Claude-code-templates peft-fine-tuning
Parameter-efficient fine-tuning for LLMs using LoRA, QLoRA, and 25+ methods. Use when fine-tuning large models (7B-70B) with limited GPU memory, when you need to train <1% of parameters with minimal accuracy loss, or for multi-adapter serving. HuggingFace's official library integrated with transformers ecosystem.
install
source · Clone the upstream repo
git clone https://github.com/davila7/claude-code-templates
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/davila7/claude-code-templates "$T" && mkdir -p ~/.claude/skills && cp -r "$T/cli-tool/components/skills/ai-research/fine-tuning-peft" ~/.claude/skills/davila7-claude-code-templates-peft-fine-tuning && rm -rf "$T"
manifest:
cli-tool/components/skills/ai-research/fine-tuning-peft/SKILL.mdsource content
PEFT (Parameter-Efficient Fine-Tuning)
Fine-tune LLMs by training <1% of parameters using LoRA, QLoRA, and 25+ adapter methods.
When to use PEFT
Use PEFT/LoRA when:
- Fine-tuning 7B-70B models on consumer GPUs (RTX 4090, A100)
- Need to train <1% parameters (6MB adapters vs 14GB full model)
- Want fast iteration with multiple task-specific adapters
- Deploying multiple fine-tuned variants from one base model
Use QLoRA (PEFT + quantization) when:
- Fine-tuning 70B models on single 24GB GPU
- Memory is the primary constraint
- Can accept ~5% quality trade-off vs full fine-tuning
Use full fine-tuning instead when:
- Training small models (<1B parameters)
- Need maximum quality and have compute budget
- Significant domain shift requires updating all weights
Quick start
Installation
# Basic installation pip install peft # With quantization support (recommended) pip install peft bitsandbytes # Full stack pip install peft transformers accelerate bitsandbytes datasets
LoRA fine-tuning (standard)
from transformers import AutoModelForCausalLM, AutoTokenizer, TrainingArguments, Trainer from peft import get_peft_model, LoraConfig, TaskType from datasets import load_dataset # Load base model model_name = "meta-llama/Llama-3.1-8B" model = AutoModelForCausalLM.from_pretrained(model_name, torch_dtype="auto", device_map="auto") tokenizer = AutoTokenizer.from_pretrained(model_name) tokenizer.pad_token = tokenizer.eos_token # LoRA configuration lora_config = LoraConfig( task_type=TaskType.CAUSAL_LM, r=16, # Rank (8-64, higher = more capacity) lora_alpha=32, # Scaling factor (typically 2*r) lora_dropout=0.05, # Dropout for regularization target_modules=["q_proj", "v_proj", "k_proj", "o_proj"], # Attention layers bias="none" # Don't train biases ) # Apply LoRA model = get_peft_model(model, lora_config) model.print_trainable_parameters() # Output: trainable params: 13,631,488 || all params: 8,043,307,008 || trainable%: 0.17% # Prepare dataset dataset = load_dataset("databricks/databricks-dolly-15k", split="train") def tokenize(example): text = f"### Instruction:\n{example['instruction']}\n\n### Response:\n{example['response']}" return tokenizer(text, truncation=True, max_length=512, padding="max_length") tokenized = dataset.map(tokenize, remove_columns=dataset.column_names) # Training training_args = TrainingArguments( output_dir="./lora-llama", num_train_epochs=3, per_device_train_batch_size=4, gradient_accumulation_steps=4, learning_rate=2e-4, fp16=True, logging_steps=10, save_strategy="epoch" ) trainer = Trainer( model=model, args=training_args, train_dataset=tokenized, data_collator=lambda data: {"input_ids": torch.stack([f["input_ids"] for f in data]), "attention_mask": torch.stack([f["attention_mask"] for f in data]), "labels": torch.stack([f["input_ids"] for f in data])} ) trainer.train() # Save adapter only (6MB vs 16GB) model.save_pretrained("./lora-llama-adapter")
QLoRA fine-tuning (memory-efficient)
from transformers import AutoModelForCausalLM, BitsAndBytesConfig from peft import get_peft_model, LoraConfig, prepare_model_for_kbit_training # 4-bit quantization config bnb_config = BitsAndBytesConfig( load_in_4bit=True, bnb_4bit_quant_type="nf4", # NormalFloat4 (best for LLMs) bnb_4bit_compute_dtype="bfloat16", # Compute in bf16 bnb_4bit_use_double_quant=True # Nested quantization ) # Load quantized model model = AutoModelForCausalLM.from_pretrained( "meta-llama/Llama-3.1-70B", quantization_config=bnb_config, device_map="auto" ) # Prepare for training (enables gradient checkpointing) model = prepare_model_for_kbit_training(model) # LoRA config for QLoRA lora_config = LoraConfig( r=64, # Higher rank for 70B lora_alpha=128, lora_dropout=0.1, target_modules=["q_proj", "v_proj", "k_proj", "o_proj", "gate_proj", "up_proj", "down_proj"], bias="none", task_type="CAUSAL_LM" ) model = get_peft_model(model, lora_config) # 70B model now fits on single 24GB GPU!
