Program Manager -risk and fraud in regulatory

N Consulting Ltd
Sunderland
1 year ago
Applications closed

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Data Engineering Manager

Location: Sunderland, UK
Work model: Need to work from Barclays Office in Sunderland 2 days a week
Contract duration: 1 year
Interview mode: 1 Internal Online, followed by Internal Infosys Face2Face . If selected then the person needs to face 1 or 2 rounds of online video based client interview.

Job title: Program Manager- Big Data-Cloudera
Minimum years of experience required: 10+
End client: Barclays

JD:

The main reasons for this decision are :

- The role is as an e2e Programme Manager on a large regulatory programme in the Risk and Fraud area.
- The role requires strong IT and business readiness experience.
- The role requires very strong business readiness experience.
- Due to he nature of the programme we need someone who can work effortlessly at a C-Suite level.

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