基层的优势

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常听有的通讯员说:我们整天在基层,哪有什么新闻可写呀。我在基层搞了四年多的报道,刚开始也有同感,随着时间的推移,我的想法也就变了。一个小小的基层单位它固然比不上省、市、县级单位,但是,您不妨留心一下:从思想教育到生产经营管理;从青年民兵到妇联工会等等,哪一项工作不都是要从基层搞起呢?因此,有人说:“基层是一个五彩缤纷的世界!”这是有一定道理的. Some correspondents often hear that: We are at grassroots level. What kind of news can be written. I started more than four years at the grassroots level, and I felt the same at the beginning. As time passed, my thoughts changed. A small grassroots unit is certainly smaller than the provincial, municipal and county units, but you may wish to look: from ideological education to production and management; from young militias to women’s federations and so on, which one is not a job To start from the grassroots level? So some people say: “The grassroots level is a colorful world!” There is some truth to this.
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