Data Architect

Version 1
Manchester
3 months ago
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Overview

As a Data Architect you will be expected to take an architecture lead role on our client’s solution delivery engagements, with high levels of customer engagement. This will involve ongoing analysis of business requirements throughout the lifetime of the service. Candidates will have a strong understanding of data architecture and analytics design and project delivery life-cycles with an emphasis of working in client facing environments.

Responsibilities
  • Translating Business requirements to technical solutions and the production of specifications
  • Designing and implementing business intelligence & modern data analytics platform technical solutions
  • Data architecture design and implementation
  • Data modelling
  • ETL, data integration and data migration design and implementation
  • Master data management system and process design and implementation
  • Data quality system and process design and implementation
  • Major focus on data science, data visualisation, AI, ML
  • Documentation of solutions (e.g. data modelling, configuration, and setup etc.) including HLD and LLD
  • Working within a project management/agile delivery methodology
  • Managing team members on a day to day basis
  • Managing technical delivery of solution
  • Strong stakeholder management and communication skills
Qualifications
  • Hands on experience with data solution architecture, design and rollout
  • Hands on experience with business intelligence tools, data modelling, data staging, and data extraction processes, including data warehouse and cloud infrastructure
  • Experience with multi-dimensional design, star schemas, facts and dimensions
  • Experience and demonstrated competencies in ETL development techniques
  • Experience in data warehouse performance optimization
  • Experience on projects across a variety of industry sectors an advantage
  • Comprehensive understanding of data management best practices including data profiling, sourcing, and cleansing routines
  • Good knowledge of Databricks, Snowflake, Azure / AWS / Oracle cloud, R, Python
Why Version 1?

At Version 1, we believe in providing our employees with a comprehensive benefits package that prioritises their wellbeing, professional growth, and financial stability.

  • Share in our success with our Quarterly Performance-Related Profit Share Scheme
  • Strong Career Progression & mentorship coaching through our Strength in Balance & Leadership schemes with a dedicated quarterly Pathways Career Development programme
  • Flexible/remote working
  • Financial Wellbeing initiatives including Pension, Private Healthcare Cover, Life Assurance, Financial advice and an Employee Discount scheme
  • Employee Wellbeing schemes including Gym Discounts, Bike to Work, Fitness classes, Mindfulness Workshops, Employee Assistance Programme
  • Generous holiday allowance, enhanced maternity/paternity leave, marriage/civil partnership leave and special leave policies
  • Educational assistance, incentivised certifications, and accreditations
  • Reward schemes including Version 1’s Annual Excellence Awards & ‘Call-Out’ platform
  • Environment, Social and Community initiatives
Seniority level

Mid-Senior level

Employment type

Full-time

Job function
  • Consulting
  • Industries: IT Services and IT Consulting


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