LoRA parameter selection
Rank (r) - capacity vs efficiency
| Rank | Trainable Params | Memory | Quality | Use Case |
|---|---|---|---|---|
| 4 | ~3M | Minimal | Lower | Simple tasks, prototyping |
| 8 | ~7M | Low | Good | Recommended starting point |
| 16 | ~14M | Medium | Better | General fine-tuning |
| 32 | ~27M | Higher | High | Complex tasks |
| 64 | ~54M | High | Highest | Domain adaptation, 70B models |
Alpha (lora_alpha) - scaling factor
# Rule of thumb: alpha = 2 * rank LoraConfig(r=16, lora_alpha=32) # Standard LoraConfig(r=16, lora_alpha=16) # Conservative (lower learning rate effect) LoraConfig(r=16, lora_alpha=64) # Aggressive (higher learning rate effect)
Target modules by architecture
# Llama / Mistral / Qwen target_modules = ["q_proj", "v_proj", "k_proj", "o_proj", "gate_proj", "up_proj", "down_proj"] # GPT-2 / GPT-Neo target_modules = ["c_attn", "c_proj", "c_fc"] # Falcon target_modules = ["query_key_value", "dense", "dense_h_to_4h", "dense_4h_to_h"] # BLOOM target_modules = ["query_key_value", "dense", "dense_h_to_4h", "dense_4h_to_h"] # Auto-detect all linear layers target_modules = "all-linear" # PEFT 0.6.0+
Loading and merging adapters
Load trained adapter
from peft import PeftModel, AutoPeftModelForCausalLM from transformers import AutoModelForCausalLM # Option 1: Load with PeftModel base_model = AutoModelForCausalLM.from_pretrained("meta-llama/Llama-3.1-8B") model = PeftModel.from_pretrained(base_model, "./lora-llama-adapter") # Option 2: Load directly (recommended) model = AutoPeftModelForCausalLM.from_pretrained( "./lora-llama-adapter", device_map="auto" )
Merge adapter into base model
# Merge for deployment (no adapter overhead) merged_model = model.merge_and_unload() # Save merged model merged_model.save_pretrained("./llama-merged") tokenizer.save_pretrained("./llama-merged") # Push to Hub merged_model.push_to_hub("username/llama-finetuned")
Multi-adapter serving
from peft import PeftModel # Load base with first adapter model = AutoPeftModelForCausalLM.from_pretrained("./adapter-task1") # Load additional adapters model.load_adapter("./adapter-task2", adapter_name="task2") model.load_adapter("./adapter-task3", adapter_name="task3") # Switch between adapters at runtime model.set_adapter("task1") # Use task1 adapter output1 = model.generate(**inputs) model.set_adapter("task2") # Switch to task2 output2 = model.generate(**inputs) # Disable adapters (use base model) with model.disable_adapter(): base_output = model.generate(**inputs)
PEFT methods comparison
| Method | Trainable % | Memory | Speed | Best For |
|---|---|---|---|---|
| LoRA | 0.1-1% | Low | Fast | General fine-tuning |
| QLoRA | 0.1-1% | Very Low | Medium | Memory-constrained |
| AdaLoRA | 0.1-1% | Low | Medium | Automatic rank selection |
| IA3 | 0.01% | Minimal | Fastest | Few-shot adaptation |
| Prefix Tuning | 0.1% | Low | Medium | Generation control |
| Prompt Tuning | 0.001% | Minimal | Fast | Simple task adaptation |
| P-Tuning v2 | 0.1% | Low | Medium | NLU tasks |
IA3 (minimal parameters)
from peft import IA3Config ia3_config = IA3Config( target_modules=["q_proj", "v_proj", "k_proj", "down_proj"], feedforward_modules=["down_proj"] ) model = get_peft_model(model, ia3_config) # Trains only 0.01% of parameters!
