Location: San Francisco, CA or Phoenix, AZ (In-Office)
Partnership: EQL Tech has been exclusively retained by a high-growth technology startup to appoint a mission-critical AI Engineer to own the brand feel of the company and the movement they're building.
About the Company & The Mission
EQL Tech is proud to represent a highly ambitious, well-funded startup that has raised $16M from top-tier VCs and angels. The company is building the financial rails to help families access new State education funds (known as ESAs or School Choice Funds).
The $900B US Public Education budget is being opened up for parents to take control of their portion, which averages $7.5k per kid per year. Ambitious homeschool parents are already using these funds to piece together their dream education experience. Helping them access these funds is Step 1 in the journey to build the next-gen education system. The company treats this as their life's work and has already rejected an acquisition offer because they care about this being done right.
The Team
You will be joining an in-person company, working together in the office.
The Founders:
The founders are engineers who have run their own alternative school together. One previously worked as a Quant at Goldman Sachs, and the other built the computer vision system for the largest smart warehousing company globally, serving 1M customers/day at age 19.
The Core Team:
You will work alongside top talent, including a founding engineer who did AI research at MILA and at Elon Musk's SpaceX school, a Head of Risk from Mercury, Stripe, and Circle, and a Payments Engineer from Microsoft and Goldman Sachs. The team also includes the former Deputy Director at Arizona's ESA department and leading school choice advocates.
The Role: AI Engineer
As AI Engineer, you will work directly under the Head of AI a researcher with experience at one of the world's leading ML research labs to build and ship the intelligence layer that powers the product. AI is not a feature here; it is the core of how families get instant eligibility decisions, and how the company scales compliance without scaling headcount. You will own AI products end-to-end, from first prototype to production.
As AI Engineer, you will:
Build MVPs from scratch:
take new AI products from zero to real users both consumer-facing and internal tooling with minimal hand-holding and a high bar for quality
Optimise accuracy and latency:
tune LLM and VLM pipelines, and classical ML models where appropriate, to meet the standards a regulated fintech product demands
Create robust evals:
build evaluation frameworks that make AI behaviour measurable, reproducible, and improvable over time so regressions are caught before users feel them
Read data and fix mistakes:
diagnose real-world AI failures by going directly into the data, making ad-hoc corrections, and closing the loop fast
Build endpoints and tooling:
surface AI capabilities to teammates in reliable, well-documented ways so the whole team can move faster without depending on you for every query
Work across the full AI stack:
primarily LLM and VLM-based in early stages, with scope to fine-tune or train models from scratch as individual products mature and optimisation demands it