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import pydantic
module_file_path = pydantic.__file__

module_file_path = module_file_path.split('pydantic')[0] + 'haystack'

import os
import fileinput


def replace_string_in_files(folder_path, old_str, new_str):
    for subdir, dirs, files in os.walk(folder_path):
        for file in files:
            file_path = os.path.join(subdir, file)

            # Check if the file is a text file (you can modify this condition based on your needs)
            if file.endswith(".txt") or file.endswith(".py"):
                # Open the file in place for editing
                with fileinput.FileInput(file_path, inplace=True) as f:
                    for line in f:
                        # Replace the old string with the new string
                        print(line.replace(old_str, new_str), end='')

with open('change_log.txt','r') as f:
    status = f.readlines()

if status[-1] != 'changed':                      
    replace_string_in_files(module_file_path, 'from pydantic', 'from pydantic.v1')
    with open('change_log.txt','w'):
        f.write('changed')




from operator import index
import streamlit as st
import logging
import os

from annotated_text import annotation
from json import JSONDecodeError
from markdown import markdown
from utils.config import parser
from utils.haystack import start_document_store, query, initialize_pipeline, start_preprocessor_node, start_retriever, start_reader
from utils.ui import reset_results, set_initial_state
import pandas as pd
import haystack


# Whether the file upload should be enabled or not
DISABLE_FILE_UPLOAD = bool(os.getenv("DISABLE_FILE_UPLOAD"))
# Define a function to handle file uploads
def upload_files():
    uploaded_files = st.sidebar.file_uploader(
            "upload", type=["pdf", "txt", "docx"], accept_multiple_files=True, label_visibility="hidden"
        )
    return uploaded_files

# Define a function to process a single file

def process_file(data_file, preprocesor, document_store):
    # read file and add content
    file_contents = data_file.read().decode("utf-8")
    docs = [{
        'content': str(file_contents),
        'meta': {'name': str(data_file.name)}
    }]
    try:
        names = [item.meta.get('name') for item in document_store.get_all_documents()]
        #if args.store == 'inmemory':
        # doc = converter.convert(file_path=files, meta=None)
        if data_file.name in names:
            print(f"{data_file.name} already processed")
        else:
            print(f'preprocessing uploaded doc {data_file.name}.......')
            #print(data_file.read().decode("utf-8"))
            preprocessed_docs = preprocesor.process(docs)
            print('writing to document store.......')
            document_store.write_documents(preprocessed_docs)
            print('updating emebdding.......')
            document_store.update_embeddings(retriever)
    except Exception as e:
        print(e)

try:
    args = parser.parse_args()
    preprocesor = start_preprocessor_node()
    document_store = start_document_store(type=args.store)
    retriever = start_retriever(document_store)
    reader = start_reader()
    st.set_page_config(
        page_title="MLReplySearch",
        layout="centered",
        page_icon=":shark:",
        menu_items={
            'Get Help': 'https://www.extremelycoolapp.com/help',
            'Report a bug': "https://www.extremelycoolapp.com/bug",
            'About': "# This is a header. This is an *extremely* cool app!"
        }
    )
    st.sidebar.image("ml_logo.png", use_column_width=True)

    # Sidebar for Task Selection
    st.sidebar.header('Options:')

    # OpenAI Key Input
    openai_key = st.sidebar.text_input("Enter OpenAI Key:", type="password")

    if openai_key:
        task_options = ['Extractive', 'Generative']
    else:
        task_options = ['Extractive']

    task_selection = st.sidebar.radio('Select the task:', task_options)

    # Check the task and initialize pipeline accordingly
    if task_selection == 'Extractive':
        pipeline_extractive = initialize_pipeline("extractive", document_store, retriever, reader)
    elif task_selection == 'Generative' and openai_key:  # Check for openai_key to ensure user has entered it
        pipeline_rag = initialize_pipeline("rag", document_store, retriever, reader, openai_key=openai_key)


    set_initial_state()

    st.write('# ' + args.name)


