TURNA-GPU / app.py
merve's picture
merve HF staff
Update app.py
0be38ca verified
raw
history blame
No virus
9 kB
import gradio as gr
import spaces
from transformers import pipeline
import torch
DESCRIPTION="""
This is the space for the Language Modeling Group at TABILAB in Computer Engineering of Bogazici University.
We released the first version of our Turkish language model TURNA.
This model is based on an encoder-decoder T5 architecture with 1.1B parameters.
For more details, please refer to our paper.
**Note:** First inference might take time as the models are downloaded on-the-go.
"""
sentiment_example = [["Bu üründen çok memnun kaldım."]]
long_text = [["Eyfel Kulesi (Fransızca: La tour Eiffel [la tuʀ ɛˈfɛl]), Paris'teki demir kule. Kule, aynı zamanda tüm dünyada Fransa'nın sembolü halini almıştır. İsmini, inşa ettiren Fransız inşaat mühendisi Gustave Eiffel'den alır.[1] En büyük turizm cazibelerinden biri olan Eyfel Kulesi, yılda 6 milyon turist çeker. 2002 yılında toplam ziyaretçi sayısı 200 milyona ulaşmıştır."]]
ner_example = [["Benim adım Turna."]]
t2t_example = [["Paraphrase: Bu üründen çok memnun kaldım."]]
nli_example = [["Bunu çok beğendim. Bunu çok sevdim."]]
@spaces.GPU
def nli(input, model_choice="turna_nli_nli_tr"):
if model_choice=="turna_nli_nli_tr":
nli_model = pipeline(model="boun-tabi-LMG/turna_nli_nli_tr", device=0)
return nli_model(input)[0]["generated_text"]
else:
stsb_model = pipeline(model="boun-tabi-LMG/turna_semantic_similarity_stsb_tr", device=0)
return stsb_model(input)[0]["generated_text"]
@spaces.GPU
def sentiment_analysis(input, model_choice="turna_classification_17bintweet_sentiment"):
if model_choice=="turna_classification_17bintweet_sentiment":
sentiment_model = pipeline(model="boun-tabi-LMG/turna_classification_17bintweet_sentiment", device=0)
return sentiment_model(input)[0]["generated_text"]
else:
product_reviews = pipeline(model="boun-tabi-LMG/turna_classification_tr_product_reviews", device=0)
return product_reviews(input)[0]["generated_text"]
@spaces.GPU
def pos(input, model_choice="turna_pos_imst"):
if model_choice=="turna_pos_imst":
pos_imst = pipeline(model="boun-tabi-LMG/turna_pos_imst", device=0)
return pos_imst(input)[0]["generated_text"]
else:
pos_boun = pipeline(model="boun-tabi-LMG/turna_pos_boun", device=0)
return pos_boun(input)[0]["generated_text"]
@spaces.GPU
def ner(input, model_choice="turna_ner_wikiann"):
if model_choice=="turna_ner_wikiann":
ner_wikiann = pipeline(model="boun-tabi-LMG/turna_ner_wikiann", device=0)
return ner_wikiann(input)[0]["generated_text"]
else:
ner_model = pipeline(model="boun-tabi-LMG/turna_ner_milliyet", device=0)
return ner_model(input)[0]["generated_text"]
@spaces.GPU
def paraphrase(input, model_choice="turna_paraphrasing_tatoeba"):
if model_choice=="turna_paraphrasing_tatoeba":
paraphrasing = pipeline(model="boun-tabi-LMG/turna_paraphrasing_tatoeba", device=0)
return paraphrasing(input)[0]["generated_text"]
else:
paraphrasing_sub = pipeline(model="boun-tabi-LMG/turna_paraphrasing_opensubtitles", device=0)
return paraphrasing_sub(input)[0]["generated_text"]
@spaces.GPU
def summarize(input, model_choice="turna_summarization_tr_news"):
if model_choice=="turna_summarization_tr_news":
news_sum = pipeline(model="boun-tabi-LMG/turna_summarization_tr_news", device=0)
return news_sum(input)[0]["generated_text"]
else:
summarization_model = pipeline(model="boun-tabi-LMG/turna_summarization_mlsum", device=0)
return summarization_model(input)[0]["generated_text"]
with gr.Blocks(theme="soft") as demo:
gr.Markdown("# TURNA 🐦")
gr.Markdown(DESCRIPTION)
with gr.Tab("Sentiment Analysis"):
gr.Markdown("TURNA fine-tuned on sentiment analysis. Enter text to analyse sentiment and pick the model (tweets or product reviews).")
