Senior Machine Learning Engineer - Ads Auction

Cupertino, CA, US • Posted 10 hours ago • Updated 10 hours ago
Full Time
On-site
Fitment

Dice Job Match Score™

🫥 Flibbertigibetting...

Job Details

Skills

  • FOCUS
  • Customer Experience
  • MLS
  • PASS
  • Privacy
  • Agile
  • Advertising
  • Art
  • Online Advertising
  • Design Optimization
  • Design Of Experiments
  • Research and Development
  • Cross-functional Team
  • Leadership
  • Product Management
  • Research
  • Publications
  • Fluency
  • Java
  • Python
  • Apache Spark
  • Apache Hadoop
  • Economics
  • Operations Research
  • Statistics
  • Forecasting
  • Data Science
  • Machine Learning (ML)
  • ADS
  • Search Engineering
  • Optimization

Summary

At Apple, we focus deeply on our customers' experience. Apple Ads brings this same approach to advertising, helping people find exactly what they're looking for and helping advertisers grow their businesses. Our technology powers ads and sponsorships across Apple Services, including the App Store, Apple News, and MLS Season Pass. \\n\\nEverything we do is designed for trust, connection, and impact: We respect user privacy, integrate advertising thoughtfully into the experience, and deliver value for advertisers of all sizes-from small app developers to big, global brands. Because when advertising is done right, it benefits everyone.\\n\\nWe are seeking a self-motivated individual that will build out the next generation of our ads platforms and ensure that Apple provides the most relevant and high quality ads experience while maintaining a healthy marketplace. \\n\\nThe ideal candidate has a strong background in auction theory, applied machine learning, and large-scale systems, along with hands-on experience building and optimizing auction-based ad delivery systems in production. You will have an excellent understanding of scalable architectures and thrive working in Agile environments.

In this role, you are responsible for designing the core auction system that powers our advertising platform to drive optimal outcomes for advertisers, users, and our platform. You will have the opportunity to build the next generation solutions for marketplace optimization that enable driving optimal value for multiple stakeholders in the system. You will have the opportunity to apply your ability to move the state of the art techniques in a fast growing business that positively impacts publishers, developers and Apple users at global scale. The ability to be a great teammate under tight deadline constraints is key to success.

5+ years of experience working in online advertising, marketplace design, or large-scale recommendation/auction systems\nStrong background in auction theory, mechanism design, optimization, statistics, or machine learning.\nAbility to apply and implement research concepts, ultimately in production quality code\nExperience defining clear, testable research hypotheses, including intended impact on the business\nDeep knowledge of design of experiments, online experimentation approaches, preferably at scale\nAbility to formulate and advocate for R&D objectives and results to cross-functional team members including executive business leadership and product management\nExperience contributing and/or reviewing research for top conferences and publications\nDeep fluency in Java or Python.\nExperience with Spark, Hadoop or other distributed frameworks.\nPhD in Economics, Operations Research, Machine Learning, Statistics, Control Theory, Forecasting, Optimization, Reinforcement Learning or related field with experience building production systems or have equivalent experience working with large data science / machine learning projects in industry.

Experience in ads optimization, recommendations, or search relevance optimization is highly preferred
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.
  • Dice Id: 90733111
  • Position Id: 1b68c28b2c048427040a0a1e205455e1
  • Posted 10 hours ago
Create job alert
Set job alertNever miss an opportunity! Create an alert based on the job you applied for.

Similar Jobs

Cupertino, California

Today

Full-time

Cupertino, California

Today

Full-time

Cupertino, California

Today

Full-time

Cupertino, California

Today

Full-time

Search all similar jobs