• Menu
  • Skip to right header navigation
  • Skip to main content
  • Skip to primary sidebar

DigiBanker

Bringing you cutting-edge new technologies and disruptive financial innovations.

  • Home
  • Pricing
  • Features
    • Overview Of Features
    • Search
    • Favorites
  • Share!
  • Log In
  • Home
  • Pricing
  • Features
    • Overview Of Features
    • Search
    • Favorites
  • Share!
  • Log In

Mistral unveils Devstral: an open-source AI model optimized for coding tasks, outperforming peers on SWE-Bench and runnable on consumer hardware

May 23, 2025 //  by Finnovate

AI startup Mistral announced a new AI model focused on coding: Devstral. Devstral, which Mistral says was developed in partnership with AI company All Hands AI, is openly available under an Apache 2.0 license, meaning it can be used commercially without restriction. Mistral claims that Devstral outperforms other open models like Google’s Gemma 3 27B and Chinese AI lab DeepSeek’s V3 on SWE-Bench Verified, a benchmark measuring coding skills. “Devstral excels at using tools to explore codebases, editing multiple files and power[ing] software engineering agents,” writes Mistral. “[I]t runs over code agent scaffolds such as OpenHands or SWE-Agent, which define the interface between the model and the test cases […] Devstral is light enough to run on a single [Nvidia] RTX 4090 or a Mac with 32GB RAM, making it an ideal choice for local deployment and on-device use.” Devstral, which Mistral is calling a “research preview,” can be downloaded from AI development platforms, including Hugging Face, and also tapped through Mistral’s API. It’s priced at $0.1 per million input tokens and $0.3 per million output tokens, tokens being the raw bits of data that AI models work with.  Devstral isn’t a small model per se, but it’s on the smaller side at 24 billion parameters.

Read Article

Category: AI & Machine Economy, Innovation Topics

Previous Post: « OpenAI enhances Responses API with GPT-4o image generation, remote MCP integration, and enterprise-grade tools for building advanced AI agents- developers can now perform searches across multiple vector stores and apply attribute-based filtering to retrieve only the most relevant content
Next Post: Dell leverages ‘customer zero’ model—using internal teams as first adopters—to refine AI services in real time and accelerate scalable enterprise deployment »

Copyright © 2025 Finnovate Research · All Rights Reserved · Privacy Policy
Finnovate Research · Knyvett House · Watermans Business Park · The Causeway Staines · TW18 3BA · United Kingdom · About · Contact Us · Tel: +44-20-3070-0188

We use cookies to provide the best website experience for you. If you continue to use this site we will assume that you are happy with it.