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Pest Control Technician
RESPONSIBILITIES
- Conducting thorough interior and exterior inspections to locate dangerous pests.
- Offering sound advice on both chemical and natural pest control remediation options
- Offering treatments for pests, termites, ants, and other insects.
- Providing estimates for one-time treatments and continual maintenance.
Requirements
REQUIREMENTS
BGCSE – Must have C and above in Mathematics and English
PCO Applicators training – an advantage but not mandatory.
Driver’s license for car, light, and or heavy vehicles – this is Mandatory.
Must be 20 years of age and over
Benefits
REMUNERATION/BENEFITS
Benefits:
- Competitive salary and medical plan
- Career opportunities
- Training
- Working for an international company
DOCENTE LIMPIEZA GESTIÃN DE RESIDUOS Y MEDIOAMBIENTE
Qu hars?
Impartir el mdulo SEAG039PO, acercando al alumnado los fundamentos de la limpieza profesional, la gestin de residuos y la normativa medioambiental vigente.
Detalles del curso
Aula virtual / Teleformacin
05/06 24/06/2026
10:00 13:00 h (LV)
40 horas
Requisitos mnimos
Qu necesitamos de ti?
Formacin en Ciencias Ambientales, Qumica o similar
Experiencia en gestin de residuos y/o servicios de limpieza
Experiencia previa como docente o formador/a de adultos
Manejo de plataformas de teleformacin
Staff Product Engineer (São Paulo)
This is a remote role for candidates located in So Paulo (Brazil)
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’re restructuring engineering around initiative teams: a Product Engineer paired with a PM and a designer, with an Engineering Manager who covers a couple of initiatives and supports your growth. The engineer leads AI agents like a team, ships the work, and is accountable with the rest of the triangle for whether the initiative moves its metric.
We’re betting that 12 strong engineers running AI agents can outship the labor-team model that defined the last decade of software. That bet only works if the engineers we hire are wired for ownership and can ship to a marketplace with real customers and pros on both sides.
The Role
You’re the engineering anchor of one initiative at a time. The initiative is a team effort an iron triangle of you, your PM, and your designer and you have key participation across the full lifecycle: shaping the problem, deciding the technical approach, leading the AI agents that implement most of the code, shipping to production, and answering for the outcome alongside the rest of the triangle.
You’re accountable for the outcome not for the volume of code merged. If an agent can ship it safely, your job is to make sure the agent does it right and the metric moves. If the initiative needs hand-written code in a sensitive area, you write it yourself.
What makes this role different:
- You lead AI agents, not humans. Claude Code, Cursor, Codex, and our internal agent stack are your team. You own the quality, safety, and velocity of what they produce.
- You own an outcome, not a ticket queue. Problem-framing through production through the metric review 24 weeks after launch.
- You partner horizontally with PM and design. No tech lead above you. No architect approval. No ticket grooming committee.
- The bar is staff, not senior. You make the call when the call needs to be made. If you’re waiting to be told, this isn’t the role.
What You’ll Own
- The technical approach architecture, data model, integration choices, rollout plan, observability, and rollback strategy for your initiative. You make the call, document it, and revisit it if the data says you were wrong.
- Agent-led implementation quality the prompts, guardrails, evals, tests, and review loop that let agents ship safe, correct, production-ready code on your initiative. Most lines will be agent-authored. You’re accountable for them.
- Cross-functional partnership daily working contact with your PM (scope, tradeoffs) and your designer (UX decisions, in-tool prototyping with agents), and weekly check-ins with your EM (initiative health, blockers, growth).
- The initiative outcome the specific metric the initiative was set up to move. In partnership with your PM, you present results 24 weeks post-launch and share the “did it work” answer.
- A high bar for what ships under your name production correctness, security posture, 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 staff-level quality
Most of the code on your initiative will be authored by AI agents. The work is making agents ship as if a senior engineer wrote it: prompts that encode our codebase conventions, evals that catch hallucinations before merge, tests that exercise the edges, observability that catches the regression in production before a customer reports it. How do you build the agent workflow that lets one engineer ship what used to take a team?
Owning an outcome without a tech lead
You don’t have a tech lead to approve your design or an architect to escalate to. You have an EM who covers a couple of initiatives and peers on adjacent ones. How do you make calls fast, document them clearly, and stay accountable to the outcome without slowing down for hierarchy that no longer exists?
