Data Governance Analyst

McNeil & Co.
London
1 month ago
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With a company culture rooted in collaboration, expertise and innovation, we aim to promote progress and inspire our clients, employees, investors and communities to achieve their greatest potential. Our work is the catalyst that helps others achieve their goals. In short, We Enable Possibility℠.

Responsibilities

  • Assist in implementing the data governance framework, policies, procedures, and standards
  • Work with business stakeholders and your team to ensure data lineage is captured for all critical data elements
  • Partner with business units and IT to ensure data is accurate, complete, and properly managed
  • Engage with stewards and SMEs to create and maintain a data dictionary and metadata repository
  • Assist in the creation of decks for data governance forums and contribute in these forums
  • Help create data governance training programmes and assist in running these with business users
  • Contribute to KPI and KRI creation for the data governance programme
  • Assist in the creation of newsletters and other promotional material for the Chief Data Office

Do you like solving complex business problems, working with talented colleagues and have an innovative mindset? Arch may be a great fit for you.

Please note: If this job isn’t the right fit but you’re interested in working for Arch, create a job alert! Simply create an account and opt in to receive emails when we have job openings that meet your criteria. Join our talent community to share your preferences directly with Arch’s Talent Acquisition team.

Arch Capital Group Ltd. is a Bermuda-based specialty insurer that provides insurance, reinsurance, and mortgage insurance on a worldwide basis. With a 20+-year track record of delivering results and a coveted position on the S&P 500 index, Arch is a great place to grow your career.

Please be vigilant to fraudulent activity if you receive a communication or email asking you to submit any personal information. Do not send money or pass any details to someone suggesting they can provide employment with Arch. You should only enter your information into our official career portal.

Please know the following about our interviewing and hiring practices:

  • We never make job offers without a formal, in-person interview process.
  • We never ask you to send money of any kind.


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