Role Summary We are looking for an AI Native Development Architect to design and guide the build of cloud-native data- and AI-driven applications on AWS. You will define target architectures enable engineering teams with reusable patterns and reference implementations and accelerate delivery using modern AI-assisted development tools.
Key Responsibilities
Define end-to-end architecture for AI-native products including application data integration security and operations on AWS.
Lead design reviews and provide technical direction across Python and C#/.NET codebases.
Architect data pipelines and analytical workloads using PySpark and AWS Glue; establish standards for data quality lineage and observability.
Design and implement scalable APIs and microservices using FastAPI (and/ Web APIs) with clear contracts versioning and performance SLAs.
Establish reference architectures for LLM/RAG-enabled capabilities (e.g. retrieval patterns prompt management evaluation guardrails) aligned with organizational policies.
Partner with Security Platform and DevOps teams to implement secure-by-design practices (IAM secrets network controls encryption threat modeling).
Define CI/CD branching testing and release practices; improve developer productivity with automation and paved-road templates.
Champion AI-assisted engineering workflows using tools such as GitHub Copilot Cursor and Claude AI while ensuring code quality and compliance.
Mentor engineers create technical documentation and drive adoption of best practices across teams.
Required Skills
Primary Skills
Python: strong hands-on experience building services and data workloads using Python PySpark AWS Glue and FastAPI.
C#/.NET: ability to design and services and libraries; familiarity with runtime and patterns.
AWS: strong understanding of AWS architecture fundamentals (networking IAM compute storage managed services) and designing for scale reliability and cost.
AI Native Development Tools
Proficiency using AI coding assistants to accelerate development while maintaining engineering rigor: GitHub Copilot Cursor Claude AI.
Ability to establish team guidelines for AI-assisted coding (review standards secure prompting IP/compliance awareness and validation/testing).
Experience with infrastructure as code (e.g. CloudFormation/CDK/Terraform) and container platforms (Docker/ECS/EKS).
Knowledge of MLOps patterns (model lifecycle feature stores experiment tracking) and data governance concepts.
Strong understanding of observability practices (logs/metrics/traces) and SRE-oriented reliability design.
Soft Skills & Competencies
Architecture leadership: can balance short-term delivery with long-term platform thinking.
Clear communication: can translate complex technical decisions for engineering and business stakeholders.
Hands-on mindset: comfortable prototyping and jumping into code to unblock teams.
Quality and security focus: promotes testing discipline secure coding and operational readiness.
Collaboration and mentorship: builds alignment coaches engineers and scales best practices across squads.
What Success Looks Like (First 90 Days) Established reference architectures and coding standards for AI-native services; improved delivery throughput via AI-assisted workflows; delivered at least one production-ready blueprint (API data pipeline) on AWS with strong security observability and cost controls.
Role : AI Native Development lead/ Architect Location : Atlanta GA (Hybrid) Role Summary We are looking for an AI Native Development Architect to design and guide the build of cloud-native data- and AI-driven applications on AWS. You will define target architectures enable engineering teams with r...
Role : AI Native Development lead/ Architect
Location : Atlanta GA (Hybrid)
Role Summary We are looking for an AI Native Development Architect to design and guide the build of cloud-native data- and AI-driven applications on AWS. You will define target architectures enable engineering teams with reusable patterns and reference implementations and accelerate delivery using modern AI-assisted development tools.
Key Responsibilities
Define end-to-end architecture for AI-native products including application data integration security and operations on AWS.
Lead design reviews and provide technical direction across Python and C#/.NET codebases.
Architect data pipelines and analytical workloads using PySpark and AWS Glue; establish standards for data quality lineage and observability.
Design and implement scalable APIs and microservices using FastAPI (and/ Web APIs) with clear contracts versioning and performance SLAs.
Establish reference architectures for LLM/RAG-enabled capabilities (e.g. retrieval patterns prompt management evaluation guardrails) aligned with organizational policies.
Partner with Security Platform and DevOps teams to implement secure-by-design practices (IAM secrets network controls encryption threat modeling).
Define CI/CD branching testing and release practices; improve developer productivity with automation and paved-road templates.
Champion AI-assisted engineering workflows using tools such as GitHub Copilot Cursor and Claude AI while ensuring code quality and compliance.
Mentor engineers create technical documentation and drive adoption of best practices across teams.
Required Skills
Primary Skills
Python: strong hands-on experience building services and data workloads using Python PySpark AWS Glue and FastAPI.
C#/.NET: ability to design and services and libraries; familiarity with runtime and patterns.
AWS: strong understanding of AWS architecture fundamentals (networking IAM compute storage managed services) and designing for scale reliability and cost.
AI Native Development Tools
Proficiency using AI coding assistants to accelerate development while maintaining engineering rigor: GitHub Copilot Cursor Claude AI.
Ability to establish team guidelines for AI-assisted coding (review standards secure prompting IP/compliance awareness and validation/testing).
Experience with infrastructure as code (e.g. CloudFormation/CDK/Terraform) and container platforms (Docker/ECS/EKS).
Knowledge of MLOps patterns (model lifecycle feature stores experiment tracking) and data governance concepts.
Strong understanding of observability practices (logs/metrics/traces) and SRE-oriented reliability design.
Soft Skills & Competencies
Architecture leadership: can balance short-term delivery with long-term platform thinking.
Clear communication: can translate complex technical decisions for engineering and business stakeholders.
Hands-on mindset: comfortable prototyping and jumping into code to unblock teams.
Quality and security focus: promotes testing discipline secure coding and operational readiness.
Collaboration and mentorship: builds alignment coaches engineers and scales best practices across squads.
What Success Looks Like (First 90 Days) Established reference architectures and coding standards for AI-native services; improved delivery throughput via AI-assisted workflows; delivered at least one production-ready blueprint (API data pipeline) on AWS with strong security observability and cost controls.