Shipping outcomes, not features
The initiative will be measured by a metric a conversion rate, a retention curve, a pro-funnel KPI, a unit economics shift. You’re accountable for the number, not the feature. How do you scope to actually move it, decide what to not build, and have the discipline to follow up 24 weeks after launch even when the next initiative is calling?
What Success Looks Like (Year 1)
- Initiative outcomes hit You’ve shipped 34 initiatives end-to-end, and at least two clearly moved the metric they were set up to move (with the post-launch review to prove it).
- Agent workflow that travels The prompts, evals, and review loop you built for your initiative are adopted by at least one other engineer on an adjacent initiative.
- Cycle time Median time from problem-framing to first production rollout on your initiatives is meaningfully shorter than the pre-restructure baseline.
- Zero “agent-shipped that” incidents No customer- or pro-facing regression traceable to agent-authored code that you missed in review.
- Visible leverage Other engineers point to artifacts you left behind runbooks, evals, agent workflows, post-launch write-ups as references they use.
Who You Are
AI-native. Claude Code, Cursor, Codex, or equivalent are how you ship daily, on production work. You have opinions about prompts, evals, agent loops, MCP servers, and review workflows, and you know when to let the agent run vs. write it yourself. This is unlikely to be a good fit if you describe AI coding as “something you’re exploring” or prefer to write everything by hand.
Already operating at lead level. You may currently be titled Senior, Staff, Lead, or Principal but in practice you’ve been the person making the call, shipping the hard thing, and answering for whether it worked. This is unlikely to be a good fit if you’ve always had a tech lead breaking down the work for you.
Outcome-driven, not output-driven. You measure your week in “did the metric move” and “did the experience get better,” not in tickets closed. You read the post-launch dashboard and you own the answer. This is unlikely to be a good fit if you take pride in volume of code shipped or feel uncomfortable being measured on a number you don’t fully control.
A strong horizontal partner. You hold your own with a strong PM and a strong designer. You bring engineering judgment to product calls and product judgment to engineering calls. This is unlikely to be a good fit if you hide behind “that’s product’s decision” or default to RICE-scoring tickets handed down to you.
Decisive and documented. Architecture decisions, data-model choices, rollout plans you write them down, get fast input, and move. This is unlikely to be a good fit if you wait for consensus on questions that have a clear right answer, or if you make calls and never write them down.
Raises the floor, not just the ceiling. Your impact compounds beyond your own initiative because you leave artifacts agent workflows, evals, runbooks, post-launch reviews. This is unlikely to be a good fit if you’re a lone wolf who ships brilliantly but leaves nothing reusable behind.
Cares about customers and pros. This is a real-world marketplace with real people on both sides. This is unlikely to be a good fit if you’re chasing pure engineering elegance over business and customer outcomes.
This Role Is NOT
- A tech lead in an old-style team. No 45 engineers reporting up to you on technical direction. The team is you + PM + designer + EM, with AI agents doing most of the implementation.
- A management role today. People management is the EM’s job in this role. That said, the path can grow into management for those who want it it’s an open door, not a closed one.
- A platform-only or architecture-only role. You’re a Product Engineer. You ship features that move metrics, end-to-end. Platform work happens inside the initiative when it’s needed for the outcome.
- A “let AI do everything” role. Agents handle implementation grunt work. You handle judgment, design, safety, and accountability. The bar is higher than the old senior bar, not lower.
- A research role. This is shipping to a marketplace with $100M+ in bookings. Customers and pros are using what you ship inside 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
Analista de Prospeção Júnior Temporário
Staff Product Engineer (Florianópolis)
This is a remote role for candidates located in Florianpolis, Brazil
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’re restructuring engineering around initiative teams: a Product Engineer paired with a PM and a designer, with an Engineering Manager who covers a couple of initiatives and supports your growth. The engineer leads AI agents like a team, ships the work, and is accountable with the rest of the triangle for whether the initiative moves its metric.
We’re betting that 12 strong engineers running AI agents can outship the labor-team model that defined the last decade of software. That bet only works if the engineers we hire are wired for ownership and can ship to a marketplace with real customers and pros on both sides.
The Role
You’re the engineering anchor of one initiative at a time. The initiative is a team effort an iron triangle of you, your PM, and your designer and you have key participation across the full lifecycle: shaping the problem, deciding the technical approach, leading the AI agents that implement most of the code, shipping to production, and answering for the outcome alongside the rest of the triangle.
