Data Analyst With Sql Server Ssis

Free-Work UK
London
2 months ago
Applications closed

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Data Analyst with SQL Server and SSIS
Our Client a bank based in Central London is seeking a highly motivated Data Analyst to play a key role in building and maintaining a robust digital data infrastructure.
This position supports data users across the business, ensuring high-quality data extraction, reporting, and analytics capabilities.
Working closely with the IT Manager and various business units, you will help strengthen compliance and regulatory risk management through effective management information (MI) reporting and analytical insights.
Responsibilities
Develop, maintain, and enhance the Branch’s digital data infrastructure to ensure reliability and accessibility.
Deliver accurate and timely data extraction, MI analysis, and reporting to support operational, compliance, and regulatory needs.
Work collaboratively with IT and business departments to understand data requirements and provide analytical support.
Explore, evaluate, and propose new technologies/tools to improve data management, governance, and reporting efficiency.
Ensure data integrity and support the implementation of best practices in data governance.
Assist in identifying and managing data-related risks, supporting the Branch’s compliance and regulatory frameworks.
Must Have
Strong analytical skills with experience in data extraction, transformation, and reporting.
Proficiency in SQL Server, data visualisation tools (e.G., Power BI, Tableau), and data management technologies.
Understanding of data governance, regulatory reporting, and compliance requirements (banking/financial sector experience a plus).
Excellent problem-solving skills and attention to detail.
Ability to collaborate effectively with cross-functional teams and communicate complex information clearly.
Coming from an IT support function is a bonus
Data Analysis and Management
Maintain and develop SSIS packages
Perform ad-hoc data extraction and analytics based on requirements from business
Develop data visualisation for business
Work with business to enhance the data available to the data warehouse
Assist in testing reporting solutions developed by external vendors
Support and maintain the generation of internal MI reports
Support and advise the business on data related matters and automation possibilities
Any other responsibilities / tasks as assigned by the Head of IT from time to time
Business Performance
Support the department’s operations as and when needed and any other tasks assigned by the business stakeholders.
Work with the Managers to ensure the business is in compliant with applicable rules and regulations that falls within the department’s remit.
Work with the business to ensure timely submission of relevant department’s reports
To adhere and follow all Bank/Group applicable policies and procedures.
Data accuracy and ownership duties
To ensure all data worked on and or/shared with internal/external clients are accurate.
Escalate any data issue to the business promptly and without delays.
Ensuring any data sharing requests are discussed with business/DPO so that prior authorisation is given and follows GDPR / department’s SOPs.
Regulatory Compliance duties
Comply with all applicable individual conduct rules (especially the FCA Conduct Rules, Regulations, Bank policies and procedures and the banking Compliance.
Technical/Functional Skills

  • Knowledge in SQL query is essential - Working experience in administration and development with SQL (experience with SQL Server and SQL Server Integration Service is preferred)
  • Experience in working with data visualisation tools such as Power BI
  • Experience in working with scripting language such as VBA and Python
  • Experience in working with Power Automate is a plus
  • Required understanding of the business and business units Personal skills (Soft Competencies [Core/Leadership])
  • Personal integrity and ethics
  • Good judgement in enabling the provision of sound advice on regulation and practice, proactive management of compliance and regulatory risk

You will have at least 3 to 5 years’ relevant experience working in the data field, preferably in an established bank or financial institution.
Qualifications (Basic Degree/Diploma)
Bachelor's Degree or Professional Qualification in the relevant discipline (Degrees in Statistic, Information Systems, or similar)
This is an exciting position within a bank with interesting projects.
The salary for this position is in the range £40K- £45K.
Please do send your CV to us in Word format along with you salary and availability.

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