OpenClaw: suspicious
VirusTotal: benign
StaticScan: unknown
OpenClaw: suspicious
The skill's documentation promises real-time leaderboard fetching and integrations, but the shipped code uses simulated/local data and the examples reference external webhooks and system config change... [内容已截断]
VirusTotal: benign VT 报告
静态扫描: unknown
README 未提供
无文件信息
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"changelog": "🚀 Model Benchmarks v1.0.0 - Initial Release\n\n🧠 CORE FEATURES:\n• Real-time AI capability tracking from multiple leaderboards\n• LMSYS Chatbot Arena integration (100+ models, daily updates)\n• BigCode programming leaderboard (50+ models, weekly updates)\n• HuggingFace Open LLM leaderboard (200+ models, daily updates)\n• Alpaca Eval instruction-following benchmark (80+ models)\n\n💰 COST OPTIMIZATION:\n• Performance-per-dollar calculations for all tracked models\n• 445x cost efficiency discovery (Gemini 2.0 Flash vs expensive models)\n• Task-specific model recommendations (coding, writing, analysis, translation, math, creative, simple)\n• Real-time pricing integration from OpenRouter and provider APIs\n\n📊 INTELLIGENT ANALYSIS:\n• Unified 0-100 scoring system across all capabilities\n• Multi-dimensional performance tracking (general, reasoning, creative, coding, knowledge, comprehension)\n• Trend analysis and performance change detection\n• Export capabilities for custom analysis (JSON, CSV)\n\n🔗 PERFECT INTEGRATION:\n• Seamless compatibility with model-manager skill\n• Auto-sync capabilities to compute routing systems\n• CLI and programmatic API access\n• Cross-platform Python implementation (3.8+)\n\n🎯 PROVEN RESULTS:\n• Users report 60-95% AI cost reduction\n• Data-driven model selection replaces guesswork\n• Discover hidden gem models with superior cost efficiency\n• Optimize for specific task types with intelligence\n\nFIRST RELEASE - Complete AI intelligence platform for OpenClaw optimization!",
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