AWS Data Solutions Architect - Hybrid - £90k - £110k

Tenth Revolution Group
City of London
1 year ago
Applications closed

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AWS Data Solutions Architect - Hybrid - London - £90k - £110kThis role will be filled by MONDAY 20th JANUARY and is an URGENT hire!This is a brand new opportunity for an experienced AWS data solutions architect to join a global analytics and digital solutions company that partners with clients to improve business outcomes and unlock growth. My client have made a huge investment in the data analytical space and have invested/built their in-house Gen AI capability, with a lot of focus on investments in the Data management space. Data is truly at the centre of everything they do. Salary & BenefitsSalary: £90k - £110k (depending on experience)12.5% bonus Hybrid working - 0-3 days per week in office (dependant on client requirements)Dragons Den Initiative Scheme. Employees give their ideas to senior Leadership (within the Data and AI space), and if their idea is good £250,000 can be invested into their business proposition. Finalists are going to New York in December to see senior leadership to have the opportunity.Company contributory pension schemePrivate healthcare Position OverviewThe AWS Data Solutions Architect is a strategic role which requires technical expertise to guide, design, and deliver robust data management and data architecture solutions. Working alongside engagement and project managers, you will lead client assessments, recommend future state architectures, and develop strategies aligned with client objectives utilising AWS. Role & Responsibilities* Technical Leadership: Lead technical teams in crafting and delivering end-to-end data solutions, addressing complex business needs with expertise in AWS specifically.* Solution Architecture: Design and build large-scale data solutions, including data lakes, lakehouses, and warehouses.* Data Governance and Management: Apply data governance and master data management tools (e.g., Unity Catalog, Profisee, Alation, DQ Pro) to ensure data quality and integrity.* Collaborative Leadership: Demonstrate team-oriented leadership qualities, fostering innovation, problem-solving, and knowledge sharing within the team.* Client Advisory: Act as a trusted adviser, participating in client strategy development and assessments to identify growth opportunities and drive the implementation of cloud migration and data architecture initiatives.* Documentation and Compliance: Create and maintain documentation (data models, integration architecture, technical requirements) to ensure transparency and project alignment.* Continuous Learning: Stay current with emerging technologies to provide clients with the most effective recommendations for data architecture advancements.What do I need to apply for the role* Education & Experience: Bachelor's or Master's degree in Business, IT, or a related field, with a minimum of 10 years in BI/Data Warehousing, including at least 4 years in technical/solution architecture.* Data Modelling Expertise: 3-5 years of hands-on experience in enterprise data modelling using tools such as ERwin, ER/Studio, or Power Designer.* Cloud and Big Data Skills: Proven experience with data ingestion (batch and streaming), CI/CD tools (Terraform, AWS CodePipeline), and integration with databases such as SQL Server, PostgreSQL, Oracle, Redshift, and Synapse.* Business Intelligence Experience: Proficiency in reporting tools such as Power BI, Tableau, and QlikView.* Industry Knowledge: Preferable background in Insurance or Finance sectors to align with industry-specific requirements.My client have very limited interview slots and they are looking to fill this vacancy by Monday 20th January. I have limited slots for 1st stage interviews next week so if you're interest, get in touch ASAP with a copy of your most up to date CV and email me at or call me on (phone number removed)Please Note: This is a permanent role for UK residents only. This role does not offer Sponsorship. You must have the right to work in the UK with no restrictions. Some of our roles may be subject to successful background checks including a DBS and Credit Check.Nigel Frank are the go-to recruiter for Power BI and Azure Data Platform roles in the UK, offering more opportunities across the country than any other. We're the proud sponsor and supporter of SQLBits, Power Platform World Tour, the London Power BI User Group, Newcastle Power BI User Group and Newcastle Data Platform and Cloud User Group. To find out more and speak confidentially about your job search or hiring needs, please contact me directly at

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