Files
李顺东 ae681575b9 feat(job_crawler): initialize job crawler service with kafka integration
- Add technical documentation (技术方案.md) with system architecture and design details
- Create FastAPI application structure with modular organization (api, core, models, services, utils)
- Implement job data crawler service with incremental collection from third-party API
- Add Kafka service integration with Docker Compose configuration for message queue
- Create data models for job listings, progress tracking, and API responses
- Implement REST API endpoints for data consumption (/consume, /status) and task management
- Add progress persistence layer using SQLite for tracking collection offsets
- Implement date filtering logic to extract data published within 7 days
- Create API client service for third-party data source integration
- Add configuration management with environment-based settings
- Include Docker support with Dockerfile and docker-compose.yml for containerized deployment
- Add logging configuration and utility functions for date parsing
- Include requirements.txt with all Python dependencies and README documentation
2026-01-15 17:09:43 +08:00

24 lines
434 B
Python

"""API响应模型"""
from pydantic import BaseModel
from typing import Optional, Any
class ApiResponse(BaseModel):
"""通用API响应"""
code: int = 0
message: str = "success"
data: Optional[Any] = None
class ConsumeResponse(BaseModel):
"""消费响应"""
code: int = 0
data: list = []
count: int = 0
class StatusResponse(BaseModel):
"""状态响应"""
code: int = 0
data: dict = {}