Files
AIclinicalresearch/python-microservice/operations/filter.py
HaHafeng dac3cecf78 feat(iit): Complete IIT Manager Agent Day 1 - Environment initialization and WeChat integration
Summary:
- Complete IIT Manager Agent MVP Day 1 (12.5% progress)
- Database: Create iit_schema with 5 tables (IitProject, IitPendingAction, IitTaskRun, IitUserMapping, IitAuditLog)
- Backend: Add module structure (577 lines) and types (223 lines)
- WeChat: Configure Enterprise WeChat app (CorpID, AgentID, Secret)
- WeChat: Obtain web authorization and JS-SDK authorization
- WeChat: Configure trusted domain (iit.xunzhengyixue.com)
- Frontend: Deploy v1.2 with WeChat domain verification file
- Frontend: Fix CRLF issue in docker-entrypoint.sh (CRLF -> LF)
- Testing: 11/11 database CRUD tests passed
- Testing: Access Token retrieval test passed
- Docs: Create module status and development guide
- Docs: Update MVP task list with Day 1 completion
- Docs: Rename deployment doc to SAE real-time status record
- Deployment: Update frontend internal IP to 172.17.173.80

Technical Details:
- Prisma: Multi-schema support (iit_schema)
- pg-boss: Job queue integration prepared
- Taro 4.x: Framework selected for WeChat Mini Program
- Shadow State: Architecture foundation laid
- Docker: Fix entrypoint script line endings for Linux container

Status: Day 1/14 complete, ready for Day 2 REDCap integration
2026-01-01 14:32:58 +08:00

140 lines
3.4 KiB
Python
Raw Blame History

This file contains ambiguous Unicode characters
This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.
"""
高级筛选操作
提供多条件筛选功能支持AND/OR逻辑组合。
"""
import pandas as pd
from typing import List, Dict, Any, Literal
def apply_filter(
df: pd.DataFrame,
conditions: List[Dict[str, Any]],
logic: Literal['and', 'or'] = 'and'
) -> pd.DataFrame:
"""
应用筛选条件
Args:
df: 输入数据框
conditions: 筛选条件列表,每个条件包含:
- column: 列名
- operator: 运算符 (=, !=, >, <, >=, <=, contains, not_contains,
starts_with, ends_with, is_null, not_null)
- value: 值is_null和not_null不需要
logic: 逻辑组合方式 ('and''or')
Returns:
筛选后的数据框
Examples:
>>> df = pd.DataFrame({'年龄': [25, 35, 45], '性别': ['', '', '']})
>>> conditions = [
... {'column': '年龄', 'operator': '>', 'value': 30},
... {'column': '性别', 'operator': '=', 'value': ''}
... ]
>>> result = apply_filter(df, conditions, logic='and')
>>> len(result)
1
"""
if not conditions:
raise ValueError('筛选条件不能为空')
if df.empty:
return df
# 生成各个条件的mask
masks = []
for cond in conditions:
column = cond['column']
operator = cond['operator']
value = cond.get('value')
# 验证列是否存在
if column not in df.columns:
raise KeyError(f"'{column}' 不存在")
# 根据运算符生成mask
if operator == '=':
mask = df[column] == value
elif operator == '!=':
mask = df[column] != value
elif operator == '>':
mask = df[column] > value
elif operator == '<':
mask = df[column] < value
elif operator == '>=':
mask = df[column] >= value
elif operator == '<=':
mask = df[column] <= value
elif operator == 'contains':
mask = df[column].astype(str).str.contains(str(value), na=False)
elif operator == 'not_contains':
mask = ~df[column].astype(str).str.contains(str(value), na=False)
elif operator == 'starts_with':
mask = df[column].astype(str).str.startswith(str(value), na=False)
elif operator == 'ends_with':
mask = df[column].astype(str).str.endswith(str(value), na=False)
elif operator == 'is_null':
mask = df[column].isna()
elif operator == 'not_null':
mask = df[column].notna()
else:
raise ValueError(f"不支持的运算符: {operator}")
masks.append(mask)
# 组合所有条件
if logic == 'and':
final_mask = pd.concat(masks, axis=1).all(axis=1)
elif logic == 'or':
final_mask = pd.concat(masks, axis=1).any(axis=1)
else:
raise ValueError(f"不支持的逻辑运算: {logic}")
# 应用筛选
result = df[final_mask].copy()
# 打印统计信息
original_rows = len(df)
filtered_rows = len(result)
removed_rows = original_rows - filtered_rows
print(f'原始数据: {original_rows}')
print(f'筛选后: {filtered_rows}')
print(f'删除: {removed_rows} 行 ({removed_rows/original_rows*100:.1f}%)')
return result