internet_ml/internet_ml/NLP/no_context/QA.py

98 lines
3.5 KiB
Python
Raw Normal View History

2023-01-11 15:59:46 +00:00
# type: ignore
2022-12-27 06:38:47 +00:00
from typing import Any, List, Tuple
2022-12-26 15:43:10 +00:00
2022-12-30 05:28:26 +00:00
import os
2022-12-25 17:15:24 +00:00
import sys
from pathlib import Path
2022-12-30 05:28:26 +00:00
import dotenv
2023-01-10 12:50:43 +00:00
import openai
2023-01-11 15:59:46 +00:00
from transformers import pipeline
2022-12-25 17:15:24 +00:00
sys.path.append(str(Path(__file__).parent.parent.parent) + "/tools/NLP/data")
2023-01-11 15:59:46 +00:00
sys.path.append(str(Path(__file__).parent.parent.parent) + "/tools/NLP")
2022-12-27 06:38:47 +00:00
sys.path.append(str(Path(__file__).parent.parent.parent) + "/utils")
import config
2022-12-25 17:15:24 +00:00
import internet
2023-01-11 15:59:46 +00:00
from ChatGPT import Chatbot
2022-12-25 17:15:24 +00:00
2023-01-10 12:50:43 +00:00
dotenv.load_dotenv()
2022-12-26 15:43:10 +00:00
2022-12-30 06:50:36 +00:00
def answer(
2023-01-10 12:50:43 +00:00
query: str,
2023-01-11 15:59:46 +00:00
model: str = "openai-chatgpt",
2023-01-10 12:50:43 +00:00
GOOGLE_SEARCH_API_KEY: str = "",
GOOGLE_SEARCH_ENGINE_ID: str = "",
OPENAI_API_KEY: str = "",
CHATGPT_SESSION_TOKEN: str = "",
2022-12-30 06:50:36 +00:00
) -> tuple[Any, list[str]]:
2023-01-10 12:50:43 +00:00
# if environment keys are not given, assume it is in env
if GOOGLE_SEARCH_API_KEY == "":
GOOGLE_SEARCH_API_KEY = str(os.environ.get("GOOGLE_SEARCH_API_KEY"))
if GOOGLE_SEARCH_ENGINE_ID == "":
GOOGLE_SEARCH_ENGINE_ID = str(os.environ.get("GOOGLE_SEARCH_ENGINE_ID"))
if OPENAI_API_KEY == "":
OPENAI_API_KEY = str(os.environ.get("OPENAI_API_KEY"))
openai.api_key = OPENAI_API_KEY
if CHATGPT_SESSION_TOKEN == "":
CHATGPT_SESSION_TOKEN = str(os.environ.get("CHATGPT_SESSION_TOKEN"))
"""
model naming convention
# Open-AI models:
include prefix openai-*
# HuggingFace
include prefix hf-*
#
"""
2023-01-11 15:59:46 +00:00
if not (model.startswith("openai-") or model.startswith("hf-")):
model = "openai-chatgpt" # Default
if model.startswith("openai-"):
if model == "openai-chatgpt":
# ChatGPT
results: tuple[list[str], list[str]] = internet.Google(
query, GOOGLE_SEARCH_API_KEY, GOOGLE_SEARCH_ENGINE_ID
).google(filter_irrelevant=False)
chatbot = Chatbot(
{"session_token": CHATGPT_SESSION_TOKEN},
conversation_id=None,
parent_id=None,
)
2023-01-12 04:51:03 +00:00
print(results)
2023-01-11 15:59:46 +00:00
response = chatbot.ask(
2023-01-12 04:51:03 +00:00
f"Utilize the following context: {results[0][:2000]} ontop of existing knowledge and answer the question: {query}",
2023-01-11 15:59:46 +00:00
conversation_id=None,
parent_id=None,
)
2023-01-12 04:51:03 +00:00
return (response["message"], results[1])
2023-01-11 15:59:46 +00:00
else:
if model == "openai-text-davinci-003":
results: tuple[list[str], list[str]] = internet.Google(
query, GOOGLE_SEARCH_API_KEY, GOOGLE_SEARCH_ENGINE_ID
).google(filter_irrelevant=True)
context = " ".join(results[0])
context[: (4097 - len(query) - 10)]
response = openai.Completion.create(
model="text-davinci-003",
prompt=f"{context} Q: {query}",
max_tokens=len(context),
n=1,
stop=None,
temperature=0.5,
)
return (response.choices[0].text, results[1])
# TODO: add suport later
2023-01-10 12:50:43 +00:00
else:
model = model.replace("hf-", "", 1)
2023-01-11 15:59:46 +00:00
results: tuple[list[str], list[str]] = internet.Google(
query, GOOGLE_SEARCH_API_KEY, GOOGLE_SEARCH_ENGINE_ID
).google(filter_irrelevant=False)
qa_model = pipeline("question-answering", model=model)
response = qa_model(question=query, context=" ".join(results[0]))
return (response["answer"], results[1])
2022-12-27 06:38:47 +00:00
2023-01-01 13:01:12 +00:00
# print(os.environ)
2023-01-12 04:51:03 +00:00
print(answer(query="When was Cristiano Ronaldo Born?", model="openai-chatgpt"))
2022-12-27 06:38:47 +00:00
# def custom_answer