Prefix Tuning
from peft import PrefixTuningConfig prefix_config = PrefixTuningConfig( task_type="CAUSAL_LM", num_virtual_tokens=20, # Prepended tokens prefix_projection=True # Use MLP projection ) model = get_peft_model(model, prefix_config)
Integration patterns
With TRL (SFTTrainer)
from trl import SFTTrainer, SFTConfig from peft import LoraConfig lora_config = LoraConfig(r=16, lora_alpha=32, target_modules="all-linear") trainer = SFTTrainer( model=model, args=SFTConfig(output_dir="./output", max_seq_length=512), train_dataset=dataset, peft_config=lora_config, # Pass LoRA config directly ) trainer.train()
With Axolotl (YAML config)
# axolotl config.yaml adapter: lora lora_r: 16 lora_alpha: 32 lora_dropout: 0.05 lora_target_modules: - q_proj - v_proj - k_proj - o_proj lora_target_linear: true # Target all linear layers
With vLLM (inference)
from vllm import LLM from vllm.lora.request import LoRARequest # Load base model with LoRA support llm = LLM(model="meta-llama/Llama-3.1-8B", enable_lora=True) # Serve with adapter outputs = llm.generate( prompts, lora_request=LoRARequest("adapter1", 1, "./lora-adapter") )
Performance benchmarks
Memory usage (Llama 3.1 8B)
| Method | GPU Memory | Trainable Params |
|---|---|---|
| Full fine-tuning | 60+ GB | 8B (100%) |
| LoRA r=16 | 18 GB | 14M (0.17%) |
| QLoRA r=16 | 6 GB | 14M (0.17%) |
| IA3 | 16 GB | 800K (0.01%) |
Training speed (A100 80GB)
| Method | Tokens/sec | vs Full FT |
|---|---|---|
| Full FT | 2,500 | 1x |
| LoRA | 3,200 | 1.3x |
| QLoRA | 2,100 | 0.84x |
Quality (MMLU benchmark)
| Model | Full FT | LoRA | QLoRA |
|---|---|---|---|
| Llama 2-7B | 45.3 | 44.8 | 44.1 |
| Llama 2-13B | 54.8 | 54.2 | 53.5 |
Common issues
CUDA OOM during training
# Solution 1: Enable gradient checkpointing model.gradient_checkpointing_enable() # Solution 2: Reduce batch size + increase accumulation TrainingArguments( per_device_train_batch_size=1, gradient_accumulation_steps=16 ) # Solution 3: Use QLoRA from transformers import BitsAndBytesConfig bnb_config = BitsAndBytesConfig(load_in_4bit=True, bnb_4bit_quant_type="nf4")
Adapter not applying
# Verify adapter is active print(model.active_adapters) # Should show adapter name # Check trainable parameters model.print_trainable_parameters() # Ensure model in training mode model.train()
Quality degradation
# Increase rank LoraConfig(r=32, lora_alpha=64) # Target more modules target_modules = "all-linear" # Use more training data and epochs TrainingArguments(num_train_epochs=5) # Lower learning rate TrainingArguments(learning_rate=1e-4)
Best practices
- Start with r=8-16, increase if quality insufficient
- Use alpha = 2 * rank as starting point
- Target attention + MLP layers for best quality/efficiency
- Enable gradient checkpointing for memory savings
- Save adapters frequently (small files, easy rollback)
- Evaluate on held-out data before merging
- Use QLoRA for 70B+ models on consumer hardware
References
- Advanced Usage - DoRA, LoftQ, rank stabilization, custom modules
- Troubleshooting - Common errors, debugging, optimization
Resources
- GitHub: https://github.com/huggingface/peft
- Docs: https://huggingface.co/docs/peft
- LoRA Paper: arXiv:2106.09685
- QLoRA Paper: arXiv:2305.14314
- Models: https://huggingface.co/models?library=peft