Mid-Level (2-5 years)

Data Governance Specialist

This role is all about making sure our data is actually useful and trustworthy. You'll be the person who gets into the weeds, making sure our data assets are properly catalogued, understood, and kept clean. Think of it as being the librarian and quality control inspector for our most important information. You're not just moving data around; you're making sure it tells the right story, every single time. It's a critical piece of our overall data strategy, really.

Job ID
JD-TECH-DAST-002
Department
Technical Roles
NOS Level
Level 5-6
OFQUAL Level
Level 5-6
Experience
Mid-Level (2-5 years)

Role Purpose & Context

Role Summary

The Data Governance Specialist is responsible for managing the data catalogue and quality rules for a specific business domain, like Marketing or Finance. You'll spend your days making sure our data is accurate, consistent, and easy for everyone to find and understand, which directly impacts how quickly and confidently our teams can make decisions. You'll work at the intersection of our technical data platforms and the business teams who actually use the data, translating technical definitions into plain English and making sure everyone's on the same page. When this role is done well, our business users trust the numbers, find what they need quickly, and don't waste time arguing over definitions. When it's not, well, people start building their own dodgy spreadsheets, and we end up with conflicting reports and bad decisions. The challenge is often getting busy people to care about data definitions and quality when they've got other priorities. The reward, though, is seeing your work directly improve how the company operates, making everyone's life a bit easier and our decisions much smarter.

Reporting Structure

Key Stakeholders

Internal:

External:

Organisational Impact

Scope: This role directly improves the reliability and discoverability of our data assets. By ensuring data quality and clear definitions, you'll reduce the time people spend searching for data, fixing errors, or debating what a metric actually means. This means faster, more confident decision-making across the business, especially for teams relying on accurate customer or financial data. Essentially, you're building the trust in our data that everything else relies on.

Performance Metrics

Quantitative Metrics

  1. Metric: Data Quality Score Improvement
  2. Desc: Improving the accuracy and completeness of critical data elements (CDEs) within your assigned business domain.
  3. Target: Increase average data quality score from 80% to 95% for 3-5 key CDEs within 6 months.
  4. Freq: Monthly via Collibra Data Quality dashboards.
  5. Example: If 'Customer Email Address' quality is 82% today, your work should get it to 95% by month six, meaning fewer invalid emails in our CRM.
  6. Metric: Data Catalogue Enrichment
  7. Desc: The number of new business terms, data assets, and data lineage maps added and validated in our data catalogue.
  8. Target: Add and validate 150+ new business terms and 20+ data lineage maps in Collibra per quarter.
  9. Freq: Quarterly review of Collibra audit logs and content creation reports.
  10. Example: Documenting all the fields in our 'Marketing Campaign' table, defining 'Campaign ROI' in plain English, and mapping its journey from Salesforce to Tableau.
  11. Metric: SLA Adherence for Data Requests
  12. Desc: Resolving data access requests, definition queries, and minor data quality issues within agreed service level agreements.
  13. Target: Resolve 98% of data catalogue and access requests within the 48-hour business SLA.
  14. Freq: Weekly review of ticketing system (e.g., Jira Service Desk) reports.
  15. Example: A Marketing Analyst asks for access to a new dataset; you get them set up and the access confirmed within 24 hours.
  16. Metric: Reduction in Data Definition Discrepancies
  17. Desc: Decreasing instances where different teams have conflicting definitions for the same business metric or data element.
  18. Target: Reduce identified definition discrepancies by 30% in your domain within 9 months.
  19. Freq: Quarterly audit of key reports and stakeholder feedback.
  20. Example: Getting Sales and Finance to agree on a single, documented definition for 'Active Customer' in Collibra, rather than each using their own.

