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Data Engineer Data, BI & Analytics · Mumbai ·

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

Working within the Transformation Team, you will be responsible for delivering key elements of our transformation programme.


You will create new, and develop existing, Alteryx workflows to increase the scope and capability of our billing processes.


You will be required to understand our business and the complexity behind our data and systems and have the ability to improve existing processes that are in place.


You will work alongside our Transformation, Operations and Finance teams to ensure our billing process is able to collect, prepare and load data accurately and efficiently. You will be skilled in using the Microsoft BI stack, SQL, SSRS and Excel.


You are joining a growing team who are tasked with revolutionising the way we capture and use data.


Key Responsibilities

  • Develop high quality Alteryx workflows to support business needs
  • Liaise with key stakeholders to ensure requirements are understood and met
  • Lead testing and quality assurance
  • Follow established change control processes to ensure integrity of code
  • Translate business needs into technical requirements
  • Acquire expert knowledge of Operational systems and processes
  • Review of operational tasks and suggest automation wherever possible
  • Contribute to the overall programme of business change
  • Create and maintain documentation

Knowledge, skills and experience required

  • Proven background delivering high quality output in time-pressured environments
  • Strong data analysis and data profiling skills with key emphasis on data quality
  • Strong analytical and problem solving skills
  • Good understanding of relational databases and the ability to query data
  • Billing process related experience would be an advantage

Excellent knowledge of BI Technologies:



  • Alteryx development and Gallery job execution essential
  • Snaplogic desirable
  • Tableau desirable

Experience of:



  • Microsoft SQL server
  • SQL Server Reporting Services (SSRS)
  • SQL Server Integration Services (SSIS)
  • Experience with Microsoft Access DB desirable
  • MYSQL experience desirable
  • Knowledge of the Payment Card Industry and PCI DSS
  • Technical writing and documentation skills
  • Attention to detail and accuracy
  • A methodical and structured approach to work
  • Ability to recommend and suggest data and process improvements based on knowledge gained
  • Excellent communicator and aptitude to be internal client facing
  • Be able to demonstrate creative thinking to develop innovative solutions
  • Able to work independently and multi task effectively.
  • Organised and able to manage individual workload and operate within the context of a team
  • Demonstrate flexibility in thinking and attitude with the ability to manage changing priorities


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