Chatbot
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import asyncio
import os, tempfile
import logging
import json
import requests
from transformers import AutoTokenizer, AutoConfig
from huggingface_hub import hf_hub_download
import io
import base64
from PIL import Image, PngImagePlugin
logger = logging.getLogger(__name__)
async def get_full_prompt(simple_prompt: str, bot, chat_history):
ai_name = "### Assistant" # bot.name
user_name = "### Human" # bot.user_name
# https://github.com/ggerganov/llama.cpp/tree/master/examples
## prompt = "Below is an instruction that describes a task. Write a response that appropriately completes the request.\n"
# prompt = "A chat between a curious human and an artificial intelligence assistant. The assistant gives helpful, detailed, and polite answers to the human's questions.\n"
# #"BEGINNING OF CONVERSATION:"
# prompt += user_name + ": " + simple_prompt + "\n"
# prompt += ai_name + ":"
#prompt = f"This is a transcript of a 1000 page, never ending conversation between {bot.user_name} and the cute and helpful AI assistant {bot.name}. {bot.name} is a girl who is an AI running on the users computer.\n"
#prompt += f"{bot.name} can think for herself without the user seeing her thoughts by adding a /think prefix to her output. She uses this to reason about the world and to think about what she should say next.\n"
#prompt += f"{bot.name} is always coherent and makes sense, but if she isn't sure if what she is saying is correct she will ask the user for help.\n"
#prompt += f"{bot.name} is a very helpful AI and will help the user with anything they need, she is also very friendly and will try to make the user feel better if they are sad.\n"
#prompt += f"{bot.name} is also very curious and will ask the user a lot of questions about themselves and their life, she will also try to make the user like her.\n"
#prompt += f"\n"
prompt = f"Below is an instruction that describes a task, paired with an input that provides further context. Write a response that appropriately completes the request.\n\n"
prompt += f"### Instruction:\nGiven the following character description and scenario, write a script for a dialogue between the human user {bot.user_name} and the fictional AI assistant {bot.name}. Play the role of the character {bot.name}\n\n"
prompt += "### Input:\n"
prompt += bot.name + "'s Persona: " + bot.get_persona() + "\n"
prompt += "Scenario: " + bot.get_scenario() + "\n\n"
prompt += "### Response:\n"
for dialogue_item in bot.get_example_dialogue():
#prompt += "<START>" + "\n"
dialogue_item = dialogue_item.replace('{{user}}', user_name)
dialogue_item = dialogue_item.replace('{{char}}', ai_name)
prompt += dialogue_item + "\n\n"
prompt += "<START>" + "\n"
#prompt += f"{ai_name}: {bot.greeting}\n"
#prompt += f"{user_name}: {simple_prompt}\n"
#prompt += f"{ai_name}:"
MAX_TOKENS = 2048
WINDOW = 600
max_new_tokens = 200
total_num_tokens = await num_tokens(prompt)
input_num_tokens = await num_tokens(f"{user_name}: {simple_prompt}\n{ai_name}:")
total_num_tokens += input_num_tokens
visible_history = []
num_message = 0
for key, chat_item in reversed(chat_history.chat_history.items()):
num_message += 1
if num_message == 1:
# skip current_message
continue
if chat_item.stop_here:
break
if chat_item.message["en"].startswith('!begin'):
break
if chat_item.message["en"].startswith('!'):
continue
if chat_item.message["en"].startswith('<ERROR>'):
continue
#if chat_item.message["en"] == bot.greeting:
# continue
if chat_item.num_tokens == None:
chat_history.chat_history[key].num_tokens = await num_tokens("{}: {}".format(user_name, chat_item.message["en"]))
chat_item = chat_history.chat_history[key]
# TODO: is it MAX_TOKENS or MAX_TOKENS - max_new_tokens??
logger.debug(f"History: " + str(chat_item) + " [" + str(chat_item.num_tokens) + "]")
if total_num_tokens + chat_item.num_tokens <= MAX_TOKENS - WINDOW - max_new_tokens:
visible_history.append(chat_item)
total_num_tokens += chat_item.num_tokens
else:
break
visible_history = reversed(visible_history)
if not hasattr(bot, "greeting_num_tokens"):
bot.greeting_num_tokens = await num_tokens(bot.greeting)
if total_num_tokens + bot.greeting_num_tokens <= MAX_TOKENS - WINDOW - max_new_tokens:
prompt += f"{ai_name}: {bot.greeting}\n"
total_num_tokens += bot.greeting_num_tokens
for chat_item in visible_history:
if chat_item.is_own_message:
line = f"{ai_name}: {chat_item.message['en']}\n"
else:
line = f"{user_name}: {chat_item.message['en']}\n"
prompt += line
if chat_history.getSavedPrompt() and not chat_item.is_in_saved_prompt:
logger.info(f"adding to saved prompt: \"line\"")
chat_history.setSavedPrompt( chat_history.getSavedPrompt() + line, chat_history.saved_context_num_tokens + chat_item.num_tokens )
chat_item.is_in_saved_prompt = True
if chat_history.saved_context_num_tokens:
logger.info(f"saved_context has {chat_history.saved_context_num_tokens+input_num_tokens} tokens. new context would be {total_num_tokens}. Limit is {MAX_TOKENS}")
if chat_history.getSavedPrompt():
if chat_history.saved_context_num_tokens+input_num_tokens > MAX_TOKENS - max_new_tokens:
chat_history.setFastForward(False)
if chat_history.getFastForward():
logger.info("using saved prompt")
prompt = chat_history.getSavedPrompt()
if not chat_history.getSavedPrompt() or not chat_history.getFastForward():
logger.info("regenerating prompt")
chat_history.setSavedPrompt(prompt, total_num_tokens)
for key, chat_item in chat_history.chat_history.items():
if key != list(chat_history.chat_history)[-1]: # exclude current item
chat_history.chat_history[key].is_in_saved_prompt = True
chat_history.setFastForward(True)
prompt += f"{user_name}: {simple_prompt}\n"
prompt += f"{ai_name}:"
return prompt
async def num_tokens(input_text: str):
return await estimate_num_tokens(input_text)
async def estimate_num_tokens(input_text: str):
return len(input_text)//4+1