import streamlit as st from multiprocessing import Process from annotated_text import annotated_text from bs4 import BeautifulSoup import pandas as pd import torch import math import re import json import requests import spacy import errant import time import os def start_server(): os.system("python3 -m spacy download en_core_web_sm") os.system("uvicorn GrammarTokenize:app --port 8080 --host 0.0.0.0 --workers 2") def load_models(): if not is_port_in_use(8080): with st.spinner(text="Loading models, please wait..."): proc = Process(target=start_server, args=(), daemon=True) proc.start() while not is_port_in_use(8080): time.sleep(1) st.success("Model server started.") else: st.success("Model server already running...") st.session_state['models_loaded'] = True def is_port_in_use(port): import socket with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s: return s.connect_ex(('0.0.0.0', port)) == 0 if 'models_loaded' not in st.session_state: st.session_state['models_loaded'] = False def show_highlights(input_text, corrected_sentence): try: strikeout = lambda x: '\u0336'.join(x) + '\u0336' highlight_text = highlight(input_text, corrected_sentence) color_map = {'d':'#faa', 'a':'#afa', 'c':'#fea'} tokens = re.split(r'(<[dac]\s.*?<\/[dac]>)', highlight_text) annotations = [] for token in tokens: soup = BeautifulSoup(token, 'html.parser') tags = soup.findAll() if tags: _tag = tags[0].name _type = tags[0]['type'] _text = tags[0]['edit'] _color = color_map[_tag] if _tag == 'd': _text = strikeout(tags[0].text) annotations.append((_text, _type, _color)) else: annotations.append(token) annotated_text(*annotations) except Exception as e: st.error('Some error occured!' + str(e)) st.stop() def show_edits(input_text, corrected_sentence): try: edits = get_edits(input_text, corrected_sentence) df = pd.DataFrame(edits, columns=['type','original word', 'original start', 'original end', 'correct word', 'correct start', 'correct end']) df = df.set_index('type') st.table(df) except Exception as e: st.error('Some error occured!') st.stop() def highlight(orig, cor): edits = _get_edits(orig, cor) orig_tokens = orig.split() ignore_indexes = [] for edit in edits: edit_type = edit[0] edit_str_start = edit[1] edit_spos = edit[2] edit_epos = edit[3] edit_str_end = edit[4] # if no_of_tokens(edit_str_start) > 1 ==> excluding the first token, mark all other tokens for deletion for i in range(edit_spos+1, edit_epos): ignore_indexes.append(i) if edit_str_start == "": if edit_spos - 1 >= 0: new_edit_str = orig_tokens[edit_spos - 1] edit_spos -= 1 else: new_edit_str = orig_tokens[edit_spos + 1] edit_spos += 1 if edit_type == "PUNCT": st = "" + new_edit_str + "" else: st = "" + new_edit_str + "" orig_tokens[edit_spos] = st elif edit_str_end == "": st = "" + edit_str_start + "" orig_tokens[edit_spos] = st else: st = "" + edit_str_start + "" orig_tokens[edit_spos] = st for i in sorted(ignore_indexes, reverse=True): del(orig_tokens[i]) return(" ".join(orig_tokens)) def _get_edits(orig, cor): orig = annotator.parse(orig) cor = annotator.parse(cor) alignment = annotator.align(orig, cor) edits = annotator.merge(alignment) if len(edits) == 0: return [] edit_annotations = [] for e in edits: e = annotator.classify(e) edit_annotations.append((e.type[2:], e.o_str, e.o_start, e.o_end, e.c_str, e.c_start, e.c_end)) if len(edit_annotations) > 0: return edit_annotations else: return [] def get_edits(orig, cor): return _get_edits(orig, cor) def get_correction(input_text): correct_request = "http://0.0.0.0:8080/correct?input_sentence="+input_text correct_response = requests.get(correct_request) correct_json = json.loads(correct_response.text) scored_corrected_sentence = correct_json["scored_corrected_sentence"] corrected_sentence, score = scored_corrected_sentence st.markdown(f'##### Corrected text:') st.write('') st.success(corrected_sentence) exp1 = st.expander(label='Show highlights', expanded=True) with exp1: show_highlights(input_text, corrected_sentence) exp2 = st.expander(label='Show edits') with exp2: show_edits(input_text, corrected_sentence) if __name__ == "__main__": st.title('Grammar Styler') st.subheader('Grammar and sentence structure restyler') examples = [ "I looked at the med cabinet and meds are out. Can you order me more?", "Been spendin my whole life jus to her dat song", "whatdjya think about dat?", "Lets git sum holesome waves and go surfin" ] if not st.session_state['models_loaded']: load_models() import en_core_web_sm nlp = en_core_web_sm.load() annotator = errant.load('en', nlp) st.markdown(f'##### Try it now:') input_text = st.selectbox( label="Choose an example", options=examples ) st.write("(or)") input_text = st.text_input( label="Bring your own sentence", value=input_text ) if input_text.strip(): get_correction(input_text)