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import sqlite3 | |
from sqlite3 import Error | |
from PyPDF2 import PdfReader | |
from transformers import AutoTokenizer, AutoModelForCausalLM, BitsAndBytesConfig, pipeline | |
import os | |
import torch | |
from huggingface_hub import login | |
import ast | |
from openai import OpenAI | |
import google.generativeai as genai | |
class QAInfer: | |
def __init__(self): | |
torch.cuda.empty_cache() | |
# self.chatgpt_client = OpenAI(api_key="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") | |
self.chatgpt_client = OpenAI(api_key="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") | |
self.genai = genai | |
self.genai.configure(api_key="AIzaSyAFG94rVbm9eWepO5uPGsMha8XJ-sHbMdA") | |
self.genai_model = genai.GenerativeModel('gemini-pro') | |
def extract_text_from_pdf(self, pdf_path): | |
"""Extract text from a PDF file.""" | |
reader = PdfReader(pdf_path) | |
text = '' | |
for page in reader.pages: | |
text += page.extract_text() | |
return text | |
def qa_infer(self, query, rows, col): | |
"""QA inference function.""" | |
print(query) | |
print(tuple(col)) | |
file_index = -1 | |
if "additional_info" not in col: | |
pass | |
else: | |
file_index = [i for i in range(len(col)) if col[i] == "additional_info"][0] | |
initiate_qa = input("\nDo you wish to ask questions about the properties [y/n]?: ").lower() | |
if initiate_qa in ['y', 'yes']: | |
for row in rows: | |
pdf_text = self.extract_text_from_pdf(row[file_index]) | |
print("Extracted text from PDF", os.path.basename(row[file_index])) | |
while True: | |
user_question = input("\nWhat do you want to know about this property? (Press Enter to exit): ").strip() | |
if not user_question: | |
break | |
# Construct QA prompt directly here | |
question = user_question if user_question else "Who is lashkar e taiba" | |
prompt = f"""Below is a question and context, search the context to find the answer for the question and return the response ###question:{question} ###context:{pdf_text} ###response:""" | |
# Run the language model to generate a response | |
inputs = self.qa_tokenizer(prompt, return_tensors='pt', truncation=True, max_length=512) | |
pipe = pipeline( | |
"text-generation", | |
model=self.qa_model, | |
tokenizer=self.qa_tokenizer, | |
torch_dtype=torch.bfloat16, | |
device_map="auto" | |
) | |
sequences = pipe( | |
prompt, | |
do_sample=True, | |
max_new_tokens=200, | |
temperature=0.7, | |
top_k=50, | |
top_p=0.95, | |
num_return_sequences=1, | |
) | |
answer = sequences[0]['generated_text'] | |
print("Answer:", answer) | |
else: | |
continue_to_next = input("Do you want to continue with the next property? [y/n]: ").lower() | |
if continue_to_next != 'y': | |
return | |
def qa_infer_interface(self, row, query_question): | |
"""This method is used for gradio interface only""" | |
file_path = row[-1] # Assuming the last element in row contains the PDF file path | |
pdf_text = self.extract_text_from_pdf(file_path) | |
# prompt = f"""Below is a question and context, search the context to find the answer for the question and return the response , if related answer cannot be found return "Answer not in the context" ###question:{query_question} ###context:{pdf_text} ###response:""" | |
prompt = f"""You have been provided with a question and a corresponding context. Your task is to search the context to find the answer to the question. If the answer is found, return the response. If the answer cannot be found in the context, please respond with "Answer not found in the context". | |
=== Question === | |
{query_question} | |
=== Context === | |
{pdf_text} | |
=== Response === | |
Try mostly to answer from given pdf , if related answer is not found return 'Information not present in the pdf' and below it provide something related to the question .Note: return only answer dont include terms like 'Response','###','Answer'""" | |
print(prompt) | |
completion = self.chatgpt_client.chat.completions.create( | |
model="gpt-3.5-turbo", | |
messages=[ | |
{"role": "system", "content": "You are a expert PDF parser , go through the pdf and answer the question properly , if related answer is not found return 'Information not present in the pdf' and below it provide something related to the question"}, | |
{"role": "user", "content": prompt } | |
] | |
) | |
return completion.choices[0].message.content | |
def qa_infer_interface_gemini(self, row, query_question): | |
"""This method is used for gradio interface only""" | |
file_path = row[-1] # Assuming the last element in row contains the PDF file path | |
pdf_text = self.extract_text_from_pdf(file_path) | |
# prompt = f"""Below is a question and context, search the context to find the answer for the question and return the response , if related answer cannot be found return "Answer not in the context" ###question:{query_question} ###context:{pdf_text} ###response:""" | |
prompt = f"""You have been provided with a question and a corresponding context. Your task is to search the context to find the answer to the question. If the answer is found, return the response. If the answer cannot be found in the context, please respond with "Answer not found in the context". | |
=== Question === | |
{query_question} | |
=== Context === | |
{pdf_text} | |
=== Response === | |
If related answer is not found return 'Information not present in the pdf' and below it provide something related to the question""" | |
print(prompt) | |
completion = self.genai_model.generate_content(prompt) | |
generated_answer=completion.text | |
return generated_answer | |
if __name__ == '__main__': | |
qa_infer = QAInfer() | |
query = 'SELECT * FROM sql_pdf WHERE country = "India" ' | |
rows = [ | |
(3, 'Taj Mahal Palace', 455, 76, 0.15, 'Mumbai', 'India', 795, 748, 67000, 'pdf_files/pdf/Taj_Mahal_palace.pdf'), | |
(6, 'Antilia', 455, 70, 0.46, 'Mumbai', 'India', 612, 2520, 179000, 'pdf_files/pdf/Antilia.pdf') | |
] | |
col = [ | |
"property_id", "name", "bed", "bath", "acre_lot", "city", "country", | |
"zip_code", "house_size", "price", "additional_info" | |
] | |
qa_infer.qa_infer(query, rows, col) | |