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Research Engineer (LLMs)

SINGAPORE-MIT ALLIANCE FOR RESEARCH AND TECHNOLOGY CENTRE

Singapore

On-site

SGD 50,000 - 80,000

Full time

3 days ago
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Job summary

A leading research institute in Singapore is hiring a research engineer to advance data-efficient machine learning techniques. The successful candidate will have a Bachelor's or Master's degree in relevant fields and a strong publication record. Responsibilities include conducting research, developing experiments, and collaborating with students. This role offers an exciting opportunity to work alongside renowned professors and contribute to impactful research. Apply through the institute's career portal.

Qualifications

  • Degree in Computer Science, Machine Learning, or Artificial Intelligence is required.
  • Strong publication record at AI/ML venues is preferred.
  • Experience with machine learning frameworks is a plus.

Responsibilities

  • Conduct research on data-efficient machine learning.
  • Develop experiments to evaluate performance of research ideas.
  • Collaborate with students to publish research results.
  • Collaborate to publish research results.

Skills

Strong programming proficiency
Strong proficiency in English
Experience with machine learning frameworks
Communication skills

Education

Bachelor/Master's degree in Computer Science or related

Tools

Pytorch
Tensorflow
Job description
Project Overview

We are hiring research engineers interested in advancing the state of the art in data‑efficient machine learning at SMART in the new program: Mens, Manus and Machina: How AI empowers people and the city in Singapore (M3S) for a period of 1 year with possible renewal/extension. With the recent emergence of large language models (LLMs), the research engineers will assist in investigating how data‑efficient and resource‑efficient techniques, such as data attribution, data selection/reweighting, data valuation, data curation, Bayesian optimization, active learning, can be applied in the context of LLMs (as well as important issues involving AI privacy, model auditability and updatability).

This project addresses the science and engineering of developing few shot learning models, with the aim of reducing the data required to train machine learning models and the size of the model.

Responsibilities
  1. Research on topics related to data‑efficient machine learning, such as data attribution, data selection/reweighting, data valuation, data curation, Bayesian optimization, and active learning, in the context of LLMs.
  2. Investigate how these concepts as well as important issues involving AI privacy, model audibility, and updatability can be applied in the context of LLMs.
  3. Develop, implement, and evaluate experiments to characterise the feasibility and performance of the proposed research ideas.
  4. Collaborate with other PhD and undergraduate students to publish research results in top‑tier conferences and journals, with focus on venues associated with the above‑mentioned areas.

The research engineer will be jointly advised by Prof. Daniela Rus (MIT CSAIL), Prof. Alex 'Sandy' Pentland (MIT Media Lab), and Assoc. Prof. Bryan Low (NUS School of Computing), and based at SMART (Singapore‑MIT Alliance for Research & Technology) in Singapore. The research engineer will have the opportunity to collaborate with PhD and undergraduate students, as well as Postdoctoral Fellows, within our research groups.

For more information on our research group and interests, visit

https://danielarus.csail.mit.edu/

https://www.media.mit.edu/people/sandy/overview/

https://www.comp.nus.edu.sg/~lowkh/research.html

Requirements
  1. Bachelor / Masters degree in Computer Science, Machine Learning, Artificial Intelligence, or other related disciplines.
  2. Strong publication record at premier AI/ML venues such as ICML, ICLR, NeurIPS, CVPR, ACL, EMNLP or similar.
  3. Strong proficiency in programming.
  4. Strong proficiency in English and communication skills.
  5. Experience with machine learning and deep learning frameworks such as Pytorch, Tensorflow, among others.

To apply, please visit our website at: https://portal.smart.mit.edu/careers/career-opportunities

Interested applicants are invited to send in their full CV/resume, cover letter and list of three references (to include reference names and contact information). We regret that only shortlisted candidates will be notified.

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