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RemoteStar

Machine Learning Engineer

Actively Reviewing

RemoteStar

Delhi Full-Time 4–8 yrs exp Posted 3 weeks ago  · Apply by Aug 19, 2026

RemoteStar is Hiring: Applied ML Engineer — Recommender Systems

Location: Gurgaon | Full-time | In-office


For one of our fast-growing gaming commerce clients


RemoteStar is hiring an Applied ML Engineer for one of our clients India’s first Gaming Commerce company, building a new way for 500M+ gamers to shop inside games.

Our client works with game studios and brands to turn in-game engagement into real-world rewards, helping studios improve monetization, players discover better rewards, and brands drive measurable performance.


We’re looking for someone to build the recommendation engine behind an in-game commerce store deciding which products, coupons, and rewards to show to which player, at the right moment.


What you’ll work on:

  • Own collaborative filtering models, starting with Gorse and potentially moving to a custom stack
  • Build product embeddings using product2vec, Faiss / ANN, and related retrieval systems
  • Develop ML-driven cohort assignment and ranking systems
  • Build offline evaluation frameworks using precision@k, NDCG, conversion rate, diversity, and coverage
  • Bridge offline models to online serving through model-serving infrastructure and refresh pipelines
  • • Calibrate recommendations against business outcomes such as CTR, GMV, margin, and repeat redemption
  • • Work closely with Data Engineering and Backend teams on event pipelines, feature stores, ranking APIs, and Redis-based serving layers
  • • Translate sparse and noisy in-game event data into reliable recommendation signals


What we’re looking for:

  • 3–5 years of ML engineering experience, specifically in recommender systems
  • Strong Python skills: PyTorch / JAX, scikit-learn, NumPy
  • Hands-on experience with collaborative filtering, sparse matrices, cold start, and production evaluation
  • Experience with embedding-based retrieval using Faiss, ScaNN, or similar tools
  • Strong understanding of recommendation evaluation beyond accuracy — diversity, coverage, and business metrics
  • Experience moving models from offline notebooks to production serving
  • Clear communication and structured problem-solving

Nice to have:


  • Experience with voucher, coupon, deal, marketplace, or content-feed recommendation systems
  • Gaming, mobile, or consumer-engagement product experience
  • Familiarity with Gorse or LightFM
  • Experience with contextual bandits, online learning, or feature store patterns
  • Startup experience and strong ownership mindset