from __future__ import annotations import json import logging from typing import Any from farm_data.services import get_farm_details from rag.api_provider import get_chat_client from rag.chat import ( _complete_audit_log, _create_audit_log, _fail_audit_log, _load_service_tone, build_rag_context, ) from rag.config import RAGConfig, get_service_config, load_rag_config logger = logging.getLogger(__name__) KB_NAME = "water_need_prediction" SERVICE_ID = "water_need_prediction" WATER_NEED_PROMPT = ( "شما یک دستیار تخصصی تحليل نياز آبي کوتاه مدت مزرعه هستي. " "ورودي شامل محاسبات ساختاريافته نياز آبي، اطلاعات مزرعه و متن هاي بازيابي شده از پايگاه دانش است. " "فقط JSON معتبر با اين کليدها برگردان: " "summary, irrigation_outlook, recommended_action, risk_note, confidence. " "confidence عددي بين 0 و 1 باشد. " "اعداد اصلي را از داده ورودي بگير و عدد متناقض جديد نساز." ) def _clean_json(raw: str) -> dict[str, Any]: cleaned = (raw or "").strip() if cleaned.startswith("```"): cleaned = cleaned.strip("`") if cleaned.startswith("json"): cleaned = cleaned[4:] cleaned = cleaned.strip() if not cleaned: return {} try: return json.loads(cleaned) except (json.JSONDecodeError, ValueError): logger.warning("Invalid JSON returned by water_need_prediction LLM: %s", cleaned[:500]) return {} def _load_farm_or_error(farm_uuid: str) -> dict[str, Any]: farm_details = get_farm_details(farm_uuid) if farm_details is None: raise ValueError("farm_uuid نامعتبر است یا اطلاعات مزرعه پیدا نشد.") return farm_details def _build_service_client(cfg: RAGConfig): service = get_service_config(SERVICE_ID, cfg) service_cfg = RAGConfig( embedding=cfg.embedding, qdrant=cfg.qdrant, chunking=cfg.chunking, llm=service.llm, knowledge_bases=cfg.knowledge_bases, services=cfg.services, chromadb=cfg.chromadb, ) client = get_chat_client(service_cfg) return service, client, service.llm.model def _validate_prediction_insight(parsed: dict[str, Any]) -> dict[str, Any]: required_keys = { "summary", "irrigation_outlook", "recommended_action", "risk_note", "confidence", } missing = [key for key in required_keys if key not in parsed] if missing: raise ValueError( "Water need prediction insight response is missing required fields: " + ", ".join(missing) ) return parsed def _build_messages( *, service: Any, cfg: RAGConfig, query: str, rag_context: str, structured_context: dict[str, Any], ) -> tuple[str, list[dict[str, str]]]: tone = _load_service_tone(service, cfg) system_parts = [tone] if tone else [] if service.system_prompt: system_parts.append(service.system_prompt) system_parts.append(WATER_NEED_PROMPT) system_parts.append( "[کانتکست ساختاريافته نياز آبي]\n" + json.dumps(structured_context, ensure_ascii=False, indent=2, default=str) ) if rag_context: system_parts.append(rag_context) system_prompt = "\n\n".join(part for part in system_parts if part) messages = [ {"role": "system", "content": system_prompt}, {"role": "user", "content": query}, ] return system_prompt, messages def get_water_need_prediction_insight( *, farm_uuid: str, prediction_payload: dict[str, Any], query: str | None = None, ) -> dict[str, Any]: cfg = load_rag_config() service, client, model = _build_service_client(cfg) farm_details = _load_farm_or_error(farm_uuid) user_query = query or "نياز آبي کوتاه مدت اين مزرعه را تفسير کن و اقدام عملياتي پيشنهاد بده." structured_context = { "farm_uuid": farm_uuid, "prediction_payload": prediction_payload, } rag_context = build_rag_context( query=user_query, sensor_uuid=farm_uuid, config=cfg, kb_name=KB_NAME, service_id=SERVICE_ID, farm_details=farm_details, ) system_prompt, messages = _build_messages( service=service, cfg=cfg, query=user_query, rag_context=rag_context, structured_context=structured_context, ) audit_log = _create_audit_log( farm_uuid=farm_uuid, service_id=SERVICE_ID, model=model, query=user_query, system_prompt=system_prompt, messages=messages, ) try: response = client.chat.completions.create(model=model, messages=messages) raw = response.choices[0].message.content.strip() parsed = _clean_json(raw) _complete_audit_log(audit_log, raw) except Exception as exc: logger.error("Water need prediction insight failed for %s: %s", farm_uuid, exc) _fail_audit_log(audit_log, str(exc)) raise RuntimeError(f"Water need prediction insight failed for farm {farm_uuid}.") from exc parsed = _validate_prediction_insight(parsed) parsed["farm_uuid"] = farm_uuid parsed["raw_response"] = raw return parsed