Files
nexus/Hermes/xingzhi/infographic/llm-wiki-sync-circular-flow/analysis.md
2026-04-20 16:01:56 +08:00

72 lines
3.4 KiB
Markdown
Raw Blame History

This file contains ambiguous Unicode characters
This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.
---
title: "llm-wiki-sync Circular Flow"
topic: technical
data_type: cycle
complexity: moderate
point_count: 7
source_language: zh
user_language: en
---
## Main Topic
A cyclical knowledge management pipeline that transforms raw notes into structured wiki pages through continuous LLM-powered ingestion, extraction, and reuse.
## Learning Objectives
After viewing this infographic, the viewer will understand:
1. The continuous circular flow of llm-wiki-sync from raw notes to reusable knowledge
2. The key extraction outputs: Summary, Claims, Entities, Concepts, Connections
3. How feedback and reuse complete the cycle back to new raw material
## Target Audience
- **Knowledge Level**: Intermediate technical audience
- **Context**: Developers and knowledge workers interested in AI-powered knowledge management
- **Expectations**: Clear understanding of the llm-wiki-sync pipeline and its cyclical nature
## Content Type Analysis
- **Data Structure**: Cyclic process with recurring steps
- **Key Relationships**: Raw → Ingest → Extract → Source Page → Graph/Site → Reuse → Raw (feedback loop)
- **Visual Opportunities**: Circular flow with nodes for each stage, arrows showing direction, center concept
## Key Data Points (Verbatim)
### Core Pipeline Steps
1. **Raw Note** - Original document in raw/ folder
2. **Ingest** - LLM analyzes and extracts structured information
3. **Extract** - Summary, Claims, Quotes, Entities, Concepts, Connections
4. **Source Page** - Structured wiki/sources/ page with frontmatter
5. **Graph & Site** - graph.json and Quartz static site generation
6. **Reuse** - Synthesize, query, create new content from structured knowledge
7. **Feedback Loop** - New raw notes created from reused knowledge
### Extraction Outputs
- **Summary**: 核心主题, 问题域, 方法/机制, 结论/价值
- **Key Claims**: Verifiable assertions extracted from text
- **Key Entities**: LaunchDarkly, HP, Christian Dior, etc.
- **Key Concepts**: RTO, RPO, Feature Flag, Kill Switch, Gradual Rollout
- **Connections**: depends_on, enables, provides relationships
### Key Quotes
- "RTO is about speed: how fast you get back online. RPO is about data: how much you can afford to lose."
- "Deploy != Release. Feature flags change this. You can deploy code to production without releasing it to users."
## Layout × Style Signals
- Content type: cycle → circular-flow
- Tone: technical educational → chalkboard
- Audience: developers → clear, legible, professional
- Complexity: moderate → balanced density with clear visual hierarchy
## Design Instructions (from user input)
- **Layout**: circular-flow (NOT linear - must emphasize recurring cycle)
- **Style**: chalkboard (dark background, hand-drawn chalk accents)
- **Aspect**: 16:9 landscape
- **Language**: English
- Circular flow showing: raw note -> ingest -> extract -> source page -> graph/static site -> reuse/feedback -> knowledge base
- Include core extraction outputs as recurring nodes/callouts
- Keep text concise and legible
- Dark chalkboard background with hand-drawn chalk accents
- Avoid clutter, make cycle visually clear and publication-ready
## Recommended Combinations
1. **circular-flow + chalkboard** (Recommended): Perfect match for cycle/process content with chalkboard aesthetic
2. **hub-spoke + technical-schematic**: For emphasizing central concepts with technical precision
3. **bento-grid + craft-handmade**: For multiple topic overview with friendly handmade feel