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Product.ai

Senior Backend Engineer - Verification Platform

Posted 12 Days Ago
Be an Early Applicant
Hybrid
Los Angeles, CA
280K-500K Annually
Senior level
Hybrid
Los Angeles, CA
280K-500K Annually
Senior level
As a Senior Backend Engineer, you will develop and maintain verification pipelines and agent infrastructure, ensuring systems work efficiently and cost-effectively while handling rapid changes in a scalable architecture.
The summary above was generated by AI
Product.ai is building the truth engine for shopping. Every other AI tool summarizes polluted data and calls it an answer. We verify. Ground truth, not opinions. Profitable. Bootstrapped. No outside investors. No board. 25 people outperforming companies 10x our size. Building something new on top of 16 years of commerce infrastructure.

We're hiring a Senior Backend Engineer, Platform.

Why This Role ExistsProduct.ai's verification engine processes millions of commerce claims against ground truth data. The platform is scaling - more categories, more surfaces, more agents consuming our intelligence. The engineering team needs a senior backend builder who can own the platform layer that makes all of it work: verification pipelines, agent infrastructure, data models, and the systems that keep truth fresh.

The System You'll Need to Model
  • A verification pipeline that cross-references merchant marketing claims against specs, reviews, and transaction data. Latency, throughput, and accuracy are in tension - you'll navigate those tradeoffs daily.
  • Agent infrastructure where AI agents consume verified knowledge via MCP and API. Each agent has different context budgets, latency requirements, and trust thresholds. The platform must serve them all.
  • A cost-aware compute layer. Every LLM call has a dollar cost. You'll own the per-query cost ledger, KV-cache hit rate optimization, and the thin LLMAdapter interface that lets us swap providers without rewriting the stack.
  • A system under rapid evolution. New categories, new agent patterns, new verification methods ship weekly. Your architecture must absorb change without accumulating debt.
If you think in systems, constraints, and tradeoffs - not just features - keep reading.

What You Will OwnVerification infrastructure. The pipelines that ingest raw product data and transform it into verified knowledge. Cross-referencing marketing claims against ground truth at scale. You own correctness, freshness, and cost.

Agent-serving platform. The API and MCP layer that delivers verified intelligence to AI agents and consumer surfaces. Schema design, rate limiting, context-window-aware response shaping. You'll build what agents trust.

The LLMAdapter and cost architecture. A thin interface that pins model versions, manages provider portability, and instruments per-PR cost impact. Every PR you review includes a cost delta. You'll own the seven-component verification dashboard that makes this visible.

Who You AreHow you think. You reason about systems in terms of invariants, failure modes, and tradeoffs - not features. When something breaks, your first instinct is "what's the structural cause?" not "what's the quick fix." You write specs before code and tests before implementations. You think about what happens at 10x the current scale.

How you work. You ship code that other engineers can read, extend, and trust. You review PRs for cost impact, not just correctness. You build thin abstractions that earn their complexity. AI is part of your workflow - you use Claude Code or Cursor to accelerate, but you verify what they produce. You've maintained systems in production where your decisions had real cost and reliability consequences.

What you've probably built. Data pipelines, API layers, verification systems, or ML-adjacent infrastructure at meaningful scale. You've operated what you built - not just shipped it and moved on. You can name the on-call incident that taught you the most. We care about the system and the reasoning, not where you built it.

Who this isn't for. This role is wrong if you mainly want to work on greenfield features without owning operations. It's wrong if "that's the infra team's problem" is part of your vocabulary. It's wrong if you prefer thick abstractions and framework-driven development over thin, purpose-built systems. You'll thrive here if you like owning the full stack from schema to deployment to cost monitoring.

How We EvaluateWe don't run whiteboard coding interviews.

  • Written artifact. Share something you've built - a system design doc, a PR you're proud of, a production architecture you own. Writing quality matters.
  • Video screen. Short async responses showing how you think about systems and tradeoffs.
  • Conversation with the founder. How you reason about architecture, cost, and reliability at scale.
  • Paid work trial. 4 days working on a real Product.ai engineering problem. You'll ship code that goes to production. We pay your rate.
Compensation & OwnershipTotal first-year comp: $400,000 - $500,000 (base + equity + profit sharing).

Base: $280,000 - $340,000. Top of market.

Equity: Profits Interest Units (PIUs) - Class B Membership Interests at $0 strike price. Actual ownership from day one. Capital Gains tax treatment.

Profit sharing: Annual pro-rata share of free cash flow. Real cash every year, not a promise tied to an exit.

Liquidity: Annual tender offer - turn ownership into cash every year. No waiting for an IPO.

Benefits: 100% premium coverage for you and your family. Unlimited PTO that we actually use.

Based in Santa Monica. Hybrid, with flexibility. For the right builder, we're open to remote.

ApplyApply here: https://product.ai/join/senior-backend-engineer

Include your strongest written artifact - a system design, a PR, an architecture doc. Something that shows how you think about systems, not just how you write code.
#BI-Hybrid

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