Data Scientist
Listed on 2025-12-20
-
Engineering
AI Engineer, Artificial Intelligence -
IT/Tech
Machine Learning/ ML Engineer, Data Scientist, AI Engineer, Artificial Intelligence
About our group
Seagate Research Group (SRG) drives innovation by combining Seagate’s deep technical expertise, world-class manufacturing, and cutting-edge research. Our mission is to explore transformative technologies that shape the rapidly growing data sphere.
Within SRG, Applied AI Research team applies advanced Machine Learning (ML) methods to accelerate Seagate’s next-generation projects, products, and processes.
About the roleAs a Data Scientist or AI/ML Engineer to build state-of-the-art models and proof-of-concepts. In this role, you will design, implement, and deploy advanced ML solutions. Depending on your expertise and interests, you will focus on one of the following key tracks:
- Scientific ML & Discovery:
Novel material discovery at the nanoscale, atomistic-scale ML surrogates, and physics-informed ML for simulation. - Engineering Optimization: AI-driven engineering design for HDD components and predictive maintenance for performance reliability.
- Systems Architecture:
Optimization of data flow, storage architectures, and file system optimization (user and kernel space).
- Education:
Master’s degree or higher in Computer Science, AI/ML, Applied Mathematics, Physics, or a related field. - Tech Stack:
Proficiency in Python and frameworks like PyTorch or Tensor Flow. Experience with C/C++ or Java is a plus. - Math Foundation:
Strong grasp of Linear Algebra, Probability, Statistics, Optimization, and Calculus. - ML Expertise:
Hands-on experience with Supervised/Unsupervised Learning, Transformers, Generative AI (GANs, VAEs, Diffusion), and Deep Learning. - Mindset:
Self-motivated, independent learner, and a collaborative problem solver eager to explore emerging technologies.
To have depth in at least one of the following areas:
- Scientific Machine Learning (SciML):
Experience with Physics-Informed Neural Networks (PINNs), Fourier Neural Operators (FNO), or DeepONet. - Generative Design:
Using VAEs, GANs, or Diffusion Models for molecular/material structures. - Graph Neural Networks (GNNs):
Applied to structured data, molecules, or complex engineering systems. - Reinforcement Learning:
Applied Q-Learning or Genetic Algorithms for system optimization. - Systems & Storage:
For file system-focused candidates—a strong grasp of OS internals and low-level programming (C/C++) is essential.
The Shugart site (named after Seagate’s founder, Al Shugart) is a research and design center. Easily accessible from the One-North MRT Station, many employees choose to take mass-transportation to work. Being a purpose built building, The Shugart has excellent employee recreational facilities. Take an active break at our badminton courts, table tennis tables, in-house gym and recreation rooms. We also offer classes and interest groups in photography, gardening and foreign languages, and have various on-site celebrations, and community volunteer opportunities.
Location
:
Shugart, Singapore
Travel
:
None
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