Self-evolving ReAct Multi-Agent Swarm | Balanced模式省60-80% token | 全程思考可见 + 后台自我进化 | 支持Ollama/DeepSeek本地部署 | 🇨🇳 中文版
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# MultiAgentSwarm v4.1.0 (ReAct Visualization Edition)
**Self-Adaptive Digital Team**
**A fully visible, self-evolving ReAct Digital Team** that intelligently decides *when to be fast* and *when to go deep*.
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**MultiAgentSwarm v4.1.0** 不再是简单的“多个LLM并行聊天”,而是一个**完全可视化、智能决策、自进化 ReAct 数字团队** —— 它完美还原经典 ReAct 架构,同时注入群体智能、动态规划、分层终身记忆与生产级交付能力。
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<a href="#english-version">🇬🇧 English Version</a>
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<a href="#chinese-version">🇨🇳 中文版</a>
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<img src="images/architecture-diagram.png" alt="MultiAgentSwarm v3.2.0 Architecture" width="95%" style="border-radius: 12px; box-shadow: 0 10px 30px rgba(0,0,0,0.3);">
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## English Version <a id="english-version"></a>
**MultiAgentSwarm v4.1.0**
**A fully visible, self-evolving ReAct Digital Team** that intelligently decides *when to be fast* and *when to go deep*.
### Core Philosophy (First Principles)
We rejected the “use everything on every task” anti-pattern.
Instead, we built a swarm that **knows itself** — automatically choosing the right level of intelligence for each request.
This is **the only swarm that**:
- **Intelligently routes** every task: Simple / Medium / Balanced / Complex
- **Forces visible ReAct thinking** in every single agent response
- Delivers **Balanced mode** as the default sweet spot (3 agents, planning + tools, best quality/speed ratio)
- Runs **Tree-of-Thoughts** with 3 concurrent exploration branches
- Spawns **Dynamic Agents** on-the-fly with true parallel subtask execution (Hierarchical Supervisor)
- Maintains **lifelong hierarchical memory** (PrimalMemory + Vector + Knowledge Graph) with automatic decay & distillation
- Performs **all self-evolution completely in the backgrHAL 分层混合模型工作流 — 强模型(Claude)负责理解/拆解/验收,低成本模型(DeepSeek)负责检索/提取/清洗。Hermes Agent skill。
An LLM agent fine-tuned on DeepSeek for spaced repetition, dynamically integrating knowledge points based on the Ebbinghaus forgetting curve.
基于 STM32F103 构建的端到端 AI 智能手表生态。自研“零重定位”原生机器码动态加载引擎与页面栈式 UI 框架;集成生产级 OTA 回滚保护机制与高带宽(921600 baud)串口协议栈。通过 Node.js 中继实现 DeepSeek AI 语义控制及 ASRPRO 语音全双工交互,是一个集成了分布式计算、现代存储管理与 AI Agent 的嵌入式全栈工程。
A Meta-Agent-Driven Self-Evolving Multi-Agent System for UAV Detection and Tracking
One command to run Hermes AI Agent with a browser UI. Zero prerequisites. 一行命令,AI 就位。
网页应用Agent,接入DeepSeek、Mimo等模型