1003 lines
47 KiB
Python
1003 lines
47 KiB
Python
import json
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import logging
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import re
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import time
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from typing import Dict, Any, List, Optional, Tuple
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from modules.datamodels.datamodelChat import PromptPlaceholder
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from modules.services.serviceExtraction.mainServiceExtraction import ExtractionService
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from modules.datamodels.datamodelAi import AiCallRequest, AiCallOptions, OperationTypeEnum, PriorityEnum, ProcessingModeEnum
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from modules.datamodels.datamodelExtraction import ContentPart
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from modules.datamodels.datamodelWorkflow import AiResponse, AiResponseMetadata, DocumentData
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from modules.interfaces.interfaceAiObjects import AiObjects
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from modules.shared.jsonUtils import (
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extractJsonString,
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repairBrokenJson,
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extractSectionsFromDocument,
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buildContinuationContext,
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parseJsonWithModel
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)
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from modules.services.serviceAi.subJsonResponseHandling import JsonResponseHandler
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logger = logging.getLogger(__name__)
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# Rebuild the model to resolve forward references
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AiCallRequest.model_rebuild()
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class AiService:
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"""AI service with core operations integrated."""
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def __init__(self, serviceCenter=None) -> None:
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"""Initialize AI service with service center access.
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Args:
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serviceCenter: Service center instance for accessing other services
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"""
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self.services = serviceCenter
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# Only depend on interfaces
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self.aiObjects = None # Will be initialized in create() or ensureAiObjectsInitialized()
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# Submodules initialized as None - will be set in _initializeSubmodules() after aiObjects is ready
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self.extractionService = None
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def _initializeSubmodules(self):
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"""Initialize all submodules after aiObjects is ready."""
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if self.aiObjects is None:
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raise RuntimeError("aiObjects must be initialized before initializing submodules")
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if self.extractionService is None:
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logger.info("Initializing ExtractionService...")
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self.extractionService = ExtractionService(self.services)
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async def ensureAiObjectsInitialized(self):
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"""Ensure aiObjects is initialized and submodules are ready."""
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if self.aiObjects is None:
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logger.info("Lazy initializing AiObjects...")
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self.aiObjects = await AiObjects.create()
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logger.info("AiObjects initialization completed")
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# Initialize submodules after aiObjects is ready
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self._initializeSubmodules()
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@classmethod
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async def create(cls, serviceCenter=None) -> "AiService":
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"""Create AiService instance with all connectors and submodules initialized."""
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logger.info("AiService.create() called")
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instance = cls(serviceCenter)
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logger.info("AiService created, about to call AiObjects.create()...")
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instance.aiObjects = await AiObjects.create()
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logger.info("AiObjects.create() completed")
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# Initialize all submodules after aiObjects is ready
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instance._initializeSubmodules()
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logger.info("AiService submodules initialized")
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return instance
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# Helper methods
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def _buildPromptWithPlaceholders(self, prompt: str, placeholders: Optional[Dict[str, str]]) -> str:
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"""
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Build full prompt by replacing placeholders with their content.
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Uses the new {{KEY:placeholder}} format.
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Args:
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prompt: The base prompt template
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placeholders: Dictionary of placeholder key-value pairs
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Returns:
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Prompt with placeholders replaced
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"""
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if not placeholders:
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return prompt
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full_prompt = prompt
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for placeholder, content in placeholders.items():
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# Skip if content is None or empty
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if content is None:
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continue
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# Replace {{KEY:placeholder}}
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full_prompt = full_prompt.replace(f"{{{{KEY:{placeholder}}}}}", str(content))
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return full_prompt
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async def _analyzePromptAndCreateOptions(self, prompt: str) -> AiCallOptions:
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"""Analyze prompt to determine appropriate AiCallOptions parameters."""
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try:
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# Get dynamic enum values from Pydantic models
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operationTypes = [e.value for e in OperationTypeEnum]
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priorities = [e.value for e in PriorityEnum]
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processingModes = [e.value for e in ProcessingModeEnum]
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# Create analysis prompt for AI to determine operation type and parameters
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analysisPrompt = f"""
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You are an AI operation analyzer. Analyze the following prompt and determine the most appropriate operation type and parameters.
