Senior Data / Solution Architect

Page Executive
London
11 months ago
Applications closed

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About Our Client

My clients Data & Analytics Competence Center designs and implements modern data and analytics solutions for mid and large-sized organizations. They are looking for a Solution / Data Architect who will join their rapidly growing team and provide Solution Architecture consulting services to their clients and delivery teams.

Job Description

  1. Drive direct communications with business stakeholders
  2. Elaborate on all technical aspects for the development team, justify any architectural decision
  3. Lead implementation of the solutions from establishing project requirements and goals to solution 'go-live'
  4. Participate in the entire cycle of sales/pre-sales activities
  5. Lead solution architecture evaluation and assessment activities

The Successful Applicant

  1. 5+ years of work experience in a data engineering role or 5-10 completed projects
  2. Data Governance, Data Management background
  3. Experience with any cloud platform (Azure, AWS, or GCP)
  4. DWH/Data Platforms experience (Snowflake, Databricks)
  5. Knowledge of SQL and comfortable designing, writing and maintaining complex SQL queries
  6. Experience building data pipelines; ETL design, implementation, and maintenance
  7. Knowledge of data management fundamentals (data modeling, data quality, metadata management, data warehouse/lakes patterns, distributed systems)
  8. Spoken English
  9. Communication skills
  10. Sales / Pre-sales experience

What's on Offer

£130,000 - £170,000 + Bonus + Private Medical Centre + Pension

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