Data Scientist
Indexed description
Data Scientist | Credit Card Portfolio Analytics | Kuala Lumpur
If you're a data science professional with a passion for financial analytics, this is a standout opportunity. Join a globally respected payments environment and lead analytical workstreams that deliver real impact across a high-value card portfolio.
Why Apply?
Based in Kuala Lumpur on a 12-month contract, this role places you at the centre of credit card portfolio strategy - from acquisition and activation through to fraud and risk. You'll work alongside senior stakeholders and cross-functional teams, with your insights directly influencing business performance.
The Role
Driving analytics across the full card lifecycle, you'll build models, test hypotheses, and surface insights that matter.
- Own analytical workstreams spanning acquisition, usage, retention, fraud, and credit risk
- Build and deploy machine learning and statistical models to uncover portfolio opportunities
- Design A/B tests and causal inference frameworks to evaluate strategies
- Develop segmentation, propensity, and uplift models to support portfolio decisions
- Analyse large-scale transaction datasets to surface actionable insights
- Create performance dashboards using tools such as Tableau or Power BI
- Translate findings clearly for both technical and non-technical stakeholders
What We're Looking For
A strong technical foundation paired with the ability to tell compelling data stories.
- Master's degree or above in Data Science, Statistics, Mathematics, or a related discipline
- 5-8+ years in data science or advanced analytics, ideally within financial services
- Experience in credit card analytics, lifecycle modelling, or marketing optimisation
- Proficiency in SQL, Python, Spark, Hive, or cloud-based analytics platforms
- Hands-on experience with supervised and unsupervised machine learning techniques
- Solid grasp of statistical inference, experimental design, and causal methods
- Confident communicator able to engage senior, non-technical audiences
- Exposure to fraud, credit risk, or payments analytics is a strong advantage
Ready to drive impact in a high-profile payments environment? Apply now and take the next step in your data science career.
Company Registration Number: 201301019088 (1048918-T)
Create a free Caio profile to unlock more results and save your role and location preferences.
Unlock free search