Data Engineer

PURVIEW
Glasgow
1 month ago
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PURVIEW Glasgow, Scotland, United Kingdom

Data Analyst

PURVIEW Glasgow, Scotland, United Kingdom

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Role : Data Analyst

Location : Glasgow (3 days in a week onsite)

Job Type : Contract (Inside IR35)

NOTE: Our client is not accepting ICT, Skilled Work Visa, PSW, Graduate Visa and Business Visa holders.

Job Description:

Our company is searching for experienced candidates for the position of technical data analyst. Please review the list of responsibilities and qualifications. While this is our ideal list, we will consider candidates that do not necessarily have all of the qualifications, but have sufficient experience and talent.

Responsibilities for technical data analyst

  • Primary skills : Data, Python, pyspark
  • Exp in Finance or Banking
  • Experience working with enterprise Master Data Management tools to validate, match, and merge various master data sources into a common view
  • Experience with data cleansing and validation processes and technologies
  • Master Data Management tools, technologies and the latest trends
  • Produce all technical deliverables to be consumed by modelers, developers, and design documents for projects
  • Query and profile the data for data quality and ensure it provides what is required and perform data analysis to support the Business
  • Data Analysis & Design - Requirement Analysis, functional and technical specification development for projects
  • Provide Software Design, Business Requirement Document
  • Proficient in understanding cobol/mainframe programs, proc, subroutines, jcl and libraries and converting them in into Technical Specification and mapping document
  • Proficient in Writing SQLs and analyzing data for analysis/profiling
  • Understands Hadoop Architecture and Big Data Tools and Technologies especially Java, Scala or Python to write efficient reverse engineering mapping and specification documents

Qualifications for technical data analyst

  • Interface with reference data end-users within company units, business aligned IT groups and Data Operations
  • Draft requirement specifications based on end-user needs
  • Draft and document required changes to reference data applications PDP, RDM and QDB
  • Extract business logic from code
  • Structured documentation of user requirements
  • Candidates requiring visa sponsorship will not be required for this position

Seniority level

  • Seniority levelMid-Senior level

Employment type

  • Employment typeContract

Job function

  • Job functionDesign and Information Technology
  • IndustriesIT Services and IT Consulting, Banking, and Financial Services

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