×
Mistral’s new Codestral AI model tops third-party code completion rankings
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

Mistral’s latest code completion model, Codestral 25.01, has quickly gained popularity among developers while demonstrating superior performance in benchmark tests.

Key updates and improvements: The new version of Codestral features an enhanced architecture that doubles the speed of its predecessor while maintaining specialization in code-related tasks.

  • The model supports code correction, test generation, and fill-in-the-middle tasks
  • It’s specifically optimized for low-latency, high-frequency operations
  • Enterprise users can benefit from improved data handling and model residency capabilities

Performance metrics: Codestral 25.01 has demonstrated significant improvements in benchmark testing, particularly outperforming competing models.

  • Achieved an 86.6% score in the HumanEval test for Python coding
  • Surpassed performance of Codellama 70B Instruct and DeepSeek Coder 33B instruct
  • Within hours of release, the model climbed rapidly in Copilot Arena rankings

Accessibility and deployment: Mistral has made the model available through multiple platforms and partnerships to ensure wide developer access.

  • Available through Mistral’s IDE plugin partners and the code assistant Continue
  • Accessible via Mistral’s la Plateforme and Google Vertex AI
  • Currently in preview on Azure AI Foundry with upcoming availability on Amazon Bedrock

Market context: The release comes amid increasing competition in the specialized coding model space.

  • Mistral released its first coding model in May last year, capable of handling 80 programming languages
  • Recent competitors include Alibaba’s Qwen2.5-Coder and DeepSeek Coder, which notably outperformed GPT-4 Turbo
  • Microsoft entered the space with GRIN-MoE, a specialized model for coding and mathematical problems

Industry debate: The development of specialized coding models has sparked discussion about the optimal approach to AI-assisted programming.

  • Some developers prefer general-purpose models like Claude for their versatility
  • Others value the focused capabilities of specialized coding models
  • The growing number of coding-specific models indicates strong market demand for specialized solutions

Future implications: While the debate between specialized and general-purpose models continues, Codestral 25.01’s strong performance suggests that purpose-built coding models may increasingly capture market share in developer tools, though the ultimate balance between specialized and general-purpose solutions remains to be determined.

Mistral’s new Codestral code completion model races up third-party charts

Recent News

Wyze’s new AI-powered cameras turn security footage into text notifications

Wyze security cameras can now generate text descriptions of detected motion events, offering users a way to monitor activity without viewing footage.

OpenAI appoints BlackRock executive to board

BlackRock veteran joins AI lab's board as company weighs shift from nonprofit to commercial entity.

Building Colossus: Inside the AI supercomputer Supermicro is building for xAI

Server manufacturer teams up with Musk's AI venture to build computing infrastructure aimed at competing with leading language models.