Korapay is the marketplace for everything payments. We allow businesses and institutions to scale faster by providing them with a robust and powerful core payment engine that eliminates the complications associated with simple and bulk transactions. With our payment solutions, you can easily accept or send payments.
Read more about this company
We run payments across Africa and are now positioned as a global fiat and stablecoin payment infrastructure. We offer mobile money, virtual bank accounts, and virtual cards for payins and payouts across multiple markets. Our data infrastructure is batch-first (Airflow + a cloud data warehouse) and we use Vertex AI for our MLOps lifecycle. The ML team is high-ownership: you will build models, design systems, ship them, and observe them in production.
You will work on merchant-facing intelligence: forecasting, anomaly detection, segmentation, as well as automation and product-layer ML. If you want to build practical things that matter in a context that most ML engineers never get near, this is the role.
What You'll Work On
Design and ship a per-merchant payment volume forecasting system: time-series decomposition, Africa-specific event calendars (salary cycles, MNO maintenance windows, public holidays), quantile regression for uncertainty bounds
Build and maintain fraud/ anomaly detection across the payment stack (residual-based and model-driven) with tiered alerting logic mapped to merchant risk profiles.
Own the dynamic merchant segmentation system end-to-end: rule-based and data-driven hybrid, percentile thresholds grounded in EDA, segment-transition features as ML inputs
Instrument and monitor deployed models: drift detection, retraining triggers, and evaluation pipelines via Vertex AI
Build automation tooling that sits alongside the core ML work: Airflow DAGs, pipeline scaffolding, and tooling to reduce operational toil
Contribute to product and strategic thinking.
Requirements
Our Stack
Apache Spark and Airflow
Google Vertex AI
Python
SQL
GCS/BigQuery
What We're Looking For
3+ years as an ML engineer in a production environment
Strong Python and comfort with Spark for large-scale data processing
Experience with time-series modelling: decomposition, forecasting, anomaly detection
Solid grasp of the ML lifecycle as a unified discipline
Ability to work with batch infrastructure and design for it deliberately
High ownership mentality: you notice problems and fix them as opposed to waiting to be assigned
Ability to identify gaps in data-driven business processes and come up with solutions
MyJobMag Career Kickstart Scholarship 2026: Training Report & HighlightsFollowing the resounding success of the pilot programme, the MyJobMag Career Kickstart Scholarship 2025, the second edition was launched in 2026 to expand impact and deepen outcomes. Here's everything you need to know about how the training went.
AI's Impact on Jobs and Organisations (Nigeria report)This report examines the extent to which AI is affecting jobs and organisations in Nigeria. It brings together perspectives from HR professionals and managers across different industries.
30 Contract Staffing Risks That Could Get Your Company SuedThis piece outlines 30 contract staffing risks that have real legal consequences under Nigerian law. If you are a business owner, HR professional, or staffing agency operator, you will find this highly valuable.
10 Steps to Building an Effective Talent PipelineLearn how to keep a list of good candidates ready in advance, before a role becomes vacant. Discover step by step the process of building a talent pipeline that works.