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Principal ML Scientist

Job in Bengaluru, 560001, Bangalore, Karnataka, India
Listing for: Nykaa
Full Time position
Listed on 2026-06-22
Job specializations:
  • IT/Tech
    Machine Learning/ ML Engineer, AI Engineer (Applied/Software), Data Scientist
Job Description & How to Apply Below
Location: Bengaluru

Principal / Sr. Principal ML Scientist (Causal Inference, Reinforcement Learning, Ranking & Bid Optimization)

Role Overview

We are looking for a Principal / Sr. Principal Applied ML Scientist to lead the development of next-generation machine learning systems powering recommendations, search, ads ranking, and monetization platforms s is a high-impact Individual Contributor (IC) role requiring deep expertise in causal inference, unbiased learning systems, reinforcement learning, and large-scale optimization techniques that improve long-term user engagement, relevance, and business outcomes.

The ideal candidate will combine strong hands-on technical depth with cross-functional influence, driving architecture, research direction, and ML best practices across Ads, Recommendations & Personalization, and Search pods.

Key Responsibilities

- Lead the design and deployment of advanced ML systems for recommendations, search, and ads monetization at large scale.
- Drive research and productionization of applied causal inference techniques for ranking and recommendation systems, including:
- Unbiased Learning-to-Rank
- Counterfactual/offline evaluation
- Incrementality measurement
- Position bias estimation and mitigation
- Treatment effect modeling
- Build and optimize Reinforcement Learning (RL) frameworks for long-term optimization across user engagement, retention, and monetization objectives.
- Develop scalable solutions for Cold Start and Long Tail discovery problems using:
- Embedding-based retrieval systems
- Exploration/exploitation strategies
- Catalog-wide optimization
- Representation learning techniques
- Lead innovations in Ads Ranking and marketplace optimization, including:
- Bid optimization
- Auction-aware ML systems
- Budget pacing
- Attribution modeling
- Simulation frameworks
- Multi-objective optimization balancing revenue, relevance, user experience, and long-term value
- Architect robust experimentation and evaluation frameworks for measuring model impact reliably in dynamic environments.
- Act as a technical mentor and thought leader across Ads, Recommendations & Personalization, and Search pods by:
- Guiding senior engineers and scientists on ML architecture and experimentation
- Driving best practices for causal inference and evaluation
- Influencing roadmap and technical strategy across teams
- Contribute as a hands-on technical leader through model development, experimentation, system design, and productionization.

Preferred Qualifications

- 10+ years of experience in Machine Learning, Recommender Systems, Search, Ads, or Marketplace Optimization.
- Deep expertise in causal inference and counterfactual learning applied to large-scale recommendation/search/ads systems.
- Strong hands-on experience with Reinforcement Learning for production recommendation or monetization systems.
- Proven experience building large-scale ranking, retrieval, and personalization systems.
- Strong understanding of:
- Learning-to-Rank
- Bandits and exploration strategies
- Representation learning / embeddings
- Auction systems and ads marketplaces
- Multi-objective optimization
- Demonstrated ability to influence technical direction and drive execution in a highly cross-functional environment without direct people management responsibility.

Good to Have

- Experience building ML systems for Notifications, Engagement, or CRM platforms, including:
- Send-time optimization
- Cross-channel orchestration
- Personalized content optimization

What Makes This Role Exciting

- Opportunity to solve cutting-edge problems at the intersection of causal inference, RL, personalization, and marketplace optimization.
- Direct impact on large-scale user experience, discovery, engagement, and monetization systems.
- Ability to influence ML strategy and platform evolution across multiple high-impact domains.
- Work with high-scale, high-dimensional datasets and state-of-the-art ML infrastructure.
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