# Alireo-400M Model Card 📚 ## Model Description Alireo-400M is a lightweight yet powerful Italian language model with 400M parameters, designed to provide efficient natural language processing capabilities while maintaining a smaller footprint compared to larger models. ## Key Features ✨ * **Architecture**: Transformer-based language model 🏗️ * **Parameters**: 400M 📊 * **Context Window**: 8K tokens 🪟 * **Training Data**: Curated Italian text corpus (books, articles, web content) 📚 * **Model Size**: ~800MB 💾 ## Performance 📈 Despite its compact size, Alireo-400M demonstrates impressive performance: * **Benchmark Results**: Outperforms Qwen 0.5B across multiple benchmarks 🏆 * **Language Understanding**: Maintains high accuracy in Italian language understanding tasks 🎯 * **Speed**: Efficient inference speed due to optimized architecture ⚡ ## Limitations ⚠️ * Limited context window compared to larger models * May struggle with highly specialized technical content * Performance may vary on dialectal variations * Not suitable for multilingual tasks ## Hardware Requirements 💻 * **Minimum RAM**: 2GB * **Recommended RAM**: 4GB * **GPU**: Optional, but recommended for faster inference * **Disk Space**: ~1GB (including model and dependencies) ## Usage Example ```python from transformers import AutoModelForCausalLM, AutoTokenizer # Load model and tokenizer model = AutoModelForCausalLM.from_pretrained("montebovi/alireo-400m") tokenizer = AutoTokenizer.from_pretrained("montebovi/alireo-400m") # Example text text = "L'intelligenza artificiale sta" # Tokenize and generate inputs = tokenizer(text, return_tensors="pt") outputs = model.generate(**inputs, max_new_tokens=50) result = tokenizer.decode(outputs[0], skip_special_tokens=True) print(result) ``` ## License 📜 Apache 2.0 ## Citation 📄 ```bibtex @software{alireo2024, author = {[Michele Montebovi]}, title = {Alireo-400M: A Lightweight Italian Language Model}, year = {2024}, } ```