge markets

  • AI capabilities are expected to move from data centers to PCs and edge devices, driving demand for new memory module chipsets optimized for client platforms.

  • Rambus is introducing LPCAMM2 and other client-focused modules, anticipating a gradual revenue impact as AI adoption in PCs becomes mainstream.

  • Robotics and physical AI will require increased memory capacity and bandwidth, with ongoing coordination between edge devices and data centers.

  • The evolution of memory modules for edge and client devices mirrors trends seen in data centers, with modularity and upgradability remaining key advantages.

  • Power management and signal integrity are critical differentiators for memory module components, leveraging decades of experience and industry relationships.

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