【steal piano】GitHub偷情分析工具!

Overview

【steal piano】GitHub偷情分析工具!

你是否有这样的困扰,有一天你的仓库被很多人加了star,但是你却不知道这些人都是从哪来的?

别担心,GitHub偷情分析工具帮你轻松解决问题!

原理

GitHub偷情分析工具透过分析star的时间以及他们之间的follow关系,可以推测出每个star大概是被谁吸引过来的。

就是把所有仓库的star事件按时间排序,然后看看每个star的三天之内,那个人的follower有没有也来star。

样例

可以看到每个人直接加星的数量,以及每个人吸引来的间接加星的数量——

bobby285271 直接: 2 间接: 7
BeautyYuYanli 直接: 4 间接: 7
akemimadoka 直接: 1 间接: 7
cubercsl 直接: 1 间接: 7
LoRexxar 直接: 1 间接: 7
miaotony 直接: 1 间接: 7
solstice23 直接: 5 间接: 8
outloudvi 直接: 2 间接: 8
VergeDX 直接: 6 间接: 8
Naville 直接: 1 间接: 8
LaoshuBaby 直接: 6 间接: 9
wfjsw 直接: 1 间接: 9
kagurazakayashi 直接: 1 间接: 10
Co2333 直接: 5 间接: 10
kirainmoe 直接: 3 间接: 11
Ir1d 直接: 1 间接: 11
nekohasekai 直接: 3 间接: 12
Konano 直接: 1 间接: 12
mzdluo123 直接: 4 间接: 15
Enter-tainer 直接: 2 间接: 16
ccloli 直接: 4 间接: 16
b1f6c1c4 直接: 2 间接: 22
memset0 直接: 3 间接: 37
lz233 直接: 13 间接: 48
SCLeoX 直接: 14 间接: 49

可视化

./img.webp

使用方法

首先你需要1个Python3.6以上版本,然后pip install -r requirements.txt

接口是这样——

def ember(token, 我, days=365, save_path='1.png'): 
    ...
  • token: 你要自己去GitHub设置的Personal access tokens里注册一个,然后复制回来。(不需要加权限,用来提高GitHub访问频率的限制)

  • : 你的名字,比如RimoChan。

  • days: 扫描过去多少天内的star记录。

  • save_path: 保存可视化图片路径。

为什么是偷情???

因为找到GitHub上谁最喜欢你之后,你就可以去和她偷情了!

不说了不说了,我要去和SCLeoX偷情了,就这样,大家88。

Owner
黄巍
字节跳动首席吃点心员
黄巍
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