Posted:
6/12/2026, 5:03:04 AM
Location(s):
Frisco, Texas, United States ⋅ San Jose, California, United States ⋅ Texas, United States ⋅ California, United States
Experience Level(s):
Senior
Field(s):
DevOps & Infrastructure ⋅ Software Engineering
Workplace Type:
On-site
About The Role:
Design, build, and scale enterprise-grade Generative AI platforms supporting LLM applications, AI agents, RAG architectures, and multi-model routing.
Architect and implement secure, scalable AI infrastructure leveraging cloud-native technologies (AWS, GCP, Kubernetes, GKE/EKS).
Enable self-service AI capabilities for engineering teams through standardized platform services, APIs, and Backstage templates/plugins.
Build and operate Retrieval-Augmented Generation (RAG) infrastructure, including embedding pipelines and vector stores (OpenSearch, Aurora pgvector).
Develop and manage enterprise AI gateway capabilities, including model routing, rate limiting, token tracking, and policy enforcement.
Integrate GenAI services into CI/CD pipelines and platform workflows to enable seamless deployment and lifecycle management.
Build observability platforms for GenAI systems, tracking token usage, latency, response quality, failure rates, throughput, and cost visibility.
Own lifecycle management of Kubernetes-based AI platforms including upgrades, patching, scaling.
Define SLIs/SLOs and reliability benchmarks for AI platform services.
Implement AI security guardrails including PII redaction, prompt injection defenses, and policy-driven controls.
Integrate DevSecOps and AI security scanning into deployment pipelines to enforce secure-by-design practices.
Design AI release validation, risk analysis, and governance frameworks for production readiness.
Build reusable infrastructure modules and platform automation frameworks using Infrastructure as Code (Terraform or equivalent).
Develop upgrade and patching strategies for AI platforms with minimal downtime and operational risk.
Ensure platform security posture, compliance, and lifecycle governance across environments.
Drive multi-cloud AI platform strategy and lead modernization initiatives across AWS and GCP.
Partner with Security and Governance teams to enforce responsible AI practices and enterprise standards.
Drive measurable improvements in developer productivity, platform adoption, and AI cost efficiency through standardized platform capabilities.
About You:
#LI-Hybrid
McAfee is a leader in personal security for consumers. Focused on protecting people, not just devices, McAfee consumer solutions adapt to users’ needs in an always online world, empowering them to live securely through integrated, intuitive solutions that protects their families and communities with the right security at the right moment.
Company Benefits and Perks:
We work hard to embrace diversity and inclusion and encourage everyone at McAfee to bring their authentic selves to work every day. We offer a variety of social programs, flexible work hours and family-friendly benefits to all of our employees.
We're serious about our commitment to diversity which is why McAfee prohibits discrimination based on race, color, religion, gender, national origin, age, disability, veteran status, marital status, pregnancy, gender expression or identity, sexual orientation or any other legally protected status.
The starting pay range for this position is $107,430.00-$176,490.00. McAfee takes into consideration an individual’s skillset, experience and location in making final salary determinations. For further details, please discuss with the Talent Acquisition Partner.Please click here to view and download the Job Applicant Privacy Notice, which applies to all McAfee job applicants who are residents of the state of California.
Website: https://www.mcafee.com/
Headquarter Location: Santa Clara, California, United States
Employee Count: 1001-5000
Year Founded: 1987
IPO Status: Delisted
Last Funding Type: Private Equity
Industries: Consumer Electronics ⋅ Enterprise Software ⋅ Information Technology ⋅ Network Security