Staff Product Engineer

Remote from
🌐 Anywhere
Salary, yearly, USD
80,000 - 100,000
Employment type
Full Time,
Job posted
Apply before
23 Jul 2026
Views / Applies
109 / 19

About LawnStarter

LawnStarter is a marketplace for lawn maintenance and outdoor services

Actively Hiring
Verified job posting
This job post has been manually reviewed for authenticity and compliance.

AI Summary

LawnStarter is seeking a Staff Product Engineer to lead initiative teams in a high-autonomy, fast-paced environment. The role involves end-to-end ownership from problem-framing to production, working closely with PMs and designers. You will direct AI agents to ship high-quality code and be accountable for outcomes. The ideal candidate is senior-level, product-oriented, and thrives on solving complex problems across a shared platform.

Role DNA

Job Complexity
Easy Hard
Pace & Pressure
Relaxed Fast-paced
Autonomy Level
Guided Full Ownership
Communication Load
Independent Highly Collaborative
AI Insight The role requires staff-level experience with high ownership, technical decision-making, and directing AI agents, making it challenging but not the hardest due to existing support structures.

Salary Analysis

Median Market Rate
USD200,000
US Market
USD150k – 350k
0 USD385k
AI Insight The salary for this role is not listed, but the US market range for a Staff Product Engineer is typically $150k-$350k with a median around $200k. As a senior role, compensation is likely competitive and may include equity.

Key Skills

Product Engineering AI Agent Management Full-Stack Development System Architecture Cross-Functional Collaboration Observability Performance Optimization Scalability Agile Development Technical Leadership

I am excited to apply for the Staff Product Engineer role at LawnStarter. Your emphasis on shipping end-to-end with real autonomy resonates deeply with my experience leading cross-functional initiatives and driving measurable impact.

I have a strong track record of architecting scalable solutions and collaborating closely with product and design teams to deliver results. My background includes leveraging AI tools to accelerate development without compromising quality, which aligns perfectly with your vision of AI agents as a force multiplier.

I thrive in fast-paced environments where ownership and outcome accountability are key, and I am drawn to the challenge of building a unified platform for home services. Your focus on small, focused teams and high engineering standards mirrors my own professional values.

Thank you for considering my application. I look forward to the opportunity to discuss how I can contribute to LawnStarter's growth and success.

Can you describe a time you owned an end-to-end feature from conception to launch, including post-launch metric analysis?
At my previous company, I led the development of a new recommendation engine for our marketplace. I worked with product and design to define requirements, chose the technical architecture, directed AI agents to generate initial implementation, and wrote critical parts myself. After launch, I monitored metrics and iterated to improve conversion by 15%.
How do you ensure high quality when using AI agents to write code?
I establish clear prompts with our coding conventions, set up automated evals and tests to catch regressions, and review critical paths manually. I also use observability to detect issues in production quickly. The key is having a robust review loop and holding agent-written code to the same standard as manually written code.
Describe how you balance autonomy with needing input from architects or peers. Give a specific example.
In a recent initiative, I needed to decide on a new data model. I made an initial proposal, documented trade-offs, then scheduled a brief review with our architect. Based on feedback, I adjusted the design and proceeded. This approach allowed me to move fast while ensuring alignment with long-term architecture.
How do you approach working with a product manager and designer to define a feature's scope and technical approach?
I start by understanding the user problem and business goal. Then I bring technical constraints and possibilities to the table, often sketching out multiple approaches. I prioritize fast feedback loops, using prototypes or in-tool experiments to validate ideas. This collaborative process ensures we build the right thing efficiently.
Tell me about a time you had to make a tough technical trade-off that affected a product outcome. How did you decide?
We were shipping a real-time feature with tight latency requirements. I debated between a simpler but less scalable solution and a complex distributed system. I chose the simpler one with a clear plan to iterate. This allowed us to launch on time and later refactor based on real usage data, which confirmed the trade-off was correct.

About LawnStarter

LawnStarter is the nation’s leading on-demand marketplace for lawn care and outdoor services, with over $100M in annual bookings. We’re expanding beyond lawn care to become the one-stop shop for all home services — operating across three brands (LawnStarter, Lawn Love, Home Gnome) on a single shared platform.

About Engineering at LawnStarter

We build in small, focused initiative teams: a Product Engineer working alongside a PM and a designer, supported by an Engineering Manager who helps you grow. You’ll also work shoulder-to-shoulder with engineering peers across initiatives in a shared codebase. The whole team owns whether the work moves its metric.

AI coding agents are a force multiplier here — they give a small, senior team the leverage to ship more, faster, and at a higher bar for quality. We hire engineers who are wired for ownership and energized by shipping to a real marketplace with customers and pros on both sides.

The Role

You’re the engineering anchor of an initiative — working as part of a tight team with your PM and designer, and alongside engineering peers on adjacent initiatives. You have a hand in the full lifecycle: shaping the problem, deciding the technical approach, directing AI agents to implement much of the code, shipping to production, and — with your team — owning the outcome.

You’re measured by impact, not by lines of code merged. When an agent can ship something safely, your job is to make sure it’s done right and the metric moves. When the work calls for careful, hand-written code in a sensitive area, you write it yourself.

