Job Information
Amazon Senior Applied Science Manager, Traffic Quality in Bengaluru, India
Description
Amazon Ads is a multi-billion dollar global business that delivers advertising experiences across Amazon's owned-and-operated properties (including Prime Video, Twitch, Fire TV, and Amazon.com), third-party publisher networks, and emerging channels like generative AI-powered shopping experiences. As one of the fastest-growing segments of Amazon, we operate at unprecedented scale across desktop, mobile, connected TV, and emerging surfaces.
Within Amazon Ads, Traffic Quality is a critical pillar of advertiser trust and marketplace integrity. Our mission is to build advanced capabilities that work at petabyte scale to detect sophisticated invalid traffic (IVT) which includes sophisticated non-human traffic, bot networks, and fraudulent engagement patterns across programmatic advertising. We are on a journey to establish Amazon Ads as an industry leader in traffic quality standards and transparency. Our research agenda focuses on staying ahead of adversarial actors through continuous innovation in detection methodologies, leveraging state-of-the-art techniques in deep learning and generative modeling, user behavior and multi-modal representation learning, anomaly detection, time-series analysis, and sparse labeling methods. We process billions of ad events daily, developing novel algorithms that balance precision and recall while operating under strict latency constraints. Our work directly protects hundreds of millions of dollars in advertiser spend annually while maintaining a seamless user experience.
Key job responsibilities
Strategic Leadership & Vision
Define long-term science vision for Traffic Quality driven by advertiser and publisher needs, translating direction into actionable team plans.
Lead teams solving strategically important business problems independently, delivering robust, scalable scientific solutions with limited guidance.
Proactively identify technology gaps and business opportunities, determining resource allocation priorities.
Scientific Innovation & Execution
Design and implement statistical and machine learning solutions to detect robotic and human traffic patterns across billions of daily ad events.
Own full development cycle for production-level code handling billions of ad requests: design, prototype, A/B testing, and deployment.
Hold team to highest scientific standards, reviewing modeling decisions and evaluating proposals for strengths and weaknesses.
Make sophisticated trade-offs balancing precision and recall under strict latency constraints.
Scope projects, design experiments, and improve methodologies for new data sources and model enhancements.
Stay current with scientific advancements and build publication strategy while championing excellence best practices.
Operational Excellence & Customer Trust
Maintain advertiser trust through near real-time monitoring systems, responding rapidly to anomalies and metric deviations.
Ensure operational excellence through proactive quality signal investigation, root cause analysis, and swift remediation.
Directly protect hundreds of millions of dollars in advertiser spend annually while maintaining seamless user experience.
Collaboration & Team Development
Partner with engineers, product managers, and cross-functional teams to solve complex IVT detection problems and influence strategic initiatives.
Hire, manage, coach, and promote scientists while building succession plans and growing future leaders.
Structure teams sustainably to meet scientific, business, and technology needs while fostering innovation culture.
About the team
Here are a few papers published by the team:
1/ Scaling Generative Pre-training for User Ad Activity Sequences. AdKDD 2023.
Basic Qualifications
10+ years of building large-scale machine learning and AI solutions at Internet scale experience
Master's degree in Computer Science (Machine Learning, AI, Statistics, or equivalent)
Experience distilling informal customer requirements into problem definitions, dealing with ambiguity and competing objectives
Experience hiring and leading experienced scientists as well as having a successful record of developing junior members from academia or industry to a successful career track
5+ years of people management experience
Preferred Qualifications
10+ years of practical work applying ML to solve complex problems for large-scale applications experience
5+ years of hands-on work in big data, machine learning and predictive modeling experience
PhD in Computer Science (Machine Learning, AI, Statistics, or equivalent)
Experience working with big data, machine learning and predictive modeling
Experience with big data technologies such as AWS, Hadoop, Spark, Pig, Hive etc.
Experience with Java, C++, or other programming language, as well as with R, MATLAB, Python, or an equivalent scripting language
Our inclusive culture empowers Amazonians to deliver the best results for our customers. If you have a disability and need a workplace accommodation or adjustment during the application and hiring process, including support for the interview or onboarding process, please visit https://amazon.jobs/content/en/how-we-hire/accommodations for more information. If the country/region you’re applying in isn’t listed, please contact your Recruiting Partner.