Add AI rules support for document processing and matching; enhance tax analysis with flag_for_review and auto_approve fields
This commit is contained in:
+36
-3
@@ -378,8 +378,11 @@ async def process_document(
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This endpoint uses AI to extract structured data from receipt images,
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including vendor, amount, date, and category information.
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Optionally accepts user_location to guide tax calculations and depreciation
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based on the user's location (format: "State/Province, Country" e.g., "Ontario, Canada").
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Optionally accepts:
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- user_location: Guide tax calculations and depreciation based on location
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(format: "State/Province, Country" e.g., "Ontario, Canada")
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- ai_rules: Custom categorization rules to override default logic
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(e.g., [{"condition": "vendor is Starbucks", "action": "Food"}])
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"""
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try:
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# Get file info from database
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@@ -387,11 +390,20 @@ async def process_document(
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if not db_uploaded_file:
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raise HTTPException(status_code=404, detail=f"File {file_id} not found")
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# Convert ai_rules from Pydantic models to dictionaries if provided
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ai_rules_list = None
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if request.ai_rules:
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ai_rules_list = [
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{"condition": rule.condition, "action": rule.action}
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for rule in request.ai_rules
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]
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# Process the file using the stored file path
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receipt_data = await document_processor.process_file(
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db_uploaded_file.file_path,
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db_uploaded_file.file_type,
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user_location=request.user_location,
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ai_rules=ai_rules_list,
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)
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# Parse date for database storage
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@@ -570,9 +582,21 @@ async def match_specific_receipts(request: MatchSpecificRequest, db: db_dependen
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else:
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logger.info(f"Using default/provided user_location: {user_location}")
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# Convert ai_rules from Pydantic models to dictionaries if provided
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ai_rules_list = None
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if request.ai_rules:
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ai_rules_list = [
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{"condition": rule.condition, "action": rule.action}
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for rule in request.ai_rules
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]
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logger.info(f"Applying {len(ai_rules_list)} custom AI rules to matching")
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try:
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matching_results = matching_engine.process_matching(
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receipts, transactions, user_location=user_location
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receipts,
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transactions,
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user_location=user_location,
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ai_rules=ai_rules_list,
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)
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logger.info(f"Matching completed, got {len(matching_results)} results")
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@@ -584,6 +608,13 @@ async def match_specific_receipts(request: MatchSpecificRequest, db: db_dependen
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# if result.tax_analysis and "final_tax_amount" in result.tax_analysis:
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# final_tax = result.tax_analysis["final_tax_amount"]
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# Extract flag_for_review and auto_approve from tax_analysis if available
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flag_for_review = None
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auto_approve = None
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if result.tax_analysis:
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flag_for_review = result.tax_analysis.get("flag_for_review")
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auto_approve = result.tax_analysis.get("auto_approve")
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match_response = MatchResponse(
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receipt_id=result.receipt.id,
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transaction_id=result.transaction.id
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@@ -603,6 +634,8 @@ async def match_specific_receipts(request: MatchSpecificRequest, db: db_dependen
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if result.transaction
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else 0.0,
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tax_analysis=result.tax_analysis,
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flag_for_review=flag_for_review,
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auto_approve=auto_approve,
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)
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match_responses.append(match_response)
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@@ -132,6 +132,8 @@ class MatchResponse(BaseModel):
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transaction_vendor: str
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transaction_amount: float
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tax_analysis: Optional[dict] = None
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flag_for_review: Optional[bool] = None
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auto_approve: Optional[bool] = None
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class MatchingResponse(BaseModel):
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@@ -160,11 +162,17 @@ class DocumentUploadResponse(BaseModel):
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status: str
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class AIRules(BaseModel):
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condition: str
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action: str
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class DocumentProcessRequest(BaseModel):
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file_id: Optional[str] = None
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user_location: Optional[str] = (
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None # Format: "State/Province, Country" (e.g., "Ontario, Canada")
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)
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ai_rules: Optional[List[AIRules]] = None
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class DocumentProcessResponse(BaseModel):
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@@ -292,3 +300,4 @@ class MatchSpecificRequest(BaseModel):
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categorization_id: str
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user_location: Optional[str] = "Canada" # Kept for backward compatibility
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user_tax_info: Optional[UserTaxInfo] = None
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ai_rules: Optional[List[AIRules]] = None
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@@ -0,0 +1,273 @@
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import json
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import logging
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from typing import Dict, List, Optional
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import groq
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from config import settings
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from schemas import Match
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logger = logging.getLogger(__name__)
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class AIRulesMatcher:
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"""
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AI-powered rules engine for post-matching evaluation.
