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Prompts Book SFT Style Transfer Pipeline

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Book SFT Style Transfer Pipeline

This prompt defines a multi-phase pipeline that extracts text from ePub files, segments it into 150-400 word chunks, generates diverse instructions, builds JSONL message pairs, and…

SKILL 13 files · 5 folders

SKILL.md
---
name: book-sft-pipeline
description: "This skill should be used when the user asks to \"fine-tune on books\", \"create SFT dataset\", \"train style model\", \"extract ePub text\", or mentions style transfer, LoRA training, book segmentation, or author voice replication."
---
# Book SFT Pipeline

A complete system for converting books into SFT datasets and training style-transfer models. This skill teaches the pipeline from raw ePub to a model that writes in any author's voice.

## When to Activate

Activate this skill when:
- Building fine-tuning datasets from literary works
- Creating author-voice or style-transfer models
- Preparing training data for Tinker or similar SFT platforms
- Designing text segmentation pipelines for long-form content
- Training small models (8B or less) on limited data

## Core Concepts

### The Three Pillars of Book SFT

**1. Intelligent Segmentation**
Text chunks must be semantically coherent. Breaking mid-sentence teaches the model to produce fragmented output. Target: 150-400 words per chunk, always at natural boundaries.

**2. Diverse Instruction Generation**
Use multiple prompt templates and system prompts to prevent overfitting. A single prompt style leads to memorization. Use 15+ prompt templates with 5+ system prompts.

**3. Style Over Content**
The goal is learning the author's rhythm and vocabulary patterns, not memorizing plots. Synthetic instructions describe what happens without quoting the text.

## Pipeline Architecture

```
┌─────────────────────────────────────────────────────────────────┐
│                    ORCHESTRATOR AGENT                           │
│  Coordinates pipeline phases, manages state, handles failures   │
└──────────────────────┬──────────────────────────────────────────┘
                       │
       ┌───────────────┼───────────────┬───────────────┐
       ▼               ▼               ▼               ▼
┌──────────────┐ ┌──────────────┐ ┌──────────────┐ ┌──────────────┐
│  EXTRACTION  │ │ SEGMENTATION │ │  INSTRUCTION │ │   DATASET    │
│    AGENT     │ │    AGENT     │ │    AGENT     │ │   BUILDER    │
│ ePub → Text  │ │ Text → Chunks│ │ Chunks →     │ │ Pairs →      │
│              │ │ 150-400 words│ │ Prompts      │ │ JSONL        │
└──────────────┘ └──────────────┘ └──────────────┘ └──────────────┘
                       │
       ┌───────────────┴───────────────┐
       ▼                               ▼
┌──────────────┐               ┌──────────────┐
│   TRAINING   │               │  VALIDATION  │
│    AGENT     │               │    AGENT     │
│ LoRA on      │               │ AI detector  │
│ Tinker       │               │ Originality  │
└──────────────┘               └──────────────┘
```

## Phase 1: Text Extraction

### Critical Rules
1. **Always source ePub over PDF** - OCR errors become learned patterns
2. **Use paragraph-level extraction** - Extract from `<p>` tags to preserve breaks
3. **Remove front/back matter** - Copyright and TOC pollute the dataset

```python
# Extract text from ePub paragraphs
from epub2 import EPub
from bs4 import BeautifulSoup

def extract_epub(path):
    book = EPub(path)
    chapters = []
    for item in book.flow:
        html = book.get_chapter(item.id)
        soup = BeautifulSoup(html, 'html.parser')
        paragraphs = [p.get_text().strip() for p in soup.find_all('p')]
        chapters.append('\n\n'.join(p for p in paragraphs if p))
    return '\n\n'.join(chapters)
```

## Phase 2: Intelligent Segmentation

### Smaller Chunks + Overlap

Smaller chunks (150-400 words) produce more training examples and better style transfer than larger chunks (250-650).

```python
def segment(text, min_words=150, max_words=400):
    paragraphs = text.split('\n\n')
    chunks, buffer, buffer_words = [], [], 0
    
    for para in paragraphs:
        words = len(para.split())
        if buffer_words + words > max_words and buffer_words >= min_words:
            chunks.append('\n\n'.join(buffer))
            # Keep last paragraph for overlap
            buffer = [buffer[-1], para] if buffer else [para]
            buffer_words = sum(len(p.split()) for p in buffer)
        else:
            buffer.append(para)
            buffer_words += words
    
    if buffer:
        chunks.append('\n\n'.join(buffer))
    return chunks
```

### Expected Results

For an 86,000-word book:
- Old method (250-650 words): ~150 chunks
- New method (150-400 + overlap): ~300 chunks
- With 2 variants per chunk: 600+ training examples

