Vik welcomes Val Bercovici from Weka to discuss the rapidly evolving landscape of AI memory and storage. Val explains how Weka's architecture leverages high-bandwidth networks to make storage faster than motherboard DRAM. They dive into KV cache optimizations, the future of NAND flash tiers, and the role of CXL in AI inference. The episode concludes with a look at predictive memory offloading and the AI flywheel.
Chapters: 0:00 Welcome Val Bercovici, Weka 1:59 Memory situation and model routing 3:50 KV cache offloading to CMX 6:10 Network faster than motherboard 13:10 Weka as AI memory infrastructure 14:45 Inference market is different 16:06 Memory hierarchy and KV cache 19:40 KV cache optimizations and demand 25:20 DeepSeek's cache read pricing 34:49 NAND flash tiers: SLC vs QLC 43:01 High Bandwidth Flash (HBF) 49:59 CXL versus other interconnects
Podden och tillhörande omslagsbild på den här sidan tillhör
Vikram Sekar and Austin Lyons. Innehållet i podden är skapat av Vikram Sekar and Austin Lyons och inte av,
eller tillsammans med, Poddtoppen.