GCP Cloud Engineer

Remote, USA Full-time
This a FullRemote job, the offer is available from: Europe, Armenia, Malaysia, Georgia (USA)About the projectJoin Neurons Lab as aSenior GCP Cloud Engineer working on Generative AI solutions for banking clients. You'll be hands-on building production infrastructure on Google Cloud Platform while contributing to architecture design, with a strong focus on security, compliance, and operational excellence. Our Focus: Banking and Financial Services clients with stringent regulatory requirements (PCI-DSS, GDPR, MAS TRM).You'll architect and implement GenAI solutions - from RAG systems to ML platforms - while ensuring enterprise-grade security and compliance. Your Impact: Build cloud infrastructure using Terraform, Kubernetes, and Docker. Work across multiple banking GenAI projects, implementing architectures, creating reusable IaC patterns, and maintaining the highest security standards required by financial institutions. Duration: Part-time long-term engagement with project-based allocationsReporting: Direct report to Head of CloudObjectiveBuild and operate GenAI cloud infrastructure for banking clients on Google Cloud Platform:• Engineering Excellence: Build production infrastructure using Terraform, deploy on Kubernetes/GKE, containerize with Docker, implement CI/CD pipelines• Architecture Support: Contribute to architecture design, create technical specifications, and provide engineering insights during solution design• Client Success: Implement secure, scalable, cost-effective solutions aligned with GCP best practices and financial regulations• Knowledge Transfer: Create reusable IaC patterns, comprehensive documentation, and operational runbooksKPI• Deploy infrastructure through IaC (Terraform) with zero manual configuration• Create at least 3 reusable IaC components or architectural patterns per quarter• Implement CI/CD pipelines for all projects with automated testing and deployment• Document architecture and implementation details for knowledge sharing• Maintain 95%+ uptime for production GenAI endpointsAreas of ResponsibilityCloud Engineering (70%):• Build and maintain GCP infrastructure using Terraform - develop reusable modules for GenAI patterns• Deploy and manage applications on GKE - Kubernetes manifests, Helm charts, container security• Containerize applications with Docker - multi-stage builds, optimization, security• Develop Python applications: FastAPI backends, GenAI integration (RAG, LLM apps, chat interfaces)• Deploy GenAI model serving: Vertex AI endpoints, containerized models on GKE, vector databases• Implement CI/CD pipelines: Cloud Build, GitHub Actions, automated testing and deployment• Security & compliance: IAM, VPC Service Controls, encryption, banking regulations (PCI-DSS, GDPR, MAS TRM)• Cost optimization: GPU/TPU workload optimization, spot VMs, auto-scaling, monitoring• Manage GPU resources, ML pipelines, model performance monitoringArchitecture Support (30%):• Contribute to GCP architecture design for GenAI solutions (RAG, LLM applications, ML platforms)• Create technical specifications, provide cost estimates and feasibility input• Participate in technical presentations and demos• Stay current with GCP AI/ML services (Vertex AI, Gemini, etc.)Skills & KnowledgeCertifications & Core Platform:• Google Cloud CertifiedProfessional Cloud Architect (REQUIRED - must be active/current)• Core GCP services: GCE, GKE, Cloud Run, Vertex AI, VPC, IAM, Cloud KMS, Secret Manager• AWS Certified Solutions Architect (strong plus) - multi-cloud experience valuedMust-Have Technical Skills:• Terraform (expert level) - GCP infrastructure, reusable modules, best practices• Kubernetes/GKE (expert level) - deployment strategies, security, networking, Helm• Docker (expert level) - containerization, multi-stage builds, optimization• Python (advanced) - OOP, async, FastAPI/Flask, GenAI libraries (LangChain, LlamaIndex)• GenAI - LLMs, RAG, vector databases, prompt engineering, Vertex AI• GPU/TPU management - optimization for training/inference workloads• CI/CD pipelines - Cloud Build, GitHub Actions, GitLab CI• Linux/UNIX administration, networking fundamentalsStrong Plus:• Banking/FSI experience with compliance requirements (PCI-DSS, GDPR, MAS TRM)• Multi-cloud architecture experience• Modern DevOps practices and monitoring toolsCommunication:• Advanced English (written and verbal)• Client-facing presentations and demos• Technical documentationExperience• 5+ years in cloud engineering, DevOps, or solution architecture roles• 2+ years hands-on with GCP (GCE, GKE, Vertex AI, etc.) + AWS experience is a strong plus• 2+ years with Terraform for GCP - reusable modules, automation, standardization• 2+ years with Kubernetes (GKE preferred) and Docker - production clusters, security• 2+ years Python programming - APIs (FastAPI/Flask), GenAI applications• GenAI/ML workloads (strong plus) - LLM apps, RAG systems, GPU/TPU compute• Banking/FSI experience (strong plus) - financial services clients, compliance, securityQuestions for Applicants (please mention up to 5 questions• GCP Certification: Please confirm your Google Cloud CertifiedProfessional Cloud Architect certification status (certification ID, issue date, expiration date).Is it currently active? • GCP GenAIExperience: Describe a Generative AI project you built on GCP. What services did you use (Vertex AI, Gemini, etc.)? What was the architecture? How did you handle challenges like latency, cost, or accuracy? • Terraform & Kubernetes on GCP: Provide examples of GCP infrastructure you've built with Terraform and deployed on GKE. How did you structure your Terraform modules? What Kubernetes patterns did you implement? • Banking/FSIExperience: Do you have experience working with banking or financial services clients?If yes, describe the project, compliance requirements you addressed (PCI-DSS, GDPR, etc.), and security controls you implemented. • AWS Background: What is your AWS experience level? Do you hold any AWS certifications? Describe any multi-cloud projects you've worked on. This offer from "Neurons Lab" has been enriched by Jobgether.com and got a 80% flex score. Apply tot his job
Apply Now
Back to Home