메뉴 건너뛰기

S+ in K 4 JP

QnA 質疑応答

조회 수 0 추천 수 0 댓글 0
?

단축키

Prev이전 문서

Next다음 문서

크게 작게 위로 아래로 댓글로 가기 인쇄
?

단축키

Prev이전 문서

Next다음 문서

크게 작게 위로 아래로 댓글로 가기 인쇄

LEPTIDIGITAL-Deepseek-994x559.jpg Llama 3.1 405B trained 30,840,000 GPU hours-11x that used by deepseek ai china v3, for a model that benchmarks slightly worse. • Code, Math, and Reasoning: (1) DeepSeek-V3 achieves state-of-the-art performance on math-related benchmarks amongst all non-long-CoT open-supply and closed-supply fashions. Its chat model also outperforms different open-supply fashions and achieves efficiency comparable to leading closed-supply fashions, together with GPT-4o and Claude-3.5-Sonnet, on a series of customary and open-ended benchmarks. In the first stage, the maximum context size is extended to 32K, and within the second stage, it is further prolonged to 128K. Following this, we conduct post-training, together with Supervised Fine-Tuning (SFT) and Reinforcement Learning (RL) on the base model of DeepSeek-V3, to align it with human preferences and further unlock its potential. Combined with 119K GPU hours for the context size extension and 5K GPU hours for publish-training, DeepSeek-V3 prices only 2.788M GPU hours for its full training. Next, we conduct a two-stage context length extension for DeepSeek-V3. Extended Context Window: DeepSeek can process lengthy textual content sequences, making it nicely-suited for duties like advanced code sequences and detailed conversations. Copilot has two elements at the moment: code completion and "chat".


DeepSeek-V3 Explained: Optimizing Efficiency and Scale Beyond the basic architecture, we implement two extra strategies to additional improve the mannequin capabilities. These two architectures have been validated in DeepSeek-V2 (DeepSeek-AI, 2024c), demonstrating their capability to keep up robust model performance whereas reaching environment friendly coaching and inference. For engineering-related duties, whereas DeepSeek-V3 performs slightly beneath Claude-Sonnet-3.5, it still outpaces all other models by a big margin, demonstrating its competitiveness across diverse technical benchmarks. Notably, it even outperforms o1-preview on particular benchmarks, resembling MATH-500, demonstrating its sturdy mathematical reasoning capabilities. • We introduce an revolutionary methodology to distill reasoning capabilities from the lengthy-Chain-of-Thought (CoT) mannequin, particularly from one of the deepseek ai R1 sequence models, into standard LLMs, significantly DeepSeek-V3. Low-precision coaching has emerged as a promising resolution for environment friendly coaching (Kalamkar et al., 2019; Narang et al., 2017; Peng et al., 2023b; Dettmers et al., 2022), its evolution being carefully tied to advancements in hardware capabilities (Micikevicius et al., 2022; Luo et al., 2024; Rouhani et al., 2023a). In this work, we introduce an FP8 combined precision training framework and, for the first time, validate its effectiveness on a particularly giant-scale model. In recent times, Large Language Models (LLMs) have been undergoing speedy iteration and evolution (OpenAI, 2024a; Anthropic, 2024; Google, 2024), progressively diminishing the hole towards Artificial General Intelligence (AGI).


Instruction-following evaluation for big language models. DeepSeek Coder is composed of a series of code language models, every educated from scratch on 2T tokens, with a composition of 87% code and 13% pure language in each English and Chinese. Despite its economical training prices, complete evaluations reveal that DeepSeek-V3-Base has emerged because the strongest open-supply base mannequin at present out there, especially in code and math. • At an economical price of only 2.664M H800 GPU hours, we complete the pre-training of DeepSeek-V3 on 14.8T tokens, producing the at present strongest open-supply base model. The pre-training process is remarkably stable. During the pre-training stage, training DeepSeek-V3 on every trillion tokens requires solely 180K H800 GPU hours, i.e., 3.7 days on our cluster with 2048 H800 GPUs. Within the remainder of this paper, we first current an in depth exposition of our DeepSeek-V3 model architecture (Section 2). Subsequently, we introduce our infrastructures, encompassing our compute clusters, the coaching framework, the help for FP8 coaching, the inference deployment technique, and our ideas on future hardware design. Figure 2 illustrates the basic architecture of DeepSeek-V3, and we'll briefly evaluate the main points of MLA and DeepSeekMoE on this section.


