--- license: apache-2.0 datasets: - andreabac3/Quora-Italian-Fauno-Baize - andreabac3/StackOverflow-Italian-Fauno-Baize - andreabac3/MedQuaAD-Italian-Fauno-Baize language: - it - en pipeline_tag: text-generation --- # cerbero-7b Italian LLM πŸš€ > πŸ“’ **Cerbero-7b** is the first **100% Free** and Open Source **Italian Large Language Model** (LLM) ready to be used for **research** or **commercial applications**.

Built on [**mistral-7b**](https://mistral.ai/news/announcing-mistral-7b/), which outperforms Llama2 13B across all benchmarks and surpasses Llama1 34B in numerous metrics. **cerbero-7b** is specifically crafted to fill the void in Italy's AI landscape. A **cambrian explosion** of **Italian Language Models** is essential for building advanced AI architectures that can cater to the diverse needs of the population. **cerbero-7b**, alongside companions like [**Camoscio**](https://github.com/teelinsan/camoscio) and [**Fauno**](https://github.com/RSTLess-research/Fauno-Italian-LLM), aims to help **kick-start** this **revolution** in Italy, ushering in an era where sophisticated **AI solutions** can seamlessly interact with and understand the intricacies of the **Italian language**, thereby empowering **innovation** across **industries** and fostering a deeper **connection** between **technology** and the **people** it serves. **cerbero-7b** is released under the **permissive** Apache 2.0 **license**, allowing **unrestricted usage**, even **for commercial applications**. ## Why Cerbero? πŸ€” The name "Cerbero," inspired by the three-headed dog that guards the gates of the Underworld in Greek mythology, encapsulates the essence of our model, drawing strength from three foundational pillars: - **Base Model: mistral-7b** πŸ—οΈ cerbero-7b builds upon the formidable **mistral-7b** as its base model. This choice ensures a robust foundation, leveraging the power and capabilities of a cutting-edge language model. - **Datasets: Fauno Dataset** πŸ“š Utilizing the comprehensive **fauno dataset**, cerbero-7b gains a diverse and rich understanding of the Italian language. The incorporation of varied data sources contributes to its versatility in handling a wide array of tasks. - **Licensing: Apache 2.0** πŸ•ŠοΈ Released under the **permissive Apache 2.0 license**, cerbero-7b promotes openness and collaboration. This licensing choice empowers developers with the freedom for unrestricted usage, fostering a community-driven approach to advancing AI in Italy and beyond. ## Training Details πŸš€ cerbero-7b is **fully fine-tuned**, distinguishing itself from LORA or QLORA fine-tunes. The model is trained on an expansive Italian Large Language Model (LLM) using synthetic datasets generated through dynamic self-chat on a large context window of **8192 tokens** ### Dataset Composition πŸ“Š We employed a **refined** version of the [Fauno training dataset](https://github.com/RSTLess-research/Fauno-Italian-LLM). The training data covers a broad spectrum, incorporating: - **Medical Data:** Capturing nuances in medical language. 🩺 - **Technical Content:** Extracted from Stack Overflow to enhance the model's understanding of technical discourse. πŸ’» - **Quora Discussions:** Providing valuable insights into common queries and language usage. ❓ - **Alpaca Data Translation:** Italian-translated content from Alpaca contributes to the model's language richness and contextual understanding. πŸ¦™ ### Training Setup βš™οΈ cerbero-7b is trained on an NVIDIA DGX H100: - **Hardware:** Utilizing 8xH100 GPUs, each with 80 GB VRAM. πŸ–₯️ - **Parallelism:** DeepSpeed Zero stage 1 parallelism for optimal training efficiency.✨ The model has been trained for **3 epochs**, ensuring a convergence of knowledge and proficiency in handling diverse linguistic tasks. ## Getting Started πŸš€ You can load cerbero-7b using [πŸ€—transformers](https://huggingface.co/docs/transformers/index) ```python import torch from transformers import AutoModelForCausalLM, AutoTokenizer model = AutoModelForCausalLM.from_pretrained("galatolo/cerbero-7b") tokenizer = AutoTokenizer.from_pretrained("galatolo/cerbero-7b") prompt = """Questa Γ¨ una conversazione tra un umano ed un assistente AI. [|Umano|] Come posso distinguere un AI da un umano? [|AI|]""" input_ids = tokenizer(prompt, return_tensors='pt').input_ids with torch.no_grad(): output_ids = model.generate(input_ids, max_new_tokens=128) generated_text = tokenizer.decode(output_ids[0], skip_special_tokens=True) print(generated_text) ```