Senior Data Engineer
SPH MEDIA LIMITED
About the Role
We are hiring Data Engineers at all levels, seeking individuals who bring deep technical expertise and a clear drive to deliver measurable results.
In this role, you will lead end-to-end engineering projects, designing and building the scalable data infrastructure that underpins our business. From architecting data lakes and developing customer data platforms to delivering AI-powered intelligence solutions, you will play a central role in creating the analytical data products and foundational systems that enable data-driven decisions across multiple business lines.
This is a compelling opportunity to shape high-impact projects, work alongside senior leadership, and make a meaningful contribution to our core media business.
Roles & Responsibilities
Data Infrastructure & Architecture
- Design, build, and maintain scalable data pipelines and lake architectures that serve as the backbone of audience, product, and commercial decision-making across the organisation
- Architect and manage our data lake ecosystem, defining standards for data ingestion, storage, transformation, and access across structured and unstructured data sources
- Contribute to the evolution of our data stack, evaluating and implementing tools and technologies that improve performance, scalability, and developer experience
- Design and maintain a feature registry that serves as the single source of truth for cataloguing, lineage, ownership, and SLAs; supports Data Scientists and Machine Learning Engineers with robust search, documentation, and discovery capabilities across a large feature portfolio
Data Products & Platforms
- Develop and own core data products including our customer data platform, audience intelligence and other AI-powered analytical tools, ensuring they are reliable, well-documented, and built for scale
- Build and maintain robust data models that support analytics, reporting, and machine learning use cases across multiple business lines including subscriptions, advertising, and editorial
Governance & Quality
- Establish and champion data quality standards, governance frameworks, and observability practices that ensure trust and reliability in our data across the organisation
AI & Advanced Analytics
- Partner with Data Scientists, Machine Learning Engineers, and Product teams to co-develop and deploy AI-powered solutions that drive audience growth and engagement
- Translate complex and ambiguous business requirements into well-scoped, production-grade data solutions that can operate reliably at scale in a fast-moving media environment
Capability & Knowledge Development
- Stay abreast of the latest developments in data engineering and AI, evaluating their practical applicability to our business context
- Contribute to a culture of technical excellence, knowledge sharing, and continuous improvement across the data organisation
Who are we looking for
Educational Qualifications
- An advanced degree(Master's or PhD) in Computer Science, Computer Engineering, Data Engineering, or a related quantitative field
- Candidates without a formal advanced degree who can demonstrate equivalent depth through a strong professional track record and portfolio of impactful work are equally encouraged to apply
Technical Experience
Data Products & Platforms
- Minimum 8 years of hands-on experience designing and building dataproducts such as customer data platforms, audience analytics platforms, orpersonalisation and recommendation systems
- Proven ability to deliver data products that are reliable,well-documented, and built for scale in a production environment
- Experience building AI-powered solutions, including integration withmachine learning models and intelligent data pipelines, will be highly regarded
- Experience in the media or internet industry is a strong advantage
Data Infrastructure& Architecture
- Hands-on experience architecting and maintaining data lake ecosystems, defining standards for data ingestion, storage, transformation, and access across structured and unstructured data sources
- Demonstrated experience building and managing low-latency large-scale data pipelines that serve analytics, reporting, and machine learning use cases
- Experience in designing, building and operating centralised feature store, with an emphasis on consistency, correctness and reusability between training and serving environments
- Strong proficiency with large-scale batch and streamlining data processing frameworks, and applying them in production environments
Analytics Engineering
- Experience with analytics engineering practices and tools, including data modelling, transformation layer design, and documentation standards
- Strong understanding of data warehousing concepts, dimensional modelling, and modern lake house architectures
Core Engineering Skills
- Deep proficiency in SQL, Apache Spark and at least one programming language such as Python or Scala. Coding tests may be required.
- Solid understanding of data governance best practices, data quality frameworks, and observability tooling
Functional Skills
- Minimum 10 years of experience building and managing high-performance engineering teams, with a track record of fostering technical excellence, accountability, and a strong culture of delivery
- Excellent communication skills with the ability to translate complex technical concepts for both technical and non-technical stakeholders across product, editorial, and commercial teams
- Comfortable working in cross-functional, fast-moving environments where priorities may evolve