Data Architect

Agile Recruitment Ltd
Milton Keynes
1 week ago
Create job alert
DATA ARCHITECT – SQL, Tableau, Cognos

Permanent


up to £80,000 + bonus


My client is looking for a data architect to monitor data sources and analyse them for certain aspects using both database and data warehousing tools.


The ideal candidate is somebody that can design schemes that are supposed to accelerate the workflow of the company then translate their idealistic concepts into practical forms.


Responsibilities:

  • Define a company’s data standards and principles
  • Design, construct and further develop the data architecture in an organization
  • Design concepts to make the flow of data in the company as efficient as possible
  • Classify and organize data
  • Provide specifications for data quality
  • Monitor and analyse data sources using databases and data warehousing tools
  • Design schemes intended to accelerate the workflow of a company
  • Translate idealistic concepts into practical forms
  • Ensure compliance with data protection regulations
  • Create secure storage concepts
  • Cooperate and collaborate with system designers and programmers
  • Educate staff members through training
  • Test and troubleshoot system
  • Recommend solutions to improve new and existing database systems

Requirements:

  • Compliance with data protection regulations
  • Knowledge of data warehousing tools
  • Expert knowledge of data modelling
  • Expert knowledge of database management systems and information management
  • SQL
  • Database administration

apply now or send your cv over to


Tagged as: Data Architect Job Profile, Data Warehouse Architect Job Profile


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