Senior Data Science [+ relocation package]

Posted:
Doha
from $7,000/month
Office
Full-time

Brief description of the vacancy

  • Responsible for developing advanced machine learning models for banking use cases including pricing optimization, customer propensity modelling, and recommendation systems.
  • This senior role requires deep expertise in statistical modelling and machine learning combined with substantial banking and financial services domain knowledge .
  • The position focuses on translating complex business problems in areas such as Risk, Finance, Retail Banking, and Wholesale Banking into actionable ML solutions.
  • Will leverage their understanding of banking products, regulatory requirements, and financial metrics to build models that drive measurable business value.
  • The role requires a balance of domain expertise and technical capability, with sufficient programming skills in Python and SQL to develop and deliver working prototypes that can be transitioned to production.

About the company

Company Commercial Bank Of Qatar

At Commercial Bank of Qatar , we don’t just offer careers, We shape futures by pioneering digital transformation in Qatar’s banking sector, blending digital-first approach to redefine banking through innovative solutions.

Ищу Senior Data Science инженера к себе в команду and advanced English (B2+/C1) is required, especially for verbal communication

Responsibilities

  • ML Model Development
  • Design and develop machine learning models for pricing optimization, including dynamic pricing, rate optimization, and fee structures.
  • Build propensity models for customer behavior prediction including churn, cross-sell, upsell, and product adoption.
  • Develop recommendation systems for personalized product offerings, next-best-action, and customer engagement.
  • Banking Domain Application
  • Apply deep banking domain knowledge to frame business problems as ML solutions with measurable outcomes.
  • Partner with Risk, Finance, and business units to identify high-value modeling opportunities.
  • Ensure models incorporate relevant regulatory requirements, risk considerations, and business constraints.
  • Analysis & Insights
  • Conduct exploratory data analysis to identify patterns, relationships, and modeling opportunities in banking data.
  • Translate model outputs into actionable business recommendations and insights.
  • Develop model performance metrics aligned with business KPIs and financial outcomes.
  • Create data visualizations and reports for stakeholder communication.
  • Prototyping & Delivery
  • Develop working prototypes in Python demonstrating model functionality and business value.
  • Create clear documentation of model methodology, assumptions, limitations, and use cases.
  • Collaborate with ML Engineers and AI Engineers to transition prototypes to production systems.
  • Stakeholder Collaboration
  • Partner with business stakeholders to understand requirements and validate model outputs.
  • Present model results, methodology, and recommendations to senior management.
  • Contribute to model governance, validation, and documentation requirements.
  • Ensure compliance with data policies, ethical standards, and regulatory requirements.

Requirements

  • Machine Learning & Statistics
  • Expert knowledge of supervised and unsupervised learning techniques for classification, regression, and clustering.
  • Deep experience with pricing models, propensity modeling, and recommendation systems.
  • Strong foundation in statistical analysis, hypothesis testing, and experimental design.
  • Familiarity with deep learning frameworks (TensorFlow, PyTorch) for advanced use cases.
  • Banking Domain Expertise
  • Comprehensive understanding of banking products (Retail or Corporate business), services, and customer lifecycle.
  • Knowledge of Risk functions including credit risk, market risk, and operational risk frameworks.
  • Understanding of Finance functions including P&L drivers, cost allocation, and profitability analysis.
  • Familiarity with regulatory requirements affecting model development (IFRS 9, Basel, etc.).
  • Technical Skills
  • Python for data analysis and model development (pandas, scikit-learn, XGBoost, etc.).
  • SQL – Advanced user (Stored Procedures, Window functions, Temp Tables, Recursive Queries).
  • Experience with data visualization and reporting tools.
  • Familiarity with Git (GitHub/GitLab) for version control.
  • Basic understanding of Spark for large-scale data processing.
  • Awareness of MLOps practices and model deployment concepts (MLflow, TFX).
  • Communication & Collaboration
  • Ability to translate complex analytical concepts into business language for non-technical stakeholders.
  • Strong presentation skills for executive-level communication.
  • Experience working with cross-functional teams across business and technology.
  • Agile methodologies (Kanban, Scrum) experience.

Qualifications & Experience

  • Master's degree or PhD in Finance, Economics, Statistics, Mathematics, or quantitative field strongly preferred.
  • 8+ years of experience in data science or quantitative analysis roles.
  • Minimum 5 years of experience in banking or financial services industry is mandatory.
  • Proven track record of delivering ML models in pricing, propensity, or recommendation domains.
  • Background in Risk, Finance, or quantitative functions within banking preferred.
  • Experience with model validation, governance, and regulatory requirements in financial services.
  • Professional certifications in Risk (FRM, PRM) or Finance (CFA) are a plus.

Working conditions

  • Comprehensive relocation package
  • Competitive salary
  • Standard 40-hour work week
  • Modern, comfortable office in central Doha

Contacts

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Posted:

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