## Phase 3: Diverse Instruction Generation

### The Key Insight

Using a single prompt template causes memorization. Diverse templates teach the underlying style.

```python
SYSTEM_PROMPTS = [
    "You are an expert creative writer capable of emulating specific literary styles.",
    "You are a literary writer with deep knowledge of classic prose styles.",
    "You are a creative writer skilled at emulating distinctive authorial voices.",
    "You write prose that captures the essence of modernist literature.",
    "You are a talented writer who can channel classic American authors.",
]

PROMPT_TEMPLATES = [
    "Write a passage in the style of {author}: {desc}",
    "Channel {author}'s voice to write about: {desc}",
    "In {author}'s distinctive prose style, describe: {desc}",
    "Write this scene as {author} would have: {desc}",
    "Using {author}'s repetitive technique, describe: {desc}",
    "Capture the rhythm of {author} in this passage: {desc}",
    "Write like {author}: {desc}",
    "In the voice of {author}, write: {desc}",
    "This is a literary exercise. Write like {author}: {desc}",
    "Can you write in {author}'s style? {desc}",
]
```

### Instruction Generation

```python
INSTRUCTION_PROMPT = """Describe what is happening in this excerpt in 2-3 sentences.
Focus on: characters present, actions, emotions, setting.
Do NOT quote the text directly.

Excerpt:
{text}
"""

# Use a fast, cheap LLM (e.g., Gemini Flash)
instruction = llm_call(INSTRUCTION_PROMPT.format(text=chunk))
```

## Phase 4: Dataset Construction

### Message Format

```json
{
    "messages": [
        {"role": "system", "content": "You are an expert creative writer..."},
        {"role": "user", "content": "Write in the style of Author: Scene description..."},
        {"role": "assistant", "content": "The actual book text from chunk..."}
    ]
}
```

### Multiple Variants Per Chunk

```python
def build_examples(chunk, instruction, author, variants=2):
    examples = []
    for i in range(variants):
        system = SYSTEM_PROMPTS[i % len(SYSTEM_PROMPTS)]
        template = PROMPT_TEMPLATES[(chunk.id + i) % len(PROMPT_TEMPLATES)]
        user = template.format(author=author, desc=instruction)
        examples.append({"messages": [
            {"role": "system", "content": system},
            {"role": "user", "content": user},
            {"role": "assistant", "content": chunk.text}
        ]})
    return examples
```

## Phase 5: LoRA Training on Tinker

### Configuration

```python
CONFIG = {
    "model_name": "Qwen/Qwen3-8B-Base",  # Base, not instruct
    "lora_rank": 32,                      # 352MB adapter
    "learning_rate": 5e-4,                # Higher for LoRA
    "batch_size": 4,
    "epochs": 3,
}
```

### Why Base Model?

Use **base** (pretrained) models, not instruction-tuned versions:
- Base models are more malleable for new styles
- Instruct models have patterns that resist overwriting
- Style is a low-level pattern that base models capture better

### Training Loop

```python
import tinker
from tinker import types

training_client = await service_client.create_lora_training_client_async(
    base_model="Qwen/Qwen3-8B-Base",
    rank=32
)

for epoch in range(3):
    for batch in batches:
        await training_client.forward_backward_async(batch, loss_fn="cross_entropy")
        await training_client.optim_step_async(types.AdamParams(learning_rate=5e-4))

result = await training_client.save_weights_for_sampler_async(name="final")
```

## Phase 6: Validation

### Modern Scenario Test

Test with scenarios that couldn't exist in the original book:

```python
TEST_PROMPTS = [
    "Write about a barista making lattes",
    "Describe lovers communicating through text messages",
    "Write about someone anxious about climate change",
]
```

If the model applies style markers to modern scenarios, it learned **style**, not **content**.

### Originality Verification

```bash
# Search training data for output phrases
grep "specific phrase from output" dataset.jsonl
# Should return: No matches
```

### AI Detector Testing

Test outputs with GPTZero, Pangram, or ZeroGPT.

## Known Issues and Solutions

### Character Name Leakage

**Symptom**: Model uses original character names in new scenarios.
**Cause**: Limited name diversity from one book.
**Solution**: Train on multiple books or add synthetic examples.

### Model Parrots Exact Phrases

**Symptom**: Outputs contain exact sentences from training data.
**Cause**: Too few prompt variations or too many epochs.
**Solution**: Use 15+ templates, limit to 3 epochs.

### Fragmented Outputs

**Symptom**: Sentences feel incomplete.
**Cause**: Poor segmentation breaking mid-thought.
**Solution**: Always break at paragraph boundaries.

