Senior Data Architect

Automat-it
London
1 month ago
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Overview

Automat-it is an AWS Premier Partner and Strategic Partner delivering hands-on DevOps, FinOps, and GenAI support that drives real results across EMEA. We help high-growth startups move faster, scale smarter, and make the most of the cloud. We are looking for a Senior Data Architect to shape how startups build and scale on AWS. In this role, you’ll design and deliver end-to-end data and analytics solutions—from architecture and pipelines to visualization and insights—guiding customers from concept through production. You’ll work closely with startup founders, technical leaders, and account executives to create scalable, cost-efficient architectures that deliver real business impact. Work location: hybrid from London. If you are interested, please submit your CV in English.


Responsibilities


  • Design, develop, and implement data & analytics solutions to meet business requirements and create cost-efficient, highly available, and scalable customer solutions, including Well-Architected reviews and SoW.
  • Research and analyze current solutions and initiate improvement plans.
  • Collaborate with other engineers and stakeholders to ensure solutions are designed and developed according to best practices.
  • Lead workshops, POCs, and architecture reviews with startup customers, conferences, webinars, and more.
  • Stay up to date on Data Engineering and Analytics trends and contribute to internal enablement.
  • Frequent travel locally (on-demand to meet with customers and partners) and abroad (at least once a quarter).


Qualifications


  • 3+ years of hands-on experience in AWS, including solution design, migration, and maintenance
  • 2+ years in customer-facing technical roles (e.g., SRE, Cloud Architect, Customer Engineer)
  • Production experience with AWS infrastructure, data services, and real-time data processing
  • Skilled in AWS analytics tools (Glue, Athena, Redshift, EMR, Kinesis, MSK, QuickSight, dbt)
  • Understanding of information security best practices
  • Strong verbal and written communication in English and local language
  • Ability to lead end-to-end technical engagements and work in fast-paced environments
  • AWS Solutions Architect – Associate certification
  • Experience with Kubernetes, CI/CD, and DevOps tools – an advantage
  • Experience with ETL processes, data lakes, and pipelines – an advantage
  • Experience writing SOWs, HLDs, and effort estimates – an advantage
  • AWS Professional or Data Analytics/Data Engineer certifications – an advantage


Benefits


  • Professional training and certifications covered by the company (AWS, FinOps, Kubernetes, etc.)
  • International work environment
  • Referral program – enjoy cooperation with your colleagues and get a bonus
  • Company events and social gatherings (happy hours, team events, knowledge sharing, etc.)
  • Wellbeing and professional coaching
  • English classes
  • Soft skills training


Country-specific benefits will be discussed during the hiring process.


Location

Hybrid from London


Seniority level

  • Mid-Senior level


Employment type

  • Full-time


Job function

  • Engineering and Information Technology


Industries

  • IT Services and IT Consulting


Equal Opportunity

Automat-it is committed to fostering a workplace that promotes equal opportunities for all. We firmly believe that cultivating a diverse workforce is crucial to our success. Our recruitment decisions are grounded in your experience and skills, recognizing the value you bring to our team.


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