You’re accountable for the outcome not for the volume of code merged. If an agent can ship it safely, your job is to make sure the agent does it right and the metric moves. If the initiative needs hand-written code in a sensitive area, you write it yourself.
What makes this role different:
- You lead AI agents, not humans. Claude Code, Cursor, Codex, and our internal agent stack are your team. You own the quality, safety, and velocity of what they produce.
- You own an outcome, not a ticket queue. Problem-framing through production through the metric review 24 weeks after launch.
- You partner horizontally with PM and design. No tech lead above you. No architect approval. No ticket grooming committee.
- The bar is staff, not senior. You make the call when the call needs to be made. If you’re waiting to be told, this isn’t the role.
What You’ll Own
- The technical approach architecture, data model, integration choices, rollout plan, observability, and rollback strategy for your initiative. You make the call, document it, and revisit it if the data says you were wrong.
- Agent-led implementation quality the prompts, guardrails, evals, tests, and review loop that let agents ship safe, correct, production-ready code on your initiative. Most lines will be agent-authored. You’re accountable for them.
- Cross-functional partnership daily working contact with your PM (scope, tradeoffs) and your designer (UX decisions, in-tool prototyping with agents), and weekly check-ins with your EM (initiative health, blockers, growth).
- The initiative outcome the specific metric the initiative was set up to move. In partnership with your PM, you present results 24 weeks post-launch and share the “did it work” answer.
- A high bar for what ships under your name production correctness, security posture, 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 staff-level quality
Most of the code on your initiative will be authored by AI agents. The work is making agents ship as if a senior engineer wrote it: prompts that encode our codebase conventions, evals that catch hallucinations before merge, tests that exercise the edges, observability that catches the regression in production before a customer reports it. How do you build the agent workflow that lets one engineer ship what used to take a team?
Owning an outcome without a tech lead
You don’t have a tech lead to approve your design or an architect to escalate to. You have an EM who covers a couple of initiatives and peers on adjacent ones. How do you make calls fast, document them clearly, and stay accountable to the outcome without slowing down for hierarchy that no longer exists?
Shipping outcomes, not features
The initiative will be measured by a metric a conversion rate, a retention curve, a pro-funnel KPI, a unit economics shift. You’re accountable for the number, not the feature. How do you scope to actually move it, decide what to not build, and have the discipline to follow up 24 weeks after launch even when the next initiative is calling?
What Success Looks Like (Year 1)
- Initiative outcomes hit You’ve shipped 34 initiatives end-to-end, and at least two clearly moved the metric they were set up to move (with the post-launch review to prove it).
- Agent workflow that travels The prompts, evals, and review loop you built for your initiative are adopted by at least one other engineer on an adjacent initiative.
- Cycle time Median time from problem-framing to first production rollout on your initiatives is meaningfully shorter than the pre-restructure baseline.
- Zero “agent-shipped that” incidents No customer- or pro-facing regression traceable to agent-authored code that you missed in review.
- Visible leverage Other engineers point to artifacts you left behind runbooks, evals, agent workflows, post-launch write-ups as references they use.
Who You Are
AI-native. Claude Code, Cursor, Codex, or equivalent are how you ship daily, on production work. You have opinions about prompts, evals, agent loops, MCP servers, and review workflows, and you know when to let the agent run vs. write it yourself. This is unlikely to be a good fit if you describe AI coding as “something you’re exploring” or prefer to write everything by hand.
Already operating at lead level. You may currently be titled Senior, Staff, Lead, or Principal but in practice you’ve been the person making the call, shipping the hard thing, and answering for whether it worked. This is unlikely to be a good fit if you’ve always had a tech lead breaking down the work for you.
Outcome-driven, not output-driven. You measure your week in “did the metric move” and “did the experience get better,” not in tickets closed. You read the post-launch dashboard and you own the answer. This is unlikely to be a good fit if you take pride in volume of code shipped or feel uncomfortable being measured on a number you don’t fully control.
A strong horizontal partner. You hold your own with a strong PM and a strong designer. You bring engineering judgment to product calls and product judgment to engineering calls. This is unlikely to be a good fit if you hide behind “that’s product’s decision” or default to RICE-scoring tickets handed down to you.
Decisive and documented. Architecture decisions, data-model choices, rollout plans you write them down, get fast input, and move. This is unlikely to be a good fit if you wait for consensus on questions that have a clear right answer, or if you make calls and never write them down.
