Staff Machine Learning Engineer – Ads Signals Intelligence & Information Retrieval

Apple Apple · Big Tech · Cupertino, CA +1 · Machine Learning and AI

Staff Machine Learning Engineer for Apple Ads, focusing on building ML-driven signal platforms for retrieval, prediction, and relevance. The role involves developing content understanding systems and large-scale infrastructure for near real-time signal updates, using LLM fine-tuning, knowledge graphs, semantic search, and multimodal learning. The primary output is an agentic system for ad delivery, with a secondary focus on the inference infrastructure supporting it.

What you'd actually do

  1. Design, implement, and scale ML systems that extract high-value semantic signals from structured and unstructured content
  2. Contribute to retrieval and ranking pipelines using techniques in query understanding, semantic embedding, and dense/sparse indexing
  3. Fine-tune and apply Large Language Models (LLMs) for NLP tasks like content labeling, rewriting, and semantic similarity
  4. Construct and utilize knowledge graphs and entity linking systems for enriching creative and query signals
  5. Work with multimodal data (e.g., combining text, image, and metadata signals) to build robust, cross-domain signal representations

Skills

Required

  • 4+ years of experience in machine learning or applied research
  • focus on retrieval, ranking, NLP, or content understanding
  • Deep understanding of information retrieval, semantic search, and query-document matching
  • Strong hands-on experience with LLM fine-tuning, knowledge graph construction, and entity-centric modeling
  • Experience working with multimodal models, including text, vision, metadata, or audio-based representations
  • Proficiency in Python
  • experience with one or more of ML frameworks like PyTorch, TensorFlow
  • Background in statistical modeling, optimization, and ML theory
  • Demonstrated ability to deliver high-impact ML solutions in production environments
  • Bachelor's in Computer Science, Machine Learning, Information Retrieval, NLP, or a related field

Nice to have

  • ad tech knowledge
  • Exposure to ad tech domains such as auction modeling, targeting, attribution, or creative optimization
  • MS or PhD in Computer Science, Machine Learning, Information Retrieval, NLP, or a related field

What the JD emphasized

  • core of the role is building high-quality, privacy-centric signals
  • work at the forefront of LLM fine-tuning
  • knowledge graph construction
  • semantic search
  • multimodal representation learning
  • retrieval
  • ranking
  • content intelligence
  • massive scale

Other signals

  • LLM fine-tuning
  • knowledge graph construction
  • semantic search
  • multimodal representation learning
  • retrieval
  • ranking
  • content understanding