Site Reliability Engineer – AI Enablement

Job not on LinkedIn

🔥 13 hours ago

Apply Now
Find Similar Remote Jobs

📊 Check your resume score for this job

Improve your chances of getting an interview by checking your resume score before you apply.

Logo of Health Catalyst

Health Catalyst

1001 - 5000 employees

Founded 2008

⚕️ Healthcare Insurance

🤖 Artificial Intelligence

☁️ SaaS

Healthcare Insurance • Artificial Intelligence • SaaS

Health Catalyst is a leading provider of data and analytics technology and services to healthcare organizations, committed to being the catalyst for massive, measurable, data-informed healthcare improvement. The company empowers organizations with AI-enabled insights and comprehensive data solutions to drive scalable, measurable improvements in patient outcomes, operational efficiency, and financial performance. With a focus on population health management, clinical quality, and patient engagement, Health Catalyst aims to transform healthcare through data-driven decision-making.

📋 Description

• As a Site Reliability Engineer on the Central AI team, you will help Health Catalyst engineer teams adopt AI responsibly and effectively. • Train and coach engineering teams on how to effectively integrate AI into their development workflows, including the use of AI-assisted coding tools, prompt engineering practices, and agentic development patterns. • Evaluate AI system designs submitted through the Central AI intake process, providing actionable guidance on integration patterns, reliability risks, observability gaps, and alignment with AI governance standards. • Serve as a technical resource for the organization’s AI governance framework — helping teams understand and apply policies around model access, data handling, risk tiers, and responsible AI use in practice. • Partner with engineering teams during the design and implementation phases of AI projects, offering hands-on guidance on LLM integration, RAG pipelines, agentic architectures, and AI service patterns. • Bring an SRE perspective to AI systems — advising teams on observability, SLOs, failure modes, and operational readiness for AI-powered services. • Participate in incident calls as a subject matter expert to provide AI-specific guidance when needed. • Contribute to the development of internal standards, reference architectures, and reusable patterns that make it easier for teams to build AI systems correctly the first time. • Work closely with product managers, data scientists, security, and compliance stakeholders to ensure AI implementations meet organizational, regulatory, and clinical requirements. • Maintain clear documentation of AI architecture patterns, governance guidance, and review decisions to support knowledge sharing and organizational learning. • Stay current with the rapidly evolving AI landscape — LLM capabilities, agentic frameworks, AI safety research, and SRE practices for AI systems — and bring relevant insights back to the team.

🎯 Requirements

• Proven experience solutioning and implementing AI systems in production, including LLM API integration (e.g., Azure AI Foundry, Anthropic Claude) and AI-native application patterns. • Hands-on experience with at least one agentic or RAG framework (e.g., LangChain, LlamaIndex, Semantic Kernel, or similar). • Strong SRE or platform engineering background, with working knowledge of observability, reliability principles, and operational best practices. • Ability to evaluate AI architectures for reliability, security, governance alignment, and operational readiness — and communicate findings clearly to both technical and non-technical audiences. • Experience advising or enabling engineering teams: coaching, conducting reviews, or leading training on AI tooling and best practices. • Familiarity with AI governance concepts, including risk tiering, responsible AI principles, prompt safety, and access control for AI services. • Cloud infrastructure experience with Azure or AWS, including managed AI/ML services. • Familiarity with container-based architectures (Docker, Kubernetes) and CI/CD pipelines. • Strong written and verbal communication skills; able to articulate complex AI concepts to audiences of varying technical background. • Highly collaborative, self-directed, and motivated by helping others succeed with new technology.

🏖️ Benefits

• Flexible PTO • Professional development stipend • Remote-first work environment

Apply Now

Similar Jobs

🔥 15 hours ago

Quantiphi

1001 - 5000

🤖 Artificial Intelligence

🏢 Enterprise

📚 Education

Sr DevOps Specialist responsible for designing enterprise EKS environments. Work with Fortune 500 clients in a fast-growing AI-focused digital engineering company.

AWS

Kubernetes

Terraform

🔥 15 hours ago

Sphera

1001 - 5000

☁️ SaaS

🏢 Enterprise

📋 Compliance

DevOps Engineer responsible for building, automating, and maintaining systems for software delivery at Sphera. Collaborating with engineering teams to optimize cloud-native applications and CI/CD processes.

AWS

Azure

Cloud

Docker

Google Cloud Platform

Grafana

Jenkins

Kubernetes

Prometheus

Python

Terraform

🔥 15 hours ago

Granicus

501 - 1000

🏛️ Government

☁️ SaaS

📋 Compliance

Senior Site Reliability Engineer focused on modernizing reliability engineering through observability and automation at Granicus. Enhance service reliability and drive scalable platform improvements for diverse workloads.

Ansible

AWS

Azure

Chef

Cloud

Distributed Systems

Grafana

Java

Kubernetes

Linux

Prometheus

Puppet

Python

Splunk

Terraform

Unix

Go

🔥 16 hours ago

Reliability Engineer providing engineering support for operations and maintenance of buildings and infrastructure. Implementing asset management plans and conducting reliability analysis at JLL.

🔥 16 hours ago

Autodesk

10,000+ employees

📱 Media

Senior DevOps Engineer advancing Autodesk's cloud-native platform. Leading CI/CD, infrastructure management, and security operations in a remote role.

AWS

Cloud

Docker

DynamoDB

EC2

ElasticSearch

Java

Jenkins

Kubernetes

Linux

MySQL

Postgres

Python

Splunk

SQL

Terraform