National University of Singapore (NUS) Jobs

Research Engineer (AI Accelerator and Energy-Efficient Computing)

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National University of Singapore (NUS)

Kent Ridge Campus

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Research Engineer (AI Accelerator and Energy-Efficient Computing)

Research Staff

2026-06-13

Location

Kent Ridge Campus

National University of Singapore

Type

Research Staff

Start Date

13/04/2026

Required Qualifications

Bachelor’s/Master’s in Computer Engineering/CS
Python & C/C++
PyTorch/TensorFlow
Transformers/LLMs
DVFS/Power Management

Research Areas

AI Accelerators
Energy-Efficient Computing
RRAM/MRAM Integration
DVFS for AI Workloads
LLM Training/Inference
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Research Engineer (AI Accelerator and Energy-Efficient Computing)

Research Engineer (AI Accelerator and Energy-Efficient Computing)

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: 13/04/2026

Job Description

We are seeking a highly motivated and skilled Research Engineer to join our team in developing next-generation energy-efficient AI hardware. The project aims to demonstrate an AI accelerator chiplet that integrates emerging non-volatile memory (RRAM or MRAM) with conventional I/O interfaces. This platform will showcase compute–memory co-design advantages, including enhanced data throughput, improved energy efficiency, and reduced data-movement overheads for large-scale AI workloads.

Key Responsibilities:

  • Develop and implement fine-grained dynamic voltage and frequency scaling (DVFS) strategies tailored for GPU-based AI workloads, with control at the level of transformer blocks and attention layers.
  • Design and build a high-resolution (microsecond-scale) performance monitoring framework to capture workload intensity, memory access patterns, and GPU utilization for real-time optimization.
  • Develop and deploy machine learning models to predict optimal voltage–frequency operating points during LLM training and inference.
  • Integrate predictive control algorithms with hardware platforms to enable real-time, adaptive power management across heterogeneous compute and memory subsystems.
  • Collaborate on system-level hardware–software co-design to realize energy-efficient AI acceleration.
  • Contribute to prototype development, benchmarking, and evaluation of performance and energy efficiency.
  • Publish research findings in leading journals and present at international conferences.
  • Mentor undergraduate students and support team-based research activities.

Qualifications

  • Bachelor’s or Master’s degree in Computer Engineering, Computer Science, or a related field.
  • Strong programming skills in Python and C/C++, with experience in machine learning frameworks such as PyTorch or TensorFlow.
  • Familiarity with deep learning models—particularly transformer architectures and large language models (LLMs)—is advantageous.
  • Experience or interest in system-level optimization (e.g., DVFS, workload profiling, or power management) is a plus.
  • Strong analytical and problem-solving skills, with the ability to conduct independent research and contribute to technical publications.
  • Ability to work effectively in a multidisciplinary environment, with good communication skills, initiative, and adaptability.

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Frequently Asked Questions

🎓What qualifications are required for this Research Engineer AI Accelerator role?

Candidates need a Bachelor’s or Master’s degree in Computer Engineering, Computer Science, or related fields. Essential skills include Python and C/C++ programming, plus experience with PyTorch or TensorFlow. Advantageous: knowledge of transformer architectures, large language models (LLMs), and system-level optimization like DVFS. Strong analytical skills for research publications are key. Explore similar research jobs or thrive in research roles.

💼What are the key responsibilities in this energy-efficient AI hardware position?

Responsibilities include developing fine-grained DVFS strategies for GPU-based AI workloads, building microsecond-scale performance monitoring, deploying ML models for voltage-frequency prediction in LLM training/inference, integrating predictive controls, and contributing to hardware-software co-design. Additional duties: prototype benchmarking, publications, and mentoring students. Check research assistant jobs for related opportunities.

📅What is the application deadline and process for this NUS Research Engineer job?

The posting starts on 13/04/2026 and expires on 2026-06-13. Apply via the official link in the job post. Prepare a CV highlighting AI hardware and energy-efficient computing experience. Tailor for National University of Singapore roles. See free resume template and cover letter template for tips.

🔧Is experience in DVFS or AI accelerators required for this Kent Ridge Campus role?

Experience or interest in system-level optimization (e.g., DVFS, workload profiling, power management) is a plus but not mandatory. Core needs: programming skills and ML frameworks. The role focuses on AI accelerator chiplets with RRAM/MRAM. Learn more via excel as a research assistant.

🏢What is the work environment and location for this energy-efficient computing job?

Located at Kent Ridge Campus, National University of Singapore, in the College of Design and Engineering / Electrical and Computer Engineering. Multidisciplinary team focused on next-generation AI hardware. Involves collaboration, publications, and student mentoring. Browse NUS research jobs or university jobs in Singapore.

Does this role involve teaching or visa sponsorship?

Primarily research-focused; includes mentoring undergraduates but no formal teaching load. Visa sponsorship not mentioned—check with employer. Ideal for those with strong communication in multidisciplinary settings. Visit higher ed jobs for similar positions.

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