Job Description
Card payments represent a large part of the funds moved to Wise daily, and card fraud disputes are an inevitable part of that. Our Card Fraud team thus supports Wise’s mission in a very impactful area. We have an awesome operational team handling these Card Fraud disputes in four countries across the globe; a unified team that works very closely with our dedicated engineering and product teams.
As a Card Fraud Prevention Senior Analyst , you get to support your team’s operational success and bring your expertise to upscale the domain; driving detection and prevention focused initiatives with long-lasting impacts will be part of your daily work.
Here’s how you’ll be contributing to Card Disputes team:
Reducing Card Fraud loss (Spend product costs):
Analysing Card Fraud dispute trends, independently querying databases and doing data deep dives
Prioritising and delegating Card Fraud prevention workflows in line with our KPIs
Card Fraud prevention rule creation: rule scope validation, rule creation, and monitoring post rule implementation
Prioritising customer experience/impact from rule declines by writing rules with a high level of accuracy and quality that do not unnecessarily decline transactions causing a loss of revenue for Wise.
Working closely with Product and Engineering teams to drive optimal customer experience from fraud declines and alerts
Working closely with the Data science team on machine learning models
Leading long term Card Fraud prevention projects contributing to the KRIs/KPIs/OKRs.
Providing data and writing rules in relation to incidents, and managing incidents if needed.
Effectively communicate and explain Card Fraud prevention strategies to Wisers who are not on the fraud prevention team
Card Fraud Prevention and Risk Management
Protect our Wise cardholders from unauthorised card usage, scams, and payment instrument and account takeover fraud.
Spend fraud rule creation and optimisation to mitigate the impact of card fraud on Wise cardholders suffering monetary loss, Spend fraud BPS (scheme compliance & fees), and unrecoverable fraud loss (product cost)
Understand and implement machine learning scores within static fraud rules to improve rule precision and recall.
Work with data science on the optimisation and periodical retraining of the internal card fraud machine learning model.
Own longer term projects targeted at card fraud reduction.
Engage Spend Product and Engineering teams to drive rule engine improvements, with the focus of optimising the card fraud customer journey from rule declines to rule alerts and dispute submission.
Staying up to date with fraud trends highlighted by the card schemes, governmental organisations, and the media.
Team Direction and Analytics Management
Prioritise and delegate work for a small team of analysts, effectively driving the team to focus on highest leverage activities. Plan, structure and coordinate analyst work effectively, responding appropriately to challenges as they arise.
Ensure that card fraud prevention work is prioritised in line with our OKRs, KPIs, and overall strategy.
Deliver or materially contribute to the prevention of large scale card fraud waves or prevention projects, and is good at helping others overcome blockers
Lead projects and develop up to 1-2 analysts by coaching and supporting analysts in a manner that is aligned with their development needs and with the aim of increasing their impact
KPI & performance measurement management
Managing and ensuring KPI and performance metrics accessibility to Teams
Ensuring any required data is available to the Card Fraud Ops team - either by providing the data in an accessible manner or by driving engineering changes where necessary.
Strong collaboration with Leadership on KPI (maintenance & building)
Identifying the problematic areas based on KPI performance
Identifying product issues and improvement areas (cross team)
Incident Management
Providing data and relevant insights to all stakeholders for the purposes of incident management
Able to identify card fraud prevention gaps and come up with strategies to mitigate risk and resolve the incident
Able to perform in an incident manager role if needed
Escalating risks sitting outside of the Card Fraud domain (or appetite) to external stakeholders
Qualifications
About You:
Your verbal and written English skills are excellent. If you speak other languages then that’s a bonus!
You have strong attention to detail, punctuality, and are comfortable taking initiatives.
You are good with routine but can also adapt and keep up with fast changes.
You are able to work independently but also know how important good team-work is.
You can make decisions in critical situations and have the ability to multitask.
You have a genuine enthusiasm for the FinCrime industry.
You have experience with SQL, or a similar coding language, and have experience with Fincrime prevention strategy creation and management.
Your Analytical and Strategic Abilities
Able to competently think through analytical tasks and fully understand the impact of card fraud rules on the spend product and on our customers.
Deliver quality analysis that addresses the business problem.
Comfortable with complexity and aware of key factors underlying a decision.
Able to propose ideas autonomously to deflect card fraud waves
Able to code both independently and in collaboration with other analysts, and write legible code that is usable by others.
Able to test fraud rule conditions autonomously and troubleshoot code and risk engine related issues.
Able to understand the interaction between metrics over multiple products/services across multiple teams and directs effort towards high leverage activities
Comfortable learning new data analysis techniques and methods.
Intriguing questions to ask yourself
What could I do to magnify the impact of the current detection strategies? How do I stop more fraud with a similar prevention strategy?
What is lacking right now with our Tools that would increase the effectiveness of our prevention strategies without causing a similar increase in customer impact?
Where we are today versus where we want/need to be in 6 months/12 months etc? (What Product/Scheme/Compliance changes will impact the Card Fraud Domain and potential impact on prevention strategies and how we stop Card Fraud?)
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Job Details
Posted Date:
March 2, 2026
Job Type:
Arts and Entertainment
Location:
Indonesia
Company:
Consortium for Clinical Research and Innovation Singapore
Ready to Apply?
Don't miss this opportunity! Apply now and join our team.