Raises the floor, not just the ceiling. Your impact compounds beyond your own initiative because you leave artifacts agent workflows, evals, runbooks, post-launch reviews. This is unlikely to be a good fit if you’re a lone wolf who ships brilliantly but leaves nothing reusable behind.
Cares about customers and pros. This is a real-world marketplace with real people on both sides. This is unlikely to be a good fit if you’re chasing pure engineering elegance over business and customer outcomes.
This Role Is NOT
- A tech lead in an old-style team. No 45 engineers reporting up to you on technical direction. The team is you + PM + designer + EM, with AI agents doing most of the implementation.
- A management role today. People management is the EM’s job in this role. That said, the path can grow into management for those who want it it’s an open door, not a closed one.
- A platform-only or architecture-only role. You’re a Product Engineer. You ship features that move metrics, end-to-end. Platform work happens inside the initiative when it’s needed for the outcome.
- A “let AI do everything” role. Agents handle implementation grunt work. You handle judgment, design, safety, and accountability. The bar is higher than the old senior bar, not lower.
- A research role. This is shipping to a marketplace with $100M+ in bookings. Customers and pros are using what you ship inside 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
Staff Product Engineer (Belo Horizonte)
This is a remote role for candidates located in Belo Horizonte, Brazil.
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’re restructuring engineering around initiative teams: a Product Engineer paired with a PM and a designer, with an Engineering Manager who covers a couple of initiatives and supports your growth. The engineer leads AI agents like a team, ships the work, and is accountable with the rest of the triangle for whether the initiative moves its metric.
We’re betting that 12 strong engineers running AI agents can outship the labor-team model that defined the last decade of software. That bet only works if the engineers we hire are wired for ownership and can ship to a marketplace with real customers and pros on both sides.
The Role
You’re the engineering anchor of one initiative at a time. The initiative is a team effort an iron triangle of you, your PM, and your designer and you have key participation across the full lifecycle: shaping the problem, deciding the technical approach, leading the AI agents that implement most of the code, shipping to production, and answering for the outcome alongside the rest of the triangle.
You’re accountable for the outcome not for the volume of code merged. If an agent can ship it safely, your job is to make sure the agent does it right and the metric moves. If the initiative needs hand-written code in a sensitive area, you write it yourself.
What makes this role different:
- You lead AI agents, not humans. Claude Code, Cursor, Codex, and our internal agent stack are your team. You own the quality, safety, and velocity of what they produce.
- You own an outcome, not a ticket queue. Problem-framing through production through the metric review 24 weeks after launch.
- You partner horizontally with PM and design. No tech lead above you. No architect approval. No ticket grooming committee.
- The bar is staff, not senior. You make the call when the call needs to be made. If you’re waiting to be told, this isn’t the role.
What You’ll Own
- The technical approach architecture, data model, integration choices, rollout plan, observability, and rollback strategy for your initiative. You make the call, document it, and revisit it if the data says you were wrong.
- Agent-led implementation quality the prompts, guardrails, evals, tests, and review loop that let agents ship safe, correct, production-ready code on your initiative. Most lines will be agent-authored. You’re accountable for them.
- Cross-functional partnership daily working contact with your PM (scope, tradeoffs) and your designer (UX decisions, in-tool prototyping with agents), and weekly check-ins with your EM (initiative health, blockers, growth).
- The initiative outcome the specific metric the initiative was set up to move. In partnership with your PM, you present results 24 weeks post-launch and share the “did it work” answer.
- A high bar for what ships under your name production correctness, security posture, 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 staff-level quality
Most of the code on your initiative will be authored by AI agents. The work is making agents ship as if a senior engineer wrote it: prompts that encode our codebase conventions, evals that catch hallucinations before merge, tests that exercise the edges, observability that catches the regression in production before a customer reports it. How do you build the agent workflow that lets one engineer ship what used to take a team?
Owning an outcome without a tech lead
You don’t have a tech lead to approve your design or an architect to escalate to. You have an EM who covers a couple of initiatives and peers on adjacent ones. How do you make calls fast, document them clearly, and stay accountable to the outcome without slowing down for hierarchy that no longer exists?
Shipping outcomes, not features
The initiative will be measured by a metric a conversion rate, a retention curve, a pro-funnel KPI, a unit economics shift. You’re accountable for the number, not the feature. How do you scope to actually move it, decide what to not build, and have the discipline to follow up 24 weeks after launch even when the next initiative is calling?
What Success Looks Like (Year 1)
- Initiative outcomes hit You’ve shipped 34 initiatives end-to-end, and at least two clearly moved the metric they were set up to move (with the post-launch review to prove it).
