Research Engineer Jobs at Apple with Visa Sponsorship
Apple's Research Engineer roles sit at the intersection of applied science and product development, spanning machine learning, silicon design, computer vision, and sensing systems. Apple has an established track record of sponsoring work visas across multiple categories for this function, making it a strong target for international candidates in research-focused engineering disciplines.
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INTRODUCTION
AI systems are only as trustworthy as the methods used to evaluate them. At Apple, where AI powers experiences for billions of people, getting evaluation right is not a support function - it is a foundational science. Our team, part of Apple Services Engineering, is building that scientific foundation: rigorous, scalable evaluation methodology for LLMs, agentic systems, and human-AI interaction.
What makes this team unusual is its interdisciplinary core. You will work alongside measurement scientists (psychometrics, validity theory), ML researchers, and platform engineers - bringing together ML research, statistical rigor, and production engineering. We are looking for an ML Research Engineer who can move fluidly across this landscape: someone who loves implementing the latest techniques in AI, has the engineering instincts to make them robust and scalable, and thrives at the intersection of research and production.
ROLE AND RESPONSIBILITIES
This is a combined research and engineering role, sitting with and between research/applied scientists and platform engineers. New evaluation research can be challenging to use at scale - that's where your skills in both machine learning and engineering come into play.
On the research side, you will partner with scientists to rapidly prototype their ideas, implement methods from recent papers, run large-scale experiments, and provide critical feedback grounded in your engineering experience. On the engineering side, you will work with platform engineers to bring those research prototypes into production - moving from Python packages on local machines to robust services deployed in the cloud.
-
Rapid Prototyping & Experimentation: Collaborate with research and applied scientists to translate evaluation research ideas into working prototypes - implementing methods from recent papers, building experimental pipelines, and iterating quickly to validate hypotheses in areas such as preference learning, LLM-as-judge calibration, and automated failure discovery.
-
Research-to-Production Bridge: Own the lifecycle of moving evaluation methods from research prototypes to production-ready systems. Refactor research code into robust, well-tested Python packages and partner with platform engineers to deploy them as scalable services, APIs, and SDK components.
-
Experiment Infrastructure: Design and maintain the infrastructure for running large-scale evaluation experiments - orchestrating LLM judge calls, managing datasets, tracking experiment results, and ensuring reproducibility across the team's research portfolio.
-
Technical Feedback & Collaboration: Serve as a critical technical partner to researchers, providing engineering perspective on feasibility, scalability, and system design. Identify opportunities where engineering improvements (parallelization, caching, smarter batching) can unlock new research directions or dramatically accelerate experimentation.
-
Scaling Evaluation Methods: Identify bottlenecks in evaluation workflows and engineer solutions to operate at Apple scale - optimizing for throughput, cost, and reliability when running evaluation methods across large model populations and diverse use cases.
-
Code Quality & Engineering Standards: Champion engineering best practices within the research workflow, including version control, automated testing, documentation, and CI/CD, raising the bar for code quality across the research-engineering boundary.
-
Cross-Functional Integration: Work across the research and platform engineering teams to ensure that evaluation methods integrate seamlessly with Apple's broader ML infrastructure, developer workflows, and internal tooling ecosystem.
