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Business Data Quality Analyst (11869)

eFinancialCareers
Berkshire
1 week ago
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Responsibilities

:

As a Business Data Quality Analyst, you will:
Collaborate with the Credit Modelling Team to understand their data requirements and identify available data sources. Conduct thorough gap analyses to identify discrepancies between required and available data. Systematically evaluate large historical datasets to identify and remediate data quality issues. Develop and implement a framework for assessing data quality dimensions, including accuracy,pleteness, consistency, timeliness, and validity. Specify and build data validations to proactively identify potential data quality issues. Create functional specifications for technical solutions that address identified data quality gaps, ensuring clarity and precision for technical teams. Partner with Operations and Tech teams to implement data quality remediation processes and necessary changes to enhance data integrity. Maintain and enhance the business glossary and data dictionary, ensuring that definitions and standards are clear and accessible across the organisation. Document data quality assessments, methodologies, and remediation processes to create a repository of knowledge for future reference. Monitor and report on data quality metrics to track improvements and identify ongoing issues. Provide training and support to stakeholders on data quality best practices and the importance of dataernance.
Core Skills and Knowledge:

To succeed in this role, you should possess:
A strong understanding of dataernance principles and the application of core data fields. Experience in data mapping and familiarity with business glossaries and data dictionaries. Proficiency in SQL for data access and analytical evaluation. Familiarity with the Azure stack and data warehousing concepts. Excellentmunication skills, both written and verbal, with the ability to convey technical concepts clearly to non-technical stakeholders. Strong analytical and diagnostic skills, with a keen attention to detail and the ability to identify gaps in data quality.
Desirable Attributes:

While not essential, the following attributes would be advantageous:
Knowledge of the asset finance industry and credit data. A collaborative mindset and the ability to work under pressure. Initiative and creative problem-solving capabilities. Tenacity and self-motivation to drive tasks topletion.
As part of our collaborative & agile culture, our working week is 4 days in the office and one day remote.

Investec offers a range of wellbeing benefits to make our people feel healthier, balanced and more fulfilled in their lives inside and outside of work.

Here is a selection of what we offer;

Wellbeing

Wellbeing Subsidy, Corporate Gym Membership, Virtual GP, Peppy Health App (Fertility, Menopause and Early Parenthood), Optional Private Medical & Dental Insurance

Monetary

Non-contributory Pension & Discretionary Bonus

Life & Ie Protection

Life Assurance, Critical Illness & Ie Protection

Travel

Season Ticket Loan & Electric Vehicle Scheme

Embedded in our culture is a sense of belonging and inclusion. This creates an environment in which everyone is free to be themselves which helps to drive innovation, creativity and ultimately business performance. At Investec we want everyone to find it easy to be themselves, and to feel they belong. It's a responsibility we all share and is integral to our purpose and values as an organisation.

Research shows that some candidates can be reluctant to apply to a role unless they meet all the criteria. We pride ourselves on our entrepreneurial spirit here and wee you to do the same - if the role excites you, please don't let our person specification hold you back. Get in touch!

Recite Me

Wemit to ensure that everyone is fairly assessed during our recruitment process. To assist candidates inpleting their application form, Recite Me assistive technology is available on our Careers pages. This can be accessed by clicking on the 'Accessibility Options' link at the top of the page.

The Recite Me tool includes a screen reader, styling and customisation options, a series of reading aids, a translator and more.

If you have any form of disability or neurodivergent need and require further assistance inpleting your application, please contact the Careers team at [email protected] who will be happy to assist. Job ID 11869

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