Reinforcement Learning Engineer
Company: Apptronik
Location: Austin
Posted on: April 1, 2026
|
|
|
Job Description:
Apptronik is a human-centered robotics company developing
AI-powered robots to support humanity in every facet of life. Our
flagship humanoid robot, Apollo, is built to collaborate
thoughtfully with people, starting with critical industries such as
manufacturing and logistics, with future applications in
healthcare, the home, and beyond. We operate at the cutting edge of
embodied AI, applying our expertise across the full robotics stack
to solve some of society's most important problems. You will join a
team dedicated to bringing Apollo to market at scale, tackling the
complex challenges like safety, commercialization, and mass
production to change the world for the better. JOB SUMMARY: The
Reinforcement Learning Engineer is a key, hands-on role focused on
achieving state-of-the-art performance on our humanoid robots. This
engineer will leverage their deep expertise in RL to solve critical
locomotion and manipulation challenges and deliver breakthrough
results on physical hardware. The primary focus of this role is to
rapidly implement, iterate, and deploy advanced learning algorithms
to push the boundaries of what our robots can do. As a senior
member of the team, this individual will also be responsible for
mentoring junior engineers, elevating the team's overall technical
capabilities through their guidance and expertise. ESSENTIAL DUTIES
AND RESPONSIBILITIES or KEY ACCOUNTABILITIES: Implement and deploy
state-of-the-art RL algorithms to achieve ambitious, world-class
performance on dynamic locomotion and manipulation tasks with
physical hardware. Drive the entire development cycle, from
prototyping in simulation to robustly transferring and fine-tuning
policies on the robot. Optimize and scale the RL training pipeline
for faster iteration, contributing to core infrastructure for
high-throughput simulation and distributed training. Mentor junior
engineers by providing technical guidance, conducting insightful
code reviews, and sharing best practices in reinforcement learning
and software development. Collaborate closely with the robotics and
hardware teams to diagnose system-level issues and co-develop
solutions that enable more complex learned behaviors. Analyze and
present hardware results to guide future technical directions and
demonstrate progress on key company objectives. Develop and refine
motion retargeting pipelines to translate human demonstration data
(mocap, teleoperation) into robust reference trajectories for
reinforcement learning. SKILLS AND REQUIREMENTS Deep, hands-on
expertise (5 years) with common RL frameworks (e.g., PyTorch, JAX)
and high-fidelity physics simulators (e.g., MuJoCo, IsaacGym)
Mastery of Python for rapid prototyping and training, alongside
strong proficiency in C++ for developing performant, deployable
code. Experience building or utilizing large-scale, distributed
training pipelines and a strong intuition for their optimization. A
strong theoretical understanding of modern reinforcement learning,
including deep expertise in areas like imitation learning,
model-based RL, and sim-to-real transfer techniques. A strong
intuition for robot dynamics and controls theory, with the ability
to apply these principles to guide and constrain learning-based
approaches. A results-oriented mindset with a passion for seeing
complex algorithms work on real-world hardware. EDUCATION and/or
EXPERIENCE: A PhD or MS in Computer Science, Robotics, or a related
field, with 2 years industry experience strongly preferred. A
proven track record of successfully deploying learning-based
policies on physical robotic systems, especially legged robots or
manipulators. Demonstrated experience mentoring or providing
technical guidance to other engineers in a team environment. A
strong publication record in relevant conferences or journals
(e.g., CoRL, RSS, ICRA) is a significant plus. PHYSICAL
REQUIREMENTS: Prolonged periods of sitting at a desk and working on
a computer Vision to read printed materials and a computer screen
Hearing and speech to communicate *This is a direct hire. Please,
no outside Agency solicitations. Apptronik provides equal
employment opportunities to all employees and applicants for
employment and prohibits discrimination and harassment of any type
without regard to race, color, religion, age, sex, national origin,
disability status, genetics, protected veteran status, sexual
orientation, gender identity or expression, or any other
characteristic protected by federal, state or local laws.
Keywords: Apptronik, Austin , Reinforcement Learning Engineer, Engineering , Austin, Texas