Senior ML Engineer

Washington, WA, US • Posted 13 days ago • Updated 6 hours ago
Full Time
On-site
Fitment

Dice Job Match Score™

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Job Details

Skills

  • Backbone.js
  • Creative Problem Solving
  • Data Centers
  • Management
  • Repair
  • Reporting
  • Batch Processing
  • Job Scheduling
  • Resource Management
  • Orchestration
  • Training
  • Data Processing
  • Software Engineering
  • Java
  • Python
  • Lifecycle Management
  • Cloud Computing
  • Amazon Web Services
  • Google Cloud
  • Google Cloud Platform
  • Operational Excellence
  • Continuous Improvement
  • Computer Science
  • GPU
  • Optimization
  • Artificial Intelligence
  • Apache Spark
  • PyTorch
  • JAX
  • Apache Flink
  • Open Source
  • Kubernetes
  • Scheduling
  • Machine Learning (ML)
  • Apache HTTP Server
  • Generative Artificial Intelligence (AI)
  • Productivity

Summary

Imagine what you could do here. At Apple, great ideas have a way of becoming phenomenal products, services, and customer experiences very quickly. Bring passion and dedication to your job and there's no telling what you could accomplish.

Do you love solving complex distributed systems challenges at massive scale? Are you passionate about Kubernetes scheduling, resource management, and building platforms that power the next generation of Machine Learning and Data workloads? Do you thrive in designing and operating highly reliable, large-scale job scheduling and orchestration systems that serve as the backbone of AI and Data infrastructure? If so, join the Apple Data Platform team to design and build a scalable batch and ML infrastructure platform used across Apple.

As part of Apple Data Platform, you will play a meaningful role in designing, developing, and deploying high-performance systems that power batch and ML workloads across Apple's global infrastructure spanning public clouds and Apple data centers. This enormous scale brings unique and complex challenges in resource scheduling, workload orchestration, and operational excellence that require extraordinarily creative problem-solving.

Description

Apple Batch is a fully managed platform within the Apple Data Platform that supports large-scale batch and ML workloads across Apple data centers and AWS/Google Cloud Platform. It orchestrates containerized workloads such as Spark, Ray, and LLM batch inference using YuniKorn/Kueue for advanced multi-cluster scheduling. The platform delivers org/team quota management, automatic node repair, end-to-end observability, strong security, and granular cost reporting.

As part of the Apple Batch team, you will have a meaningful role in designing, developing, and deploying high-performance systems that power large-scale batch processing and ML workloads daily. We are building critical infrastructure that provides scalable batch execution, intelligent Kubernetes-native job scheduling, multi-tenant resource management, and efficient workload orchestration for ML training, inference, and data processing workloads across multi-cloud and on-premises environments.

We are looking for a strong, enthusiastic engineer with deep expertise in Kubernetes scheduling and distributed systems. You will have significant individual responsibility and influence over critical platform services. You are someone with ideas and a real passion for building infrastructure that improves reliability, efficiency, and simplicity at Apple scale.

Minimum Qualifications

5+ years of experience designing, developing, and operating highly available, large-scale distributed systems and data or ML infrastructure

Strong software engineering skills with deep programming expertise in Go, Java, or Python

Advanced knowledge of Kubernetes internals including custom controllers, scheduler architecture, resource quotas, and workload lifecycle management

Hands-on experience with Kubernetes-native batch scheduling frameworks such as Kueue or YuniKorn and advanced scheduling concepts like gang scheduling, bin-packing, and priority preemption

Experience with cloud-native infrastructure across multi-cloud environments including AWS, Google Cloud Platform, and on-premises systems

Strong commitment to operational excellence, system observability, and continuous improvement for mission-critical services

B.S. degree in Computer Science or equivalent professional experience

Preferred Qualifications

GPU scheduling, accelerator-aware placement, and optimization for large-scale AI/ML workloads

Experience with distributed data and ML frameworks such as Apache Spark, Ray, PyTorch, JAX, or Flink at scale

Experience contributing to open-source projects in Kubernetes scheduling, container technologies, or ML infrastructure ecosystems such as Apache YuniKorn, Kueue, or similar systems

Experience using GenAI technologies to improve developer productivity, streamline engineering processes, and accelerate team execution
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.
  • Dice Id: 90733111
  • Position Id: fec9a928a0341a6d440c8209db9e5498
  • Posted 13 days ago
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