Data Governance analyst AND AI Governance Analyst

Manchester
2 weeks ago
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Pontoon is an employment consultancy. We put expertise, energy, and enthusiasm into improving everyone's chance of being part of the workplace. We respect and appreciate people of all ethnicities, generations, religious beliefs, sexual orientations, gender identities, and more. We do this by showcasing their talents, skills, and unique experience in an inclusive environment that helps them thrive.

A market leading financial client based in Manchester require an accomplished Data Governance analyst/ Data Analyst to join them for an exciting and challenging engagement.

For this opportunity you will be an employee of ourselves working on site with the client while being rewarded with a strong salary, holidays, pension, certification opportunities and more!

Role: DaData Governance analyst AND AI Governance Analyst

Location: Manchester (3 Days week Onsite)

Duration: 6 Months

Salary: Circa £51k- £53k/Annum

Experience and Skills required:

Demonstrable Data Governance, Data Management or AI Governance experience, including in applying policy-based control processes.
Experienced within Data privacy, Data Governance, Compliance and Risk.
Experience in Financial service background is essential.
An execution-focused, results-oriented, strong collaborator and communicator.
Highly proficient at analysis, and in independently managing and delivering against a defined programme of work.

Responsibilities:

Support the efficient operation of Data Ethics Framework, in line with Key Performance Indicators (KPIs). Data Ethics is a core component of AI governance, focused on the responsible use of data and AI.
Review AI initiatives developed across the firm against relevant Data Ethics and Data Governance Policies, Standards and Procedures, in co-ordination with other members of the Data Ethics Office.

Ajilon Consultant**

You will be an integral part of Ajilon (Adecco), a FTSE500 Global organisation with over 52 clients and sole supplier to the biggest organisations in the country and the world. You will be employed by ourselves as an Ajilon Consultant working onsite with our client where you will receive a regular salary, annual bonus payment, pension contributions, holiday and sick pay, plus a number of additional benefits such as medical insurance, income protection, critical illness and life insurance, access to our discounted benefits website and library of online training materials and future career and certification opportunities.

This great opportunity is being offered on a PAYE basis which means a LTD/Umbrella company cannot be used.

If you think you have the experience and you would like to become an employee of this fast-growing business unit within Ajilon please apply with your CV right now for swift consideration!

Candidates will ideally show evidence of the above in their CV to be considered.

Please be advised if you haven't heard from us within 48 hours then unfortunately your application has not been successful on this occasion, we may however keep your details on file for any suitable future vacancies and contact you accordingly.

Pontoon is an employment consultancy and operates as an equal opportunity's employer.

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