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nexent

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, feedbac

Description

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.

README

Nexent Banner

Website English 中文 Documentation Docker Pulls Codecov (with branch)

Nexent is a zero-code platform for auto-generating production-grade AI agents, built on Harness Engineering principles. It provides unified tools, skills, memory, and orchestration with built-in constraints, feedback loops, and control planes — no orchestration, no complex drag-and-drop required, using pure language to develop any agent you want.

One prompt. Endless reach.

🌐 Visit our official website

Nexent Banner

Nexent.Intro.mp4

⚡ Have a try first

📋 Prerequisites

Resource Minimum
CPU 2 cores
RAM 6 GiB
Software Docker & Docker Compose installed

🛠️ Quick start with Docker Compose

git clone https://github.com/ModelEngine-Group/nexent.git
cd nexent/docker
cp .env.example .env # fill only necessary configs
bash deploy.sh

When the containers are running, open http://localhost:3000 in your browser and follow the setup wizard.

🤝 Join Our Community

If you want to go fast, go alone; if you want to go far, go together.

We have released Nexent v1, and the platform is now relatively stable. However, there may still be some bugs, and we are continuously improving and adding new features. Stay tuned: we will announce v2.0 soon!

  • 🗺️ Check our Feature Map to explore current and upcoming features.
  • 🔍 Try the current build and leave ideas or bugs in the Issues tab.
  • 🐛 Check our Known Issues page for the latest issue status and solutions.

Rome wasn't built in a day.

If our vision speaks to you, jump in via the Contribution Guide and shape Nexent with us.

Early contributors won't go unnoticed: from special badges and swag to other tangible rewards, we're committed to thanking the pioneers who help bring Nexent to life.

Most of all, we need visibility. Star ⭐ and watch the repo, share it with friends, and help more developers discover Nexent — your click brings new hands to the project and keeps the momentum growing.

💬 Community & contact

✨ Key Features

1 Smart agent prompt generation
Turn plain language into runnable prompts. Nexent automatically chooses the right tools and plans the best action path for every request.

Feature 1

2 Scalable data process engine
Process 20+ data formats with fast OCR and table structure extraction, scaling smoothly from a single process to large-batch pipelines.

Feature 2

3 Personal-grade knowledge base
Import files in real time, auto-summarise them, and let agents access both personal and global knowledge instantly, also knowing what it can get from each knowledge base.

Feature 3

4 Internet knowledge search
Connect to 5+ web search providers so agents can mix fresh internet facts with your private data.

Feature 4

5 Knowledge-level traceability
Serve answers with precise citations from web and knowledge-base sources, making every fact verifiable.

Feature 5

6 Multimodal understanding & dialogue
Speak, type, files, or show images. Nexent understands voice, text, and pictures, and can even generate new images on demand.

Feature 6

7 MCP tool ecosystem
Drop in or build Python plug-ins that follow the MCP spec; swap models, tools, and chains without touching core code.

Feature 7

🌱 MCP Tool Ecosystem

Check our MCP Ecosystem page for detailed information about the MCP tool ecosystem, including community hubs, recommended tools, and integration guides.

🛠️ Developer Guide

🤖 Model Configuration & Provider Recommendations

Check our Model Providers page for detailed model configuration guides and recommended provider information.

🔧 Hack on Nexent

Want to build from source or add new features? Check the Contribution Guide for step-by-step instructions.

🛠️ Build from Source

Prefer to run Nexent from source code? Follow our Developer Guide for detailed setup instructions and customization options.

📄 License

Nexent is licensed under the MIT License.

Release History

VersionChangesUrgencyDate
v2.0.2# 🚀 Nexent:开源智能体平台 / Nexent: Open Source Intelligent Agent Platform 我们很高兴地宣布Nexent v2.0.2正式发布!🎉 Nexent 是一个开源智能体平台,能够将流程的自然语言转化为完整的多模态智能体 —— 无需编排,无需复杂拖拉拽。基于 MCP 工具生态,Nexent 提供强大的模型集成、数据处理、知识库管理、零代码智能体开发能力。我们的目标很简单:将数据、模型和工具整合到一个智能中心中,使日常工作流程更智能、更互联。 We are excited to announce that Nexent v2.0.2 is released! 🎉 Nexent is an open-source agent platform that turns process-level natural language into complete multimodal agents — no diagrams, no wiring. Built on the MCP tool ecosystem, NexeHigh4/18/2026
v2.0.1# 🚀 Nexent:开源智能体平台 / Nexent: Open Source Intelligent Agent Platform 我们很高兴地宣布Nexent v2.0.1正式发布!🎉 Nexent 是一个开源智能体平台,能够将流程的自然语言转化为完整的多模态智能体 —— 无需编排,无需复杂拖拉拽。基于 MCP 工具生态,Nexent 提供强大的模型集成、数据处理、知识库管理、零代码智能体开发能力。我们的目标很简单:将数据、模型和工具整合到一个智能中心中,使日常工作流程更智能、更互联。 We are excited to announce that Nexent v2.0.1 is released! 🎉 Nexent is an open-source agent platform that turns process-level natural language into complete multimodal agents — no diagrams, no wiring. Built on the MCP tool ecosystem, NexHigh4/10/2026

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