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脱贫感党恩扶贫暖人心——记贵溪市塘湾镇致富带头人崔学军

Old Liberated Area Built(2020)

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Abstract
在贵溪市塘湾镇佳欣毛绒玩具加工厂内,厂长崔学军正麻利地把整袋的玩具成品扎捆、打包发往外地. “今年跟随国家一带一路政策,我们的产品生意不错,就刚刚还接到义乌外贸公司电话,东南亚市场需要继续增加订单”.崔学军一边忙活,一边给工人们通报好消息.那干练而自信的眼神,任谁也想像不到,三年前,左腿残疾的他还是一名艰难谋生的建档立卡贫困户.而今,他将“佳欣毛绒玩具加工厂”办得风生水起.脱贫致富后的崔学军感恩党和政府的好政策,真情回报做扶贫热心人,带动30余名贫困户一起走上脱贫之路.
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