Swe_summarizer / app.py
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import gradio as gr
from transformers import pipeline
import pandas as pd
import json
import nltk
from sentence_transformers import SentenceTransformer, util
import numpy as np
from LexRank import *
from text import *
nltk.download('punkt')
def lex_rank(in_text, threshold=None , ex_sent=4 ,model_in = 'KBLab/sentence-bert-swedish-cased', language='swedish' ):
if threshold == 'None':
threshold=None
model = SentenceTransformer(model_in)
#Split the document into sentences
sentences = nltk.sent_tokenize(in_text, language=language)
#Compute the sentence embeddings
embeddings = model.encode(sentences, convert_to_tensor=True)
cos_scores = util.cos_sim(embeddings, embeddings).cpu().numpy()
#Compute the centrality for each sentence
centrality_scores = degree_centrality_scores(cos_scores, threshold=threshold)
most_central_sentence_indices = np.argsort(-centrality_scores)
sent_list= []
for idx in most_central_sentence_indices[0:ex_sent]:
sent_list.append(sentences[idx])
return ' '.join(sent_list)
def generate(in_text, num_beams, min_len, max_len, model_in):
print(in_text)
pipe = pipeline("summarization", model=model_in)
answer = pipe(in_text, num_beams=num_beams ,min_length=min_len, max_length=max_len)
print(answer)
return answer[0]["summary_text"]
def update_history(df, in_text, gen_text ,model_in, sum_typ, parameters):
# get rid of first seed phrase
new_row = [{"In_text": in_text,
"Gen_text": gen_text,
"Sum_type": sum_typ ,
"Gen_model": model_in,
"Parameters": json.dumps(parameters)}]
return pd.concat([df, pd.DataFrame(new_row)])
def generate_transformer(in_text, num_beams, min_len, max_len, model_in, history):
gen_text= generate(in_text,num_beams, min_len, max_len, model_in)
return gen_text, update_history(history, in_text, gen_text, "Abstractive" ,model_in, {"num_beams": num_beams,
"min_len": min_len,
"max_len": max_len})
def generate_lexrank(in_text, threshold, model_in, ex_sent ,language, history):
gen_text= lex_rank(in_text, threshold, ex_sent ,model_in, language)
return gen_text, update_history(history, in_text, gen_text, "Extractive" ,model_in, {"threshold": threshold,
"Nr_sent": ex_sent,
"language": language})
with gr.Blocks() as demo:
gr.Markdown("<h1><center> Swedish Summarization Engine! </center></h1>")
with gr.Accordion("Read here for details about the app", open=False):
with gr.Tabs():
with gr.TabItem("The Summarization App"):
gr.Markdown(sum_app_text_tab_1)
with gr.TabItem("The Summarization Engine"):
gr.Markdown("""
<h3>Abstractive vs Extractive</h3>
<p>
Abstractive
The underlying engines for the Abstractive part are transformer based model BART, a sequence-to-sequence model with a bidirectional (BERT-like) encoder and an autoregressive (GPT-like) decoder. The BART-model was pre-trained by KBLab/bart-base-swedish-cased (link) to learn general knowledge about language. Afterwards, the model was further fine-tuned on two labelled datasets that have been open-sourced:
- Gabriel/cnn_daily_swe (link)
- Gabriel/xsum_swe (link)
To see more in depth regarding the training go to link.
The core idea behind the training procedure is sequential adoption through transfer learning, i.e multiple phases for fine-tuning a pretrained model on different datasets. The figure below illustrates how the skill level of the model increases at each step:
The main benefits of transfer learning in general include the saving of resources and improved efficiency when training new models, so feel free to adopt this model for your type of problem! 🤗
Extractive:
The extractive models for this app are using sentence-transformer models, which basically is using a bi-encoder that determines how similar two sentences are. This type of models convert texts into vectors (embedding) that capture semantic information. Additionally, LexRank, an unsupervised graph-based algorithm, is used to determine centrality scores as a post-process step to summarise. The main idea is that sentences "recommend" other similar sentences to the reader. Thus, if one sentence is very similar to many others, it will likely be a sentence of great importance. The importance of this sentence also stems from the importance of the sentences "recommending" it. Thus, to get ranked highly and placed in a summary, a sentence must be similar to many sentences that are in turn also similar to many other sentences.
