Large language models (LLMs) aren’t actually giant computer brains. Instead, they are massive vector spaces in which the ...
TurboQuant vector quantization targets KV cache bloat, aiming to cut LLM memory use by 6x while preserving benchmark accuracy ...
On March 25, 2026, Google Research published a paper on a new compression algorithm called TurboQuant. Within hours, memory ...
SK Hynix, Samsung and Micron shares fell as investors fear fewer memory chips may be required in the future.
The dynamic interplay between processor speed and memory access times has rendered cache performance a critical determinant of computing efficiency. As modern systems increasingly rely on hierarchical ...
Morning Overview on MSN
30-nm embedded memory could speed AI chips by cutting data shuttling
Most of the energy an AI chip burns never goes toward actual computation. It goes toward moving data: shuttling model weights ...
A technical paper titled “HMComp: Extending Near-Memory Capacity using Compression in Hybrid Memory” was published by researchers at Chalmers University of Technology and ZeroPoint Technologies.
Enterprise AI applications that handle large documents or long-horizon tasks face a severe memory bottleneck. As the context grows longer, so does the KV cache, the area where the model’s working ...
Adarsh Mittal, a senior application-specific integrated circuit engineer, explores why many memory performance optimizations ...
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