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Plug and Play selects Arundo as 1 of 24 companies to join its 5th batch of IoT startups

Plug and Play IoT Batch Five Hand-Picked by Industry Experts. Plug and Play selects Arundo as one of 24 companies to join its fifth batch of IoT startups

Plug and Play select Arundo as one of 24 companies to join its fifth batch of IoT Startups.

Plug and Play IoT has selected 24 startups to join its fifth batch. The program will run from September 15th to December 31st.

The 12-week program connects startups to some of world's largest corporations innovating in the IoT space. The anchor partners in this batch include Philips, Panasonic, SC Johnson, Honeywell, Fujitsu, Henkel, and Caterpillar.

Plug and Play's venture arm initially looked at over 800 startups and narrowed that list down in collaboration with participating corporate partners. The remaining 31 startups attended Selection Day where they pitched their ideas in-person. Out of those finalists, 24 have been chosen to join the program for business development and the possibility of pilots, POCs, or strategic funding.

See Arundo pitch at the Internet of Things EXPO on December 15th, 2016.

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