Qualitative Metrics

  1. Metric: Stakeholder Engagement & Collaboration
  2. Desc: How effectively you work with business teams to understand their data needs and get their buy-in on governance policies.
  3. Evidence: Business users proactively come to you with data questions or issues. You're regularly invited to departmental meetings to discuss data. Feedback from colleagues mentions your helpfulness and clarity in communication. You're seen as a go-to person for data definitions and understanding.
  4. Metric: Proactive Problem Identification
  5. Desc: Your ability to spot potential data quality issues or governance gaps before they become major problems.
  6. Evidence: You flag an inconsistency in a data source before it impacts a critical dashboard. You propose a new data quality rule based on observing user behaviour. You identify a missing piece of data lineage and proactively map it out. You don't just react; you anticipate.
  7. Metric: Documentation Clarity & Completeness
  8. Desc: The quality and user-friendliness of the data definitions, policies, and lineage you create and maintain.
  9. Evidence: New joiners can easily understand data definitions from the catalogue. Business users can find the data they need without asking for help. Audit trails in Collibra show consistent updates and adherence to standards. Your documentation is clear, concise, and actually used.
  10. Metric: Adherence to Governance Standards
  11. Desc: How well you follow and help enforce the established data governance policies and procedures.
  12. Evidence: All new data assets in your domain are properly onboarded into the catalogue. Data quality rules are consistently applied and monitored. You correctly escalate policy breaches when they occur. You're a champion for good data hygiene.

Primary Traits

Supporting Traits

Primary Motivators

  1. Motivator: Bringing Order to Chaos
  2. Daily: You'll get a real kick out of taking a messy, undocumented dataset and transforming it into something clean, clear, and usable. The satisfaction comes from seeing a clear definition replace ambiguity, or a data quality error being resolved.
  3. Motivator: Being the Go-To Expert
  4. Daily: You'll enjoy being the person people come to when they have a question about a specific piece of data, or when they need help finding reliable information. You'll build a reputation as the domain expert for data quality and definitions.
  5. Motivator: Driving Tangible Improvement
  6. Daily: You're motivated by seeing your work directly improve how others operate. It's not just about policies; it's about making data more accessible and trustworthy, which in turn leads to better business outcomes.

Potential Demotivators

Honestly, this role isn't for everyone. You'll spend a fair bit of time chasing people for information or trying to convince them that data quality actually matters. You might find yourself repeatedly explaining the same concept to different teams. There will be times when you identify a significant data quality issue in a source system, but the team who owns that system doesn't prioritise fixing it quickly. You might put a lot of effort into documenting something beautifully, only for it to be ignored by some users. If you need constant, immediate gratification from seeing large-scale, strategic shifts, you might find the day-to-day work a bit frustrating.

Common Frustrations

  1. Dealing with 'shadow IT' – people using their own spreadsheets because they don't trust the official data.
  2. Getting buy-in from busy stakeholders who see data governance as 'extra work' rather than fundamental.
  3. Identifying data quality issues that originate in systems you don't control, leading to slow fixes.
  4. The constant need to educate and re-educate users on data definitions and best practices.
  5. The slow pace of change when trying to implement new governance policies across a large organisation.

What Role Doesn't Offer

  1. A purely technical, heads-down coding role – you'll be interacting with people constantly.
  2. Immediate, high-level strategic decision-making responsibility – you'll be executing strategy, not defining it.
  3. A role where data is always perfectly clean and well-understood – you're here to fix that!
  4. Complete autonomy over data engineering pipelines – you'll work with those teams, but you won't own their code.

ADHD Positives

  1. The 'detective' aspect of finding data anomalies and solving puzzles can be highly engaging and stimulating.
  2. The varied nature of tasks – from documenting to investigating to communicating – can prevent boredom.
  3. The focus on clear, structured documentation (like data catalogues) can provide a helpful framework.

ADHD Challenges and Accommodations

  1. The need for meticulous, consistent documentation can be challenging; using templates and automated tools (like Collibra) can help. We can also explore tools for focus and task management.
  2. Repetitive tasks, like chasing stakeholders for definitions, might be less engaging; we can look at automating reminders or varying your approach.
  3. We can offer flexible working hours to accommodate peak focus times and provide a quiet workspace if needed.

Dyslexia Positives

  1. The strong emphasis on clear, concise, and structured documentation will benefit everyone, including those with dyslexia.
  2. Tools that support visual mapping (like data lineage diagrams) can be a great way to process and present information.
  3. The role's focus on logical problem-solving and pattern recognition can be a strength.

Dyslexia Challenges and Accommodations

  1. Extensive reading and writing of detailed policies or definitions might be tiring; we encourage the use of text-to-speech software, grammar checkers, and templates.
  2. Proofreading your own work can be harder; we'll encourage peer review for critical documentation and offer tools to assist.
  3. We can provide materials in accessible formats and allow for verbal communication where written might be a barrier.

