AI DevOps Engineer Jobs

Discover the latest remote and onsite AI DevOps Engineer roles across top active AI companies. Updated hourly.

Check out 1001 new AI DevOps Engineer opportunities posted on The Homebase

Senior Network Engineer (f/m/d)

New
Top rated
AlephAlpha
Full-time
Full-time
Posted

The Senior Network Engineer will design, implement, and maintain enterprise network infrastructure, ensuring its stability and scalability across multiple datacenters. Responsibilities include managing firewall and security standards, supporting GPU clusters used for AI/ML workloads, and collaborating with cross-functional teams to document and optimize systems.

Undisclosed

()

Maybe global
Hybrid

DevOps Engineer

New
Top rated
Obviant
Full-time
Full-time
Posted

The DevSecOps / Platform Engineer will design, implement, and operate secure, cloud-native infrastructure powering core data and application platforms for a defense-focused company. They will develop CI/CD pipelines, automate deployments, uphold security practices, and collaborate across teams to ensure reliability, scalability, and compliance for government users.

Undisclosed

()

Maybe global
Hybrid

Staff Software Engineer, Infrastructure

New
Top rated
Decagon
Full-time
Full-time
Posted

You will design, build, and operate production infrastructure for high-scale, low-latency systems, owning critical services end-to-end to improve reliability and performance. The role also involves partnering with research and product teams, optimizing service latencies, evolving CI/CD and self-service tooling, and leading infrastructure-as-code and GitOps practices.

Undisclosed
YEAR

(USD)

Maybe global
On-site

Staff Infrastructure Security Engineer

New
Top rated
Crusoe
Full-time
Full-time
Posted

The engineer will architect, deploy, and operationalize foundational security services to support Crusoe's move toward Zero Trust, serving as a technical leader for secrets management and identity architecture. Responsibilities span from driving enterprise-wide platforms like HashiCorp Vault to defining trust patterns and secure onboarding in a hybrid, multi-cloud environment.

Undisclosed

()

Maybe global
On-site

Forward Deployed Engineer, Infrastructure Specialist (Public Sector)

New
Top rated
Cohere
Full-time
Full-time
Posted

Lead end-to-end deployment of the North AI platform in private cloud and on-premises environments for enterprise clients. Collaborate with IT teams to ensure secure, compliant integration and troubleshoot deployment issues to deliver robust client solutions.

Undisclosed

()

Maybe global
Remote OK

Enterprise Security Engineer

New
Top rated
PhysicsX
Full-time
Full-time
Posted

You will be responsible for building and operationalizing the company's compliance program, implementing controls, and supporting audits in a fast-paced SaaS environment. Key tasks include managing GRC tools, automating workflows for compliance standards such as SOC 2 and ISO 27001, and supporting responses to customer security assessments.

Undisclosed
YEAR

(USD)

Maybe global

Freelance AI Red Team Engineer

New
Top rated
Mindrift
Part-time
Full-time
Posted

As a Freelance AI Red Team Engineer, you will evaluate and red team AI models, agents, and machine learning systems for safety risks and vulnerabilities. You will also develop automation tools, create rigorous test scenarios, and contribute to security research initiatives in the AI domain.

Undisclosed
HOUR

(USD)

Maybe global
Remote Solely

Freelance AI Red Team Engineer

New
Top rated
Mindrift
Part-time
Full-time
Posted

Evaluate and red team AI models and agents for vulnerabilities and safety risks, and develop automation tools and test harnesses for AI systems. Contribute to security research initiatives, including designing and implementing challenging attack scenarios for AI models.

Undisclosed
HOUR

(USD)

Maybe global
Remote Solely

Freelance AI Red Team Engineer

New
Top rated
Mindrift
Part-time
Full-time
Posted

You will evaluate and red-team AI models, agents, and machine learning systems for vulnerabilities and safety risks. The job involves creating reproducible tests, scripting automation tools, and leading or contributing to AI security research initiatives such as attack scenarios.

Undisclosed
HOUR

(USD)

Maybe global
Remote Solely

Senior Machine Learning/MLOps Engineer

New
Top rated
Anduril
Full-time
Full-time
Posted

Lead and manage the implementation and integration of acquired companies, overseeing program management from due diligence to completion. Work cross-functionally to define, manage, and improve the program management processes for acquisition implementations and ensure stakeholder alignment.

