电影《危机解密 》(The Fifth Estate )中使用的是什么编辑器?
回复内容:
这是 Awesome 窗口管理器 3.4 版(或早一点):about - awesome window manager 有个图显示的那段 Lua 代码就是它的配置文件的一部分。右下角那个系统监视器是 htop
用于显示多个终端 / 视图的东东(下边那行 F7 Mkdir 之类的,以及各视图周围的框线)是 mc 文件管理器(midnight commander)
IRC 客户端(好像是 mIRC?我看到这个字样了)、网络工具、邮件/新闻组客户端(?)未知
PS: 发现还有段和 Tor 相关的 Python 代码呢 =w=

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