Cloud Engineer

University of California

Los Angeles, CA

JOB DETAILS
SALARY
$128,500–$298,100 Per Year
SKILLS
Access Control, Amazon Simple Storage Service (S3), Amazon Web Services (AWS), Artificial Intelligence (AI), Auditing, Automation, Business Skills, Capacity Management, Chargebacks, Cloud Architecture, Cloud Computing, Computer Science, Configuration Management, Continuous Deployment/Delivery, Continuous Integration, Cost Control, Cross-Functional, Cryptography, Data Quality, Data Sets, Database Design, Database Extract Transform and Load (ETL), Desktop PC, DevOps, Engineering, Environmental Issues, GCP (Good Clinical Practices), GPU (Graphics Processing Unit), GitHub, HIPAA (Health Insurance Portability and Accountability Act), Healthcare, Hybrid Cloud, Identify Issues, Linux Operating System, Machine Learning, Machine Tool, Management Strategy, Metadata, Microsoft Active Directory, Microsoft Exchange Server, Microsoft IIS Web Server (Internet Information Services), Microsoft Product Family, Microsoft Windows Azure, Microsoft Windows Operating System, Microsoft Windows Server, Onboarding, Operational Support, Performance Tuning/Optimization, Privacy Controls, Production Control, Prototyping, Regulations, Requirements Management, Risk Analysis, Risk Modeling, Software Development Lifecycle (SDLC), Software Engineering, Systems Administration/Management, Systems Engineering, Team Player, Virtualization
LOCATION
Los Angeles, CA
POSTED
14 days ago

Cloud Engineer - - 30740 - UCLA Health

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Cloud Engineer

General Information

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Work Location: Los Angeles, CA, USA

Onsite or Remote

Flexible Hybrid

Work Schedule

Monday-Friday 8:00 am-5:00 pm

Posted Date

06/10/2026

Salary Range: $128500 - 298100 Annually

Employment Type

2 - Staff: Career

Duration

Indefinite

Job #

30654

Primary Duties and Responsibilities

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The Cloud Engineer will design, build, and operate infrastructure and applications supporting UCLA Health's Analytics Platform across both on-premises and multi-cloud environments (AWS, Azure, GCP).

This role focuses on enabling secure, scalable AI/ML and GenAI platforms, with an emphasis on automation, reliability, and compliance in a regulated healthcare setting.

Key Responsibilities

  • Design, implement, and manage cloud and hybrid infrastructure supporting analytics and AI/ML workloads

  • Build and operate MLOps capabilities, including:

  • Model training and inference platforms

  • Model and artifact management

  • CI/CD and deployment pipelines

  • Observability and monitoring solutions

  • Cost optimization controls

  • Develop and maintain automation and infrastructure-as-code (IaC) solutions for provisioning and configuration

  • Troubleshoot and resolve complex system and environment issues across cloud and on-prem platforms

  • Establish platform guardrails to ensure secure, reliable, and compliant operations

  • Collaborate with cross-functional teams to:

  • Gather requirements

  • Design and prototype solutions

  • Implement and test deployments

  • Support ongoing operations and enhancements

  • Apply security, privacy, and governance controls aligned with healthcare data regulations

  • Execute release, deployment, and configuration management processes

What You'll Bring

  • Strong background in cloud engineering and platform operations

  • Experience with multi-cloud environments (AWS, Azure, GCP)

  • Proficiency in:

  • Automation, scripting, and infrastructure-as-code

  • CI/CD pipeline development and optimization

  • Monitoring and observability tools

  • Experience supporting AI/ML or data platform workloads (preferred)

  • Ability to troubleshoot complex systems and drive solutions independently

  • Strong collaboration skills and the ability to translate business requirements into technical solutions

Salary Range: $128500 - $298100 annually.

Job Qualifications

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  • BS/MS in Computer Science (or equivalent)
  • AWS Certified Cloud Engineer, Architect, Administrator Certifications required
  • 7+ years of advanced knowledge and experience as an AWS Cloud Engineer in all core services and offerings. AWS experience a plus
  • 15+ years of advanced knowledge and experience of Microsoft Technologies such as, Windows server and Linux based servers, enterprise system support experience and strong background in systems engineering and administration for both operating systems
  • 15+ years of advanced knowledge and experience with enterprise scale Windows technologies such as Server platforms, Desktop platforms, Exchange Environments, Active Directory, IIS, Windows Clustering, Virtualization and Collaboration tools. AWS Certification or equivalent experience preferred
  • Working knowledge of DevOps-like work or experience in a real time operational role
  • Advanced knowledge of analytics and AI/ML platform services across AWS, Azure, and GCP (e.g., AWS SageMaker/Bedrock, Azure Machine Learning/Azure OpenAI, Google Vertex AI) and how to operate them securely at enterprise scale.
  • Experience enabling teams to build and deploy ML/AI solutions by providing reusable platform capabilities (reference architectures, templates, SDK/CLI standards, self-service onboarding, and guardrails) rather than only project-specific implementations.
  • Hands-on experience operationalizing ML/AI workloads on cloud platforms (AWS/Azure/GCP): managed training/inference, batch vs real-time serving, feature/metadata management, model registry, and cost/performance optimization.
  • Strong MLOps/platform engineering experience: CI/CD for ML and GenAI, automated validation gates, reproducible pipelines, environment promotion, artifact/version management, and production monitoring (drift, data quality, latency, cost) using cloud-native and/or enterprise tooling (e.g., Azure DevOps/GitHub Actions, SageMaker Pipelines, Vertex AI Pipelines, MLflow, Terraform).
  • GenAI platform experience (AWS/Azure/GCP): deploying and governing LLM applications using managed services (e.g., Bedrock/Azure OpenAI/Vertex AI), RAG architectures, embeddings and vector databases/search, prompt/version management, and evaluation/guardrails for safety and groundedness.
  • Responsible AI + governance experience for regulated environments: PHI/PII protections, access controls, encryption and key management, audit logging, model/endpoint risk assessments, bias/fairness considerations, and policy enforcement aligned to HIPAA and secure SDLC.
  • Strong data engineering foundations that support AI platforms: standardized data ingestion/ETL/ELT, data quality/lineage, dataset and feature pipeline design, schema/version management, and integration with lake/lakehouse platforms (e.g., S3/ADLS/GCS with Spark/Databricks/BigQuery/Synapse) for feature and training data readiness.
  • Experience operating scalable training/inference platforms (GPU/accelerated workloads): capacity planning/quotas, cluster or managed compute configuration, distributed training concepts, performance tuning, and chargeback/showback in cloud environments.

As a condition of employment, the final candidate who accepts an offer of employment will be required to disclose if they have been subject to any final administrative or judicial decisions within the last seven years determining that they committed any misconduct; or have filed an appeal of a finding of substantiated misconduct with a previous employer.

Current/former UC employees are subject to a personnel file review.

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