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Embedded Systems Engineer, Computer Vision

Clutch
Bedford
2 months ago
Applications closed

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About Clutch

Clutch is on a mission to build a global community for racket sports players — powered by an AI camera infrastructure that helps players re-live their best moments on court and track their progress with game analysis.

Our initial focus is padel, the fastest growing sport in the world. We’ve spent the past year designing and building our own camera, the Clutch Cam. In December 2024, we’ve started our initial roll-out of the Clutch Cam in partnership with several high-level clubs and investors, from the US to Europe to the Middle East.


About you

We’re looking for an experienced embedded engineer to join us on our mission to build a global racket sports community. This mission relies heavily on predictable and robust remote camera control and high quality match footage.

As the primary embedded engineer in Clutch, you’ll be responsible for managing firmware and hardware development for our fleet of cameras. This includes support and development of APIs and platforms for camera control and video streaming, implementing in-camera improvements in video and audio streaming quality, developing monitoring and alerting systems for the cameras on the field, suggesting hardware improvements and developing our firmware for new models of the camera.

Our camera solution is based on Nerves+Elixir framework. Our camera management solution is based on Elixir as well.


What we offer

  • Equity and meaningful ownership in an early-stage, fast-growing startup
  • Flexible location (Barcelona, Copenhagen, or remote with periodic team meetups)
  • Autonomy and impact—be a foundational team member helping shape both product and culture
  • Access to world-class padel courts and the latest in AI camera tech


Minimum qualifications

  • You have 2+ years industry experience with embedded systems
  • Experience with Elixir
  • Experience with video processing tools (ffmpeg, OpenCV, gstreamer).
  • Experience working with SBCs (e.g. raspberry pi’s, jetson nanos, etc.).
  • Bachelors degree in Computer Science, Electrical Engineering, or other quantitative fields


Bonus qualifications

  • Experience with Nerves and NervesHub
  • Experience with Cloudflare streaming
  • Masters or PhD in Computer Science or other quantitative field
  • A passion for racket sports


Hiring contacts:

Kári Gunnarsson, CEO

Kirill Paramonov, CTO

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