Senior Engineering Manager

Platform Recruitment
Reading
1 year ago
Applications closed

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Senior Machine Learning Scientist

Job Title:Software Engineering Manager

Location:Reading

Salary:£110,000


Overview:

Step into an excitingleadership role in a ground-breaking tech start-up, where innovation meets impact. We’re on a mission to disrupt traditional industries with state-of-the-art robotics, automation, and artificial intelligence systems.


This is a70% hands-on coding rolewithPython and C++and30% team leadership, offering you the perfect balance between technical innovation and guiding a talented team.


Why Apply?

  • Be part of a team transforming industries with cutting-edge robotics, AI, and embedded systems.
  • Take full ownership of software development and field operations apps, mentoring a passionate team of developers.
  • Competitive salary and benefits package, tailored to attract top-tier talent like you.


Skills

  • Strong expertise inPythonandC++; experience with frameworks like PyTorch, TensorFlow, OpenCV, and Numpy.
  • Familiarity with stepper/servo motors, sensors, actuators, and PCB design.
  • Proven experience leading software engineering teams, including mentoring, code reviews, and recruiting.


We’re seeking a driven and innovative leader to help shape the future of automation and robotics. If this sounds like the opportunity you’ve been waiting for, don’t wait—apply now!


Full details available. Please do not hesitate to get in touch:

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