Founding AI Engineer
Own agent loops, context, and evals for reliable autonomous accounting.
Location:NYC - On-site
Employment type:Full-time
Compensation:$220K - $340K base | Significant equity | Performance bonus
About Specter
Specter is building an autonomous accounting system that can be deployed at every company. Our agents run payables, receivables, reconciliations, and the close for finance teams that have spent decades duct-taping spreadsheets to legacy ERPs.
The hard part of this problem isn't language models - it's context. Every company books revenue differently, codes expenses differently, and defines "done" differently. The accountant who's been doing the work for ten years has all of this in their head. Specter builds the systems that capture it, structure it, and let agents act on it correctly. Our platform learns each customer's data, processes, and rules over time, so the work our agents do is the work a senior accountant would actually sign off on.
We're a small, dense team in NYC. VC-backed, real customers, real revenue, zero churn so far. Accounting is fundamental to every company in the world, and we intend to build the system that handles it end to end.
The role
Autonomous accounting is not a wrapper problem. It's an agent problem, a context problem, and an evaluation problem all at once, and the team that solves it will be the one that treats those as engineering work, not prompt engineering work. This role is for someone who wants to own that.
You'll work on the agent loop, the context systems that feed it, and the infrastructure that lets our agents act on real general ledgers without breaking them. The hardest technical problems at Specter live here: how do you give an agent enough understanding of a specific company's books to make a defensible decision, how do you measure whether that decision was actually right, and how do you make the whole thing better every week.
What you'll do
- Design agent architectures for accounting workflows where the cost of a wrong decision is measured in dollars, not impressions. Reconciliations, journal entries, AP coding, revenue recognition, accruals, intercompany.
- Build the systems that capture each customer's domain knowledge - chart of accounts, recurring patterns, approval rules, exceptions - and make it retrievable in the right shape at the right moment.
- Develop evals that predict production behavior using customer-specific fixtures, acceptance criteria, and controller review outcomes alongside generic benchmarks.
- Turn promising AI research into constrained production experiments behind eval gates, audit trails, and customer-specific acceptance tests. The feedback loop from idea to customer is short, and you control most of it.
- Set the technical direction for how Specter's agents reason, retrieve, verify, and improve over time. Decisions made in this role compound.
What we look for
- Deep familiarity with modern LLM systems: tool use, retrieval, fine-tuning, structured output, agent loops. You don't need a PhD; you need taste and the ability to tell a working idea from a marketing idea.
- Strong fundamentals. You can reason about distributed systems, data modeling, latency, and cost, not just prompts.
- A track record of shipping. Research papers are great; production systems other people depend on are better.
- Comfort with ambiguity. The right architecture for autonomous accounting is not in a blog post yet, and the person we hire here is part of how it gets figured out.
Nice to have
- Background in finance, accounting, audit, or any domain where correctness is non-negotiable and "looks plausible" is a failure mode.
- Open-source contributions to agent, retrieval, or eval frameworks.
- Experience designing systems that learn from human feedback in production.
Interested in joining? Apply now
Complete the short application and attach your resume. Links to work you are proud of are more useful than a polished cover letter.