MAI-Thinking-1
Description
MAI-Thinking-1 is Microsoft AI's first in-house reasoning model, a 35B-active / ~1T-total parameter sparse Mixture of Experts model (base model MAI-Base-1) trained from scratch without distillation from third-party models. Built with Microsoft's Hill-Climbing Machine pipeline, it was pre-trained on 30T tokens of clean, commercially licensed, human-generated data (plus 3.55T mid-training tokens), then post-trained via reinforcement learning across STEM, agentic coding, and helpfulness/safety specialists consolidated into a single model. It delivers strong mathematical reasoning and software-engineering performance for its weight class, going toe-to-toe with Claude Opus 4.6 on SWE-Bench Pro and reaching 97.0% on AIME 2025. It supports a 256k token context window, function calling, and developer instructions, and is preferred over Claude Sonnet 4.6 in blind human side-by-side evaluations.
Radar de capacités
Science utilise un proxy de raisonnement lorsque les benchmarks scientifiques dédiés ne sont pas disponibles.
Classements
| Domaine | #Rang | Score | Source |
|---|---|---|---|
| Capacité agentique | 45 | 60.0 | LS |
Scores de benchmarks (LLM Stats)
Agents
Biology
Code
Communication
Factuality
Finance
General
Healthcare
Long Context
Math
Safety
Indices d'évaluation AA
Aucune donnée d'évaluation AA disponible
Scores par catégorie LLM Stats
Tarification
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Vitesse
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Classement des Prix par Fournisseur
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