Aiml - Machine Learning Researcher - Mlr

Apple Apple · Big Tech · Barcelona, Barcelona, Spain · Machine Learning and AI

Research Scientist role focused on advancing ML technology, particularly in introspection, robustness, and next-generation architectures. The role involves defining research agendas, implementing innovative ML approaches, running large-scale experiments, publishing work, and collaborating with engineering teams to integrate research into products. Requires expertise in ML/DL, transformers/diffusion/SSM, deep learning frameworks, and a strong publication record.

What you'd actually do

  1. Identify gaps in the research landscape, define a research agenda, and implement innovative ML approaches to address them.
  2. Design, run, and analyze experiments at scale, iterating from prototypes to robust implementations.
  3. Prepare technical reports and papers for publication, and present results at conferences and internal forums.
  4. Provide technical mentorship and guidance to peers and partner teams.
  5. Collaborate with engineering and product teams to integrate research outcomes into Apple products, ensuring the highest standards of quality, scientific rigor, and respect for user privacy.

Skills

Required

  • In-depth expertise in machine learning (ML) and deep learning (DL)
  • Experience with transformers, or diffusion, or SSM architectures
  • Strong mathematical foundation in linear algebra, probability and statistics
  • Hands-on experience with deep learning frameworks such as PyTorch, JAX, or TensorFlow
  • Strong publication record in top ML venues (e.g., NeurIPS, ICML, ICLR, ACL, EMNLP)
  • Ability to formulate a research problem, design experiments, and implement solutions end-to-end
  • Excellent written and verbal communication skills
  • Ability to focus and simplify when navigating ambiguous, fast-moving research problems
  • Ability to work both independently and collaboratively

Nice to have

  • Interpretability and introspection of large neural networks
  • Training of large-scale models, including distributed training, optimization at scale, and efficiency techniques
  • Exploration of alternative architectures to attention-based models (e.g., state-space models, recurrent or linear-attention variants, or other emerging approaches)

What the JD emphasized

  • In-depth expertise in machine learning (ML) and deep learning (DL)
  • Strong publication record in top ML venues (e.g., NeurIPS, ICML, ICLR, ACL, EMNLP)
  • Interpretability and introspection of large neural networks
  • Training of large-scale models

Other signals

  • research agenda
  • innovative ML approaches
  • experiments at scale
  • publication record
  • integrate research outcomes into Apple products