Data Governance Associate

PowerToFly
Glasgow
1 month ago
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Data Governance Associate


Location – Glasgow


JR028631


Company Profile

Morgan Stanley is a leading global financial services firm providing a wide range of investment banking, securities, investment management and wealth management services. The Firm's employees serve clients worldwide including corporations, governments and individuals from greater than 1,200 offices in 43 countries.


As a market leader, the talent and passion of our people is critical to our success. Together, we share a common set of values rooted in integrity, excellence and strong team ethic. Morgan Stanley can provide a superior foundation for building a professional career - a place for people to learn, to achieve and grow. A philosophy that balances personal lifestyles, perspectives and needs is an important part of our culture.


Job Description

We're seeking someone to join our team as a Governance Associate in the Data Governance & AI Non-Financial Risk team which provides oversight of data related risks involving privacy, information management, data quality and AI Governance consideration.


In the Legal & Compliance division, we assist the Firm in achieving its business objectives by facilitating and overseeing the Firm's management of legal, regulatory and franchise risk. This is an Associate level position within the Data Governance team which is responsible for running firmwide governance committees, managing EMEA specific projects and supporting the global team.


Since 1935, Morgan Stanley is known as a global leader in financial services, always evolving and innovating to better serve our clients and our communities in more than 40 countries around the world.


What you'll do in the role:

  • Assist with project management of ad hoc EMEA-led projects / initiatives, e.g. EU AI Act
  • Assist with the preparation and running of governance meetings, including producing meeting minutes
  • Budget tracking
  • Issue management
  • Assist with onboarding and training of new joiners

What you'll bring to the role:

  • Can do attitude
  • Ability to collaborate and partner with cross-functional teams/individuals at all levels
  • Demonstrated organizational skills, including the ability to prioritize tasks
  • Proactive work ethic and team player mindset
  • Exceptional written and verbal communication skills
  • An interest in data related risks and regulation
  • A willingness to learn and develop

At least 2 years' relevant experience would generally be expected to find the skills required for this role


WHAT YOU CAN EXPECT FROM MORGAN STANLEY:

At Morgan Stanley, we raise, manage and allocate capital for our clients – helping them reach their goals. We do it in a way that’s differentiated – and we’ve done that for 90 years. Our values - putting clients first, doing the right thing, leading with exceptional ideas, committing to diversity and inclusion, and giving back - aren’t just beliefs, they guide the decisions we make every day to do what's best for our clients, communities and more than 80,000 employees in 1,200 offices across 42 countries. At Morgan Stanley, you’ll find an opportunity to work alongside the best and the brightest, in an environment where you are supported and empowered. Our teams are relentless collaborators and creative thinkers, fueled by their diverse backgrounds and experiences. We are proud to support our employees and their families at every point along their work-life journey, offering some of the most attractive and comprehensive employee benefits and perks in the industry. There’s also ample opportunity to move about the business for those who show passion and grit in their work.


To learn more about our offices across the globe, please copy and paste https://www.morganstanley.com/about-us/global-offices into your browser.


Certified Persons Regulatory Requirements

If this role is deemed a Certified role and may require the role holder to hold mandatory regulatory qualifications or the minimum qualifications to meet internal company benchmarks.


Flexible work statement

Interested in flexible working opportunities? Morgan Stanley empowers employees to have greater freedom of choice through flexible working arrangements. Speak to our recruitment team to find out more.


Morgan Stanley is an equal opportunities employer

We work to provide a supportive and inclusive environment where all individuals can maximize their full potential. Our skilled and creative workforce is comprised of individuals drawn from a broad cross section of the global communities in which we operate and who reflect a variety of backgrounds, talents, perspectives, and experiences. Our strong commitment to a culture of inclusion is evident through our constant focus on recruiting, developing, and advancing individuals based on their skills and talents.


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