# import streamlit as st # from transformers import pipeline # pipe=pipeline('sentiment-analysis') # text=st.text_area('enter some text!') # if text: # out = pipe(text) # st.json(out) import streamlit as st from transformers import pipeline import pandas as pd # prepare table + question data = {"Neighborhood": ["Upper East Side", "Soho", "Upper West Side"], "Number of Apartments": ["87", "53", "69"]} table = pd.DataFrame.from_dict(data) question = "how many apartments does Upper East Side have?" # pipeline model # Note: you must to install torch-scatter first. tqa = pipeline(task="table-question-answering", model="google/tapas-large-finetuned-wtq") # result st.json(tqa(table=table, query=question)) # print(tqa(table=table, query=query)['cells'][0]) #53