* docs: comprehensive documentation improvements for humans and agents New human docs: - grpo.qmd: GRPO deep dive (async, rewards, IS correction, scaling) - ebft.qmd: EBFT guide (structured/strided modes, feature extraction) - choosing_method.qmd: decision tree for SFT vs LoRA vs DPO vs GRPO - vllm_serving.qmd: vLLM setup for GRPO (server/colocate, LoRA sync) - training_stability.qmd: monitoring, NaN debugging, OOM, healthy metrics New agent docs: - AGENTS_SFT.md: agent reference for supervised fine-tuning - AGENTS_DPO.md: agent reference for preference learning (DPO/KTO/ORPO) Updated existing docs: - rlhf.qmd: cross-references to new GRPO/EBFT/choosing-method guides - getting-started.qmd: reorganized Next Steps with links to new guides - debugging.qmd: link to training stability guide - _quarto.yml: added new pages to sidebar navigation Removed: - bak.agents.md: stale backup that confused agents * docs: trim duplicated generic config from AGENTS_DPO.md Remove boilerplate training params (optimizer, gradient_checkpointing, flash_attention, etc.) from each method template. These are not preference-learning-specific and are already covered in AGENTS_SFT.md. Config templates now show only method-specific fields with a reference to AGENTS_SFT.md for the rest. * docs: deduplicate across new doc pages - grpo.qmd: collapse vLLM setup section to brief config + link to vllm_serving.qmd; collapse IS correction to essentials + link; replace full monitoring tables with summary + link to training_stability.qmd - vllm_serving.qmd: remove duplicated async/IS config reference tables (already in grpo.qmd config reference); replace full example config with link to grpo.qmd quick start - ebft.qmd: trim generic training params in quick start config * fix: train scripts * feat: split files into cleaner parts * fix: cleanup pretraining docs --------- Co-authored-by: Wing Lian <wing.lian@gmail.com>
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5.5 KiB
Markdown
116 lines
5.5 KiB
Markdown
# SFT — Agent Reference
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Supervised fine-tuning pipeline reference. For config templates and dataset format examples, see [getting-started.qmd](../getting-started.qmd) and [dataset-formats/](../dataset-formats/).
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## Architecture
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```
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YAML Config → axolotl train config.yaml
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1. Load base model (+ quantization if QLoRA/8-bit)
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2. Apply adapter layers (LoRA/QLoRA) if configured
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3. Load + tokenize dataset(s)
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- Apply prompt template (chat_template / alpaca / custom)
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- Mask inputs (train_on_inputs: false)
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- Pack samples into sequences (sample_packing: true)
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4. Training loop (HuggingFace Trainer)
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- forward → loss → backward → optimizer step → lr scheduler step
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5. Save model / adapter weights + tokenizer
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Multi-GPU: FSDP or DeepSpeed shards model across GPUs automatically.
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```
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## Components Required
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1. A YAML config — model, dataset(s), adapter settings, hyperparameters
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2. A dataset — HuggingFace Hub, local JSONL/JSON/Parquet, or S3/GCS path
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3. (Optional) A custom prompt strategy — for non-standard dataset formats
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No external server processes needed (unlike GRPO which requires vLLM).
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## Dataset Format Decision Tree
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```
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Is your data in chat/message format?
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├─ YES: OpenAI message format (role/content)?
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│ ├─ YES ──────────────────────> type: chat_template (recommended)
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│ └─ NO (custom field names) ──> type: chat_template + message_property_mappings
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└─ NO: Instruction/response pairs?
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├─ YES ──> type: alpaca (instruction, input, output)
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└─ NO: Raw text?
