Lead Machine Learning Engineer

Disney Disney · Media · Glendale, CA +4

Lead Machine Learning Engineer for Disney's Ad Platform Engineering, focusing on designing, building, and operating production ML systems for advertising use cases like inventory forecasting, pricing, targeting, and ad delivery. The role involves technical leadership, mentoring engineers, and ensuring ML solutions are reliable, performant, and cost-efficient in a low-latency, high-throughput environment.

What you'd actually do

  1. Lead the design and delivery of machine learning solutions across advertising use cases such as inventory forecasting, pricing, targeting, and efficient ad delivery
  2. Apply modern machine learning techniques to solve complex, real-time advertising problems
  3. Provide technical leadership for ML system architecture, modeling approaches, and production readiness within your domain
  4. Design, build, and scale ML architectures that balance model quality, latency, throughput, reliability, and cost
  5. Oversee the full ML lifecycle for owned systems, from experimentation through production deployment and iteration

Skills

Required

  • Python
  • Java
  • SQL
  • TensorFlow
  • PyTorch
  • Hugging Face
  • deep learning methodologies
  • Transformer architectures
  • Multimodal embedding techniques

Nice to have

  • experience with ML frameworks and tooling such as TensorFlow, PyTorch, and Hugging Face
  • experience with one or more of the following: Deep learning methodologies (e.g., sequence-based or representation learning models); Transformer architectures (e.g., BERT, GPT, ViT) for NLP and/or vision; Multimodal embedding techniques across text, image, audio, or

What the JD emphasized

  • hands-on technical leader
  • design, build, and operate production ML systems at scale
  • low-latency, high-throughput environments
  • full ML lifecycle
  • ML architectures that balance model quality, latency, throughput, reliability, and cost
  • production readiness
  • observable, debuggable, and explainable in production

Other signals

  • production ML systems at scale
  • low-latency, high-throughput environments
  • full ML lifecycle
  • ML architectures that balance model quality, latency, throughput, reliability, and cost