    # File upload block
    if not DISABLE_FILE_UPLOAD:
        st.sidebar.write("## File Upload:")
        #data_files = st.sidebar.file_uploader(
        #    "upload", type=["pdf", "txt", "docx"], accept_multiple_files=True, label_visibility="hidden"
        #)
        data_files = upload_files()
        if data_files is not None:
            for data_file in data_files:
                # Upload file
                if data_file:
                    try:
                        #raw_json = upload_doc(data_file)
                        # Call the process_file function for each uploaded file
                        if args.store == 'inmemory':
                            processed_data = process_file(data_file, preprocesor, document_store)
                        st.sidebar.write(str(data_file.name) + "    βœ… ")
                    except Exception as e:
                        st.sidebar.write(str(data_file.name) + "    ❌ ")
                        st.sidebar.write("_This file could not be parsed, see the logs for more information._")

    if "question" not in st.session_state:
        st.session_state.question = ""
    # Search bar
    question = st.text_input("", value=st.session_state.question, max_chars=100, on_change=reset_results)

    run_pressed = st.button("Run")

    run_query = (
        run_pressed or question != st.session_state.question #or task_selection != st.session_state.task
    )

    # Get results for query
    if run_query and question:
        if task_selection == 'Extractive':
            reset_results()
            st.session_state.question = question
            with st.spinner("πŸ”Ž    Running your pipeline"):
                try:
                    st.session_state.results_extractive = query(pipeline_extractive, question)
                    st.session_state.task = task_selection
                except JSONDecodeError as je:
                    st.error(
                        "πŸ‘“    An error occurred reading the results. Is the document store working?"
                    )
                except Exception as e:
                    logging.exception(e)
                    st.error("🐞    An error occurred during the request.")

        elif task_selection == 'Generative':
            reset_results()
            st.session_state.question = question
            with st.spinner("πŸ”Ž    Running your pipeline"):
                try:
                    st.session_state.results_generative = query(pipeline_rag, question)
                    st.session_state.task = task_selection
                except JSONDecodeError as je:
                    st.error(
                        "πŸ‘“    An error occurred reading the results. Is the document store working?"
                    )
                except Exception as e:
                    if "API key is invalid" in str(e):
                        logging.exception(e)
                        st.error("🐞    incorrect API key provided. You can find your API key at https://platform.openai.com/account/api-keys.")
                    else:
                        logging.exception(e)
                        st.error("🐞    An error occurred during the request.")
    # Display results
    if (st.session_state.results_extractive or st.session_state.results_generative) and run_query:

        # Handle Extractive Answers
        if task_selection == 'Extractive':
            results = st.session_state.results_extractive

            st.subheader("Extracted Answers:")

            if 'answers' in results:
                answers = results['answers']
                treshold = 0.2
                higher_then_treshold = any(ans.score > treshold for ans in answers)
                if not higher_then_treshold:
                    st.markdown(f"<span style='color:red'>Please note none of the answers achieved a score higher then {int(treshold) * 100}%. Which probably means that the desired answer is not in the searched documents.</span>", unsafe_allow_html=True)
                for count, answer in enumerate(answers):
                    if answer.answer:
                        text, context = answer.answer, answer.context
                        start_idx = context.find(text)
                        end_idx = start_idx + len(text)
                        score = round(answer.score, 3)
                        st.markdown(f"**Answer {count + 1}:**")
                        st.markdown(
                            context[:start_idx] + str(annotation(body=text, label=f'SCORE {score}', background='#964448', color='#ffffff')) + context[end_idx:],
                            unsafe_allow_html=True,
                        )
                    else:
                        st.info(
                            "πŸ€” &nbsp;&nbsp; Haystack is unsure whether any of the documents contain an answer to your question. Try to reformulate it!"
                        )

        # Handle Generative Answers
        elif task_selection == 'Generative':
            results = st.session_state.results_generative
            st.subheader("Generated Answer:")
            if 'results' in results:
                st.markdown("**Answer:**")
                st.write(results['results'][0])

        # Handle Retrieved Documents
        if 'documents' in results:
            retrieved_documents = results['documents']
            st.subheader("Retriever Results:")

            data = []
            for i, document in enumerate(retrieved_documents):
                # Truncate the content
                truncated_content = (document.content[:150] + '...') if len(document.content) > 150 else document.content
                data.append([i + 1, document.meta['name'], truncated_content])

            # Convert data to DataFrame and display using Streamlit
            df = pd.DataFrame(data, columns=['Ranked Context', 'Document Name', 'Content'])
            st.table(df)

except SystemExit as e:
    os._exit(e.code)