- Salary
- €32k – €42k
- Location
- Germany
- Workplace
- Remote
- Type
- full-time
- Department
- Professional / Experienced
- Seniority
- Senior
- Industry
- Technology
- Category
- Engineering
- Role type
- Individual Contributor
- Environment
- Office
- Source
- JOIN
Overview
Join a Berlin startup as an AI Engineer to build systems that transform messy inputs into structured knowledge for security compliance. You'll own end-to-end pipelines for document processing, property extraction, and knowledge graph creation. Work with structured-output LLM agents, Pydantic models, and deterministic rule engines to create audit-ready IT-security concepts for SMEs.
Description
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.
**Your Mission** -Own the end-to-end pipeline that turns unstructured documents into a validated, queryable knowledge graph. Accountable for extraction quality, graph integrity, and the data layer that backs the product's read path.
## Tasks
- **LLM extraction pipelines** -document chunking, property and relationship extraction, cross-chunk reconciliation, gap detection. Built with structured-output LLM agents orchestrated by durable workflows.
- **Knowledge graph** -schema design as typed Pydantic models, Cypher access patterns and indexing strategy, graph operations, schema evolution and migration. Scope ends at the graph boundary: API contracts and query abstractions exposed to consumers belong to the full-stack engineer.
- **Deterministic rule engines** -table-driven evaluators for cases where code beats LLM judgment; clear contracts between deterministic and probabilistic components.
- **Data validation & quality** -schema enforcement, required-property contracts, audit trails, eval harnesses (expert review, unsupervised checks, synthetic fixtures, LLM-as-judge).
- **Live data ops** -backfills, coordinated migrations across relational + graph stores, observability on extraction throughput and quality, incident response.
## Requirements
**Must-have**
- 5+ years shipping data/AI systems to production with real customers -has been on-call for live pipelines and knows what breaks at 2am.
- Strong Python (typed, modern) and SQL. Comfortable with PostgreSQL under load.
- Production experience with at least one graph database (Neo4j preferred; Neptune, ArangoDB, TigerGraph acceptable) -schema design, query tuning, not toy use.
- Production LLM pipeline experience: structured output, agent orchestration, prompt and version management, evaluation frameworks. PydanticAI, LangChain, DSPy, or Instructor all welcome.
- Durable workflow orchestration in production (DBOS, Temporal, Airflow, Prefect, Dagster).
- Test-first discipline -integration tests against real datastores (Testcontainers or equivalent), not mock-heavy unit tests.
- Fluent English skills.
**Nice-to-have**
- Experience with regulated, compliance-driven, or standards-heavy extraction domains (legal, medical, financial, security/audit).
- Designed deterministic evaluators alongside LLM components and knows when to reach for which.
- Contributions to data contracts, schema governance, or ontology work.
- German language skills.
## Benefits
**Remote, full-time** with flexible scheduling. **CET (Berlin) timezone availability expected.**
Possibility of relocation if successfull work relationship is achieved after a period of time.
**Competitive salary: 32.000–42.000 €** base (premium 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**.
Skills
Benefits
Languages
Remote Scope
About Pinnipedia Technologies GmbH
Pinnipedia Technologies is a Berlin startup building a cloud platform that automates IT-security concept creation for German/EU standards.