</p>""")
with gr.Tabs():
with gr.TabItem("Abstractive Generation for Summarization"):
gr.Markdown(
"""The default parameters for this transformer based model work well to generate summarization.
Use this tab to experiment summarization task of text for different types Abstractive models.""")
with gr.Row():
with gr.Column(scale=4):
text_baseline_transformer= gr.TextArea(label="Input text to summarize", placeholder="Input summarization")
with gr.Row():
transformer_button_clear = gr.Button("Clear", variant='secondary')
transformer_button = gr.Button("Summarize!", variant='primary')
with gr.Column(scale=3):
with gr.Row():
num_beams = gr.Slider(minimum=2, maximum=10, value=2, step=1, label="Number of Beams")
min_len = gr.Slider(minimum=10, maximum=50, value=25, step=5, label="Min length")
max_len = gr.Slider(minimum=50, maximum=130, value=120, step=10, label="Max length")
model_in = gr.Dropdown(["Gabriel/bart-base-cnn-swe", "Gabriel/bart-base-cnn-xsum-swe", "Gabriel/bart-base-cnn-xsum-wiki-swe"], value="Gabriel/bart-base-cnn-xsum-swe", label="Model")
output_basline_transformer = gr.Textbox(label="Output Text")
with gr.Row():
with gr.Accordion("Here are some examples you can use:", open=False):
gr.Markdown("<h3>Press one of the test examples below.<h3>")
gr.Markdown("NOTE: First time inference for a new model will take time, since a new model has to downloaded before inference.")
gr.Examples([[abstractive_example_text_1
, 5,25,120, "Gabriel/bart-base-cnn-swe"],
[abstractive_example_text_2
, 5,25,120, "Gabriel/bart-base-cnn-xsum-swe"]
], [text_baseline_transformer, num_beams, min_len, max_len, model_in])
with gr.TabItem("Extractive Ranking Graph for Summarization"):
gr.Markdown(
"""Use this tab to experiment summarization task of text with a graph based method (LexRank).""")
with gr.Row():
with gr.Column(scale=4):
text_extract= gr.TextArea(label="Input text to summarize", placeholder="Input text")
with gr.Row():
extract_button_clear = gr.Button("Clear", variant='secondary')
extract_button = gr.Button("Summarize!", variant='primary')
with gr.Column(scale=3):
with gr.Row():
ex_sent =gr.Slider(minimum=1, maximum=7, value=4, step=1, label="Sentences to return")
ex_threshold = gr.Dropdown(['None',0.1,0.2,0.3,0.4,0.5], value='None', label="Similar Threshold")
ex_language = gr.Dropdown(["swedish","english"], value="swedish", label="Language")
model_in_ex = gr.Dropdown(["KBLab/sentence-bert-swedish-cased","sentence-transformers/all-MiniLM-L6-v2"], value="KBLab/sentence-bert-swedish-cased", label="Model")
output_extract = gr.Textbox(label="Output Text")
with gr.Row():
with gr.Accordion("Here are some examples you can use:", open=False):
gr.Markdown("<h3>Press one of the test examples below.<h3>")
gr.Markdown("NOTE: First time inference for a new model will take time, since a new model has to downloaded before inference.")
gr.Examples([[extractive_example_text_1
, 'None', 4,'swedish', "KBLab/sentence-bert-swedish-cased"]], [text_extract, ex_threshold, ex_sent ,ex_language, model_in_ex])
with gr.Box():
gr.Markdown("<h3> Generation History <h3>")
# Displays a dataframe with the history of moves generated, with parameters
history = gr.Dataframe(headers=["In_text", "Gen_text","Sum_type" ,"Gen_model", "Parameters"], overflow_row_behaviour="show_ends", wrap=True)
transformer_button.click(generate_transformer, inputs=[text_baseline_transformer, num_beams, min_len, max_len, model_in ,history], outputs=[output_basline_transformer , history] )
extract_button.click(generate_lexrank, inputs=[text_extract, ex_threshold, model_in_ex, ex_sent ,ex_language ,history], outputs=[output_extract , history] )
demo.launch()