DSpark Explained: How DeepSeek Made LLM Serving 60-85% Faster Without Losing a Single Token of Quality
From the article
DeepSeek has a habit of publishing the things other labs treat as trade secrets. Their latest release, DSpark, is a speculative decoding system that made per-user generation 60–85% faster in production and kept serving tiers alive that their old system simply could not reach, all with zero loss in output quality. The paper is dense,... The post DSpark Explained: How DeepSeek Made LLM Serving 60-85% Faster Without Losing a Single Token of Quality appeared first on SudoAll .
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