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Uses LLM to intelligently apply custom rules and determine if matches should be:
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- Flagged for manual review (flag_for_review=True)
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- Auto-approved (auto_approve=True)
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"""
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def __init__(self):
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self.client = groq.Groq(api_key=settings.GROQ_API_KEY)
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self.model = "llama-3.1-8b-instant"
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def apply_rules_to_matches(
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self, matches: List[Match], ai_rules: Optional[List[Dict]] = None
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) -> List[Match]:
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"""
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Apply AI rules to all matches and add flag_for_review and auto_approve fields.
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Args:
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matches: List of Match objects from the matching engine
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ai_rules: Optional list of custom rules (format: [{"condition": str, "action": str}])
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Returns:
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Enhanced matches with tax_analysis containing flag_for_review and auto_approve
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"""
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if not matches:
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return matches
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logger.info(
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f"Applying AI rules to {len(matches)} matches with {len(ai_rules) if ai_rules else 0} custom rules"
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)
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# Built-in rule: currency mismatch should always flag for review
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builtin_rules = [
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{
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"condition": "receipt currency differs from transaction currency",
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"action": "flag_for_review",
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}
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]
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# Combine built-in rules with user-provided rules
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all_rules = builtin_rules + (ai_rules if ai_rules else [])
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# Process each match
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for match in matches:
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try:
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rule_evaluation = self._evaluate_rules_for_match(match, all_rules)
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# Initialize or update tax_analysis
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if match.tax_analysis is None:
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match.tax_analysis = {}
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# Add rule evaluation results
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match.tax_analysis["flag_for_review"] = rule_evaluation[
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"flag_for_review"
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]
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match.tax_analysis["auto_approve"] = rule_evaluation["auto_approve"]
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match.tax_analysis["rules_applied"] = rule_evaluation["rules_applied"]
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match.tax_analysis["rule_reasons"] = rule_evaluation["reasons"]
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# Update match reason with rule information
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if rule_evaluation["flag_for_review"]:
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match.match_reason += " | 🚩 FLAGGED FOR REVIEW"
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if rule_evaluation["auto_approve"]:
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match.match_reason += " | ✅ AUTO-APPROVED"
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logger.info(
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f"Match {match.receipt.id} → {match.transaction.id}: "
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f"flag_for_review={rule_evaluation['flag_for_review']}, "
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f"auto_approve={rule_evaluation['auto_approve']}"
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)
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except Exception as e:
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logger.error(f"Error applying rules to match: {str(e)}")
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# Fail safe: flag for review if rule processing fails
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if match.tax_analysis is None:
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match.tax_analysis = {}
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match.tax_analysis["flag_for_review"] = True
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match.tax_analysis["auto_approve"] = False
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match.tax_analysis["rule_reasons"] = [
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f"Rule evaluation error: {str(e)}"
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]
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return matches
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def _evaluate_rules_for_match(
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self, match: Match, rules: List[Dict]
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) -> Dict[str, any]:
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"""
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Use LLM to evaluate all rules for a single match.
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Returns:
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{
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"flag_for_review": bool,
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"auto_approve": bool,
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"rules_applied": List[str],
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"reasons": List[str]
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}
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"""
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# Build context about the match
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match_context = self._build_match_context(match)
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# Build rules context
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rules_context = self._build_rules_context(rules)
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# Create prompt for LLM
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prompt = f"""You are a financial matching rules engine. Analyze the following receipt-to-transaction match and apply the specified rules.