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PROMPT TO ANALYZE:
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{self.services.utils.sanitizePromptContent(prompt, 'userinput')}
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Based on the prompt content, determine:
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1. operationType: Choose the most appropriate from: {', '.join(operationTypes)}
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2. priority: Choose from: {', '.join(priorities)}
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3. processingMode: Choose from: {', '.join(processingModes)}
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4. compressPrompt: true/false (true for story-like prompts, false for structured prompts with JSON/schemas)
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5. compressContext: true/false (true to summarize context, false to process fully)
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Respond with ONLY a JSON object in this exact format:
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{{
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"operationType": "dataAnalyse",
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"priority": "balanced",
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"processingMode": "basic",
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"compressPrompt": true,
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"compressContext": true
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}}
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"""
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# Use AI to analyze the prompt
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request = AiCallRequest(
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prompt=analysisPrompt,
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options=AiCallOptions(
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operationType=OperationTypeEnum.DATA_ANALYSE,
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priority=PriorityEnum.SPEED,
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processingMode=ProcessingModeEnum.BASIC,
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compressPrompt=True,
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compressContext=False
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)
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)
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response = await self.aiObjects.call(request)
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# Parse AI response using structured parsing with AiCallOptions model
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try:
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# Use parseJsonWithModel to parse response into AiCallOptions (handles enum conversion automatically)
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analysis = parseJsonWithModel(response.content, AiCallOptions)
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return analysis
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except Exception as e:
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logger.warning(f"Failed to parse AI analysis response: {e}")
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except Exception as e:
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logger.warning(f"Prompt analysis failed: {e}")
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# Fallback to default options
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return AiCallOptions(
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operationType=OperationTypeEnum.DATA_ANALYSE,
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priority=PriorityEnum.BALANCED,
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processingMode=ProcessingModeEnum.BASIC
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)
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async def _callAiWithLooping(
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self,
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prompt: str,
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options: AiCallOptions,
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debugPrefix: str = "ai_call",
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promptBuilder: Optional[callable] = None,
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promptArgs: Optional[Dict[str, Any]] = None,
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operationId: Optional[str] = None,
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userPrompt: Optional[str] = None
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) -> str:
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"""
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Shared core function for AI calls with repair-based looping system.
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Automatically repairs broken JSON and continues generation seamlessly.
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Args:
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prompt: The prompt to send to AI
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options: AI call configuration options
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debugPrefix: Prefix for debug file names
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promptBuilder: Optional function to rebuild prompts for continuation
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promptArgs: Optional arguments for prompt builder
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operationId: Optional operation ID for progress tracking
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Returns:
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Complete AI response after all iterations
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"""
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maxIterations = 50 # Prevent infinite loops
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iteration = 0
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allSections = [] # Accumulate all sections across iterations
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lastRawResponse = None # Store last raw JSON response for continuation
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documentMetadata = None # Store document metadata (title, filename) from first iteration
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# Get parent log ID for iteration operations
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parentLogId = None
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if operationId:
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parentLogId = self.services.chat.getOperationLogId(operationId)
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while iteration < maxIterations:
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iteration += 1
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# Create separate operation for each iteration with parent reference
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iterationOperationId = None
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if operationId:
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iterationOperationId = f"{operationId}_iter_{iteration}"
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self.services.chat.progressLogStart(
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iterationOperationId,
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"AI Call",
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f"Iteration {iteration}",
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"",
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parentId=parentLogId
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)
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# Build iteration prompt
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# CRITICAL: Build continuation prompt if we have sections OR if we have a previous response (even if broken)
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# This ensures continuation prompts are built even when JSON is so broken that no sections can be extracted
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if (len(allSections) > 0 or lastRawResponse) and promptBuilder and promptArgs:
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# This is a continuation - build continuation context with raw JSON and rebuild prompt
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continuationContext = buildContinuationContext(allSections, lastRawResponse)
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if not lastRawResponse:
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logger.warning(f"Iteration {iteration}: No previous response available for continuation!")
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# Filter promptArgs to only include parameters that buildGenerationPrompt accepts
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# buildGenerationPrompt accepts: outputFormat, userPrompt, title, extracted_content, continuationContext
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filteredPromptArgs = {
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k: v for k, v in promptArgs.items()
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if k in ['outputFormat', 'userPrompt', 'title', 'extracted_content']
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}
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# Rebuild prompt with continuation context using the provided prompt builder
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iterationPrompt = await promptBuilder(**filteredPromptArgs, continuationContext=continuationContext)
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else:
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# First iteration - use original prompt
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iterationPrompt = prompt
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# Make AI call
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try:
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if iterationOperationId:
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self.services.chat.progressLogUpdate(iterationOperationId, 0.3, "Calling AI model")
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request = AiCallRequest(
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prompt=iterationPrompt,
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context="",
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options=options
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)
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# Write the ACTUAL prompt sent to AI
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if iteration == 1:
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self.services.utils.writeDebugFile(iterationPrompt, f"{debugPrefix}_prompt")
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else:
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self.services.utils.writeDebugFile(iterationPrompt, f"{debugPrefix}_prompt_iteration_{iteration}")
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response = await self.aiObjects.call(request)
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result = response.content
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# Update progress after AI call
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if iterationOperationId:
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self.services.chat.progressLogUpdate(iterationOperationId, 0.6, "AI response received")
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# Write raw AI response to debug file
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if iteration == 1:
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self.services.utils.writeDebugFile(result, f"{debugPrefix}_response")
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else:
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self.services.utils.writeDebugFile(result, f"{debugPrefix}_response_iteration_{iteration}")
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# Emit stats for this iteration (only if workflow exists and has id)
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if self.services.workflow and hasattr(self.services.workflow, 'id') and self.services.workflow.id:
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try:
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self.services.chat.storeWorkflowStat(
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self.services.workflow,
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response,