- Agent workflow that travels The prompts, evals, and review loop you built for your initiative are adopted by at least one other engineer on an adjacent initiative.
- Cycle time Median time from problem-framing to first production rollout on your initiatives is meaningfully shorter than the pre-restructure baseline.
- Zero “agent-shipped that” incidents No customer- or pro-facing regression traceable to agent-authored code that you missed in review.
- Visible leverage Other engineers point to artifacts you left behind runbooks, evals, agent workflows, post-launch write-ups as references they use.
Who You Are
AI-native. Claude Code, Cursor, Codex, or equivalent are how you ship daily, on production work. You have opinions about prompts, evals, agent loops, MCP servers, and review workflows, and you know when to let the agent run vs. write it yourself. This is unlikely to be a good fit if you describe AI coding as “something you’re exploring” or prefer to write everything by hand.
Already operating at lead level. You may currently be titled Senior, Staff, Lead, or Principal but in practice you’ve been the person making the call, shipping the hard thing, and answering for whether it worked. This is unlikely to be a good fit if you’ve always had a tech lead breaking down the work for you.
Outcome-driven, not output-driven. You measure your week in “did the metric move” and “did the experience get better,” not in tickets closed. You read the post-launch dashboard and you own the answer. This is unlikely to be a good fit if you take pride in volume of code shipped or feel uncomfortable being measured on a number you don’t fully control.
A strong horizontal partner. You hold your own with a strong PM and a strong designer. You bring engineering judgment to product calls and product judgment to engineering calls. This is unlikely to be a good fit if you hide behind “that’s product’s decision” or default to RICE-scoring tickets handed down to you.
Decisive and documented. Architecture decisions, data-model choices, rollout plans you write them down, get fast input, and move. This is unlikely to be a good fit if you wait for consensus on questions that have a clear right answer, or if you make calls and never write them down.
Raises the floor, not just the ceiling. Your impact compounds beyond your own initiative because you leave artifacts agent workflows, evals, runbooks, post-launch reviews. This is unlikely to be a good fit if you’re a lone wolf who ships brilliantly but leaves nothing reusable behind.
Cares about customers and pros. This is a real-world marketplace with real people on both sides. This is unlikely to be a good fit if you’re chasing pure engineering elegance over business and customer outcomes.
This Role Is NOT
- A tech lead in an old-style team. No 45 engineers reporting up to you on technical direction. The team is you + PM + designer + EM, with AI agents doing most of the implementation.
- A management role today. People management is the EM’s job in this role. That said, the path can grow into management for those who want it it’s an open door, not a closed one.
- A platform-only or architecture-only role. You’re a Product Engineer. You ship features that move metrics, end-to-end. Platform work happens inside the initiative when it’s needed for the outcome.
- A “let AI do everything” role. Agents handle implementation grunt work. You handle judgment, design, safety, and accountability. The bar is higher than the old senior bar, not lower.
- A research role. This is shipping to a marketplace with $100M+ in bookings. Customers and pros are using what you ship inside 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
Staff Product Engineer (Porto Alegre)
This is a remote role for candidates located in Porto Alegre, Brazil.
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’re restructuring engineering around initiative teams: a Product Engineer paired with a PM and a designer, with an Engineering Manager who covers a couple of initiatives and supports your growth. The engineer leads AI agents like a team, ships the work, and is accountable with the rest of the triangle for whether the initiative moves its metric.
We’re betting that 12 strong engineers running AI agents can outship the labor-team model that defined the last decade of software. That bet only works if the engineers we hire are wired for ownership and can ship to a marketplace with real customers and pros on both sides.
The Role
You’re the engineering anchor of one initiative at a time. The initiative is a team effort an iron triangle of you, your PM, and your designer and you have key participation across the full lifecycle: shaping the problem, deciding the technical approach, leading the AI agents that implement most of the code, shipping to production, and answering for the outcome alongside the rest of the triangle.
You’re accountable for the outcome not for the volume of code merged. If an agent can ship it safely, your job is to make sure the agent does it right and the metric moves. If the initiative needs hand-written code in a sensitive area, you write it yourself.
What makes this role different:
- You lead AI agents, not humans. Claude Code, Cursor, Codex, and our internal agent stack are your team. You own the quality, safety, and velocity of what they produce.
- You own an outcome, not a ticket queue. Problem-framing through production through the metric review 24 weeks after launch.
