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Mistral AI Releases Magistral Series: Advanced Chain-of-Thought LLMs for Enterprise and Open-Source Applications
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Mistral AI正式发布了Magistral系列,这是其最新的推理优化大型语言模型(LLM)。Magistral系列包括240亿参数的开源模型Magistral Small(Apache 2.0许可)和专有的企业级模型Magistral Medium。Mistral AI通过专注于推理能力,在LLM设计领域取得了重大进展。该系列模型在多语言支持、推理能力和效率方面都取得了显著提升,旨在满足企业级和开源社区的需求,特别是在对准确性、可解释性和可追溯性有严格要求的行业。

🧠 Magistral系列模型通过链式思考(CoT)技术进行微调,支持逐步生成中间推理,从而提高准确性、可解释性和稳健性。这在数学、法律分析和科学问题解决等需要多步推理的任务中尤为重要。

🌍 Magistral Small原生支持多种语言,包括法语、西班牙语、阿拉伯语和简体中文,扩展了其在全球范围内的应用,超越了许多以英语为中心的模型的推理能力。

⚖️ Magistral Small(240亿参数,Apache 2.0)通过Hugging Face公开提供,可用于研究、定制和商业用途,无许可限制。Magistral Medium则针对实时部署进行了优化,通过Mistral的云服务和API提供,提供更高的吞吐量和可扩展性。

📈 内部评估显示,Magistral Medium在AIME2024上的准确率为73.6%,通过多数投票可提高到90%。Magistral Small的准确率为70.7%,在类似的集成配置下可提高到83.3%。这些结果使Magistral系列与当代前沿模型具有竞争力。

⚡️ Magistral Medium的推理速度达到每秒1000个token,提供高吞吐量,并针对对延迟敏感的生产环境进行了优化。这些性能提升归功于定制的强化学习流程和高效的解码策略。

Mistral AI has officially introduced Magistral, its latest series of reasoning-optimized large language models (LLMs). This marks a significant step forward in the evolution of LLM capabilities. The Magistral series includes Magistral Small, a 24B-parameter open-source model under the permissive Apache 2.0 license. Additionally, it includes Magistral Medium, a proprietary, enterprise-tier variant. With this launch, Mistral strengthens its position in the global AI landscape by targeting inference-time reasoning—an increasingly critical frontier in LLM design.

Key Features of Magistral: A Shift Toward Structured Reasoning

1. Chain-of-Thought Supervision
Both models are fine-tuned with chain-of-thought (CoT) reasoning. This technique enables step-wise generation of intermediate inferences. It facilitates improved accuracy, interpretability, and robustness. This is especially important in multi-hop reasoning tasks common in mathematics, legal analysis, and scientific problem solving.

2. Multilingual Reasoning Support
Magistral Small natively supports multiple languages, including French, Spanish, Arabic, and simplified Chinese. This multilingual capability expands its applicability in global contexts, offering reasoning performance beyond the English-centric capabilities of many competing models.

3. Open vs Proprietary Deployment

4. Benchmark Results
Internal evaluations report 73.6% accuracy for Magistral Medium on AIME2024, with accuracy rising to 90% through majority voting. Magistral Small achieves 70.7%, increasing to 83.3% under similar ensemble configurations. These results place the Magistral series competitively alongside contemporary frontier models.

5. Throughput and Latency
With inference speeds reaching 1,000 tokens per second, Magistral Medium offers high throughput. It is optimized for latency-sensitive production environments. These performance gains are attributed to custom reinforcement learning pipelines and efficient decoding strategies.

Model Architecture

Mistral’s accompanying technical documentation highlights the development of a bespoke reinforcement learning (RL) fine-tuning pipeline. Rather than leveraging existing RLHF templates, Mistral engineers designed an in-house framework optimized for enforcing coherent, high-quality reasoning traces.

Additionally, the models feature mechanisms that explicitly guide the generation of reasoning steps—termed “reasoning language alignment.” This ensures consistency across complex outputs. The architecture maintains compatibility with instruction tuning, code understanding, and function-calling primitives from Mistral’s base model family.

Industry Implications and Future Trajectory

Enterprise Adoption: With enhanced reasoning capabilities and multilingual support, Magistral is well-positioned for deployment in regulated industries. These industries include healthcare, finance, and legal tech, where accuracy, explainability, and traceability are mission-critical.

Model Efficiency: By focusing on inference-time reasoning rather than brute-force scaling, Mistral addresses the growing demand for efficient models. These efficient, capable models do not require exorbitant compute resources.

Strategic Differentiation: The two-tiered release strategy—open and proprietary—enables Mistral to serve both the open-source community and enterprise market simultaneously. This strategy mirrors those seen in foundational software platforms.

Open Benchmarks Await: While initial performance metrics are based on internal datasets, public benchmarking will be critical. Platforms like MMLU, GSM8K, and Big-Bench-Hard will help in determining the series’ broader competitiveness.

Conclusion

The Magistral series exemplifies a deliberate pivot from parameter-scale supremacy to inference-optimized reasoning. With technical rigor, multilingual reach, and a strong open-source ethos, Mistral AI’s Magistral models represent a critical inflection point in LLM development. As reasoning emerges as a key differentiator in AI applications, Magistral offers a timely, high-performance alternative. It is rooted in transparency, efficiency, and European AI leadership.


Check out the Magistral-Small on Hugging Face and You can try out a preview version of Magistral Medium in Le Chat or via API on La Plateforme. All credit for this research goes to the researchers of this project. Also, feel free to follow us on Twitter and don’t forget to join our 99k+ ML SubReddit and Subscribe to our Newsletter.

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