Cela supprimera la page "Understanding DeepSeek R1"
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DeepSeek-R1 is an open-source language model constructed on DeepSeek-V3-Base that's been making waves in the AI neighborhood. Not only does it match-or even surpass-OpenAI's o1 design in numerous benchmarks, but it likewise includes totally MIT-licensed weights. This marks it as the first non-OpenAI/Google model to provide strong reasoning abilities in an open and available way.
What makes DeepSeek-R1 particularly interesting is its openness. Unlike the less-open methods from some market leaders, DeepSeek has released a detailed training methodology in their paper.
The design is likewise remarkably cost-efficient, with input tokens costing simply $0.14-0.55 per million (vs o1's $15) and output tokens at $2.19 per million (vs o1's $60).
Until ~ GPT-4, the typical knowledge was that much better designs required more information and calculate. While that's still valid, models like o1 and R1 show an option: inference-time scaling through reasoning.
The Essentials
The DeepSeek-R1 paper presented several designs, but main among them were R1 and R1-Zero. Following these are a series of distilled models that, while intriguing, I won't go over here.
DeepSeek-R1 uses two significant ideas:
1. A multi-stage pipeline where a small set of cold-start data kickstarts the design, followed by large-scale RL.
Cela supprimera la page "Understanding DeepSeek R1"
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