- You partner horizontally with PM and design. No tech lead above you. No architect approval. No ticket grooming committee.
- The bar is staff, not senior. You make the call when the call needs to be made. If you’re waiting to be told, this isn’t the role.
What You’ll Own
- The technical approach architecture, data model, integration choices, rollout plan, observability, and rollback strategy for your initiative. You make the call, document it, and revisit it if the data says you were wrong.
- Agent-led implementation quality the prompts, guardrails, evals, tests, and review loop that let agents ship safe, correct, production-ready code on your initiative. Most lines will be agent-authored. You’re accountable for them.
- Cross-functional partnership daily working contact with your PM (scope, tradeoffs) and your designer (UX decisions, in-tool prototyping with agents), and weekly check-ins with your EM (initiative health, blockers, growth).
- The initiative outcome the specific metric the initiative was set up to move. In partnership with your PM, you present results 24 weeks post-launch and share the “did it work” answer.
- A high bar for what ships under your name production correctness, security posture, 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 staff-level quality
Most of the code on your initiative will be authored by AI agents. The work is making agents ship as if a senior engineer wrote it: prompts that encode our codebase conventions, evals that catch hallucinations before merge, tests that exercise the edges, observability that catches the regression in production before a customer reports it. How do you build the agent workflow that lets one engineer ship what used to take a team?
Owning an outcome without a tech lead
You don’t have a tech lead to approve your design or an architect to escalate to. You have an EM who covers a couple of initiatives and peers on adjacent ones. How do you make calls fast, document them clearly, and stay accountable to the outcome without slowing down for hierarchy that no longer exists?
Shipping outcomes, not features
The initiative will be measured by a metric a conversion rate, a retention curve, a pro-funnel KPI, a unit economics shift. You’re accountable for the number, not the feature. How do you scope to actually move it, decide what to not build, and have the discipline to follow up 24 weeks after launch even when the next initiative is calling?
What Success Looks Like (Year 1)
- Initiative outcomes hit You’ve shipped 34 initiatives end-to-end, and at least two clearly moved the metric they were set up to move (with the post-launch review to prove it).
- Agent workflow that travels The prompts, evals, and review loop you built for your initiative are adopted by at least one other engineer on an adjacent initiative.
- Cycle time Median time from problem-framing to first production rollout on your initiatives is meaningfully shorter than the pre-restructure baseline.
- Zero “agent-shipped that” incidents No customer- or pro-facing regression traceable to agent-authored code that you missed in review.
- Visible leverage Other engineers point to artifacts you left behind runbooks, evals, agent workflows, post-launch write-ups as references they use.
Who You Are
AI-native. Claude Code, Cursor, Codex, or equivalent are how you ship daily, on production work. You have opinions about prompts, evals, agent loops, MCP servers, and review workflows, and you know when to let the agent run vs. write it yourself. This is unlikely to be a good fit if you describe AI coding as “something you’re exploring” or prefer to write everything by hand.
Already operating at lead level. You may currently be titled Senior, Staff, Lead, or Principal but in practice you’ve been the person making the call, shipping the hard thing, and answering for whether it worked. This is unlikely to be a good fit if you’ve always had a tech lead breaking down the work for you.
Outcome-driven, not output-driven. You measure your week in “did the metric move” and “did the experience get better,” not in tickets closed. You read the post-launch dashboard and you own the answer. This is unlikely to be a good fit if you take pride in volume of code shipped or feel uncomfortable being measured on a number you don’t fully control.
A strong horizontal partner. You hold your own with a strong PM and a strong designer. You bring engineering judgment to product calls and product judgment to engineering calls. This is unlikely to be a good fit if you hide behind “that’s product’s decision” or default to RICE-scoring tickets handed down to you.
Decisive and documented. Architecture decisions, data-model choices, rollout plans you write them down, get fast input, and move. This is unlikely to be a good fit if you wait for consensus on questions that have a clear right answer, or if you make calls and never write them down.
Raises the floor, not just the ceiling. Your impact compounds beyond your own initiative because you leave artifacts agent workflows, evals, runbooks, post-launch reviews. This is unlikely to be a good fit if you’re a lone wolf who ships brilliantly but leaves nothing reusable behind.
Cares about customers and pros. This is a real-world marketplace with real people on both sides. This is unlikely to be a good fit if you’re chasing pure engineering elegance over business and customer outcomes.
