Deep Learning Algorithm Engineer, 3D Pose – Body Technologies

Apple
Apple

Job Overview

Key Qualifications

  • 2+ years of experience with deep learning (academic or professional experience)
  • Solid understanding of deep learning fundamentals
  • Familiarity with 3D, projective, and multiple view geometry
  • Experience in working with large real world datasets
  • Proficiency with Python (C++, Objective-C, Swift are a plus)
  • Proven experience in at least one major machine learning framework: TensorFlow, Keras, (Py-)Torch etc.
  • Description

    The Video Computer Vision (VCV) group delivers algorithms that drive revolutionary Apple products. We are the team that is responsible for many of the key algorithms for videos and photos on Apple products (e.g iPhone, iPad and more), provide backbone algorithms for ARKit, and conduct research and development in the space of Virtual and Augmented Reality. VCV’s Body Technologies team develops people understanding algorithms that drive features such as ARKit Motion Capture. We are looking for smart engineers who are passionate about building products for millions of customers around the world. You will be working on ground breaking technology and develop algorithms that enable a high-quality user experience across a range of applications. As a part of our team, you will collaborate with both software teams (computer graphics, video engineering, data generation/annotation, system integration) and hardware engineers (cameras, silicon, electrical engineering, product design). Join us for the rare opportunity to work on novel algorithms software that go beyond the state of the art and eventually will touch the lives of millions of people around the world!

    Education & Experience

    MS/PhD in Machine Learning, Computer Science, Mathematics, or a related field. Alternatively, a comparable industry career with a proven track record. If this is you, we’d love to hear from you!

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