Applied ML Science Manager

Apple Apple · Big Tech · Cupertino, CA · Machine Learning and AI

The Applied ML Science Manager will lead a team focused on Causal Inference and AIML solutions for Apple's services, impacting business decisions and marketing optimization. The role involves developing and deploying cutting-edge solutions, defining technical vision, and fostering a collaborative team culture. Responsibilities include leading scientists and engineers, overseeing technical strategy, managing projects, and collaborating with cross-functional teams. Requires a Master's degree, leadership experience, and expertise in Causal Inference techniques, ML, and programming languages.

What you'd actually do

  1. Lead, mentor, and grow a high-performing team of Applied Scientists and Machine Learning Engineers, fostering a culture of innovation and collaboration
  2. Drive team goals, priorities, and career development, including recruitment and onboarding
  3. Oversee the technical strategy, design, and full lifecycle of scalable, robust Causal Inference and Machine Learning products
  4. Manage timelines, resources, and deliverables, ensuring projects are completed on time, within scope, and communicated to stakeholder teams
  5. Collaborate with product managers, data scientists, and other engineering teams to translate business requirements into technical specifications and deliver impactful, practical solutions, increasing internal adoption of causal inference approaches and democratizing data

Skills

Required

  • Master’s degree in Statistics, Economics, Mathematics, Machine Learning, Computer Science, Engineering, or a related technical field
  • 3+ years of experience in a leadership or management role, leading Applied Scientists, Machine Learning Engineers and Data Scientists
  • 5+ years of experience as an Applied Scientist, Machine Learning, or Data Scientist role
  • Familiarity with a brand range of quasi-experimental Causal Inference techniques such as diff-in-diff, synthetic control method, panel analysis, regression discontinuity design, interrupted time series, and propensity score matching
  • Working knowledge of Marketing Mix models and validation through Matched Market testing
  • Practical expertise leveraging Customer Lifetime Value models to drive business decision-making
  • Solid understanding of AIML technologies including Generative AI
  • Proven track record of successfully delivering complex projects from start to finish
  • Proficiency in programming languages such as Python, R, SQL, Java, or C++
  • Experience with cloud platforms, Spark, Docker, and MLOps tools and best practices
  • Excellent communication, collaboration, and presentation skills with meticulous attention to detail

Nice to have

  • PhD in related field
  • Hands-on experience leveraging Generative AI to improve productivity and generate new insights
  • Curious business attitude with an ability to condense complex concepts and models into clear and concise takeaways that drive action

What the JD emphasized

  • Causal Inference
  • Machine Learning
  • observational testing frameworks
  • counterfactual modeling
  • lifetime value estimation
  • Marketing Mix models
  • Generative AI

Other signals

  • Causal Inference
  • Machine Learning
  • observational testing frameworks
  • counterfactual modeling
  • lifetime value estimation
  • Marketing Mix models
  • Generative AI