Who Are We Looking For:
We are seeking an experienced Data Scientist (Senior) to join our team. You will spend a short period embedded within our client's organization but your primary focus will be on applying and evaluating synthetic data solutions against both client-specific use cases and open benchmarks such as Kaggle datasets.
Key Responsibilities:
Client facing Synthetic Data Solutions
- Embed briefly onsite with the client's data science, risk, or compliance teams to gather requirements, map data sources, and align on use cases.
- Design and operationalize end-to-end synthetic data pipelines for client datasets from ingestion, training, generation to evaluation.
- Implement privacy-by-design techniques (differential privacy, k-anonymity) and ensure compliance with privacy regulations (GDPR, CCPA, PDPA).
- Deliver hands-on workshops and training for client teams on integrating synthetic data into their analytics and ML workflows.
- Manage client engagements, ensuring deliverables, timelines, and satisfaction metrics are met.
- Drive adoption of synthetic data methodologies by showcasing benchmark successes and business impact.
Benchmarking & Model Evaluation
- Apply and benchmark synthetic data generators on public datasets.
- Develop evaluation frameworks and dashboards to measure fidelity, utility, privacy risk and downstream task performance across multiple benchmarks.
- Iterate on model selection and configuration, fine-tuning generators (GANs, VAEs, diffusion) and pipelines to maximize performance on both client data and open challenges.
Qualifications:
- Bachelor's or Master's degree in Computer Science, Electrical Engineering, Software Engineering, Data Science or a related quantitative discipline.
- 5+ years in data science or analytics roles, with at least 2 years embedded in client environments or professional services.
- Experience with machine learning frameworks (PyTorch, DP-SGD) for privacy-preserving ML applications
- Deep knowledge of generative modelling (GANs, VAEs, diffusion) and privacy-enhancing techniques.
- Strong domain familiarity with financial datasets (transactional, risk, regulatory).
Benefits:
- Flexible time-off arrangements
- Flexible work arrangements - work from office at One North or WFH on some days
- Equity eligibility: Competitive equity packages, with grant size evaluated based on the candidate's experience, skills, and impact.
How to apply:
Does this role sound like a good fit to you
- We see this first: Submit your application
- We see this last: If the above does not work, you may email us your CV (pdf format) at .Include the title of the role in your subject
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