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f"ai.call.{debugPrefix}.iteration_{iteration}"
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)
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except Exception as statError:
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# Don't break the main loop if stat storage fails
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logger.warning(f"Failed to store workflow stat: {str(statError)}")
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# Check for error response using generic error detection (errorCount > 0 or modelName == "error")
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if hasattr(response, 'errorCount') and response.errorCount > 0:
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errorMsg = f"Iteration {iteration}: Error response detected (errorCount={response.errorCount}), stopping loop: {result[:200] if result else 'empty'}"
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logger.error(errorMsg)
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break
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if hasattr(response, 'modelName') and response.modelName == "error":
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errorMsg = f"Iteration {iteration}: Error response detected (modelName=error), stopping loop: {result[:200] if result else 'empty'}"
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logger.error(errorMsg)
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break
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if not result or not result.strip():
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logger.warning(f"Iteration {iteration}: Empty response, stopping")
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break
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# Check if this is a text response (not document generation)
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# Text responses don't need JSON parsing - return immediately after first successful response
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isTextResponse = (promptBuilder is None and promptArgs is None) or debugPrefix == "text"
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if isTextResponse:
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# For text responses, return the text immediately - no JSON parsing needed
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logger.info(f"Iteration {iteration}: Text response received, returning immediately")
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if iterationOperationId:
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self.services.chat.progressLogFinish(iterationOperationId, True)
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return result
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# Store raw response for continuation (even if broken)
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lastRawResponse = result
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# Extract sections from response (handles both valid and broken JSON)
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# Only for document generation (JSON responses)
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# CRITICAL: Pass allSections to enable fragment detection and merging
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extractedSections, wasJsonComplete, parsedResult = self._extractSectionsFromResponse(
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result, iteration, debugPrefix, allSections
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)
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# CRITICAL: Handle JSON fragments (continuation content)
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# Fragment merging happens inside _extractSectionsFromResponse and updates allSections in place
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# If no sections extracted but fragment was merged, allSections was updated in place
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# Check if fragment was merged by checking if allSections was modified
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if not extractedSections and allSections:
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# Fragment was detected and merged directly into allSections (side effect in _extractSectionsFromResponse)
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logger.info(f"Iteration {iteration}: JSON fragment detected and merged, continuing")
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# Don't break - fragment was merged, continue to get more content if needed
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# Check if we should continue based on JSON completeness
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shouldContinue = self._shouldContinueGeneration(
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allSections,
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iteration,
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wasJsonComplete,
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result
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)
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if shouldContinue:
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if iterationOperationId:
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self.services.chat.progressLogUpdate(iterationOperationId, 0.8, "Fragment merged, continuing")
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self.services.chat.progressLogFinish(iterationOperationId, True)
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continue
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else:
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# Done - fragment was merged and JSON is complete
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if iterationOperationId:
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self.services.chat.progressLogFinish(iterationOperationId, True)
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if operationId:
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self.services.chat.progressLogUpdate(operationId, 0.95, f"Generation complete ({iteration} iterations, fragment merged)")
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logger.info(f"Generation complete after {iteration} iterations: fragment merged")
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break
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# Extract document metadata from first iteration if available
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if iteration == 1 and parsedResult and not documentMetadata:
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documentMetadata = self._extractDocumentMetadata(parsedResult)
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# Update progress after parsing
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if iterationOperationId:
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if extractedSections:
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self.services.chat.progressLogUpdate(iterationOperationId, 0.8, f"Extracted {len(extractedSections)} sections")
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if not extractedSections:
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# CRITICAL: If JSON was incomplete/broken, continue even if no sections extracted
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# This allows the AI to retry and complete the broken JSON
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if not wasJsonComplete:
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logger.warning(f"Iteration {iteration}: No sections extracted from broken JSON, continuing for another attempt")
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continue
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# If JSON was complete but no sections extracted - check if it was a fragment
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# Fragments are handled above, so if we get here and it's complete, it's an error
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logger.warning(f"Iteration {iteration}: No sections extracted from complete JSON, stopping")
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break
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# Merge new sections with existing sections intelligently
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# This handles the STANDARD CASE: broken JSON iterations must be merged together
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# The break can occur anywhere - in any section, at any depth
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allSections = JsonResponseHandler.mergeSectionsIntelligently(allSections, extractedSections, iteration)
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# Check if we should continue (completion detection)
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# Simple logic: JSON completeness determines continuation
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shouldContinue = self._shouldContinueGeneration(
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allSections,
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iteration,
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wasJsonComplete,
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result
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)
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if shouldContinue:
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# Finish iteration operation (will continue with next iteration)
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if iterationOperationId:
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self.services.chat.progressLogFinish(iterationOperationId, True)
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continue
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else:
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# Done - finish iteration and update main operation
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if iterationOperationId:
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self.services.chat.progressLogFinish(iterationOperationId, True)
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if operationId:
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self.services.chat.progressLogUpdate(operationId, 0.95, f"Generation complete ({iteration} iterations, {len(allSections)} sections)")
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logger.info(f"Generation complete after {iteration} iterations: {len(allSections)} sections")
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break
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except Exception as e:
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logger.error(f"Error in AI call iteration {iteration}: {str(e)}")
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if iterationOperationId:
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self.services.chat.progressLogFinish(iterationOperationId, False)
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break
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if iteration >= maxIterations:
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logger.warning(f"AI call stopped after maximum iterations ({maxIterations})")
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# Build final result from accumulated sections
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final_result = self._buildFinalResultFromSections(allSections, documentMetadata)
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# Write final result to debug file
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self.services.utils.writeDebugFile(final_result, f"{debugPrefix}_final_result")
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return final_result
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# JSON merging logic moved to subJsonResponseHandling.py
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def _extractSectionsFromResponse(
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self,
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result: str,
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iteration: int,
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debugPrefix: str,
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allSections: List[Dict[str, Any]] = None
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) -> Tuple[List[Dict[str, Any]], bool, Optional[Dict[str, Any]]]:
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"""
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Extract sections from AI response, handling both valid and broken JSON.