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MATCH DETAILS:
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{match_context}
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RULES TO APPLY:
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{rules_context}
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INSTRUCTIONS:
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1. Evaluate each rule's condition against the match details
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2. If a rule's condition is TRUE, apply the action:
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- If action is "flag_for_review" or "review" → set flag_for_review = true
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- If action is "auto_approve" or "approve" → set auto_approve = true
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- For other actions, determine if they imply review or approval
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3. If BOTH flag_for_review and auto_approve are triggered, flag_for_review takes priority
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4. If NO rules match, set both to false (default behavior)
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IMPORTANT BUILT-IN RULE:
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- If receipt currency differs from transaction currency → ALWAYS set flag_for_review = true
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Return ONLY a valid JSON object with this exact format:
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{{
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"flag_for_review": boolean,
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"auto_approve": boolean,
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"rules_applied": ["list of rule conditions that matched"],
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"reasons": ["list of reasons for the decisions"]
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}}
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"""
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try:
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# Call LLM
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response = self.client.chat.completions.create(
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model=self.model,
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messages=[
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{
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"role": "system",
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"content": "You are a financial rules evaluation assistant. You analyze transaction matches and apply business rules. Always respond with valid JSON only.",
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},
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{"role": "user", "content": prompt},
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],
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temperature=0.1,
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max_tokens=500,
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)
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result_text = response.choices[0].message.content.strip()
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# Parse JSON response
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result = self._parse_llm_response(result_text)
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# Validate and enforce constraints
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if result["flag_for_review"] and result["auto_approve"]:
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logger.warning(
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"Both flag_for_review and auto_approve were true, prioritizing flag_for_review"
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)
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result["auto_approve"] = False
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result["reasons"].append(
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"Conflicting rules: prioritized manual review over auto-approval"
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)
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return result
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except Exception as e:
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logger.error(f"LLM evaluation failed: {str(e)}")
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# Fail safe: flag for review
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return {
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"flag_for_review": True,
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"auto_approve": False,
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"rules_applied": [],
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"reasons": [f"Error evaluating rules: {str(e)}"],
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}
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def _build_match_context(self, match: Match) -> str:
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"""Build a text description of the match for the LLM"""
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receipt = match.receipt
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transaction = match.transaction
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context = f"""Receipt Information:
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- ID: {receipt.id}
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- Vendor: {receipt.vendor}
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- Amount: ${receipt.amount:.2f}
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- Tax: ${receipt.tax:.2f}
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- Category: {receipt.category}
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- Description: {receipt.description}
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- Date: {receipt.receipt_date}
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- Currency: {receipt.currency}
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Transaction Information:
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- ID: {transaction.id}
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- Vendor: {transaction.vendor}
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- Amount: ${transaction.amount:.2f}
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- Date: {transaction.transaction_date}
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- Notes: {transaction.notes}
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- Currency: {transaction.currency}
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Match Quality:
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- Confidence Score: {match.confidence_score:.2%}
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- Match Reason: {match.match_reason}
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"""
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# Add tax analysis if available
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if match.tax_analysis:
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context += f"\nTax Analysis:\n{json.dumps(match.tax_analysis, indent=2)}"
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return context
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def _build_rules_context(self, rules: List[Dict]) -> str:
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"""Build a formatted list of rules for the LLM"""
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if not rules:
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return "No custom rules provided. Apply default evaluation."
