AKShare requires Python(64 bit) 3.7 or greater, aims to make fetch financial data as convenient as possible.
Write less, get more!
- Documentation: 中文文档
pip install akshare --upgrade
pip install akshare -i http://mirrors.aliyun.com/pypi/simple/ --trusted-host=mirrors.aliyun.com --upgrade
Please check out documentation if you want to contribute to AKShare
docker pull registry.cn-hangzhou.aliyuncs.com/akshare/akdocker
docker run -it registry.cn-hangzhou.aliyuncs.com/akshare/akdocker python
import akshare as ak
ak.__version__
Code
import akshare as ak
stock_zh_a_hist_df = ak.stock_zh_a_hist(symbol="000001", period="daily", start_date="20170301", end_date='20210907', adjust="")
print(stock_zh_a_hist_df)
Output
日期 开盘 收盘 最高 ... 振幅 涨跌幅 涨跌额 换手率
0 2017-03-01 9.49 9.49 9.55 ... 0.84 0.11 0.01 0.21
1 2017-03-02 9.51 9.43 9.54 ... 1.26 -0.63 -0.06 0.24
2 2017-03-03 9.41 9.40 9.43 ... 0.74 -0.32 -0.03 0.20
3 2017-03-06 9.40 9.45 9.46 ... 0.74 0.53 0.05 0.24
4 2017-03-07 9.44 9.45 9.46 ... 0.63 0.00 0.00 0.17
... ... ... ... ... ... ... ... ...
1100 2021-09-01 17.48 17.88 17.92 ... 5.11 0.45 0.08 1.19
1101 2021-09-02 18.00 18.40 18.78 ... 5.48 2.91 0.52 1.25
1102 2021-09-03 18.50 18.04 18.50 ... 4.35 -1.96 -0.36 0.72
1103 2021-09-06 17.93 18.45 18.60 ... 4.55 2.27 0.41 0.78
1104 2021-09-07 18.60 19.24 19.56 ... 6.56 4.28 0.79 0.84
[1105 rows x 11 columns]
Code
import akshare as ak
import mplfinance as mpf # Please install mplfinance as follows: pip install mplfinance
stock_us_daily_df = ak.stock_us_daily(symbol="AAPL", adjust="qfq")
stock_us_daily_df = stock_us_daily_df[["open", "high", "low", "close", "volume"]]
stock_us_daily_df.columns = ["Open", "High", "Low", "Close", "Volume"]
stock_us_daily_df.index.name = "Date"
stock_us_daily_df = stock_us_daily_df["2020-04-01": "2020-04-29"]
mpf.plot(stock_us_daily_df, type='candle', mav=(3, 6, 9), volume=True, show_nontrading=False)
Output
Pay attention to 数据科学家 Official Accounts to get more information about Quant, ML, DS and so on.
Pay attention to 数据科学实战 WeChat Official Accounts to get the AKShare updated info:
Application to add AKShare-VIP群 QQ group and talk about AKShare issues, please contact AKShare-小助手 QQ: 2875328287
- Easy of use: Just one line code to fetch the data;
- Extensible: Easy to customize your own code with other application;
- Powerful: Python ecosystem.
AKShare is still under developing, feel free to open issues and pull requests:
- Report or fix bugs
- Require or publish interface
- Write or fix documentation
- Add test cases
Notice: We use Black to format the code
- All data provided by AKShare is just for academic research purpose;
- The data provided by AKShare is for reference only and does not constitute any investment proposal;
- Any investor based on AKShare research should pay more attention to data risk;
- AKShare will insist on providing open-source financial data;
- Based on some uncontrollable factors, some data interfaces in AKShare may be removed;
- Please follow the relevant open-source protocol used by AKShare.
Use the badge in your project's README.md:
[![Data: akshare](https://img.shields.io/badge/Data%20Science-AKShare-green)](https://github.com/akfamily/akshare)
Using the badge in README.rst:
.. image:: https://img.shields.io/badge/Data%20Science-AKShare-green
:target: https://github.com/akfamily/akshare
Looks like this:
Please use this bibtex if you want to cite this repository in your publications:
@misc{akshare,
author = {Albert King},
title = {AKShare},
year = {2019},
publisher = {GitHub},
journal = {GitHub repository},
howpublished = {\url{https://github.com/akfamily/akshare}},
}
Special thanks FuShare for the opportunity of learning from the project;
Special thanks TuShare for the opportunity of learning from the project;
Thanks for the data provided by 生意社网站;
Thanks for the data provided by 奇货可查网站;
Thanks for the data provided by 智道智科网站;
Thanks for the data provided by 中国银行间市场交易商协会网站;
Thanks for the data provided by 99期货网站;
Thanks for the data provided by 英为财情网站;
Thanks for the data provided by 中国外汇交易中心暨全国银行间同业拆借中心网站;
Thanks for the data provided by 金十数据网站;
Thanks for the data provided by 和讯财经网站;
Thanks for the data provided by 新浪财经网站;
Thanks for the data provided by Oxford-Man Institute 网站;
Thanks for the data provided by DACHENG-XIU 网站;
Thanks for the data provided by 上海证券交易所网站;
Thanks for the data provided by 深证证券交易所网站;
Thanks for the data provided by 中国金融期货交易所网站;
Thanks for the data provided by 上海期货交易所网站;
Thanks for the data provided by 大连商品交易所网站;
Thanks for the data provided by 郑州商品交易所网站;
Thanks for the data provided by 上海国际能源交易中心网站;
Thanks for the data provided by Timeanddate 网站;
Thanks for the data provided by 河北省空气质量预报信息发布系统网站;
Thanks for the data provided by 南华期货网站;
Thanks for the data provided by Economic Policy Uncertainty 网站;
Thanks for the data provided by 微博指数网站;
Thanks for the data provided by 百度指数网站;
Thanks for the data provided by 谷歌指数网站;
Thanks for the data provided by 申万指数网站;
Thanks for the data provided by 真气网网站;
Thanks for the data provided by 财富网站;
Thanks for the data provided by 中国证券投资基金业协会网站;
Thanks for the data provided by 猫眼电影网站;
Thanks for the data provided by Expatistan 网站;
Thanks for the data provided by 北京市碳排放权电子交易平台网站;
Thanks for the data provided by 国家金融与发展实验室网站;
Thanks for the data provided by IT桔子网站;
Thanks for the data provided by 东方财富网站;
Thanks for the data provided by 义乌小商品指数网站;
Thanks for the data provided by 中国国家发展和改革委员会网站;
Thanks for the data provided by 163网站;
Thanks for the data provided by 丁香园网站;
Thanks for the data provided by 百度新型肺炎网站;
Thanks for the data provided by 百度迁徙网站;
Thanks for the data provided by 新型肺炎-相同行程查询工具网站;
Thanks for the data provided by 新型肺炎-小区查询网站;
Thanks for the data provided by 商业特许经营信息管理网站;
Thanks for the data provided by 慈善中国网站;
Thanks for the data provided by 思知网站;
Thanks for the data provided by Currencyscoop网站;
Thanks for the data provided by 新加坡交易所网站;
Thanks for the data provided by 宽客在线;
Thanks for the tutorials provided by 微信公众号: Python大咖谈.