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import json
import os
import pickle as pkl
import re
import shutil
import string
from collections import Counter
from pathlib import Path

import numpy as np
import torch

MAX_USER_QUERY_LEN = 80

# List of example queries for easy access
DEFAULT_QUERIES = {
    "Example Query 1": "Who visited microsoft.com on September 18?",
    "Example Query 2": "Does Kate have a driving licence?",
    "Example Query 3": "What's David Johnson's phone number?",
}


CURRENT_DIR = Path(__file__).parent

DATA_PATH = CURRENT_DIR / "files"
LOGREG_MODEL_PATH = CURRENT_DIR / "models" / "cml_logreg.model"
DEPLOYMENT_DIR = CURRENT_DIR / "deployment"
KEYS_DIR = DEPLOYMENT_DIR / ".fhe_keys"

ORIGINAL_FILE_PATH = DATA_PATH / "original_document.txt"
ANONYMIZED_FILE_PATH = DATA_PATH / "anonymized_document.txt"
MAPPING_UUID_PATH = DATA_PATH / "original_document_uuid_mapping.json"
MAPPING_SENTENCES_PATH = DATA_PATH / "mapping_clear_to_anonymized.pkl"
PROMPT_PATH = DATA_PATH / "chatgpt_prompt.txt"

ALL_DIRS = [KEYS_DIR]

PUNCTUATION_LIST = list(string.punctuation)
PUNCTUATION_LIST.remove("%")
PUNCTUATION_LIST.remove("$")
PUNCTUATION_LIST = "".join(PUNCTUATION_LIST)


def clean_directory() -> None:
    """Clear direcgtories"""

    print("Cleaning...\n")
    for target_dir in ALL_DIRS:
        if os.path.exists(target_dir) and os.path.isdir(target_dir):
            shutil.rmtree(target_dir)
        target_dir.mkdir(exist_ok=True, parents=True)


def get_batch_text_representation(texts, model, tokenizer, batch_size=1):
    """Get mean-pooled representations of given texts in batches."""
    mean_pooled_batch = []
    for i in range(0, len(texts), batch_size):
        batch_texts = texts[i : i + batch_size]
        inputs = tokenizer(batch_texts, return_tensors="pt", padding=True, truncation=True)
        with torch.no_grad():
            outputs = model(**inputs, output_hidden_states=False)
        last_hidden_states = outputs.last_hidden_state
        input_mask_expanded = (
            inputs["attention_mask"].unsqueeze(-1).expand(last_hidden_states.size()).float()
        )
        sum_embeddings = torch.sum(last_hidden_states * input_mask_expanded, 1)
        sum_mask = input_mask_expanded.sum(1)
        mean_pooled = sum_embeddings / sum_mask
        mean_pooled_batch.extend(mean_pooled.cpu().detach().numpy())
    return np.array(mean_pooled_batch)


def is_user_query_valid(user_query: str) -> bool:
    """
    Check if the `user_query` is None and not empty.
    Args:
        user_query (str): The input text to be checked.
    Returns:
        bool: True if the `user_query` is None or empty, False otherwise.
    """
    # If the query is not part of the default queries
    is_default_query = user_query in DEFAULT_QUERIES.values()

    # Check if the query exceeds the length limit
    is_exceeded_max_length = user_query is not None and len(user_query) <= MAX_USER_QUERY_LEN

    return not is_default_query and not is_exceeded_max_length


def compare_texts_ignoring_extra_spaces(original_text, modified_text):
    """Check if the modified_text is identical to the original_text except for additional spaces.

    Args:
        original_text (str): The original text for comparison.
        modified_text (str): The modified text to compare against the original.

    Returns:
        (bool): True if the modified_text is the same as the original_text except for
            additional spaces; False otherwise.
    """
    normalized_original = " ".join(original_text.split())
    normalized_modified = " ".join(modified_text.split())

    return normalized_original == normalized_modified


def is_strict_deletion_only(original_text, modified_text):

    # Define a regex pattern that matches a word character next to a punctuation
    # or a punctuation next to a word character, without a space between them.
    pattern = r"(?<=[\w])(?=[^\w\s])|(?<=[^\w\s])(?=[\w])"

    # Replace instances found by the pattern with a space
    original_text = re.sub(pattern, " ", original_text)
    modified_text = re.sub(pattern, " ", modified_text)

    # Tokenize the texts into words, considering also punctuation
    original_words = Counter(original_text.lower().split())
    modified_words = Counter(modified_text.lower().split())

    base_words = all(item in original_words.keys() for item in modified_words.keys())
    base_count = all(original_words[k] >= v for k, v in modified_words.items())

    return base_words and base_count


def read_txt(file_path):
    """Read text from a file."""
    with open(file_path, "r", encoding="utf-8") as file:
        return file.read()


def write_txt(file_path, data):
    """Write text to a file."""
    with open(file_path, "w", encoding="utf-8") as file:
        file.write(data)


def write_pickle(file_path, data):
    """Save data to a pickle file."""
    with open(file_path, "wb") as f:
        pkl.dump(data, f)


def read_pickle(file_name):
    """Load data from a pickle file."""
    with open(file_name, "rb") as file:
        return pkl.load(file)


def read_json(file_name):
    """Load data from a json file."""
    with open(file_name, "r") as file:
        return json.load(file)


def write_json(file_name, data):
    """Save data to a json file."""
    with open(file_name, "w", encoding="utf-8") as file:
        json.dump(data, file, indent=4, sort_keys=True)