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Research Assistant, School of Computing

National University of Singapore

Singapore

On-site

SGD 50,000 - 70,000

Full time

Yesterday
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Job summary

A prestigious research university in Singapore invites applications for a Research Associate in the Department of Computer Science. This role focuses on developing efficient and interpretable machine learning systems, working on projects related to ensemble learning and large-scale data analytics. Candidates should have strong programming skills in Python and C/C++, with experience in GPU computing and machine learning algorithms. This position offers a collaborative environment with opportunities for research and development.

Qualifications

  • Bachelor's or Master's degree in Computer Science or related discipline.
  • Strong programming proficiency in Python and C/C++.
  • Expertise in ensemble learning algorithms.

Responsibilities

  • Design and implement ensemble learning algorithms for data.
  • Develop GPU-accelerated learning modules.
  • Build and maintain robust data pipelines.

Skills

Python programming
C/C++ programming
Ensemble learning
GPU computing
Data streaming
Analytical skills
Problem-solving

Education

Bachelor's or Master's degree in Computer Science

Tools

Linux
Git
CUDA
OpenCL
Job description

Company description:

The National University of Singapore is the national research university of Singapore. Founded in 1905 as the Straits Settlements and the Federated Malay States Government Medical School, NUS is the oldest higher education institution in Singapore

Job description:

Job Description

The National University of Singapore invites applications for the position of Research Associate in the Department of Computer Science, School of Computing (SoC). SoC is strongly committed to research excellence in all its dimensions: searching for fundamental results and insights, developing novel computational solutions to a wide range of applications, building large-scale experimental systems and improving the well‑being of society. We seek to play an active role both internationally and locally in the core and emerging areas of Computer Science and Information Systems.

We invite applications for a Research Associate position in the area of efficient and interpretable machine learning systems. The successful candidate will work on projects involving ensemble learning, large-scale data analytics, and high-performance model design, aimed at developing next‑generation intelligent systems that are both scalable and explainable.

This role bridges algorithmic research and systems implementation, offering opportunities to collaborate with leading academics and engineers on developing resource‑efficient, adaptive learning frameworks for complex data environments.

Key Responsibilities
  • Design and implement ensemble learning algorithms and optimization strategies for large‑scale or streaming data.
  • Develop parallelized and GPU‑accelerated learning modules, ensuring scalability and performance efficiency.
  • Build and maintain robust data pipelines for high‑throughput modeling over heterogeneous or sparse datasets.
  • Conduct system profiling, model benchmarking, and empirical evaluation across different computing architectures.
  • Explore novel strategies for interpretable ensemble modeling and adaptive decision systems.
  • Contribute to research publications, technical reports, and open-source toolkits.
  • Collaborate with faculty, postdoctoral researchers, and students on advanced machine learning research and prototype deployment.
Job Requirements
  • Bachelor's or Master's degree in Computer Science, Computer Engineering, or related discipline
  • Strong programming proficiency in Python and C/C++.
  • Expertise in ensemble learning (e.g., Random Forests, Gradient Boosting, bagging/stacking frameworks).
  • Hands‑on experience with parallel or GPU-based computing (CUDA, OpenCL, or equivalent).
  • Familiarity with data streaming, online learning, or real‑time analytics frameworks.
  • Solid understanding of machine learning algorithms, data structures, and numerical optimization.
  • Experience with sparse data modeling or heterogeneous feature handling is advantageous.
  • Proficiency with Linux, version control (Git), and performance debugging tools.
  • Excellent analytical, communication, and problem‑solving skills.
More Information

Location: Kent Ridge Campus

Organization: School of Computing

Department : Department of Computer Science

Employee Referral Eligible: No

Job requisition ID : 31228

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