Acquism SARL
Senior Data Scientist Expert | Qatar
Acquism SARLQatar8 hours ago
ContractInformation Technology

Location: Doha, Qatar

Contract duration: 1 year (extension possible)

Start Date: ASAP

Experience: 8+ years

Salary: TBN

Visa Sponsorship: Available if needed


Key Accountabilities

Machine Learning 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 machine learning solutions with measurable outcomes
  • Partner with Risk, Finance, and business units to identify high-value modelling opportunities
  • Ensure models incorporate relevant regulatory requirements, risk considerations, and business constraints


Analysis & Insights

  • Conduct exploratory data analysis to identify patterns, relationships, and modelling 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 into production systems


Stakeholder Collaboration & Governance

  • 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


Key Competencies

Machine Learning & Statistics

  • Expert knowledge of supervised and unsupervised learning techniques for classification, regression, and clustering
  • Deep experience with pricing models, propensity modelling, and recommendation systems
  • Strong foundation in statistical analysis, hypothesis testing, and experimental design
  • Familiarity with deep learning frameworks such as TensorFlow and PyTorch


Banking Domain Expertise

  • Comprehensive understanding of banking products (Retail or Corporate), 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 impacting model development (e.g., IFRS 9, Basel)


Technical Skills

  • Python for data analysis and model development (pandas, scikit-learn, XGBoost, etc.)
  • Advanced SQL skills, including stored procedures, window functions, temporary tables, and 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 executive-level presentation skills
  • Experience working with cross-functional business and technology teams
  • Experience with Agile methodologies (Kanban, Scrum)


Qualifications & Experience

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

Key Skills

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