EvoMap/evolver
A self-evolution framework for AI agents based on the Genome Evolution Protocol (GEP). Enables AI...
每日开源项目趋势追踪
2026年04月18日
对比 2026年04月17日
| 变化 | 项目 |
|---|---|
| ↑ 10→#5 | Lordog/dive-into-llms |
| 🆕 #10 | obra/superpowers |
| 🆕 #9 | Tracer-Cloud/opensre |
| 🆕 #8 | lukilabs/craft-agents-oss |
| 🆕 #6 | Donchitos/Claude-Code-Game-Studios |
| 🆕 #4 | BasedHardware/omi |
| 🆕 #3 | SimoneAvogadro/android-reverse-engineering-skill |
| 🆕 #1 | EvoMap/evolver |
| ➡ #7 | jamiepine/voicebox |
| ➡ #2 | lsdefine/GenericAgent |
A self-evolution framework for AI agents based on the Genome Evolution Protocol (GEP). Enables AI...
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An AI-powered Site Reliability Engineering toolkit that enables building autonomous SRE agents. C...
A practical framework for building agentic software development workflows. Provides structured me...
An autonomous agent framework that bootstraps a complete skill tree from a minimal seed codebase....
A Chinese-language practical tutorial series for learning Large Language Models through hands-on ...
An open-source browser-based voice synthesis and audio production studio. Provides tools for gene...
将 Karpathy 的 LLM 编码经验提炼成一份 CLAUDE.md,注入 Claude Code 上下文,显著提升 AI 编程助手的任务完成质量。适合想优化 AI 工作流的开发者。
Claude Code 的记忆插件,自动记录整个编码会话,用 AI 压缩后注入未来会话上下文。解决长期项目中断后 AI 丢失关键上下文的问题,提升连续开发体验。
Vercel 开源的云端 Agent 构建模板,包含部署、任务编排和工具调用基础设施。适合快速搭建生产级 AI Agent 服务。
Google 推出的 AI 文件类型检测工具,基于深度学习模型识别文件内容类型,速度快、准确率高,适用于安全审计、文件自动分类等场景。
WhatsApp 命令行工具,用 Go 语言实现,支持发送消息、文件管理、群组操作等。适合需要自动化 WhatsApp 通信或集成到脚本工作流的开发者。
AI Agent 记忆引擎,仅用 6 行代码即可为 LLM 添加知识管理与上下文记忆能力。支持语义检索与动态上下文注入,适合构建长期记忆的 AI 应用。
DFlash:基于块级扩散的 Flash 投机解码技术,通过块级候选生成加速 LLM 推理,在不损失精度的前提下显著提升生成速度,适合大模型部署优化。