Senior Analytics Engineer Sales Executive- Mountain Region

  • Full Time
  • Nairobi

Website Watu Credit Limited

Watu Credit Limited is a dynamic and fast-growing non-bank finance company. Watu Credit Limited harnesses technology to offer unsecured lending, primarily via mobile services. We aim to become the leading African provider of a broad set of inclusive financial products, delivered through tech… read morenology in a fast, efficient and professional manner. Watu Credit Limited headquarters are located in Mombasa. We commenced our business operations in July 2015 with the clear vision to be the best in class provider for short and medium-term loan products tailored to the specific needs of our target clients and delivered through mobile technology. Watu Credit Limited prides itself on offering excellent client service in the domestic lending market, thanks to our dedicated team of professionals coupled with the use of modern technologies.

We are looking for a proactive technical lead who can stabilize and develop core systems while simultaneously engineering automated AI and ML solutions. If you have mastery in Advanced SQL and Python, and a proven track record of moving models from a notebook into a reliable production environment, you will play a defining role in our technical legacy.

Key Responsibilities:

Lead Data Architecture & Pipelines: Architect, deploy, and oversee robust end-to-end ingestion frameworks. You will ensure raw data from diverse sources is reliably integrated into our Data Warehouse using cloud-native tools (Datastream, Fabric, Spark).
Advanced Data Transformation: Own the modeling layer by designing complex, performant transformation logic using dbt and SQL. You will establish the standards for how raw data is turned into clean, version-controlled, and analyst-ready datasets.
MLOps & Model Productionalization: Bridge the gap between research and production by engineering the pipelines required to deploy Machine Learning models and AI agents. You will transition models from notebooks into stable, automated, and monitorable production workflows.
Data Quality & Technical Governance: Act as the primary guardian of data integrity. You will define and enforce strict security protocols, data quality tests, and governance rules to ensure consistency and compliance across the global organization.
Warehouse & Infrastructure Excellence: Manage the administration of the Data Warehouse (BigQuery/Fabric), optimizing for performance, cost-efficiency, and scalability. You will select and maintain the Analytics Engineering tooling that empowers the broader data team.
Intelligent Automation: Lead the development of internal AI tools and “intelligent workflows.” You will leverage our data foundations to build custom agents and automated processes that solve complex business logic challenges.
Technical Leadership & Mentorship: Define the “gold standard” for engineering practices (CI/CD, documentation, modularity) within the department, providing guidance to other team members and assisting in the long-term evolution of our data strategy.

Requirements

Knowledge, Skills, and Experience

Experience: At least 5 years of proven experience working in a Data Engineering or Back-end Engineering role.
Core Languages: Advanced proficiency in SQL and strong coding skills in Python (specifically for data manipulation, automation, and API integrations).
Data Architecture: Deep expertise in modern Data Warehouse design (BigQuery, Microsoft Fabric), dimensional modeling, and implementing scalable architectural patterns.
Modern Data Stack: Extensive hands-on experience with the ELT/ETL lifecycle, including advanced transformation workflows using dbt (Data Build Tool) and orchestration.
Cloud Infrastructure: Strong proficiency with Google Cloud Platform (GCP)—specifically BigQuery, Datastream, and Dataflow—and experience with Spark for large-scale data processing.
Software Excellence: A strong proponent of engineering best practices, including Git version control, CI/CD pipelines, and writing clean, maintainable, and well-tested code.

go to method of application »

Use the link(s) below to apply on company website.  

Apply Through: