Marco-o1: Towards Open Reasoning Models for Open-Ended Solutions - podcast episode cover

Marco-o1: Towards Open Reasoning Models for Open-Ended Solutions

Nov 23, 2024•19 min•Ep. 127
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Episode description

🤗 Paper Upvotes: 23 | cs.CL

Authors:
Yu Zhao, Huifeng Yin, Bo Zeng, Hao Wang, Tianqi Shi, Chenyang Lyu, Longyue Wang, Weihua Luo, Kaifu Zhang

Title:
Marco-o1: Towards Open Reasoning Models for Open-Ended Solutions

Arxiv:
http://arxiv.org/abs/2411.14405v1

Abstract:
Currently OpenAI o1 has sparked a surge of interest in the study of large reasoning models (LRM). Building on this momentum, Marco-o1 not only focuses on disciplines with standard answers, such as mathematics, physics, and coding -- which are well-suited for reinforcement learning (RL) -- but also places greater emphasis on open-ended resolutions. We aim to address the question: "Can the o1 model effectively generalize to broader domains where clear standards are absent and rewards are challenging to quantify?" Marco-o1 is powered by Chain-of-Thought (CoT) fine-tuning, Monte Carlo Tree Search (MCTS), reflection mechanisms, and innovative reasoning strategies -- optimized for complex real-world problem-solving tasks.

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