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Manager- Data Analytics

Crew Clothing Company
Kingston upon Thames
1 week ago
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Overview

Join to apply for the Manager- Data Analytics role at Crew Clothing Company. Kingston, England. Crew Clothing Company was founded in Salcombe in 1993. Today, Crew is a great British brand with more than 70 stores and a thriving website, and the business continues to grow.

Responsibilities
  • Develop and execute Crew’s data and analytics roadmap in alignment with business objectives.
  • Be the technical SME and lead engineer on a multitude of data and reporting platforms, including but not limited to Azure SQL, SQL Server, PowerBI, ZapBI, Azure Synapse, AWS Redshift and similar technologies.
  • Develop database queries in a variety of platforms to extract, populate and analyse statistics – sometimes using very large datasets.
  • Architect data platforms and work with partners to implement appropriate data integrations and data warehousing.
  • Produce, amend and recommend business reports & dashboards relevant to a retailer and on demand.
  • Own the relationship with middleware, integration, reporting and other relevant partners, ensuring high quality output and value for money.
  • Work with the IT director and others on defining and implementing a company AI adoption roadmap.
  • Transform and populate data between disparate systems, ensuring high quality and accuracy at all times.
Deliverables
  • A reliable, accurate and performant set of reporting and dashboards.
  • Reliable middleware and data warehousing, monitored by exception.
  • IT and business teams trained in supporting and using relevant reporting tools.
  • Accurate and timely delivery of sales order data between front-end platforms such as Shopify and back-end systems such as 3PL WMS.
  • Foster data-driven decision-making culture across the company.
Essential Skills
  • At least five years integration, middleware and reporting experience in a retail environment.
  • Demonstrable engineer-level knowledge of at least some of the middleware, integration and reporting systems in use at the company.
  • Experience developing and implementing data, data governance, security, privacy and lifecycle management initiatives and standards.
  • Ability to oversee the development of dashboards, KPI tracking and self-service BI tools to empower business users.
  • Customer-facing communication skills, able to translate business reporting needs into development activities whether on in house or partner platforms.
Seniority level
  • Mid-Senior level
Employment type
  • Full-time
Job function
  • Information Technology
Industries
  • Retail


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