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* feat(gateway): skill-aware slash commands, paginated /commands, Telegram 100-cap Map active skills to Telegram's slash command menu so users can discover and invoke skills directly. Three changes: 1. Telegram menu now includes active skill commands alongside built-in commands, capped at 100 entries (Telegram Bot API limit). Overflow commands remain callable but hidden from the picker. Logged at startup when cap is hit. 2. New /commands [page] gateway command for paginated browsing of all commands + skills. /help now shows first 10 skill commands and points to /commands for the full list. 3. When a user types a slash command that matches a disabled or uninstalled skill, they get actionable guidance: - Disabled: 'Enable it with: hermes skills config' - Optional (not installed): 'Install with: hermes skills install official/<path>' Built on ideas from PR #3921 by @kshitijk4poor. * chore: move 21 niche skills to optional-skills Move specialized/niche skills from built-in (skills/) to optional (optional-skills/) to reduce the default skill count. Users can install them with: hermes skills install official/<category>/<name> Moved skills (21): - mlops: accelerate, chroma, faiss, flash-attention, hermes-atropos-environments, huggingface-tokenizers, instructor, lambda-labs, llava, nemo-curator, pinecone, pytorch-lightning, qdrant, saelens, simpo, slime, tensorrt-llm, torchtitan - research: domain-intel, duckduckgo-search - devops: inference-sh cli Built-in skills: 96 → 75 Optional skills: 22 → 43 * fix: only include repo built-in skills in Telegram menu, not user-installed User-installed skills (from hub or manually added) stay accessible via /skills and by typing the command directly, but don't get registered in the Telegram slash command picker. Only skills whose SKILL.md is under the repo's skills/ directory are included in the menu. This keeps the Telegram menu focused on the curated built-in set while user-installed skills remain discoverable through /skills and /commands.
478 lines
11 KiB
Markdown
478 lines
11 KiB
Markdown
# Datasets
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Complete guide to preference datasets for SimPO training.
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## Dataset Format
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### Required Fields
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Preference datasets must contain:
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```json
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{
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"prompt": "User question or instruction",
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"chosen": "Better/preferred response",
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"rejected": "Worse/rejected response"
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}
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```
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**Alternative field names** (auto-detected):
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- `prompt` → `question`, `instruction`, `input`
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- `chosen` → `response_chosen`, `winner`, `preferred`
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- `rejected` → `response_rejected`, `loser`
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### Example Entry
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```json
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{
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"prompt": "Explain quantum computing in simple terms.",
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"chosen": "Quantum computing uses quantum bits (qubits) that can exist in multiple states simultaneously through superposition. This allows quantum computers to process many possibilities at once, making them potentially much faster than classical computers for specific tasks like cryptography and optimization.",
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"rejected": "It's like regular computing but quantum."
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}
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```
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## Popular Datasets
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### 1. UltraFeedback (Recommended)
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**HuggingFaceH4/ultrafeedback_binarized**:
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- **Size**: 60K preference pairs
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- **Quality**: High (GPT-4 annotations)
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- **Domain**: General instruction following
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- **Format**: Clean, ready-to-use
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**Config**:
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```yaml
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dataset_mixer:
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HuggingFaceH4/ultrafeedback_binarized: 1.0
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dataset_splits:
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- train_prefs
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- test_prefs
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```
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### 2. Argilla UltraFeedback (Cleaned)
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**argilla/ultrafeedback-binarized-preferences-cleaned**:
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- **Size**: 50K pairs (filtered)
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- **Quality**: Very high (deduped, cleaned)
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- **Domain**: General
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- **Format**: Clean
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**Config**:
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```yaml
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dataset_mixer:
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argilla/ultrafeedback-binarized-preferences-cleaned: 1.0
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```
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### 3. Distilabel Math
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**argilla/distilabel-math-preference-dpo**:
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- **Size**: 30K pairs
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- **Quality**: High (GSM8K, MATH)
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- **Domain**: Math reasoning
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- **Format**: Math-specific
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**Config**:
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```yaml
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dataset_mixer:
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argilla/distilabel-math-preference-dpo: 1.0
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```
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### 4. HelpSteer
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**nvidia/HelpSteer**:
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- **Size**: 38K samples
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- **Quality**: High (human ratings)
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- **Domain**: Helpfulness alignment
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- **Format**: Multi-attribute ratings
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**Config**:
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```yaml
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dataset_mixer:
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nvidia/HelpSteer: 1.0
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```
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### 5. Anthropic HH-RLHF
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**Anthropic/hh-rlhf**:
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- **Size**: 161K samples
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- **Quality**: High (human preferences)
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- **Domain**: Harmless + helpful
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- **Format**: Conversational
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**Config**:
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```yaml
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dataset_mixer:
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Anthropic/hh-rlhf: 1.0
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```
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## Dataset Mixing
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### Multiple Datasets
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**Equal mix**:
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```yaml
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dataset_mixer:
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HuggingFaceH4/ultrafeedback_binarized: 0.5
