--- language: - gl tags: - galician - FLOR - bloom license: apache-2.0 inference: parameters: top_k: 10 do_sample: true temperature: 0.4 widget: - text: |- Traduce ao galego esta frase en inglés: Inglés: "my sister is studying Biology at the university." Galego: "a miña irmá está a estudar bioloxía na universidade." ---- Traduce ao galego esta frase en inglés: Inglés: "You are working with my mother on a very interesting project." Galego: "Estás a traballar coa miña nai nun proxecto moi interesante" ---- Traduce ao galego esta frase en inglés: Inglés: "You have to fix the computer now" Galego: example_title: Translation - text: |- Responde á seguinte pregunta. Pregunta: "Cal é a capital de Noruega?" Resposta: "A capital de Noruega é Oslo." ---- Responde á seguinte pregunta. Pregunta: "Cal é a moeda de Portugal" Resposta: "A moeda de Portugal é o euro." ---- Responde á seguinte pregunta. Pregunta: "Cal é a capital de Suecia?" Resposta: example_title: Question&Answering - text: |- Cualifica como Positivo ou Negativo o sentimento da seguinte frase: Texto: "Estou moi feliz" Polaridade: Positivo ---- Cualifica como Positivo ou Negativo o sentimento da seguinte frase: Texto: "Non me gusta beber cervexa" Polaridade: Negativo ---- Cualifica como Positivo ou Negativo o sentimento da seguinte frase: Texto: "O meu pai detesta o seu traballo" Polaridade: Negativo ---- Cualifica como Positivo ou Negativo o sentimento da seguinte frase: Texto: "Uxía desfruta xogando ao fútbol" Polaridade: Positivo ---- Cualifica como Positivo ou Negativo o sentimento da seguinte frase: Texto: "O neno non está contento coas notas" Polaridade: example_title: Sentiment Analysis - text: |- Extrae as entidades nomeadas do seguinte texto: Texto: "Chámome Wolfgang e vivo en Berlin" Entidades: Wolfgang:PER, Berlin:LOC ---- Extrae as entidades nomeadas do seguinte texto: Texto: "María e Miguel non teñen ningún problema" Entidades: María:PER, Miguel:PER ---- Extrae as entidades nomeadas do seguinte texto: Texto: "O mellor de Barcelona é o bar do meu amigo Pablo" Entidades: Pablo:PER, Barcelona:LOC ---- Extrae as entidades nomeadas do seguinte texto: Texto: "Carlos comparte cuarto con Marc" Entidades: example_title: Name Entity Recognition (NER) - text: A receita tradicional das filloas é example_title: Filloas - text: O neno vivía preto de example_title: O neno datasets: - proxectonos/corpusnos --- # Carballo-bloom-1.3B ## Table of Contents
Click to expand - [Carballo-bloom-1.3B](#carballo-bloom-13) - [Table of Contents](#table-of-contents) - [Model description](#model-description) - [Intended uses and limitations](#intended-uses-and-limitations) - [How to use](#how-to-use) - [Training](#training) - [Tools](#tools) - [Language adaptation and training](#language-adaptation-and-training) - [Training data](#training-data) - [Training hyperparameters](#training-hyperparameters) - [Framework](#framework) - [Evaluation](#evaluation) - [Additional information](#additional-information) - [Contact](#contact) - [Copyright](#copyright) - [License](#license) - [Funding](#funding) - [Citation information](#citation-information)
## Model description **Carballo-bloom-1.3B** is a 1.3B-parameter transformer-based causal language model for Galician. It is the result of a continual pretraining of [FLOR-1.3B](https://huggingface.co/projecte-aina/FLOR-1.3B) (developed by [AINA Project](https://projecteaina.cat/) and based in [BLOOM-1.7B](https://huggingface.co/bigscience/bloom-1b7)) with the galician corpus [CorpusNos](https://zenodo.org/records/10687642). ## Intended uses and limitations The **Carballo-bloom-1.3B** model is ready-to-use only for causal language modeling. It can perform text-generation tasks and be fine-tuned for specific scenarios. ## How to use ```python import torch from transformers import pipeline, AutoTokenizer, AutoModelForCausalLM input_text = "Hoxe fai un bo día. O sol " model_id = "proxectonos/Carballo-bloom-1.3B" tokenizer = AutoTokenizer.from_pretrained(model_id) model = AutoModelForCausalLM.from_pretrained(model_id) generator = pipeline( "text-generation", model=model, tokenizer=tokenizer, torch_dtype=torch.bfloat16, trust_remote_code=True, device_map="auto", ) generation = generator( input_text, do_sample=True, top_k=10, eos_token_id=tokenizer.eos_token_id ) print(f"Result: {generation[0]['generated_text']}") ``` ## Training ### Tools