(Langfang) International Economic and Trade Fair

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(Langfang) International Economic and Trade Fair Dear Madam/Sir, China (Langfang) International Economic and Trade Fair (518 for short), sponsored by the Ministry of Commerce of People's Republic of China and the People's Government of Hebei Province, will take place from 18 to 21 May 2018. Visitors flow rate is at least 10000 per day. We would like to invite you to attend this Fair. Langfang is very close to Beijing, so it is easy to reach Langfang from Beijing and only takes 1 hour to Beijing/Tianjin and Xiong’an New area. Langfang is the center of these three areas. The President Xi has announced a lot of items that are advantageous to Langfang. The zone has a high potential for developing companies as more and more foreign enterprises are willing to locate at Langfang. 518 has been successfully held for 34 years, and meanwhile in Langfang, another exhibition hall is plan to be built and an airport covered Beijing, Tianjin and Hebei will be completed next year. In addition, a bonded area will be set up here. It will be a push for Langfang's economy. The fair provides new business opportunities and you will have the chance to meet government officials, leading executives from famous enterprises and distinguished scholars. The fair has become an important platform for the communication between domestic and foreign enterprises in various business fields. Offer: For the participants, we will provide FREE booth for exhibitors, including booth design, decoration and management. Registration: Please contact us to register with the information below: Name: Company: Position within the company: Business Scope (general introduction): Email Address: Website: We are looking forward to your participation. Please visit our website for more communication http://www.518.gov.cn/ Langfang Organizing Committee .
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