import streamlit as st from transformers import pipeline from transformers import AutoTokenizer, AutoModelForSequenceClassification #tokenizer = AutoTokenizer.from_pretrained("mrm8488/distilroberta-finetuned-financial-news-sentiment-analysis") #model = AutoModelForSequenceClassification.from_pretrained("Howosn/Sentiment_Model") # Load the summarization & translation model pipeline tran_sum_pipe = pipeline("translation", model='utrobinmv/t5_summary_en_ru_zh_base_2048',return_all_scores=True) sentiment_pipeline = pipeline("text-classification", model='Howosn/Sentiment_Model',return_all_scores=True) tokenizer = T5Tokenizer.from_pretrained('utrobinmv/t5_summary_en_ru_zh_base_2048') # Streamlit application title st.title("Emotion analysis") st.write("Turn Your Input Into Sentiment Score") # Text input for the user to enter the text to analyze text = st.text_area("Enter the text", "") # Perform analysis result when the user clicks the "Analyse" button if st.button("Analyse"): # Perform text classification on the input text trans_sum = tran_sum_pipe(text)[0] results = sentiment_pipeline(trans_sum)[0] # Display the classification result max_score = float('-inf') max_label = '' for result in results: if result['score'] > max_score: max_score = result['score'] max_label = result['label'] st.write("Text:", text) st.write("Label:", max_label) st.write("Score:", max_score)