Finding the best job has never been easier
Share
We’re building the future of eCommerce product discovery, and we need a data-driven, AI-savvy problem solver to help us, do it.
This is an outstanding role at the intersection of data analytics, AI/ML model evaluation, and prompt engineering—ideal for someone who is just as comfortable writing SQL queries and Python scripts as they are experimenting with LLMs to build analytical solutions.
You’ll be embedded in the Product Knowledge org, shaping how we structure and optimize taxonomy, ontology, and catalog data for next-gen search, recommendations, and AI-driven experiences.
What You’ll DoAnalyze & Optimize eCommerce Product Data – Run deep SQL & Python analyses to find opportunities in taxonomy, ontology, and structured data for search & discovery improvements.
Leverage LLMs for Analytical Solutions – Use prompt engineering techniques to create AI-driven approaches for taxonomy validation, data enrichment, and classification.
Evaluate & Improve AI/ML Models – Develop detailed evaluation frameworks for product knowledge models, embeddings, and semantic search solutions.
Drive Insights & Strategy – Use data-driven storytelling to influence product and AI teams, helping shape decisions on catalog optimization, entity resolution, and knowledge graph development.
Integrate with AI/ML Teams – Work closely with data scientists and engineers to test and refine AI-based classification, search ranking, and recommendation models.
Prototype and Experiment – Move fast, test hypotheses, and build quick experiments to validate structured data strategies and AI-driven discovery improvements.
8 Years experience in analytics, data science role with 2 years of managerial experience.
Strong Data & Analytics Skills – Proficiency in SQL & Python for data wrangling, analytics, and automation.
Product Analytics Attitude – Familiarity with eCommerce search, recommendations, and knowledge graph applications
Strong Communication – Ability to turn sophisticated findings into actionable recommendations for Product, AI, and Engineering teams.
AI/LLM Experience – Hands-on experience with LLMs, timely engineering, and retrieval-augmented generation (RAG) for AI-powered insights (Preferred)
Model Evaluation Know-How – Ability to define metrics and evaluation frameworks for assessing ML-driven taxonomy and classification models..
Startup DNA – High agency, thrive in fast-paced, iterative environments with deep cross-functional collaboration.
Build the AI-powered future of eCommerce product discovery.
Move fast & own impactful projects in a startup-like, high-agency culture.
Work directly with AI, Data Science, and Product teams to craft taxonomy & ontology strategies.
Get hands-on with AI/ML in a real-world, high-scale environment.
This website uses cookies to enhance your experience. By continuing to browse the site, you agree to our use of cookies. Visit our for more information.
These jobs might be a good fit