Senior Embedded Software Engineer (Go/Linux)

Coram AI
London
1 week ago
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Senior Embedded Software Engineer (Go/Linux) About UsStarted in 2021, Coram.AI is building the best business AI videosystem on the market. Powered by the next-generation videoartificial intelligence, we deliver unprecedented insights and 10xbetter user experience than the incumbents of the vast but stagnantvideo security industry. Our customers range from warehouses,schools, hospitals, hotels, and many more, and we are growingrapidly. We are looking for someone to join our team to help usscale our systems to meet user demand and to ship new features.Team you will work with Founded by Ashesh (CEO) and Peter (CTO), weare serial entrepreneurs and experts in AI and robotics. Ourengineering team is composed of industry experts with decades ofresearch and experience from Lyft, Google, Zoox, Toyota, Facebook,Microsoft, Stanford, Oxford, and Cornell. Our go-to-market teamconsists of experienced leaders from Verkada. We are venture-backedby 8VC + Mosaic, revenue-generating, and have multiple years ofrunway. Being part of our team means solving interesting problemsat the intersection of user experience, machine learning, andinfrastructure. It also means committing to excellence, learning,and delivering great products to our customers in a high-velocitystartup. The Role Our stack cuts across many technologies(front-end, backend, edge-computing, machine learning), and youwill be responsible for a large part of our edge-computing stackpowering Coram Point and other products. This involves: - Buildingapplications running on embedded Linux devices (Yocto). - Buildingcommunication protocols between edge and the cloud. - Optimizingservices for CPU and memory efficiency. - Building CI, CD,observability, and telemetry. - This is a 5-days a week in-officerole. Requirements and experience we are looking for - 3+ years ofexperience writing production software in Go for embedded Linuxapplications. - Experience using Yocto, Docker, and Build systems.- Ideally, you have built applications from 0 to 1 and are familiarwith the full lifecycle of embedded software development. - Itwould be great if you also have experience with one or more of thefollowing: - Edge infrastructure management. - Fleet monitoring. -Video processing & streaming. - High intrinsic motivation tosucceed and ability to work hard. What we offer - Company equity %in an early-stage startup. #J-18808-Ljbffr

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