BASIC QUALIFICATIONS
-
Bachelor's degree in Computer Science, Machine Learning, Software Engineering, or a closely related field (Master's preferred)
-
2+ years of hands-on experience in a role combining machine learning and software engineering (e.g., ML engineer, research engineer, or applied scientist with strong engineering output), or a Master's degree in Computer Science, Machine Learning, or a closely related field with relevant project experience
-
Strong proficiency in Python and the modern ML ecosystem (PyTorch, JAX, or TensorFlow), with demonstrated ability to implement complex methods from recent ML papers
-
Solid software engineering fundamentals: clean code design, version control, testing, debugging, and performance optimization
-
Experience working with large language models - whether fine-tuning, inference, prompting pipelines, or building LLM-powered applications
-
Demonstrated ability to work across the research-to-production spectrum: you have taken experimental or prototype code and made it robust, scalable, and usable by others
-
Practical experience with cloud-native development and deployment: containerization (Docker/Kubernetes), CI/CD pipelines, and distributed computing frameworks (e.g., Ray, Spark)
-
Strong communication skills and comfort working in interdisciplinary teams, with the ability to engage productively with both researchers and platform engineers
-
Comfort with ambiguity and new problem spaces - you thrive when building something that doesn't yet have a playbook
PREFERRED QUALIFICATIONS
-
Master's or Ph.D. in Computer Science, Machine Learning, or a related field
-
Experience with evaluation-specific methods or frameworks: LLM-as-judge approaches, reward modeling, RLHF, calibration techniques, benchmark design, or human evaluation methodology
-
Familiarity with modern evaluation tools and frameworks (e.g., DeepEval, Ragas, TruLens, LangSmith) and an understanding of how to implement and scale model-based evaluation workflows
-
Track record of contributing to research outputs - co-authored publications, open-source contributions, or internal research reports - even if research is not your primary role
-
Experience with the engineering challenges specific to generative AI and agentic systems: managing token economics, handling non-deterministic outputs, evaluating multi-turn agent trajectories and tool usage
-
Familiarity with statistical concepts relevant to evaluation: calibration, inter-rater reliability, scoring rules, or measurement validity
-
Experience in fast-moving, early-stage teams where you helped define technical direction and engineering culture from the ground up
PAY & BENEFITS
At Apple, base pay is one part of our total compensation package and is determined within a range. This provides the opportunity to progress as you grow and develop within a role. The base pay range for this role is between $171,600 and $258,100, and your base pay will depend on your skills, qualifications, experience, and location.
Apple employees also have the opportunity to become an Apple shareholder through participation in Apple's discretionary employee stock programs. Apple employees are eligible for discretionary restricted stock unit awards, and can purchase Apple stock at a discount if voluntarily participating in Apple's Employee Stock Purchase Plan. You'll also receive benefits including: Comprehensive medical and dental coverage, retirement benefits, a range of discounted products and free services, and for formal education related to advancing your career at Apple, reimbursement for certain educational expenses - including tuition. Additionally, this role might be eligible for discretionary bonuses or commission payments as well as relocation.
Apple is an equal opportunity employer that is committed to inclusion and diversity. We seek to promote equal opportunity for all applicants without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, Veteran status, or other legally protected characteristics. Learn more about your EEO rights as an applicant.
Note: Apple benefit, compensation and employee stock programs are subject to eligibility requirements and other terms of the applicable plan or program.

INTRODUCTION
AI systems are only as trustworthy as the methods used to evaluate them. At Apple, where AI powers experiences for billions of people, getting evaluation right is not a support function - it is a foundational science. Our team, part of Apple Services Engineering, is building that scientific foundation: rigorous, scalable evaluation methodology for LLMs, agentic systems, and human-AI interaction.
What makes this team unusual is its interdisciplinary core. You will work alongside measurement scientists (psychometrics, validity theory), ML researchers, and platform engineers - bringing together ML research, statistical rigor, and production engineering. We are looking for an ML Research Engineer who can move fluidly across this landscape: someone who loves implementing the latest techniques in AI, has the engineering instincts to make them robust and scalable, and thrives at the intersection of research and production.
ROLE AND RESPONSIBILITIES
This is a combined research and engineering role, sitting with and between research/applied scientists and platform engineers. New evaluation research can be challenging to use at scale - that's where your skills in both machine learning and engineering come into play.
On the research side, you will partner with scientists to rapidly prototype their ideas, implement methods from recent papers, run large-scale experiments, and provide critical feedback grounded in your engineering experience. On the engineering side, you will work with platform engineers to bring those research prototypes into production - moving from Python packages on local machines to robust services deployed in the cloud.
-
Rapid Prototyping & Experimentation: Collaborate with research and applied scientists to translate evaluation research ideas into working prototypes - implementing methods from recent papers, building experimental pipelines, and iterating quickly to validate hypotheses in areas such as preference learning, LLM-as-judge calibration, and automated failure discovery.
-
Research-to-Production Bridge: Own the lifecycle of moving evaluation methods from research prototypes to production-ready systems. Refactor research code into robust, well-tested Python packages and partner with platform engineers to deploy them as scalable services, APIs, and SDK components.