Autism Positives

  1. The logical, systematic nature of data governance – defining rules, categorising data, ensuring consistency – can be very appealing.
  2. The focus on detail and accuracy is a significant strength in this role.
  3. Working with structured data and clear processes can provide a sense of predictability and order.

Autism Challenges and Accommodations

  1. The 'patient translator' aspect involves a lot of nuanced social interaction and understanding unspoken cues; we can provide training and support for stakeholder engagement strategies.
  2. Unexpected changes to data sources or business requirements might be unsettling; clear communication about changes and their impact will be crucial.
  3. We can offer a consistent work environment, clear expectations for communication, and support for navigating social dynamics.

Sensory Considerations

Our office environment is typically a modern, open-plan space with moderate background noise. There are quieter zones and meeting rooms available for focused work or calls. We use standard office lighting. Social interaction is frequent but usually structured around meetings or specific data queries. If you have specific sensory needs, please let us know; we're happy to discuss adjustments.

Flexibility Notes

We offer hybrid working, usually 2-3 days in the office, which can provide flexibility for managing your environment. We're also open to discussing specific scheduling needs where possible to help you do your best work.

Key Responsibilities

Experience Levels Responsibilities

  1. Level: Mid-Level Professional (2-5 years)
  2. Responsibilities: Take ownership of the data catalogue for your assigned business domain (e.g., Marketing, Sales). This means making sure all relevant data assets, business terms, and definitions are accurately captured and kept up-to-date in Collibra.
  3. Independently execute data quality checks and monitoring for critical data elements within your domain. You'll spot anomalies, investigate their root causes, and work with data engineering or source system owners to get them fixed.
  4. Propose and document new data quality rules and governance policies specific to your domain. This isn't just about following rules; it's about making them better based on what you observe and learn.
  5. Help business users understand and use the data catalogue effectively. You'll run small training sessions, answer questions, and generally act as the first point of contact for data definition queries in your area.
  6. Identify and map data lineage for key reports and data flows within your domain, helping everyone understand where the data comes from and how it transforms.
  7. Collaborate with data engineering teams to ensure new data pipelines and transformations adhere to our governance standards and that metadata is captured correctly from the start.
  8. Assist in preparing reports on data quality and governance adherence for your domain, giving a clear picture of how we're doing and where we need to improve.
  9. Supervision: You'll have weekly check-ins with your Senior Data Strategist, but on routine tasks, you'll be expected to work independently. For novel or complex problems, you'll escalate and get guidance. We trust you to manage your day-to-day, but we're here to support you when things get tricky.
  10. Decision: You'll have authority to make routine decisions within established data governance guidelines, such as approving minor updates to data definitions or resolving common data quality issues. For anything outside the guidelines, or for significant changes to policies, you'll need to escalate to your Senior Data Strategist. You can recommend tool choices for minor tasks but won't be making large budget decisions, say anything over £5K, without approval.
  11. Success: You'll know you're doing well when your assigned domain's data quality scores consistently improve, business users in that area proactively use the data catalogue, and you're seen as the reliable expert for data definitions and issues. Basically, if the data in your domain becomes noticeably cleaner and easier to understand, you're smashing it.

Decision-Making Authority

Save 10-15 hours weekly with AI-powered Data Governance!

Let's be honest, data governance can feel like a lot of manual grunt work. But what if you could cut down on the tedious bits and focus on the really interesting challenges? AI isn't just for data scientists anymore; it's here to make your daily life as a Data Governance Specialist much, much easier.

ID:

Tool: Automated Data Cataloguing

Benefit: Use AI tools to automatically scan our databases and BI dashboards, pulling in metadata, suggesting business terms, and even mapping data lineage. This means less manual entry for you and a more comprehensive catalogue for everyone. You'll spend more time validating and refining, less time typing.

ID:

Tool: Proactive Data Quality Alerts

Benefit: Implement AI-powered observability platforms that learn the normal 'heartbeat' of your data. If a data pipeline suddenly drops 50% of its records or a column changes its data type unexpectedly, you'll get an alert instantly, often before anyone even notices a problem in a report. No more reactive firefighting.

ID:

Tool: AI for Policy Summaries

Benefit: Got a new internal data privacy policy or a complex regulatory update? Feed it into an LLM. It'll summarise the key points, highlight changes, and even suggest how it impacts your existing data quality rules. This saves you hours of reading and interpretation, letting you focus on action.

