Intelligent LLM Infrastructure with Smart Model Selection
Project description
Nordlys
Smart LLM model router. Picks the best model for each prompt based on cost and quality.
Install
uv pip install -e .
Quick Start
from nordlys import Nordlys, ModelConfig
import pandas as pd
# 1. Define your models
models = [
ModelConfig(id="openai/gpt-4", cost_input=30.0, cost_output=60.0),
ModelConfig(id="openai/gpt-3.5-turbo", cost_input=0.5, cost_output=1.5),
]
# 2. Training data: questions + accuracy scores per model
df = pd.DataFrame({
"questions": ["Write code", "What is 2+2?", "Explain quantum physics"],
"openai/gpt-4": [0.95, 0.99, 0.92],
"openai/gpt-3.5-turbo": [0.70, 0.99, 0.60],
})
# 3. Fit and route
router = Nordlys(models=models)
router.fit(df)
result = router.route("Write a sorting algorithm", cost_bias=0.5)
print(result.model_id) # Best model for this prompt
How It Works
- Clusters similar prompts together
- Learns which model performs best per cluster
- Routes new prompts to the optimal model
Cost Bias
# cost_bias=0.0 → Always cheapest
router.route("prompt", cost_bias=0.0)
# cost_bias=1.0 → Always best quality
router.route("prompt", cost_bias=1.0)
# cost_bias=0.5 → Balanced
router.route("prompt", cost_bias=0.5)
Save & Load
router.save("router.json")
loaded = Nordlys.load("router.json")
Links
Citation
This project is inspired by the Universal Router approach:
@article{universalrouter2025,
title={Universal Router: Foundation Model Routing for Arbitrary Tasks},
author={},
journal={arXiv preprint arXiv:2502.08773},
year={2025},
url={https://arxiv.org/pdf/2502.08773}
}
Paper: Universal Router: Foundation Model Routing for Arbitrary Tasks
Project details
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