Back to Search
Overview
Staff

Staff Systems Safety Engineer

Confirmed live in the last 24 hours

Motional

Motional

Compensation

$176,000 - $242,000/year

Las Vegas, Nevada, United States
On-site
Posted April 6, 2026

Job Description

Mission Summary:

The Staff Systems Safety Engineer:

  • Oversees the development and implementation of engineering safety processes for our autonomous vehicle systems
  • Is responsible for reviewing hazards, risk assessments, and ensuring compliance with industry safety standards (ISO 26262, SOTIF, and ASIL).
  • Collaborates with cross-functional teams, including software, hardware, and AI engineers, to ensure integration of safety into the design and validation of our AV system

Essential Duties:

  • Ensure and oversee the development and implementation of  system safety processes for autonomous vehicle platforms.
  • Ensure hazard analysis and risk assessments (HARA) for AV components and subsystems are conducted.
  • Assist in the definition and verification of functional safety requirements in compliance with ISO 26262 and SOTIF (ISO 21448).
  • Collaborate with hardware, software, and AI teams to integrate safety measures into perception, decision-making, and control systems.
  • Support the development of failure mode and effects analysis (FMEA) and fault tree analysis (FTA) for AV systems.
  • Ensure compliance with regulatory and industry safety standards, including SAE J3016, NHTSA, and UNECE WP.29.
  • Ensure the development and execution of safety verification and validation plans, including simulation, testing, and real-world driving scenarios.
  • Work with certification bodies and regulators to ensure safety case documentation and approval processes.
  • Contribute to the development of safety culture within the organization by providing guidance and training

Qualifications:

Educational Requirements

  • Bachelor’s or Master’s degree in Systems Engineering, Electrical Engineering, Computer Science, Mechanical Engineering, or a related field 

 

Technical / Specialized Knowledge, Skills, Abilities:

  • 5+ years industry and 3+ years of experience in safety engineering for automotive, aerospace, or robotics systems.
  • Strong knowledge of functional safety standards (ISO 26262, SOTIF, ASIL).
  • Knowledge of systems / software engineering standards (INCOSE, ISO15288, ASPICE CMMI)
  • Experience with hazard analysis, risk assessment, and safety case development.
  • Proficiency in safety analysis tools (e.g., Medini Analyze, Ansys, Fault Tree+, FMEA software).
  • Familiarity with autonomous vehicle architectures, including perception, planning, and control systems.
  • Experience working with real-time embedded systems and software safety.
  • Strong problem-solving, analytical, and communication skills.
  • Experience with machine learning safety challenges in AVs.
  • Knowledge of cybersecurity principles related to vehicle safety (ISO/SAE 21434).
  • Experience in safety assurance for AI-driven systems.
  • Previous work with automotive OEMs, Tier 1 suppliers, or AV startups

 

Physical Demands:

While performing the duties of this job, the employee is frequently required to sit, talk, or hear. The employee is occasionally required to stand and at times for long periods; walk; use hands to finger, handle, or feel; reach with hands and arms. The employee must occasionally lift and move up to 50 pounds.

 

Working Environment:

The work environment characteristics described here are representative of those a team member encounters while performing the essential functions of this job.  Reasonable accommodation may be made to enable individuals with disabilities to perform the essential functions. 

While performing the duties of this job, the team member is regularly exposed to the office environment, outside weather conditions, road conditions, and pedestrian traffic.  The team member is regularly exposed to mechanical and computer parts. The team member is occasionally exposed to fumes and airborne particles.  The noise level in the environment is low to moderate. W

gomachine learningaiiosdesign