Data Engineers (M/W/D)

TECHNE
Cambridge
1 day ago
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PERCEPTION ENGINEER – MULTI-ROBOT AUTONOMY Location: Hybrid with regular on-site work.

An early-stage autonomy company is hiring a Founding Perception Engineer to build the perception layer for a multi-robot autonomy platform.

The system enables robotic teams to understand, reason about, and operate within complex environments, including degraded sensing and communications.

This is a founding-level role with ownership of perception architecture, from raw sensor inputs through to structured world models used for decision-making.

You own the end-to-end perception stack used across a heterogeneous fleet of robots.

Design and implementation of perception pipelines that convert raw sensor data into structured world representations.

• Integration of perception outputs with behaviour and planning systems.

• Development of evaluation, validation, and iteration workflows using simulation and real-world data.

• Close collaboration with Behaviour, Systems, and Platform engineers to define clean interfaces and APIs.

• Contributing to the perception roadmap and long-term autonomy architecture.



Strong background in robotic perception, computer vision, or autonomy systems.

• Experience building full perception pipelines rather than isolated models.

• Production-quality programming skills in C++ and Python.



Compensation and Upside

• Competitive base salary.

• Opportunity to define perception foundations for a long-term autonomy platform.

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