We are currently hiring for a mixed role that
is 70/30% ML Ops/Risk Data Scientist. Join us, and you will contribute to
building our decision and risk engine.
Oversee and deploy ML
pipelines, from development to production.
Administer CI/CD pipelines, ensuring
tests succeed and artifacts are properly stored.
Monitor model performance
metrics and set up alert systems for anomalies.
Develop credit, fraud scoring
and other predictive models.
Engage with stakeholders to
understand requirements and manage expectations.
Document processes, and share
knowledge and expertise.
Manage project planning,
execution, and progress tracking.
Requirements
Bachelor’s or Master’s degree
in Computer Science, Engineering, or a related field.
Proficiency in Python, SQL,
and database management.
Experience with Docker and
deploying applications on cloud platforms such as AWS.
Strong experience with CI/CD
pipelines, automated testing, and deployment.
Ability to use effectively monitoring tools and establish responsive alert systems.
Robust documentation skills to
clearly record processes and optimizations.
Familiarity with SageMaker and
other AWS services would be a significant advantage.
Benefits
Competitive compensation.
An agile culture with a flat
hierarchy, offering the opportunity to tackle complex, real-world
challenges.
A team comprised of top-tier
professionals with experience in leading consultancies and banks.
The chance to play a pivotal
role in building a data-driven culture.