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import re
from typing import ClassVar, Dict, List, Optional

import weave
from pydantic import BaseModel

from ...regex_model import RegexModel
from ..base import Guardrail


class RegexEntityRecognitionResponse(BaseModel):
    contains_entities: bool
    detected_entities: Dict[str, list[str]]
    explanation: str
    anonymized_text: Optional[str] = None

    @property
    def safe(self) -> bool:
        return not self.contains_entities


class RegexEntityRecognitionSimpleResponse(BaseModel):
    contains_entities: bool
    explanation: str
    anonymized_text: Optional[str] = None

    @property
    def safe(self) -> bool:
        return not self.contains_entities


class RegexEntityRecognitionGuardrail(Guardrail):
    regex_model: RegexModel
    patterns: Dict[str, str] = {}
    should_anonymize: bool = False

    DEFAULT_PATTERNS: ClassVar[Dict[str, str]] = {
        "EMAIL": r"\b[A-Za-z0-9._%+-]+@[A-Za-z0-9.-]+\.[A-Z|a-z]{2,}\b",
        "TELEPHONENUM": r"\b(\+\d{1,3}[-.]?)?\(?\d{3}\)?[-.]?\d{3}[-.]?\d{4}\b",
        "SOCIALNUM": r"\b\d{3}[-]?\d{2}[-]?\d{4}\b",
        "CREDITCARDNUMBER": r"\b\d{4}[-\s]?\d{4}[-\s]?\d{4}[-\s]?\d{4}\b",
        "DATEOFBIRTH": r"\b(0[1-9]|1[0-2])[-/](0[1-9]|[12]\d|3[01])[-/](19|20)\d{2}\b",
        "DRIVERLICENSENUM": r"[A-Z]\d{7}",  # Example pattern, adjust for your needs
        "ACCOUNTNUM": r"\b\d{10,12}\b",  # Example pattern for bank accounts
        "ZIPCODE": r"\b\d{5}(?:-\d{4})?\b",
        "GIVENNAME": r"\b[A-Z][a-z]+\b",  # Basic pattern for first names
        "SURNAME": r"\b[A-Z][a-z]+\b",  # Basic pattern for last names
        "CITY": r"\b[A-Z][a-z]+(?:[\s-][A-Z][a-z]+)*\b",
        "STREET": r"\b\d+\s+[A-Z][a-z]+\s+(?:Street|St|Avenue|Ave|Road|Rd|Boulevard|Blvd|Lane|Ln|Drive|Dr)\b",
        "IDCARDNUM": r"[A-Z]\d{7,8}",  # Generic pattern for ID cards
        "USERNAME": r"@[A-Za-z]\w{3,}",  # Basic username pattern
        "PASSWORD": r"[A-Za-z0-9@#$%^&+=]{8,}",  # Basic password pattern
        "TAXNUM": r"\b\d{2}[-]\d{7}\b",  # Example tax number pattern
        "BUILDINGNUM": r"\b\d+[A-Za-z]?\b",  # Basic building number pattern
    }

    def __init__(
        self,
        use_defaults: bool = True,
        should_anonymize: bool = False,
        show_available_entities: bool = False,
        **kwargs,
    ):
        patterns = {}
        if use_defaults:
            patterns = self.DEFAULT_PATTERNS.copy()
        if kwargs.get("patterns"):
            patterns.update(kwargs["patterns"])

        if show_available_entities:
            self._print_available_entities(patterns.keys())

        # Create the RegexModel instance
        regex_model = RegexModel(patterns=patterns)

        # Initialize the base class with both the regex_model and patterns
        super().__init__(
            regex_model=regex_model,
            patterns=patterns,
            should_anonymize=should_anonymize,
        )

    def text_to_pattern(self, text: str) -> str:
        """
        Convert input text into a regex pattern that matches the exact text.
        """
        # Escape special regex characters in the text
        escaped_text = re.escape(text)
        # Create a pattern that matches the exact text, case-insensitive
        return rf"\b{escaped_text}\b"

    def _print_available_entities(self, entities: List[str]):
        """Print available entities"""
        print("\nAvailable entity types:")
        print("=" * 25)
        for entity in entities:
            print(f"- {entity}")
        print("=" * 25 + "\n")

    @weave.op()
    def guard(
        self,
        prompt: str,
        custom_terms: Optional[list[str]] = None,
        return_detected_types: bool = True,
        aggregate_redaction: bool = True,
        **kwargs,
    ) -> RegexEntityRecognitionResponse | RegexEntityRecognitionSimpleResponse:
        """
        Check if the input prompt contains any entities based on the regex patterns.

        Args:
            prompt: Input text to check for entities
            custom_terms: List of custom terms to be converted into regex patterns. If provided,
                        only these terms will be checked, ignoring default patterns.
            return_detected_types: If True, returns detailed entity type information

        Returns:
            RegexEntityRecognitionResponse or RegexEntityRecognitionSimpleResponse containing detection results
        """
        if custom_terms:
            # Create a temporary RegexModel with only the custom patterns
            temp_patterns = {term: self.text_to_pattern(term) for term in custom_terms}
            temp_model = RegexModel(patterns=temp_patterns)
            result = temp_model.check(prompt)
        else:
            # Use the original regex_model if no custom terms provided
            result = self.regex_model.check(prompt)

        # Create detailed explanation
        explanation_parts = []
        if result.matched_patterns:
            explanation_parts.append("Found the following entities in the text:")
            for entity_type, matches in result.matched_patterns.items():
                explanation_parts.append(f"- {entity_type}: {len(matches)} instance(s)")
        else:
            explanation_parts.append("No entities detected in the text.")

        if result.failed_patterns:
            explanation_parts.append("\nChecked but did not find these entity types:")
            for pattern in result.failed_patterns:
                explanation_parts.append(f"- {pattern}")

        # Updated anonymization logic
        anonymized_text = None
        if getattr(self, "should_anonymize", False) and result.matched_patterns:
            anonymized_text = prompt
            for entity_type, matches in result.matched_patterns.items():
                for match in matches:
                    replacement = (
                        "[redacted]"
                        if aggregate_redaction
                        else f"[{entity_type.upper()}]"
                    )
                    anonymized_text = anonymized_text.replace(match, replacement)

        if return_detected_types:
            return RegexEntityRecognitionResponse(
                contains_entities=not result.passed,
                detected_entities=result.matched_patterns,
                explanation="\n".join(explanation_parts),
                anonymized_text=anonymized_text,
            )
        else:
            return RegexEntityRecognitionSimpleResponse(
                contains_entities=not result.passed,
                explanation="\n".join(explanation_parts),
                anonymized_text=anonymized_text,
            )

    @weave.op()
    def predict(
        self,
        prompt: str,
        return_detected_types: bool = True,
        aggregate_redaction: bool = True,
        **kwargs,
    ) -> RegexEntityRecognitionResponse | RegexEntityRecognitionSimpleResponse:
        return self.guard(
            prompt,
            return_detected_types=return_detected_types,
            aggregate_redaction=aggregate_redaction,
            **kwargs,
        )