Senior Machine Learning Engineer, Video Quality Systems

Apple Inc

Cupertino, CA

JOB DETAILS
SKILLS
Algorithms, Analysis Skills, Apple, Black Box Testing, Campaigns, Computer Science, Cross-Functional, Data Modeling, Develop Methodologies, Hardware Design, Image Editors, Image Processing, Internet Service Providers, Machine Learning, Mathematics, Metrics, Outsourcing, Photography, Publications, Quality Metrics, Signal Processing, Software Testing, Statistics, Technical Presentation, Technical Writing, Testing, Video Processing
LOCATION
Cupertino, CA
POSTED
30+ days ago

Apple's Camera ISP Algorithm team is looking for dedicated engineers to shape the future of photography and video across all Apple products. You'll work on powerful camera technology, image signal processing, and machine learning, literally defining what makes an Apple camera better. As part of the Camera ISP Algorithm team, you'll have real creative freedom to innovate and iterate quickly, interacting directly with silicon design, camera HW/SW, and QA teams. If you're a self-starter who wants to see your ideas go from concept to product, this is your chance to make an impact on how people capture life's most meaningful moments! As a Senior Machine Learning Engineer, you will tackle one of the most persistent challenges in video technology: reliably measuring perceived visual quality at scale. While human expert evaluation remains the gold standard for accuracy, it is resource-intensive and slow. Conversely, traditional automated metrics offer speed, but often fail to correlate meaningfully with human perception.

You will be an expert in designing a hybrid evaluation framework. By leveraging large-scale outsourced subjective data, you will characterize the boundaries of existing automated metrics and inject domain and "world knowledge" to apply them only where they are statistically reliable. Ultimately, your goal will be to design and tune novel, explainable metrics. We are explicitly looking for an approach grounded in first principles of signal processing and human vision, rather than relying on opaque, "black-box" machine learning models that simply output a quality score. Your work will directly accelerate our core engineering efforts by providing developers with rapid, trustworthy, and actionable feedback.Subjective Testing & Analysis: Design, oversee, and analyze large-scale psycho-visual experiments to collect high-quality subjective video evaluation data. Metric Characterization: Evaluate existing objective Video Quality Assessment (VQA) metrics against human baselines to determine their correlation and operational limits. Context-Aware Evaluation: Develop methodologies to classify video content and apply "world knowledge," identifying exactly which automated metrics succeed or fail on specific types of content and artifacts. First-Principles Design: Design, tune, and validate new objective quality metrics based on the human visual system (HVS) and mathematical first principles, ensuring the resulting scores are highly explainable and actionable. Cross-Functional Collaboration: Partner with algorithmic development teams to integrate your evaluation frameworks into fast, automated feedback loops that guide the engineering process.MS in Machine Learning, Computer Science, Applied Mathematics, or a related discipline and minimum 10 years relevant industry experience. Demonstrated experience on Image/Video Quality Assessment (IQA/VQA), image processing, or computational vision. Track record in statistical analysis, correlation methodologies, and data modeling. Proficiency in algorithm architecture design and implementation.PhD in Machine Learning, Computer Science, Applied Mathematics, or a related discipline. Experience managing or scaling outsourced/crowdsourced subjective evaluation campaigns (e.g., using ITU-T standards). Track record of developing explainable, non-black-box algorithms for image or video analysis. Proven experience designing, conducting, and analyzing psycho-physical or psycho-visual experiments for subjective quality evaluation. Demonstrated knowledge of the human visual system (HVS), perceptual artifacts, and traditional signal processing, evidenced through publications, coursework, or applied project work. Working knowledge with modern video processing pipelines, compression standards, and enhancement algorithms. Strong publication record in relevant venues (e.g., VQEG, ICIP, HVEI, SPIE) or equivalent industry patents. Ability to translate complex perceptual phenomena into clear, actionable engineering requirements, as demonstrated through technical writing, presentations, or cross-functional collaboration.

About the Company

A

Apple Inc

We bring amazing people together to make amazing things happen.

We’re a diverse collection of thinkers and doers, continually reimagining what’s possible to help us all do what we love in new ways. The people who work here have reinvented entire industries with the Mac, iPhone, iPad, and Apple Watch, as well as with services, including iTunes, the App Store, Apple Music, and Apple Pay. And the same passion for innovation that goes into our products also applies to our practices — strengthening our commitment to leave the world better than we found it.

About Apple

There’s a place here for every kind of brilliant. Everyone here is an innovator, or an innovator-to-be, no matter what your team or your role. So bring your passion, courage, and original thinking and get ready to share it, because every new product, service, or feature we invent is the result of people working together to make each others’ ideas stronger. Innovation at this level depends on people who represent the variety of the human experience and inspire us with their own fresh perspectives. Together, we’ll do amazing work that can make a difference in people’s lives. Including your own. Learn more about working at Apple.

COMPANY SIZE
10,000 employees or more
INDUSTRY
Computer/IT Services
FOUNDED
1976
WEBSITE
https://www.apple.com/jobs