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DASHIQIAO CITY GANGDU CUNYOUFANG

-China

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DASHIQIAO CITY GANGDU CUNYOUFANG
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Company Address: Gaizhou City, Liaoning,,,China 
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Postal Code:
115100 
Telephone Number: 86-417-5812672 
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Industrial Classification: Agriculture -- Plant oils 
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