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├─ YES with segments ─────> type: input_output (template-free masking)
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└─ YES continuous ────────> type: completion (pretraining-style)
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```
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Full format specs: [dataset-formats/](../dataset-formats/)
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## Model Size to Adapter Choice
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| Model Size | LoRA | QLoRA (4-bit) | Full Fine-Tune | VRAM (approx) |
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|-----------|------|---------------|----------------|---------------|
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| 1-3B | Preferred | Low-budget option | Single GPU OK | 8-16 GB (LoRA) |
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| 7-8B | Preferred | Good balance | Needs multi-GPU | 16-24 GB (LoRA) |
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| 13-14B | Preferred | Good balance | Multi-GPU required | 24-40 GB (LoRA) |
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| 30-70B | LoRA or QLoRA | Preferred for single GPU | Multi-node | 40-80 GB (QLoRA) |
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## Hyperparameter Ranges
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| Parameter | LoRA | QLoRA | Full FT |
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|-----------|------|-------|---------|
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| `learning_rate` | 1e-4 to 3e-4 | 1e-4 to 3e-4 | 1e-5 to 5e-5 |
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| `lora_r` | 16-64 | 16-64 | N/A |
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| `lora_alpha` | 1-2x `lora_r` | 1-2x `lora_r` | N/A |
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| `micro_batch_size` | 2-8 | 2-4 | 1-2 |
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| `gradient_accumulation_steps` | 2-8 | 4-16 | 4-16 |
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| `num_epochs` | 1-3 | 1-3 | 1-3 |
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| `optimizer` | `adamw_8bit` | `adamw_bnb_8bit` | `adamw_torch_fused` |
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Effective batch = micro_batch * grad_accum * num_gpus. Lower LR for larger models.
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## Healthy Training Indicators
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| Metric | Healthy | Problem |
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|--------|---------|---------|
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| `train_loss` | Decreasing, starting ~2-4 for chat models | Flat or increasing from step 1 — data or LR issue |
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| `eval_loss` | Decreasing, tracks train_loss | Increasing while train_loss decreases — overfitting |
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| `grad_norm` | 0.1-10, relatively stable | Spikes >100 — instability. 0.0 — frozen weights |
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| `learning_rate` | Follows scheduler curve | Flat or NaN — config issue |
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Watch for: loss never decreasing (check `train_on_inputs`, dataset, LR), loss goes to 0 quickly (overfitting), eval_loss diverging (reduce epochs, add regularization). See [training_stability.qmd](../training_stability.qmd).
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## Known Issues
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| Issue | Fix |
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|-------|-----|
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| OOM during training | Reduce `micro_batch_size`, enable `gradient_checkpointing`, reduce `sequence_len` |
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| `sample_packing` + SDPA + bf16 = 0.0 loss | Use `flash_attention: true` or disable `sample_packing` |
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| Missing chat template error | Set `chat_template: chatml` explicitly |
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| Label masking wrong | Run `axolotl preprocess config.yaml --debug` and inspect labels |
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| Loss NaN | Use `bf16: auto`, lower LR, check data for empty samples |
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| Tokenizer pad token / infinite loss | Set `special_tokens: pad_token: "<\|end_of_text\|>"` |
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| FSDP save hangs | Use `fsdp_state_dict_type: FULL_STATE_DICT` |
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| DeepSpeed CheckpointError | Set `use_reentrant: true` in `gradient_checkpointing_kwargs` |
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Full troubleshooting: [training_stability.qmd](../training_stability.qmd), [debugging.qmd](../debugging.qmd)
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## File Map
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```
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src/axolotl/
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cli/train.py # Entry point for `axolotl train`
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cli/preprocess.py # Entry point for `axolotl preprocess`
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core/builders/causal.py # HFCausalTrainerBuilder — wires config → SFT trainer
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core/trainers/base.py # AxolotlTrainer — base trainer class
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core/trainers/mixins/ # Packing, optimizer, scheduler, checkpoints
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prompt_strategies/ # Format handlers: chat_template, alpaca, completion, input_output
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utils/schemas/config.py # AxolotlInputConfig — main config schema
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utils/schemas/datasets.py # SFTDataset, DatasetConfig
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utils/schemas/peft.py # LoraConfig — LoRA parameters
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integrations/liger/ # Liger kernel plugin
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examples/llama-3/ # LoRA, QLoRA, full FT example configs
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docs/getting-started.qmd # Quickstart with config templates
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docs/optimizations.qmd # Flash attention, gradient checkpointing, sample packing
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docs/multi-gpu.qmd # FSDP and DeepSpeed setup
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```
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