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Uses repair mechanism for broken JSON.
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Handles JSON fragments (continuation content) that need to be merged into existing sections.
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Determines completion based on JSON structure (complete JSON = complete, broken/incomplete = incomplete).
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Returns (sections, wasJsonComplete, parsedResult)
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"""
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if allSections is None:
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allSections = []
|
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|
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# First, try to parse as valid JSON
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# CRITICAL: JSON completeness is determined by parsing, NOT by last character check!
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# Last character could be } or ] by chance, JSON still incomplete
|
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try:
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extracted = extractJsonString(result)
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# Try to parse the extracted JSON
|
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# If parsing succeeds, JSON is complete
|
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parsed_result = json.loads(extracted)
|
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# Extract sections from parsed JSON
|
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sections = extractSectionsFromDocument(parsed_result)
|
|
|
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# CRITICAL: If no sections extracted but we have existing sections, check if it's a fragment
|
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if not sections and allSections:
|
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fragment = JsonResponseHandler.detectAndParseJsonFragment(result, allSections)
|
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if fragment:
|
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logger.info(f"Iteration {iteration}: Detected JSON fragment ({fragment.get('fragment_type')}), merging into existing sections")
|
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# Merge fragment into existing sections
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merged_sections = JsonResponseHandler.mergeFragmentIntoSection(fragment, allSections, iteration)
|
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# Update allSections in place (this is a side effect, but necessary for continuation)
|
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# Note: This modifies the caller's allSections list
|
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allSections[:] = merged_sections
|
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# Return empty list to indicate we merged directly (not new sections)
|
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# But mark as incomplete so loop continues if needed
|
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return [], False, parsed_result
|
|
|
|
# JSON parsed successfully = complete
|
|
logger.info(f"Iteration {iteration}: JSON parsed successfully - marking as complete")
|
|
return sections, True, parsed_result
|
|
|
|
except json.JSONDecodeError as e:
|
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# Broken JSON - try repair mechanism (normal in iterative generation)
|
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self.services.utils.writeDebugFile(result, f"{debugPrefix}_broken_json_iteration_{iteration}")
|
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logger.info(f"Iteration {iteration}: JSON parsing failed (broken JSON), attempting repair")
|
|
|
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# Try to repair
|
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repaired_json = repairBrokenJson(result)
|
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|
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if repaired_json:
|
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# Extract sections from repaired JSON
|
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sections = extractSectionsFromDocument(repaired_json)
|
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# CRITICAL: JSON was broken, so mark as incomplete (wasJsonComplete = False)
|
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# This ensures the loop continues to get the rest of the content
|
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logger.info(f"Iteration {iteration}: JSON repaired, extracted {len(sections)} sections, marking as incomplete to continue")
|
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return sections, False, repaired_json # JSON was broken but repaired - mark as incomplete
|
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else:
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# Repair failed - but we should still continue to allow AI to retry
|
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logger.warning(f"Iteration {iteration}: All repair strategies failed, but continuing to allow retry")
|
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return [], False, None # Mark as incomplete so loop continues
|
|
|
|
except Exception as e:
|
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logger.error(f"Iteration {iteration}: Unexpected error during parsing: {str(e)}")
|
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return [], False, None
|
|
|
|
def _shouldContinueGeneration(
|
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self,
|
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allSections: List[Dict[str, Any]],
|
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iteration: int,
|
|
wasJsonComplete: bool,
|
|
rawResponse: str = None
|
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) -> bool:
|
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"""
|
|
Determine if AI generation loop should continue.
|
|
|
|
CRITICAL: This is ONLY about AI Loop Completion, NOT Action DoD!
|
|
Action DoD is checked AFTER the AI Loop completes in _refineDecide.
|
|
|
|
Simple logic:
|
|
- If JSON parsing failed or incomplete → continue (needs more content)
|
|
- If JSON parses successfully and is complete → stop (all content delivered)
|
|
- Loop detection prevents infinite loops
|
|
|
|
CRITICAL: JSON completeness is determined by parsing, NOT by last character check!
|
|
Returns True if we should continue, False if AI Loop is done.
