Principal Software Engineer, AI & Data Platform (Xora Portfolio Company)
Xora Innovation · Singapore, Singapore
Venture Capital and Private Equity Principals · 11-50 employees
About the role
Architect and build the data and AI engineering foundation for a scientific R&D platform. This includes designing scalable data pipelines, model training workflows, and intelligent interfaces for scientific data analysis.
What they look for
Requirements
Requires a degree in Computer Science or related field with over 10 years of experience shipping production software. Must have expert Python skills and deep experience with large-scale data systems and machine learning pipelines.
Full description
ABOUT ELEMYNT
Elemynt builds secure AI infrastructure for scientific and engineering R&D teams. Our platform helps organizations connect data, models, compute, and expert workflows in environments where reliability, traceability, and data control matter.
We are building a small, ambitious engineering team across Singapore and the United States to turn advanced scientific computing into production software that real technical teams can use.
ABOUT THE ROLE
Elemynt’s platform turns scientific and engineering data into reusable assets for analysis, model training, and automated workflows.
This role owns the data and AI engineering foundation that makes those systems reliable, scalable, and measurable. You will define core patterns for data modeling, training pipelines, evaluation systems, and intelligent workflow interfaces, then prove those patterns in production code.
This is a hands on principal role for someone who can set technical direction and still build the hardest parts themselves.
WHAT YOU WILL DO
- Architect the data foundation for large scale scientific and engineering output, keeping results clean, queryable, reusable, and ready for model training.
- Model domain specific scientific data so the same datasets can support interactive analysis, automation, and downstream machine learning workflows.
- Build scalable data processing patterns across object storage, analytical stores, and training optimized formats.
- Create machine learning data pipelines for curation, deduplication, formatting, evaluation sets, and regression tracking.
- Build and operate training and fine tuning pipelines for models used in scientific and workflow driven products.
- Develop intelligent workflow interfaces that connect user intent, structured platform capabilities and executable workflows without exposing unnecessary complexity to users.
- Own model evaluation, benchmarking, automated scoring, and quality tracking so each iteration is measurable.
- Set data and AI engineering standards for the team and turn them into code, documentation, and reusable patterns.
WHAT WE ARE LOOKING FOR
- Bachelor’s or Master’s degree in Computer Science or a related engineering field, with 10 plus years building and shipping production software.
- Expert Python and a strong record of shipping systems end to end.
- Deep experience with large scale data systems, including object storage, analytical processing, training optimized formats, and production data pipelines.
- Hands on experience building data pipelines for model training, fine tuning, evaluation, and continuous improvement.
- Direct experience training or fine tuning models for structured outputs, tool use, workflow automation, or domain specific applications.
- Strong understanding of relational, document, and columnar data models, with judgment about where each belongs.
- Comfort operating in cloud, enterprise, and technical compute environments, including distributed training or large scale batch processing.
- Ability to set technical direction in ambiguous early stage environments and carry it through implementation.
NICE TO HAVE
- Experience applying machine learning to scientific data, such as property prediction, generative models, graph based methods, or simulation data.
- Experience with atomistic, materials, chemistry, or engineering data systems.
- Experience with retrieval over structured data, knowledge graphs, or hybrid search systems.
- Experience designing APIs or tool interfaces that intelligent systems can call reliably.
- Experience building complex data and machine learning workflows on production orchestrators.
- Contributions to open source machine learning, data infrastructure, or scientific computing tools.
LOCATION
Singapore or United States. Work model is on site or hybrid, depending on location.
CLOSING NOTE
You do not need to tick every box. If this is clearly your kind of work, we would like to hear from you.