-
Experiment Infrastructure: Design and maintain the infrastructure for running large-scale evaluation experiments - orchestrating LLM judge calls, managing datasets, tracking experiment results, and ensuring reproducibility across the team's research portfolio.
-
Technical Feedback & Collaboration: Serve as a critical technical partner to researchers, providing engineering perspective on feasibility, scalability, and system design. Identify opportunities where engineering improvements (parallelization, caching, smarter batching) can unlock new research directions or dramatically accelerate experimentation.
-
Scaling Evaluation Methods: Identify bottlenecks in evaluation workflows and engineer solutions to operate at Apple scale - optimizing for throughput, cost, and reliability when running evaluation methods across large model populations and diverse use cases.
-
Code Quality & Engineering Standards: Champion engineering best practices within the research workflow, including version control, automated testing, documentation, and CI/CD, raising the bar for code quality across the research-engineering boundary.
-
Cross-Functional Integration: Work across the research and platform engineering teams to ensure that evaluation methods integrate seamlessly with Apple's broader ML infrastructure, developer workflows, and internal tooling ecosystem.
BASIC QUALIFICATIONS
-
Bachelor's degree in Computer Science, Machine Learning, Software Engineering, or a closely related field (Master's preferred)
-
2+ years of hands-on experience in a role combining machine learning and software engineering (e.g., ML engineer, research engineer, or applied scientist with strong engineering output), or a Master's degree in Computer Science, Machine Learning, or a closely related field with relevant project experience
-
Strong proficiency in Python and the modern ML ecosystem (PyTorch, JAX, or TensorFlow), with demonstrated ability to implement complex methods from recent ML papers
-
Solid software engineering fundamentals: clean code design, version control, testing, debugging, and performance optimization
-
Experience working with large language models - whether fine-tuning, inference, prompting pipelines, or building LLM-powered applications
-
Demonstrated ability to work across the research-to-production spectrum: you have taken experimental or prototype code and made it robust, scalable, and usable by others
-
Practical experience with cloud-native development and deployment: containerization (Docker/Kubernetes), CI/CD pipelines, and distributed computing frameworks (e.g., Ray, Spark)
-
Strong communication skills and comfort working in interdisciplinary teams, with the ability to engage productively with both researchers and platform engineers
-
Comfort with ambiguity and new problem spaces - you thrive when building something that doesn't yet have a playbook
PREFERRED QUALIFICATIONS
-
Master's or Ph.D. in Computer Science, Machine Learning, or a related field
-
Experience with evaluation-specific methods or frameworks: LLM-as-judge approaches, reward modeling, RLHF, calibration techniques, benchmark design, or human evaluation methodology
-
Familiarity with modern evaluation tools and frameworks (e.g., DeepEval, Ragas, TruLens, LangSmith) and an understanding of how to implement and scale model-based evaluation workflows
-
Track record of contributing to research outputs - co-authored publications, open-source contributions, or internal research reports - even if research is not your primary role
-
Experience with the engineering challenges specific to generative AI and agentic systems: managing token economics, handling non-deterministic outputs, evaluating multi-turn agent trajectories and tool usage
-
Familiarity with statistical concepts relevant to evaluation: calibration, inter-rater reliability, scoring rules, or measurement validity
-
Experience in fast-moving, early-stage teams where you helped define technical direction and engineering culture from the ground up
PAY & BENEFITS
At Apple, base pay is one part of our total compensation package and is determined within a range. This provides the opportunity to progress as you grow and develop within a role. The base pay range for this role is between $171,600 and $258,100, and your base pay will depend on your skills, qualifications, experience, and location.
Apple employees also have the opportunity to become an Apple shareholder through participation in Apple's discretionary employee stock programs. Apple employees are eligible for discretionary restricted stock unit awards, and can purchase Apple stock at a discount if voluntarily participating in Apple's Employee Stock Purchase Plan. You'll also receive benefits including: Comprehensive medical and dental coverage, retirement benefits, a range of discounted products and free services, and for formal education related to advancing your career at Apple, reimbursement for certain educational expenses - including tuition. Additionally, this role might be eligible for discretionary bonuses or commission payments as well as relocation.
