Software Engineer - Applied ML - Headphone and Accessories Team

Global technology company known for innovative consumer electronics, software, and services.
$166,600 - $250,600
Machine Learning
Mid-Level Software Engineer
In-Person
5,000+ Employees
3+ years of experience
AI · Consumer

Description For Software Engineer - Applied ML - Headphone and Accessories Team

Join Apple's Headphone and Accessories Team as a Software Engineer focused on Applied Machine Learning. This role offers an exciting opportunity to work on cutting-edge technologies for next-generation headphones and accessories, particularly AirPods, which impact millions of users worldwide. As part of an elite team of specialized engineers, you'll develop innovative features spanning Connectivity, AI/ML, Audio Engineering, and Computer Vision.

The position requires strong expertise in C/C++ programming and software development, with a focus on embedded systems and machine learning applications. You'll be working in a collaborative environment where your contributions directly influence products used by a global customer base. The role offers competitive compensation, comprehensive benefits, and the chance to work with state-of-the-art technology.

Apple's commitment to innovation and excellence makes this an ideal opportunity for engineers passionate about creating revolutionary consumer electronics. You'll be part of a team that values initiative, collaborative problem-solving, and technical creativity. The position offers significant growth potential, with opportunities to work on diverse projects and learn from industry experts.

This role is perfect for candidates who combine technical expertise with a passion for consumer technology and want to be at the forefront of developing next-generation audio products. You'll benefit from Apple's strong company culture, comprehensive benefits package, and the chance to make a meaningful impact on products used by millions.

Last updated 12 hours ago

Responsibilities For Software Engineer - Applied ML - Headphone and Accessories Team

  • Develop and implement cutting-edge technologies for next-generation headphones and accessories
  • Work on innovative features for devices such as AirPods
  • Create unique and impactful end-to-end features
  • Work across Connectivity, AIML, Audio Engineering, Computer Vision and other areas

Requirements For Software Engineer - Applied ML - Headphone and Accessories Team

Linux
  • BS with 3+ years of industry experience or MS preferred
  • In-depth knowledge of C and C++ programming languages
  • Experience with software development
  • Good understanding of Operating Systems concepts

Benefits For Software Engineer - Applied ML - Headphone and Accessories Team

Medical Insurance
Dental Insurance
Equity
Education Budget
Relocation Benefits
  • Comprehensive medical and dental coverage
  • Retirement benefits
  • Employee stock programs
  • Discounted products and free services
  • Education reimbursement
  • Discretionary bonuses
  • Relocation benefits

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