Overview
- Skill Key
- horace-claw/sequential-read
- Author
- horace-claw
- Source Repo
- openclaw/skills
- Version
- -
- Source Path
- skills/horace-claw/sequential-read
- Latest Commit SHA
- 920ab721dc28f9a862765fd97bd55548923174cb
Read prose sequentially with structured reflections to simulate the reading experience
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Visibility
PUBLIC
直接复制以下提示词,发送给你的 AI 助手即可完成安装。
请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 sequential-read 技能。 若已安装,则直接安装 sequential-read 技能。
# 📖 Sequential Read
Read prose (novels, non-fiction, articles) by ingesting content in semantic chunks and building structured reflections iteratively. The output captures how your perspective developed over the course of reading — predictions that were wrong, questions that got answered, opinions that shifted — not just a retroactive summary.
## Invocation
| Command | Description |
|---|---|
| `/sequential-read <path-to-file>` | Run a full reading session |
| `/sequential-read <path-to-file> --lens <persona>` | Read with a perspective (e.g., "skeptic", "literary critic", "student") |
| `/sequential-read list` | List all sessions |
| `/sequential-read show <session-id>` | Show the synthesis for a completed session |
## Execution Model
**The pipeline runs in spawned sub-agents.** Novel-length reads are a two-phase process: a main reader that handles the bulk of chunks, then a finisher that completes the remaining chunks and writes synthesis. This is the normal flow, not an error.
When the user invokes `/sequential-read`:
1. Parse the command to extract the file path and optional lens
2. Pre-create the session:
```bash
python3 {baseDir}/scripts/session_manager.py create <source-file>
```
3. Spawn the **main reader** sub-agent:
```
sessions_spawn with label: reader-{session-id}
Tell the agent: "Session already exists at {session-id}. Do NOT create it again."
```
4. Tell the user the session has started and they'll be notified when it's done
5. **When the main reader returns** (whether it completed or died mid-read):
- Check session status: `python3 {baseDir}/scripts/session_manager.py get <session-id>`
- Check how many reflections exist vs total chunks
- **If synthesis exists:** Done. Present results.
- **If chunks remain or synthesis is missing:** Spawn a **finisher** sub-agent (see below). This is the expected path for novels.
6. When the finisher returns, present the synthesis and session path.
### The Two-Phase Pattern
For...
# Sequential Read Read prose (novels, essays, articles) chunk by chunk with structured reflections that capture how your understanding develops over the course of reading — not just a retroactive summary. ## What It Does Instead of dumping an entire book into context and asking "what did you think?", this skill: 1. **Prereads** the source text and splits it into semantic chunks (~550 lines each, respecting chapter/section boundaries) 2. **Reads** each chunk sequentially, writing a structured reflection after each one — predictions, reactions, revised understanding, questions 3. **Synthesizes** the full reading experience into a final document that preserves the arc of discovery The output captures what a retroactive summary cannot: predictions that were wrong, questions that got answered chapters later, opinions that shifted, moments of genuine surprise. ## Why It Matters An AI reading a book all at once produces a book report. An AI reading sequentially produces something closer to a reading experience — the difference between knowing the destination and having walked the road. Tested on 41+ novels with consistent results. The reading reflections surface genuine engagement: confusion, delight, boredom, revised opinions. The sequential constraint forces honesty. ## Requirements - OpenClaw with `sessions_spawn` capability - Python 3 - A plain text file (.txt) of the work to read ## Quick Start ``` /sequential-read ~/books/my-book.txt ``` The skill handles everything autonomously — preread, chunking, sequential reading, synthesis. You'll be notified when it's done. ## Pipeline ``` Source Text → Preread (chunk) → Read (reflect on each chunk) → Synthesize ``` For novels (20+ chunks), the pipeline automatically uses a two-phase reading pattern: a main reader handles ~80% of chunks, then a finisher completes the rest and writes the synthesis. This is normal operation, not error recovery. ## Output Each session produces: - Individual chunk reflections in...
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