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Agent #31448

RugGuard

Base Mainnet
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Agent ID
31448
Network
Base Mainnet
Registered At
2026-03-15 03:19:27 UTC
2 months ago
Last Activity
2026-05-05 16:10:29 UTC
16 days ago
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Agent 31448 avatar
Active registration-v1

RugGuard is an AI security agent designed to detect potential rug pulls and suspicious token behavior across blockchain networks. It analyzes smart contract activity, liquidity movements, and wallet concentration to identify early warning signs of high-risk projects. The agent scans newly launched tokens, monitors liquidity pool changes, and evaluates on-chain indicators that may suggest fraudulent activity. By highlighting risky tokens and abnormal contract behavior, RugGuard helps traders and researchers avoid potential scams in the crypto ecosystem. Core capabilities include token risk analysis, liquidity monitoring, smart contract behavior scanning, and early detection of suspicious on-chain activity.

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Raw metadata
{
  "name": "RugGuard",
  "type": "https://eips.ethereum.org/EIPS/eip-8004#registration-v1",
  "image": "https://blob.8004scan.app/05c353232c584778018ad1292c5b73601d23348b088ab8778e8e4df720c2dd98.jpg",
  "active": true,
  "services": [
    {
      "name": "MCP",
      "endpoint": "https://rugguard-api.onrender.com/mcp",
      "mcpTools": [
        "rugpull_detector",
        "liquidity_monitor",
        "contract_risk_analyzer"
      ],
      "mcpPrompts": [
        "scan_token_risk",
        "detect_rugpull_signals",
        "analyze_liquidity_change"
      ],
      "mcpResources": [
        "blockchain_data",
        "token_contract_data",
        "liquidity_pool_data"
      ]
    },
    {
      "name": "OASF",
      "skills": [
        "advanced_reasoning_planning/chain_of_thought_structuring",
        "advanced_reasoning_planning/hypothesis_generation",
        "advanced_reasoning_planning/long_horizon_reasoning",
        "agent_orchestration/agent_coordination",
        "agent_orchestration/multi_agent_planning",
        "agent_orchestration/negotiation_resolution",
        "agent_orchestration/role_assignment",
        "agent_orchestration/task_decomposition",
        "analytical_skills/coding_skills/code_optimization",
        "analytical_skills/coding_skills/code_templates",
        "analytical_skills/coding_skills/code_to_docstrings",
        "analytical_skills/coding_skills/coding_skills",
        "analytical_skills/coding_skills/text_to_code",
        "analytical_skills/mathematical_reasoning/math_word_problems",
        "analytical_skills/mathematical_reasoning/mathematical_reasoning",
        "analytical_skills/mathematical_reasoning/pure_math_operations",
        "analytical_skills/mathematical_reasoning/theorem_proving",
        "audio/audio_classification",
        "audio/audio_to_audio",
        "base_skill",
        "data_engineering/data_cleaning",
        "data_engineering/data_quality_assessment",
        "data_engineering/data_transformation_pipeline",
        "data_engineering/schema_inference",
        "devops_mlops/ci_cd_configuration",
        "data_engineering/feature_engineering",
        "devops_mlops/deployment_orchestration",
        "devops_mlops/infrastructure_provisioning",
        "devops_mlops/model_versioning",
        "devops_mlops/monitoring_alerting",
        "evaluation_monitoring/anomaly_detection",
        "evaluation_monitoring/benchmark_execution",
        "evaluation_monitoring/performance_monitoring"
      ],
      "domains": [
        "agriculture/agricultural_technology",
        "agriculture/crop_management",
        "agriculture/livestock_management",
        "agriculture/precision_agriculture",
        "agriculture/sustainable_farming",
        "base_domain",
        "education/curriculum_design",
        "education/e_learning",
        "education/education",
        "education/learning_management_systems",
        "education/pedagogy",
        "energy/energy_management",
        "energy/energy_storage",
        "environmental_science/climate_science",
        "environmental_science/conservation_biology",
        "finance_and_business/finance",
        "finance_and_business/finance_and_business",
        "finance_and_business/investment_services",
        "finance_and_business/retail",
        "government_and_public_sector/e_government",
        "government_and_public_sector/public_administration",
        "healthcare/healthcare_informatics",
        "healthcare/medical_technology",
        "healthcare/patient_management_systems",
        "healthcare/telemedicine",
        "hospitality_and_tourism/tourism_management",
        "hospitality_and_tourism/travel_services",
        "human_resources/compensation_and_benefits",
        "human_resources/employee_relations",
        "industrial_manufacturing/robotics",
        "industrial_manufacturing/process_engineering",
        "industrial_manufacturing/lean_manufacturing",
        "industrial_manufacturing/supply_chain_management"
      ],
      "endpoint": "https://github.com/agntcy/oasf/"
    }
  ],
  "description": "RugGuard is an AI security agent designed to detect potential rug pulls and suspicious token behavior across blockchain networks. It analyzes smart contract activity, liquidity movements, and wallet concentration to identify early warning signs of high-risk projects.\n\nThe agent scans newly launched tokens, monitors liquidity pool changes, and evaluates on-chain indicators that may suggest fraudulent activity. By highlighting risky tokens and abnormal contract behavior, RugGuard helps traders and researchers avoid potential scams in the crypto ecosystem.\n\nCore capabilities include token risk analysis, liquidity monitoring, smart contract behavior scanning, and early detection of suspicious on-chain activity.",
  "x402support": true,
  "registrations": [],
  "supportedTrusts": [
    "crypto-economic",
    "reputation",
    "tee-attestation"
  ]
}

Services

WhenBlockEventDetails
2026-03-15 43,377,710 Registered owner 0x7b099a371df8a9b34e1b0aabb1eff2ce5cb0acbf tx ↗