AI Platform Engineer
Location: Remote
Type: Full-Time
Role Overview
A fast-growing SaaS company serving healthcare practices across the U.S. We are seeking a highly hands-on Lead AI Platform Engineer to design and build a centralized AI platform embedded directly into our core product.
This platform will power intelligent, context-aware workflows across our application, enabling recommendations, automation, and decision support within a highly regulated HR environment. We've already validated AI use cases within our product and are now investing in building a scalable, production-grade foundation.
This is a 70–80% hands-on role. You will be the primary architect and builder responsible for turning. AI capabilities into reliable, production-grade systems that operate safely, respect permissions, and deliver real value to users.
You will report directly to the CTO and play a foundational role in shaping how AI is implemented across the company, with the opportunity to build and lead a team over time. You will have significant autonomy in defining architecture, tooling, and implementation approach.
This is not a research or prompt experimentation role; this is about building reliable systems that operate in production.
What You'll Build
- You will design and implement systems that:
- Generate context-aware recommendations based on structured application data and internal
- knowledge (including HR best practices and legal guidance)
- Embed AI directly into core product workflows, not as standalone tools
- Support multi-step workflows, including planning, tool use, validation, and controlled execution
- Enforce strict guardrails and validation layers to ensure outputs are accurate, compliant, and within scope
- Respect user roles and permissions, including enabling AI to take actions on behalf of users when appropriate
- Manage state, memory, and error recovery in production environments
- Example Problems You Might Work On
- Suggesting compliant HR policy language based on company-specific context and internal knowledge bases
- Recommending employee actions or documentation with validation against internal rules, permissions, and regulatory constraints
- Enabling AI-assisted workflows that can take action on behalf of users within clearly defined and auditable boundaries
Key Responsibilities
Build the AI Platform
- Architect and implement the core AI platform within a Laravel + AWS environment
- Define patterns for prompt orchestration, state management, and workflow execution
- Integrate structured application data and internal knowledge sources into AI workflows
- Define evaluation and feedback loops to continuously improve AI output quality and reliability
Ship Product-Facing AI Features
- Deliver AI-powered consultative features embedded in core user workflows
- Enable users to receive high-quality, context-driven recommendations and automation
Design for Safety and Compliance
- Build robust guardrails, validation layers, and monitoring systems
- Ensure all AI outputs and actions are reliable and aligned with regulatory expectations in a sensitive HR environment
Enable the Engineering Team
- Create abstractions and frameworks that allow other engineers to safely build on the AI platform
- Act as the internal technical leader for applied AI implementation
Own the System Long-Term
- Ensure the platform is scalable, maintainable, and cost-effective
- Shape the roadmap for AI capabilities across the organization
- Participate in hiring and building the AI team over time
What Success Looks Like (First 6 Months)
- Design and launch the foundational AI platform architecture within our existing stack
- Ship AI-powered features into production that enhance core product workflows
- Establish guardrails, validation mechanisms, and permission-aware execution
- Define reusable patterns that enable other engineers to contribute safely
- Lay the groundwork for scaling AI capabilities across the product and team
Technical Requirements
Strong Backend Engineering Foundation
- Deep experience with PHP and Laravel (service container, queues, architecture patterns)
- Proven ability to design and maintain production-grade systems
Applied AI Experience
- Experience integrating LLMs into real-world, production applications
- Strong understanding of building multi-step AI workflows (planning, execution, validation, tool use)
- Experience managing context, memory, and reliability in AI systems
Infrastructure Experience
- Meaningful hands-on experience designing and operating production systems on AWS
- Familiarity with services such as Lambda, RDS, SQS, and event-driven architecture patterns
- Comfort with distributed systems and asynchronous processing
System Design & Ownership
- Ability to architect systems end-to-end with a focus on reliability and maintainability
- Strong judgment on tradeoffs between speed, cost, and quality
Preferred Experience
- Experience embedding AI into SaaS product workflows (not just internal tools)
- Familiarity with permissioned systems and role-based access control
- Experience integrating LLMs into Laravel-based applications is strongly preferred; experience with the Laravel AI SDK is a plus
- Experience leading technical initiatives or mentoring engineers
Who You Are
- A builder first: you ship working systems, not just ideas
- Energized by greenfield work: you're at your best when defining the architecture
- Product-minded: you care about delivering real user value, not just technical novelty
- Pragmatic: you understand the limitations of AI and design systems accordingly
- Ownership-driven: you take responsibility for outcomes, not just code
- Comfortable operating with ambiguity and defining the path forward
