Banking + 2 more
Description
Qualifications, Experience & Competencies Required
Bachelor’s degree in Computer Science, Data Science, Statistics, or a related field from a recognized institution.
A master’s in data science, computer science, or a similar discipline is advantageous.
Formal training in machine learning, artificial intelligence, data mining, or statistical modelling.
Evidence of ongoing professional development through workshops, online courses, or industry certifications in emerging data science methodologies and tools
Responsibilities
Advanced Data Analysis & Modeling: Uncover hidden patterns and develop insights relevant to the bank and wallet operations using advanced statistical, quantitative, and Machine Learning methods. Design and implement robust, scalable machine learning models.
Model Optimization & Monitoring: Optimize model performance and design automated solutions for model monitoring, including data drift detection and correction strategies.
Explainable AI for Risk: Apply advanced analytics and AI/ML methods to explain the models and ensure transparency and interpretability.
Framework Development: Develop scalable data science frameworks to enable efficient, build-once, deploy-many capabilities for various financial models.
Production Integration: Develop and integrate machine learning algorithms into production-grade applications, particularly using FastAPI, ensuring robust, performant, and maintainable solutions.
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