AI summary: Full-stack engineer builds AI-powered infrastructure and agentic systems for VC/PE clients, from architecture to production deployment using LLMs, RAG, and React/FastAPI.
We are an AI-native data and technology partner for private capital and healthcare. Founded in 2010 and headquartered in Warsaw, we work with leading PE firms, VC funds, and healthcare organizations to build proprietary data infrastructure, deploy AI solutions, and drive AI-native transformation.
Our clients manage a cumulative $1.2T+ in assets. Our average engagement runs five years. Our NPS sits above 80. We donât need to claim credibility â we can show it.
Weâve also done to ourselves what we now do for clients. Weâve restructured our own company around AI â tools, policies, roles, delivery models. This isnât a pitch. Itâs a playbook weâve already run, and weâre hiring the engineers who will run it for others.
Role: AI-Native Engineer (Full-Stack / Agentic AI Engineer)
Location: Remote / Hybrid (Warsaw)
Role Type: Individual Contributor / Hands-on Delivery
The Opportunity
Every VC firm is looking at the same data. Every PE operating partner is sitting on portfolio companies running manual processes that AI could automate tomorrow. The edge is no longer in having more data - itâs in building proprietary infrastructure that extracts signals faster than anyone else.
Thatâs what we build. And we need an engineer who builds it the same way we do: AI-first, production-grade, and with genuine ownership of outcomes â not demos.
Important note: Youâll be embedded in client projects at VC and PE firms, owning delivery end-to-end: from architecture conversations with a GP to agentic pipelines running in production. Youâll work directly with the CEO and client stakeholders â this is a small team making real decisions, not a layer of Jira tickets.
Your Mission (The âWhatâ)
Your primary goal is to build AI-powered infrastructure that gives VC and PE clients a genuine edge â proprietary systems that extract signals, automate decisions, and compound in value over time.
Key Responsibilities:
From quick experiments to full production deployments â you know when to move fast and validate, and when to engineer for scale. Real clients depend on these systems to make investment decisions.
Who You Are (The âFitâ)
We are not looking for someone who demos LLMs at hackathons. We need a production-focused engineer who thrives in ambiguity and ships systems that clients run their businesses on.
You are the ideal candidate if:
Why This Role?
Frontier Work, Not Filler: You arenât building another chatbot. Youâre designing AI systems that power investment decision-making and portfolio analytics for serious VC and PE firms.
Real Autonomy: Once aligned on goals, you own delivery end-to-end. No process layers between you and the work. You are the conductor of your AI coding stack and the architect of your workflow.
Senior Collaboration: Youâll work directly with the CEO and client stakeholders â technical strategy conversations with people who can execute on them. Small team, real decisions, no filler meetings.
Upside Tied to Output: Compensation is uncapped in the ways that matter â your impact on client outcomes directly shapes what you earn and how fast you grow here.
Must-have: Proven, hands-on experience shipping production AI/LLM systems used by real users â not an internal demo or hackathon project.
Must-have: Advanced proficiency in an AI-native coding workflow â Claude Code, Cursor, Codex, or alternatives as your primary development environment, not a plugin you occasionally enable.
Expertise in at least one domain with broad proficiency across the entire stack (infrastructure, backend, data, frontend). Preferred stack: Terraform, Python, Snowflake, React.
Hands-on with LLM APIs, prompt engineering, RAG systems, and agentic frameworks (LangChain, LangGraph, CrewAI, Agno, or equivalent).
Strong spoken and written English â you communicate complex technical trade-offs clearly to both engineers and non-technical stakeholders.
Ability to run AI initiatives with limited support from our inhouse experts, from discovery to delivery, often across multiple client engagements in parallel.
Experience in fintech, private capital (VC/PE), or healthcare data systems is a strong plus.
Familiarity with data engineering stacks (Snowflake, dbt, Airflow, AWS data services) is a strong plus.
Unrestricted AI Stack & Premium Gear: Fully paid licenses for Cursor, Claude Pro, etc.
Total Autonomy (Remote-First): No filler meetings, no Jira bloat, no micromanagement. You own the workflow. We care about shipped systems in production, not logged hours.
Direct Impact: Youâll work face-to-face with our CEO, CTO & VPs and VC/PE General Partners.
Frontier Engineering Culture: Build alongside elite engineers who are shipping systems that drive real investment decisions. Backed by continuous growth and a strong knowledge-sharing culture (check our YouTube).
Sounds like a perfect place for you? Donât hesitate to click apply and submit your application today!