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Full Stack Data Engineer - Cape Town Technology & Data · Cape Town ·

Collinson Group
City of London
1 week ago
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Purpose of the job

The Full-Stack Data Engineer will play a critical role in Collinson's efforts to deliver secure by design customer‑centric global solutions with a focus on hands‑on execution. As a key member of the data engineering team, you will be responsible for designing, building, and maintaining data pipelines and infrastructure in both AWS and other cloud environments. Your hands‑on experience in analyzing complex data patterns to gather new insights and trend.

In this hands‑on role, you will be tasked with leveraging your technical expertise to deliversecure customer‑centric solutions that meet the unique needs of internal and external stakeholders across the Collinson group's global footprint. Additionally, you will have the opportunity to bring innovation to the team, using cutting‑edge data engineering frameworks and techniques.

As a Full‑Stack Data Engineer, you will be expected to not only deliver on technical projects, but also to mentor junior members of the team and help them get up to speed quickly. Strong communication and interpersonal skills are essential, as you will be working closely with stakeholders and clients to understand their data needs and help bring their data‑driven initiatives to life.

Key Responsibilities
  • Deliver audit‑ready and traceable solutions to support assurance, compliance reviews, and fraud risk monitoring.
  • Develop and deploy data models that align with diverse business requirements across compliance, audit, fraud detection, and assurance.
  • Design, develop, and maintain data pipelines for collecting, transforming, and loading data into various data stores.
  • Build and maintain data warehousing and data lake solutions
  • Develop and deploy data models that support various business requirements
  • Write efficient and scalable code in languages such as Python, Scala, or Java
  • Lead the design of data solutions with quality, automation, and performance in mind
  • Own the data pipelines feeding into the Data Platform ensuring they are reliable and scalable
  • Ensure data is available in a fit‑for‑purpose and timely manner for business and analytics consumption
  • Work with Data Governance team to ensure solutions are compliant with regulations such as GDPR and CISO policies and data quality is baked‑in to pipelines
  • Maintain and optimise existing data pipelines to improve performance and quality, minimising impacts to business
  • Collaborate with cross‑functional teams to understand data requirements and provide support for data‑driven initiatives
  • Set and embed standards for systems and solutions, and share knowledge to keep the team engaged and skilled in the latest technology
  • Prototype and adopt new approaches, driving innovation into the solutions
  • Work closely with the Data Product Manager and Assurance Team to support alignment of requirements and sources of data from line of business systems and other endpoints
  • Effectively communicate plans and progress to both technical and non‑technical stakeholders
  • Develop and implement the Data roadmap for strategic data sets
  • Communicate complex solutions in a clear and understandable way to both experts and non‑experts
  • Mentor and guide junior members of the team to help them get up to speed in a short amount of time
  • Interact with stakeholders and clients to understand their data requirements and provide solutions
  • Stay up‑to‑date with industry trends and technology advancements in data engineering
  • Promote the Data Platform and Data & Analytics team brand throughout the business and represent the interests of data engineering in cross‑functional forums
  • Champion the importance of modern data solutions across the business and support the education of colleagues on the business value of obtaining good quality data
Knowledge, skills and experience required
  • Extensive experience leading AWS and cloud data platform transformations
  • Proven track record of delivering large‑scale data and analytical solutions in a cloud environment
  • Hands‑on experience with end‑to‑end data pipeline implementation on AWS, including data preparation, extraction, transformation & loading, normalization, aggregation, warehousing, data lakes, and data governance
  • Expertise in developing Data Warehouses
  • In‑depth understanding of modern data architecture such as Data Lake, Data Warehouse, Lakehouse, and Data Mesh
  • Strong knowledge of data architecture and data modelling practices
  • Cost‑effective management of data pipelines
  • Familiarity with CI/CD driven data pipeline and infrastructure
  • Agile delivery approach using Scrum and Kanban methodologies
  • Ability to scope, estimate, and deliver committed work within deadlines, both independently and as part of an agile team
  • Supporting QA and user acceptance testing processes
  • Innovative problem‑solving skills and ability to provide clear recommendations
  • Understanding of the impact of changes to business rules on data processes
  • Excellent communication and influencing skills, especially in regard to data solutions and outcomes
  • Experience managing and leading a small team of data engineers
  • Self‑driven and constantly seeking opportunities to improve data processes
  • Strong knowledge of how data drives analytical and reporting activities, including automated marketing and personalization capabilities

Python, PySpark, SQL, NoSQL DBs (Mongo), Bash Scripting, Snowflake, Kafka, Nifi, Glue, Databrew, AWS, Kinesis, Terraform, APIs, and Lakehouse

Person Specification
  • Self‑motivator with a desire to learn new skills and embrace new technologies in a constantly changing technology landscape
  • Ability to thrive in a fast moving environment
  • Ability to show initiative, innovation and work independently when required
  • Ability to work at pace and tackle project challenges in a collegiate, collaborative way
  • Goal and outcome orientated
  • Thoroughness and attention to detail
  • Good communication skills (ability to present, inform and guide others)
  • Ability to bridge communications between technical and business focussed groups
  • Comfortable working with people at all levels in an organisation


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