Claude-code-templates implementing-llms-litgpt
Implements and trains LLMs using Lightning AI's LitGPT with 20+ pretrained architectures (Llama, Gemma, Phi, Qwen, Mistral). Use when need clean model implementations, educational understanding of architectures, or production fine-tuning with LoRA/QLoRA. Single-file implementations, no abstraction layers.
git clone https://github.com/davila7/claude-code-templates
T=$(mktemp -d) && git clone --depth=1 https://github.com/davila7/claude-code-templates "$T" && mkdir -p ~/.claude/skills && cp -r "$T/cli-tool/components/skills/ai-research/model-architecture-litgpt" ~/.claude/skills/davila7-claude-code-templates-implementing-llms-litgpt && rm -rf "$T"
cli-tool/components/skills/ai-research/model-architecture-litgpt/SKILL.mdLitGPT - Clean LLM Implementations
Quick start
LitGPT provides 20+ pretrained LLM implementations with clean, readable code and production-ready training workflows.
Installation:
pip install 'litgpt[extra]'
Load and use any model:
from litgpt import LLM # Load pretrained model llm = LLM.load("microsoft/phi-2") # Generate text result = llm.generate( "What is the capital of France?", max_new_tokens=50, temperature=0.7 ) print(result)
List available models:
litgpt download list
Common workflows
Workflow 1: Fine-tune on custom dataset
Copy this checklist:
Fine-Tuning Setup: - [ ] Step 1: Download pretrained model - [ ] Step 2: Prepare dataset - [ ] Step 3: Configure training - [ ] Step 4: Run fine-tuning
Step 1: Download pretrained model
# Download Llama 3 8B litgpt download meta-llama/Meta-Llama-3-8B # Download Phi-2 (smaller, faster) litgpt download microsoft/phi-2 # Download Gemma 2B litgpt download google/gemma-2b
Models are saved to
checkpoints/ directory.
Step 2: Prepare dataset
LitGPT supports multiple formats:
Alpaca format (instruction-response):
[ { "instruction": "What is the capital of France?", "input": "", "output": "The capital of France is Paris." }, { "instruction": "Translate to Spanish: Hello, how are you?", "input": "", "output": "Hola, ¿cómo estás?" } ]
Save as
data/my_dataset.json.
Step 3: Configure training
# Full fine-tuning (requires 40GB+ GPU for 7B models) litgpt finetune \ meta-llama/Meta-Llama-3-8B \ --data JSON \ --data.json_path data/my_dataset.json \ --train.max_steps 1000 \ --train.learning_rate 2e-5 \ --train.micro_batch_size 1 \ --train.global_batch_size 16 # LoRA fine-tuning (efficient, 16GB GPU) litgpt finetune_lora \ microsoft/phi-2 \ --data JSON \ --data.json_path data/my_dataset.json \ --lora_r 16 \ --lora_alpha 32 \ --lora_dropout 0.05 \ --train.max_steps 1000 \ --train.learning_rate 1e-4
Step 4: Run fine-tuning
Training saves checkpoints to
out/finetune/ automatically.
Monitor training:
# View logs tail -f out/finetune/logs.txt # TensorBoard (if using --train.logger_name tensorboard) tensorboard --logdir out/finetune/lightning_logs
Workflow 2: LoRA fine-tuning on single GPU
Most memory-efficient option.
LoRA Training: - [ ] Step 1: Choose base model - [ ] Step 2: Configure LoRA parameters - [ ] Step 3: Train with LoRA - [ ] Step 4: Merge LoRA weights (optional)
Step 1: Choose base model
For limited GPU memory (12-16GB):
- Phi-2 (2.7B) - Best quality/size tradeoff
- Llama 3 1B - Smallest, fastest
- Gemma 2B - Good reasoning
Step 2: Configure LoRA parameters
litgpt finetune_lora \ microsoft/phi-2 \ --data JSON \ --data.json_path data/my_dataset.json \ --lora_r 16 \ # LoRA rank (8-64, higher=more capacity) --lora_alpha 32 \ # LoRA scaling (typically 2×r) --lora_dropout 0.05 \ # Prevent overfitting --lora_query true \ # Apply LoRA to query projection --lora_key false \ # Usually not needed --lora_value true \ # Apply LoRA to value projection --lora_projection true \ # Apply LoRA to output projection --lora_mlp false \ # Usually not needed --lora_head false # Usually not needed
LoRA rank guide:
: Lightweight, 2-4MB adaptersr=8
: Standard, good qualityr=16
: High capacity, use for complex tasksr=32
: Maximum quality, 4× larger adaptersr=64
Step 3: Train with LoRA
litgpt finetune_lora \ microsoft/phi-2 \ --data JSON \ --data.json_path data/my_dataset.json \ --lora_r 16 \ --train.epochs 3 \ --train.learning_rate 1e-4 \ --train.micro_batch_size 4 \ --train.global_batch_size 32 \ --out_dir out/phi2-lora # Memory usage: ~8-12GB for Phi-2 with LoRA
Step 4: Merge LoRA weights (optional)
Merge LoRA adapters into base model for deployment:
litgpt merge_lora \ out/phi2-lora/final \ --out_dir out/phi2-merged
Now use merged model:
from litgpt import LLM llm = LLM.load("out/phi2-merged")
Workflow 3: Pretrain from scratch
Train new model on your domain data.
