Senior Applied Scientist - Predictive Scoring, Aws Marketing Science

Amazon Amazon · Big Tech · Seattle, WA · Applied Science

Senior Applied Scientist at Amazon AWS Marketing Science focused on designing and deploying predictive lead scoring models and deep learning solutions for customer segmentation, recommendations, and prioritization. The role involves building end-to-end ML pipelines, innovating in multi-modal modeling, conducting rigorous testing, and collaborating with MLOps engineers for production deployment and monitoring. It also includes publishing research, filing patents, and defining evaluation frameworks.

What you'd actually do

  1. Design and deploy predictive lead scoring models to optimize customer acquisition, conversion, and retention strategies using advanced techniques like survival analysis, graph networks, or transformer-based architectures.
  2. Architect end-to-end ML pipelines for large-scale deep learning models, including data preprocessing, distributed training, model optimization, and real-time inference.
  3. Publish research, file patents, and stay ahead of industry trends in the marketing science, propensity modeling, and customer journey prediction domains.
  4. Innovate in multi-modal modeling (text, graph, behavioral, and temporal data) to enhance scoring accuracy across account and lead levels.
  5. Conduct rigorous A/B testing, causal inference, and counterfactual analysis to measure model impact and iterate rapidly.

Skills

Required

  • building machine learning models for business application
  • PhD, or Master's degree and 6+ years of applied research experience
  • programming in Java, C++, Python or related language
  • neural deep learning methods and machine learning
  • deep learning, machine learning and statistics
  • engaging, verbally and in writing, with internal and external stakeholders
  • Proficiency in Python and ML frameworks (PyTorch, TensorFlow, or equivalent)
  • recommender systems, transformers, or multi-objective tasks
  • statistical analysis, experimental design, and SQL/Spark for big data processing
  • breadth of machine learning topics

Nice to have

  • deploying deep learning models (e.g., BERT/Transformers for NLP/behavioral sequences, diffusion models, GANs or general DNNs) to solve business problems
  • Publications or patents in applied ML domains
  • MLOps: CI/CD pipelines, model monitoring, cloud platforms, Deployment strategy
  • Emerging Techniques: LLM fine-tuning, federated learning, automated feature engineering, siamese networks, backbones (feature extraction networks), efficient transformer architectures
  • Personalization: Session-based and long term interest recommendations. Two-Tower and Transformer based architectures
  • Lead Scoring / Behavior: Predictive analytics, churn modeling, and causal ML for attribution

What the JD emphasized

  • deep learning modeling
  • deep learning
  • representation learning
  • scalable, production-grade systems
  • multi-modal modeling
  • rigorous A/B testing
  • causal inference
  • model deployment
  • evaluation frameworks

Other signals

  • design and deploy high-impact models
  • scalable, production-grade systems
  • end-to-end ML pipelines
  • publish research, file patents
  • innovate in multi-modal modeling
  • rigorous A/B testing, causal inference
  • MLOps engineers to streamline model deployment
  • define offline and online evaluation frameworks