Required AI Architect
Position Overview:
As the AI Architect for our SaaS Platform & Products, you will define and drive the end-to-end AI architecture that powers our cloud AI platform and product capabilities, while ensuring strong alignment with security, privacy, reliability and cost-efficiency requirements. You will partner closely with engineering leaders, product management, data science, security and operations to translate business needs into a scalable, governed and AI platform that accelerates innovation across multiple product lines.
This is a hands-on architecture role: you will set technical direction, run architectural reviews, and build prototypes to validate technology choices and de-risk delivery.
Key Responsibilities:
Own the AI Vision: Take end-to-end ownership of the AI architecture across, including our cloud AI platform, agentic AI infrastructure, and on-prem/hybrid AI deployments.
Architect an AI Platform for SaaS Products: Define reference architectures and shared building blocks (e.g., AI gateways, orchestration runtimes, memory/RAG systems, vector search, evaluation frameworks, observability, and guardrails) that can be adopted consistently across products and teams.
Cost Optimization and Scalability: Provide architectural leadership to ensure AI systems are designed for cost efficiency and scalability, actively identify and implement opportunities to optimize cloud spend (FinOps), improve utilization, and meet latency/SLO targets.
Product-Centric Collaboration: Collaborate with engineering, product, data science, security, and operations teams to translate product requirements and business needs into a strategic AI architecture that drives measurable product value.
Technology Evolution and Prototyping: Evaluate new technologies, tools, and methodologies to continuously improve our AI systems, build prototypes and proof-of-concepts to validate approaches and accelerate decision-making.
Technical Reviews, Standards and Mentorship: Lead technical design reviews and provide guidance on best practices and emerging technologies. Act as a technical authority and mentor, fostering a culture of engineering excellence and pragmatic delivery.
AI Governance, Privacy and Security: Ensure AI capabilities comply with data privacy, security, and ethical AI guidelines. Partner with security and legal stakeholders to implement governance controls and risk mitigations appropriate for regulated environments.
Requirements: Minimum Qualifications
8+ years of experience in software engineering / platform engineering building distributed, production-grade systems, including 3+ years in an architecture, tech lead, or principal engineer role spanning multiple teams.
4+ years of hands-on AWS experience designing, building, and operating cloud-native services (networking/VPC, IAM, compute, storage, observability, and security fundamentals).
5+ years of hands-on Python experience in production environments (services, tooling, data/ML pipelines) with the ability to build prototypes and reference implementations.
3+ years delivering AI/ML systems into production (reliability, monitoring, evaluation, and lifecycle management).
2+ years building GenAI/LLM solutions in production (RAG, tool/function calling, agentic patterns) with a strong focus on safety, quality, and cost.
Demonstrated experience owning architectural decisions end-to-end, aligning stakeholders, and driving adoption through standards, reference architectures, and enablement.
Core Skills & Experience
Deep expertise in AWS architecture for cloud-native, multi-tenant SaaS platforms (distributed systems, high availability, resilience).
Proven experience designing and delivering production-grade AI/LLM systems at scale (reliability, latency, cost).
Deep knowledge of agentic AI infrastructure, including orchestration runtimes, memory systems, vector databases, AI gateways, MCP/A2A patterns, observability, and guardrails.
This position is open to all candidates.