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Senior AI Platform Engineer

TrulyRemote Verified

Hand-curated global remote job with direct application link

Technical Requirements

Voice AgentsMulti-turn Conversation DesignReal-time SystemsAutomated Testingn8nLLM OrchestrationPrompt EngineeringRetrieval-Augmented Generation (RAG)

The Role

As a Senior AI Platform Engineer, you'll be on the frontlines of our most critical customer implementations, with a strong focus on conversational AI agents deployed in real business environments.

You'll design, build, and deliver agentic systems that handle live users, multi-turn conversations, real-time constraints, and complex integrations. These are not demos or experiments — they are production systems that customers rely on.

Beyond hands-on engineering, you will act as a technical owner for client delivery. You'll translate customer requirements and SOWs into working systems, own delivery timelines, manage technical tradeoffs, and ensure successful outcomes in production.

This is a hands-on role. You're not just reviewing PRs or sitting in meetings — you're in the weeds, building systems, debugging failures, and showing others how it's done.

Responsibilities

  • Build advanced AI agent workflows on n8n and Supernal's proprietary platform

  • Design, implement, and deploy conversational agents, including multi-turn flows, state management, and tool usage

  • Own end-to-end technical delivery for high-priority customer implementations, from architecture through production launch

  • Translate customer requirements and SOWs into clear technical designs, execution plans, and deliverables

  • Make and own architectural decisions across LLM orchestration, RAG design, API integrations, and workflow decomposition

  • Handle real-world voice system challenges including latency, interruptions, fallbacks, error handling, and failure recovery

  • Write automated tests — unit tests for isolated logic and end-to-end tests for full workflow and user journey validation

  • Apply solid error handling: distinguish retryable vs. fatal failures, surface meaningful error messages, and avoid silent failures

  • Actively debug complex production issues across agent logic, prompts, integrations, and external dependencies

  • Partner with delivery and product leadership to manage timelines, scope, and technical tradeoffs during implementation

  • Review technical work for quality, scalability, and maintainability, setting a high bar for engineering excellence

  • Define, document, and evolve best practices for building and delivering reliable AI Employees

You Might Be a Fit If You...

  • Have 4+ years of experience as a software engineer, automation engineer, or systems builder shipping production systems

  • Have hands-on experience deploying voice agents using leading platforms (e.g., ElevenLabs, Retell, Nextiva), including telephony and streaming audio integration patterns

  • Understand multi-turn conversation design: state management, context windows, interruption handling, and graceful recovery

  • Have tackled real-time constraints in production: latency budgets, streaming audio, fallback paths, and API chaos

  • Write automated tests as a matter of course — unit tests, integration tests, and end-to-end workflow validation — and treat testing as part of shipping, not an afterthought

  • Apply solid engineering fundamentals: error handling, retry strategies, separation of concerns, and clean interfaces between components

  • Are comfortable owning delivery outcomes end-to-end — not just writing code — including timelines, reliability, and client success

  • Have deep experience with agentic architectures, workflow automation platforms (n8n, Zapier, Make), and APIs

  • Understand LLM orchestration, prompt engineering, function calling, and retrieval-augmented generation (RAG)

  • Can prototype fast and finish the job to production quality — with tests, error handling, monitoring, and runbooks

  • Are an elite debugger who can reason through edge cases, flaky agents, and real-world API failures

  • Communicate clearly and fluently in English — both in writing and verbally — especially when articulating technical decisions, tradeoffs, and implementation choices to technical and non-technical stakeholders alike

  • Can run meetings, drive decisions, write crisp updates, and ask the right questions early — without needing heavy process

  • Thrive in fast-paced, ambiguous startup environments and take ownership without being asked

  • Bring a low-ego, high-integrity approach to collaboration and leadership

What Success Looks Like

  • Voice-first AI Employees are delivered on time, meet customer requirements, and perform reliably in production

  • Client implementations are predictable, well-architected, and resilient under real-world conditions

  • Complex conversational and voice workflows behave consistently and recover gracefully from failure

  • Code is well-tested, well-documented, and maintainable — not just functional

  • Technical decisions are communicated clearly and proactively to stakeholders, with tradeoffs explained and risks surfaced early

  • Engineering best practices reflect real production learnings and are widely adopted across the Mason team

  • Delivery artifacts — runbooks, SOPs, reusable components — raise the bar for the whole team

Senior AI Platform Engineer
Supernal
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