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EUROPEAN DYNAMICS logo
EUROPEAN DYNAMICS

"​{ engineer; innovate; excite; }"​

Semantic Data Engineer

Data EngineerData EngineerFull TimeRemoteSeniorTeam 501-1,000Since 1998H1B No SponsorCompany SiteLinkedIn

Location

Romania

Posted

124 days ago

Salary

0

Seniority

Senior

Job Description

Semantic Data Engineer

EUROPEAN DYNAMICS

• Analyse and maintain **RDF/TTL data models** and vocabularies; • Develop, optimise, and maintain **SPARQL queries;** • Support data ingestion, transformation, and validation workflows; • Ensure consistency and correctness of semantic data across the platform; • Collaborate with backend engineers to integrate semantic logic into application flows; • Assist in documenting semantic models, assumptions, and constraints; • Participate in troubleshooting data quality and reasoning issues.

Job Requirements

  • 3+ years of experience** working with semantic or data-centric systems;
  • Strong knowledge of:
  • RDF, RDFS, OWL**
  • SPARQL**
  • Experience with:
  • Knowledge graphs or semantic interoperability platforms;
  • Data modelling and ontology design;
  • Comfortable working with structured data formats:
  • TTL, XML, JSON, CSV
  • Ability to analyse existing models and understand **implicit domain logic.**
  • Nice-to-Have:**
  • Experience with triplestores or graph databases;
  • Familiarity with EU data standards or interoperability frameworks;
  • Python scripting for data processing and/or Apache Airflow;
  • Experience in projects with regulatory or standards-driven constraints.

Benefits

  • Competitive full-time salary
  • Private Health Coverage on the Company’s group program
  • Flexible Working Hours
  • Top-of-the-Line Tools
  • Professional Development: Benefit from language courses, specialized training, and continuous learning opportunities
  • Career Growth: Work with some of the most innovative and exciting specialists in the industry
  • Dynamic Work Environment: Thrive in a setting that offers challenging goals, autonomy, and mentoring, fostering both personal and company growth.

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