alt-zsc / app.py
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import datetime
import gradio as gr
from huggingface_hub import hf_hub_download
import fasttext, torch, clip
from sentence_transformers import SentenceTransformer, util
model_en, _ = clip.load("ViT-B/32")
model_multi = SentenceTransformer("sentence-transformers/clip-ViT-B-32-multilingual-v1")
fasttext_model = fasttext.load_model(hf_hub_download("julien-c/fasttext-language-id", "lid.176.bin"))
def prep_examples():
example_text1 = "Coronavirus disease (COVID-19) is an infectious disease caused by the SARS-CoV-2 virus. Most \
people who fall sick with COVID-19 will experience mild to moderate symptoms and recover without special treatment. \
However, some will become seriously ill and require medical attention."
example_labels1 = "business;;health related;;politics;;climate change"
example_text2 = "Elephants are"
example_labels2 = "big;;small;;strong;;fast;;carnivorous"
example_text3 = "Elephants"
example_labels3 = "are big;;can be very small;;generally not strong enough;;are faster than you think"
example_text4 = "Dogs are man's best friend"
example_labels4 = "positive;;negative;;neutral"
example_text5 = "Şampiyonlar Ligi’nde 5. hafta oynanan karşılaşmaların ardından sona erdi. Real Madrid, \
Inter ve Sporting oynadıkları mücadeleler sonrasında Son 16 turuna yükselmeyi başardı. \
Gecenin dev mücadelesinde ise Manchester City, PSG’yi yenerek liderliği garantiledi."
example_labels5 = "dünya;;ekonomi;;kültür;;siyaset;;spor;;teknoloji"
example_text6 = "Letzte Woche gab es einen Selbstmord in einer nahe gelegenen kolonie"
example_labels6 = "verbrechen;;tragödie;;stehlen"
example_text7 = "El autor se perfila, a los 50 años de su muerte, como uno de los grandes de su siglo"
example_labels7 = "cultura;;sociedad;;economia;;salud;;deportes"
example_text8 = "Россия в среду заявила, что военные учения в аннексированном Москвой Крыму закончились \
и что солдаты возвращаются в свои гарнизоны, на следующий день после того, как она объявила о первом выводе \
войск от границ Украины."
example_labels8 = "новости;;комедия"
example_text9 = "I quattro registi - Federico Fellini, Pier Paolo Pasolini, Bernardo Bertolucci e Vittorio De Sica - \
hanno utilizzato stili di ripresa diversi, ma hanno fortemente influenzato le giovani generazioni di registi."
example_labels9 = "cinema;;politica;;cibo"
example_text10 = "Ja, vi elsker dette landet,\
som det stiger frem,\
furet, værbitt over vannet,\
med de tusen hjem.\
Og som fedres kamp har hevet\
det av nød til seir"
example_labels10 = "helse;;sport;;religion;;mat;;patriotisme og nasjonalisme"
example_text11 = "Amar sonar bangla ami tomay bhalobasi"
example_labels11 = "bhalo;;kharap"
examples = [
[example_text1, example_labels1],
[example_text2, example_labels2],
[example_text3, example_labels3],
[example_text4, example_labels4],
[example_text5, example_labels5],
[example_text6, example_labels6],
[example_text7, example_labels7],
[example_text8, example_labels8],
[example_text9, example_labels9],
[example_text10, example_labels10],
[example_text11, example_labels11]]
return examples
def detect_lang(text):
DetectorFactory.seed = 0
seq_lang = 'en'
text = text.replace('\n', ' ')
try:
seq_lang = fasttext_model.predict(text, k=1)[0][0].split("__label__")[1]
except:
print("Language detection failed!",
"Date:{}, Sequence: {}".format(
str(datetime.datetime.now()),
text))
return seq_lang
def sequence_to_classify(text, labels):
lang = detect_lang(text)
if lang == 'en':
model = model_en
hypothesis_template = "{}"
else:
model = model_multi
hypothesis_template = "{}"
labels = [hypothesis_template.format(label) for label in labels.split(";;")]
if str(type(model)) == "<class 'clip.model.CLIP'>":
text_tokens = clip.tokenize(text)
text_features = model.encode_text(text_tokens)
label_tokens = clip.tokenize(labels)
labels_features = model.encode_text(label_tokens)
else:
text_features = torch.tensor(model.encode(text))
labels_features = torch.tensor(self.model.encode(labels))
sim_scores = util.cos_sim(text_features, labels_features)
preds = []
for textlet, sim_score in zip([text], sim_scores):
out = []
pred = {}
for raw_score in sim_score:
out.append(raw_score.item() * 100)
probs = torch.tensor([out])
probs = probs.softmax(dim=-1).cpu().numpy()
scores = list(probs.flatten())
sorted_sl = sorted(zip(scores, labels), key=lambda t:t[0], reverse=True)
pred["text"] = textlet
pred["scores"], pred["labels"] = zip(*sorted_sl)
preds.append(pred)
if len(preds) == 1:
preds = preds[0]
predicted_labels = list(preds['labels'])
predicted_scores = list(preds['scores'])
print(predicted_labels)
print(predicted_scores)
output = {idx: float(predicted_scores.pop(0)) for idx in predicted_labels}
print("Date:{}, Sequence:{}, Labels: {}".format(
str(datetime.datetime.now()),
text,
predicted_labels))
return output
iface = gr.Interface(
title="Alternate Zero-shot Multi-label Multilingual NLP Classifier",
description="Work in progress.",
fn=sequence_to_classify,
inputs=[gr.inputs.Textbox(lines=10,
label="Please enter the text you would like to classify...",
placeholder="Text here..."),
gr.inputs.Textbox(lines=2,
label="Please enter the candidate labels (separated by 2 consecutive semicolons)...",
placeholder="Labels here separated by ;;")],
outputs=gr.outputs.Label(num_top_classes=5),
#interpretation="default",
examples=prep_examples())
iface.launch()