|
|
"""
|
|
if len(allSections) == 0:
|
|
return True # No sections yet, continue
|
|
|
|
# CRITERION 1: If JSON was incomplete/broken (parsing failed or incomplete) - continue to repair/complete
|
|
if not wasJsonComplete:
|
|
logger.info(f"Iteration {iteration}: JSON incomplete/broken - continuing to complete")
|
|
return True
|
|
|
|
# CRITERION 2: JSON is complete (parsed successfully) - check for loop detection
|
|
if self._isStuckInLoop(allSections, iteration):
|
|
logger.warning(f"Iteration {iteration}: Detected potential infinite loop - stopping AI loop")
|
|
return False
|
|
|
|
# JSON is complete and not stuck in loop - done
|
|
logger.info(f"Iteration {iteration}: JSON complete - AI loop done")
|
|
return False
|
|
|
|
def _isStuckInLoop(
|
|
self,
|
|
allSections: List[Dict[str, Any]],
|
|
iteration: int
|
|
) -> bool:
|
|
"""
|
|
Detect if we're stuck in a loop (same content being repeated).
|
|
|
|
Generic approach: Check if recent iterations are adding minimal or duplicate content.
|
|
"""
|
|
if iteration < 3:
|
|
return False # Need at least 3 iterations to detect a loop
|
|
|
|
if len(allSections) == 0:
|
|
return False
|
|
|
|
# Check if last section is very small (might be stuck)
|
|
lastSection = allSections[-1]
|
|
elements = lastSection.get("elements", [])
|
|
|
|
if isinstance(elements, list) and elements:
|
|
lastElem = elements[-1] if elements else {}
|
|
else:
|
|
lastElem = elements if isinstance(elements, dict) else {}
|
|
|
|
# Check content size of last section
|
|
lastSectionSize = 0
|
|
if isinstance(lastElem, dict):
|
|
for key, value in lastElem.items():
|
|
if isinstance(value, str):
|
|
lastSectionSize += len(value)
|
|
elif isinstance(value, list):
|
|
lastSectionSize += len(str(value))
|
|
|
|
# If last section is very small and we've done many iterations, might be stuck
|
|
if lastSectionSize < 100 and iteration > 10:
|
|
logger.warning(f"Potential loop detected: iteration {iteration}, last section size {lastSectionSize}")
|
|
return True
|
|
|
|
return False
|
|
|
|
def _extractDocumentMetadata(
|
|
self,
|
|
parsedResult: Dict[str, Any]
|
|
) -> Optional[Dict[str, Any]]:
|
|
"""
|
|
Extract document metadata (title, filename) from parsed AI response.
|
|
Returns dict with 'title' and 'filename' keys if found, None otherwise.
|
|
"""
|
|
if not isinstance(parsedResult, dict):
|
|
return None
|
|
|
|
# Try to get from documents array (preferred structure)
|
|
if "documents" in parsedResult and isinstance(parsedResult["documents"], list) and len(parsedResult["documents"]) > 0:
|
|
firstDoc = parsedResult["documents"][0]
|
|
if isinstance(firstDoc, dict):
|
|
title = firstDoc.get("title")
|
|
filename = firstDoc.get("filename")
|
|
if title or filename:
|
|
return {
|
|
"title": title,
|
|
"filename": filename
|
|
}
|
|
|
|
return None
|
|
|
|
def _buildFinalResultFromSections(
|
|
self,
|
|
allSections: List[Dict[str, Any]],
|
|
documentMetadata: Optional[Dict[str, Any]] = None
|
|
) -> str:
|
|
"""
|
|
Build final JSON result from accumulated sections.
|
|
Uses AI-provided metadata (title, filename) if available.
|
|
"""
|
|
if not allSections:
|
|
return ""
|
|
|
|
# Extract metadata from AI response if available
|
|
title = "Generated Document"
|
|
filename = "document.json"
|
|
if documentMetadata:
|
|
if documentMetadata.get("title"):
|
|
title = documentMetadata["title"]
|
|
if documentMetadata.get("filename"):
|
|
filename = documentMetadata["filename"]
|
|
|
|
# Build documents structure
|
|
# Assuming single document for now
|
|
documents = [{
|
|
"id": "doc_1",
|
|
"title": title,
|
|
"filename": filename,
|
|
"sections": allSections
|
|
}]
|
|
|
|
result = {
|
|
"metadata": {
|
|
"split_strategy": "single_document",
|
|
"source_documents": [],
|
|
"extraction_method": "ai_generation"
|
|
},
|
|
"documents": documents
|
|
}
|
|
|
|
return json.dumps(result, indent=2)
|
|
|
|
# Public API Methods
|
|
|
|
# Planning AI Call
|
|
async def callAiPlanning(
|
|
self,
|
|
prompt: str,
|
|
placeholders: Optional[List[PromptPlaceholder]] = None,
|
|
debugType: Optional[str] = None
|
|
) -> str:
|
|
"""
|
|
Planning AI call for task planning, action planning, action selection, etc.
|
|
Always uses static parameters optimized for planning tasks.
