Data Architect

Springer Nature
London
1 week ago
Create job alert

This role will develop a cohesive data architecture in a key area across Springer Nature’s research brands, transforming services and products towards a data-driven customer experience.

About you

You bring people together, getting the right artefact in front of the right people to shift the conversation towards agreement and understanding. You learn quickly, taking in the full context and complexity to work out what can and can’t be safely set aside for now. You communicate well and ensure stakeholders understand your architectural vision and its relationship to the business capabilities it will enable. You architect with an iterative approach, actively seeking input from multiple points, gathering feedback and adapting to new requirements and information.

Role Responsibilities

  • Collaborate with business stakeholders, technology teams, and data professionals to define and align on a target data architecture that supports strategic goals.

  • Drive the development and maintenance of data architecture guidelines and standards to ensure consistency across the organization, including digital products and marketing domains.

  • Provide guidance and mentorship to department representatives to promote improved data quality, harmonization, and governance practices.

  • Introduce and explain data concepts to senior business and product leaders to foster data literacy and informed decision-making.

  • Develop and maintain data models and artifacts to document the as-is and to-be states of the customer data landscape.

  • Identify and define desired data products that meet the research organization's needs, ensuring alignment with business requirements.

  • Collaborate with teams and solution architects to contribute to the development of the broader data ecosystem, including capabilities like data disambiguation, APIs, and machine learning models.

  • Continually validate architecture through delivery with product teams and course correct as necessary.

  • Collaborate with data privacy, governance, and management roles to establish and enforce data management, security, and compliance policies within areas of active development, ensuring adherence to relevant regulations (e.g., GDPR).

  • Build and maintain strong relationships with key stakeholders, including Solution Architects, Data Governance, Data Directors, Heads of Product, Data Protection Officer (DPO), Enterprise Architects, and Cybersecurity, to ensure the delivery of reliable, right, and secure data solutions.

  • Collaborate with other data architects in workshops, planning sessions, and product teams to create shared artifacts, fostering a collaborative and consistent approach to data architecture.

Skills & Experience Essential

  • Extensive experience in data modeling, with a proven track record of successfully modeling complex data domains.

  • Demonstrated experience in defining and documenting data strategies, roadmaps, and principles.

  • Strong understanding of data governance principles and practices, with experience driving improvements in data quality and harmonization.

  • Experience in defining and documenting non-functional requirements (e.g., data management, security, compliance) and ensuring their implementation.

  • Ability to review proposed technology options for architectural fit and define appropriate frameworks for technology selection.

  • Experience defining success measures and monitoring key data components to ensure performance and reliability.

  • Excellent communication and interpersonal skills, with the ability to effectively clarify constraints, trade-offs, and essential decisions to technical and non-technical stakeholders.

  • Proven ability to develop strategies to improve data quality and ensure data accuracy and consistency.

  • Experience creating regular feedback loops with stakeholders and product teams to ensure alignment and incorporate learnings into the data architecture.

Desirable

  • Knowledge of architectural disciplines such as data mesh, business intelligence (BI), data warehousing, and data platforms.

  • Experience with cloud-based data solutions and technologies.

  • Strong facilitation and alignment skills, with the ability to effectively navigate and influence across organizational silos.

  • Experience with aligning Agile delivery teams.

What you will be doing

1 month

  • Collaborate with key stakeholders to understand the research data landscape's current state and identify immediate improvement opportunities.

  • Document the as-is data/technical landscape for research data and the broader domain.

  • Build relationships and feedback loops with data governance, security, and other relevant groups to ensure alignment on data standards, security policies, and architectural principles.

  • Start to map out the existing data sources and identify potential issues that must be addressed.

3 months

  • Maintain a high-level roadmap for the development of the research data ecosystem, outlining key milestones and deliverables for the next 6-12 months, and presenting to senior leadership.

  • Determine how the technical architecture can support delivery autonomy while supporting consistent user journeys across our platforms.

  • Perform feasibility analysis and provide recommendations on Build vs. Buy for systems that support the agile development process, scalability, and data governance requirements.

  • Create an architectural forum to bring together architects and tech leads in the research data initiatives.

6 months

  • Refine the roadmap and architecture based on feedback from initial delivery, incorporating lessons learned and adjusting priorities as needed.

  • Scale the successful approaches to other areas of the research data ecosystem, empowering teams.

  • Develop and communicate a clear vision for the future of the research data ecosystem, highlighting its role in supporting strategic organizational goals.

#LI-AR1

#J-18808-Ljbffr

Related Jobs

View all jobs

Data Architect

Data Architect

Data Architect

Data Architect

Data Architect

Data Architect

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.

10 Essential Books to Read to Nail Your Data Science Career in the UK

Data science continues to be one of the most exciting and rapidly evolving fields in tech. With industries across the UK—ranging from finance and healthcare to e-commerce and government—embracing data-driven decision-making, the demand for skilled data scientists has soared. Whether you're a recent graduate looking for your first role or a professional aiming to advance your career, staying updated through books is crucial. In this article, we explore ten essential books every data science job seeker in the UK should read. Each book provides valuable insights into core concepts, practical applications, and industry-standard tools, helping you build skills employers are actively looking for.

Navigating Data Science Career Fairs Like a Pro: Preparing Your Pitch, Questions to Ask, and Follow-Up Strategies to Stand Out

Data science has taken centre stage in the modern workplace. Organisations rely on data-driven insights to shape everything from product innovation and customer experience to operational efficiency and strategic planning. As a result, there is a growing need for skilled data scientists who can analyse large volumes of data, build predictive models, communicate findings effectively, and collaborate cross-functionally. If you are looking to accelerate your data science career—or even land your first role—attending data science career fairs can be a game-changer. Unlike traditional online applications, face-to-face interactions let you showcase your personality, passion, and communication skills in addition to your technical expertise. However, to stand out in a busy environment, you need a clear strategy: from polishing your personal pitch and asking thoughtful questions to following up with a memorable message. In this article, we’ll guide you through every step of making a strong impression at data science career fairs in the UK and beyond.

Common Pitfalls Data Science Job Seekers Face and How to Avoid Them

Data science has become a linchpin for decision-making and innovation across countless industries, from finance and healthcare to tech and retail. The demand for data scientists in the UK continues to climb, with businesses seeking professionals who can interpret complex datasets, build predictive models, and communicate actionable insights. Despite this high demand, the job market can be extremely competitive—and many applicants unknowingly fall into avoidable traps. Whether you’re an aspiring data scientist fresh out of university, a professional transitioning from a quantitative role, or a seasoned analyst looking to expand your skill set, it’s crucial to navigate your job search effectively. In this article, we explore the most common pitfalls data science job seekers face and provide pragmatic advice to help you stand out. By refining your CV, portfolio, interview strategies, and communication skills, you can significantly increase your chances of landing a rewarding data science role. If you’re looking for your next data science job in the UK, don’t forget to explore the listings at Data Science Jobs. Read on to discover how to avoid critical mistakes and position yourself for success.