Job Summary


Work embedded as a member of squad OR; across multiple squads to produce, test, document and review algorithms & data specific source code that supports the deployment & optimisation of data retrieval, processing, storage and distribution for a business area.


Job Description

Data Architecture & Data Engineering


Understand the technical landscape and bank wide architecture that is connected to or dependent on the business area supported in order to effectively design & deliver data solutions (architecture, pipeline etc.)
Translate / interpret the data architecture direction and associated business requirements & leverage expertise in analytical & creative problem solving to synthesise data solution designs (build a solution from its components) beyond the analysis of the problem
Participate in design thinking processes to successfully deliver data solution blueprints
Leverage state of the art relational and No-SQL databases as well integration and streaming platforms do deliver sustainable business specific data solutions.
Design data retrieval, storage & distribution solutions (and OR components thereof) including contributing to all phases of the development lifecycle e.g. design process
Develop high quality data processing, retrieval, storage & distribution design in a test driven & domain driven / cross domain environment
Build analytics tools that utilize the data pipeline by quickly producing well-organised, optimized, and documented source code & algorithms to deliver technical data solutions
Create & Maintain Sophisticated CI / CD Pipelines (authoring & supporting CI/CD pipelines in Jenkins or similar tools and deploy to multi-site environments – supporting and managing your applications all the way to production)
Automate tasks through appropriate tools and scripting technologies e.g. Ansible, Chef
Debug existing source code and polish feature sets.
Assemble large, complex data sets that meet business requirements & manage the data pipeline
Build infrastructure to automate extremely high volumes of data delivery
Create data tools for analytics and data science teams that assist them in building and optimizing data sets for the benefit of the business
Ensure designs & solutions support the technical organisation principles of self-service, repeatability, testability, scalability & resilience
Apply general design patterns and paradigms to deliver technical solutions
Inform & support the infrastructure build required for optimal extraction, transformation, and loading of data from a wide variety of data sources
Support the continuous optimisation, improvement & automation of data processing, retrieval, storage & distribution processes
Ensure the quality assurance and testing of all data solutions aligned to the QA Engineering & broader architectural guidelines and standards of the organisation
Implement & align to the Group Security standards and practices to ensure the undisputable separation, security & quality of the organisation’s data
Meaningfully contribute to & ensure solutions align to the design & direction of the Group Architecture & in particular data standards, principles, preferences & practices. Short term deployment must align to strategic long term delivery.
Meaningfully contribute to & ensure solutions align to the design and direction of the Group Infrastructure standards and practices e.g. OLA’s, IAAS, PAAS, SAAS, Containerisation etc.
Monitor the performance of data solutions designs & ensure ongoing optimization of data solutions
Stay ahead of the curve on data processing, retrieval, storage & distribution technologies & processes (global best practices & trends) to ensure best practice


Risk & Governance


Identify technical risks and mitigate these (pre, during & post deployment)
Update / Design all application documentation aligned to the organization technical standards and risk / governance frameworks
Create business cases & solution specifications for various governance processes (e.g. CTO approvals)
Participate in incident management & DR activity – applying critical thinking, problem solving & technical expertise to get to the bottom of major incidents
Deliver on time & on budget (always)


Must have experience in:


Spark and Scala Developers
Hadoop experience 
Experience in ETL
AWS (S3 Buckets)
Data Engineering skill


Education


Bachelor's Degree: Information Technology
  • ICT
  • Computer