|
|
|
|
Args:
|
|
prompt: The planning prompt
|
|
placeholders: Optional list of placeholder replacements
|
|
debugType: Optional debug file type identifier (e.g., 'taskplan', 'dynamic', 'intentanalysis')
|
|
If not provided, defaults to 'plan'
|
|
|
|
Returns:
|
|
Planning JSON response
|
|
"""
|
|
await self.ensureAiObjectsInitialized()
|
|
|
|
# Planning calls always use static parameters
|
|
options = AiCallOptions(
|
|
operationType=OperationTypeEnum.PLAN,
|
|
priority=PriorityEnum.QUALITY,
|
|
processingMode=ProcessingModeEnum.DETAILED,
|
|
compressPrompt=False,
|
|
compressContext=False
|
|
)
|
|
|
|
# Build full prompt with placeholders
|
|
if placeholders:
|
|
placeholdersDict = {p.label: p.content for p in placeholders}
|
|
fullPrompt = self._buildPromptWithPlaceholders(prompt, placeholdersDict)
|
|
else:
|
|
fullPrompt = prompt
|
|
|
|
# Root-cause fix: planning must return raw single-shot JSON, not section-based output
|
|
request = AiCallRequest(
|
|
prompt=fullPrompt,
|
|
context="",
|
|
options=options
|
|
)
|
|
|
|
# Debug: persist prompt/response for analysis with context-specific naming
|
|
debugPrefix = debugType if debugType else "plan"
|
|
self.services.utils.writeDebugFile(fullPrompt, f"{debugPrefix}_prompt")
|
|
response = await self.aiObjects.call(request)
|
|
result = response.content or ""
|
|
self.services.utils.writeDebugFile(result, f"{debugPrefix}_response")
|
|
return result
|
|
|
|
async def callAiContent(
|
|
self,
|
|
prompt: str,
|
|
options: AiCallOptions,
|
|
contentParts: Optional[List[ContentPart]] = None,
|
|
outputFormat: Optional[str] = None,
|
|
title: Optional[str] = None,
|
|
parentOperationId: Optional[str] = None # Parent operation ID for hierarchical logging
|
|
) -> AiResponse:
|
|
"""
|
|
Unified AI content processing method (replaces callAiDocuments and callAiText).
|
|
|
|
Args:
|
|
prompt: The main prompt for the AI call
|
|
contentParts: Optional list of already-extracted content parts (preferred)
|
|
options: AI call configuration options (REQUIRED - operationType must be set)
|
|
outputFormat: Optional output format for document generation (e.g., 'pdf', 'docx', 'xlsx')
|
|
title: Optional title for generated documents
|
|
parentOperationId: Optional parent operation ID for hierarchical logging
|
|
|
|
Returns:
|
|
AiResponse with content, metadata, and optional documents
|
|
"""
|
|
await self.ensureAiObjectsInitialized()
|
|
|
|
# Create separate operationId for detailed progress tracking
|
|
workflowId = self.services.workflow.id if self.services.workflow else f"no-workflow-{int(time.time())}"
|
|
aiOperationId = f"ai_content_{workflowId}_{int(time.time())}"
|
|
|
|
# Get parent log ID if parent operation exists
|
|
parentLogId = None
|
|
if parentOperationId:
|
|
parentLogId = self.services.chat.getOperationLogId(parentOperationId)
|
|
|
|
# Start progress tracking with parent reference
|
|
self.services.chat.progressLogStart(
|
|
aiOperationId,
|
|
"AI content processing",
|
|
"Content Processing",
|
|
f"Format: {outputFormat or 'text'}",
|
|
parentId=parentLogId
|
|
)
|
|
|
|
try:
|
|
# Extraction is now separate - contentParts must be extracted before calling
|
|
# Require operationType to be set before calling
|
|
opType = getattr(options, "operationType", None)
|
|
if not opType:
|
|
# If outputFormat is specified, default to DATA_GENERATE
|
|
if outputFormat:
|
|
options.operationType = OperationTypeEnum.DATA_GENERATE
|
|
opType = OperationTypeEnum.DATA_GENERATE
|
|
else:
|
|
self.services.chat.progressLogUpdate(aiOperationId, 0.1, "Analyzing prompt parameters")
|
|
analyzedOptions = await self._analyzePromptAndCreateOptions(prompt)
|
|
if analyzedOptions and hasattr(analyzedOptions, "operationType") and analyzedOptions.operationType:
|
|
options.operationType = analyzedOptions.operationType
|
|
# Merge other analyzed options
|
|
if hasattr(analyzedOptions, "priority"):
|
|
options.priority = analyzedOptions.priority
|
|
if hasattr(analyzedOptions, "processingMode"):
|
|
options.processingMode = analyzedOptions.processingMode
|
|
if hasattr(analyzedOptions, "compressPrompt"):
|
|
options.compressPrompt = analyzedOptions.compressPrompt
|
|
if hasattr(analyzedOptions, "compressContext"):
|
|
options.compressContext = analyzedOptions.compressContext
|
|
else:
|
|
# Default to DATA_ANALYSE if analysis fails
|
|
