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English(EN) Learning to reason with LLMs

OpenAI 的 o1 模型展现出高级推理能力,而谷歌和苹果则在探索新的 LLM 训练方法。

OpenAI 发布了其新模型 OpenAI o1-preview 的早期版本,该模型在推理能力方面相比 GPT-4o 有显著提升。该模型在竞赛编程、高级数学考试和复杂的科学基准测试中表现出色,在某些领域超越了人类专家的表现。这种进步归功于一种大规模强化学习算法,该算法通过思维链教会模型进行生产性思考,并且性能随着训练和测试时间的计算量而扩展。 AI

影响 这一新模型为推理能力设定了更高的标准,有可能加速在各个领域开发更复杂的 AI 代理和工具。

排序理由 OpenAI 宣布推出一款名为 OpenAI o1-preview 的新模型,该模型在推理方面有显著改进,并已通过 ChatGPT 和 API 发布供使用。

在 OpenAI News 阅读 →

AI 生成摘要 · Google Gemini · 来自 50 个来源。 我们如何撰写摘要 →

OpenAI 的 o1 模型展现出高级推理能力,而谷歌和苹果则在探索新的 LLM 训练方法。

报道来源 [50]

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