Data Scientist – Pricing & Revenue Optimization
Indexed description
You will support the design and deployment of pricing models that enhance willingness-to-pay estimation, optimize customer lifetime value, and proactively identify risks to revenue and margin across customer segments. This position requires a strong combination of data science expertise, business acumen, and the ability to translate insights into actionable pricing strategies.
Key Responsibilities
- Pricing & Willingness-to-Pay Modeling
- Develop and enhance willingness-to-pay (WTP) models using machine learning techniques.
- Analyze customer behavior, shipment characteristics, and competitive dynamics to improve pricing precision.
- Build segmentation-based pricing strategies to maximize yield while maintaining competitiveness.
- Revenue Growth & Yield Optimization
- Design optimization models to balance volume growth vs. margin expansion.
- Implement dynamic pricing strategies tailored to customer segments and product lines.
- Customer Retention & Churn Reduction
- Develop predictive models to identify churn risk and retention opportunities.
- Design and evaluate pricing experiments (A/B testing, elasticity testing) to improve customer stickiness.
- Predictive Analytics & Risk Identification
- Analyze trends and forecast customer-level and segment-level revenue patterns.
- Identify early warning signals of top-line and bottom-line risks.
- Propose data-driven mitigation strategies and commercial actions.
- Experimentation & Model Deployment
- Build and manage pricing experimentation frameworks.
- Collaborate with IT and data engineering to deploy models into production environments.
- Stakeholder Collaboration
- Partner with Sales, Pricing, Finance, Operations and Marketing teams to translate insights into action.
- Communicate complex analytical findings to non-technical stakeholders effectively.
- Strong expertise in:
- Python or R (pandas, NumPy, scikit-learn, etc.)
- SQL for large-scale data extraction and transformation
- Experience with:
- Machine learning models (regression, classification, clustering)
- Optimization techniques (linear programming, pricing optimization)
- Time-series forecasting
- Knowledge of:
- A/B testing and experimentation design
- Elasticity modeling and demand forecasting
- Familiarity with big data tools (e.g., Spark) and cloud environments is a plus
- Strong understanding of pricing strategy and revenue management principles
- Ability to connect modeling outputs to commercial outcomes
- Experience in customer segmentation and behavioral analytics
- Excellent communication and storytelling skills with data
- Ability to influence senior stakeholders
- Strong collaboration in cross-functional, global teams
- High level of ownership and results orientation
- Bachelor’s degree in Data Science, Statistics, Economics, Engineering, Mathematics, or related field
- 4–8+ years of experience in data science, preferably in:
- Pricing / revenue management
- Logistics, transportation, airlines, or e-commerce industries
- Proven track record of:
- Deploying predictive models in production
- Driving measurable business impact (revenue growth, margin improvement, retention)
- Experience working with commercial or pricing teams is highly desirable
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