**About the Role:**
We are seeking an experienced Data Scientist to design and deploy scalable recommendation engines using collaborative filtering, content-based methods, or hybrid approaches.
The ideal candidate will have a strong background in building personalized experiences for millions of users by transforming raw data into insights and automated systems.
* Key Responsibilities:
* Design and develop user profiling models using clickstream and behavioral data.
* Leverage AI-driven product tagging to enhance metadata quality and retrieval.
* Analyze macro and micro fashion trends to influence product rankings.
* Extract insights from large-scale user data and convert them into actionable models.
* Work closely with engineers and product managers to integrate models into production.
* Develop and monitor metrics for model performance and user engagement impact.
**Requirements:**
To be successful in this role, you will need:
* 2+ years of experience in data science, ideally in e-commerce or consumer-tech.
* Hands-on experience building and deploying recommendation systems (e.g., matrix factorization, deep learning-based recommenders, implicit/explicit feedback models).
* Proficiency in Python and machine learning libraries (e.g., Scikit-learn, TensorFlow, PyTorch, LightFM).
* Experience with data analysis tools such as SQL, Pandas, and Jupyter.
* A strong grasp of personalization techniques and user segmentation strategies.
* Solid understanding of product ranking using behavioral data and trend signals.
* Experience working with large-scale data pipelines and A/B testing frameworks.
* Strong communication and problem-solving skills.
**Nice to Have:**
If you have experience in the fashion or lifestyle e-commerce domain, knowledge of modern MLops workflows and model monitoring tools, familiarity with cloud platforms (AWS, GCP), or tools like Airflow or DBT, that's a plus.