records

records

适用于多种数据库的简洁SQL查询Python库

Records是一个专注于执行原始SQL查询的Python库,支持RedShift、Postgres、MySQL等多种关系型数据库。它提供简洁的接口处理查询结果,并支持将数据导出为CSV、XLS、JSON等格式。通过集成Tablib,Records简化了数据分享和报告生成过程。该库旨在优化SQL工作流程,使开发者能够专注于SQL编写,而无需过多关注复杂的配置细节。

RecordsSQL数据库查询数据导出Python库Github开源项目

Records: SQL for Humans™

image

Records is a very simple, but powerful, library for making raw SQL queries to most relational databases.

image

Just write SQL. No bells, no whistles. This common task can be surprisingly difficult with the standard tools available. This library strives to make this workflow as simple as possible, while providing an elegant interface to work with your query results.

Database support includes RedShift, Postgres, MySQL, SQLite, Oracle, and MS-SQL (drivers not included).

☤ The Basics

We know how to write SQL, so let's send some to our database:

import records db = records.Database('postgres://...') rows = db.query('select * from active_users') # or db.query_file('sqls/active-users.sql')

Grab one row at a time:

>>> rows[0] <Record {"username": "model-t", "active": true, "name": "Henry Ford", "user_email": "model-t@gmail.com", "timezone": "2016-02-06 22:28:23.894202"}>

Or iterate over them:

for r in rows: print(r.name, r.user_email)

Values can be accessed many ways: row.user_email, row['user_email'], or row[3].

Fields with non-alphanumeric characters (like spaces) are also fully supported.

Or store a copy of your record collection for later reference:

>>> rows.all() [<Record {"username": ...}>, <Record {"username": ...}>, <Record {"username": ...}>, ...]

If you're only expecting one result:

>>> rows.first() <Record {"username": ...}>

Other options include rows.as_dict() and rows.as_dict(ordered=True).

☤ Features

  • Iterated rows are cached for future reference.
  • $DATABASE_URL environment variable support.
  • Convenience Database.get_table_names method.
  • Command-line <span class="title-ref">records</span> tool for exporting queries.
  • Safe parameterization: Database.query('life=:everything', everything=42).
  • Queries can be passed as strings or filenames, parameters supported.
  • Transactions: t = Database.transaction(); t.commit().
  • Bulk actions: Database.bulk_query() & Database.bulk_query_file().

Records is proudly powered by SQLAlchemy and Tablib.

☤ Data Export Functionality

Records also features full Tablib integration, and allows you to export your results to CSV, XLS, JSON, HTML Tables, YAML, or Pandas DataFrames with a single line of code. Excellent for sharing data with friends, or generating reports.

>>> print(rows.dataset) username|active|name |user_email |timezone --------|------|----------|-----------------|-------------------------- model-t |True |Henry Ford|model-t@gmail.com|2016-02-06 22:28:23.894202 ...

Comma Separated Values (CSV)

>>> print(rows.export('csv')) username,active,name,user_email,timezone model-t,True,Henry Ford,model-t@gmail.com,2016-02-06 22:28:23.894202 ...

YAML Ain't Markup Language (YAML)

>>> print(rows.export('yaml')) - {active: true, name: Henry Ford, timezone: '2016-02-06 22:28:23.894202', user_email: model-t@gmail.com, username: model-t} ...

JavaScript Object Notation (JSON)

>>> print(rows.export('json')) [{"username": "model-t", "active": true, "name": "Henry Ford", "user_email": "model-t@gmail.com", "timezone": "2016-02-06 22:28:23.894202"}, ...]

Microsoft Excel (xls, xlsx)

with open('report.xls', 'wb') as f: f.write(rows.export('xls'))

Pandas DataFrame

>>> rows.export('df') username active name user_email timezone 0 model-t True Henry Ford model-t@gmail.com 2016-02-06 22:28:23.894202

You get the point. All other features of Tablib are also available, so you can sort results, add/remove columns/rows, remove duplicates, transpose the table, add separators, slice data by column, and more.

