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Research Fellow (Drone Swarm Navigation & Multi-Agent Autonomy)

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National University of Singapore (NUS)

Kent Ridge Campus

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Research Fellow (Drone Swarm Navigation & Multi-Agent Autonomy)

Research Fellow

2026-06-29

Location

Kent Ridge Campus

National University of Singapore (NUS)

Type

Research Staff, Fixed Term Contract (12 months, extendable)

Start Date

22/04/2026

Required Qualifications

Ph.D. in EE/CS/Robotics/Aerospace
Quadrotor platforms experience
LIO/VIO, mapless navigation
ROS, C++/Python
Gazebo/IsaacSim simulation
Motion planning/trajectory optimization

Research Areas

Drone swarm navigation
Multi-agent autonomy
GNSS-denied environments
Distributed perception/planning/control
Model-based + learning methods
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Research Fellow (Drone Swarm Navigation & Multi-Agent Autonomy)

University-Level Unit: College of Design and Engineering

Faculty/Department-Level Unit: Electrical and Computer Engineering

Employee Category: Research Staff

Location: Kent Ridge Campus

Posting Start Date: 22/04/2026

Job Description

A Research Fellow position is open in a research lab at the Department of Electrical and Computer Engineering, National University of Singapore (NUS).

The Research Fellow will work on autonomous drone swarm navigation in unknown and GNSS-denied environments, with a focus on developing scalable, robust, and distributed multi-agent autonomy algorithms. The project aims to enable drone swarms to operate in cluttered, partially observable, and dynamically changing environments, such as indoor spaces or disaster-response scenarios.

The Research Fellow will develop distributed perception, planning, and control algorithms for multi-UAV systems, including mapless navigation, cooperative exploration, and collision avoidance under limited communication. The work will integrate model-based approaches (e.g., optimization-based control, graph-based coordination, control barrier functions) with learning-based methods (e.g., reinforcement learning, imitation learning, or diffusion-based policies) to achieve both theoretical guarantees and strong empirical performance.

The candidate will be responsible for both algorithmic development and system-level implementation, including deployment on real drone swarms. This includes simulation (e.g., IsaacSim, PX4 SITL), onboard computing, multi-agent communication, and hardware experiments.

In addition, the Research Fellow is expected to contribute to mentoring graduate students and leading research directions within the project.

The initial appointment duration is 12 months, extendable based on performance.

The candidate should have a Ph.D. degree from a reputable university, with expertise in UAV, robotics, multi-agent systems, and control.

A successful candidate should have strong practical skills in quadrotor platforms and full-stack autonomous navigation algorithms.

Qualifications

  • Possess a Ph.D. degree in Electrical Engineering, Computer Science, Robotics, Aerospace, or related disciplines.
  • Strong hands-on experience in quadrotor platforms and robotic navigation
  • Familiar with LIO/VIO, robotic exploration and navigation, motion planning and trajectory optimization, mapless navigation
  • Proficient in C++ or Python; experience with ROS and simulation tools (e.g., Gazebo, IsaacSim).
  • Experience with multi-robot communication systems (e.g., ad hoc wireless networks) is a plus.
  • Demonstrated ability to conduct both theoretical and experimental research.
  • Excellent communication skills and ability to publish independently.
  • Experience supervising students or leading projects is preferred.
  • Open to Fixed Term Contract

Apply now

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Frequently Asked Questions

🎓What qualifications are required for this Research Fellow position?

Candidates must possess a Ph.D. in Electrical Engineering, Computer Science, Robotics, or related fields. Strong hands-on experience with quadrotor platforms, LIO/VIO, robotic navigation, motion planning, and mapless navigation is essential. Proficiency in C++ or Python, ROS, and tools like Gazebo or IsaacSim is required. Check research jobs for similar roles or postdoc success tips.

🚁What are the main responsibilities in drone swarm navigation research?

Develop distributed perception, planning, and control algorithms for multi-UAV systems in GNSS-denied environments. Integrate model-based (e.g., optimization, control barrier functions) and learning-based methods (e.g., reinforcement learning). Handle simulation, onboard deployment, and hardware experiments with real drone swarms. Mentor graduate students. Explore research assistant jobs for entry points.

📝How do I apply for this NUS Research Fellow role?

Click the Apply now link in the job post. Ensure your application highlights UAV, robotics, and multi-agent systems expertise, plus publications. Open to Fixed Term Contract. Tailor your CV using our free resume template and review academic CV tips. Deadline: 2026-06-29.

📅What is the employment duration and location?

Initial 12-month appointment, extendable based on performance. Located at Kent Ridge Campus, NUS. Posting starts 22/04/2026. Ideal for those seeking research staff roles in Singapore. See more higher ed research jobs.

🤖What skills are preferred for multi-agent autonomy?

Multi-robot communication (e.g., ad hoc networks) is a plus. Need ability for theoretical and experimental research, independent publishing, and student supervision. Familiarity with PX4 SITL, IsaacSim, and full-stack autonomous navigation. Build skills via research assistant advice.

👥Does the role involve teaching or mentoring?

Expected to contribute to mentoring graduate students and leading project directions. No formal teaching load mentioned. Suited for those with supervision experience. View faculty jobs for teaching-focused roles.

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