options.operationType = OperationTypeEnum.DATA_ANALYSE
|
|
opType = options.operationType
|
|
|
|
# Handle IMAGE_GENERATE operations
|
|
if opType == OperationTypeEnum.IMAGE_GENERATE:
|
|
self.services.chat.progressLogUpdate(aiOperationId, 0.4, "Calling AI for image generation")
|
|
|
|
request = AiCallRequest(
|
|
prompt=prompt,
|
|
context="",
|
|
options=options
|
|
)
|
|
|
|
response = await self.aiObjects.call(request)
|
|
|
|
if response.content:
|
|
# Build document data for image
|
|
imageDoc = DocumentData(
|
|
documentName="generated_image.png",
|
|
documentData=response.content,
|
|
mimeType="image/png"
|
|
)
|
|
|
|
metadata = AiResponseMetadata(
|
|
title=title or "Generated Image",
|
|
operationType=opType.value
|
|
)
|
|
|
|
self.services.chat.storeWorkflowStat(
|
|
self.services.workflow,
|
|
response,
|
|
"ai.generate.image"
|
|
)
|
|
|
|
self.services.chat.progressLogUpdate(aiOperationId, 0.9, "Image generated")
|
|
self.services.chat.progressLogFinish(aiOperationId, True)
|
|
|
|
return AiResponse(
|
|
content=response.content,
|
|
metadata=metadata,
|
|
documents=[imageDoc]
|
|
)
|
|
else:
|
|
errorMsg = f"No image data returned: {response.content}"
|
|
logger.error(f"Error in AI image generation: {errorMsg}")
|
|
self.services.chat.progressLogFinish(aiOperationId, False)
|
|
raise ValueError(errorMsg)
|
|
|
|
# Handle WEB_SEARCH and WEB_CRAWL operations
|
|
if opType == OperationTypeEnum.WEB_SEARCH or opType == OperationTypeEnum.WEB_CRAWL:
|
|
self.services.chat.progressLogUpdate(aiOperationId, 0.4, f"Calling AI for {opType.name}")
|
|
|
|
request = AiCallRequest(
|
|
prompt=prompt, # Raw JSON prompt - connector will parse it
|
|
context="",
|
|
options=options
|
|
)
|
|
|
|
response = await self.aiObjects.call(request)
|
|
|
|
if response.content:
|
|
metadata = AiResponseMetadata(
|
|
operationType=opType.value
|
|
)
|
|
|
|
self.services.chat.storeWorkflowStat(
|
|
self.services.workflow,
|
|
response,
|
|
f"ai.{opType.name.lower()}"
|
|
)
|
|
|
|
self.services.chat.progressLogUpdate(aiOperationId, 0.9, f"{opType.name} completed")
|
|
self.services.chat.progressLogFinish(aiOperationId, True)
|
|
|
|
return AiResponse(
|
|
content=response.content,
|
|
metadata=metadata
|
|
)
|
|
else:
|
|
errorMsg = f"No content returned from {opType.name}: {response.content}"
|
|
logger.error(f"Error in {opType.name}: {errorMsg}")
|
|
self.services.chat.progressLogFinish(aiOperationId, False)
|
|
raise ValueError(errorMsg)
|
|
|
|
# Handle document generation (outputFormat specified)
|
|
if outputFormat:
|
|
# CRITICAL: For document generation with JSON templates, NEVER compress the prompt
|
|
options.compressPrompt = False
|
|
options.compressContext = False
|
|
|
|
# Convert contentParts to text for generation prompt (if provided)
|
|
if contentParts:
|
|
# Convert contentParts to text for generation prompt
|
|
content_for_generation = "\n\n".join([f"[{part.label}]\n{part.data}" for part in contentParts if part.data])
|
|
else:
|
|
content_for_generation = None
|
|
|
|
self.services.chat.progressLogUpdate(aiOperationId, 0.3, "Building generation prompt")
|
|
from modules.services.serviceGeneration.subPromptBuilderGeneration import buildGenerationPrompt
|
|
|
|
generation_prompt = await buildGenerationPrompt(
|
|
outputFormat, prompt, title, content_for_generation, None
|
|
)
|
|
|
|
promptArgs = {
|
|
"outputFormat": outputFormat,
|
|
"userPrompt": prompt,
|
|
"title": title,
|
|
"extracted_content": content_for_generation
|
|
}
|
|
|
|
self.services.chat.progressLogUpdate(aiOperationId, 0.4, "Calling AI for content generation")
|
|
# Extract user prompt from promptArgs for task completion analysis
|
|
userPrompt = None
|
|
if promptArgs:
|
|
userPrompt = promptArgs.get("userPrompt") or promptArgs.get("user_prompt")
|
|
|
|
generated_json = await self._callAiWithLooping(
|
|
generation_prompt,
|
|
options,
|
|
"document_generation",
|
|
buildGenerationPrompt,
|
|
promptArgs,
|
|
aiOperationId,
|
|
userPrompt=userPrompt
|
|
)
|
|
|
|
self.services.chat.progressLogUpdate(aiOperationId, 0.7, "Parsing generated JSON")
|
|
try:
|
|
extracted_json = self.services.utils.jsonExtractString(generated_json)
|
|
generated_data = json.loads(extracted_json)
|
|
except json.JSONDecodeError as e:
|
|
logger.error(f"Failed to parse generated JSON: {str(e)}")
|
|
self.services.utils.writeDebugFile(generated_json, "failed_json_parsing")