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rules_text = ""
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for idx, rule in enumerate(rules, 1):
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condition = rule.get("condition", "")
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action = rule.get("action", "")
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rules_text += f"{idx}. IF {condition} → THEN {action}\n"
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return rules_text
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def _parse_llm_response(self, response_text: str) -> Dict:
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"""Parse and validate LLM JSON response"""
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try:
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# Remove markdown code blocks if present
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if "```json" in response_text:
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response_text = response_text.split("```json")[1].split("```")[0]
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elif "```" in response_text:
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response_text = response_text.split("```")[1].split("```")[0]
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# Parse JSON
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result = json.loads(response_text.strip())
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# Validate required fields
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if "flag_for_review" not in result:
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result["flag_for_review"] = False
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if "auto_approve" not in result:
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result["auto_approve"] = False
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if "rules_applied" not in result:
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result["rules_applied"] = []
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if "reasons" not in result:
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result["reasons"] = []
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# Ensure boolean types
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result["flag_for_review"] = bool(result["flag_for_review"])
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result["auto_approve"] = bool(result["auto_approve"])
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return result
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except json.JSONDecodeError as e:
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logger.error(f"Failed to parse LLM response as JSON: {str(e)}")
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logger.error(f"Response text: {response_text}")
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# Return safe defaults
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return {
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"flag_for_review": True, # Fail safe to manual review
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"auto_approve": False,
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"rules_applied": [],
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"reasons": ["Failed to parse LLM response"],
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}
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@@ -18,7 +18,11 @@ class DocumentProcessor:
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self.model = "meta-llama/llama-4-scout-17b-16e-instruct" # Vision model
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async def process_file(
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self, file_path: str, file_type: str, user_location: str = None
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self,
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file_path: str,
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file_type: str,
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user_location: str = None,
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ai_rules: list = None,
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) -> Dict[str, Any]:
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"""Process uploaded file and extract receipt data
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@@ -26,25 +30,27 @@ class DocumentProcessor:
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file_path: Path to the file to process
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file_type: Type of file (jpg, pdf, etc.)
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user_location: User's location string in format "State/Province, Country" (e.g., "Ontario, Canada")
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ai_rules: List of AI rules for categorization (e.g., [{"condition": "vendor is Starbucks", "action": "Food"}])
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"""
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try:
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if file_type.lower() in ["jpg", "jpeg", "png", "gif", "bmp"]:
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return await self._process_image(file_path, user_location)
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return await self._process_image(file_path, user_location, ai_rules)
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elif file_type.lower() == "pdf":
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return await self._process_pdf(file_path, user_location)
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return await self._process_pdf(file_path, user_location, ai_rules)
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else:
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raise ValueError(f"Unsupported file type: {file_type}")
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except Exception as e:
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return {"error": str(e)}
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async def _process_image(
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self, image_path: str, user_location: str = None
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self, image_path: str, user_location: str = None, ai_rules: list = None
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) -> Dict[str, Any]:
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"""Extract data from image using Groq vision
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Args:
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image_path: Path to the image file
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user_location: User's location string in format "State/Province, Country" (e.g., "Ontario, Canada")
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ai_rules: List of AI rules for categorization
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"""
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try:
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# Encode image to base64
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@@ -62,6 +68,16 @@ class DocumentProcessor:
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- Apply depreciation rules based on the user's location.
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"""
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# Build AI rules context for categorization
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ai_rules_context = ""
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if ai_rules and len(ai_rules) > 0:
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ai_rules_context = "\n CATEGORIZATION RULES (IMPORTANT - Apply these first):"
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for idx, rule in enumerate(ai_rules, 1):
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condition = rule.get("condition", "")
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action = rule.get("action", "")
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ai_rules_context += f"\n {idx}. If {condition} → set category to '{action}'"
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ai_rules_context += "\n - Apply these custom rules before using default categorization logic\n - If multiple rules match, use the first matching rule\n - If no rules match, use default categorization based on vendor type"
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# Create Groq vision prompt
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prompt = f"""
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Analyze this receipt image and extract the following information in JSON format:
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@@ -89,9 +105,9 @@ class DocumentProcessor:
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- Total amount should be the final total including tax
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- Tax amount is separate tax line if available (if not clearly shown, calculate based on location)
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- Date should be the date on the receipt
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- Categorize based on vendor type (Starbucks=Food, Shell=Transport, etc.)
