Collibra Integration Engineer/ Data Engineer (Collibra)

London
1 month ago
Applications closed

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Job Title: Collibra Integration Engineer
Location: HEX - London - 3 days a week onsite
Contract Type: 6 months
Rate: Circa £415.16 per day

Are you passionate about data governance and eager to make a significant impact? Our client is looking for a dynamic Collibra Integration Engineer to join their innovative EMEA Data Office team! This is an exciting opportunity to support the implementation of robust data governance practises across essential business services.

My client is one of the largest financial institutions headquartered in Japan, with an established presence across all consumer and corporate banking businesses. Through its subsidiaries and affiliates, they offer a diverse range of financial services, including commercial banking, leasing, securities, credit card, consumer finance and other services.

Purpose of the Role:
As a Collibra Integration Engineer, you will play a crucial role in ensuring that all policies, procedures, standards, and technical metadata are effectively captured and represented within the Collibra platform. Your work will be integral to maintaining data lineage and governance, enabling the organisation to make data-driven decisions with confidence.

What We're Looking For:
To thrive in this role, you should possess:

Hands-on experience with Collibra (DIP / CDQ platform)
Strong understanding of data governance, metadata management, and data lineage
Experience configuring Collibra EDGE and Lineage Harvester
Ability to map physical data to logical data models
Strong communication and stakeholder management skills
Strong experience with Collibra and data governance practises.
Proficiency in data lineage, technical metadata, and data mapping.
Excellent stakeholder analysis skills.
A solid understanding of data quality, ETL processes, and database administration (DBA).
Exceptional communication and collaboration skills, with the ability to work across diverse teams.What You'll Be Doing:
In this role, you will:

Collaborate closely with Data Governance Analysts and IT teams to capture and maintain technical assets within Collibra.
Liaise with various functions including the Data Office, Application Teams, ETL Teams, and DBAs to manage prerequisites for data sources.
Design and implement advanced data governance solutions using the Collibra DIP/CDQ platform.
analyse stakeholder data governance needs and challenges to deliver tailored solutions.
Enable efficient data lineage and metadata management within the Collibra platform.
Configure and run EDGE and Lineage Harvester to access different datastores for generating physical and lineage assets.
Establish consistent contact with all teams to provide updates, manage timelines, and report risks and issues promptly.Additional Responsibilities:
You will also:

Support monthly Collibra upgrades and regression testing during implementation phases.
Manage and maintain the technical assets within the Collibra EMEA Community.Why Join Us?
This is more than just a job; it's a chance to be part of a forward-thinking organisation that values innovation and creativity. You'll have the opportunity to make a real difference in how data is governed, ensuring it is accessible and reliable for decision-making processes.

If you are ready to take on this exciting challenge and enhance your career, we want to hear from you! Apply today to join our client's team and help shape the future of data governance.

How to Apply:
Please send your CV and a brief cover letter outlining your relevant experience to [insert contact details here]. We look forward to welcoming you to the team!

Note: This position is temporary and expected to last for 6 months. Rate is competitive.

Pontoon is an employment consultancy. We put expertise, energy, and enthusiasm into improving everyone's chance of being part of the workplace. We respect and appreciate people of all ethnicities, generations, religious beliefs, sexual orientations, gender identities, and more. We do this by showcasing their talents, skills, and unique experience in an inclusive environment that helps them thrive. If you require reasonable adjustments at any stage, please let us know and we will be happy to support you

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