Undisclosed
YEAR

(USD)

Maybe global
On-site

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Frequently Asked Questions

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[{"question":"What does an AI DevOps Engineer do?","answer":"AI DevOps Engineers build and maintain ML pipelines in cloud environments, implementing CI/CD workflows specifically for AI applications. They create monitoring solutions that track not just system health but also data quality and model performance. Their daily work includes developing cloud infrastructure code using tools like Terraform and Ansible, ensuring AI applications scale effectively. They collaborate with data scientists to deploy models, troubleshoot production issues, and implement security protocols. Unlike traditional developers, they bridge the gap between data science and operations, ensuring ML models transition smoothly from development to production environments."},{"question":"What skills are required for AI DevOps Engineer jobs?","answer":"AI DevOps Engineers need strong cloud platform expertise, particularly in AWS, Azure, or GCP. Proficiency with infrastructure-as-code tools like Terraform and Ansible is essential. Container orchestration skills using Docker and Kubernetes help manage AI workloads. Experience with CI/CD pipelines through Jenkins or GitLab CI enables automated model deployment. Python scripting ability supports both automation and ML pipeline integration. Monitoring skills using Prometheus and Grafana help track model performance. Beyond technical abilities, these roles require collaboration skills to work effectively with data scientists and developers, plus problem-solving aptitude to troubleshoot complex AI system issues."},{"question":"What qualifications are needed for AI DevOps Engineer jobs?","answer":"Most AI DevOps Engineer positions require a minimum of 3 years of software development experience and 2+ years of cloud deployment experience, with Azure often preferred. A computer science or related degree is typically expected, though equivalent experience may substitute. Employers look for candidates with hands-on experience using development and deployment tools like GitLab and Atlassian suite products. While not always mandatory, certifications in cloud platforms (AWS Solutions Architect, Azure DevOps Engineer) and container orchestration (CKA) strengthen applications. Experience building CI/CD pipelines specifically for ML workflows gives candidates a significant advantage in the hiring process."},{"question":"What is the salary range for AI DevOps Engineer jobs?","answer":"AI DevOps Engineer salaries vary based on several key factors. Geographic location significantly impacts compensation, with tech hubs like San Francisco and New York offering higher wages. Experience level creates substantial differences, with senior engineers earning considerably more. Specialized expertise in high-demand tools like Kubernetes or specific cloud platforms (AWS/Azure/GCP) can boost earnings. Industry sector also matters—financial services and healthcare organizations often pay premium rates for AI infrastructure expertise. Company size influences packages too, with large enterprises typically offering better benefits but startups potentially providing equity. Security clearances for sensitive projects may command additional compensation."},{"question":"How long does it take to get hired as an AI DevOps Engineer?","answer":"The hiring timeline for AI DevOps Engineers typically ranges from 4-8 weeks. The process usually begins with a screening call, followed by technical assessments testing cloud infrastructure skills and coding abilities. Candidates often face 2-3 rounds of interviews, including sessions with engineering managers and team members. Many employers include practical challenges related to containerization, CI/CD pipeline setup, or infrastructure-as-code implementations. Companies hiring for specialized AI infrastructure may extend the process with additional technical evaluations. Candidates with demonstrated experience in both DevOps and machine learning environments generally move through the pipeline faster than those from only traditional DevOps backgrounds."},{"question":"Are AI DevOps Engineer jobs in demand?","answer":"AI DevOps Engineer roles show strong demand as organizations integrate machine learning into their product offerings. Major companies like Boeing actively recruit for these positions to support AI applications in secure cloud environments. The specialized skillset—combining traditional DevOps practices with ML pipeline expertise—creates a smaller talent pool than for general DevOps roles. Organizations increasingly recognize that successful AI deployment requires specialized infrastructure and monitoring beyond conventional applications. This demand spans industries from technology and finance to manufacturing and healthcare, as each sector adopts AI capabilities requiring robust deployment pipelines, monitoring solutions, and infrastructure that traditional DevOps approaches don't fully address."},{"question":"What is the difference between AI DevOps Engineer and Traditional DevOps Engineer?","answer":"Traditional DevOps Engineers focus on application delivery pipelines, infrastructure automation, and system monitoring for conventional software. AI DevOps Engineers extend these skills to handle machine learning workflows, requiring specialized knowledge of model deployment, training pipelines, and experiment tracking. While both roles use similar tools (Docker, Kubernetes, CI/CD platforms), AI DevOps Engineers must understand data quality monitoring and model performance metrics that don't exist in traditional applications. They work more closely with data scientists and ML engineers, bridging the gap between data science and operations. AI DevOps requires additional considerations around computational resources, GPU scheduling, and optimizing infrastructure for machine learning workloads."}]