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- Confidence score 0-1 based on how clear the receipt is
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- Currency should be the currency used on the receipt (e.g., "USD", "EUR", "CAD")
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{ai_rules_context}
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{user_location_context}
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LOCATION & TAX RULES:
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- Extract location from receipt (look for store address, province/state, country)
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@@ -166,18 +182,19 @@ class DocumentProcessor:
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return base64.b64encode(image_file.read()).decode("utf-8")
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async def _process_pdf(
|
||||
self, pdf_path: str, user_location: str = None
|
||||
self, pdf_path: str, user_location: str = None, ai_rules: list = None
|
||||
) -> Dict[str, Any]:
|
||||
"""Extract data from PDF by converting to image first
|
||||
|
||||
Args:
|
||||
pdf_path: Path to the PDF file
|
||||
user_location: User's location string in format "State/Province, Country" (e.g., "Ontario, Canada")
|
||||
ai_rules: List of AI rules for categorization
|
||||
"""
|
||||
try:
|
||||
# For now, extract text from PDF and process as text
|
||||
text_content = self._extract_text_from_pdf(pdf_path)
|
||||
return self._process_text_content(text_content, user_location)
|
||||
return self._process_text_content(text_content, user_location, ai_rules)
|
||||
|
||||
except Exception as e:
|
||||
return {"error": f"PDF processing error: {str(e)}"}
|
||||
@@ -195,13 +212,14 @@ class DocumentProcessor:
|
||||
return ""
|
||||
|
||||
def _process_text_content(
|
||||
self, text_content: str, user_location: str = None
|
||||
self, text_content: str, user_location: str = None, ai_rules: list = None
|
||||
) -> Dict[str, Any]:
|
||||
"""Process text content using Groq (fallback for PDFs)
|
||||
|
||||
Args:
|
||||
text_content: Extracted text from PDF
|
||||
user_location: User's location string in format "State/Province, Country" (e.g., "Ontario, Canada")
|
||||
ai_rules: List of AI rules for categorization
|
||||
"""
|
||||
try:
|
||||
# Build user location context
|
||||
@@ -216,6 +234,16 @@ class DocumentProcessor:
|
||||
- Apply depreciation rules based on the user's location.
|
||||
"""
|
||||
|
||||
# Build AI rules context for categorization
|
||||
ai_rules_context = ""
|
||||
if ai_rules and len(ai_rules) > 0:
|
||||
ai_rules_context = "\n CATEGORIZATION RULES (IMPORTANT - Apply these first):"
|
||||
for idx, rule in enumerate(ai_rules, 1):
|
||||
condition = rule.get("condition", "")
|
||||
action = rule.get("action", "")
|
||||
ai_rules_context += f"\n {idx}. If {condition} → set category to '{action}'"
|
||||
ai_rules_context += "\n - Apply these custom rules before using default categorization logic\n - If multiple rules match, use the first matching rule\n - If no rules match, use default categorization based on vendor type"
|
||||
|
||||
prompt = f"""
|
||||
Analyze this receipt text and extract the following information in JSON format:
|
||||
|
||||
@@ -247,9 +275,9 @@ class DocumentProcessor:
|
||||
- Total amount should be the final total including tax
|
||||
- Tax amount is separate tax line if available (if not clearly shown, calculate based on location)
|
||||
- Date should be the date on the receipt
|
||||
- Categorize based on vendor type
|
||||
- Confidence score 0-1 based on clarity
|
||||
- Currency should be the currency used on the receipt (e.g., "USD", "EUR", "CAD")
|
||||
{ai_rules_context}
|
||||
{user_location_context}
|
||||
LOCATION & TAX RULES:
|
||||
- Extract location from receipt (look for store address, province/state, country)
|
||||
|
||||
@@ -1,8 +1,9 @@
|
||||
from typing import Any, Dict, List
|
||||
from typing import Any, Dict, List, Optional
|
||||
|
||||
from schemas import Match, Receipt, Transaction
|
||||
from services.ai_matcher import AIMatcher
