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Job DescriptionRole Purpose
Enable the successful adoption of the platform's semantic abstraction layer by building practical knowledge across EcoStruxure Platform team and the LoBs. This role requires strong knowledge around modelling expertise and bridges the gap between semantic technology and the operational reality of teams that are new to ontology-based approaches.
Core Responsibilities
EcoStruxure Platform team enablement
- Train platform architects and engineers on semantic modeling fundamentals: OWL/RDF/S standards, graph database operation, ontology design patterns, and common pitfalls
- Guide the engineering team on the correct implementation of the ontology management service ensuring technical decisions serve business intent
- Establish EcoStruxure Platform's semantic standards: naming conventions, annotation requirements, foundational ontology alignment patterns, and shared vocabularies (shared responsibility with other teams in Schneider)
LoBs Enablement
- Work directly with each LoB's Subject Matter Experts and Data Modelers to author their first canonical domain models (hands-on, not theoretical)
- Conduct structured working sessions where Subject Matter Experts articulate their domain knowledge and a Data Modeler translates it into formal model design decisions
- Build LoBs confidence and autonomy progressively: start by doing it with them, then coach them, then step back
- Develop reusable guidance materials: modeling guides, worked examples from real business domains, and decision frameworks for common modeling questions (e.g., "when to create a subclass vs. a property," "how granular should the model be")
Evangelization
- Articulate the concrete business value of the semantic layer to business stakeholders in their language, not in technology terms but in terms of: findability, interoperability, intellectual property protection, and reduced integration cost
- Demonstrate tangible outcomes: show how a well-authored canonical model enables faster application development, clearer data product descriptions, and cross-LoB data understanding
- Address skepticism directly and honestly, acknowledge where semantic approaches add overhead and explain where the investment pays back.
Quality Assurance
- Act as the expert reviewer in the publication gate during the initial platform increments, reviewing submitted models for structural quality, pattern adherence, and interoperability readiness
- Define "what good looks like" for canonical domain models in the platform, with concrete examples Identify and flag modeling anti-patterns early before they become embedded across LoBs
Required Experience
- Hands-on ontology development in industrial or enterprise settings (not purely academic)
- Fluent in OWL, RDF/S, SKOS, SPARQL — as a practitioner, not just a reader
- Experience operating open-standards graph databases (configuration, data loading, querying, performance considerations)
- Demonstrated ability to translate complex domain knowledge from subject-matter experts into formal semantic models
- Experience introducing semantic technologies to teams that have not used them before — with evidence of successful adoption, not just delivery
Required Skills
- Can explain semantic modeling concepts to a non-technical audience without jargon
- Can sit with a control engineer, a grid specialist, or a buildings manager and extract a coherent domain model from their knowledge
- Comfortable working in an environment where the technology is new to everyone — patience, pragmatism, and clarity under ambiguity
- Strong opinions on modeling quality, loosely held when confronted with practical constraints
- Written communication: can produce clear, usable guidance documents — not academic papers
- Oral communication: straight-forward, avoids technical language, is comfortable in multi-cultural environments
Additional Information
What This Role Is Not
This is not a software engineering role. The Semantics Adoption Product Manager does not build the platform infrastructure, yet is capable of guiding those who do. This is not a governance role. The Data Governance Lead owns policies. The Semantics Adoption Product Manager ensures those policies are implemented. This is not a permanent dependency. The goal is to build capability within the platform team and the businesses so that this role transitions from "doing" to "advising" within 12–18 months.
Skills Required
- Hands-on ontology development in industrial or enterprise settings
- Fluent practitioner knowledge of OWL, RDF/S, SKOS, SPARQL
- Experience operating open-standards graph databases (configuration, data loading, querying, performance)
- Proven ability to translate complex domain knowledge into formal semantic models
- Experience driving adoption of semantic technologies with measurable success
- Ability to explain semantic modeling concepts to non-technical audiences
- Experience running structured working sessions with subject-matter experts and data modelers
- Strong written communication to produce clear, usable guidance materials
- Effective oral communication in multicultural environments
Nagarro Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Nagarro and has not been reviewed or approved by Nagarro.
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Pay Growth & Progression — Compensation is at times described as competitive, with salary hikes and perks occurring on certain occasions. Better growth opportunities and compensation are also positioned as an advantage versus other service-based companies.
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Flexible Benefits — Work arrangements are framed around a “work-from-anywhere” mindset with flexitime and family-friendly working models. This flexibility appears to add meaningful value to the overall rewards package for many roles.
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Healthcare Strength — Medical, dental, and vision coverage are described as available for employees and dependents, alongside life insurance. Mental-health support is also included via an Employee Assistance Program (EAP).
Nagarro Insights
What We Do
Nagarro helps future-proof your business through a forward-thinking, fluidic, and CARING mindset. We excel at digital engineering and help our clients become human-centric, digital-first organizations, augmenting their ability to be responsive, efficient, intimate, creative, and sustainable. Today, we are 19,000 experts across 36 countries, forming a Nation of Nagarrians, ready to help our customers succeed.









