AIML - Manager, Data Collections

A leading technology company that designs, develops, and sells consumer electronics, software, and services.
$164,200 - $285,900
Machine Learning
Staff Software Engineer
In-Person
5,000+ Employees
8+ years of experience
AI

Description For AIML - Manager, Data Collections

Apple's AIML Data Operations team is seeking a Manager for Data Collections to join their dynamic environment. This role sits at the intersection of machine learning and data operations, where you'll play a crucial role in delivering high-quality data for ML algorithm development across Apple's ecosystem. As a proven people and project manager, you'll lead scalable data collection pipelines, manage stakeholder relationships, and drive operational excellence.

The position offers an exciting opportunity to work with cutting-edge AI/ML technologies while leading a critical team. You'll be responsible for deploying and managing data collection pipelines, ensuring quality standards, and coordinating with multiple teams across the organization. The role combines technical expertise with leadership skills, requiring both strategic thinking and hands-on operational management.

Your impact will be significant as you'll shape how data is collected and processed for Apple's machine learning initiatives. The position offers competitive compensation, comprehensive benefits, and the chance to work with some of the industry's best talents. If you're passionate about data quality, have strong leadership skills, and want to contribute to groundbreaking AI/ML projects at one of the world's most innovative companies, this role presents an exceptional opportunity for career growth and impact.

Last updated a day ago

Responsibilities For AIML - Manager, Data Collections

  • Collaborate with engineering and annotation teams to deploy scalable data collection pipelines
  • Plan and track delivery timelines
  • Provide technical expertise throughout data request life cycle
  • Deliver monthly volume forecast & capacity planning
  • Handle resource and vendor management
  • Oversee operational responsibilities including workflow management
  • Engage with stakeholders to clarify quality, data and testing requirements
  • Coach, mentor and lead critical team

Requirements For AIML - Manager, Data Collections

Python
  • Bachelor's of Science degree
  • 8+ years of industry experience
  • Experience in client management
  • Ability to lead and motivate a project management team
  • Experience building strong relationships and leading multi-functional activities

Benefits For AIML - Manager, Data Collections

Medical Insurance
Dental Insurance
Education Budget
Equity
Relocation Benefits
  • Comprehensive medical and dental coverage
  • Retirement benefits
  • Employee stock programs
  • Education reimbursement
  • Discretionary restricted stock unit awards
  • Employee Stock Purchase Plan
  • Discretionary bonuses
  • Relocation benefits
  • Product discounts
  • Free services

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