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Data Taxonomy Jobs in Spring, TX (NOW HIRING)

Senior Semantic Data Architect

Houston, TX · On-site

$123K - $168K/yr

Designs and maintains the enterprise semantic model (ontology, taxonomy, and controlled ... Defines and maintains data product standards covering schema conventions, naming, definitional ...

Produce clear, audit ready documentation covering: o Risk register structure and data definitions o ... taxonomy 2. Risk Scoring and Prioritization Model o Documented likelihood and impact scales o ...

... ML models, and taxonomy management. UiPath Integration Service: * Orchestrate API-based ... data management. * Strong understanding of enterprise automation design patterns and solution ...

We are looking for a motivated, data-driven individual who can bring their technical knowledge to ... Ability to lead conversation around information architecture, taxonomy and URL structure Star ...

We are looking for a motivated, data-driven individual who can bring their technical knowledge to ... Ability to lead conversation around information architecture, taxonomy and URL structure Star ...

We are looking for a motivated, data-driven individual who can bring their technical knowledge to ... Ability to lead conversation around information architecture, taxonomy and URL structure Star ...

... taxonomy and navigation of category, family, and product pages). * Adjust site strategy based on ... Demonstrated ability to triage and prioritize based on data, business goals, and customer impact

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Data Taxonomy information

What is the highest paid job in data science?

The highest paid roles in data science are often senior positions such as Lead Data Scientist, Data Science Director, or Chief Data Officer, which typically require extensive experience, advanced skills in machine learning and big data tools, and often involve strategic decision-making responsibilities. These roles can command salaries exceeding $150,000 annually, depending on the industry and location.

How to get a job in taxonomy?

To get a job in taxonomy, develop expertise in data organization, classification, and metadata standards such as Dublin Core or schema.org. Gaining skills in data management tools, understanding industry-specific vocabularies, and obtaining relevant certifications can improve employability. Experience with data analysis and information architecture is also valuable for roles in taxonomy development and management.

What are some typical challenges faced when developing and maintaining a data taxonomy within an organization?

One common challenge when working in data taxonomy is ensuring consistency across different departments that may use varied terminology or classification standards. Data taxonomists often need to facilitate collaboration between stakeholders to agree on definitions and structures, which requires strong communication and negotiation skills. Another challenge is keeping the taxonomy up-to-date as business needs and data sources evolve, necessitating regular reviews and updates. Successfully navigating these issues helps improve data discoverability, governance, and overall business intelligence.

What is data taxonomy?

Data taxonomy is a structured classification system that organizes data into categories and subcategories, making it easier to manage, search, and analyze. Data professionals often use standards and tools like metadata and ontologies to develop effective taxonomies for data governance and integration.

What is the difference between Data Taxonomy vs Data Analyst?

AspectData TaxonomyData Analyst
Primary FocusOrganizing and classifying data structuresAnalyzing data to extract insights
Skills & CertificationsData modeling, taxonomy development, data management certificationsStatistical analysis, SQL, data visualization skills
Work EnvironmentData management teams, data governance departmentsBusiness units, analytics teams
Industry UsageData governance, information architectureBusiness intelligence, reporting

Data Taxonomy involves creating structured classifications for data assets, ensuring consistency and clarity across systems. Data Analysts focus on interpreting data to support decision-making. While both roles work with data, Data Taxonomy emphasizes data organization, whereas Data Analysts analyze data for insights.

What do you need to be a data taxonomy specialist?

A data taxonomy specialist typically needs a strong understanding of data management, classification, and metadata standards, along with skills in data modeling and taxonomy development. Proficiency in tools like Excel, SQL, or specialized taxonomy software is often required, and relevant certifications in data management or information architecture can be beneficial. Experience with data governance and collaboration with cross-functional teams also supports success in this role.

What are the key skills and qualifications needed to thrive as a Data Taxonomist, and why are they important?

