Lead Machine Learning Engineer, Ads Research

Disney Disney · Media · Seattle, WA +4

Lead Machine Learning Engineer focused on generative AI (mixed media, video, audio, LLMs, agentic workflows) and traditional ML for ad platforms. Responsibilities include developing, optimizing, and productionizing these technologies, driving innovation, and building scalable ML systems. The role also involves mentoring junior engineers and working across various advertising domains like forecasting, pricing, and targeting.

What you'd actually do

  1. Develop, optimize, and productionize innovative technologies in generative AI (mixed media, video, and agentic LLM applications) as well as in traditional ML modeling applications.
  2. Create, evaluate, improve, optimize technologies
  3. Drive innovation and apply state of the art AI and machine learning across advertising domains, including inventory forecasting, ad experience, ad pacing, pricing, targeting, and efficient ad delivery.
  4. Invent and iterate on novel solutions to complex advertising challenges with rapid prototyping and deployment cycles.
  5. Design, build, and scale robust ML systems that power core ad platform capabilities

Skills

Required

  • Bachelor's in computer science or equivalent experience
  • Experience developing, researching, and/or productionizing generative AI modeling or AI-based editing domains (image, video, mixed media, audio, LLMs, agentic flows)
  • Experience developing language-processing applications via LLMs or agentic flows
  • Minimum 7 years of hands-on experience developing and deploying large-scale machine learning systems
  • Strong knowledge of AI/ML technologies, mathematics and statistics
  • Excellent communication, collaboration skills, and a strong teamwork ethic
  • Strong foundations in algorithms, data structures, and numerical optimization
  • Experience in programming languages such as Python (primary), Java and SQL
  • Familiarity with deep learning tools and frameworks such as TensorFlow, Pytorch, Jax, Hugging libraries etc.
  • Expert knowledge with traditional (tabular) ML modeling and methods
  • Proven proficiency in deep learning methodologies, fine tuning, and transformer architectures

Nice to have

  • Experience creating ML datasets (especially in computer vision or generative AI) or developing rigorous quality evaluation processes or data labeling processes
  • Experience in rapid creative prototyping with generative AI is a plus
  • Very strong interest to self-teach via publications and training resources in generative modeling including in generative video and diffusion modeling

What the JD emphasized

  • rigorously developing, researching, and/or productionizing any of the following generative AI modeling or AI-based editing domains: image, video, mixed media, audio, LLMs, or agentic flows
  • rigorous quality evaluation processes
  • large-scale machine learning systems

Other signals

  • generative AI
  • LLM applications
  • agentic multimodal technologies
  • large-scale machine learning systems