Data Migration Developers x 2

Bristol
8 months ago
Applications closed

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Data Migration Developers x 2

Salary: £45,000 - £50,000 + company benefits

Location - Hybrid (2-3 days per week in one of the following offices Bristol, Leicester or Plymouth)

Full time/permanent vacancy

You must be a sole British Nationals and be able to obtain BPSS/SC and NPPV clearance.

JOB PURPOSE

Working with the Business Object Data Services (BODS) Extract, Transform, Load (ETL) toolset to design, develop and support end-to-end data migration processes associated with both SAP and non SAP based programs.
Design and implement data quality and data cleansing requirements and methodologies.
Manage support, tools, and maintenance of integration processes.
Interact and collaborate with other data team members and business analysts.
Maintain and Support Corporate ETL & Data Migration Solutions in both SAP & Microsoft platforms.
Understanding of SAP data structures & tables and loading data to SAP using LSMW and BODS directly.

KEY TASKS

Design and develop SAP BODS jobs for data conversion and data integration to and from SAP and other sources.
Maintain and enhance the existing toolset to ensure delivery of maximum value as the project evolves.
Prepare Excel spreadsheets (Data Collection Workbooks) using SAP load formats (iDoc/BAPI/ABAP Programs) as load templates for data analysts to populate.
Identify and suggest existing or new emerging standards and best practices.
Manage and monitor job schedules and provide fix for any failed schedules/jobs.
Data cleansing, modeling (physical and logical), profiling, enterprise data architecting, data quality and data governance
Collaborate with technical team to maintain BODS server architecture, data governance and end-end processes.
Performance tuning of BODS ETL and data models.
Use the local repository metadata to generate reports for input into program and management reporting cycles.
Move the projects from DEV to SIT, SIT to UAT and UAT to PRD.
Schedule transformation jobs in Management Console to produce data load files in text format for loading via LSMW or directly into SAP tables and structures.
Use Business Objects Data Integrator (BODI) to create projects, batch jobs, workflows and dataflows.

Essential

Data modeling and data architecture skills using BODS ETL toolset
Expertise in SAP Data Extraction process BODS Jobs development.
Evidence of working in a challenging and complex organisation and demonstrable experience of contributing to a technical change.
Good experience of understanding and writing Data Stage ETL specifications and delivery of technical solutions to an agreed standard.
Experience delivering solutions to an agreed standard using industry standard methodologies.
Proven experience working in a small team delivering technical solutions to project requirements.
Bachelor's Degree in an Information Systems Field or preferably at least 3 years plus experience designing and/or delivering BODS ETL solutions/programs.Desirable

Business Objects Data Services certifications (highly desirable).
Experience in one or more SAP full lifecycle implementations using SAP BODS ETL toolset.
Knowledge of Master Data Management and SAP MDM/MDG products.
Experience in SAP functional areas such as Finance, Cost Controlling, Supply Chain, Contract Management and Plant Maintenance.--- Fusion People are committed to promoting equal opportunities to people regardless of age, gender, religion, belief, race, sexuality or disability. We operate as an employment agency and employment business. You'll find a wide selection of vacancies on our website

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