Senior Engineer, Radar Modeling & Simulation (dallas/san Diego) (r4537)

Shield AI Shield AI · Defense · Dallas, TX +1 · X-BAT Engineering - Software

The role focuses on developing and enhancing radar sensor models for simulation and evaluation within the aerospace domain. It involves translating theoretical models into C++ implementations, validating them against real-world data, and prototyping new modeling techniques, including ML-based surrogates. The primary output is simulation models, not AI models themselves.

What you'd actually do

  1. Develop and enhance radar sensor models for use in simulation and evaluation of aeronautical vehicles.
  2. Translate theoretical models into efficient, reliable C++ implementations with a focus on numerical accuracy and performance.
  3. Validate models against real-world data and authoritative references, including field test data and calibration procedures.
  4. Collaborate with simulation and training application teams to ensure models integrate cleanly into operator-facing tools.
  5. Design automated validation and regression testing strategies for mathematical models to ensure fidelity across releases.

Skills

Required

  • BS or higher in Aerospace Engineering, Applied Math, Physics, or related field
  • 5+ years of aerospace modeling experience
  • C++ foundation with experience implementing numerical methods
  • Demonstrated experience with aerospace models such as: Radar sensors, Radio communications systems
  • Experience validating simulations against real-world or experimental data.
  • Ability to write clear documentation explaining assumptions, limitations, and expected behaviors of models.

Nice to have

  • 1+ years of experience working on pilot/operator training systems.
  • Experience with Eigen or SciPy for model prototyping and validation.
  • Familiarity with state estimation sensor models (GPS, IMU, Gyro, etc) for simulation environments.
  • Demonstrated experience with payload sensor models including: Laser senros, IR and optical cameras
  • Knowledge of uncertainty quantification and statistical analysis methods.
  • Experience with parallelization or GPU acceleration for compute-heavy models.
  • Strong problem-solving mindset with a collaborative and detail-oriented approach.
  • Familiarity with Python for test automation and data analysis pipelines.

What the JD emphasized

  • 5+ years of aerospace modeling experience
  • C++ foundation with experience implementing numerical methods
  • Demonstrated experience with aerospace models such as: Radar sensors, Radio communications systems
  • Experience validating simulations against real-world or experimental data.