写这篇文章的目的,是以这件事作为一面镜子,让我自己好好思考一下,我自己的前途和出路。
为什么通过数据训练能够进行人脸检测或者识别目标?
从大量的训练数据中,寻找有效特征,从输入空间或者是特征空间得到输入,通过模型回归 landmark 值或者用超平面分离数据等等等等。
我没有肯定的答案,但仔细思考后,我决定从下面几个方面入手。
所以,我的认知是高手不会落寞。
-
专业论文
-
行业动态
-
新技术
-
认知提升
-
沟通技巧
-
基本的常识与见解
-
基本的形态体态礼仪
而这些都需要学习,并且是长期的学习。
-
年轻时多买实物如房子。
-
薪水再高点时,追求一些高风险的理财产品。
-
提高业务能力,提高工资收入。
-
尝试副业,如技术网站上的付费专栏。
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