DeepSeek has released a new paper,Jaan Bujh Kar (2025) S03 Hindi Web Series with co-founder Liang Wenfeng credited as a contributor, detailing how its latest large language model DeepSeek-V3 achieves efficient training and inference using only 2,048 H800 GPUs – significantly fewer than the tens of thousands typically required. The team attributes this efficiency to four key innovations: memory optimization through multi-head latent attention (MLA), computational savings via a Mixture-of-Experts (MoE) design with FP8 precision, communication improvements using a multi-plane network topology, and faster inference through multi-token prediction (MTP). With MLA, KV cache memory usage is cut to just 70KB per token, up to 1/7 that of competing models. MoE architecture activates only 37 billion of the model’s 671 billion parameters per forward pass, reducing training costs by 90% compared to dense models. FP8 training further halves compute and memory usage, with minimal accuracy tradeoff. Beyond the model, the paper also outlines five future directions for AI hardware design, advocating for tighter integration between software and hardware to address memory, compute, and networking bottlenecks. [36Kr, in Chinese]
Related Articles
Google's new Nest Hub is a smart display that tracks your sleep quality
2025-06-27 06:28
1261 views
Read More
Zoom Escaper makes it easy to sabotage that unbearable Zoom meeting
2025-06-27 06:23
76 views
Read More
Here's how I feel about all this Stephen Hawking 'news' going around
2025-06-27 05:24
2113 views
Read More
'The Falcon and the Winter Soldier' is another Marvel TV hit: Review
2025-06-27 05:17
2093 views
Read More
These dudes just can't comprehend their friend's false eyelashes
2025-06-27 04:05
2294 views
Read More