Figure 3 illustrates our implementation of MTP. You'll be able to only determine these things out if you take a very long time simply experimenting and trying out. We’re thinking: Models that do and don’t benefit from additional test-time compute are complementary. To additional push the boundaries of open-supply model capabilities, we scale up our models and introduce DeepSeek-V3, a large Mixture-of-Experts (MoE) model with 671B parameters, of which 37B are activated for every token. • Through the co-design of algorithms, frameworks, and hardware, we overcome the communication bottleneck in cross-node MoE training, achieving near-full computation-communication overlap. For DeepSeek-V3, the communication overhead introduced by cross-node professional parallelism results in an inefficient computation-to-communication ratio of approximately 1:1. To deal with this challenge, we design an innovative pipeline parallelism algorithm known as DualPipe, which not only accelerates mannequin coaching by effectively overlapping forward and backward computation-communication phases, but in addition reduces the pipeline bubbles. As for the coaching framework, we design the DualPipe algorithm for efficient pipeline parallelism, which has fewer pipeline bubbles and hides most of the communication during coaching through computation-communication overlap. In addition, we additionally develop environment friendly cross-node all-to-all communication kernels to totally make the most of InfiniBand (IB) and NVLink bandwidths. This overlap ensures that, as the mannequin further scales up, so long as we maintain a continuing computation-to-communication ratio, we can nonetheless make use of advantageous-grained specialists throughout nodes while attaining a near-zero all-to-all communication overhead.



If you loved this article and you would like to receive more info with regards to ديب سيك مجانا please visit our web-site.

List of Articles
번호 제목 글쓴이 날짜 조회 수
63344 Who Is Deepseek? new EllisNesmith9758037 2025.02.01 0
63343 Cool Little Deepseek Tool new ShellaMcBrien308 2025.02.01 3
63342 Solution Strategies For The Entrepreneurially Challenged new NelleGcm5995945176 2025.02.01 0
63341 I Didn't Know That!: Top Nine Racket Of The Decade new FatimaEdelson247 2025.02.01 0
63340 Cartoon Pornography - The Conspriracy new MuoiHandley1374312 2025.02.01 0
63339 Does Deepseek Sometimes Make You Feel Stupid? new DebraSage8484483582 2025.02.01 4
63338 Luxury1288 Bandar Judi Togel Terpercaya Kompetitor Dari Macau new RobynJobson73185 2025.02.01 0
63337 You Can Thank Us Later - 3 Causes To Cease Thinking About Cakes new Liam66H00865553 2025.02.01 0
63336 Rahasia Togel Hk Memang Selalu Menjadi Pembahasan Yang Menarik Bagi Para Pecinta Judi Togel. Banyak Orang Berusaha Mencari Tahu Apa Sebenarnya Rahasia Di Balik Angka-angka Yang Keluar Di Togel Hongkong? new AlphonsoBarrington 2025.02.01 2
63335 Kids, Work And Deepseek new Carlos361893020454969 2025.02.01 3
63334 Truffes Dorées : Comme Un Pro Avec L’assistance Des Six Suggestions new Jerome8116132411762 2025.02.01 2
63333 A Easy Plan For Deepseek new LinetteSalkauskas 2025.02.01 2
63332 Truffes Dorées : Comme Un Pro Avec L’assistance Des Six Suggestions new Jerome8116132411762 2025.02.01 0
63331 A Easy Plan For Deepseek new LinetteSalkauskas 2025.02.01 0
63330 Kids, Work And Deepseek new Carlos361893020454969 2025.02.01 0
63329 Paige VanZant Claims Dillon Danis Asked Her To Perform Lewd Sexual Act new LionelReichstein81 2025.02.01 0
63328 Morceaux De Truffes Noires Fraîches 100g - Tuber Mélanosporum 2ième Choix new AmeeStuckey24244 2025.02.01 0
63327 How To Use Ntr To Desire new Shavonne05081593679 2025.02.01 0
63326 Using Deepseek new EstelleJay28596 2025.02.01 0
63325 Using Deepseek new EstelleJay28596 2025.02.01 0
Board Pagination Prev 1 ... 35 36 37 38 39 40 41 42 43 44 ... 3207 Next
/ 3207
위로