|
||||
from services.ai_rules import AIRulesEngine
|
||||
from services.ai_rules_matcher import AIRulesMatcher
|
||||
from services.feedback_logger import FeedbackLogger
|
||||
from services.llm_tax_analyzer import LLMTaxAnalyzer
|
||||
from services.manual_tax_calculator import ManualTaxCalculator
|
||||
@@ -15,6 +16,7 @@ class MatchingEngine:
|
||||
self.feedback_logger = FeedbackLogger()
|
||||
self.llm_tax_analyzer = LLMTaxAnalyzer()
|
||||
self.manual_tax_calculator = ManualTaxCalculator()
|
||||
self.ai_rules_matcher = AIRulesMatcher()
|
||||
self.use_manual_tax_calculator = use_manual_tax_calculator
|
||||
|
||||
def process_matching(
|
||||
@@ -22,51 +24,51 @@ class MatchingEngine:
|
||||
receipts: List[Receipt],
|
||||
transactions: List[Transaction],
|
||||
user_location: str = "ON",
|
||||
ai_rules: Optional[List[Dict]] = None,
|
||||
) -> List[Match]:
|
||||
# Get AI matches
|
||||
ai_matches = self.ai_matcher.match_receipts_to_transactions(
|
||||
receipts, transactions
|
||||
)
|
||||
|
||||
# Apply traditional rules first (lightweight, no API calls)
|
||||
for match in ai_matches:
|
||||
rule_results = self.rules_engine.apply_rules(
|
||||
match.receipt, match.transaction
|
||||
)
|
||||
# # Apply traditional rules first (lightweight, no API calls)
|
||||
# for match in ai_matches:
|
||||
# rule_results = self.rules_engine.apply_rules(
|
||||
# match.receipt, match.transaction
|
||||
# )
|
||||
|
||||
# Apply confidence boost from traditional rules
|
||||
if rule_results["confidence_boost"] > 0:
|
||||
match.confidence_score = min(
|
||||
1.0, match.confidence_score + rule_results["confidence_boost"]
|
||||
)
|
||||
|
||||
# Auto-approve if rules say so
|
||||
if rule_results["auto_approve"]:
|
||||
match.confidence_score = 1.0
|
||||
match.match_reason += " (Auto-approved by rules)"
|
||||
|
||||
# Apply tax analysis - use manual calculator or LLM based on configuration
|
||||
if self.use_manual_tax_calculator:
|
||||
# Use deterministic rule-based calculator
|
||||
enhanced_matches = self._apply_manual_tax_analysis(
|
||||
ai_matches, user_location
|
||||
)
|
||||
# else:
|
||||
# # Use LLM-based tax analysis in a SINGLE batch call
|
||||
# try:
|
||||
# enhanced_matches = (
|
||||
# self.llm_tax_analyzer.analyze_and_apply_tax_rules_batch(
|
||||
# ai_matches, user_location
|
||||
# )
|
||||
# # Apply confidence boost from traditional rules
|
||||
# if rule_results["confidence_boost"] > 0:
|
||||
# match.confidence_score = min(
|
||||
# 1.0, match.confidence_score + rule_results["confidence_boost"]
|
||||
# )
|
||||
# except Exception as e:
|
||||
# # If batch LLM analysis fails, log it and continue with matches as-is
|
||||
# import logging
|
||||
|
||||
# logging.error(f"Batch LLM tax analysis failed: {str(e)}")
|
||||
# for match in ai_matches:
|
||||
# match.match_reason += " (Note: Advanced tax analysis unavailable)"
|
||||
# enhanced_matches = ai_matches
|
||||
# # Auto-approve if rules say so
|
||||
# if rule_results["auto_approve"]:
|
||||
# match.confidence_score = 1.0
|
||||
# match.match_reason += " (Auto-approved by rules)"
|
||||
|
||||
# # Apply tax analysis - use manual calculator or LLM based on configuration
|
||||
# if self.use_manual_tax_calculator:
|
||||
# # Use deterministic rule-based calculator
|
||||
# enhanced_matches = self._apply_manual_tax_analysis(
|
||||
# ai_matches, user_location
|
||||
# )
|
||||
# else:
|
||||
# # No tax analysis, just use the matches as-is
|
||||
# enhanced_matches = ai_matches
|
||||
|
||||
# Apply AI rules for post-matching evaluation
|
||||
# This adds flag_for_review and auto_approve fields based on custom rules
|
||||
if ai_rules:
|
||||
enhanced_matches = self.ai_rules_matcher.apply_rules_to_matches(
|
||||
ai_matches, ai_rules
|
||||
)
|
||||
else:
|
||||
# Even without custom rules, apply built-in rules (e.g., currency mismatch)
|
||||
enhanced_matches = self.ai_rules_matcher.apply_rules_to_matches(
|
||||
ai_matches, None
|
||||
)
|
||||
|
||||
return enhanced_matches
|
||||
|
||||
|
||||
Reference in New Issue
Block a user