Job Description
Job Summary Job Purpose The Knowledge Engineer will be responsible for designing, constructing, and maintaining knowledge graphs derived from heterogeneous enterprise documents. The role involves leveraging Large Language Models (LLMs) for knowledge extraction, ontology-driven structuring, and question answering over knowledge graphs to support intelligent search, reasoning, and decision-making systems. Key Responsibilities Leverage LLMs to extract structured knowledge (entities, relations, attributes) from unstructured and semi-structured documents such as:Maintenance manualsProduct design documentsTroubleshooting guidesLessons learned reports Process documents in multiple formats, including Word, PDF, PowerPoint, and Excel . Design, construct, and maintain knowledge graphs , including:Schema and ontology designEntity and relationship modellingData normalisation and validation Implement and manage knowledge graph storage using graph databases such as Neo4j and GraphDB . Develop LLM-powered question answering and interaction pipelines over knowledge graphs, enabling:Natural language queriesContext-aware and explainable responses grounded in structured knowledge Collaborate with domain experts and stakeholders to refine ontologies, extraction logic, and use cases. Required Skills & Experience Strong understanding of ontology design , knowledge graph modeling , and semantic data representation. Proficiency in Python , with experience building data processing and NLP pipelines. Solid understanding of prompt engineering and LLM-based workflows. Hands-on experience working with LLMs , including both:Closed-source models (e.g., GPT-based APIs)Open-source models (e.g., LLaMA, Qwen, etc.) Experience with graph databases , particularly Neo4j and/or GraphDB. Preferred / Advantageous Skills Experience in information extraction , document understanding, or NLP pipelines. Familiarity with RDF, OWL, SPARQL, or Cypher is a plus. Experience integrating LLMs with structured knowledg