To thrive as a Data Taxonomist, you need a strong background in information science, data organization, and metadata management, often supported by a degree in library science, information systems, or a related field. Familiarity with taxonomy management tools, data modeling software, and standards such as SKOS or RDF is commonly required. Attention to detail, analytical thinking, and effective communication are essential soft skills for collaborating across teams and ensuring data consistency. These skills and qualifications are crucial for creating structured data frameworks that improve data discoverability, usability, and governance.
What are popular job titles related to Data Taxonomy jobs in Spring, TX? For Data Taxonomy jobs in Spring, TX, the most frequently searched job titles are:
What job categories do people searching Data Taxonomy jobs in Spring, TX look for? The top searched job categories for Data Taxonomy jobs in Spring, TX are:
What cities near Spring, TX are hiring for Data Taxonomy jobs? Cities near Spring, TX with the most Data Taxonomy job openings:
Infographic showing various Data Taxonomy job openings in Spring, TX as of July 2026, with employment types broken down into 1% As Needed, 82% Full Time, 15% Part Time, and 2% Contract. Highlights an 87% Physical, 3% Hybrid, and 10% Remote job distribution.
Senior Semantic Data Architect

Senior Semantic Data Architect

Insperity

Houston, TX • On-site

$123K - $168K/yr

Full-time

Medical, Dental, Vision, PTO

Posted 13 days ago


Insperity rating

7.8

Company rating: 7.8 out of 10

Based on 32 frontline employees who took The Breakroom Quiz

131st of 449 rated business services


Job description

Insperity provides the most comprehensive suite of scalable HR solutions available in the marketplace with an optimal blend of premium HR service and technology. With more than 90 locations throughout the U.S., Insperity is currently making a difference for thousands of businesses and communities nationwide.

Behind our success is the unshakeable belief in the value of our people. We value diversity, inclusivity and a sense of belonging. We celebrate work and life events, and we partner with our clients and communities to make great things happen.

We've earned recognition time and again as a top place to work-named among the best by respected organizations like Glassdoor and U.S. News & World Report. We're also proud to be recognized for one of the country's Top 50 Midsize Early Talent Programs through RippleMatch's Campus Forward Awards. There's never been a better time to be part of Insperity, and our best work is still ahead. Learn more at Insperity.com.

Why Insperity?

Flexibility: Over 80% of Insperity's jobs have flexibility. We want your time to have balance, whether it's spent with coworkers, clients, family or your community.

Career Growth: Insperity provides many ways to grow with the company. We offer continuous learning programs, mentorship opportunities and ongoing training.

Well-Being: Our total rewards package includes generous paid time off, top-tier medical, dental and vision benefits, health & wellness support, paid volunteer hours and much more. We take care of our people so that you can do your best work.

We are seeking a talented Senior Semantic Data Architect to join our team

SUMMARY:

This position is responsible for anchoring the design, development, and governance of the enterprise semantic model that underpins the Insperity AI Platform. It defines how business entities, relationships, and rules are consistently represented across domains, enabling reliable AI, analytics, and data products. The role partners with subject matter experts, AI Program Managers, Platform Architecture, and governance bodies to translate business definitions into a unified semantic layer. It also ensures ongoing alignment, adoption, and integrity of the model as business processes and platform capabilities evolve.

RESPONSIBILITIES:

  • Designs and maintains the enterprise semantic model (ontology, taxonomy, and controlled vocabularies) across HR, Payroll, Benefits, Risk, and Service Operations domains, ensuring consistent representation of core business entities and relationships across the Insperity AI portfolio.

  • Elicits authoritative business definitions from subject matter experts and resolves cross-domain definitional conflicts, codifying the result into a unified semantic layer used by AI agents, analytics, and downstream data products.

  • Defines and maintains data product standards covering schema conventions, naming, definitional consistency, and lineage; partners with engineering and data leadership to drive adoption across business units and fusion teams.

  • Partners with Platform Architects and Enterprise Data Engineering to integrate the semantic model into the Insperity AI Platform's grounding layer, ensuring agents draw on consistent business definitions at inference time and that semantic changes propagate cleanly into production.

  • Partners with AI Program Managers across business units to translate domain definitions into the unified ontology and to keep the model aligned as business processes evolve.

