Lead Software Engineer

Findrs
London
1 year ago
Applications closed

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Lead Software Engineer

Do you dream in code? Does Linux feel like your second home, and C++ and Python your favorite languages? If computer vision, embedded systems, and hardware-software magic sound like your ideal playground, you might just be who we’re looking for.


A fast growing starting is building revolutionary holographic storage technology to change how the world stores and retrieves data. As the Lead Software Engineer, you’ll play a critical role in bringing this vision to life. You'll work at the intersection of hardware and software, tackling challenges that require innovation and expertise in computer vision, OpenCV, RTOS, and embedded systems.


Imagine leading a talented team and solving technical puzzles that push the boundaries of technology. You’ll enjoy a competitive salary, equity options, and the chance to work with a company backed by £2.5M in funding and accepted into a prestigious accelerator program. Plus, you’ll finally have an answer to, “What’s the coolest thing you’ve ever worked on?”


Apply now to learn more!

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