with gr.Column():
with gr.Row():
with gr.Column():
sentiment_choice = gr.Radio(choices = ["turna_classification_17bintweet_sentiment", "turna_classification_tr_product_reviews"], label ="Model", value="turna_classification_17bintweet_sentiment")
sentiment_input = gr.Textbox(label="Sentiment Analysis Input")
sentiment_submit = gr.Button()
sentiment_output = gr.Textbox(label="Sentiment Analysis Output")
sentiment_submit.click(sentiment_analysis, inputs=[sentiment_input, sentiment_choice], outputs=sentiment_output)
sentiment_examples = gr.Examples(examples = sentiment_example, inputs = [sentiment_input, sentiment_choice], outputs=sentiment_output, fn=sentiment_analysis)
with gr.Tab("NLI"):
gr.Markdown("TURNA fine-tuned on natural language inference. Enter text to infer entailment and pick the model. You can also check for semantic similarity entailment.")
with gr.Column():
with gr.Row():
with gr.Column():
nli_choice = gr.Radio(choices = ["turna_nli_nli_tr", "turna_semantic_similarity_stsb_tr"], label ="Model", value="turna_nli_nli_tr")
nli_input = gr.Textbox(label="NLI Input")
nli_submit = gr.Button()
nli_output = gr.Textbox(label="NLI Output")
nli_submit.click(nli, inputs=[nli_input, nli_choice], outputs=nli_output)
nli_examples = gr.Examples(examples = nli_example, inputs = [nli_input, nli_choice], outputs=nli_output, fn=nli)
with gr.Tab("POS"):
gr.Markdown("TURNA fine-tuned on part-of-speech-tagging. Enter text to parse parts of speech and pick the model.")
with gr.Column():
with gr.Row():
with gr.Column():
pos_choice = gr.Radio(choices = ["turna_pos_imst", "turna_pos_boun"], label ="Model", value="turna_pos_imst")
pos_input = gr.Textbox(label="POS Input")
pos_submit = gr.Button()
pos_output = gr.Textbox(label="POS Output")
pos_submit.click(pos, inputs=[pos_input, pos_choice], outputs=pos_output)
pos_examples = gr.Examples(examples = ner_example, inputs = [pos_input, pos_choice], outputs=pos_output, fn=pos)
with gr.Tab("NER"):
gr.Markdown("TURNA fine-tuned on named entity recognition. Enter text to parse named entities and pick the model.")
with gr.Column():
with gr.Row():
with gr.Column():
ner_choice = gr.Radio(choices = ["turna_ner_wikiann", "turna_ner_milliyet"], label ="Model", value="turna_ner_wikiann")
ner_input = gr.Textbox(label="NER Input")
ner_submit = gr.Button()
ner_output = gr.Textbox(label="NER Output")
ner_submit.click(ner, inputs=[ner_input, ner_choice], outputs=ner_output)
ner_examples = gr.Examples(examples = ner_example, inputs = [ner_input, ner_choice], outputs=ner_output, fn=ner)
with gr.Tab("Paraphrase"):
gr.Markdown("TURNA fine-tuned on paraphrasing. Enter text to paraphrase and pick the model.")
with gr.Column():
with gr.Row():
with gr.Column():
paraphrasing_choice = gr.Radio(choices = ["turna_paraphrasing_tatoeba", "turna_paraphrasing_opensubtitles"], label ="Model", value="turna_paraphrasing_tatoeba")
paraphrasing_input = gr.Textbox(label = "Paraphrasing Input")
paraphrasing_submit = gr.Button()
paraphrasing_output = gr.Text(label="Paraphrasing Output")
paraphrasing_submit.click(paraphrase, inputs=[paraphrasing_input, paraphrasing_choice], outputs=paraphrasing_output)
paraphrase_examples = gr.Examples(examples = long_text, inputs = [paraphrasing_input, paraphrasing_choice], outputs=paraphrasing_output, fn=paraphrase)
with gr.Tab("Summarization"):
gr.Markdown("TURNA fine-tuned on summarization. Enter text to summarize and pick the model.")
with gr.Column():
with gr.Row():
with gr.Column():
sum_choice = gr.Radio(choices = ["turna_summarization_mlsum", "turna_summarization_tr_news"], label ="Model", value="turna_summarization_mlsum")
sum_input = gr.Textbox(label = "Summarization Input")
sum_submit = gr.Button()
sum_output = gr.Textbox(label = "Summarization Output")
sum_submit.click(summarize, inputs=[sum_input, sum_choice], outputs=sum_output)
sum_examples = gr.Examples(examples = long_text, inputs = [sum_input, sum_choice], outputs=sum_output, fn=summarize)
demo.launch()