
Posted 1 month ago
AWS DevSecOps [Founding]
AI Summary
Founding AWS DevSecOps engineer to architect and build a greenfield AWS-based platform, bridging infrastructure, data, security, and AI for an AI-Tech/MarTech product.
About this role
We’re looking for a founding AWS DevSecOps engineer to act as the primary architect and builder of our technology foundation.
This is a true Greenfield opportunity, no legacy systems, no existing infrastructure, no technical debt. You will design and deploy the entire AWS ecosystem from scratch for an advanced AI-Tech and MarTech product.
This role is for someone who thrives in ambiguity and can bridge infrastructure, data systems, security, and AI into one cohesive platform.
What You’ll Own
Architect and deploy secure, scalable AWS infrastructure (EC2, S3, RDS, Lambda, VPC, IAM)
Design and implement the end-to-end data layer (ingestion → transformation → storage → usage)
Build 0→1 infrastructure and systems from scratch, making foundational architecture decisions
Translate high-level product direction into working systems, data flows, and infrastructure
Work across product, data, and AI teams to ensure tightly integrated systems
Build and automate CI/CD pipelines, internal tools, and AI-enabled workflows
Enable and support AI/ML systems in production, including data pipelines and inference workflows
Contribute to AI agents, prompt engineering, and automation layers within the product
Continuously evolve systems based on real usage, scale, and constraints — not theoretical perfection
Security & DevSecOps Responsibilities
Design and maintain secure AWS infrastructure across environments
Enforce least-privilege IAM, network security, encryption, and secrets management
Integrate security into CI/CD via IaC scanning, container security, and dependency checks
Implement monitoring using CloudTrail, AWS Config, GuardDuty, Security Hub
Drive incident response, vulnerability remediation, and compliance practices
What We’re Looking For
5+ years of hands-on experience building on AWS
Strong understanding of distributed systems and scalable architecture
Ability to convert ambiguous product ideas into clear technical systems and flows
Proven experience building production-grade systems from scratch
Comfortable operating with high ownership and evolving requirements
Strong decision-making ability in unstructured environments
Advanced proficiency in Infrastructure as Code (Terraform required)
Experience designing and building data pipelines and data systems
Hands-on with high-volume data processing and storage layersExperience deploying or supporting AI/ML systems in production
Familiarity with RAG architectures, vector databases (OpenSearch, Pinecone, etc.)
Strong understanding of containerized environments (EKS/ECS, Docker)
Experience implementing monitoring using CloudWatch, Prometheus, Grafana
Strong understanding of system performance, scaling, and reliability best practices
Good to Have
Experience in early-stage startups or 0→1 environments
Familiarity with event-driven architectures (Kafka, SQS, EventBridge)
Strong understanding of cloud cost optimization and efficiency
What Success Looks Like
Infrastructure built: Complete AWS setup from scratch
System reliability: High uptime, low failure rates
Deployment speed: Fast, reliable CI/CD pipelines
Data pipelines: Scalable, accurate, low-latency systems
AI systems: Successfully deployed and running in production
Cost efficiency: Optimized cloud spend vs usage
Security: Strong IAM, access control, and compliance posture
Ownership: Ability to independently build, operate, and improve systems