Ecommerce Data Architect

developrec
London
2 months ago
Applications closed

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Job Description

Position: Ecommerce Data Architect - Contract – 6 months – Outside IR35

Location: London, UK, Hybrid Working

Role Summary:

As a Data Architect, you will play a key role in designing and delivering the data strategy for migrating from the Hybris eCommerce platform to Adobe Commerce. This hands-on position will focus on customer data migration, system integration, and supporting development, testing, and live operations. You will tackle technical challenges, ensuring data integrity, accuracy, and security throughout the migration process. You will balance strategic planning with hands-on involvement, offering guidance to development teams and troubleshooting data-related issues.

Role Responsibilities:

  • Data Architecture and Migration:Lead the strategy for migrating customer data from Hybris to Adobe Commerce, ensuring seamless integration and data flow.
  • Problem-Solving and Support:Collaborate closely with development teams to resolve data-related issues during migration and provide hands-on support for troubleshooting.
  • Design and Integration:Architect and implement solutions that ensure smooth integration between Adobe Commerce, ERP, POS, and warehouse management systems.
  • Development and Testing Support:Provide validated datasets for testing, support QA teams, and troubleshoot live data operations post-migration.
  • Governance and Compliance:Establish data governance frameworks and ensure compliance with regulations like GDPR, ensuring ongoing data quality and security.

What are we looking for?

  • 7+ years of experience in data architecture and migration, specifically for large-scale eCommerce projects.
  • Hands-on experience with customer data migration, ETL tools, and methodologies.
  • Strong knowledge of integration frameworks, APIs, and middleware.
  • Experience with Adobe Commerce (Magento), Hybris, or similar platforms.
  • Proficiency in relational databases, data warehouses, and cloud-based data solutions (e.g., AWS, Azure).
  • Experience with ERP, POS, and customer data structures.
  • Background in luxury or high-end retail environments is a plus.
  • Expertise in advanced analytics and data modelling for personalization and insights.
  • Familiarity with DevOps practices in data-driven applications.

What’s in it for you?

  • Competitive day rate
  • Collaborate with a talented team of developers, testers, and operations experts
  • Work within a hybrid model offering flexibility and the chance to be part of a forward-thinking digital transformation.

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