Data Scientist
Role details
Job location
Tech stack
Job description
As the data science expert on the team, you will own the full life cycle of data science work-from problem framing and modeling to production deployment. This is not a pure research or pure analysis role. We are looking for a "full-stack" data scientist who can both rapidly prototype using cutting-edge AI tools and engineer models into real, production-ready systems. You'll partner closely with business teams to turn data capabilities into measurable commercial value., * Independently drive the end-to-end life cycle of data science projects: business problem decomposition, data exploration, feature engineering, modeling, evaluation, deployment, and monitoring.
- Leverage AI-assisted coding tools (e.g., Cursor, GitHub Copilot, Claude Code) to dramatically accelerate development and quickly turn ideas into working prototypes and products.
- Engineer experimental models into stable, maintainable, and scalable production-grade services, owning their live performance.
- Build and maintain data pipelines and ML workflows, ensuring data quality and reproducibility.
- Collaborate across business, product, and engineering teams to take projects from 0 to 1 independently., * Community, in which authenticity is embraced, and the strength of our differences fuels our collective spirit.
- Culture of empowerment, learning & growth, that offers you the tools, space and opportunity to learn, innovate and lead.
- Work that brings fulfillment. From delighting clients every day, to inspiring our industry at large, every action makes a difference.
Requirements
- AI Vibe Coding Capability
- Proficient in using AI-assisted coding tools for rapid development; able to effectively drive AI through natural language to code, debug, and refactor.
- Strong "human-AI collaboration" working style: knows how to break down tasks, write high-quality prompts, and review and control the quality of AI-generated code.
- Hands-on experience rapidly building end-to-end proofs of concept (POCs) with AI tools.
- Data Science Engineering Capability
- Solid software engineering foundation: familiar with version control (Git), coding standards, unit testing, and CI/CD practices.
- Able to independently deploy models to production; experienced with containerization (Docker), API services, and model monitoring.
- Familiar with the data engineering stack (e.g., SQL, Spark, Airflow, or equivalent) and able to build reliable data pipelines.
- Strong command of Python, with the ability to write clean, maintainable, production-grade code., * Degree in Computer Science, Statistics, Mathematics, or a related field; 5+ years of relevant data science experience.
- Strong foundation in machine learning and statistical modeling.
- Strong business acumen and communication skills; able to translate technical outcomes into business language.
- Self-driven, independent, and able to deliver high-quality results with limited resources.
Nice to Have
- Experience in retail, beauty, or e-commerce.
- Familiarity with LLM application development or practices such as RAG and AI agents.