Přeskočit na obsah Přeskočit na zápatí

Semantic Graph & Ontology Architect

ID pozice
491905
Zveřejněno od
16-Led-2026
Organizace
Siemens Energy
Obor
Product Management, Portfolio & Innovation
Společnost
SIEMENS ENERGY INDIA LIMITED
Úroveň zkušeností
S dlouholetou praxí v oboru
Typ pozice
Plný úvazek
Režim práce
Pouze na pracovišti
Druh smlouvy
Trvalý
Lokalita
  • Bengalúru - Karnataka - Indie
Title: Semantic Graph & Ontology Architect

Position Summary:
We’re building a Smart Data Fabric that unifies enterprise data (Snowflake, SharePoint, ERP, NoSQL, and document silos) and exposes it to advanced AI agents through a semantic, graph-native, and vector-aware foundation. You will own graph and semantic architecture, modeling business relationships, processes, and logic to enable accurate, contextual, auditable workflows. This is a hands-on leadership role spanning LPG vs RDF/OWL tradeoffs, query optimization, and ontology engineering.

How You’ll Make an Impact (responsibilities of role)

Graph & Semantic Architecture
• Design scalable graph schemas (LPG and/or RDF/OWL) based on semantic and inference requirements.
• Author and optimize Cypher/Gremlin/SPARQL queries for multi-hop traversal, orchestration, and complex reasoning.
• Define canonical entity models and mapping layers across Snowflake, MongoDB, SharePoint, ERP, and unstructured content.

Ontology Engineering & Reasoning
• Create and maintain formal ontologies/taxonomies; govern versioning and lifecycle.
• Implement logical inference (rules/constraints) for agent decision-making, conflict detection, and workflow integrity.
• Establish semantic consistency standards and data quality checks.

Hybrid Semantic Layer (Graph + Logic)
• Design a hybrid semantic layer combining graph context with business logic and access controls for semantic search, multi-hop traversal, and knowledge contextualization.
• Model RACI/RBAC as graph edges/nodes; embed compliance rules and auditability.

APIs, Patterns & Collaboration
• Define clean API layers for semantic enrichment and retrieval; deliver reference implementations and patterns.
• Specify MCP-based (Model Context Protocol) tool discovery/invocation patterns; collaborate with platform engineers for agent connectivity.
• Partner with data/platform/security teams on ingestion pipelines, lineage, governance, and observability requirements.

Quality, Performance & Governance
• Set query performance budgets; prevent Cartesian explosions; ensure index utilization.
• Establish lineage and data governance artifacts (semantic catalogs, policy nodes, audit trails).
• Document standards and mentor engineers adopting graph/semantic patterns.

What You Bring (required qualification and skill sets)
• Bachelor’s/Master’s in CS, Data Science, Mathematics, Engineering, or related field.
• 7–12 years in graph databases, semantic modeling, ontology engineering.
• Deep expertise in Cypher, Gremlin, SPARQL; strong command of LPG vs RDF/OWL tradeoffs.
• Hands-on with Neo4j, AWS Neptune, TigerGraph, Stardog (at least one in production).
• Experience mapping enterprise data (Snowflake/MongoDB/SharePoint/ERP) into graph/ontology layers.
• Strong understanding of RBAC/RACI, data governance, lineage, and security controls.
• Ability to design clean APIs and reference implementations for semantic enrichment/retrieval.
• Practical AWS familiarity (IAM, VPC, S3, EKS/ECS/Lambda) in collaboration with platform teams.

Preferred Qualifications
• Ontology tooling (Protégé, SHACL/SWRL), reasoning engines, and constraint modeling.
• Prior delivery of enterprise knowledge graphs supporting workflows & audit trails.
• Exposure to vector retrieval/RAG and how graph context informs re-ranking.
• Observability awareness (tracing across graph layers, OpenTelemetry, Prometheus/Grafana).
• Experience with Snowflake/MongoDB/SharePoint APIs and ERP data structures.