#importing the necessary libraries import pandas as pd import numpy as np import gradio as gr from sentence_transformers import SentenceTransformer from keybert import KeyBERT from keyphrase_vectorizers import KeyphraseCountVectorizer # Defining a function to read in the text file def read_in_text(url): with open(url, 'r') as file: article = file.read() return article #tmp_model = SentenceTransformer('valurank/MiniLM-L6-Keyword-Extraction') kw_extractor = KeyBERT('valurank/MiniLM-L6-Keyword-Extraction') def get_keybert_results_with_vectorizer(text, number_of_results=20): try: keywords = kw_extractor.extract_keywords(text, vectorizer=KeyphraseCountVectorizer(), stop_words=None, top_n=number_of_results) keywords = [i for i in keywords if i[1] > 0.20] keybert_diversity_phrases = [] for i, j in keywords: keybert_diversity_phrases.append(i) output_df = pd.DataFrame() output_df['keyword'] = np.array(keybert_diversity_phrases) return output_df.head(20) except Exception: return "Error" demo = gr.Interface(get_keybert_results_with_vectorizer, inputs=gr.inputs.Textbox(), outputs=gr.outputs.Dataframe(), title = "Keyword Extraction") if __name__ == "__main__": demo.launch(debug=True)