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import os
import gradio as gr
from gradio.components import Slider
import torch
from transformers import pipeline
import pandas as pd
# Model, information and examples ----------------------------------------------
MODEL_NAMES = ["FLOR-1.3B-GL","Cerebras-1.3B-GL"]
markdown_description_en = """
# Galician LLMs
This space contains the Galician language models developed by [Proxecto Nós](https://nos.gal/en/proxecto-nos).
💐 **[FLOR-1.3B-GL](https://huggingface.co/proxectonos/FLOR-1.3B-GL)** is a 1.3B parameters model which is a Continual pretraining from [FLOR-1.3B](https://huggingface.co/projecte-aina/FLOR-1.3B), which is based in [Bloom 1.7B](https://huggingface.co/bigscience/bloom-1b7).
👀 **Learn more about FLOR-1.3B-GL:** [HF official model card](https://huggingface.co/proxectonos/FLOR-1.3B-GL).
🧠 **[Cerebras-1.3B-GL](https://huggingface.co/proxectonos/Cerebras-1.3B-GL)** is a 1.3B parameters model based in [Cerebras-GPT 1.3B](https://huggingface.co/cerebras/Cerebras-GPT-1.3B).
👀 **Learn more about Cerebras-1.3B-GL:** [HF official model card](https://huggingface.co/proxectonos/Cerebras-1.3B-GL)
"""
markdown_description_gl = """
# LLMs de galego
Este espazo contén diferentes Grandes Modelos da Linguaxe feitos para o galego desenvolvidos polo [Proxecto Nós](https://nos.gal/en/proxecto-nos).
💐 **[FLOR-1.3B-GL](https://huggingface.co/proxectonos/FLOR-1.3B-GL)** é un modelo de parámetros 1.3B que é un preadestramento continuo de [FLOR-1.3B]( https://huggingface.co/projecte-aina/FLOR-1.3B), baseado a súa vez en [Bloom 1.7B](https://huggingface.co/bigscience/bloom-1b7).
👀 **Máis información sobre FLOR-1.3B-GL:** [tarxeta modelo oficial HF](https://huggingface.co/proxectonos/FLOR-1.3B-GL).
🧠 **[Cerebras-1.3B-GL](https://huggingface.co/proxectonos/Cerebras-1.3B-GL)** é un modelo de parámetros 1.3B baseado en [Cerebras-GPT 1.3B](https:/ /huggingface.co/cerebras/Cerebras-GPT-1.3B).
👀 **Máis información sobre Cerebras-1.3B-GL:** [tarxeta modelo oficial HF](https://huggingface.co/proxectonos/Cerebras-1.3B-GL)
"""
markdown_description ={"en": markdown_description_en,"gl": markdown_description_gl}
short_prompts_examples = [
["A receita tradicional das filloas é"],
["O neno vivía preto de"]
]
few_shot_prompts_examples = [
["Responde á seguinte pregunta. \nPregunta: \"Cal é a capital de Noruega? \"\nResposta: \"A capital de Noruega é Oslo.\"\n---- \nResponde á seguinte pregunta.\nPregunta: \"Cal é a moeda de Portugal\" \nResposta: \"A moeda de Portugal é o euro.\" \n---- \nResponde á seguinte pregunta. \nPregunta: \"Cal é a capital de Suecia?\"\nResposta:"],
["Extrae as entidades nomeadas do seguinte texto: \nTexto: \"Chámome Wolfgang e vivo en Berlin\" \nEntidades: Wolfgang:PER, Berlin:LOC \n ---- \nExtrae as entidades nomeadas do seguinte texto: \nTexto: \"María e Miguel non teñen ningún problema\" \nEntidades: María:PER, Miguel:PER \n---- \nExtrae as entidades nomeadas do seguinte texto: \nTexto: \"O mellor de Barcelona é o bar do meu amigo Pablo\" \nEntidades: Pablo:PER, Barcelona:LOC \n---- \nExtrae as entidades nomeadas do seguinte texto: \nTexto: \"Carlos comparte cuarto con Marc\" \nEntidades:"],
["Cualifica como Positivo ou Negativo o sentimento da seguinte frase:\n Texto: \"Estou moi feliz\"\n Polaridade: Positivo\n ---- \n Cualifica como Positivo ou Negativo o sentimento da seguinte frase:\n Texto: \"Non me gusta beber cervexa\"\n Polaridade: Negativo\n ----\n Cualifica como Positivo ou Negativo o sentimento da seguinte frase:\n Texto: \"O meu pai detesta o seu traballo\"\n Polaridade: Negativo\n ----\n Cualifica como Positivo ou Negativo o sentimento da seguinte frase:\n Texto: \"Uxía desfruta xogando ao fútbol\"\n Polaridade: Positivo\n ----\n Cualifica como Positivo ou Negativo o sentimento da seguinte frase:\n Texto: \"O neno non está contento coas notas\"\n Polaridade:"]
]
fronted_theme = 'Soft'
# Model charge ---------------------------------------------------------
model_id_flor = "proxectonos/FLOR-1.3B-GL"
generator_model_flor = pipeline("text-generation", model=model_id_flor)
model_id_cerebras = "proxectonos/Cerebras-1.3B-GL"
generator_model_cerebras = pipeline("text-generation", model=model_id_cerebras, token=os.environ['TOKEN_HF'])
# Load language texts ---------------------------------------------------------
df_interface = pd.read_csv("interface_texts.csv")
language = "gl"
# Generation functions ---------------------------------------------------------
def get_model(model_selection):
if model_selection == "FLOR-1.3B-GL":
return generator_model_flor
else:
return generator_model_cerebras
def remove_empty_lines(text):
lines = text.strip().split("\n")
non_empty_lines = [line for line in lines if line.strip()]
return "\n".join(non_empty_lines)
def predict(prompt, model_select, max_length, repetition_penalty, temperature):
print("Dentro da xeración...")
