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llamafile 0.10.0 重构版,Qwen3.5,lfm2,Anthropic API

Hi all, I'm Peter at Staff Engineer and Mozilla.ai and I want to share our idea for a standard for shared agent learning, conceptually it seemed to fit easily in my mental model as a Stack Overflow for agents. The project is trying to see if we can get agents (any agent, any model) to propose 'knowledge units' (KUs) as a standard schema based on gotchas it runs into during use, and proactively query for existing KUs in order to get insights which it can verify and confirm if they prove useful. It's currently very much a PoC with a more lofty proposal in the repo, we're trying to iterate from local use, up to team level, and ideally eventually have some kind of public commons. At the team level (see our Docker compose example) and your coding agent configured to point to the API address for the team to send KUs there instead - where they can be reviewed by a human in the loop (HITL) via a UI in the browser, before they're allowed to appear in queries by other agents in your team. We're learning a lot even from using it locally on various repos internally, not just in the kind of KUs it generates, but also from a UX perspective on trying to make it easy to get using it and approving KUs in the browser dashboard. There are bigger, complex problems to solve in the future around data privacy, governance etc. but for now we're super focussed on getting something that people can see some value from really quickly in their day-to-day. Tech stack: * Skills - markdown * Local Python MCP server (FastMCP) - managing a local SQLite knowledge store * Optional team API (FastAPI, Docker) for sharing knowledge across an org * Installs as a Claude Code plugin or OpenCode MCP server * Local-first by default; your knowledge stays on your machine unless you opt into team sync by setting the address in config * OSS (Apache 2.0 licensed) Here's an example of something which seemed straight forward, when asking Claude Code to write a GitHub action it often used actions that were multiple major versions out of date because of its training data. In this case I told the agent what I saw when I reviewed the GitHub action YAML file it created and it proposed the knowledge unit to be persisted. Next time in a completely different repo using OpenCode and an OpenAI model, the cq skill was used up front before it started the task and it got the information about the gotcha on major versions in training data and checked GitHub proactively, using the correct, latest major versions. It then confirmed the KU, increasing the confidence score. I guess some folks might say: well there's a CLAUDE.md in your repo, or in ~/.claude/ but we're looking further than that, we want this to be available to all agents, to all models, and maybe more importantly we don't want to stuff AGENTS.md or CLAUDE.md with loads of rules that lead to unpredictable behaviour, this is targetted information on a particular task and seems a lot more useful. Right now it can be installed locally as a plugin for Claude Code and OpenCode: claude plugin marketplace add mozilla-ai/cq claude plugin install cq This allows you to capture data in your local ~/.cq/local.db (the data doesn't get sent anywhere else). We'd love feedback on this, the repo is open and public - so GitHub issues are welcome. We've posted on some of our social media platforms with a link to the blog post (below) so feel free to reply to us if you found it useful, or ran into friction, we want to make this something that's accessible to everyone. Blog post with the full story: https://blog.mozilla.ai/cq-stack-overflow-for-agents/ GitHub repo: https://github.com/mozilla-ai/cq Thanks again for your time.

  • API 平台
  • macOS
  • Web应用
Mar 19, 2026访问官网

AI 摘要

llamafile 0.10.0 是一个重建版本,增加了对Qwen3.5和lfm2模型的支持,并集成了Anthropic API。它将大型语言模型及其依赖项打包成一个可执行文件。

适合谁

寻求轻松本地LLM部署的开发者, 尝试多种模型架构的研究人员, 希望无需复杂设置即可运行AI模型的爱好者

为什么值得关注

它通过提供一个单一、可移植的可执行文件,简化了不同大型语言模型的运行和切换。

核心特性

  • 重构架构以提升性能和稳定性
  • 集成Qwen3.5和LFM2语言模型
  • 支持Anthropic API兼容性
  • 单文件分发便于部署

使用场景

  • 一位开发者希望在本地测试不同的AI模型,而无需管理多个安装环境。他们下载llamafile,直接从可执行文件运行各种模型如Qwen3.5,为原型应用程序比较输出结果。
  • 研究人员需要对隐私敏感的数据进行离线语言模型分析。他们使用llamafile在本地机器上运行模型,确保数据不会离开安全环境,同时仍能使用先进的AI能力。
  • 教育工作者为网络条件有限的课堂创建交互式AI演示。他们分发包含预配置模型的llamafile可执行文件,学生可以在实践工作坊中直接在笔记本电脑上运行。