Investment Banking Controls BA/Data Analyst Belfast £600/day

Belfast
10 months ago
Applications closed

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Banking - Booking Controls BA/Data Analyst | Running Python Scripts | Tableau / Power BI Building Reporting Capabilities | Writing BRDs | Markets Controls | £600/day | Inside IR35 | Belfast| (Hybrid working 3 days in the office in Belfast per week) | This is inside IR35 - so you will be working through an Umbrella company | Initial contract period is 6 months.

Our client (a Global Bank) has a requirement for an experienced Booking Controls BA/Data Analyst with Python and Tableau/PowerBI Skills for an initial 6 month contract. You will have a background in Controls and Data

Please note that this role is 3 days per week in Belfast.

As well as the above the client is looking for someone with excellent communication skills that can engage with stakeholders all levels.

Booking Controls Business Analysis / Data Analysis
Python
Investment Banking

This would be working for an Investment Bank - and you'll need to have solid Booking Controls Knowledge plus Data Analysis and Python skills

Hybrid - Belfast based (three times per week in the office).

Please do send me your CV to start a conversation around this role.

£600/day inside IR35 (so you'll be working via an Umbrella company)

Investment Banking

Belfast Hybrid

Inside IR35

Adecco acts as an employment agency for permanent recruitment and an employment business for the supply of temporary workers. The Adecco Group UK & Ireland is an Equal Opportunities Employer.

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