Sr Data Scientist- Promo Optimisation

Target Target · Retail · Bangalore, India

Senior Data Scientist role focused on promotion optimization for a retail company. The role involves designing, developing, and deploying machine learning models, causal inference, optimization techniques, and Generative AI capabilities to personalize offers for guests. It requires building and productionalizing data science pipelines, partnering with engineering for deployment, and contributing to MLOps.

What you'd actually do

  1. Design, build, and evaluate machine learning models for segmentation, propensity, redemption prediction, incremental response, offer ranking, personalization, and guest-level decisioning.
  2. Develop optimization-based solutions using linear programming, mixed-integer programming, constrained optimization, stochastic optimization, simulation, and heuristic approaches to allocate offers under business, budget, inventory, guest experience, and operational constraints.
  3. Apply experimentation, causal inference, uplift modeling, and statistical measurement techniques to estimate incremental impact, validate model decisions, and guide business trade-offs.
  4. Build and productionalize scalable data science pipelines using Python, SQL, Spark, Hadoop/Hive, and modern ML frameworks.
  5. Partner with engineering teams to deploy models and decisioning modules into production systems with strong attention to reliability, scalability, latency, observability, and maintainability.

Skills

Required

  • Python
  • SQL
  • Spark
  • Hadoop/Hive
  • machine learning
  • causal inference
  • optimization
  • experimentation
  • MLOps
  • Generative AI

Nice to have

  • linear programming
  • mixed-integer programming
  • constrained optimization
  • stochastic optimization
  • simulation
  • heuristic approaches
  • uplift modeling
  • model versioning
  • automated training
  • batch and real-time scoring
  • model monitoring
  • drift detection
  • alerting
  • retraining workflows
  • performance dashboards

What the JD emphasized

  • machine learning
  • causal inference
  • optimization
  • Generative AI
  • production deployment
  • monitoring
  • experimentation
  • performance measurement
  • continuous improvement
  • scalable data science pipelines
  • MLOps

Other signals

  • promotion optimization
  • personalized offers
  • machine learning
  • causal inference
  • optimization
  • Generative AI