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Introducing GoPlus-MCP. The first AI-native security layer for Web3. Now natively callable from Anthropic Claude, DeepSeek, and other LLM clients supporting MCP. A new way of thinking about Web3 security. Try it now at

44,145 Aufrufe • vor 1 Jahr •via X (Twitter)

11 Kommentare

Profilbild von Oji San 👴🏻
Oji San 👴🏻vor 1 Jahr

@AnthropicAI @deepseek_ai @MirraTerminal @Rollup_News rollup

Profilbild von Alexander Mia
Alexander Miavor 1 Jahr

INTRODUCING: Agentic Security - LLM Security Scanner! 🔍 🔑 Features: Scans for prompt injections, jailbreaking & more. Provides detailed reports & options to customize attack rules. 🔗access the GitHub Link ↓

Profilbild von Patient♥微甜🚦
Patient♥微甜🚦vor 1 Jahr

@AnthropicAI @deepseek_ai I will try it

Profilbild von $MIA
$MIAvor 1 Jahr

@AnthropicAI @deepseek_ai Web3 security just got real 🔥

Profilbild von 飞仔Qi
飞仔Qivor 1 Jahr

@AnthropicAI @deepseek_ai Great project @mikelee205

Profilbild von billzcollecshun (Ø,G)🚦
billzcollecshun (Ø,G)🚦vor 1 Jahr

@AnthropicAI @deepseek_ai Security is a Daily Job 🔥 Thank you GoPlus for keeping it Real in Real-time 💚

Profilbild von Enigmaⓛ🚦🐦‍🔥
Enigmaⓛ🚦🐦‍🔥vor 1 Jahr

@AnthropicAI @deepseek_ai Wow, this is impressive

Profilbild von kabuda 🧡 🚦☂️
kabuda 🧡 🚦☂️vor 1 Jahr

@AnthropicAI @deepseek_ai big news!

Profilbild von haykeenz
haykeenzvor 1 Jahr

@AnthropicAI @deepseek_ai Wow This is screaming security

Profilbild von RoseCityWeb3.⌐◨-◨🌹
RoseCityWeb3.⌐◨-◨🌹vor 1 Jahr

@AnthropicAI @deepseek_ai Wow, one giant step for web3 kind!

Profilbild von 𝑴𝒉𝒊𝒛_𝑴𝒉𝒆𝒓𝒄𝒊_𝑯𝒆𝒍𝒍𝒂
𝑴𝒉𝒊𝒛_𝑴𝒉𝒆𝒓𝒄𝒊_𝑯𝒆𝒍𝒍𝒂vor 1 Jahr

@AnthropicAI @deepseek_ai Security is very important in web3

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Andrew Ng

141,952 Aufrufe • vor 1 Jahr