This Role Is NOT
- A tech lead in an old-style team. No 45 engineers reporting up to you on technical direction. The team is you + PM + designer + EM, with AI agents doing most of the implementation.
- A management role today. People management is the EM’s job in this role. That said, the path can grow into management for those who want it it’s an open door, not a closed one.
- A platform-only or architecture-only role. You’re a Product Engineer. You ship features that move metrics, end-to-end. Platform work happens inside the initiative when it’s needed for the outcome.
- A “let AI do everything” role. Agents handle implementation grunt work. You handle judgment, design, safety, and accountability. The bar is higher than the old senior bar, not lower.
- A research role. This is shipping to a marketplace with $100M+ in bookings. Customers and pros are using what you ship inside 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
Staff Product Engineer (Campinas)
This is a remote role for candidates located in Campinas, Brazil.
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’re restructuring engineering around initiative teams: a Product Engineer paired with a PM and a designer, with an Engineering Manager who covers a couple of initiatives and supports your growth. The engineer leads AI agents like a team, ships the work, and is accountable with the rest of the triangle for whether the initiative moves its metric.
We’re betting that 12 strong engineers running AI agents can outship the labor-team model that defined the last decade of software. That bet only works if the engineers we hire are wired for ownership and can ship to a marketplace with real customers and pros on both sides.
The Role
You’re the engineering anchor of one initiative at a time. The initiative is a team effort an iron triangle of you, your PM, and your designer and you have key participation across the full lifecycle: shaping the problem, deciding the technical approach, leading the AI agents that implement most of the code, shipping to production, and answering for the outcome alongside the rest of the triangle.
You’re accountable for the outcome not for the volume of code merged. If an agent can ship it safely, your job is to make sure the agent does it right and the metric moves. If the initiative needs hand-written code in a sensitive area, you write it yourself.
What makes this role different:
- You lead AI agents, not humans. Claude Code, Cursor, Codex, and our internal agent stack are your team. You own the quality, safety, and velocity of what they produce.
- You own an outcome, not a ticket queue. Problem-framing through production through the metric review 24 weeks after launch.
- You partner horizontally with PM and design. No tech lead above you. No architect approval. No ticket grooming committee.
- The bar is staff, not senior. You make the call when the call needs to be made. If you’re waiting to be told, this isn’t the role.
What You’ll Own
- The technical approach architecture, data model, integration choices, rollout plan, observability, and rollback strategy for your initiative. You make the call, document it, and revisit it if the data says you were wrong.
- Agent-led implementation quality the prompts, guardrails, evals, tests, and review loop that let agents ship safe, correct, production-ready code on your initiative. Most lines will be agent-authored. You’re accountable for them.
- Cross-functional partnership daily working contact with your PM (scope, tradeoffs) and your designer (UX decisions, in-tool prototyping with agents), and weekly check-ins with your EM (initiative health, blockers, growth).
- The initiative outcome the specific metric the initiative was set up to move. In partnership with your PM, you present results 24 weeks post-launch and share the “did it work” answer.
- A high bar for what ships under your name production correctness, security posture, 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 staff-level quality
Most of the code on your initiative will be authored by AI agents. The work is making agents ship as if a senior engineer wrote it: prompts that encode our codebase conventions, evals that catch hallucinations before merge, tests that exercise the edges, observability that catches the regression in production before a customer reports it. How do you build the agent workflow that lets one engineer ship what used to take a team?
Owning an outcome without a tech lead
You don’t have a tech lead to approve your design or an architect to escalate to. You have an EM who covers a couple of initiatives and peers on adjacent ones. How do you make calls fast, document them clearly, and stay accountable to the outcome without slowing down for hierarchy that no longer exists?
Shipping outcomes, not features
The initiative will be measured by a metric a conversion rate, a retention curve, a pro-funnel KPI, a unit economics shift. You’re accountable for the number, not the feature. How do you scope to actually move it, decide what to not build, and have the discipline to follow up 24 weeks after launch even when the next initiative is calling?
What Success Looks Like (Year 1)
- Initiative outcomes hit You’ve shipped 34 initiatives end-to-end, and at least two clearly moved the metric they were set up to move (with the post-launch review to prove it).
- Agent workflow that travels The prompts, evals, and review loop you built for your initiative are adopted by at least one other engineer on an adjacent initiative.
- Cycle time Median time from problem-framing to first production rollout on your initiatives is meaningfully shorter than the pre-restructure baseline.
