Engineering Manager (AI) - Supernal

Remote, USA
Posted Jun 14, 2026
Full-time

About Supernal

At Supernal, we help SMBs hire their first AI employee. Our AI teammates are built with intelligent, agentic workflows and deployed on our proprietary platform. We don't build tools — we deliver working, value-generating AI Employees.

Our AI Platform Engineers, known internally as Masons, are the builders behind these systems. As we scale delivery, we need a Mason Manager to lead multiple pods of Masons and ensure we ship reliable, production-grade AI Employees — predictably and at high quality.

The Role

As a Mason Manager (Engineering Manager), you will lead multiple pods of Junior + Senior Masons responsible for building and shipping production automation and agentic systems for customers.

This is a highly technical people leadership role. You will be accountable for what your pods ship: architecture decisions, quality bars, reliability, documentation, and delivery outcomes. You’ll also invest heavily in hiring, coaching, and performance management — building a team that can deliver at scale with consistent craft.

You are not a “process-only” manager. You will stay close to the work: reviewing designs, unblocking complex integrations, setting engineering standards, and acting as the escalation point for production issues and delivery risk.

Responsibilities

  • Lead multiple Mason pods and own delivery outcomes: scope, milestones, quality, and on-time execution

    Translate ambiguous customer/internal requests into clear plans, acceptance criteria, and execution strategy

    Set and enforce production-quality standards for Mason builds (testing, monitoring, runbooks, documentation, rollout plans)

    Serve as technical escalation for difficult problems: auth/permissions, integrations, data modeling, reliability, and failure recovery

    Establish and evolve team processes: scoping discipline, QA gates, review checklists, incident/postmortem loops, and continuous improvement

    Drive prioritization and capacity planning across pods; identify the critical path and remove blockers fast

    Partner with Delivery Leads and stakeholders to manage tradeoffs, timelines, and expectations (including client-facing escalations when needed)

    Hire and build the team: define roles, run interview loops, calibrate, close candidates, and improve onboarding

    Manage performance: set expectations, deliver feedback, coach growth, and handle underperformance clearly and fairly

    Develop leaders within the Mason org: mentoring, delegation, and building strong ownership at every level

You Might Be a Fit If You...

  • Have 5+ years of experience building production systems as a software/automation engineer, plus 2+ years of engineering management or tech-leadership experience (people management strongly preferred)

    Have managed multiple concurrent workstreams (pods/squads) with shared standards and predictable delivery

    Are deeply comfortable with integrations: APIs, webhooks, auth (OAuth/API keys), and data stores (Postgres/Supabase)

    Can reason about reliability in automation/agentic systems: idempotency, retries/backoff, rate limits, auditing, and safe failure modes

    Have a strong quality mindset: unit/integration/E2E testing, regression prevention, monitoring/observability, and runbook culture

    Have experience with applied AI delivery patterns: prompt iteration, eval harnesses, human-in-the-loop QA, and LLM observability

    Enjoy people management and have real examples of coaching, feedback, and performance management

    Have run hiring loops end-to-end: defining roles, interviewing, calibration, and closing candidates

    Communicate clearly and fluently in English — written and verbal — and can align technical and non-technical stakeholders

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

What Success Looks Like

  • Multiple Mason pods ship production AI Employees predictably, with clear milestones and minimal thrash

    Builds are reliable in the wild: fewer incidents, fast recovery, strong observability, and durable runbooks/SOPs

    Engineering standards are consistently applied across pods (testing, documentation, QA gates, and design clarity)

    Stakeholders have high trust: timelines and tradeoffs are communicated early and crisply

    The Mason org scales through strong hiring and onboarding; new Masons ramp quickly and ship meaningful work

    Team performance improves over time through coaching, clear expectations, and a high-accountability culture

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