Apple is an equal opportunity employer that is committed to inclusion and diversity. We seek to promote equal opportunity for all applicants without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, Veteran status, or other legally protected characteristics. Learn more about your EEO rights as an applicant.
Note: Apple benefit, compensation and employee stock programs are subject to eligibility requirements and other terms of the applicable plan or program.
See all 91+ Research Engineer at Apple jobs
Sign up for free to unlock all listings, filter by visa type, and get alerts for new Research Engineer at Apple roles.
Get Access To All JobsTips for Finding Research Engineer Jobs at Apple Jobs
Align your research portfolio to Apple's domains
Apple's Research Engineer hiring concentrates on on-device ML, neural engine optimization, computational photography, and custom silicon. Tailor your portfolio or publications to these areas before applying so your work maps directly to open research tracks.
Obtain your IEEE or ACM publication record
Apple's research teams weight peer-reviewed publications heavily during credentialing. Before you apply, consolidate your publication history on Google Scholar and request official transcripts, since immigration attorneys will need these for specialty occupation evidence on your H-1B petition.
Target roles listed under specific research orgs
Apple Research and the Hardware Engineering org post Research Engineer roles separately. Roles under Apple Research are more likely to carry sponsorship through the full Green Card pipeline, including EB-2 NIW pathways, so identify which org owns the position before you engage.
Browse open Research Engineer roles on Migrate Mate
Filter for Apple's verified sponsoring roles on Migrate Mate to see which Research Engineer positions are actively hiring international candidates, saving you from applying to roles where sponsorship has not been confirmed.
Clarify your visa category fit before the offer stage
Apple sponsors H-1B, E-3, H-1B1, and TN visas for research roles, and the right category depends on your nationality and degree field. Raise your current status and intended category with your recruiter early so immigration counsel can be looped in before the offer letter is drafted.
Understand the PERM timeline if a Green Card is your goal
USCIS and DOL's PERM labor certification process can take 18 to 36 months from initiation. If permanent residency is a priority, confirm during negotiations whether the Research Engineer role falls under Apple's standard sponsorship policy for PERM filing.
Research Engineer at Apple jobs are hiring across the US. Find yours.
Find Research Engineer at Apple JobsFrequently Asked Questions
Does Apple sponsor H-1B visas for Research Engineers?
Yes, Apple sponsors H-1B visas for Research Engineer roles. Apple participates in the annual H-1B cap lottery each April for new applicants, and also files cap-exempt petitions in some circumstances. If you're already in H-1B status with another employer, Apple can file an H-1B transfer, allowing you to start without waiting for a new lottery selection.
How do I apply for Research Engineer jobs at Apple?
Applications go through Apple's careers portal at jobs.apple.com. Research Engineer roles are posted under hardware, machine learning, and platform research teams. You can also browse verified sponsoring Research Engineer openings at Apple through Migrate Mate, which filters specifically for roles where visa sponsorship has been confirmed, reducing time spent on positions that won't support international candidates.
Which visa types does Apple commonly use for Research Engineer roles?
Apple sponsors H-1B, H-1B1 (for Chilean and Singaporean nationals), E-3 (for Australian nationals), and TN visas (for Canadian and Mexican nationals) for Research Engineer positions. For candidates pursuing permanent residency, Apple has a track record of supporting EB-2 and EB-3 Green Card sponsorship through the PERM process for research-track roles.
What qualifications does Apple expect for Research Engineer roles?
Apple's Research Engineer postings typically require a graduate degree, with a PhD preferred for roles that involve original research in areas like machine learning, computer vision, or silicon architecture. Strong publication records, experience with Apple's relevant technology stacks such as Core ML or Metal, and demonstrated ability to move research from prototype to product are consistent expectations across research org postings.
How do I think about timing if I'm on F-1 OPT and targeting Apple?
If you're on F-1 OPT with STEM extension, you have up to 36 months of work authorization, but you need an H-1B approved before OPT expires. Apply to Apple Research Engineer roles at least 12 to 18 months before your OPT end date so there's adequate runway for the April H-1B lottery cycle and USCIS processing before your current status lapses.
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