- 新增图像生成接口,支持试用、积分和自定义API Key模式 - 实现生成图片结果异步上传至MinIO存储,带重试机制 - 优化积分预扣除和异常退还逻辑,保障用户积分准确 - 添加获取生成历史记录接口,支持时间范围和分页 - 提供本地字典配置接口,支持模型、比例、提示模板和尺寸 - 实现图片批量上传接口,支持S3兼容对象存储 feat(admin): 增加管理员角色管理与权限分配接口 - 实现角色列表查询、角色创建、更新及删除功能 - 增加权限列表查询接口 - 实现用户角色分配接口,便于统一管理用户权限 - 增加系统字典增删查改接口,支持分类过滤和排序 - 权限控制全面覆盖管理接口,保证安全访问 feat(auth): 完善用户登录注册及权限相关接口与页面 - 实现手机号验证码发送及校验功能,保障注册安全 - 支持手机号注册、登录及退出接口,集成日志记录 - 增加修改密码功能,验证原密码后更新 - 提供动态导航菜单接口,基于权限展示不同菜单 - 实现管理界面路由及日志、角色、字典管理页面访问权限控制 - 添加系统日志查询接口,支持关键词和等级筛选 feat(app): 初始化Flask应用并配置蓝图与数据库 - 创建应用程序工厂,加载配置,初始化数据库和Redis客户端 - 注册认证、API及管理员蓝图,整合路由 - 根路由渲染主页模板 - 应用上下文中自动创建数据库表,保证运行环境准备完毕 feat(database): 提供数据库创建与迁移支持脚本 - 新增数据库创建脚本,支持自动检测是否已存在 - 添加数据库表初始化脚本,支持创建和删除所有表 - 实现RBAC权限初始化,包含基础权限和角色创建 - 新增字段手动修复脚本,添加用户API Key和积分字段 - 强制迁移脚本支持清理连接和修复表结构,初始化默认数据及角色分配 feat(config): 新增系统配置参数 - 配置数据库、Redis、Session和MinIO相关参数 - 添加AI接口地址及试用Key配置 - 集成阿里云短信服务配置及开发模式相关参数 feat(extensions): 初始化数据库、Redis和MinIO客户端 - 创建全局SQLAlchemy数据库实例和Redis客户端 - 配置基于boto3的MinIO兼容S3客户端 chore(logs): 添加示例系统日志文件 - 记录用户请求、验证码发送成功与失败的日志信息
183 lines
4.1 KiB
Python
183 lines
4.1 KiB
Python
from typing import Union
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from .aggregation import Asc, Desc, Reducer, SortDirection
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class FieldOnlyReducer(Reducer):
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"""See https://redis.io/docs/interact/search-and-query/search/aggregations/"""
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def __init__(self, field: str) -> None:
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super().__init__(field)
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self._field = field
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class count(Reducer):
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"""
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Counts the number of results in the group
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"""
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NAME = "COUNT"
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def __init__(self) -> None:
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super().__init__()
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class sum(FieldOnlyReducer):
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"""
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Calculates the sum of all the values in the given fields within the group
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"""
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NAME = "SUM"
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def __init__(self, field: str) -> None:
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super().__init__(field)
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class min(FieldOnlyReducer):
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"""
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Calculates the smallest value in the given field within the group
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"""
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NAME = "MIN"
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def __init__(self, field: str) -> None:
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super().__init__(field)
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class max(FieldOnlyReducer):
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"""
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Calculates the largest value in the given field within the group
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"""
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NAME = "MAX"
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def __init__(self, field: str) -> None:
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super().__init__(field)
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class avg(FieldOnlyReducer):
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"""
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Calculates the mean value in the given field within the group
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"""
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NAME = "AVG"
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def __init__(self, field: str) -> None:
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super().__init__(field)
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class tolist(FieldOnlyReducer):
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"""
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Returns all the matched properties in a list
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"""
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NAME = "TOLIST"
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def __init__(self, field: str) -> None:
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super().__init__(field)
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class count_distinct(FieldOnlyReducer):
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"""
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Calculate the number of distinct values contained in all the results in
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the group for the given field
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"""
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NAME = "COUNT_DISTINCT"
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def __init__(self, field: str) -> None:
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super().__init__(field)
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class count_distinctish(FieldOnlyReducer):
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"""
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Calculate the number of distinct values contained in all the results in the
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group for the given field. This uses a faster algorithm than
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`count_distinct` but is less accurate
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"""
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NAME = "COUNT_DISTINCTISH"
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class quantile(Reducer):
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"""
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Return the value for the nth percentile within the range of values for the
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field within the group.
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"""
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NAME = "QUANTILE"
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def __init__(self, field: str, pct: float) -> None:
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super().__init__(field, str(pct))
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self._field = field
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class stddev(FieldOnlyReducer):
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"""
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Return the standard deviation for the values within the group
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"""
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NAME = "STDDEV"
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def __init__(self, field: str) -> None:
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super().__init__(field)
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class first_value(Reducer):
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"""
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Selects the first value within the group according to sorting parameters
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"""
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NAME = "FIRST_VALUE"
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def __init__(self, field: str, *byfields: Union[Asc, Desc]) -> None:
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"""
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Selects the first value of the given field within the group.
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### Parameter
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- **field**: Source field used for the value
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- **byfields**: How to sort the results. This can be either the
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*class* of `aggregation.Asc` or `aggregation.Desc` in which
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case the field `field` is also used as the sort input.
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`byfields` can also be one or more *instances* of `Asc` or `Desc`
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indicating the sort order for these fields
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"""
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fieldstrs = []
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if (
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len(byfields) == 1
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and isinstance(byfields[0], type)
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and issubclass(byfields[0], SortDirection)
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):
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byfields = [byfields[0](field)]
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for f in byfields:
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fieldstrs += [f.field, f.DIRSTRING]
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args = [field]
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if fieldstrs:
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args += ["BY"] + fieldstrs
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super().__init__(*args)
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self._field = field
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class random_sample(Reducer):
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"""
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Returns a random sample of items from the dataset, from the given property
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"""
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NAME = "RANDOM_SAMPLE"
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def __init__(self, field: str, size: int) -> None:
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"""
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### Parameter
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**field**: Field to sample from
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**size**: Return this many items (can be less)
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"""
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args = [field, str(size)]
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super().__init__(*args)
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self._field = field
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