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LawnStarter

Senior Product Manager, Pricing

Posted Yesterday
Remote
Hiring Remotely in United States
140K-185K Annually
Senior level
Remote
Hiring Remotely in United States
140K-185K Annually
Senior level
Own and build a unified pricing and monetization platform: design pricing API and data product, migrate three legacy pricing systems, define pricing strategy for 24+ services, enable bundles/add-ons, and launch an experimentation framework to measure conversion, margin, and Pro economics in partnership with engineering and data.
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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 Pricing at LawnStarter

Upfront pricing is our competitive moat. Most home service marketplaces make you find a Pro and wait for a custom quote. LawnStarter gives customers a price immediately and assigns a Pro. That's a huge differentiator — but it means we have to get pricing right at scale for services where the industry norm is custom quotes for everything.

That tension — seamless upfront pricing vs. inherently custom work — is what makes this domain both critical and uniquely challenging. Today, pricing is split across three fragmented systems with no dedicated owner.


Requirements

The Role

You'll own the full pricing and monetization domain — from the infrastructure that powers every price we show to the strategy that determines what we charge, how we bundle, and where we expand.

This is a transformation role. We're migrating from three disconnected pricing paradigms to a unified dynamic pricing system. The roadmap has 11 priorities, a dedicated engineering team, and no full-time product owner.

What makes this role different:

  • You own the entire pricing domain: Not a slice of pricing alongside other PM work. Pricing infrastructure, dynamic pricing strategy, new revenue models, service availability — all yours.
  • Strong data team partnership: A data team owns pricing models and analytics. You define what to optimize. They figure out how. You don't build models — but you speak the language fluently.
  • Infrastructure-first sequencing: The big pricing gains require a new pricing API and data product first. You need to be the PM who gets energized by building the foundation, not frustrated by it.

What You'll Own

  • Dynamic pricing roadmap: Migrate three legacy pricing systems to a unified pricing service. Sequence the 11-priority roadmap, make tradeoff calls, and ship.
  • Pricing strategy: Define pricing for 24+ services across mowing, non-mowing, and emerging verticals. Balance conversion, margin, and Pro economics.
  • New revenue models: Unlock bundles, add-ons (e.g., "bag my clippings"), channel discounts, and frequency-based pricing — none of which exist today.
  • Service availability: Determine where and when we offer services based on supply, demand, and profitability signals.
  • Experimentation framework: Stand up A/B testing for pricing changes, measuring impact on conversion, margin, and Pro claim rates.

Problems to Solve

Three pricing systems that can't talk to each other. Pre-priced tables (1.8M+ rows of static lookups), instant quote logic (hardcoded per-service rules across APIs), and manual Pro quotes. None can combine location + frequency + brand + supply-demand into one decision. You'll architect the migration to a unified system without breaking pricing that 100K+ customers rely on today.

Mowing is 90%+ of revenue and stuck on static pricing. Our biggest service can't apply dynamic variables like supply tightness, seasonal demand, or channel discounts. A $3 price change swings conversion by ~10%. You'll partner with the data team to build pricing intelligence into mowing without destabilizing the core business.

24+ services need to migrate, each one different. Bush trimming, pool cleaning, landscaping, leaf removal — different pricing variables, ordering flows, customer expectations. You'll define the migration sequence and determine which services get dynamic pricing vs. simplified models.

No bundles or add-ons exist. Customers can't bundle services for a discount or add options to their mowing — a major untapped revenue and retention opportunity. You'll design the pricing architecture that makes bundling possible.

What Success Looks Like (Year 1)

  • Pricing API/service shipped and live — Replaces at least one legacy paradigm with a clear path to consolidating the others
  • Mowing on dynamic pricing — Core service running on the new system with measurable margin or conversion impact
  • Experimentation framework operational — Team can A/B test pricing changes and measure impact within days, not months
  • Bundle/add-on architecture defined — System design complete and engineering building, even if not yet live

Who You Are

AI-native. You use AI daily — scenario modeling, pricing analysis, data exploration, drafting specs. You push AI into parts of your workflow others haven't thought of yet. This is unlikely to be a good fit if you view AI as a novelty rather than a core productivity lever.

A systems thinker who architects platforms, not just sets prices. You see pricing as a system: inputs, rules, feedback loops, edge cases. You can design a pricing architecture that handles 24 services across 3 brands with different economics — and explain it to an engineer in a way they can build. This is unlikely to be a good fit if your pricing experience is limited to spreadsheets or optimizing a single product's price point.

Data-informed, not data-dependent. You partner with the data team to define what to optimize and interpret results. You know when the data is insufficient and a judgment call is needed. This is unlikely to be a good fit if you either ignore data or refuse to move without perfect information.

Technically fluent. You work directly with engineers on API design, discuss schema tradeoffs, and review technical design docs with real feedback. You don't write code, but you earn engineering's trust by speaking their language. This is unlikely to be a good fit if you treat engineering as a black box or need everything translated into business terms.

A patient builder. The pricing gains require infrastructure first — a pricing API, a data product, migration tooling. You're energized by building the foundation, not frustrated that the payoff isn't immediate. This is unlikely to be a good fit if you need quick wins to stay motivated or lose interest when the work is foundational.

Monetization-minded. You see bundles, add-ons, service availability, and frequency pricing as revenue levers, not just features. You naturally think about margin, willingness to pay, and Pro economics. This is unlikely to be a good fit if you think of pricing as a one-time decision rather than an ongoing optimization problem.

This Role Is NOT

  • A quick-wins role. Massive technical debt (1.8M-row pricing tables, hardcoded logic across APIs). The pricing API and data product must be built before dynamic pricing gains materialize. If you need visible impact in 90 days, this will be frustrating.
  • A solo act. Every pricing change touches engineering, data, sales, and support. If you prefer autonomous execution with minimal coordination, the dependency load here will feel heavy.
  • A data science role. You partner closely with the data team, but you're not building pricing models. If you want to spend your days in notebooks running regressions, this isn't the right fit.
  • An optimization-only role. You're building a pricing system from scratch while keeping the current ones running. If you prefer optimizing within an established framework, the ambiguity here will be uncomfortable.

Benefits

Compensation & Benefits

  • Base salary: $140,000 – $185,000
  • Equity: Pricing decisions directly impact revenue, margin, and conversion at scale. We want you invested in the long-term outcome of the system you're building.
  • Healthcare: Medical, dental, and vision
  • Fully remote: Pricing work requires deep analysis and focused thinking. We trust you to manage your environment.
  • Flexible PTO: We focus on results. Take what you need.

LawnStarter provides equal employment opportunities (EEO) to all employees and applicants for employment without regard to race, color, religion, sex, national origin, age, disability, or genetics. We comply with applicable state and local laws governing nondiscrimination in employment.

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