What makes this role exciting:

  • You ship end-to-end. From problem-framing through production to the post-launch metric review — you see the whole arc and own the result with your team.
  • You work as a true product partner. You sit at the table with PM and design, bringing engineering judgment to product calls and product sense to engineering calls.
  • You get real autonomy — with the right checkpoints. You make most technical calls yourself, with architect review on significant architectural decisions and fast input from peers.
  • You operate at a staff bar. You’re trusted to make the call, ship the hard thing, and stand behind the outcome.

What You’ll Own

  • The technical approach — architecture, data model, integration choices, rollout plan, observability, and rollback strategy for your initiative. You make most calls yourself and bring significant architectural decisions to architect review; you document them, and revisit if the data says you were wrong.
  • Implementation quality — the prompts, guardrails, evals, tests, and review loop that let agents ship safe, correct, production-ready code. Most lines will be agent-authored, and you’re accountable for them — held to the same standard as the rest of the team working in a shared codebase.
  • Cross-functional partnership — daily working contact with your PM (scope, tradeoffs) and designer (UX decisions, in-tool prototyping), regular collaboration with engineering peers, and weekly check-ins with your EM.
  • The initiative outcome — the metric the initiative was set up to move. With your PM, you present results 2–4 weeks post-launch and share the “did it work” answer.
  • A high bar for what ships — production correctness, security, performance, observability, and the experience for customers and pros. Agents accelerate you; they don’t lower the bar.

Problems to Solve

Leading AI agents at a staff-level quality bar Most of the code on your initiative will be authored by AI agents. The craft is making them ship as if a senior engineer wrote it: prompts that encode our conventions, evals that catch issues before merge, tests that exercise the edges, observability that catches a regression before a customer does. How do you build a workflow that lets a small team ship far more than its size would suggest?

Owning decisions with high autonomy You have real latitude to make and document technical calls quickly — with architect review on the big architectural ones and peers to pressure-test your thinking. How do you move fast, keep your team aligned, and stay accountable to the outcome?

Shipping outcomes, not features Each initiative is measured by a metric — a conversion rate, a retention curve, a pro-funnel KPI, a unit-economics shift. You’re accountable for the number alongside your team. How do you scope to actually move it, decide what *not* to build, and have the discipline to follow up 2–4 weeks after launch?

What Success Looks Like (Year 1)

  • Initiative outcomes hit — You’ve shipped 3–4 initiatives end-to-end, and at least two clearly moved their metric (with the post-launch review to prove it).
  • Agent workflow that travels — The prompts, evals, and review loop you built are picked up by peers on other initiatives.
  • Faster cycle time — Median time from problem-framing to first production rollout on your initiatives is meaningfully shorter.
  • Quality holds — No customer- or pro-facing regression traceable to agent-authored code that slipped through your review.
  • Visible leverage — Peers point to artifacts you left behind — runbooks, evals, agent workflows, post-launch write-ups — as references they use.

Requirements

Who You Are

  • AI-native. Claude Code, Cursor, Codex, or equivalent are how you ship today — daily, on production work. You have real opinions about prompts, evals, agent loops, and review workflows, and you know when to let the agent run versus write it yourself.
  • Operating at a lead level. Whatever your current title, you’ve been the person making the call, shipping the hard thing, and standing behind whether it worked.
  • Outcome-driven. You measure your week in “did the metric move” and “did the experience get better.” You read the post-launch dashboard and own the answer.
  • A strong horizontal partner. You hold your own with a strong PM and designer, and you collaborate well with engineering peers in a shared codebase. You bring engineering judgment to product calls and product judgment to engineering calls.
  • Decisive and documented. You make architecture, data-model, and rollout calls, write them down, get fast input, and move.
  • A force multiplier. Your impact compounds beyond your own initiative because you leave reusable artifacts behind — agent workflows, evals, runbooks, post-launch reviews.
  • Customer- and pro-minded. This is a real marketplace with real people on both sides, and you care about the outcomes for both.

Good to Know

  • An individual-contributor role with room to grow. People management sits with the EM — but the path into management is an open door for those who want it.
  • A product-engineering role, end-to-end. You ship features that move metrics; platform and architecture work happen inside the initiative when the outcome needs them.
  • Hands-on, with a high quality bar. Agents handle much of the implementation; you bring the judgment, design, safety, and accountability. The bar is high.
  • Shipping to a live marketplace. With $100M+ in bookings, customers and pros use what you ship within the same week.

Tech You’ll Touch

  • AI agents — Claude Code, Cursor, Codex, internal agent stack, MCP servers, evals tooling
  • Backend — PHP/Laravel
  • Frontend — TypeScript/React/React Native (customer & pro apps, web and mobile)
  • Data — Redshift, dbt, Segment, Airflow
  • Infra — AWS, Datadog, Sentry, GitHub Actions
  • Documentation & process — Brain (Claude Code skills + docs repo), Confluence, Jira

You don’t need every box checked. You need deep skill in at least one of our stacks plus credible production experience with AI coding agents.

Benefits

  • Competitive salary of USD $80,000–$100,000 annual base
  • Work from anywhere
  • High ownership and autonomy
  • Fast-moving team that loves to build, learn, and grow

Apply now >

This job listing has been manually reviewed by the Jobicy Trust & Safety Team for compliance with our posting guidelines, including verification of the company's legitimacy, accuracy of job details, clarity of remote work policy, and absence of misleading or fraudulent content.

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