  • Receives knowledge transfer from the external semantic layer consultants and assumes long-term ownership of the model post-handoff, ensuring continuity, ongoing evolution, and institutional capability beyond the initial build.

  • Governs the change control process for the semantic model, reviewing additions, deprecations, and modifications against impact on downstream consumers; partners with engineering and data leadership on release coordination.

  • Documents the semantic model in forms usable by both technical (engineering, data) and business (operations, compliance) audiences, including conceptual diagrams, definitional references, and lineage views.

  • Partners with Legal, Compliance, and the AI Governance Board to align definitional decisions with policy, regulatory requirements, and responsible AI principles, particularly where semantic choices intersect with regulated data domains.

  • Maintains traceability between business definitions, data product schemas, and downstream consumers (AI agents, analytics, reporting), enabling impact analysis and confident change management as the platform scales.

  • Champions definitional rigor across the AI Platform program, building shared understanding of why consistent business representation is foundational to trustworthy AI and engaging stakeholders to reinforce that discipline.

QUALIFICATIONS:

  • Bachelor's Degree or higher in Information Science, Computer Science, Library Science, Knowledge Management, Linguistics, or related field is required.

  • Five to seven years of proven experience in semantic modeling, ontology engineering, taxonomy design, or enterprise data architecture is required.

  • Three years of experience working with the data foundations of AI applications, including semantic layers, knowledge graphs, or retrieval augmented generation grounding, is preferred.

  • Demonstrated experience receiving and operationalizing knowledge transfer from an external consulting engagement is preferred.

  • Demonstrated experience designing and maintaining a semantic model consumed by multiple downstream systems, including AI applications, analytics platforms, and operational data products.

  • Working knowledge of at least one formal semantic modeling approach, such as OWL/RDF, Object Role Modeling, UML conceptual modeling, or relational semantic layer platforms (e.g., Cube, dbt, AtScale).

  • Strong skill at eliciting definitions from non-technical subject matter experts and translating them into precise, machine-usable models.

  • Proven ability to facilitate cross-functional definitional disputes to consensus, including where stakeholders disagree on whether a term means the same thing across business contexts.

  • Excellent communication, collaboration, and problem-solving skills, with the ability to translate between technical and business audiences.

  • Ability to think strategically and creatively and adapt to changing needs and priorities.

  • Proficiency in documentation tools and modeling environments (e.g., Protege, PoolParty, ontology IDEs, or equivalent semantic-layer authoring tools).

  • Demonstrated leadership in data foundations for AI, including data governance, cataloging, lineage, quality standards, metadata management, and labeling workflows.

  • Familiarity with graph databases (e.g., Neo4j, GraphDB, Amazon Neptune) or knowledge graph platforms.

  • Familiarity with data governance frameworks (e.g., DAMA-DMBOK, DCAM) and data product practices.

  • Strong proficiency in retrieval-based AI grounding, including hybrid RAG, citations, and indexing/chunking strategies as they intersect with the semantic layer.

  • Domain experience in HR, Payroll, Benefits, or Professional Employer Organization (PEO) services is preferred.

  • Working knowledge of security, compliance, and responsible AI principles, including PII handling, data minimization, and lineage requirements for regulated domains.

This job specification should not be construed to imply that these requirements are the exclusive standards of the position. Incumbent will follow any other instructions, and perform any other related duties, as may be required by the supervisor.

At Insperity, we celebrate the diversity of our employees and our leadership. Insperity is an equal opportunity employer, and all qualified applicants will receive consideration for employment without regard to race, color, religion, sex, national origin, disability status, protected veteran status or any other characteristic protected by law.


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About Insperity

Sourced by ZipRecruiter

Take care of your people Insperity has a long history of improving the success equation of small and midsize businesses across the country – because when businesses succeed, communities prosper. And in today’s changing business environment, it’s our privilege to take care of an organization’s most valuable asset: its people.

Company size

1,001 - 5,000 Employees

Headquarters location

Houston, TX, US

Year founded

1986

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