AI Growth Architect - Fashion

Hilbert's AISan Francisco, CA

About The Position

Hilbert is a scalable, data science-first growth engine that gives B2C teams predictive clarity into user behavior, revenue drivers, and the actions that drive sustainable growth. Fully agentic by design, Hilbert shrinks months-long decision cycles to minutes. From Fortune 10 enterprises to beloved brands like FreshDirect, Blank Street, and Levain Bakery, operators run their growth on Hilbert. We're also co-building alongside leading AI companies. A small, select group of growth operators sit at the core of our company. These minds shape how Hilbert's intelligence layer evolves, how customers grow, and how the company goes to market. THE ROLE Your responsibilities look like those of a founding operator embedded simultaneously inside a high-stakes product and commercial organization. You run Hilbert on real problems: you are expected to be its most demanding internal user, finding where the product's reasoning breaks down, challenging its outputs, and feeding that back into the intelligence layer as structured improvement input.

Requirements

  • Tackled a real fashion growth problem and changed outcomes that matter.
  • Owned a growth outcome that was genuinely at risk, not a function that was already working: a post-season retention problem, a new-customer payback period that was not closing, a loyalty cohort that was not coming back
  • Understand the fashion purchase cycle at a structural level: the role of new-season drops, markdown strategy and its downstream effects on LTV, the difference between trend-driven and wardrobe-building customers
  • Deep, earned fluency in fashion-specific growth mechanics: category and style propensity, seasonal reactivation, subscription and membership models in fashion, influencer and brand-event driven acquisition against LTV
  • Think in systems: how acquisition mix shapes retention cohort quality, how discount dependency compounds into a structural LTV problem, how omnichannel data gaps distort what your models see
  • Believe in measurability to the maximum: default to testing and learning, to algorithms over human-defined rules, to letting data surface structure rather than imposing it
  • Comfortable working alongside AI systems and have strong judgment about where human pattern recognition still wins, especially in a domain where emotional and aesthetic drivers interact with behavioral data
  • Can describe a fashion growth failure with the same precision as a win
  • Believe there are fundamental problems with how the fashion industry has thought about customer growth, and are ready to rebuild it

Responsibilities

  • Run Hilbert on fashion industry’s growth problems, identify where its reasoning can do better, and translate those findings into structured input for the intelligence layer in coordination with product and tech teams
  • Translate hard-won growth experience into the patterns, failure modes, and counter-intuitive signals that shape how the product detects, reasons, and acts on apparel-specific behavior
  • Work with Account Executives to turn Hilbert's output into concrete growth strategies for key accounts, from seasonal cohort analysis to category cross-sell intervention to paid channel reallocation around collection launches
  • Follow customer's growth with Hilbert, own the consequences with Hilbert
  • Represent Hilbert in high-stakes GTM conversations as its most credible voice on what B2C fashion growth actually requires
© 2026 Teal Labs, Inc
Privacy PolicyTerms of Service