See the Tablib Documentation for more details.

☤ Installation

Of course, the recommended installation method is pipenv:

$ pipenv install records[pandas]
✨🍰✨

☤ Thank You

Thanks for checking this library out! I hope you find it useful.

Of course, there's always room for improvement. Feel free to open an issue so we can make Records better, stronger, faster.


Star History Chart

编辑推荐精选

商汤小浣熊

商汤小浣熊

最强AI数据分析助手

小浣熊家族Raccoon,您的AI智能助手,致力于通过先进的人工智能技术,为用户提供高效、便捷的智能服务。无论是日常咨询还是专业问题解答,小浣熊都能以快速、准确的响应满足您的需求,让您的生活更加智能便捷。

imini AI

imini AI

像人一样思考的AI智能体

imini 是一款超级AI智能体,能根据人类指令,自主思考、自主完成、并且交付结果的AI智能体。

Keevx

Keevx

AI数字人视频创作平台

Keevx 一款开箱即用的AI数字人视频创作平台,广泛适用于电商广告、企业培训与社媒宣传,让全球企业与个人创作者无需拍摄剪辑,就能快速生成多语言、高质量的专业视频。

即梦AI

即梦AI

一站式AI创作平台

提供 AI 驱动的图片、视频生成及数字人等功能,助力创意创作

扣子-AI办公

扣子-AI办公

AI办公助手,复杂任务高效处理

AI办公助手,复杂任务高效处理。办公效率低?扣子空间AI助手支持播客生成、PPT制作、网页开发及报告写作,覆盖科研、商业、舆情等领域的专家Agent 7x24小时响应,生活工作无缝切换,提升50%效率!

TRAE编程

TRAE编程

AI辅助编程,代码自动修复

Trae是一种自适应的集成开发环境(IDE),通过自动化和多元协作改变开发流程。利用Trae,团队能够更快速、精确地编写和部署代码,从而提高编程效率和项目交付速度。Trae具备上下文感知和代码自动完成功能,是提升开发效率的理想工具。

热门AI工具生产力协作转型TraeAI IDE
蛙蛙写作

蛙蛙写作

AI小说写作助手,一站式润色、改写、扩写

蛙蛙写作—国内先进的AI写作平台,涵盖小说、学术、社交媒体等多场景。提供续写、改写、润色等功能,助力创作者高效优化写作流程。界面简洁,功能全面,适合各类写作者提升内容品质和工作效率。

AI助手AI工具AI写作工具AI辅助写作蛙蛙写作学术助手办公助手营销助手
问小白

问小白

全能AI智能助手,随时解答生活与工作的多样问题

问小白,由元石科技研发的AI智能助手,快速准确地解答各种生活和工作问题,包括但不限于搜索、规划和社交互动,帮助用户在日常生活中提高效率,轻松管理个人事务。

聊天机器人AI助手热门AI工具AI对话
Transly

Transly

实时语音翻译/同声传译工具

Transly是一个多场景的AI大语言模型驱动的同声传译、专业翻译助手,它拥有超精准的音频识别翻译能力,几乎零延迟的使用体验和支持多国语言可以让你带它走遍全球,无论你是留学生、商务人士、韩剧美剧爱好者,还是出国游玩、多国会议、跨国追星等等,都可以满足你所有需要同传的场景需求,线上线下通用,扫除语言障碍,让全世界的语言交流不再有国界。

讯飞智文

讯飞智文

一键生成PPT和Word,让学习生活更轻松

讯飞智文是一个利用 AI 技术的项目,能够帮助用户生成 PPT 以及各类文档。无论是商业领域的市场分析报告、年度目标制定,还是学生群体的职业生涯规划、实习避坑指南,亦或是活动策划、旅游攻略等内容,它都能提供支持,帮助用户精准表达,轻松呈现各种信息。

热门AI工具AI办公办公工具讯飞智文AI在线生成PPTAI撰写助手多语种文档生成AI自动配图
下拉加载更多