Просмотр резюме
Middle Data Scientist
400000 ₽
Россия
ПолнаяУдаленная работа
Опыт работы
2 года 1 месяц
Последнее место работы
Wildberries
Data Scientist
2 года 1 месяц
Резюме в Telegram-канале
10 резюме
Пост каждый день

О себе
О себе
Data Scientist at Wildberries, working on neural recommendation systems and search ranking in production — candidate generation, retrieval, diversity optimization, A/B testing. Currently exploring LLMs and multimodal models — built RAG pipelines, used VLMs for content understanding, and working on a project that combines vision-language models with recommendation architecture. Academic background in biology and biomedical data analysis (MSc at HSE University). Also teach ML courses at HSE and created recommender systems modules at WB Tech School.
Опыт в Affiliate
Данные отсутствуют
Опыт работы2 года 1 месяц
Май 2024 - по н.в.
(2 года 1 месяц)
Wildberries
Data Scientist
Mitigated recency bias in nearline recommendations by rebuilding the training dataset, switching to a next-item objective, and introducing a multi-target anti-bias loss for candidate generation. Removed RAM bottlenecks by moving to an iterable dataset pipeline. Result: GMV +13% and diversity +1.7% in production A/B testing.
Improved recommendation diversity by replacing quota-based post-processing with category-aware retrieval built on multiple FAISS indices split by category, then tuning the diversity–relevance trade-off through five A/B iterations. Result: +15.7% diversity and +1.5–5% on key engagement metrics, followed by production launch.
Improved search ranking by sourcing and integrating a broad set of item-level features into the ARGUS ranking model and running systematic ablation studies to measure their impact on NDCG and ROC.
Built a cold-start media recommendation baseline by replacing manual curation with clustered SigLIP embeddings used to drive exploration for new users. Result: ATPU +7.2% in A/B testing and production deployment.
Automated h2h A/B experiments by turning a manual multi-team handoff into a reproducible workflow that scores the correct user cohort and publishes daily recommendations by experiment ID.
Stack: Python, PyTorch, PySpark, FAISS, Airflow, S3, MLflow, Triton.
Навыки
A/B тестирование
SQL
Python
Машинное обучение
Глубокое обучение
Нейронные сети
MLFlow
Airflow
PyTorch
Разработка рекомендаций
Владение языками
Данные отсутствуют
Занятость
Занятость
Полная
Формат работы
Удаленная работа, Гибрид
График работы
Гибкий, 5/2
Переезд
Возможен
Командировки
Командировки возможны