ID: ✍️

Tool: Smart Documentation Drafting

Benefit: Need to draft a new data definition, a policy explanation, or an email to stakeholders about a data issue? Use generative AI to get a solid first draft. You'll still need to review and refine it, but it's a huge head start, especially for those tricky communications.

10-15 hours weekly Weekly time savings potential
You'll be using 2-3 core AI-powered tools daily Typical tool investment
Explore AI Productivity for Data Governance Specialist →

12-15 specific tools & techniques with implementation guides

Competency Requirements

Foundation Skills (Transferable)

These are the core human skills that underpin everything you'll do. We're looking for someone who can not only understand data but also communicate about it, solve problems creatively, and adapt to a constantly evolving data landscape. These aren't just 'nice-to-haves'; they're essential for making a real impact.

Functional Skills (Role-Specific Technical)

These are the specific methodologies, tools, and technical know-how you'll need to hit the ground running. We're looking for someone who isn't just theoretically aware of these concepts but has actually applied them in a real-world setting, especially within a technical data environment.

Technical Competencies

Digital Tools

Industry Knowledge

Regulatory Compliance Regulations

Essential Prerequisites

Career Pathway Context

This role is a fantastic step up for someone who's been working with data for a couple of years and wants to specialise in making that data truly reliable and understandable. You've probably seen the chaos of bad data and now you want to be part of the solution. It's about moving from just using data to actively shaping its quality and accessibility for others.

Qualifications & Credentials

Emerging Foundation Skills

Advancing Technical Skills

Future Skills Closing Note

The goal here isn't to turn you into a full-blown engineer or a machine learning expert. It's about making sure you're equipped to understand the evolving data landscape, speak the language of your technical peers, and continue to drive value as our data capabilities mature. We'll support your learning every step of the way.

Education Requirements

Experience Requirements

You'll need roughly 2-5 years of hands-on experience in a data-centric role. This should include significant time spent on data quality, metadata management, or working with data governance tools. We're looking for someone who has actually dealt with messy data, understood its impact, and actively worked to improve it. Experience in a technical data environment, rather than just business analysis, is key here.

Preferred Certifications

Recommended Activities

Career Progression Pathways

Entry Paths to This Role

Career Progression From This Role

Long Term Vision Potential Roles

Sector Mobility

The skills you'll gain here – understanding data, ensuring its quality, and making it accessible – are highly transferable. You could move into roles like Data Product Manager, Business Intelligence Manager, or even specialise in Data Privacy and Compliance within various industries, from FinTech to Healthcare. Good data governance is needed everywhere.

How Zavmo Delivers This Role's Development

DISCOVER Phase: Skills Gap Analysis

Zavmo maps your current competencies against all requirements in this job description through conversational assessment. We evaluate your foundation skills (communication, strategic thinking), functional skills (CRM expertise, negotiation), and readiness for career progression.

Output: Personalised skills gap heat map showing strengths and priorities, estimated time to competency, neurodiversity accommodations.

DISCUSS Phase: Personalised Learning Pathway

Based on your DISCOVER results, Zavmo creates a personalised learning plan prioritised by impact: foundation skills first, then functional skills. We adapt to your learning style, pace, and neurodiversity needs (ADHD, dyslexia, autism).

Output: Week-by-week schedule, each module linked to specific job responsibilities, checkpoints and milestones.

DELIVER Phase: Conversational Learning

Learn through conversation, not boring modules. Zavmo uses 10 conversation types (Socratic dialogue, role-play, coaching, case studies) to build competence. Practice difficult QBR presentations, negotiate tough renewals, and handle churn conversations in a safe AI environment before facing real clients.

Example: "For 'Stakeholder Mapping', Zavmo will guide you through analysing a complex enterprise account, identifying key decision-makers, and building an engagement strategy."

DEMONSTRATE Phase: Competency Assessment

Zavmo automatically builds your evidence portfolio as you learn. Every conversation, practice scenario, and application example is captured and mapped to NOS performance criteria. When ready, your portfolio supports OFQUAL qualification claims and demonstrates competence to employers.

Output: Competency matrix, evidence portfolio (downloadable), qualification readiness, career progression score.

Discover Your Skills Gap Explore Learning Paths