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Archangel Imaging Joins NVIDIA Inception

Harwell, Oxfordshire - January 8th, 2021 - Archangel Imaging today announced it

has joined NVIDIA Inception, a program designed to nurture startups revolutionising industries with advancements in AI and data sciences.

Archangel Imaging is focused on developing a future where humans and machines work closely together to solve the world's most complex problems for protecting people, animals and infrastructure. 


NVIDIA Inception is supporting Archangel Imaging with the fundamental tools to build and bring these types of solutions to the world and grow our markets. The programme will also offer Archangel Imaging the opportunity to collaborate with industry-leading experts and other AI-driven organisations.


“There are obvious technical benefits to working closely with NVIDIA but we see the main positive aspect as the opportunity to connect with other leading startups and technologists in relevant fields.” - T. Tran, COO

NVIDIA Inception helps startups during critical stages of product development, prototyping and deployment. Every Inception member gets a custom set of ongoing benefits, such as NVIDIA Deep Learning Institute credits, marketing support and technology assistance, that provides startups with fundamental tools to help them grow.

About Archangel Imaging

Archangel Imaging is an award-winning startup that helps companies protect their remote assets. Sometimes those assets are railways, sometimes oil flowing through pipelines, sometimes it's ivory on the nose of rhino. Archangel Imaging offers affordable and highly flexible plug-and-play solutions tailored to the end user’s needs without the need for existing infrastructure. Its smart devices run AI algorithms locally on the cameras, and can be integrated with smart sensors, UAVs or drones. Users can then coordinate these different resources, easily and effectively, through our human-machine collaboration platform called Cerebella.

Media Contact:

Archangel Imaging

Lucy Roberts


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