Aktiviere Job-Benachrichtigungen per E-Mail!

AI Engineer (LLMs + Knowledge Graphs) (m/f/d)

Pinnipedia Technologies GmbH

Berlin

Hybrid

Vertraulich

Vollzeit

Heute
Sei unter den ersten Bewerbenden

Zusammenfassung

A Berlin-based startup is looking for an AI Engineer to develop structured knowledge through knowledge graphs and RAG. The position involves designing workflows, building ETLs for graph databases, and collaborating with a small team. Required skills include Python, knowledge graph fundamentals, and RAG experience. The role offers a competitive salary of €60,000–€85,000 with hybrid working arrangements.

Leistungen

Competitive salary
Flexible scheduling
Learning budget for training

Qualifikationen

  • Strong Python and data engineering fundamentals are essential.
  • Hands-on experience with knowledge graphs and graph databases is required.
  • Practical RAG experience in indexing, retrieval, and evaluation is needed.

Aufgaben

  • Model the domain and build ETL into a graph store.
  • Design retrieval and answer generation workflows.
  • Define and track retrieval/answer metrics and build test fixtures.

Kenntnisse

Python
Knowledge graphs
RAG experience
Testing mindset (pytest)
Version control
English

Tools

FastAPI
Docker
AWS/Azure
Jobbeschreibung

Pinnipedia is a new Berlin startup building a cloud platform that automates and assists the creation of audit-ready IT-security concepts (e.g., BSI-Grundschutz, C5). We’re IGP-funded (2025/26) and co-develop with FU Berlin and pilot users from industry and security consulting.

We’re hiring an AI Engineer to turn messy inputs into structured knowledge and reliable answers. You’ll design and operate knowledge-graph + LLM (RAG) pipelines, model/ingest domain ontologies, and own evaluation so we can ship trustworthy features.

Tasks

Knowledge graphs & data (~40%)

  • Model the domain (ontology/taxonomy); build ETL into a graph store.
  • Author queries (SPARQL/Cypher) and surface graph facts and relationships in features.

RAG & LLM integration (~30%)

  • Design retrieval and answer generation workflows (indexing, chunking, reranking).
  • Orchestrate prompts/tools; balance KG, vector search, and business rules.

Evaluation & quality (~20%)

  • Define and track retrieval/answer metrics (e.g., precision/recall, faithfulness).
  • Build test fixtures and regression checks; monitor drift and data quality.

Production & collaboration (~10%)

  • Ship well-tested Python components (FastAPI jobs/services); document decisions; work from a clear backlog with PO and engineers.
Requirements

Must-have

  • Strong Python and data engineering fundamentals.
  • Hands-on with knowledge graphs (ontology design + queries) and a graph DB.
  • Practical RAG experience (indexing, retrieval, evaluation).
  • Testing mindset (pytest), version control, and clear documentation.
  • English required (German nice-to-have).

Nice-to-have

  • Security/compliance awareness; prompt/agent tooling; spaCy/Transformers.
  • Observability for ML/LLM systems; simple dashboards for quality metrics.
  • Cloud basics (AWS/Azure), containers (Docker); CI/CD.
Benefits

Hybrid, full-time with flexible scheduling; occasional on-site days near Berlin/Brandenburg (Ketzin/Havel).

Competitive salary: 60.000–85.000 € base (more for exceptional senior profiles).

Small, focused team; direct collaboration with the Product Owner and Full-Stack Engineer.

Modern tooling, real ownership, and a learning budget for role-relevant training.

Impact: help SMEs meet rising security requirements with less friction.

Apply on JOIN with your CV (PDF) and a short note (max 200 words) describing how you would design a KG-backed RAG pipeline (ontology scope, indexing, retrieval, and evaluation you’d use).
Process: 20-min intro → 90-min practical (graph modeling + retrieval evaluation) → 45-min team chat → references. We review applications within 5 business days.

Hol dir deinen kostenlosen, vertraulichen Lebenslauf-Check.
eine PDF-, DOC-, DOCX-, ODT- oder PAGES-Datei bis zu 5 MB per Drag & Drop ablegen.