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Software Engineer - Collision Avoidance System

Develop and optimize collision avoidance algorithms for autonomous vehicle safety systems
San Francisco Bay Area
Senior
$154,000 – 246,000 USD / year
1 month ago
Zoox

Zoox

Developing autonomous mobility solutions with an aim to improve urban transportation.

Software Engineer - Collision Avoidance System

Foster City, CA

Software - Collision Avoidance System / Full-time / Hybrid

The Collision Avoidance System (CAS) is responsible for detecting and reacting to imminent collision situations in support of our vehicle's overall safety goals. CAS Perception is responsible for processing raw sensor data from our vehicle's world-class sensor suite using a combination of geometric, interpretable algorithms and deep learning to detect near-collisions with obstacles along our intended driving path. Together with the team, you will be able to analyze and design the system pipeline the machine learning engineers utilize to understand the impact of their models.

In this role, you will:

  • Write algorithms to process raw sensor data, track dynamic agents, and predict the future state for agents
  • Apply distributed compute algorithms to efficiently analyze petabytes of urban driving data
  • Develop metrics and tools for analyzing errors and understanding improvements in our systems
  • Engineer software that runs on-vehicle to efficiently execute our algorithms in real time
  • Engineer software that is fault-tolerant and conforms to automotive safety standards
  • Collaborate with engineers on the other parts of CAS Perception, CAS Verification & Validation, CAS Planner, and the Main AI teams to solve the overall Autonomous Driving problem in complex urban environments

Qualifications

  • BS, MS, or PhD degree in computer science or related field
  • Fluency in C++
  • Extensive experience with programming and algorithm design
  • 4+ years of experience in a related field
  • Strong mathematics skills

Bonus Qualifications

  • Experience with production Machine Learning pipelines: dataset creation, training frameworks, metrics pipelines
  • Experience with latency of analysis and optimization of safety critical software systems
  • Prior experience with Prediction and/or autonomous vehicles in general

Compensation

There are three major components to compensation for this position: salary, Amazon Restricted Stock Units (RSUs), and Zoox Stock Appreciation Rights. The salary will range from $154,000 - $246,000. A sign-on bonus may be part of a compensation package. Compensation will vary based on geographic location, job-related knowledge, skills, and experience.

Zoox also offers a comprehensive package of benefits including paid time off (e.g. sick leave, vacation, bereavement), unpaid time off, Zoox Stock Appreciation Rights, Amazon RSUs, health insurance, long-term care insurance, long-term and short-term disability insurance, and life insurance.

About Zoox

Zoox is developing the first ground-up, fully autonomous vehicle fleet and the supporting ecosystem required to bring this technology to market. Sitting at the intersection of robotics, machine learning, and design, Zoox aims to provide the next generation of mobility-as-a-service in urban environments. We're looking for top talent that shares our passion and wants to be part of a fast-moving and highly execution-oriented team.

If you need an accommodation to participate in the application or interview process please reach out to accommodations@zoox.com or your assigned recruiter.

A Final Note:

You do not need to match every listed expectation to apply for this position. Here at Zoox, we know that diverse perspectives foster the innovation we need to be successful, and we are committed to building a team that encompasses a variety of backgrounds, experiences, and skills.

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Software Engineer - Collision Avoidance System
San Francisco Bay Area
$154,000 – 246,000 USD / year
Software
About Zoox
Developing autonomous mobility solutions with an aim to improve urban transportation.