GoPlus Security has launched GoPlus-MCP, a pioneering AI-based security layer designed to enhance protection in decentralized finance (DeFi) and the broader crypto landscape. Positioned as one of the first tools of its kind, GoPlus-MCP aims to reshape how security is implemented within blockchain ecosystems by leveraging large language models (LLMs) for real-time threat detection.
Intelligent Defense Integrated with Leading AI Models
Unlike conventional security solutions that rely primarily on predefined rules and manual reviews, GoPlus-MCP applies artificial intelligence to proactively identify risks as users interact with smart contracts, wallets, and decentralized applications (dApps). The technology is integrated directly with LLM clients such as Anthropic’s Claude and DeepSeek AI, allowing seamless interaction between user activity and security assessments.
This integration empowers developers and end users alike to access advanced security capabilities without additional programming requirements. Since Claude can directly call GoPlus-MCP’s functionalities using natural language queries or automated triggers, developers of dApps can now incorporate fraud prevention, reliable data sourcing, and real-time risk scoring into their platforms more easily.
Anthropic’s strength in developing safe and interpretable AI has played a key role in shaping GoPlus-MCP’s threat detection mechanisms. The system enables AI models to interact with the GoPlus security network by asking contextual questions, thereby improving the accuracy and responsiveness of security insights.
Enhanced Protection for LLM-Driven Interfaces
In addition to Claude, DeepSeek AI and other LLM providers can benefit from GoPlus-MCP through a standardized model-call protocol. This allows developers using advanced AI to perform live security checks on transaction metadata, wallet addresses, and smart contract codes. The combination of AI’s predictive capabilities with the transparency and traceability inherent to blockchain offers comprehensive coverage across every transaction.
Introducing GoPlus-MCP.
The first AI-native security layer for Web3.
Now natively callable from @AnthropicAI Claude, @deepseek_ai, and other LLM clients supporting MCP.
A new way of thinking about Web3 security.Try it now at https://t.co/eHQSx0ED6a pic.twitter.com/UuA6znYd7H
— GoPlus Security 🚦 (@GoPlusSecurity) May 30, 2025
This advancement is expected to set a new benchmark for integrating machine learning into blockchain security, creating more dynamic and user-responsive defenses against evolving threats.
Reinforcing Safety in the Growing DeFi Ecosystem
As DeFi applications and NFT platforms continue to expand, users are becoming increasingly vulnerable to sophisticated exploits. GoPlus-MCP responds to this growing challenge by detecting risks as they arise and delivering actionable AI-powered insights in real time. This shortens the window for malicious actors and enhances user confidence across all levels of blockchain interaction.
The security layer is seen as particularly beneficial for institutions, decentralized autonomous organizations (DAOs), and consumer-facing crypto platforms. By embedding this technology, these entities can provide more resilient on-chain services that foster trust and reduce the risk of financial harm.
A Step Toward AI-Native Web3 Infrastructure
The release of GoPlus-MCP signals a broader shift in the Web3 industry, where artificial intelligence and blockchain technology are increasingly converging. With security features now native to many LLM environments, the concept of AI-powered security is rapidly becoming as integral to decentralized applications as smart contracts themselves.
By offering this next-generation toolset, GoPlus Security is not only addressing immediate concerns in DeFi safety but also laying the groundwork for a more intelligent and secure Web3 future. The integration of AI and decentralized systems is anticipated to transform how developers and users approach transaction security, setting a precedent for future innovation in the space.