awesome-openclaw-usecases-zh and awesome-openclaw-zh
These are complementary resources that serve different purposes: one focuses on real-world use case scenarios and best practices (A), while the other provides a hands-on implementation library with copy-paste ready examples and deployment guidance (B), making them best used together for learning and building with OpenClaw.
About awesome-openclaw-usecases-zh
AlexAnys/awesome-openclaw-usecases-zh
🇨🇳 OpenClaw(个人智能体)中文最佳用例大全 | 40 个真实场景(国内特色 + 海外的国内生态适配):自动化办公、内容创作、服务器运维、个人助理、知识管理 | 新手友好 | Chinese guide for OpenClaw AI agent use cases
# Technical Summary Curates 42+ verified OpenClaw AI agent use cases with localized implementations for Chinese ecosystems (Feishu, DingTalk, WeChat Work, AKShare), organizing patterns across automation, content creation, DevOps, and productivity. The collection pairs community-adapted international prompts with original domestic workflows, structured with standardized templates covering pain points, capabilities, required skills, and setup instructions with copy-paste prompts. Emphasizes practical orchestration patterns—multi-agent coordination via STATE.yaml, sub-agent parallelization, cron-based heartbeats, and stateless webhook delegation to n8n—enabling both no-code (prompt copying) and code-first architectures for persistent 24/7 autonomous execution.
About awesome-openclaw-zh
cogine-ai/awesome-openclaw-zh
OpenClaw 中文实战库:176 个可复制使用场景,从部署到5分钟上手到完全精通。案例覆盖自动化、内容创作、运营增长与安全使用。
Provides platform-agnostic deployment guides (macOS, Windows, Linux VPS, multi-agent setups) and native integrations with Chinese communication platforms (Feishu, DingTalk, WeChat Work) through standardized channel adapters. Organizes 184 production workflows across 14 categories—from RAG-based knowledge systems and multi-agent teams to social monitoring and security automation—each with executable code and configuration templates rather than abstract examples.
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