About Analog Devices
Analog Devices, Inc. (NASDAQ:ADI ) is a global semiconductor leader that bridges the physical and digital worlds to enable breakthroughs at the Intelligent Edge. ADI combines analog, digital, and software technologies into solutions that help drive advancements in digitized factories, mobility, and digital healthcare, combat climate change, and reliably connect humans and the world. With revenue of more than $9 billion in FY24 and approximately 24,000 people globally, ADI ensures today's innovators stay Ahead of What's Possibleâ˘. Learn more atwww.analog.com and onLinkedIn andTwitter (X).
     Â
Senior AI Infrastructure Engineer, Developer Experience
Analog Devices, Inc. (NASDAQ: ADI) is a global semiconductor leader that bridges the physical and digital worlds to enable breakthroughs at the Intelligent Edge. ADI combines analog, digital, and software technologies into solutions that help drive advancements in digitized factories, mobility, and digital healthcare, combat climate change, and reliably connect humans and the world. With revenue of more than$9 billionin FY24 and approximately24,000 peopleglobally, ADI ensures today's innovators stay Ahead of What's Possibleâ˘. Learn more at www.analog.com and on LinkedIn and Twitter (X).
This role is within the global Developer Experience (DevEx) team, specifically the Model Developer Experience (MDX) sub-team â whose mission is to deliver world-class infrastructure and platforms that enable AI builders across ADI to move faster, with confidence, and at scale. You will join a high-performance, mission-driven interdisciplinary team that spans data science, software engineering, platform architecture, cloud infrastructure, and securityexpertise. We believe in a culture founded on trust, mutual respect, growth mindsets, and an obsessionforbuilding extraordinary products with extraordinary people.
Role Summary
As a Senior AI Infrastructure Engineer (individual contributor), you will bring deep technicalexpertisein building scalable AI infrastructure across diverse deployment environments, and the ability to design elegant solutions that absorb operational complexity on behalf of AI builders across the organization. You will work embedded with data science and ML engineering teams to understand their infrastructure needs at thecutting edge, then translate those learnings into reusable, org-wide architecturalpatternsand platforms.You'lldesign andimplementatcritical infrastructure capabilities that span on-prem, hybrid, and cloud environmentsâfrom model serving and orchestration, to compute optimization, cost efficiency, and governance.
You will work at the intersection of research, technical architecture, and developer enablementâtranslating research and product goals into infrastructure systems that reduce complexity and accelerate innovation.
Key Responsibilities
AI Developer Experience
Partner directly with AI builder teams (data scientists, ML engineers, researchers) as an embedded technical advisor, understanding their infrastructure bottlenecks and platform needs at the point of creation.
Translate specific team engagements into generalizable patterns, standards, and architectural guidance that can be adopted across the organization.
Drive initiatives that reduce friction in the AI development lifecycleâfrom experimentation through productionâby removing operational and technical barriers for builders.
Design and advocate for developer-friendly abstractions and APIs that hide infrastructure complexity whilemaintainingflexibility for advanced use cases.
Collaborate with cross-functional stakeholders to define what "excellent developer experience" means for AI infrastructure, then measure and iterate.
Contribute to org-wide standards for AI governance, model versioning, experiment tracking, and deployment workflows that balance flexibility with reliability.
On-Prem, Hybrid, and Cloud AI Infrastructure Engineering
Design andoptimizeAI infrastructure strategies that span heterogeneous environmentsâon-premiseGPU clusters, hybrid cloud-edge deployments, and cloud-native architecturesâensuring seamless developer experience across all.
Architectcompute orchestration and scheduling solutions (Kubernetes, Ray, or equivalent) that efficientlyallocateresources across multiple environments and workload types.
Own infrastructure for model serving, inference optimization, and real-time inference pipelines supporting low-latency, edge-deployed AI models.
Define and implement cost optimization strategies across cloud and on-prem resources, including resource allocation, auto-scaling policies, and workload consolidation.
Build reusable Infrastructure-as-Code frameworks and tooling that other teams can adopt to provision and manage AI workloads consistently across environments.
Establish observability and monitoring strategies for AI infrastructure, including resourceutilization, cost tracking, and performance metrics that enable proactive problem-solving.
Drive security and compliance standards for AI infrastructure, ensuring data residency, access control, and auditability across deployment environments.
Mentor engineers on infrastructure best practices, distributed systems concepts, and optimization techniques that improve platform reliability and developer productivity
â
Required Skills & Experience
Deepexpertisein designing and operating AI infrastructure across multiple deployment paradigms (on-premises, hybrid, cloud-native).
Proven ability to work embedded with technical teams, understand complex requirements, and translate them into scalable architectural solutions.
Strong experience with Kubernetes, container orchestration, and distributed compute frameworks (Ray, Spark, or equivalent) at production scale.
Expert-level Infrastructure-as-Codeproficiency(Terraform, CDK, or equivalent) withdemonstratedability to build reusable, multi-team infrastructure templates.
Deep knowledge of GPU/accelerator resource management, including scheduling, optimization, and cost tracking across heterogeneous hardware.
Experience designing model serving infrastructure and inference optimization pipelines forproductionAI workloads.
analogdevices