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badhope/forever

Forever — a TypeScript-native AI Agent framework for digital legacy and emotional companionship. Multi-agent orchestration, unified LLM adapter for 16+ platforms, 5 thinking strategies, RAG pipeline, MCP support, graph-based workflow engine, and safety guardrails.

지원 대상~Claude Code~Codex CLI~Cursor
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badhope/forever

Forever — a TypeScript-native AI Agent framework for digital legacy and emotional companionship. Multi-agent orchestration, unified LLM adapter for 16+ platforms, 5 thinking strategies, RAG pipeline, MCP support, graph-based workflow engine, and safety guardrails.

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