Multi-Agent Harness for Production AI
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Updated
Apr 21, 2026 - Python
Multi-Agent Harness for Production AI
Nexent is a zero-code platform for auto-generating production-grade AI agents using Harness Engineering principles — unified tools, skills, memory, and orchestration with built-in constraints, feedback loops, and control planes.
GoClaw - GoClaw is OpenClaw rebuilt in Go — with multi-tenant isolation, 5-layer security, and native concurrency. Deploy AI agent teams at scale without compromising on safety.
Data context layer for unstructured data - images, video, sensor data, text and PDFs
A meta-skill that designs domain-specific agent teams, defines specialized agents, and generates the skills they use.
DeepBot is a system-level AI assistant built for both personal productivity and enterprise workflows — one-click setup, seamless experience, and native Feishu integration.
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Reference code for the Meta-Harness paper.
Open-source agentic data engineering harness for dbt, SQL, and cloud warehouses. 100+ tools, 10 warehouses, AI-powered.
KWeaver Core is a harness-first foundation for enterprise decision agents. It turns fragmented data, knowledge, tools, and policies into governed context, safe execution, and verifiable feedback loops. With semantic modeling, real-time access, runtime control, and TraceAI, it helps AI systems reason, adapt, and act reliable in complex enterprises.
A general, evolvable, and distributed agent framework & harness for data science.
AI agent tutorials for backend developers without AI background. 适合后端工程师的零基础 AI Agent 教程
🤖 Official Interactive Tutorial for OpenHarness – Zero to Hero in 12 Chapters | Learn OpenHarness like Claude Code: Agent Loop, Tools, Memory, Multi-Agent | 面向零基础的 AI Agent 交互式教程
AutoHarness: Automated Harness Engineering for AI Agents
Agent skill for harness engineering — memory, permissions, context engineering, multi-agent coordination. Distilled from Claude Code, with Codex CLI and Gemini CLI on the roadmap. EN/ZH. Install via npx skills add.
An awesome list of Agent Harness engineering resources, including GitHub projects, tools, benchmarks, and practical guides.
A ReAct-Based Highly Robust Autonomous Agent (Harness) Framework.
Unified Emacs interface supporting OpenAI Codex, GitHub Copilot CLI, Claude Code, Gemini CLI, Opencode, and more
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