The Onyx Research Data Platform organization represents a major investment by GSK R&D and Digital & Tech, designed to deliver a step-change in our ability to leverage data, knowledge, and prediction to find new medicines. We are a full-stack shop consisting of product and portfolio leadership, data engineering, infrastructure and DevOps, data / metadata / knowledge platforms, and AI/ML and analysis platforms, all geared toward:- Building a next-generation data experience for GSK's scientists, engineers, and decision-makers, increasing productivity, and reducing time spent on "data mechanics"- Providing best-in-class AI/ML and data analysis environments to accelerate our predictive capabilities and attract top-tier talent- Aggressively engineering our data at scale to unlock the value of our combined data assets and predictions in real-timeData Engineering is responsible for the design, delivery, support, and maintenance of industrialised automated end to end data services and pipelines. They apply standardised data models and mapping to ensure data is accessible for end users in end-to-end user tools through use of APIs. They define and embed best practices and ensure compliance with Quality Management practices and alignment to automated data governance. They also acquire and process internal and external, structure and unstructured data in line with Product requirements.A Senior Data Engineer is a leading technical contributor who can consistently take a poorly defined business or technical problem, work it to a well-defined data problem / specification, and execute on it at a high level. They have a strong focus on metrics, both for the impact of their work and for its inner workings / operations. They are a model for the team on best practice for software development in general (and data engineering in particular), including code quality, documentation, DevOps practices, and testing, and consistently mentor junior members of the team. They ensure robustness of our services and serve as an escalation point in the operation of existing services, pipelines, and workflows.A Senior Data Engineer should be deeply familiar with the tools of modern data engineering (e.g. Spark, Kafka, Storm) and of their customers, and engaged with the open source community surrounding them - potentially, even to the level of contributing pull requests.Key responsibilities for the Senior Data Engineer include:Designs, builds, and operates data tools, services, workflows, etc that deliver high value through the solution to key business problems by leveraging modern data engineering tools (e.g. Spark, Kafka, Storm, ...) and orchestration tools (e.g. Google Workflow, AirFlow Composer)Confidently optimizes design and execution of complex solutions in data ingestion and data transformationProduces well-engineered software, including appropriate automated test suites, technical documentation, and operational strategyDiverse problem solver who surfaces opportunities to reuse modular code and develop microservices to drive efficienciesProvides input into the roadmaps of upstream teams (e.g. Data Platforms, DataOps, DevOps) to help improve the overall program of workEnsure consistent application of platform abstractions to ensure quality and consistency with respect to logging and lineageFully versed in coding best practices and ways of working, and participates in code reviews and partnering to improve the team's standardsAdhere to QMS framework and CI/CD best practices and helps to guide improvements to them that improve ways of workingProvide leadership to team members to help others get the job done rightPlease view this video to get a better understanding of this role-Why you?Basic Qualifications:We are looking for professionals with these required skills to achieve our goals:Bachelor's Degree in Data Engineer