import streamlit as st import os import git #if(os.path.isdir("./TickerExtraction")==False): git.Git("./").clone("https://huggingface.co/rajaatif786/TickerExtraction") print(os.path.exists("./rajaatif786/TickerExtraction/entity_model2.pt")) #st.write(os.listdir("./TickerExtraction/")) #x = st.slider('Select a value') #st.write(x, 'squared is', x * x) import pandas as pd import numpy as np os.chdir("./TickerExtraction") from EntityExtractor import EntityDataset, EntityBertNet,BertEntityExtractor, LABEL_MAP import nltk nltk.download('stopwords') entity_extractor = BertEntityExtractor.load_trained_model()