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Efficient LoRA Fine-Tuning for Large Language Models - Train smarter, not harder.

Project description

Langtune

The fastest way to fine-tune LLMs

Production-ready LoRA fine-tuning in minutes, not days.
Built for ML engineers who need results, not complexity.

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Quick StartFeaturesWhy LangtuneDocs


⚡ Quick Start

1-Click Install (Recommended)

The fastest way to get started. Installs Langtune in an isolated environment.

curl -fsSL https://raw.githubusercontent.com/langtrain-ai/langtune/main/scripts/install.sh | bash

Or using pip

pip install langtune

Fine-tune your first model in 3 lines of code:

from langtune import LoRATrainer

trainer = LoRATrainer(model_name="meta-llama/Llama-2-7b-hf")
trainer.train_from_file("data.jsonl")

That's it. Your fine-tuned model is ready.


✨ Features

🚀 Blazing Fast

Train 7B models in under 30 minutes on a single GPU. Our optimized kernels squeeze every last FLOP.

🎯 Zero Config Required

Smart defaults that just work. No PhD required. Start training in seconds.

💾 Memory Efficient

4-bit quantization + gradient checkpointing = Train 70B models on consumer hardware.

🔧 Production Ready

Battle-tested at scale. Used by teams fine-tuning thousands of models daily.

🌐 Any Model, Any Data

Works with Llama, Mistral, Qwen, Phi, and more. JSONL, CSV, or HuggingFace datasets.

☁️ Cloud Native

One-click deployment to Langtrain Cloud. Or export to GGUF, ONNX, HuggingFace.


🎯 Why Langtune?

Langtune Others
Time to first training 30 seconds 2+ hours
Lines of code 3 100+
Memory usage 8GB 24GB+
Learning curve Minutes Days

📖 Full Example

from langtune import LoRATrainer
from langtune.config import TrainingConfig, LoRAConfig

# Configure your training
config = TrainingConfig(
    num_epochs=3,
    batch_size=4,
    learning_rate=2e-4,
    lora=LoRAConfig(rank=16, alpha=32)
)

# Initialize and train
trainer = LoRATrainer(
    model_name="mistralai/Mistral-7B-v0.1",
    output_dir="./my-model",
    config=config
)

# Train on your data
trainer.train_from_file("training_data.jsonl")

# Push to Hub (optional)
trainer.push_to_hub("my-username/my-fine-tuned-model")

🛠️ Advanced Usage

Custom Dataset Format
# JSONL format (recommended)
{"text": "Your training example here"}
{"text": "Another example"}

# Or instruction format
{"instruction": "Summarize this:", "input": "Long text...", "output": "Summary"}
Distributed Training
trainer = LoRATrainer(
    model_name="meta-llama/Llama-2-70b-hf",
    device_map="auto",  # Automatic multi-GPU
)
Export Formats
# Export to different formats
trainer.export("gguf")  # For llama.cpp
trainer.export("onnx")  # For ONNX Runtime
trainer.export("hf")    # HuggingFace format

🤝 Community

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Built with ❤️ by Langtrain AI

Making LLM fine-tuning accessible to everyone.

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