Machine Learning Engineer - Intern

Apple Apple · Big Tech · Beijing, China · Machine Learning and AI

Research-focused ML Engineer Intern at Apple's AI/ML org, focusing on data curation, model evaluation, and exploring new ML methods for large-scale systems, computer vision, NLP, and multi-modal understanding. The role involves collaborating with researchers and engineers to develop transformative products and publish groundbreaking research.

What you'd actually do

  1. As a Machine Learning (ML) Engineer, you will be entrusted with the critical role of innovating and applying state-of-the-art research in ML to tackle complex data problems.
  2. You will work with a multidisciplinary team to actively participate in the data-model co-design and co-development practice.
  3. Your responsibilities will extend to the design and development of a comprehensive data curation framework.
  4. You will also create robust model evaluation pipelines, integral to the continuous improvement and assessment of ML models.
  5. Additionally, your role will entail an in-depth analysis of collected data to underscore its influence on model performance.

Skills

Required

  • Currently pursuing a PhD degree or equivalent experience in Machine Learning, Computer Vision, Natural Language Processing, Data Science, Statistics or related areas.
  • Proven expertise in machine learning with a passion for data-centric machine learning.
  • Experience with natural language processing (NLP), and large language models, such as BERT, GPT, or Transformers.
  • Strong programming skills and hands-on experience using the following languages or deep learning frameworks: Python, PyTorch, or Jax.

Nice to have

  • Staying on top of emerging trends in LLMs
  • Strong problem-solving and communication skills
  • Demonstrated publication record in relevant conferences (e.g. NeurIPS, ICML, ICLR, CVPR, etc) is a plus
  • Available for 9+ months for internship

What the JD emphasized

  • PhD degree or equivalent experience
  • groundbreaking research
  • state-of-the-art research
  • transformative products
  • premier academic venues

Other signals

  • explore new methods
  • challenge existing metrics or protocols
  • develop new insightful practices
  • innovating and applying state-of-the-art research
  • data-model co-design and co-development
  • design and development of a comprehensive data curation framework
  • create robust model evaluation pipelines
  • in-depth analysis of collected data
  • publishing and presenting at premier academic venues