Knowledge Modelling Product Manager - Contract - Remote in the UK
Remote - candidates may work from anywhere in the UK
Contract
Market rate - via Umbrella
Role Overview
The client is seeking an experienced Knowledge Modelling Product Manager to support the successful adoption of a semantic abstraction layer across its central platform team and multiple business units.
This role requires strong, hands-on knowledge of modelling expertise and the ability to bridge the gap between semantic technologies and the operational needs of teams that are new to ontology-based approaches.
You will work closely with platform architects, engineers, data specialists and subject-matter experts to establish modelling standards, develop canonical domain models and build sustainable semantic-modelling capability across the organisation.
You will work closely with:
- Data Portfolio Managers
- Semantic Platform Administrators
- Platform Architects and Engineers
- Data Modellers
- Data Engineers
- Subject-Matter Experts
- Business-unit stakeholders
Key Responsibilities
1. Client Platform Team Enablement
- Train platform architects and engineers in semantic-modelling fundamentals, including OWL, RDF/RDFS, SKOS, SPARQL, graph-database operation, ontology-design patterns and common modelling pitfalls.
- Guide the engineering team in the implementation of ontology-management services, ensuring that technical decisions support the intended business outcomes.
- Establish semantic standards for the Client Platform, including naming conventions, annotation requirements, foundational ontology-alignment patterns and shared vocabularies.
- Work collaboratively with relevant architecture, data and governance teams to ensure consistent implementation of these standards.
- Provide expert guidance to technical teams without taking ownership of software engineering or platform-infrastructure delivery.
2. Business-Unit Enablement
- Work directly with subject-matter experts and data modellers across the organisation to develop their first canonical domain models.
- Facilitate structured workshops in which subject-matter experts articulate their domain knowledge and data modellers translate it into formal semantic-model decisions.
- Apply a hands-on and pragmatic approach rather than relying on theoretical training alone.
- Build capability progressively by initially working alongside teams, then coaching them and ultimately enabling them to operate independently.
Develop reusable guidance materials, including:
- Modelling guides
- Worked examples based on real business domains
- Ontology-design patterns
- Decision frameworks for common modelling questions
- Help teams make practical decisions about model granularity, class hierarchies, properties, relationships and reuse.
3. Stakeholder Engagement and Adoption
- Explain the business value of the semantic layer to non-technical stakeholders using clear, outcome-focused language.
- Present tangible examples of how well-designed canonical models support business and technology outcomes.
- Address stakeholder concerns honestly, including where semantic approaches introduce additional effort and where that investment is expected to deliver value.
- Promote adoption across culturally and technically diverse stakeholder groups.
Demonstrate how semantic modelling can improve:
- Data findability
- Interoperability
- Intellectual-property protection
- Cross-business data understanding
- Application-development
- Data-product descriptions
- Integration efficiency and cost
4. Modelling Quality Assurance
- Act as the expert reviewer within the model-publication process during the initial increments of the Client Platform.
Review submitted models for:
- Structural quality
- Standards compliance
- Pattern adherence
- Reusability
- Interoperability readiness
- Define clear and practical criteria for what a high-quality canonical domain model looks like.
- Produce concrete examples that teams can use as reference models.
- Identify and challenge modelling anti-patterns before they become Embedded across the organisation.
- Ensure that data and governance policies are reflected correctly in the models, while recognising that policy ownership sits with the relevant governance teams.
Essential Experience
- Significant hands-on ontology-development experience within an industrial, commercial or enterprise environment.
Practical expertise in:
- Web Ontology Language - OWL
- Resource Description Framework - RDF
- RDF Schema - RDFS
- Simple Knowledge Organization System - SKOS
- SPARQL
- OWL API
- Experience designing, developing and maintaining enterprise semantic models or canonical domain models.
- Experience operating open-standards graph databases, including configuration, data loading, querying and performance considerations.
- Demonstrable ability to translate complex knowledge from subject-matter experts into formal semantic models.
- Experience introducing semantic technologies to teams with limited or no previous exposure to ontology-based approaches.
- Evidence of achieving successful adoption and capability transfer, rather than solely delivering technical artefacts.
- Experience facilitating requirements-gathering and domain-modelling workshops with technical and non-technical participants.
Essential Skills
- Strong ontology-engineering and knowledge-modelling capability.
- Ability to explain semantic-modelling concepts to non-technical audiences without unnecessary jargon.
- Ability to work with specialist domain experts and extract the knowledge required to produce coherent, usable models.
- Strong requirements-analysis and stakeholder-management skills.
- Comfortable working in an environment where the technology and operating model are still developing.
- Pragmatic, patient and able to provide clarity in ambiguous situations.
- Strong views on modelling quality, balanced with the flexibility to respond to practical delivery constraints.
- Excellent written communication skills, with the ability to produce concise and usable guidance rather than academic documentation.
- Clear and straightforward verbal communication.
- Comfortable working across multidisciplinary and multicultural teams.
- Able to influence technical decisions without direct ownership of engineering delivery.
Desirable Experience
- Broader graph-database experience.
- Requirements-life cycle management.
- Product-management or platform-product experience.
- Data-governance implementation.
- Enterprise data architecture.
- Team leadership, coaching or capability development.
- Experience working across multiple business units or federated organisations.
Scope of the Role
- The role is intended to build lasting capability within the platform team and wider business. The objective is to move progressively from hands-on delivery to coaching and advisory support as internal teams become more autonomous.
- This is.*not a software-engineering role*. The contractor will not be responsible for building the underlying platform infrastructure but must have sufficient technical expertise to guide the teams responsible for its delivery.
- This is.*not a data-governance ownership role*. Governance policies will be owned by the appropriate governance stakeholders; this role will help ensure those policies are implemented effectively within semantic models and platform practices.