Enterprise Data Architect - Central London

Endeavour Recruitment Solutions
London
1 month ago
Applications closed

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Enterprise Data Architect - Central London

Country: United Kingdom

Location: London

Sector: Architect

Daily Rate: EUR 430 per day

Job Type: Contract

Posted Tuesday, 12 September 2017

Endeavour is looking for a seasoned Data Architect to join our London-based reputable client, for a not-to-be missed contract opportunity in the pharmaceutical industry.

The ideal candidate will have relevant professional qualifications and at least 8 years’ experience in the domain of Enterprise Data Architecture and TOGAF.

The successful Data Architect will be involved in the following daily tasks:

  • Develop modelling standards, guidelines and best practices;
  • Develop and maintain subject area conceptual data models for their portfolio;
  • Take part in the peer review of data related deliverables;
  • The Data Architect will also play the role of Data Modeller when required, and as such, will:

- Capture, model and describe data requirements, data definitions, business rules, data quality requirements, data security requirements;

- Develop and maintain logical and physical data models;

- Develop and maintain canonical message models;

- Define source-to-target mappings for data migrations.

Required skills and experience:

  • PowerDesigner
  • Advanced level knowledge and understanding of application design, systems engineering and integration, in particular in the areas related to the key responsibilities described;
  • Experience in data design governed by Enterprise Data Architecture is desirable, preferably using TOGAF;
  • Experience with RUP or comparable systems engineering disciplines;
  • Demonstrable leadership capabilities are mandatory;
  • Experience in managing interactions between the data architecture team and other stakeholders (database administrators, software architects, business analysts, testers, support, management, business, etc.).

Communication abilities:

  • Able to summarise and present successfully key technical issues to the relevant stakeholders (developers, analysts, peers, management and business users) considering the background of the audience;
  • Prepare and deliver formal presentations to the relevant stakeholders;
  • Liaise with different technical teams, such as database administrators, software architects, developers, testers and support, understanding their requirements.

Please get in touch for further details.

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