Data Scientist-II (Traditional/Classic ML, Neural networks exp must)

Full–time

Posted on: 8 days ago

What You’ll Do
  • Partner with Product to spot high-leverage ML opportunities tied to business

  • metrics.
  • Wrangle large structured and unstructured datasets; build reliable features and

  • data contracts.
  • Build and ship models to:

  • ○ Enhance customer experiences and personalization

    ○ Boost revenue via pricing/discount optimization

    ○ Power user-to-user discovery and ranking (matchmaking at scale)

    ○ Detect and block fraud/risk in real time

    ○ Score conversion/churn/acceptance propensity for targeted actions
  • Collaborate with Engineering to productionize via APIs/CI/CD/Docker on AWS.
  • Design and run A/B tests with guardrails.
  • Build monitoring for model/data drift and business KPIs

  • What We’re Looking For
  • 2–4 years of DS/ML experience in consumer internet / B2C products, with 7–8 models shipped to production end-to-end.
  • Proven, hands-on success in at least two (preferably 3–4) of the following:

  • ○ Recommender systems (retrieval + ranking, NDCG/Recall, online lift;

    bandits a plus)

    ○ Fraud/risk detection (severe class imbalance, PR-AUC)

    ○ Pricing models (elasticity, demand curves, margin vs. win-rate trade-offs,

    guardrails/simulation)

    ○ Propensity models (payment/churn)
  • Programming: strong Python and SQL; solid git, Docker, CI/CD.
  • Cloud and data: experience with AWS or GCP; familiarity with

  • warehouses/dashboards (Redshift/BigQuery, Looker/Tableau).
  • ML breadth: recommender systems, NLP or user profiling, anomaly detection.
  • Communication: clear storytelling with data; can align stakeholders and drive decisions.

Skills:- neural networks, Deep Learning, XGBoost, Linear regression, Long short-term memory (LSTM), CNN, KNN, Recurrent neural network (RNN), Machine Learning (ML) and catboost