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Anthropic/hh-rlhf: 0.5
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```
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**Weighted mix**:
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```yaml
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dataset_mixer:
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HuggingFaceH4/ultrafeedback_binarized: 0.7
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argilla/distilabel-math-preference-dpo: 0.2
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nvidia/HelpSteer: 0.1
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```
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**Domain-specific emphasis**:
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```yaml
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# 80% general + 20% math
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dataset_mixer:
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HuggingFaceH4/ultrafeedback_binarized: 0.8
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argilla/distilabel-math-preference-dpo: 0.2
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```
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## Data Quality
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### Quality Indicators
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**Good preference data**:
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- ✅ Clear quality difference between chosen/rejected
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- ✅ Diverse prompts
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- ✅ Minimal noise/annotation errors
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- ✅ Appropriate difficulty level
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**Poor preference data**:
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- ❌ Ambiguous preferences
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- ❌ Repetitive prompts
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- ❌ Annotation noise
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- ❌ Too easy/hard prompts
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### Quality Filtering
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**Filter by length difference**:
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```python
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def filter_by_length(example):
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chosen_len = len(example['chosen'].split())
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rejected_len = len(example['rejected'].split())
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# Reject if chosen is much shorter (potential low-effort)
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return chosen_len >= rejected_len * 0.5
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dataset = dataset.filter(filter_by_length)
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```
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**Filter by diversity**:
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```python
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seen_prompts = set()
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def filter_duplicates(example):
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prompt = example['prompt']
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if prompt in seen_prompts:
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return False
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seen_prompts.add(prompt)
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return True
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dataset = dataset.filter(filter_duplicates)
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```
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## Custom Dataset Creation
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### Format 1: JSON Lines
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**File** (`preferences.jsonl`):
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```jsonl
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{"prompt": "What is Python?", "chosen": "Python is a high-level programming language...", "rejected": "It's a snake."}
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{"prompt": "Explain AI.", "chosen": "AI refers to systems that can...", "rejected": "It's computers that think."}
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```
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**Load**:
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```yaml
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dataset_mixer:
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json:
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data_files: preferences.jsonl
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```
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### Format 2: HuggingFace Dataset
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**Create from dict**:
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```python
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from datasets import Dataset
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data = {
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"prompt": ["What is Python?", "Explain AI."],
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"chosen": ["Python is...", "AI refers to..."],
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"rejected": ["It's a snake.", "It's computers..."]
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}
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dataset = Dataset.from_dict(data)
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dataset.push_to_hub("username/my-preferences")
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```
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**Use in config**:
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```yaml
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dataset_mixer:
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username/my-preferences: 1.0
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```
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### Format 3: ChatML
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**For conversational data**:
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```json
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{
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"prompt": [
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{"role": "user", "content": "What is quantum computing?"}
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],
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"chosen": [
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{"role": "assistant", "content": "Quantum computing uses qubits..."}
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],
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"rejected": [
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{"role": "assistant", "content": "It's like regular computing but quantum."}
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]
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}
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```
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**Apply chat template**:
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```yaml
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dataset_text_field: null # Will apply chat template
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```
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## Synthetic Data Generation
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### Using GPT-4
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**Prompt template**:
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```
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Given the following question:
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{prompt}
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Generate two responses:
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1. A high-quality, detailed response (chosen)
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2. A low-quality, brief response (rejected)
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Format as JSON with "chosen" and "rejected" fields.
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```
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**Example code**:
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```python
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import openai
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def generate_pair(prompt):
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response = openai.ChatCompletion.create(
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model="gpt-4",
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messages=[{
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"role": "user",
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"content": f"Given: {prompt}\n\nGenerate chosen/rejected pair in JSON."
