Data Governance Lead,DAMA,DCAM,CDMC,Government,GDS

Bristol
2 weeks ago
Create job alert

Data Governance Lead, DCAM, DAMA, CDMC

Location: Bristol 3 days a week on site
Rate: £(Apply online only) Inside IR35
Contract Type: Contract

The Role

We are seeking an experienced Data Governance Lead to oversee and drive the delivery of data governance initiatives within a dynamic and evolving organization. This role is pivotal in ensuring that our data governance practices are aligned with our strategic goals and successfully integrated into our operations. You will play a key role in leading data governance efforts, overseeing project delivery, managing external suppliers, and building internal capability to ensure long-term sustainability.

Key Responsibilities

Project Oversight & Alignment: Ensure data governance initiatives align with organizational objectives. Manage risks, ensure timely delivery, and track progress to meet strategic goals.

Intelligent Customer for Consultancy: Act as the intelligent customer for consultancy work, validating approaches, ensuring quality delivery, and driving continuous improvement in governance frameworks.

Capability Embedding & Skills Transfer: Define and implement a structured knowledge transfer plan to ensure internal teams gain the necessary skills and understanding of data governance frameworks, tools, and processes for ongoing compliance and sustainability post-contract.

Stakeholder Advocacy & Consensus Building: Promote the project across the organization, engaging stakeholders at all levels to build consensus and internal capabilities, ensuring that data governance becomes a core business priority.

Essential Experience and Competencies

Data Governance & Strategy Expertise:

Proven understanding of data governance principles and frameworks (e.g., DAMA, DCAM, CDMC).

Significant experience leading data governance initiatives within public sector or geospatial organizations.

Deep knowledge of data management, data quality, metadata, and regulatory compliance practices.

Strategic Leadership & Business Change:

Ability to align data governance practices with strategic objectives and effectively articulate the business case for investment.

Experience working with business change teams to embed data governance within organizational culture, ensuring it is prioritized across all functions.

Programme & Supplier Management:

Experienced in project management methodologies (MSP, Agile, or equivalent).

Strong supplier management skills to ensure external vendors meet milestones and deliverables as agreed in the business case.

Proven ability to manage budgets, assess risks, and resolve issues to keep projects on track.

Stakeholder Engagement & Communication:

Experience engaging with executive and senior leadership to ensure data governance alignment with organizational priorities.

Ability to collaborate across technical, data, and business teams to ensure governance practices meet operational needs.

Excellent communication and influencing skills, with the ability to translate complex data governance concepts into clear, actionable business value.

Desirable Experience

Experience in cloud data governance and managing data in hybrid cloud environments.

Knowledge of AI/ML governance and the necessary data readiness to support AI/ML initiatives.

Experience managing data operating model transformations at an enterprise level.

Key Skills & Attributes

Leadership: You will be an advocate for data governance, promoting its importance across all levels of the organization and embedding it into the company culture.

Problem-Solving: You will demonstrate critical thinking and problem-solving skills, particularly in relation to data governance frameworks, processes, and tools.

Communication: Strong interpersonal and communication skills, capable of translating complex technical concepts into business terms that resonate with senior leadership and non-technical stakeholders.

Collaboration: Ability to work collaboratively with internal teams, external suppliers, and stakeholders to ensure the successful delivery of data governance objectives.

People Source Consulting Ltd is acting as an Employment Business in relation to this vacancy. People Source specialise in technology recruitment across niche markets including Information Technology, Digital TV, Digital Marketing, Project and Programme Management, SAP, Digital and Consumer Electronics, Air Traffic Management, Management Consultancy, Business Intelligence, Manufacturing, Telecoms, Public Sector, Healthcare, Finance and Oil & Gas

Related Jobs

View all jobs

Data Governance Programme Lead

Data Governance Operating Model Business Lead

Data Governance Lead

Data Governance Lead

Contract Management System and Data Governance Manager

Data Governance & Quality Lead

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Atos Data‑Engineering Jobs in 2025: Your Complete UK Guide to Architecting the Backbone of Digital Transformation

From building the data lake that powers the 2024 Paris Olympic Games to operating one of Europe’s fastest exascale supercomputers, Atos (and its digital spin‑off Eviden) sits at the heart of large‑scale data transformation. The company’s Big Data & Security and Digital Business Platforms units design, build and run cloud‑native analytics stacks for governments, telecoms, financial services and retailers worldwide. With the split of infrastructure services into Tech Foundry and digital/AI into Eviden completed in January 2025, Atos is doubling down on data engineering talent. The Atos careers site currently lists 400+ UK vacancies, more than 150 tagged “Data & AI”. Whether you’re a Python‑Spark aficionado, an ELT wizard on Azure Synapse, or a solution architect who can turn legacy mainframe feeds into real‑time dashboards, this guide explains how to land an Atos data‑engineering job in 2025.

Data Engineering vs. Data Science vs. Data Analytics Jobs: Which Path Should You Choose?

In the modern data-driven era, businesses in every sector—retail, finance, healthcare, and beyond—are constantly gathering large volumes of information to power insights and fuel decision-making. Consequently, the demand for data professionals has skyrocketed, with Data Engineering jobs in particular experiencing rapid growth. However, many job seekers remain unsure about how Data Engineering differs from Data Science or Data Analytics, or which role aligns best with their interests and career aspirations. This comprehensive guide will demystify the key differences among Data Engineering, Data Science, and Data Analytics. We’ll explore overlapping and distinctive skills, delve into typical job responsibilities, discuss salary ranges, and provide real-world examples of each role in action. By the end, you’ll have a clearer understanding of which path might suit you best. And when you’re ready to move forward, visit www.dataengineeringjobs.co.uk to explore the latest vacancies and take the next step in your data-focused career.

Data Engineering Programming Languages for Job Seekers: Which Should You Learn First to Launch Your Career?

In an era where data is fueling decision-making and driving innovation across industries, data engineering has emerged as a pivotal career path. Rather than just collecting and storing information, data engineers design and maintain sophisticated pipelines that transport, transform, and store massive datasets—enabling data scientists, analysts, and business teams to glean meaningful insights. If you’re researching opportunities on www.dataengineering.co.uk, you may be wondering: “Which programming language should I learn first for a career in data engineering?” It’s a great question. Data engineering spans a wide range of tasks—ETL pipelines, real-time streaming, data warehousing, big data frameworks, and more—requiring a versatile toolset. Languages like SQL, Python, Scala, Java, Go, and R each play unique roles in building robust data infrastructures. In this guide, you’ll discover: Detailed overviews of the top programming languages in data engineering. Pros, cons, and industry relevance for each language. A simple beginner’s project to sharpen your data engineering skills. Essential resources and tips to help you thrive in the job market.