Robotics Simulation Engineer

Alignerr
Toronto, CA; US
Remote

Why this role

Pace
Varied
Collaboration
Medium
Autonomy
High
Decision Impact
Team
Role Level
Individual Contributor

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • Design and implement high-fidelity robot models
  • Build and maintain simulation environments
  • Develop end-to-end simulation pipelines
  • Tune physics parameters
  • Integrate simulations with ROS2
Typical background
Strong hands-on experience with at least one major robotics simulatorProficient in Python and/or C++ in a robotics or scientific computing contextSolid understanding of rigid-body dynamics, contact mechanics, and control theory

Skills & requirements

Required

Robotics SimulationHigh-fidelity Physical SimulationsSimulation Environments (mujoco, Nvidia Isaac Sim, Gazebo)Simulation Pipelines For Robot Training, Testing, And ValidationROS2 IntegrationPython And/or C++Rigid-body DynamicsContact MechanicsControl TheoryRobot Models (urdf, Mjcf, SDF Formats)ROS2 And Its Integration With Simulation EnvironmentsSimulation Pipelines

Preferred

Domain RandomizationSim-to-real Transfer TechniquesReinforcement Learning In SimulationGpu-accelerated SimulationLegged LocomotionManipulationMulti-body SystemsCi/cd For Simulation Testing And Automated ValidationSensor SimulationContributions To Open-source Robotics Or Simulation ProjectsGraduate-level Coursework Or Research In Robotics, Controls, Or Computational Physics

Stack & domain

Robotics SimulationMujocoNvidia Isaac SimGazeboUrdfMjcfRos2PythonC++Rigid-body DynamicsContact MechanicsControl TheoryProblem-solvingCollaborationAttention To DetailRoboticsSimulationMachine Learning

About the role

Original posting from Alignerr

About The Role

What if the physics simulations you build could teach the next generation of robots how to walk, grasp, and navigate the real world? We're looking for Robotics Simulation Engineers in the Toronto area to design, build, and optimize high-fidelity physical simulations that bridge the gap between virtual environments and real-world robotic systems.

Toronto's strength in AI research and robotics — anchored by world-class universities and a thriving tech sector — makes it a prime location for this work. You'll work at the intersection of robotics, physics, and software engineering, creating simulation pipelines that power robot learning, controls development, and hardware validation.

This is a fully remote, flexible contract role. No corporate red tape — just meaningful, technical work on problems that matter.

  • Type: Hourly Contract
  • Location: Remote
  • Commitment: 10–40 hours/week

What You'll Do

  • Design and implement high-fidelity robot models (URDF/MJCF) with accurate kinematics, dynamics, and contact properties
  • Build and maintain simulation environments using MuJoCo, NVIDIA Isaac Sim, and/or Gazebo
  • Develop end-to-end simulation pipelines for robot training, testing, and validation
  • Tune physics parameters — friction, damping, inertia, actuator models — to maximize sim-to-real transfer
  • Integrate simulations with ROS2 for perception, planning, and control workflows
  • Write clean, performant code in Python and/or C++ to support simulation infrastructure
  • Collaborate asynchronously with robotics researchers and engineers on model accuracy and environment design
  • Profile and optimize simulation performance for large-scale or parallelized runs
  • Document simulation configurations, model parameters, and pipeline architecture

Who You Are

  • Strong hands-on experience with at least one major robotics simulator: MuJoCo, NVIDIA Isaac Sim, or Gazebo
  • Proficient in Python and/or C++ in a robotics or scientific computing context
  • Solid understanding of rigid-body dynamics, contact mechanics, and control theory
  • Experience creating and validating robot models (URDF, MJCF, or SDF formats)
  • Familiarity with ROS2 and its integration with simulation environments
  • Comfortable working with simulation pipelines — from environment setup to data collection and evaluation
  • Self-directed, detail-oriented, and effective when working independently
  • Strong problem-solving instincts and a drive to close the sim-to-real gap

Nice to Have

  • Experience with domain randomization, sim-to-real transfer techniques, or reinforcement learning in simulation
  • Familiarity with GPU-accelerated simulation (e.g., Isaac Gym, MuJoCo MJX)
  • Background in legged locomotion, manipulation, or multi-body systems
  • Experience with CI/CD for simulation testing and automated validation
  • Knowledge of sensor simulation — cameras, LiDAR, IMUs, force/torque sensors
  • Contributions to open-source robotics or simulation projects
  • Graduate-level coursework or research in robotics, controls, or computational physics

Why Join Us

  • Work on cutting-edge robotics simulation projects that directly impact how robots learn and perform
  • Fully remote and flexible — work when and where you're most productive
  • Freelance autonomy with technically challenging, meaningful work
  • Collaborate with a global community of robotics and AI professionals
  • Gain exposure to state-of-the-art simulation frameworks and research-grade problems
  • Potential for ongoing work and contract extension as new projects launch

Source: Alignerr careers

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