
Compensation
Salary undisclosedDescription
Company Overview:
We are building Protege to solve the biggest unmet need in AI — getting access to the right training data. The process today is time intensive, incredibly expensive, and often ends in failure. The Protege platform facilitates the secure, efficient, and privacy-centric exchange of AI training data.
Solving AI’s data problem is a generational opportunity. We’re backed by world-class investors and already powering partnerships with some of the most ambitious teams in AI. The company that succeeds will be one of the largest in AI — and in tech.
We’re a lean, fast-moving, high-trust team of builders who are obsessed with velocity and impact. Our culture is built for people who thrive on ambiguity, own outcomes, and want to shape the future of data and AI.
About Protege
We are building Protege to solve the biggest unmet need in AI — getting access to the right training data. The process today is time intensive, incredibly expensive, and often ends in failure. The Protege platform facilitates the secure, efficient, and privacy-centric exchange of AI training data.
Solving AI’s data problem is a generational opportunity. We’re backed by world-class investors and already powering partnerships with some of the most ambitious teams in AI. The company that succeeds will be one of the largest in AI — and in tech.
We’re a lean, fast-moving, high-trust team of builders who are obsessed with velocity and impact. Our culture is built for people who thrive on ambiguity, own outcomes, and want to shape the future of data and AI.
Role Overview
We're hiring a Product Manager to own the supply side of Protege's data platform — the pipeline that takes raw data from a partner and turns it into something catalog-ready, trustworthy, and usable. Right now, that process is manual, inconsistently applied, and a source of delivery risk. Your job is to change that.
This is a horizontal platform role, not a vertical one. You own the infrastructure that makes data trustworthy enough to build products from in the first place: the validation gates, the metadata generation pipelines, the QA standards, the de-identification transformations, and the catalog-readiness criteria that let the rest of the organization actually trust what's in our catalog.
You'll work across healthcare, media, and any other vertical we enter. You'll write SQL, review pipeline outputs, define what "good" looks like at each stage of ingestion, and translate those standards into platform requirements that engineering can build against.
The supply side is where data quality is won or lost. If this layer isn't working, nothing downstream works. It's foundational, largely invisible to customers, and one of the most important things we can build.
What you'll work on
Ingestion pipeline product: define the stages, validation gates, and quality checks that data passes through from partner arrival to catalog-ready; own the platform requirements that make this repeatable across modalities and verticals
Metadata generation: own the product decisions around what metadata gets extracted or generated at ingestion, including transcripts, tags, confidence scores, schema inference, at what threshold, and how it gets stored and surfaced
QA standards and tooling: define what "catalog-ready" means, build the tooling that enforces it, and get into the data directly to validate that standards are being met; you’ll run queries and review pipeline outputs, not just read dashboards
Cross-vertical consistency: work with vertical stakeholders to translate their "what does ready mean for our vertical" requirements into consistent platform-level standards that don’t require custom engineering per deal
What Success Looks Like
30 days: Ramp: Build a clear understanding of Protege’s current data ingestion workflow, including how raw partner data moves from arrival to catalog-ready. Get hands-on with pipeline outputs, schemas, metadata, validation checks, and QA processes so you understand where quality risk shows up in practice. Build context with engineering, vertical stakeholders, GTM / delivery, and DataLab on where ingestion quality is most manual, inconsistent, or risky today.
60 days: Take Ownership: Own the first clear version of what “catalog-ready” means across the ingestion pipeline, including validation gates, metadata requirements, QA standards, and readiness criteria. Translate the highest-priority ingestion quality gaps into product requirements engineering can build against.
90 days: Operate Independently: Own the roadmap for improving ingestion quality, metadata generation, QA tooling, de-identification workflows, and catalog readiness. Create a repeatable operating rhythm for reviewing pipeline outputs, quality signals, and ingestion risks with the right cross-functional partners
What we're looking for
4–7 years of PM experience where the core product was a data pipeline, data quality system, or data ingestion platform — you’ve owned the "raw data in, trusted data out" problem before
Hands-on technical depth — you can write SQL, read pipeline logs, spot a schema mismatch, and understand the tradeoffs in a data validation architecture; you look at data directly to verify things are working, not just at metrics
Experience with external data — you’ve worked on a product that ingested messy, inconsistently formatted data from third-party partners and had to make it trustworthy; you know what that problem actually feels like
Build-versus-partner judgment — you’ve made vendor decisions in a fast-moving technical domain; you know how to evaluate a tool against requirements that will change, and how to structure relationships that preserve flexibility
Cross-functional credibility — you’ll be writing requirements that multiple engineering teams and vertical PMs depend on; you can hold a technical conversation and a product conversation in the same meeting
Nice to have:
Experience with data quality frameworks, metadata standards, or catalog tooling, including dbt, Great Expectations, data contracts, or similar
Familiarity with de-identification approaches for sensitive data — PHI, PII, or confidential enterprise data
Background in healthcare data operations, financial data infrastructure, or any domain where data quality has real downstream consequences
Exposure to ML training pipelines or AI data workflows, where data fitness affects model outcomes
Experience with data governance strategies
What this is not
This is not a role for someone who has primarily owned data products from the customer side — analytics dashboards, BI tooling, or data visualization. The product here is the pipeline and the infrastructure, not the interface on top of it. If you haven't actually dug into raw data files to find out why a pipeline produced the wrong output, this is probably not the right fit.
Protege Values
Pass the Loved Ones’ Test
We act with integrity and do the right thing — especially when it’s hard and no one is watching.
Always Find a Way
We are resourceful, resilient builders who solve hard problems and push through obstacles.
Go Fast and Grow Fast
Velocity matters. We move with urgency, learn quickly, and continuously improve as individuals and as a company.
Practice Kindness and Candor
We communicate directly and respectfully, building trust through honest feedback and genuine care for one another.
Deliver Together
We win as one team. Collaboration, accountability, and shared ownership drive our success.
Own the Outcome. Hone the Craft.
We take pride in our work, sweat the details, and continuously raise the bar for excellence.
Stack
- Posted
- Unknown
- Last seen
- Jul 7, 2026
- First seen
- Jul 7, 2026



