


DeepSeek's 'amazing' profit: the theoretical profit margin is as high as 545%!
DeepSeek released a technical article on Zhihu, introducing its DeepSeek-V3/R1 inference system in detail, and disclosed key financial data for the first time, which attracted industry attention. The article shows that the system's daily cost profit margin is as high as 545%, setting a new record for global AI big model profit.
DeepSeek's low-cost strategy gives it an advantage in market competition. The cost of its model training is only 1%-5% of similar products, and the cost of V3 model training is only US$5.576 million, far lower than that of its competitors. Meanwhile, R1's API pricing is only 1/7 to 1/2 of OpenAI o3-mini. These data prove the commercial feasibility of the DeepSeek technology route and set a benchmark for the efficient profitability of AI models.
Industry insiders believe that DeepSeek's open source strategy and cost control capabilities are breaking the resource monopoly in the AI field. The public financial data this time not only demonstrates the company's technical strength and business potential, but also marks the maturity of the AI big model profit model.
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