ML Engineer / LLM Specialist
Applied Researcher · Mid to Senior · Full-time · Remote / Hybrid (Warsaw or Cracow)
About Unabyss
We're building Unabyss - the universal context layer for AI. Users store all their context (background, expertise, preferences, goals) in one place, and any AI tool can access it via MCP and APIs. The user controls what gets shared, with whom, at what depth.
We've just raised pre-seed funding and are assembling the founding engineering team. This is the ground floor of a company building core infrastructure for the AI era.
What you're gonna do
Design and build a knowledge/memory system that structures user context for precise, traceable retrieval
Build data processing pipelines that enrich, classify, and structure information as it flows in
Design retrieval mechanisms that are cheap, accurate, and traceable to their root sources
Implement permission-aware access control at the retrieval layer - enforcing per-app consent boundaries
Evaluate and compare architectural approaches (knowledge graphs, hybrid retrieval, structured extraction) through rapid prototyping and benchmarking
Design prompt engineering strategies and LLM pipeline architectures using commercially available models
Collaborate directly with the CTO to shape the core technical direction of the product
What we require from you
2+ years of professional experience building ML/NLP/LLM systems in production
Strong Python proficiency
Deep understanding of retrieval architectures beyond basic RAG - hybrid search, structured extraction, re-ranking, query decomposition
Comfort with rapid prototyping - building POCs, running experiments, measuring results, iterating fast
Experience with AI-first programming - using AI coding tools (Cursor, Claude Code etc.) as a core part of your workflow
Strong algorithmic thinking and ability to reason about trade-offs: precision vs. recall, cost vs. accuracy, latency vs. completeness
Experience designing and evaluating ML pipelines end-to-end
Ability to work independently, make design decisions, and drive research-to-production cycles with minimal supervision
Fluent English (written and spoken)
What's nice to have
Experience with knowledge graphs - construction, querying, integration with LLM pipelines
Background in information theory or information retrieval research
Experience with permission/access-control systems at the data layer
Familiarity with prompt engineering at scale - structured outputs, chain-of-thought, tool use
Experience in early-stage / small-team environments
Published research or open-source contributions in relevant areas
What you'll get
€5,000-€8,000/month gross (€60k-€96k/year), calibrated to experience and location
Fully remote with full flexibility - work from anywhere within CET ±2h
ESOPs planned as the company scales - you're joining early enough to benefit
Sports benefits
Direct collaboration with the CTO - outsized influence on the product's core architecture
A clear growth path: evolve into Head of ML/AI or deepen into a principal/staff track as the team grows
The chance to help build something massive from the very beginning
Interested? Apply by sending your CV and a short note to [email protected].