generator_model = get_model(model_select)
prompt_length = len(generator_model.tokenizer.encode(prompt))
generated_text = generator_model(
prompt,
max_length=prompt_length + max_length,
pad_token_id=generator_model.tokenizer.eos_token_id,
repetition_penalty=repetition_penalty,
temperature=temperature,
do_sample=True)
generated_sequence = generated_text[0]['generated_text']
if generated_sequence is None:
gr.Warning('Inference endpoint is not available right now. Please try again later.')
return
generated_sequence = remove_empty_lines(generated_sequence)
print("Xeración completada")
return generated_sequence
# Gradio app ---------------------------------------------------------
def get_text_lang(variable):
return df_interface.loc[df_interface['variable'] == variable, language].values[0]
def change_language(demo):
if language == "gl":
language = "en"
else:
language = "gl"
demo.launch()
def clear():
return (
None,
None,
gr.update(value=20),
gr.update(value=1.3),
gr.update(value=0.5)
)
def pass_to_input(generated_gl):
return (
gr.update(value=generated_gl),
None
)
def parameters_default(text):
return (
gr.update(value=30), # max_length
gr.update(value=1.3), # repetition_penalty
gr.update(value=0.5) # temperature
)
def parameters_fewshot_prompt(text):
return (
gr.update(value=15), # max_length
gr.update(value=1), # repetition_penalty
gr.update(value=0.5) # temperature
)
def gradio_app():
with gr.Blocks(theme=fronted_theme) as demo:
with gr.Row():
with gr.Column(scale=0.1):
change_lang = gr.Button(value=get_text_lang("change_lang"))
gr.HTML('<img src="https://huggingface.co/spaces/proxectonos/README/resolve/main/title-card.png" width="100%" style="border-radius: 0.75rem;">')
with gr.Column():
gr.Markdown(markdown_description[language])
with gr.Row(equal_height=True):
model_select = gr.Dropdown(
label=get_text_lang("model_select"),
choices=MODEL_NAMES,
value=MODEL_NAMES[0],
interactive=True
)
with gr.Row(equal_height=True):
with gr.Column():
text_gl = gr.Textbox(label=get_text_lang("text_gl"),
lines=6, placeholder="e.g. O neno vai a escola con ")
with gr.Row(variant="panel"):
with gr.Accordion(get_text_lang("accordion_parameters"), open=False):
max_length = Slider(
minimum=1,
maximum=200,
step=1,
value=30,
label=get_text_lang("max_length")
)
repetition_penalty = Slider(
minimum=0.1,
maximum=4,
step=0.1,
value=1.3,
label=get_text_lang("repetition_penalty")
)
temperature = Slider(
minimum=0,
maximum=1,
value=0.5,
label=get_text_lang("temperature")
)
generator_btn = gr.Button(value=get_text_lang("generator_btn"),variant='primary')
with gr.Column():
generated_gl = gr.Textbox(label=get_text_lang("generated_gl_label"),
lines=6,
placeholder=get_text_lang("generated_gl_placeholder"),
interactive=False,
show_copy_button=True)
pass_btn = gr.Button(value=get_text_lang("pass_btn"))
clean_btn = gr.Button(value=get_text_lang("clean_btn"))
generator_btn.click(predict, inputs=[text_gl, model_select, max_length, repetition_penalty, temperature], outputs=generated_gl, api_name="generate-flor-gl")
clean_btn.click(fn=clear, inputs=[], outputs=[text_gl, generated_gl, max_length, repetition_penalty, temperature], queue=False, api_name=False)
pass_btn.click(fn=pass_to_input, inputs=[generated_gl], outputs=[text_gl,generated_gl], queue=False, api_name=False)
change_lang.click(fn=change_language, inputs=[demo], outputs=[], queue=False, api_name=False)
with gr.Row():
with gr.Column(scale=0.5):
gr.Examples(
label = get_text_lang("examples_short_prompts"),
examples = short_prompts_examples,
inputs = [text_gl],
outputs = [max_length, repetition_penalty, temperature],
fn = parameters_default,
run_on_click = True
)
gr.Examples(
label = get_text_lang("examples_few_shot"),
examples = few_shot_prompts_examples,
inputs = [text_gl],
outputs = [max_length, repetition_penalty, temperature],
fn = parameters_fewshot_prompt,
run_on_click = True
)
demo.launch()
if __name__ == "__main__":
gradio_app() |