Skip to content

Product Manager, AI Models

San Francisco, CAProduct ManagementOnsite
Summary

Leads AI Research and Enablement roadmap, making build vs. buy decisions for models, owning evals strategy, and optimizing infrastructure for AI-powered video editing features. Requires 4+ years PM experience with 1-2 years in AI/ML products and technical understanding of ML systems.

About the role

What You'll Do

Strategic Prioritization

  • Make build vs. buy decisions: Evaluate when to train our own models vs. integrate third-party solutions based on market gaps, competitive advantage, and ROI
  • Balance research investment: Allocate team resources between long-term research bets, feature work, and maintenance
  • Guide research direction: Use product insight to inform what the team trains and develops; use research understanding to guide product direction

Evals & Quality

  • Own the evals strategy: Design evaluation frameworks that are productionized and tied to real user needs, not just academic metrics
  • Drive quality standards: Establish quality bars for 1P and 3P models before they ship to users
  • Build feedback loops: Instrument data pipelines to continuously learn from user behavior and improve model performance

Cross-Functional Orchestration

  • Partner with product teams: Advise on which models or architectures are best suited for specific features over time
  • Enable fast iteration: Build infrastructure and processes that let product teams experiment with AI capabilities quickly
  • Manage dependencies: Coordinate research timelines with product roadmaps and feature launches

Cost & Infrastructure

  • Optimize COGS: Make strategic decisions on model selection, caching strategies, and infrastructure to balance quality, latency, and cost
  • Scale research infrastructure: Ensure the team has the DevEx, training infra, and tooling to move fast

Required Experience

Product Sense

  • 4+ years of product management experience, with at least 1-2 years working on AI/ML products
  • Track record of making sound build vs. buy decisions in the AI space
  • Experience balancing research exploration with shipping product value
  • Ability to translate technical capabilities into user-facing product features

Technical Foundation

  • Understanding of modern ML/AI systems and LLMs (you don't need to write the code, but you need to understand the tradeoffs)
  • Experience shipping AI/ML products to production at scale
  • Experience with evals frameworks, model training pipelines, and inference infrastructure
  • Understanding of ML cost structures (training compute, inference costs, token economics)

Cross-Functional Leadership

  • Experience working with research teams and helping them focus on high-impact work
  • Track record of partnering with engineering teams on infrastructure and platform work
  • Comfortable operating in ambiguity and setting direction when the path isn't clear

Skills & Competencies

  • Can articulate a multi-year vision while executing on near-term priorities
  • Uses data (evals, user feedback, cost metrics) to shape proposals and drive alignment
  • Designs experiments and A/B tests to validate hypotheses
  • Comfortable with SQL, experimentation platforms, and analytics tools
  • Writes clear decision documents with explicit tradeoffs, pros/cons, and alignment dates
  • Can explain complex technical concepts to non-technical stakeholders

What Sets Apart Great Candidates

  • Understand research team dynamics
  • Deeply curious about AI
  • Comfortable with infrastructure work
  • Balance user empathy with technical constraints

Compensation

Base salary range: $171,000 - $235,000/year

Skills
AI ResearchMachine LearningLLMsMLOpsEvaluation FrameworksTTSAudio/Video ModelsInference InfrastructureData PipelinesGenerative AI