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Derisk
What is Derisk
DeRisk is an AI-native risk intelligence system designed to manage application system risks, providing comprehensive and in-depth protection 24/7.
Use cases
Use cases for DeRisk include monitoring application performance, identifying potential security threats, and ensuring compliance with risk management standards.
How to use
To use DeRisk, install the required packages using the provided installation commands, then start the application server and access the web interface at http://localhost:7777.
Key features
Key features of DeRisk include 24/7 risk management, AI-driven insights, and a user-friendly web interface for monitoring and control.
Where to use
DeRisk can be used in various fields such as software development, cybersecurity, and any application environment that requires risk management.
Clients Supporting MCP
The following are the main client software that supports the Model Context Protocol. Click the link to visit the official website for more information.
Overview
What is Derisk
DeRisk is an AI-native risk intelligence system designed to manage application system risks, providing comprehensive and in-depth protection 24/7.
Use cases
Use cases for DeRisk include monitoring application performance, identifying potential security threats, and ensuring compliance with risk management standards.
How to use
To use DeRisk, install the required packages using the provided installation commands, then start the application server and access the web interface at http://localhost:7777.
Key features
Key features of DeRisk include 24/7 risk management, AI-driven insights, and a user-friendly web interface for monitoring and control.
Where to use
DeRisk can be used in various fields such as software development, cybersecurity, and any application environment that requires risk management.
Clients Supporting MCP
The following are the main client software that supports the Model Context Protocol. Click the link to visit the official website for more information.
Content
OpenDeRisk
OpenDeRisk AI-Native Risk Intelligence Systems —— Your application system risk intelligent manager provides 7 * 24-hour comprehensive and in-depth protection.
Features
- DeepResearch RCA: Quickly locate the root cause of issues through in-depth analysis of logs, traces, and code.
- Visualized Evidence Chain: Fully visualize the diagnostic process and evidence chain, making the diagnosis clear and enabling quick judgment of accuracy.
- Multi-Agent Collaboration: Collaboration among SRE-Agent, Code-Agent, ReportAgent, Vis-Agent, and Data-Agent.
- Open and Open-Source Architecture: OpenDeRisk is built with a completely open and open-source architecture, allowing related frameworks and code to be used out of the box in open-source projects.
Architure
The system adopts a multi-agent architecture. Currently, the code mainly implements the green-highlighted parts. Alert awareness is based on Microsoft’s open-source OpenRCA dataset. The dataset size is approximately 26GB after decompression. On this dataset, we achieve root cause analysis and diagnosis through multi-agent collaboration, where the Code-Agent dynamically writes code for final analysis.
Technical Implementation
Data Layer: Pull the large-scale OpenRCA dataset (20GB) from GitHub, decompress it locally, and process it for analysis.
Logic Layer: Multi-agent architecture, with collaboration among SRE-Agent, Code-Agent, ReportAgent, Vis-Agent, and Data-Agent to perform in-depth DeepResearch RCA (Root Cause Analysis).
Visualization Layer: Use the Vis protocol to dynamically render the entire processing flow and evidence chain, as well as the process of multi-role collaboration and switching.
Digital Employees (Agents) in OpenDeRisk
Quick Start
Install uv
curl -LsSf https://astral.sh/uv/install.sh | sh
Install Packages
uv sync --all-packages --frozen \ --extra "base" \ --extra "proxy_openai" \ --extra "rag" \ --extra "storage_chromadb" \ --extra "client"
Start
Configure the API_KEY in the derisk-proxy-deepseek.toml file, then run the following command to start.
Note: By default, we use the Telecom dataset from the OpenRCA dataset. You can download it via the link or the following command:
gdown https://drive.google.com/uc?id=1cyOKpqyAP4fy-QiJ6a_cKuwR7D46zyVe
After downloading, modify the dataset path in the file basic_prompt_Telecom.py to the local absolute path.
Run the startup command:
uv run python packages/derisk-app/src/derisk_app/derisk_server.py --config configs/derisk-proxy-deepseek.toml
Visit Website
Open your browser and visit http://localhost:7777
Execution Results
As shown in the figure below, this demonstrates a scenario where multiple agents collaborate to handle a complex operational diagnostic task.
Acknowledgement
The OpenDeRisk-AI community is dedicated to building AI-native risk intelligence systems. 🛡️ We hope our community can provide you with better services, and we also hope that you can join us to create a better future together. 🤝
Community Group
Join our networking group on Dingding and share your experience with other developers!

Dev Tools Supporting MCP
The following are the main code editors that support the Model Context Protocol. Click the link to visit the official website for more information.