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compress
// Compress text semantically with iterative validation, anchor checksums, and verified information preservation.
// Compress text semantically with iterative validation, anchor checksums, and verified information preservation.
东方财富金融数据查询工具。支持行情数据(股价、资金流向、估值)、财务数据(财报、股东结构、高管信息)、关系与经营数据。通过自然语言查询,如"东方财富最新价"、"贵州茅台市盈率"。当用户需要查询股票、基金、指数、板块等金融数据时使用此skill。需要先配置apikey才能使用。
东方财富资讯搜索工具。基于东方财富妙想搜索能力,用于获取金融相关的新闻、公告、研报、政策、交易规则、事件分析、影响解读等时效性信息。支持个股资讯、板块新闻、宏观分析等。当用户需要搜索金融资讯、了解市场动态、查看研报解读时使用此skill。需要先配置apikey才能使用。
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Compress files to reduce storage and transfer size. Use this skill when users ask to shrink PDFs or images, optimize upload/share size, or balance quality and size. Supports PDF compression and image compression with Python-first workflows plus Node.js fallback when Python dependencies are unavailable.
全自动检索 GitHub 热门仓库,分析并维护项目文档,自动提交 PR。用于发现文档问题(死链、typo、过时内容等)并自动修复提交。当用户需要批量维护开源项目文档、自动提 PR 修复文档问题时触发此技能。
Use Model Context Protocol servers to access external tools and data sources. Enable AI agents to discover and execute tools from configured MCP servers (legal databases, APIs, database connectors, weather services, etc.).
| name | Compress |
| description | Compress text semantically with iterative validation, anchor checksums, and verified information preservation. |
This is SEMANTIC compression, not bit-perfect lossless.
1. Compress original O → compressed C
2. Extract anchors from O (entities, numbers, dates)
3. Reconstruct C → R (without seeing O)
4. Verify: anchors match + semantic diff
5. If mismatch → refine C with missing info
6. Repeat until validated (max 3 iterations)
Convergence = verified. No convergence after 3 rounds = level too aggressive.
| Task | Load |
|---|---|
| Compression levels (L1-L4) | levels.md |
| Validation algorithm details | validation.md |
| Format-specific strategies | formats.md |
| Token budgeting and metrics | metrics.md |
| Level | Ratio | Reliability | Use Case |
|---|---|---|---|
| L1 | ~0.8x | ✅ High | Production, human-readable |
| L2 | ~0.5x | ✅ Good | System prompts, repeated use |
| L3 | ~0.3x | ⚠️ Moderate | Experimental, review output |
| L4 | ~0.15x | ⚠️ Low | Research only, expect losses |
Before compression, extract critical facts:
[ANCHORS: 3 people, $42,000, 2024-03-15, "Project Alpha"]
Reconstruction MUST reproduce these exactly. If anchors mismatch → compression failed.
Each compression costs 3-4 LLM calls. Break-even calculation:
break_even_retrievals = compression_tokens / saved_tokens_per_use
Only cost-effective if: You'll retrieve the compressed content 6-8+ times.
For one-time use → just use the original text.