Neurons Lab.Com

AWS AI Cloud Engineer (part-time)

🇪🇸 Madrid, Hiszpania Na miejscu IT Senior Opublikowano Cze 9, 2026
Lokalizacja Madrid, Hiszpania
Tryb pracy Na miejscu
Poziom doświadczenia Senior
Kategoria IT
Kategoria IT DevOps / SRE
Język English
Opublikowano 9 czerwca 2026
Ostatnio sprawdzono 9 czerwca 2026
Kontekst JobGrid

Podsumowanie roli od JobGrid

AWS AI Cloud Engineer (part-time) at Neurons Lab.Com in Madrid, Spain is listed as an on-site Senior IT / DevOps / SRE role. JobGrid normalizes the role facts, keeps the source boundary in English, and sends candidates to the original public application page.

  • Source freshness: posted on 2026-06-09 and last checked on 2026-06-09.
  • Salary context: no salary information is provided in the payload.
  • Comparable classification: IT / DevOps / SRE, Senior level.
  • Location and workplace: Madrid, Spain; on-site.

This is a short-term contract engagement of 5 weeks at 0.3 FTE (approximately 12 hours per week).

The schedule is flexible; however, some availability during standard business hours will be required for team syncs and occasional client meetings.

Remote position, Madrid-based candidates only — due to equipment logistics, we will ship dedicated equipment to the engineer's location.

About the project

Join Neurons Lab as a Cloud Engineer on a delivery engagement with a regulated EU BFSI enterprise (German-speaking client). The product is an AI / RAG-based enterprise productivity tool running in production across the client's internal teams.

You will pick up a CDK-based codebase already deployed inside the client's AWS account, take over from the outgoing engineer, and own cloud delivery end-to-end: production hardening, security findings remediation, RAG infrastructure stability, and SSO/RBAC integration with the client's identity stack.

This is a pure delivery role on a live, customer-managed AWS environment. Data protection is the single most important constraint on every architectural and operational decision.

Reporting: AI Architect on the engagement; day-to-day collaboration with the AI Delivery Manager and ML Engineer.

Areas of Responsibility

  • Own and extend the existing AWS CDK codebase deployed inside the client's AWS account.

  • Operate the production stack: ECS Fargate, ECR, ALB (public + internal), VPC, CDN, S3, AWS Bedrock.

  • Run the data layer: Postgres, Redis, vector database (Qdrant or similar), LLM observability (Langfuse or similar).

  • Triage and remediate AWS Security Hub / Health Dashboard findings independently — the client expects us to handle this end-to-end.

  • Integrate SSO and RBAC with the client's identity stack.

  • Keep the RAG stack reliable as additional pilot teams onboard; partner with the ML Engineer on retrieval-quality incidents.

  • Own cost tracking and capacity planning for the client's Bedrock + ECS spend.

  • Document CDK constructs, runbooks, and incident playbooks so handover to the next engineer takes days, not weeks.

Skills

  • Advanced AWS CDK (primary) — must be able to extend an existing CDK codebase from day one, not just author from scratch.

  • AWS Bedrock hands-on experience — model invocation patterns, IAM scoping, cost monitoring.

  • ECS Fargate in production: task definitions, service auto-scaling, ALB target groups, blue/green or rolling deploys.

  • Networking: VPC design, public/private ALB patterns, CloudFront, private subnet egress.

  • RAG-stack ops: deploying and operating a vector database, Postgres (RDS/Aurora), Redis (ElastiCache), and an LLM observability layer on AWS.

  • AWS Security Hub / Inspector / Health Dashboard — finding triage and remediation in restricted client environments.

  • Python — FastAPI backends, MLOps automation, deployment glue.

  • Identity & access: SSO (Okta / Azure AD / Cognito), RBAC, IAM least-privilege design.

  • Terraform — secondary; useful for modules supplied by the client's IT team.

  • Working in restricted client AWS accounts — limited permissions, async approvals, wiki/docs-portal handovers.

  • Communication: clear written and verbal English. German is a strong plus, not required.

Knowledge

  • AWS Certified Solutions Architect — Associate or Professional (required), or AWS Certified DevOps Engineer — Professional.

  • Working knowledge of AWS Well-Architected framework, especially Security and Reliability pillars applied to BFSI.

  • Familiarity with EU AI Act obligations relevant to RAG / GenAI products.

  • GDPR fundamentals as they apply to credentials, logs, and EU data residency.

Experience

  • 5+ years in cloud / DevOps / cloud engineering, with 2+ years of hands-on AWS CDK in production.

  • 2+ years operating AI/ML or GenAI workloads on AWS (Bedrock, SageMaker, or comparable).

  • Direct experience deploying inside a regulated client's AWS account (BFSI, healthcare, government, or similar) — not just internal sandbox environments.

  • Track record of stepping into an existing codebase mid-project and shipping within 1–2 weeks.

  • Comfortable being the only Cloud Engineer on a small (3–4 person) delivery team.