## Guidelines

1. **Always source ePub over PDF** - OCR errors become learned patterns
2. **Never break mid-sentence** - Boundaries must be grammatically complete
3. **Use diverse prompts** - 15+ templates, 5+ system prompts
4. **Use base models** - Not instruct versions
5. **Use smaller chunks** - 150-400 words for more examples
6. **Reserve test set** - 50 examples minimum
7. **Test on modern scenarios** - Proves style transfer vs memorization
8. **Verify originality** - Grep training data for output phrases

## Expected Results

| Metric | Value |
|--------|-------|
| Training examples | 500-1000 per book |
| Model | Qwen/Qwen3-8B-Base |
| LoRA rank | 32 |
| Adapter size | ~350 MB |
| Training time | ~15 min |
| Loss reduction | 90%+ |
| Style transfer success | ~50% perfect |

## Cost Estimate

| Component | Cost |
|-----------|------|
| LLM (instruction generation) | ~$0.50 |
| Tinker training (15 min) | ~$1.50 |
| **Total** | **~$2.00** |

## Integration with Context Engineering Skills

This example applies several skills from the Agent Skills for Context Engineering collection:

### project-development
The pipeline follows the staged, idempotent architecture pattern:
- **Acquire**: Extract text from ePub
- **Prepare**: Segment into training chunks
- **Process**: Generate synthetic instructions
- **Parse**: Build message format
- **Render**: Output Tinker-compatible JSONL
- **Train**: LoRA fine-tuning
- **Validate**: Modern scenario testing

Each phase is resumable and produces intermediate artifacts for debugging.

### context-compression
Segmentation is a form of context compression for training. The core insight from context-compression applies: information density matters more than information quantity. Smaller, coherent chunks (150-400 words) produce better style transfer than larger, diluted chunks.

The two-tier strategy mirrors context compression evaluation:
- Tier 1: Fast, deterministic compression
- Tier 2: LLM-assisted for edge cases

### multi-agent-patterns
The pipeline uses the **supervisor/orchestrator** pattern:
- Orchestrator coordinates phases and manages state
- Specialized agents (Extraction, Segmentation, Instruction, Builder) have isolated contexts
- Each agent receives only the information needed for its task

This matches the principle that sub-agents exist primarily to isolate context rather than simulate roles.

### evaluation
Validation follows the **end-state evaluation** pattern:
- Functional testing: Does output match expected style markers?
- Originality verification: Is content genuinely generated?
- External validation: AI detector scores

The "modern scenario" test is a form of out-of-distribution evaluation that proves generalization.

### context-fundamentals
Prompt diversity prevents attention collapse on single patterns. When training with identical prompt structures, the model memorizes the instruction-response mapping. Diverse templates force attention across the style patterns themselves.

## References

Internal references:
- [Segmentation Strategies](./references/segmentation-strategies.md) - Text chunking patterns
- [Tinker Format Specification](./references/tinker-format.md) - Datum structure
- [Tinker API Documentation](./references/tinker.txt) - Full API reference

Related skills from Agent Skills for Context Engineering:
- project-development - Pipeline architecture patterns
- context-compression - Compression strategies  
- multi-agent-patterns - Agent coordination
- evaluation - Evaluation frameworks
- context-fundamentals - Attention and information density

External resources:
- [Research Paper](https://arxiv.org/pdf/2510.13939) - Chakrabarty et al. 2025
- [Dataset on Hugging Face](https://huggingface.co/datasets/MuratcanKoylan/gertrude-stein-style-sft)
- [Gertrude Stein Case Study](./examples/gertrude-stein/) - Complete working example

---

## Skill Metadata

**Created**: 2025-12-26
**Last Updated**: 2025-12-28
**Author**: Muratcan Koylan
**Version**: 2.0.0
**Standalone**: Yes (separate from main context-engineering collection)

REQUIRED CONTEXT

  • book in ePub format
  • target author name

OPTIONAL CONTEXT

  • number of variants per chunk
  • base model choice

ROLES & RULES

  1. Always source ePub over PDF
  2. Use paragraph-level extraction
  3. Remove front/back matter
  4. Never break mid-sentence
  5. Use diverse prompts
  6. Use base models
  7. Use smaller chunks
  8. Reserve test set
  9. Test on modern scenarios
  10. Verify originality

EXPECTED OUTPUT

Format
markdown
Schema
markdown_sections · Pipeline Architecture, Message Format, Expected Results, Known Issues and Solutions
Constraints
  • include code examples for each phase
  • follow the defined pipeline architecture
  • use 150-400 word coherent chunks
  • generate diverse instructions with 15+ templates

SUCCESS CRITERIA

  • Produce 500-1000 training examples per book
  • Achieve ~50% style transfer success
  • Ensure outputs pass originality verification
  • Apply style markers to modern scenarios

FAILURE MODES

  • Character name leakage from limited diversity
  • Model parrots exact phrases from training data
  • Fragmented outputs from poor segmentation

EXAMPLES

Includes multiple Python functions for extraction/segmentation/instruction generation/training, JSON message format examples, system/prompt template lists, and a results table.

QUALITY

OVERALL
0.85
CLARITY
0.90
SPECIFICITY
0.85
REUSABILITY
0.80
COMPLETENESS
0.90

IMPROVEMENT SUGGESTIONS

  • Add explicit placeholders (e.g., {{book_path}}, {{author_name}}) in code examples to improve template reusability.
  • Specify the exact number of reserved test examples as a configurable parameter rather than a fixed minimum.

USAGE

Copy the prompt above and paste it into your AI of choice — Claude, ChatGPT, Gemini, or anywhere else you're working. Replace any placeholder sections with your own context, then ask for the output.

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