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Is machine learning suitable for girls?
2022-06-30 21:50:00 【Program Yuanke】
Is machine learning suitable for girls ? It is generally believed , Boys are more suitable for hands-on and science and engineering oriented courses , It's not , From an educational point of view , Some kind of intelligence , Such as spatial intelligence 、 Logical intelligence , Only continuous training , To get better .
Is machine learning suitable for girls ?
Of course it suits , Everyone has intelligence strengths and weaknesses , The purpose of education is to constantly strengthen and improve intellectual weaknesses , Promote and develop smart strengths , Such talents are developed .
Many parents and friends think that girls' sense of spatial structure 、 Logical thinking is not as good as boys , This understanding may come from experience to some extent , But that's why , We need to strengthen the training and training of girls in this field .

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