Operations Data Analyst

Liverpool
1 day ago
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Operations Process Analyst

Red Recruitment is looking to recruit a Operations Data Analyst for our client. You will be responsible for all aspects of the development, implementation and maintenance of the data analysis tools & visualisations within the Investment Operations team.

This will also include identifying improvements in existing processes and maintaining all documentation, to ensure a robust business continuity environment.

Benefits and Package for a Operations Data Analyst:

Salary: Competitive

Hours: Full-time

Contract Type: Permanent

Location: Liverpool

25 days annual leave plus bank holidays

Workplace Pension

Private medical insurance for employees

Permanent health insuranceKey Responsibilities of a Operations Data Analyst:

The creation and provision of timely and accurate management information for Investment Operations processes, and their related analytical interpretation across the team.

* The production of data visualisation tools and dashboards to make large or complex data more accessible to the business.

* To use all available tools and packages to introduce rigid, controlled and automated analysis of Wealth at Work and third-party data.

* To ensure that all current and future controls are documented both for their purpose as well as their creation and maintenance.

* To provide trend analysis to meet business needs and provide essential information to feed into the future development and evolution of the team.

* To design and implement controls to ensure that both internal and external Service Level Agreements are met.

* To maintain a good working knowledge of Wealth at Work systems & technical developments.

* To identify and introduce methods to update, simplify and enhance reporting processes, procedures and controls.

* To analyse and integrate new data sets from current or future third party suppliers.

* Being passionate and demonstrate behaviours in line with the Company's ethos, vision and key principles

Key Skills and Experience of a Operations Data Analyst:

Experience demonstrating and publishing dashboards and handling user feedback is essential.

Familiarity with Github and project management tools like Trello and Figma is desirable.

Ability to review & cleanse data sets by identifying corrupted data, fixing coding errors as well as related problems

An analytical approach to risk mitigation and control with an understanding of the role that data analysis plays in automated controls.

Experience of writing and maintaining high-quality business, process and procedural documentation

Comfortable taking responsibility to drive and deliver initiatives from outset to completion

Ability to make recommendations for business and process improvement

Be able to work to deadlines and have proven time management skills

Proactive, collaborative, methodical and thorough approach to work, with excellent attention to detail

Ability to work independently and as part of a team If you are interested in this position and have the relevant experience required, please apply now!

Red Recruitment (Agency)

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