Add deep-reading structure note example (LLM learning notes)
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- **Open loops**: [ ] Unresolved item 1; [ ] Unresolved item 2 (or "None.")
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```
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```
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### Deep-reading output example (structure note)
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After a deep-learning run (e.g. book/long video), the structure note ties atomic notes into a navigable reading order and logic tree. Example from *Deep Dive into LLMs like ChatGPT* (Karpathy):
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```markdown
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---
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type: Structure_Note
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tags: [LLM, AI基础设施, 深度学习]
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links: ["[[索引_LLM技术全栈_从预训练到部署]]", "[[索引_AI时代观察]]"]
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---
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# [Title] 结构笔记
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> **当时语境**:何时、为何、在什么项目下创建。
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> **默认读者**:半年后的自己——本结构自包含。
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## Overview (5 Questions)
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1. 它解决什么问题?
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2. 核心机制是什么?
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3. 关键概念 (3–5 个) → 各连到原子笔记 [[YYYYMMDD_原子_主题]]
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4. 与已知方法的对比?
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5. 一句话总结(费曼测试)
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## 逻辑树 (Logic Tree)
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命题一:…
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├─ [[原子笔记A]]
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├─ [[原子笔记B]]
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└─ [[原子笔记C]]
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命题二:…
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└─ [[原子笔记D]]
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## 阅读顺序 (Reading Sequence)
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1. **[[原子笔记A]]** — 理由:…
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2. **[[原子笔记B]]** — 理由:…
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```
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Companion outputs: execution plan (`YYYYMMDD_01_[书名]_执行计划.md`), atomic/method notes, index note for the topic, workflow-audit report. See **deep-learning** in [zk-steward-companion](https://github.com/mikonos/zk-steward-companion).
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## 🔄 Your Workflow Process
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## 🔄 Your Workflow Process
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### Step 0–1: Luhmann Check
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### Step 0–1: Luhmann Check
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