Sentence 4

  1. Besides looking for self-knowledge, people also attend a university or college to expand their knowledge in subjects they find interesting. For many, this will be their last chance for a long time to learn about something that dose not relate to their career.

1‘ Besides doing sth., people also do sth. to do another thing

e.g. Besides making friends with her, I also went to see her to get her roommate‘s phone number.

2‘ looking for self-knowledge 增加对自己的了解

3‘ to expand one‘s knowledge in/about subjects  [in在这个范围之内;about包括一些relevant的内容]

to expend my knowledge in math/economy

4‘ someone find interesting == that someone is interested in

e.g. Sometimes, people make phome call just in order to learn more information about the product they find interesting when whatching TV.

5‘ does not relate to

Sometimes we realize that advertising never relate to our own healthy eating habit.

6‘ this will be someone‘s last chance for along time to do ...

来自为知笔记(Wiz)

时间: 2024-10-25 22:38:40

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