- Zero “agent-shipped that” incidents No customer- or pro-facing regression traceable to agent-authored code that you missed in review.
- Visible leverage Other engineers point to artifacts you left behind runbooks, evals, agent workflows, post-launch write-ups as references they use.
Who You Are
AI-native. Claude Code, Cursor, Codex, or equivalent are how you ship daily, on production work. You have opinions about prompts, evals, agent loops, MCP servers, and review workflows, and you know when to let the agent run vs. write it yourself. This is unlikely to be a good fit if you describe AI coding as “something you’re exploring” or prefer to write everything by hand.
Already operating at lead level. You may currently be titled Senior, Staff, Lead, or Principal but in practice you’ve been the person making the call, shipping the hard thing, and answering for whether it worked. This is unlikely to be a good fit if you’ve always had a tech lead breaking down the work for you.
Outcome-driven, not output-driven. You measure your week in “did the metric move” and “did the experience get better,” not in tickets closed. You read the post-launch dashboard and you own the answer. This is unlikely to be a good fit if you take pride in volume of code shipped or feel uncomfortable being measured on a number you don’t fully control.
A strong horizontal partner. You hold your own with a strong PM and a strong designer. You bring engineering judgment to product calls and product judgment to engineering calls. This is unlikely to be a good fit if you hide behind “that’s product’s decision” or default to RICE-scoring tickets handed down to you.
Decisive and documented. Architecture decisions, data-model choices, rollout plans you write them down, get fast input, and move. This is unlikely to be a good fit if you wait for consensus on questions that have a clear right answer, or if you make calls and never write them down.
Raises the floor, not just the ceiling. Your impact compounds beyond your own initiative because you leave artifacts agent workflows, evals, runbooks, post-launch reviews. This is unlikely to be a good fit if you’re a lone wolf who ships brilliantly but leaves nothing reusable behind.
Cares about customers and pros. This is a real-world marketplace with real people on both sides. This is unlikely to be a good fit if you’re chasing pure engineering elegance over business and customer outcomes.
This Role Is NOT
- A tech lead in an old-style team. No 45 engineers reporting up to you on technical direction. The team is you + PM + designer + EM, with AI agents doing most of the implementation.
- A management role today. People management is the EM’s job in this role. That said, the path can grow into management for those who want it it’s an open door, not a closed one.
- A platform-only or architecture-only role. You’re a Product Engineer. You ship features that move metrics, end-to-end. Platform work happens inside the initiative when it’s needed for the outcome.
- A “let AI do everything” role. Agents handle implementation grunt work. You handle judgment, design, safety, and accountability. The bar is higher than the old senior bar, not lower.
- A research role. This is shipping to a marketplace with $100M+ in bookings. Customers and pros are using what you ship inside 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
Chief Operating Officer
Job Overview
We are looking for a visionary and results-driven Chief Operating Officer (COO) to lead and scale our global operations. This role will be responsible for overseeing the companys day-to-day operations, improving organizational efficiency, and transforming strategic goals into operational excellence. If you have strong leadership capabilities, experience in high-growth technology environments, and a passion for building scalable operational structures, we would love to hear from you.
Key Responsibilities
- Lead and optimize the companys daily operations
- Ensure effective cross-functional collaboration across departments
- Define, monitor, and report operational KPIs and performance metrics
- Translate company strategy into actionable operational plans
- Drive organizational growth and operational scalability
- Work closely with HR, Customer Experience, Technical Operations, and Finance teams
- Lead process improvement and automation initiatives
- Partner with executive leadership to achieve business objectives
- Build and maintain a high-performance operational culture
Qualifications
- Bachelors degree in Business Administration, Engineering, or a related field
- Proven experience as a COO, Operations Director, or similar executive leadership role
- Experience in technology, hosting, SaaS, or internet services industries is highly preferred
- Strong leadership and people management skills
- Strategic thinker with hands-on operational execution capabilities
- Data-driven decision-making mindset
- Excellent communication skills in English
- Minimum 4+ years of executive-level experience in the cloud computing, SaaS, hosting, infrastructure, or related technology industries
- Strong understanding of operational dynamics within high-availability digital service environments
- Experience managing scalable operations in fast-growing technology companies is highly preferred
What We Offer
- Leadership opportunity in a rapidly growing global technology company
- Flexible working model
- Competitive salary and performance-based bonuses
- Opportunity to work with international teams
- Long-term career growth and development opportunities
- Dynamic, innovative, and fast-paced work culture
