""" app.py - the main file for the app. This creates the flask app and handles the routes. """ import torch from transformers import pipeline from cleantext import clean from pathlib import Path import warnings import time import argparse import logging import gradio as gr import os import sys from os.path import dirname import nltk from converse import discussion from grammar_improve import ( detect_propers, load_ns_checker, neuspell_correct, remove_repeated_words, remove_trailing_punctuation, build_symspell_obj, symspeller, fix_punct_spacing, ) from utils import ( cleantxt_wrap, corr, ) nltk.download("stopwords") # TODO: find where this requirement originates from sys.path.append(dirname(dirname(os.path.abspath(__file__)))) warnings.filterwarnings(action="ignore", message=".*gradient_checkpointing*") import transformers transformers.logging.set_verbosity_error() logging.basicConfig() cwd = Path.cwd() my_cwd = str(cwd.resolve()) # string so it can be passed to os.path() objects def chat(trivia_query): """ chat - helper function that makes the whole gradio thing work. Args: trivia_query (str): the question to ask the bot Returns: [str]: the bot's response """ history = [] response = ask_gpt(message=trivia_query, chat_pipe=my_chatbot) history = [trivia_query, response] html = "" for item in history: html += f"{item}
" html += "" return html def ask_gpt( message: str, chat_pipe, speaker="person alpha", responder="person beta", max_len=196, top_p=0.95, top_k=50, temperature=0.6, ): """ ask_gpt - a function that takes in a prompt and generates a response using the pipeline. This interacts the discussion function. Parameters: message (str): the question to ask the bot chat_pipe (str): the chat_pipe to use for the bot (default: "pszemraj/Ballpark-Trivia-XL") speaker (str): the name of the speaker (default: "person alpha") responder (str): the name of the responder (default: "person beta") max_len (int): the maximum length of the response (default: 128) top_p (float): the top probability threshold (default: 0.95) top_k (int): the top k threshold (default: 50) temperature (float): the temperature of the response (default: 0.7) """ st = time.perf_counter() prompt = clean(message) # clean user input prompt = prompt.strip() # get rid of any extra whitespace in_len = len(prompt) if in_len > 512: prompt = prompt[-512:] # truncate to 512 chars print(f"Truncated prompt to last 512 chars: started with {in_len} chars") max_len = min(max_len, 512) resp = discussion( prompt_text=prompt, pipeline=chat_pipe, speaker=speaker, responder=responder, top_p=top_p, top_k=top_k, temperature=temperature, max_length=max_len, ) gpt_et = time.perf_counter() gpt_rt = round(gpt_et - st, 2) rawtxt = resp["out_text"] # check for proper nouns if basic_sc and not detect_propers(rawtxt): cln_resp = symspeller(rawtxt, sym_checker=schnellspell) elif not detect_propers(rawtxt): cln_resp = neuspell_correct(rawtxt, checker=ns_checker) else: # no correction needed cln_resp = rawtxt.strip() bot_resp_a = corr(remove_repeated_words(cln_resp)) bot_resp = fix_punct_spacing(bot_resp_a) print(f"the prompt was:\n\t{message}\nand the response was:\n\t{bot_resp}\n") corr_rt = round(time.perf_counter() - gpt_et, 4) print( f"took {gpt_rt + corr_rt} sec to respond, {gpt_rt} for GPT, {corr_rt} for correction\n" ) return remove_trailing_punctuation(bot_resp) def get_parser(): """ get_parser - a helper function for the argparse module """ parser = argparse.ArgumentParser( description="submit a question, GPT model responds" ) parser.add_argument( "-m", "--model", required=False, type=str, default="pszemraj/GPT-Converse-1pt3B-Neo-WoW-DD-17", # default model help="the model to use for the chatbot on https://huggingface.co/models OR a path to a local model", ) parser.add_argument( "--basic-sc", required=False, default=True, # TODO: change this back to False once Neuspell issues are resolved. action="store_true", help="turn on symspell (baseline) correction instead of the more advanced neural net models", ) parser.add_argument( "--verbose", action="store_true", default=False, help="turn on verbose logging", ) return parser if __name__ == "__main__": args = get_parser().parse_args() default_model = str(args.model) model_loc = Path(default_model) # if the model is a path, use it basic_sc = args.basic_sc # whether to use the baseline spellchecker device = 0 if torch.cuda.is_available() else -1 print(f"CUDA avail is {torch.cuda.is_available()}") my_chatbot = ( pipeline("text-generation", model=model_loc.resolve(), device=device) if model_loc.exists() and model_loc.is_dir() else pipeline("text-generation", model=default_model, device=device) ) # if the model is a name, use it. stays on CPU if no GPU available print(f"using model {my_chatbot.model}") if basic_sc: print("Using the baseline spellchecker") schnellspell = build_symspell_obj() else: print("using Neuspell spell checker") ns_checker = load_ns_checker(fast=False) print(f"using model stored here: \n {model_loc} \n") iface = gr.Interface( chat, inputs=["text"], outputs="html", examples_per_page=10, examples=[ "How can you help me?", "what can you do?", "Hi, my name is……", "Happy birthday!", "I have a question, can you help me?", "Do you know a joke?", "Will you marry me?", "Are you single?", "Do you like people?", "Are you part of the Matrix?", "Do you have a hobby?", "You’re clever", "Tell me about your personality", "You’re annoying", "you suck", "I want to speak to a human now.", "Don’t you speak English?!", "Are you human?", "Are you a robot?", "What is your name?", "How old are you?", "What’s your age?", "What day is it today?", "Who made you?", "Which languages can you speak?", "What is your mother’s name?", "Where do you live?", "What’s the weather like today?", "Are you expensive?", "Do you get smarter?", "rate your overall satisfaction with the chatbot", "How many icebergs are in the ocean?", ], title=f"NLP template space: {default_model} Model", description=f"this space is used as a template. please copy the files in the space to your own space repo, AND THEN edit them ", article="here you can add more details about your model. \n\n" "**Important Notes & About:**\n\n" "1. the model can take up to 60 seconds to respond sometimes, patience is a virtue.\n" "2. the model started from a pretrained checkpoint, and was trained on several different datasets. Anything it says should be fact-checked before being regarded as a true statement.\n" "3. Some params are still being tweaked (in the future, will be inputs) any feedback is welcome :)\n", css=""" .chatbox {display:flex;flex-direction:column} .user_msg, .resp_msg {padding:4px;margin-bottom:4px;border-radius:4px;width:80%} .user_msg {background-color:cornflowerblue;color:white;align-self:start} .resp_msg {background-color:lightgray;align-self:self-end} """, allow_screenshot=True, allow_flagging="never", theme="dark", ) # launch the gradio interface and start the server iface.launch( # prevent_thread_lock=True, enable_queue=True, # also allows for dealing with multiple users simultaneously (per newer gradio version) )