Head of Applied AI, Marketing Data Science

GILPIN-CASTELLI INVESTMENTS, INC.
Jackson Township, United States of America
18 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior
Compensation
$ 180K

Job location

Remote
Jackson Township, United States of America

Tech stack

Artificial Intelligence
Google BigQuery
Customer Data Management
Python
Marketing
Pattern Recognition
SQL Databases
Production Code
Marketplace

Job description

We're empowering small teams with technology that makes it easier to market and grow businesses. Our current focus is to help consumer brands shift from "workflow automation" to "agent management" within their marketing operations. Shadow is the AI coordination layer - providing shared AI memory, centralized agent control, and model orchestration for marketing teams., * Product Ownership You'll ship production code daily and help steer key product and technical decisions.

  • Shape the Engineering Culture You'll influence how we work-tools, processes, standards, and hiring.
  • Work with Challenger Consumer Brands Talk directly to customers (CEOs, CMOs, VP's) of fast-growing consumer brands-some doing $80M-$500M in revenue., Part senior growth marketer, part data scientist, part applied-AI builder - you turn the way elite marketers think into the data models, metrics, and schemas that power Shadow's intelligence layer. You report directly to the CEO of Shadow., * Design the analytical models and metric logic the agent reasons with - contribution margin (CM3), acquisition truth (aMER, NCAC), cohort LTV/payback, ad spend efficiency and marginal-return analysis, incrementality testing (geo lifts, conversion-lift, MMM calibration) - from raw platform data to decision-ready insight.
  • Define the schemas that encode marketing tradecraft: how creative, channel, financial, and customer data connect into a queryable picture of a brand.
  • Own accuracy and judgment - what's load-bearing vs. noise, where attribution lies, how to compute metrics that survive operator scrutiny.
  • Spec the model; partner with data eng to build the pipeline and the AI team to wire it into agent skills., * Familiarity with modern warehouse/analytics stacks (BigQuery, dbt) - enough to design schemas and collaborate with eng.
  • Agency or multi-brand background (pattern recognition across accounts).
  • Built attribution models, forecasting/MMM, or internal analytics dashboards.

Culture fit

  • You're a power AI user. You've embedded AI into every workflow you touch and you think in systems - not one-off prompts, but repeatable structures that compound.
  • Entrepreneurial. You don't need much direction to move fast, you pivot when the situation demands it, and what you ship is production-grade, not a prototype you hand off for someone else to finish.

Requirements

Do you have experience in Statistics?, * Ran growth at one or more high-growth DTC / omni-channel consumer brands - you've managed paid media tactically, not just supervised people who did.

  • Fluency across the full marketing mix (Meta + Google, plus TikTok, email/SMS, marketplace, organic) - you think in MER/CM/LTV, not platform ROAS.
  • Real data science chops: SQL + Python/notebooks, statistical reasoning, building and validating metric models against messy real-world data.
  • Ability to translate between marketer intuition and rigorous structure - and a strong opinion about which metrics actually matter.

Benefits & conditions

Pulled from the full job description

  • Vision insurance
  • Dental insurance, * Competitive salary (roles, responsibilities, and comp grow as we do)
  • Top-tier health, vision, dental insurance (US)
  • Regular team off-sites
  • Regular hack weeks, Yearly compensation for this role is $180,000. Actual compensation will be determined based on experience, skills, and qualifications. This role is also eligible for performance-based compensation. A summary of benefits is listed above.

About the company

Shadow is built alongside Darkroom - a performance marketing agency that's been operating for 10 years, employs 100+ people, runs 100+ clients at a time, and has worked with over 1,000 consumer brands. That's our edge: Shadow isn't a generic AI wrapper, it's a decade of real campaign tradecraft being codified into a system. Darkroom is both our proving ground and our first user. This role plugs directly into that knowledge and turns it into product.

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