Smart IT Frame LLC
Google Cloud Architect - Kubernetes & AI ML strong
Smart IT Frame LLC, Charlotte, NC, United States
Experience Level: 15 Years
Note: Only locals in NC
Key Responsibilities:
- Design and architect scalable cloud platforms to develop, deploy scalable integration and Peta Byte scale data migration, and AI solutions leveraging ML techniques.
- Drive Joint Architecture Design to collaborating with business stakeholders, data scientists, engineering teams, product, and other key partners to gather functional, non-functional requirements for solving AI use case on the AI Platform
- Design foundational solutions to enable multiple batch and real time integration patterns between On Premise and Cloud
- Evaluate emerging technologies and tools in AI area and do fitment analysis to the Enterprise AI Platform and capabilities strategy.
- Define and implement GCP architecture best practices, frameworks, and standards.
- Lead GCP infrastructure setup, including cloud services selection, data pipelines, and model deployment.
- Ensure robustness, reliability, and scalability of solutions in production environments.
- Design and implement data governance, security, and compliance measures for data and non-data objects.
- Optimize ML workflows for performance, cost efficiency, and resource utilization.
- Provide technical leadership and mentorship to development teams.
- Communicate architecture decisions and solution design to stakeholders and executives.
Key Requirements:
- Proven experience as GCP Architect
- Deep understanding of ML algorithms, Vertex ASI, Big Query, Data Proc, Composer, STS, DataPlex
- Strong knowledge of development life cycle, software engineering principles, data engineering principles
- Experience with containerization and orchestration tools on prem and cloud (e.g GKE, OpenShift Container Platform, Docker, Kubernetes) for deploying AI/ML models.
- Ability to design and optimize distributed computing systems for AI/ML workloads.
- Familiarity with DevOps practices, CI/CD pipelines, and automation tools in AI-ML contexts.
- Excellent problem-solving skills and ability to address complex technical challenges.
- Effective communication skills to collaborate with cross-functional teams and stakeholders.