|
|
self.services.chat.progressLogFinish(aiOperationId, False)
|
|
raise ValueError(f"Generated content is not valid JSON: {str(e)}")
|
|
|
|
# Extract title and filename from generated document structure
|
|
extractedTitle = title
|
|
extractedFilename = None
|
|
if isinstance(generated_data, dict) and "documents" in generated_data:
|
|
docs = generated_data["documents"]
|
|
if isinstance(docs, list) and len(docs) > 0:
|
|
firstDoc = docs[0]
|
|
if isinstance(firstDoc, dict):
|
|
if firstDoc.get("title"):
|
|
extractedTitle = firstDoc["title"]
|
|
if firstDoc.get("filename"):
|
|
extractedFilename = firstDoc["filename"]
|
|
|
|
# Ensure metadata contains the extracted title
|
|
if "metadata" not in generated_data:
|
|
generated_data["metadata"] = {}
|
|
if extractedTitle:
|
|
generated_data["metadata"]["title"] = extractedTitle
|
|
|
|
# Create separate operation for content rendering
|
|
renderOperationId = f"{aiOperationId}_render"
|
|
renderParentLogId = self.services.chat.getOperationLogId(aiOperationId)
|
|
self.services.chat.progressLogStart(
|
|
renderOperationId,
|
|
"Content Rendering",
|
|
"Rendering",
|
|
f"Format: {outputFormat}",
|
|
parentId=renderParentLogId
|
|
)
|
|
|
|
try:
|
|
from modules.services.serviceGeneration.mainServiceGeneration import GenerationService
|
|
generationService = GenerationService(self.services)
|
|
self.services.chat.progressLogUpdate(renderOperationId, 0.5, f"Rendering to {outputFormat} format")
|
|
rendered_content, mime_type = await generationService.renderReport(
|
|
generated_data, outputFormat, extractedTitle or "Generated Document", prompt, self
|
|
)
|
|
self.services.chat.progressLogFinish(renderOperationId, True)
|
|
|
|
# Determine document name
|
|
if extractedFilename:
|
|
documentName = extractedFilename
|
|
elif extractedTitle and extractedTitle != "Generated Document":
|
|
sanitized = re.sub(r"[^a-zA-Z0-9._-]", "_", extractedTitle)
|
|
sanitized = re.sub(r"_+", "_", sanitized).strip("_")
|
|
if sanitized:
|
|
if not sanitized.lower().endswith(f".{outputFormat}"):
|
|
documentName = f"{sanitized}.{outputFormat}"
|
|
else:
|
|
documentName = sanitized
|
|
else:
|
|
documentName = f"generated.{outputFormat}"
|
|
else:
|
|
documentName = f"generated.{outputFormat}"
|
|
|
|
# Build document data
|
|
docData = DocumentData(
|
|
documentName=documentName,
|
|
documentData=rendered_content,
|
|
mimeType=mime_type,
|
|
sourceJson=generated_data # Preserve source JSON for structure validation
|
|
)
|
|
|
|
metadata = AiResponseMetadata(
|
|
title=extractedTitle or title or "Generated Document",
|
|
filename=extractedFilename,
|
|
operationType=opType.value if opType else None
|
|
)
|
|
|
|
self.services.utils.writeDebugFile(str(generated_data), "document_generation_response")
|
|
self.services.chat.progressLogFinish(aiOperationId, True)
|
|
|
|
return AiResponse(
|
|
content=json.dumps(generated_data),
|
|
metadata=metadata,
|
|
documents=[docData]
|
|
)
|
|
|
|
except Exception as e:
|
|
logger.error(f"Error rendering document: {str(e)}")
|
|
if renderOperationId:
|
|
self.services.chat.progressLogFinish(renderOperationId, False)
|
|
self.services.chat.progressLogFinish(aiOperationId, False)
|
|
raise ValueError(f"Rendering failed: {str(e)}")
|
|
|
|
# Handle text processing (no outputFormat)
|
|
self.services.chat.progressLogUpdate(aiOperationId, 0.5, "Processing text call")
|
|
|
|
if contentParts:
|
|
# Process contentParts through AI
|
|
# Convert contentParts to text for prompt
|
|
contentText = "\n\n".join([f"[{part.label}]\n{part.data}" for part in contentParts if part.data])
|
|
fullPrompt = f"{prompt}\n\n{contentText}" if contentText else prompt
|
|
result_content = await self._callAiWithLooping(
|
|
fullPrompt, options, "text", None, None, aiOperationId
|
|
)
|
|
else:
|
|
# Direct text call (no documents to process)
|
|
result_content = await self._callAiWithLooping(
|
|
prompt, options, "text", None, None, aiOperationId
|
|
)
|
|
|
|
metadata = AiResponseMetadata(
|
|
operationType=opType.value if opType else None
|
|
)
|
|
|
|
self.services.chat.progressLogFinish(aiOperationId, True)
|
|
|
|
return AiResponse(
|
|
content=result_content,
|
|
metadata=metadata
|
|
)
|
|
|
|
except Exception as e:
|
|
logger.error(f"Error in callAiContent: {str(e)}")
|
|
self.services.chat.progressLogFinish(aiOperationId, False)
|
|
raise
|
|
|