Headquartered in Philadelphia, Pennsylvania, Comcast was established in 1963 as a single-system cable company. Over the years, Comcast experienced tremendous gr
Principal AI & Automation Engineer
Location
United States
Posted
7 days ago
Salary
0
Seniority
Lead
No structured requirement data.
Job Description
Principal AI & Automation Engineer
Comcast
Role Description This job focuses on leading QA strategies and working with development for product excellence. It entails writing test plans and managing execution. Deep product and system knowledge is required for effective QA. The role improves testing methods and joins design reviews. Contributions to QA innovation and mentoring junior engineers are key. About the Role We’re seeking a Principal AI & Automation Engineer to lead the evolution of our next-generation quality engineering platform. This role is ideal for a highly experienced engineer who can architect intelligent, self-adaptive test automation frameworks for cloud-native, microservices-based broadband systems. You will combine deep automation expertise, modern software architecture, and AI/ML-driven testing approaches to transform complex system requirements into scalable, resilient, and insight-driven quality solutions. As a technical leader, you will drive autonomous testing strategies, enabling faster releases, higher reliability, and continuous quality validation across DOCSIS and PON features on vCMTS ecosystem. What You’ll Do - Architect and build scalable, modular, and AI-augmented test automation frameworks supporting functional, integration, and performance testing. - Design self-healing and adaptive test systems using AI/ML techniques (e.g., anomaly detection, flaky test prediction, intelligent test selection). - Implement shift-left and shift-right QA strategies, embedding quality across the entire SDLC and production monitoring pipelines. - Develop data-driven and model-based testing approaches, leveraging telemetry, logs, and production data to improve test coverage and accuracy. - Lead automation efforts for cloud-native, microservices-based DOCSIS/PON platforms, ensuring high availability and performance at scale. - Collaborate with engineering, product, and QA teams to translate requirements into intelligent, reusable automation assets. - Integrate QA deeply into DevOps/MLOps pipelines, enabling continuous testing, validation, and feedback loops. - Drive Core Virtualization and network validation initiatives, applying advanced simulation, traffic modeling, and AI-assisted diagnostics. - Build tools for predictive quality analytics, identifying risks and failure patterns before they impact production. - Troubleshoot complex distributed systems using advanced observability, AI-assisted root cause analysis, and debugging techniques. - Mentor engineers on modern QA practices, Python architecture, and AI-driven test automation strategies. Qualifications - Strong track record of building enterprise-grade, extensible automation frameworks. - Strong proficiency in Linux/Ubuntu environments, CLI tooling, and automation scripting (Python, Go, Shell scripting). - Hands-on experience with traffic generation and network test tools (e.g., IXIA, ByteBlower) and simulation platforms. - Ability to analyze packet captures, simulate network conditions, and validate end-to-end system performance at scale. - Familiarity with observability stacks (logs, metrics, tracing) and applying them to quality engineering. - Strong experience with CI/CD pipelines (Jenkins, GitLab CI) and version control (Git), with emphasis on continuous testing and quality gates. - Experience integrating AI/ML into QA workflows, such as: - Intelligent test case generation - Test optimization and prioritization - Flaky test detection and self-healing frameworks - Anomaly detection in logs, metrics, and network traffic Additional Nice to Have - Familiarity with observability stacks (logs, metrics, tracing) and applying them to quality engineering. - Experience with Kubernetes, Docker, and cloud-native test environments, including ephemeral and scalable test infrastructure. - Good understanding of networking protocols and systems (TCP/UDP, BGP, ISIS, HTTP/S, multicast, switching/routing). - Deep expertise in software architecture and design patterns (OOP, microservices architecture) applied to test systems. - Experience with data engineering concepts (test data pipelines, telemetry ingestion) and exposure to MLOps workflows is a plus. Benefits - Medical & Dental - 401(k) Savings Plan - Generous paid time off - Life Milestones - from adoption assistance, childcare resources, pet insurance, and more, Comcast supports you at all life stages. - Courtesy Services - We offer all of our full-time employees in serviceable areas free digital TV and internet. - Discount tickets for Universal Resorts, including theme park tickets and onsite hotel rooms. Education - Bachelor's Degree (preferred, but Comcast may consider applicants who hold some combination of coursework and experience, or who have extensive related professional experience). Relevant Work Experience - 10 Years +
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