It was trained using HuggingFace Transformers and Pytorch, using the [Causal Modeling Language script](https://github.com/huggingface/transformers/blob/main/examples/pytorch/language-modeling/run_clm.py) ### Language adaptation and training The language adaptation technique used to train Carballo-bloom-1.3B is based in the used to train FLOR-1.3B, which is explained by their authors in this [Medium Post](https://medium.com/@mpamies247/flor-6-3b-a-chinchilla-compliant-model-for-catalan-spanish-and-english-7cdb389a9aac). In summary, we proceeded as follows: 1) We trained our own BPE tokenizer for galician and replaced the original FLOR-1.3B tokenizer and vocabulary with it. 2) The embeddings corresponding to tokens that are present in both the original and the target vocabulary (matching tokens) were used for initialization. 3) The embeddings from tokens not present in Carballo-bloom-1.3B's original vocabulary were initialized as the average of all embeddings. 4) The model was initialized with the weights from FLOR-1.3B and with our adapted tokenizer (step 1) and embeddings (steps 2-3). 5) The model was then trained on a galician corpus. ### Training data [CorpusNÓS](https://zenodo.org/records/10687642 ) is a massive Galician corpus made up of 2.1B words primarily devised for training large language models. The corpus sources are varied and represent a relatively wide range of genres. The corpus is structured as follows: | Subcorpus | Genre | Nº tokens | Nº documents | |---------------------------------------|---------------------|----------------|--------------| | Data obtained via transfer agreement | Books | 7,255,784 | 104 | | | Research articles | 2,665,351 | 664 | | | Press | 124,253,084 | 224,419 | | | Governmental | 245,897,880 | 654,505 | | | Web contents | 15,946,686 | 44,165 | | | Encyclopedic | 4,799,214 | 47,396 | | | Subtotal | 400,817,999 | 971,253 | | Subcorpus | Genre | Nº tokens | Nº documents | |---------------------------------------|---------------------|----------------|--------------| | Public data | Press and blogs | 153,497,883 | 665,265 | | | Encyclopedic | 57,164,848 | 184,628 | | | Web crawls | 1,384,015,664 | 3,366,449 | | | Translation corpora | 133,726,004 | 4,745,799 | | | Subtotal | 1,728,404,399 | 8,777,514 | | | Total | 2,129,222,398 | 9,748,767 | | Download (Zenodo) | https://zenodo.org/records/10687642 | ### Training hyperparameters - seed: 42 - num_devices: 1 - train_batch_size: 2 - eval_batch_size: 2 - gradient_acummulation: 4 - optimizer: AdamW - betas: (0.9,0.999) - epsilon: 1e-08 - weight_decay_rate: 0.1 - scheduler: "Linear" - learning_rate: 5e-05 - num_epochs: 1.2 ### Framework The traininf was conducted in the Galicia Supercomputing Center ([CESGA](https://www.cesga.es/en/home-2/)), using 1 node with 5 GPUs NVIDIA A100. ## Evaluation | **Model** | **Belebele** | **CoLA** | **OpenBookQA** | **Parafrases-gl** | **PAWS-X** | |-------------|------------------|----------------|----------------|----------------|----------------| | *Carballo-Bloom* | 0.231±0.014 | 0.499±0.012 | 0.364±0.022 | 0.523±0.031 | **0.541±0.011** | | *Carballo-Cerebras* | **0.271±0.015** | 0.502±0.012 | **0.368±0.022** | 0.496±0.031 | 0.531±0.011 | | *Bloom-1b1* | 0.234±0.014 | **0.507±0.012** | 0.338±0.021 | 0.485±0.031 | 0.508±0.011 | | *Bloom-1b7* | 0.218±0.014 | 0.500±0.012 | 0.338±0.021 | **0.539±0.031** | 0.539±0.011 | | *mGPT* | 0.229±0.014 | 0.494±0.012 | 0.332±0.021 | 0.423±0.031 | 0.517±0.011 | | *Flor-1.3B* | 0.220±0.014 | 0.504±0.012 | 0.342±0.021 | 0.516±0.031 | 0.536±0.011 | | *Cerebras-1.3B* | 0.221±0.014 | 0.497±0.012 | 0.300±0.021 | 0.492±0.031 | 0.531±0.011 | ## Additional information ### Contact For further information, please send an email to ### Funding This model was development within the Nós Project, funded by the Ministerio para la Transformación Digital y de la Función Pública - Funded by EU – NextGenerationEU within the framework of the [project ILENIA](https://proyectoilenia.es/) with reference 2022/TL22/00215336. ### How to cite this work if you use this model, please cite this article: Gamallo, Pablo, Pablo Rodríguez Fernández, Iria de Dios Flores, Susana Sotelo, Silvia Paniagua, José Ramom Pichel, Daniel Bardanca, Marcos Garcia (2024) "Open Generative Large Language Models for Galician", Procesamiento del Lenguaje Natural, 73, pp. 259-270. ISSN: 1135-5948.