Job Title - Decision Science Practitioner Consultant S&C GN
Management Level: Consultant
Location: Bangalore/ Kolkata/Gurugram/Hyderabad
Must have skills: Data Modelling, Conceptual & Logical Design, Semantic Modelling and Understanding of Knowledge Graphs
Good to have skills: Data Science, Ontologies, AI/ML Data Enablement, GenAI Foundations
Job Summary:
We are seeking a highly skilled and motivated Consultant Data Modeler to design, develop, and support the maintenance of conceptual, logical, physical, and semantic data models that support advanced analytics, AI/ML, and Generative AI use cases. The consultant will work closely with domain experts/business stakeholders, data science/engineering teams to translate complex business and system knowledge into scalable, high-quality data and semantic models. These models will serve as foundational assets enabling analytics, decision science, AI-driven insights, and intelligent automation across enterprise platforms. The role requires strong collaboration skills and the ability to work across multiple client environments.
Key Responsibilities
Project and Team Leadership
-
Collaborate with business stakeholders and domain experts to understand data requirements and translate them into clear conceptual, logical, and physical data models.
-
Work closely with data engineers, analytics teams, and AI/ML practitioners to ensure data models are aligned with downstream consumption needs.
-
Aptitude to work independently on modeling workstreams within client engagements, including requirements gathering, design, and documentation.
-
Document & communicate modeling decisions, trade-offs, and best practices to both technical and non-technical audiences.
-
Contribute to project delivery through high-quality, low-defect delivery”, documentation, design reviews, and model governance activities.
Data Modelling & Semantic Modelling Expertise
-
Design and maintain conceptual, logical, and physical data models for structured and semi-structured data across enterprise systems.
-
Develop reusable, extensible data models supporting analytics, reporting, AI/ML feature engineering, and decision science use cases.
-
Apply semantic modeling techniques, including domain modeling, entity relationships, hierarchies, and taxonomies.
-
Enable ontology and knowledge graph modeling, translating subject-matter knowledge into machine-readable representations.
-
Ensure alignment of data models with enterprise architecture principles, data standards, and best practices.
AI & GenAI Enablement
-
Design data and semantic models that act as foundational datasets for AI/ML and Generative AI systems.
-
Enable explainability, reasoning, and contextual grounding through ontology-driven approaches and graph-based data models.
-
Partner with data science and AI teams to ensure models support feature reuse, RAG pipelines, and intelligent agent workflows.
-
Contribute to data model designs that improve trust, interpretability, and scalability of AI-driven solutions.
Data Governance & Standards
-
Follow and contribute to data modeling standards, naming conventions, and design guidelines across projects.
-
Support data governance initiatives including metadata management, lineage, and documentation.
-
Ensure consistency, quality, and reusability of data assets across platforms and use cases.
Business Impact and Innovation
-
Translate complex business concepts into clear, well-structured data models that accelerate analytics and AI adoption.
-
Enable faster solution development by providing high-quality, well-documented data foundations.
-
Support measurable outcomes by improving data usability, consistency, and decision-making effectiveness.