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Описание: |
At Fozzy Group, we are building the next generation of AI-powered personalization products that help millions of customers discover relevant products, simplify shopping, and create a seamless omnichannel experience.
As a Senior Data Scientist, you will own the design and delivery of machine learning solutions that power personalized customer experiences across our digital platforms. You will architect, build, and optimize large-scale recommendation systems end to end — from research and prototyping to production and measurable business impact on customer engagement, conversion, basket growth, and retention.
You will drive a broad portfolio of personalization products, including Recommendations, Similar Products, Product Substitutions, Bundles, Cross-sell, Upsell, and Next Best Action, partnering closely with Product Managers and Software Engineering teams, and mentoring less experienced data scientists along the way.
Key Responsibilities * Own the end-to-end design, development, and deployment of large-scale recommendation systems for personalized product discovery. * Own execution of personalization strategy across multiple customer touchpoints, including Home Page, Product Detail Pages, Basket, Search, Checkout, CRM campaigns, and other digital experiences. * Architect ranking models that optimize recommendations across multiple, often competing business objectives: relevance, conversion, diversity, novelty, customer satisfaction, and revenue. * Design customer and product representations using embeddings, representation learning, and graph-based machine learning techniques. * Lead the development of customer preference and Next Best Action models using behavioral, transactional, and contextual data. * Define experimentation strategy: design, execute, and analyze A/B tests to rigorously evaluate the business impact of personalization initiatives, applying causal inference where appropriate. * Drive continuous improvement of recommendation quality using collaborative filtering, content-based methods, hybrid recommenders, learning-to-rank, and deep learning approaches — choosing the right method for each problem. * Set standards for scalable feature engineering pipelines and reusable ML components, and drive their adoption across the team. * Establish best practices for deploying, monitoring, and maintaining ML models in production, ensuring reliability, scalability, and reproducibility. * Partner with Product, Engineering, Commercial, and Analytics leadership to translate business challenges into a roadmap of scalable AI products. * Mentor middle and junior data scientists through code and design reviews, technical guidance, and knowledge sharing.
Preferred Qualifications * 5+ years of experience in Data Science / Machine Learning, including proven experience building production-grade Recommendation Systems at scale. * Deep understanding of Learning-to-Rank algorithms, ranking optimization, and multi-objective optimization. * Expert-level knowledge of Collaborative Filtering, Content-Based, and Hybrid Recommendation models, and when to apply each. * Strong background in customer modeling, preference learning, and representation learning. * Experience with Graph Machine Learning or Graph Neural Networks is a plus. * Advanced hands-on experience with deep learning frameworks such as PyTorch or TensorFlow. * Proven track record of building scalable ML pipelines and production MLOps workflows. * Strong expertise in experimentation, A/B testing, and causal inference, including experiment design for complex product ecosystems. * Excellent SQL and Python skills; experience with Spark or distributed data processing frameworks is a plus. * Demonstrated ability to lead technical initiatives, influence cross-functional stakeholders, and mentor other data scientists.
What We Offer * Competitive salary. * Professional & personal development opportunities. * Being part of dynamic team of young & ambitious professionals. * Corporate discounts for sport clubs and language courses. * Medical insurance package.
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