What you will be doing
We are looking for a Data Scientist who can operate at the intersection of
classical machine learning
,
large-scale recommendation systems
, and
modern agentic AI systems
.
You will design, build, and deploy intelligent systems that power Glance’s personalized lock screen and live entertainment experiences. This role blends deep ML craftsmanship with forward-looking innovation in autonomous/agentic systems.
Your responsibilities will include:
Classical ML & Recommendation Systems
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Design and develop large-scale recommendation systems using advanced ML, statistical modelling, ranking algorithms, and deep learning.
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Build and operate machine learning models on diverse, high-volume data sources for personalization, prediction, and content understanding.
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Develop rapid experimentation workflows to validate hypotheses and measure real-world business impact.
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Own data preparation, model training, evaluation, and deployment pipelines in collaboration with engineering counterparts.
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Monitor ML model performance using statistical techniques; identify drifts, failure modes, and improvement opportunities.
Agentic Systems & Next-Gen AI
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Build and experiment with
agentic AI systems
that autonomously observe model performance, trigger experiments, tune hyperparameters, improve ranking policies, or orchestrate ML workflows with minimal human intervention.
-
Apply
LLMs, embeddings, retrieval-augmented architectures, and multimodal generative models
for semantic understanding, content classification, and user preference modelling.
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Design intelligent agents that can automate repetitive decision-making tasks—e.g., candidate generation tuning, feature selection, or context-aware content curation.
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Explore reinforcement learning, contextual bandits, and self-improving systems to power next-generation personalization.
Cross-functional impact
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Collaborate with Designers, UX Researchers, Product Managers, and Software Engineers to integrate ML and GenAI-driven features into Glance’s consumer experiences.
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Contribute to Glance’s ML/AI thought leadership—blogs, case studies, internal tech talks, and industry conferences.
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Thrive in a multi-functional, highly collaborative team environment with engineering, product, business, and creative teams.
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Plus: Interface with stakeholders across Product, Business, Data, and Infrastructure to align ML initiatives with strategic priorities.
We are seeking candidates with deep expertise in ML, recommendation systems, and a strong appetite for building agentic AI systems.
You should have experience with:
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Large-scale ML and recommendation systems (collaborative filtering, ranking models, content-based approaches, embeddings).
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Classical ML and deep learning techniques across NLP, sequence modelling, RL, clustering, and time series.
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Experience in deploying ML workflows/models in production system
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Big data processing (Spark, distributed data systems) and cloud computing.
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Designing end-to-end ML solutions—from prototype to production.
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Plus: Building or experimenting with LLMs, generative models, and agentic AI workflows (e.g., autonomous evaluators, self-improving pipelines, automated experiment agents).
Qualifications
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Bachelor’s/master’s in computer science, Statistics, Mathematics, Electrical Engineering, Operations Research, Economics, Analytics, or related fields. PhD is a plus.
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6+ years of industry experience in ML/Data Science, ideally in large-scale recommendation systems or personalization.
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Experience with LLMs, retrieval systems, generative models, or agentic/autonomous ML systems is highly desirable.
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Expertise with algorithms in NLP, Reinforcement Learning, Time Series, and Deep Learning, applied on real-world datasets.
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Proficient in Python and comfortable with statistical tools (R, NumPy, SciPy, PyTorch/TensorFlow, etc.).
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Strong experience with the big data ecosystem (Spark, Hadoop) and cloud platforms (Azure, AWS, GCP/Vertex AI).
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Comfortable working in cross-functional teams.
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Familiarity with privacy-preserving ML and identity-less ecosystems (especially on iOS and Android).
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Excellent communication skills with the ability to simplify complex technical concepts.
We value curiosity, problem-solving ability, and a strong bias toward experimentation and production impact.
Our team includes engineers, physicists, economists, mathematicians, and social scientists—a great data scientist can come from anywhere.