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豆瓣电影top250、斗鱼爬取json数据以及爬取美女图片、淘宝、有缘、CrawlSpider爬取红娘网相亲人的部分基本信息以及红娘网分布式爬取和存储redis、爬虫小demo、Selenium、爬取多点、django开发接口、爬取有缘网信息、模拟知乎登录、模拟github登录、模拟图虫网登录、爬取多点商城整站数据、爬取微信公众号历史文章、爬取微信群或者微信好友分享的文章、itchat监听指定微信公众号分享的文章

  • Updated Dec 24, 2020
  • Python

微信机器人,基于Python itchat接口功能实例展示:01-itchat获取微信好友或者微信群分享文章、02-itchat获取微信公众号文章、03-itchat监听微信公众号发送的文章、04 itchat监听微信群或好友撤回的消息、05 itchat获得微信好友信息以及表图对比、06 python打印出微信被删除好友、07 itchat自动回复好友、08 itchat微信好友个性签名词云图、09 itchat微信好友性别比例、10 微信群或微信好友撤回消息拦截、11 itchat微信群或好友之间转发消息

  • Updated May 14, 2020
  • Python
skekre98
skekre98 commented Nov 4, 2020

Description of feature/enhancement
Current documentation in ../inference/inference_network.py is lacking. Could use better documentation.

Description of implementation
See ../modules/scraper.py for examples of documentation. Should be in following format:

"""
Function description
----------
input : type
    description of input parameter
Returns
-------
output 
Stock_Market_Data_Analysis

Scrape, analyze & visualize stock market data for the S&P500 using Python. Build a basic trading strategy using machine learning to assess company performance and determine buy, sell, hold. Read me & instructions available in Spanish. This is a working repo, with plans to expand the project from technical analysis to fundamental analysis.

  • Updated Aug 6, 2020
  • Jupyter Notebook
garganshul108
garganshul108 commented Oct 31, 2019

This project is mere collection of scripts working together.

So it's kind of difficult to guess the flow/working of these files

It would be better if some kind of documentation about the working flow of the scripts is available for the interested contributors to read, and understand better.

Anyone who is willing to take up this task and document the working / flow of this project, is welc

This repo contains regression and classification projects. Examples: development of predictive models for comments on social media websites; building classifiers to predict outcomes in sports competitions; churn analysis; prediction of clicks on online ads; analysis of the opioids crisis and an analysis of retail store expansion strategies using Lasso and Ridge regressions.

  • Updated Feb 26, 2020
  • Jupyter Notebook

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