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stock's Introduction

**2000年以来股票历史数据库

重要提示:重构中,将重新梳理基础资料和增加相关财务历史数据,相关代码还未测试验证

**2000年以来到2018年2月份的历史数据,包括股票基础信息和每支股票每天的基本交易信息

数据库下载

数据库默认在当前代码目录的Data文件夹,属于XCode的默认配置

数据库下载地址如下:

1.股票基础信息,链接:https://pan.baidu.com/s/1qZJIy8s,密码:61e3

2.2000年到2018年历史Json源数据,链接:https://pan.baidu.com/s/1jIY70bG,密码:cmpw

3.2000年到2018年日历史数据Sqlite文件,链接:https://pan.baidu.com/s/1eTxcjdC,密码:ujbn

联系我

如果您有好的建议,可以和我联系:

Blog:http://www.cnblogs.com/asxinyu/

知乎专栏: .NET开源项目

知乎专栏: PowerBI社区

E-mail: [email protected]

QQ:1287 2637 03

WebChat:PowerDataWorld

stock's People

Contributors

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Stargazers

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stock's Issues

new complementary tool

I want to offer a new point of view, and my colaboraty work

Why this stock prediction project ?

Things this project offers that I did not find in other free projects, are:

  • Testing with +-30 models. Multiple combinations features and multiple selections of models (TensorFlow , XGBoost and Sklearn )
  • Threshold and quality models evaluation
  • Use 1k technical indicators
  • Method of best features selection (technical indicators)
  • Categorical target (do buy, do sell and do nothing) simple and dynamic, instead of continuous target variable
  • Powerful open-market-real-time evaluation system
  • Versatile integration with: Twitter, Telegram and Mail
  • Train Machine Learning model with Fresh today stock data

https://github.com/Leci37/stocks-prediction-Machine-learning-RealTime-telegram/tree/develop

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