Multimodal Generative Modeling Engineer at Apple
San Diego, California, USA -
Full Time


Start Date

Immediate

Expiry Date

06 Aug, 25

Salary

250600.0

Posted On

20 May, 25

Experience

0 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Computer Science, Gan

Industry

Information Technology/IT

Description

Imagine what you could do here! At Apple, new insights have a way of becoming extraordinary products, services, and customer experiences very quickly. Do you bring passion and dedication to your job? If so, we are looking for individuals like you. Join us in building new groundbreaking experiences in the era of generative AI. You will work on various projects aimed at pushing the boundaries of creativity and innovation within Apple’s ecosystem. We are looking for machine learning engineers to work on generative AI models for image/video generation. We are looking for candidates that thrive in tightly collaborative team of self-motivated individuals.

DESCRIPTION

This position requires a highly motivated person who wants to help us advance in the development of generative models for image/video generation. As a multimodal generative modeling engineer in our team, you will be responsible for developing machine learning technologies, implementing and optimizing the solution, and shipping it in the products. In addition, you will have an opportunity to engage and collaborate with several teams across Apple to deliver the best products.

MINIMUM QUALIFICATIONS

  • Deep understanding in neural network, strong experience in designing and optimizing networks
  • Experience in pioneering generative AI models, including VAE, GAN, and diffusion models
  • MS Computer Science or MS Electrical Engineering or equivalent
  • Strong programming, debugging and problem solving skills

PREFERRED QUALIFICATIONS

  • Proficiency in machine learning frameworks e.g. PyTorch

EDUCATION & EXPERIENCE

MS Computer Science or MS Electrical Engineering or equivalent

Responsibilities

Please refer the Job description for details

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