Data Warehouse Developer / Project Leader

Centre People
London
10 months ago
Applications closed

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  • Data Warehouse Developer / Project Leader

Ref: KM46371

Data Warehouse Developer / Project Leader

Sector:IT

Type:Full-time, Permanent

Location:London

Salary (Annual):£30k-50k depending on experience

Start:Summer 2025 (early start is welcome)

A major IT company in London is seeking a Data Warehouse Developer / Project Leader for the Japanese financial sector. The company is advancing the development of the DataHub system, which integrates data between the new system and existing downstream systems, and this position will play a central role in that. The development will be done collaboratively between the London and Tokyo offices, and this role will also include important responsibilities for system maintenance after implementation.

Data Warehouse Developer Main Responsibilities:

  1. DataHub System Development:Responsible for data integration between the new system and existing systems, handling data generation, transformation, and upload functions.
  2. Data Warehouse Construction:Understand data mapping between new and old systems and ensure accurate data integration.
  3. Problem-Solving and Task Management:Report to the project manager, manage tasks, resolve issues, and support the project’s progress.
  4. Collaboration with the Team:Facilitate communication and collaboration with cross-site IT teams, business leaders, and other IT vendors in both English and Japanese.
  5. Progress Reporting:Report project progress and issues in both English and Japanese.

Data Warehouse Developer Ideal Candidate:Required Qualifications:

  1. Experience with SQL and C# (Experience with SSIS and SQL Server is preferred).
  2. Experience as a project leader in large-scale IT projects.
  3. Ability to work independently and collaboratively within a team.
  4. Strong verbal and written communication skills in both English and Japanese.

Preferred Qualifications:

  1. EUC development experience in financial institutions.
  2. Experience working at a Japanese bank or understanding of Japanese culture.
  3. Strong analytical and problem-solving skills.

Note:All applicants must have the right to work in the country without any restrictions as the Company is not able to offer visa support.

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