Pretraining: - [ ] Step 1: Prepare pretraining dataset - [ ] Step 2: Configure model architecture - [ ] Step 3: Set up multi-GPU training - [ ] Step 4: Launch pretraining
Step 1: Prepare pretraining dataset
LitGPT expects tokenized data. Use
prepare_dataset.py:
python scripts/prepare_dataset.py \ --source_path data/my_corpus.txt \ --checkpoint_dir checkpoints/tokenizer \ --destination_path data/pretrain \ --split train,val
Step 2: Configure model architecture
Edit config file or use existing:
# config/pythia-160m.yaml model_name: pythia-160m block_size: 2048 vocab_size: 50304 n_layer: 12 n_head: 12 n_embd: 768 rotary_percentage: 0.25 parallel_residual: true bias: true
Step 3: Set up multi-GPU training
# Single GPU litgpt pretrain \ --config config/pythia-160m.yaml \ --data.data_dir data/pretrain \ --train.max_tokens 10_000_000_000 # Multi-GPU with FSDP litgpt pretrain \ --config config/pythia-1b.yaml \ --data.data_dir data/pretrain \ --devices 8 \ --train.max_tokens 100_000_000_000
Step 4: Launch pretraining
For large-scale pretraining on cluster:
# Using SLURM sbatch --nodes=8 --gpus-per-node=8 \ pretrain_script.sh # pretrain_script.sh content: litgpt pretrain \ --config config/pythia-1b.yaml \ --data.data_dir /shared/data/pretrain \ --devices 8 \ --num_nodes 8 \ --train.global_batch_size 512 \ --train.max_tokens 300_000_000_000
Workflow 4: Convert and deploy model
Export LitGPT models for production.
Model Deployment: - [ ] Step 1: Test inference locally - [ ] Step 2: Quantize model (optional) - [ ] Step 3: Convert to GGUF (for llama.cpp) - [ ] Step 4: Deploy with API
Step 1: Test inference locally
from litgpt import LLM llm = LLM.load("out/phi2-lora/final") # Single generation print(llm.generate("What is machine learning?")) # Streaming for token in llm.generate("Explain quantum computing", stream=True): print(token, end="", flush=True) # Batch inference prompts = ["Hello", "Goodbye", "Thank you"] results = [llm.generate(p) for p in prompts]
Step 2: Quantize model (optional)
Reduce model size with minimal quality loss:
# 8-bit quantization (50% size reduction) litgpt convert_lit_checkpoint \ out/phi2-lora/final \ --dtype bfloat16 \ --quantize bnb.nf4 # 4-bit quantization (75% size reduction) litgpt convert_lit_checkpoint \ out/phi2-lora/final \ --quantize bnb.nf4-dq # Double quantization
Step 3: Convert to GGUF (for llama.cpp)
python scripts/convert_lit_checkpoint.py \ --checkpoint_path out/phi2-lora/final \ --output_path models/phi2.gguf \ --model_name microsoft/phi-2
Step 4: Deploy with API
from fastapi import FastAPI from litgpt import LLM app = FastAPI() llm = LLM.load("out/phi2-lora/final") @app.post("/generate") def generate(prompt: str, max_tokens: int = 100): result = llm.generate( prompt, max_new_tokens=max_tokens, temperature=0.7 ) return {"response": result} # Run: uvicorn api:app --host 0.0.0.0 --port 8000
When to use vs alternatives
Use LitGPT when:
- Want to understand LLM architectures (clean, readable code)
- Need production-ready training recipes
- Educational purposes or research
- Prototyping new model ideas
- Lightning ecosystem user
Use alternatives instead:
- Axolotl/TRL: More fine-tuning features, YAML configs
- Megatron-Core: Maximum performance for >70B models
- HuggingFace Transformers: Broadest model support
- vLLM: Inference-only (no training)
Common issues
Issue: Out of memory during fine-tuning
Use LoRA instead of full fine-tuning:
# Instead of litgpt finetune (requires 40GB+) litgpt finetune_lora # Only needs 12-16GB
Or enable gradient checkpointing:
litgpt finetune_lora \ ... \ --train.gradient_accumulation_iters 4 # Accumulate gradients
Issue: Training too slow
Enable Flash Attention (built-in, automatic on compatible hardware):
# Already enabled by default on Ampere+ GPUs (A100, RTX 30/40 series) # No configuration needed
Use smaller micro-batch and accumulate:
--train.micro_batch_size 1 \ --train.global_batch_size 32 \ --train.gradient_accumulation_iters 32 # Effective batch=32
Issue: Model not loading
Check model name:
# List all available models litgpt download list # Download if not exists litgpt download meta-llama/Meta-Llama-3-8B
Verify checkpoints directory:
ls checkpoints/ # Should see: meta-llama/Meta-Llama-3-8B/
Issue: LoRA adapters too large
Reduce LoRA rank:
--lora_r 8 # Instead of 16 or 32
Apply LoRA to fewer layers:
--lora_query true \ --lora_value true \ --lora_projection false \ # Disable this --lora_mlp false # And this
Advanced topics
Supported architectures: See references/supported-models.md for complete list of 20+ model families with sizes and capabilities.
Training recipes: See references/training-recipes.md for proven hyperparameter configurations for pretraining and fine-tuning.
FSDP configuration: See references/distributed-training.md for multi-GPU training with Fully Sharded Data Parallel.
Custom architectures: See references/custom-models.md for implementing new model architectures in LitGPT style.
Hardware requirements
- GPU: NVIDIA (CUDA 11.8+), AMD (ROCm), Apple Silicon (MPS)
- Memory:
- Inference (Phi-2): 6GB
- LoRA fine-tuning (7B): 16GB
- Full fine-tuning (7B): 40GB+
- Pretraining (1B): 24GB
- Storage: 5-50GB per model (depending on size)
Resources
- GitHub: https://github.com/Lightning-AI/litgpt
- Docs: https://lightning.ai/docs/litgpt
- Tutorials: https://lightning.ai/docs/litgpt/tutorials
- Model zoo: 20+ pretrained architectures (Llama, Gemma, Phi, Qwen, Mistral, Mixtral, Falcon, etc.)