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Our team (Signals Modeling) builds the core intelligence that understands and predicts how users interact with ads - from the first impression through clicks, post-click engagement, and downstream business outcomes. We design and train transformer-based models with billions of parameters that power ad ranking, pricing, and optimization across large-scale consumer surfaces. These models go well beyond simple click prediction: they reason over long user histories, rich ad and content representations, and heterogeneous event streams to infer user intent and advertiser value, even when ground truth signals are sparse or partially unobservable. The team owns end-to-end ML systems, including large-scale data and label construction, representation learning, multi-task and proxy objectives, calibration, and rigorous offline and online evaluation. We build sophisticated training pipelines that transform weak signals (e.g., page visits, dwell time, or engagement events) into high-quality learning targets and deploy models that remain robust under delayed conversions and shifting marketplace dynamics. Engineers and scientists on the team work at the intersection of deep learning, large-scale experimentation, and marketplace economics, shipping production-grade models and data pipelines that directly drive revenue and advertiser ROI. This is a hands-on role with real ownership: you’ll help shape next-generation transformer architectures, push the limits of scalable training and serving, and see your models make measurable impact in one of the world’s largest ads ecosystems.
Job Responsibility:
Contribute to modeling and data innovations for ad interaction outcome prediction under partial and noisy feedback
Focus on developing estimated conversion models, supporting data-driven attribution and weak-label generation pipelines, and applying robust learning and calibration methods in scenarios where true user outcomes are sparse, delayed, or unobservable
Partner with senior scientists and engineers to design and evaluate multi-task and proxy-signal models, enhance offline and online measurement frameworks, and help translate modeling improvements into production systems that impact ad ranking, bidding, advertiser ROI, and user experience at web scale
Enjoy working on applied machine learning problems end-to-end while growing technical depth within a highly collaborative environment
Requirements:
Bachelor's Degree in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND 2+ years related experience (e.g., statistics, predictive analytics, research)
OR Master's Degree in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field AND 1+ year(s) related experience (e.g., statistics, predictive analytics, research)
OR Doctorate in Statistics, Econometrics, Computer Science, Electrical or Computer Engineering, or related field
OR equivalent experience
Nice to have:
Experience working with noisy, weak, or proxy labels
Exposure to conversion, outcome, engagement, or funnel modeling
Familiarity with model calibration, reliability analysis, or uncertainty estimation
Foundational knowledge of causal inference, attribution, or counterfactual evaluation
Experience in ads, recommendation systems, marketplaces, or other large-scale ML-driven products
Exposure to multi-task or auxiliary-task learning systems
Demonstrated ability to contribute effectively within cross-functional teams
Hands-on experience with modern ML models (e.g., deep learning, tree-based models, or linear models) and feature engineering
Good understanding of supervised learning fundamentals
exposure to multi-task learning is a plus
Experience working with large-scale datasets and contributing to modeling pipelines (data preparation, training, validation, and iteration)
Familiarity with offline evaluation methodologies and a basic understanding of online experimentation concepts
Proficiency in Python and experience with at least one major ML framework (e.g., PyTorch or TensorFlow)
Ability to execute modeling projects with guidance, communicate progress clearly, and incorporate feedback
Solid collaboration skills and a willingness to learn in ambiguous problem spaces