Number of Applicants
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The healthcare systems of the future must harness data effectively to support clinicians, allowing them to focus on patient care while leveraging AIto detect patterns beyond human perception, enhance diagnostic accuracy, optimise workflows, improve risk assessment and communication. Developing AI models that address these needs is particularly urgent in ageing societies, where rising patient numbers coincide with increasing workforce constraints.
To do so, we are developing the AI for Science Instrumentation Gym, which is designed to bridge this gap by placing data-driven hypothesis generation at the center of its mission. It introduces a critical intermediate step: the tokenization and cartography of scientific data. Through tokenization, complex data is transformed into coarse-grained, interpretable units. Through cartography, these units are organized into latent spaces that can be explored as structured landscapes. In this way, machine learning becomes a tool for mapping high-dimensional data into forms that scientists can navigate, interpret, and use to generate new hypotheses.
To build the AIS Instrumentation Gym, we are opening a set of Instrumentation Gym Lead positions. IGLs are data scientists and systems builders who design, implement, and scale the AIS Instrumentation Gym across its different levels (S/M/L). They form the infrastructure backbone of the ecosystem, enabling domain scientists and machine learning researchers to work with complex scientific data in a structured, scalable, and interpretable way.
As a Researcher, you will be one of the Gym Leads for the ML platform for the Scientific Instrumentation, and you will be working on:
Applicants to the position,
Must-haves:
● Master’s degree on a relevant subject (e.g. Artificial Intelligence, Data Science, etc.)
● Strong Python and a modern ML framework (PyTorch preferred)
● Experience building data pipelines and reproducible ML workflows
● Comfort with GPU-based compute and basic scientific data formats
● Track record of building modular, maintainable software
● Interest in working at the intersection of science, ML, and systems engineering
Nice-to-haves:
● Experience with scientific imaging data
● Familiarity with LLMs and retrieval-augmented generation
● Background in interactive data tools (notebook UIs, dashboards, viewer apps)
● Experience deploying ML services on HPC or cloud GPU infrastructure
Why SEC is your employer of choice?
The Singapore-ETH Centre is an equal opportunity and family-friendly employer. All candidates will be evaluated on their merits and qualifications, without regards to gender, race, age or religion.
Curious? So are we.
We look forward to receiving your online application with the following documents:
Applications via email or postal services will not be considered.
Work location: 1 Create Way, CREATE Tower, Singapore 138602 (NUS University Town)
Contract Duration: 2 Years
Further information about The Singapore-ETH Centre can be found on our website: https://sec.ethz.ch/
For further information, please contact: Prof. Duane Loh (NUS) at [email protected], (strictly no applications)
ETH SINGAPORE SEC LTD.
Singapore-ETH Centre (SEC) The Singapore-ETH Centre for Global Environmental Sustainability (SEC) was established in Singapore in 2010 as a joint initiative between ETH Zurich and Singapore’s National Research Foundation (NRF), as part of the NRF’s CREATE campus. The SEC is an institution tha...
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