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}]
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)
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return json.loads(response.choices[0].message.content)
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# Generate dataset
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prompts = load_prompts()
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dataset = [generate_pair(p) for p in prompts]
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```
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### Using Local Model
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**With vLLM**:
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```python
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from vllm import LLM
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llm = LLM(model="meta-llama/Meta-Llama-3-70B-Instruct")
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def generate_variations(prompt):
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# Generate multiple completions
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outputs = llm.generate(
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[prompt] * 4,
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sampling_params={
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"temperature": 0.8,
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"top_p": 0.9,
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"max_tokens": 512
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}
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)
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# Select best/worst
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chosen = max(outputs, key=lambda x: len(x.outputs[0].text))
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rejected = min(outputs, key=lambda x: len(x.outputs[0].text))
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return {
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"prompt": prompt,
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"chosen": chosen.outputs[0].text,
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"rejected": rejected.outputs[0].text
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}
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```
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## Data Preprocessing
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### Truncation
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**Limit sequence length**:
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```yaml
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max_prompt_length: 512
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max_completion_length: 512
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max_length: 1024 # Total
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```
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**Implementation**:
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```python
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def truncate_example(example):
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tokenizer.truncation_side = "left" # For prompts
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prompt_tokens = tokenizer(
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example['prompt'],
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max_length=512,
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truncation=True
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)
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tokenizer.truncation_side = "right" # For completions
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chosen_tokens = tokenizer(
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example['chosen'],
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max_length=512,
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truncation=True
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)
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return {
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"prompt": tokenizer.decode(prompt_tokens['input_ids']),
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"chosen": tokenizer.decode(chosen_tokens['input_ids'])
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}
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dataset = dataset.map(truncate_example)
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```
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### Deduplication
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**Remove exact duplicates**:
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```python
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dataset = dataset.unique('prompt')
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```
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**Remove near-duplicates** (MinHash):
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```python
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from datasketch import MinHash, MinHashLSH
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def deduplicate_lsh(dataset, threshold=0.8):
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lsh = MinHashLSH(threshold=threshold, num_perm=128)
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seen = []
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for i, example in enumerate(dataset):
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m = MinHash(num_perm=128)
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for word in example['prompt'].split():
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m.update(word.encode('utf8'))
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if not lsh.query(m):
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lsh.insert(i, m)
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seen.append(example)
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return Dataset.from_list(seen)
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dataset = deduplicate_lsh(dataset)
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```
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## Data Augmentation
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### Paraphrasing Prompts
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```python
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def paraphrase_prompt(example):
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# Use paraphrasing model
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paraphrased = paraphrase_model(example['prompt'])
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return [
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example, # Original
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{
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"prompt": paraphrased,
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"chosen": example['chosen'],
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"rejected": example['rejected']
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}
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]
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dataset = dataset.map(paraphrase_prompt, batched=False, remove_columns=[])
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```
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### Difficulty Balancing
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**Mix easy/medium/hard**:
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```python
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def categorize_difficulty(example):
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prompt_len = len(example['prompt'].split())
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if prompt_len < 20:
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return "easy"
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elif prompt_len < 50:
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return "medium"
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else:
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return "hard"
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dataset = dataset.map(lambda x: {"difficulty": categorize_difficulty(x)})
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# Sample balanced dataset
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easy = dataset.filter(lambda x: x['difficulty'] == 'easy').shuffle().select(range(1000))
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medium = dataset.filter(lambda x: x['difficulty'] == 'medium').shuffle().select(range(1000))
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hard = dataset.filter(lambda x: x['difficulty'] == 'hard').shuffle().select(range(1000))
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balanced = concatenate_datasets([easy, medium, hard]).shuffle()
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```
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## Dataset Statistics
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### Compute Stats
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```python
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def compute_stats(dataset):
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prompt_lens = [len(x['prompt'].split()) for x in dataset]
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chosen_lens = [len(x['chosen'].split()) for x in dataset]
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rejected_lens = [len(x['rejected'].split()) for x in dataset]
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print(f"Dataset size: {len(dataset)}")
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print(f"Avg prompt length: {np.mean(prompt_lens):.1f} words")
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print(f"Avg chosen length: {np.mean(chosen_lens):.1f} words")
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print(f"Avg rejected length: {np.mean(rejected_lens):.1f} words")
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print(f"Chosen > Rejected: {sum(c > r for c, r in zip(chosen_lens, rejected_lens)) / len(dataset):.1%}")
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compute_stats(dataset)
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```
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**Expected output**:
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```
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Dataset size: 50000
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Avg prompt length: 45.2 words
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Avg chosen length: 180.5 words
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Avg rejected length: 120.3 words
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Chosen > Rejected: 85.2%
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```
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## Best Practices
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### 1. Data Quality Over Quantity
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- **Prefer**: 10K high-quality pairs
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- **Over**: 100K noisy pairs
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### 2. Clear Preference Signals
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- Chosen should be noticeably better
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- Avoid marginal differences
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- Remove ambiguous pairs
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### 3. Domain Matching
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- Match dataset domain to target use case
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- Mix datasets for broader coverage
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- Include safety-filtered data
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### 4. Validate Before Training
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```python
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# Sample 10 random examples
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samples = dataset.shuffle().select(range(10))
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for ex in samples:
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print(f"Prompt: {ex['prompt']}")
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print(f"Chosen: {ex['chosen'][:100]}...")
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print(f"Rejected: {ex['rejected'][:100]}...")
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print(f"Preference clear: {'✓' if len(ex['chosen']) > len(ex['rejected']) else '?'}")
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print()
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```
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## References
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- HuggingFace Datasets: https://huggingface.co/datasets
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- Alignment Handbook: https://github.com/huggingface/alignment-handbook
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- UltraFeedback: https://huggingface.co/datasets/HuggingFaceH4/ultrafeedback_binarized
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