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MiniMax-Text-01

MiniMax-Text-01

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Model parameter quantity
456B
Model parameter quantity
Affiliated organization
MiniMax
Affiliated organization
Open Source
License Type
Release time
January 15, 2025
Release time
Model Introduction
MiniMax-Text-01 is a 456-billion parameter model combining Lightning Attention, Softmax Attention, and Mixture-of-Experts (MoE). It uses advanced parallel strategies to achieve a training context of 1 million tokens and can handle up to 4 million tokens during inference, showcasing top-tier performance.
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Language comprehension ability Language comprehension ability
Language comprehension ability
Often makes semantic misjudgments, leading to obvious logical disconnects in responses.
6.8
Knowledge coverage scope Knowledge coverage scope
Knowledge coverage scope
Possesses core knowledge of mainstream disciplines, but has limited coverage of cutting-edge interdisciplinary fields.
8.5
Reasoning ability Reasoning ability
Reasoning ability
Unable to maintain coherent reasoning chains, often causing inverted causality or miscalculations.
5.8
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MiniMax-Text-01 MiniMax-Text-01 is a powerful language model with 456 billion total parameters, of which 45.9 billion are activated per token. To better unlock the long context capabilities of the model, MiniMax-Text-01 adopts a hybrid architecture that combines Lightning Attention, Softmax Attention and Mixture-of-Experts (MoE).
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