Senior Data Architect (Permanent)

Leading Edge IT Ltd
City of London
3 days ago
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Overview

Work With Us


Whether you are looking for your next career move in data or looking to become an associate working alongside a leading consultancy, then look no further. At LEITDATA we are passionate about data and have created a culture which fosters innovation, personal development and career growth opportunities.


We believe that every colleague plays an integral role in the company’s success, whether through customer engagement or working behind the scenes to manage the day-to-day business operation. We have structured in a way which provides each colleague a voice and provides career progression aligned to their aspirations. Through close partnerships with technology vendors, we can provide training and mentoring, ensuring each member of the team has an opportunity to grow and maximise their full potential.


What we’re looking for

An experienced Data professional or Architect with consultancy skills and a focus on Snowflake, modern data tools (dbt, airflow, python etc.) and modern data Architecture practices (Data Products, Data Mesh, Data Governance, Data Modelling, Data Quality.).



  • 3 years+ experience with Snowflake
  • Skilled in Data Architecture practices (RBAC, Data Classification, Data Modelling, Data Products/Mesh, Data Governance etc.)
  • 4 years+ experience with AWS or Azure
  • Problem solving and consultancy skills
  • Experience with SDLC, CICD, DevOps and DataOps processes
  • Experience across Designing, Implementing and Managing Data platforms, including Data Governance, Observability and Automation
  • Strong communication skills, including stakeholder management up to CXO level
  • You’ll be able to help understand business requirements, and translate those into technical requirements, design patterns and stories for development
  • Able to lead Architecture and Engineering teams, where required
  • Providing mentoring and guidance to less knowledgeable Engineers

Day to day

  • You will work with various stakeholders from teams across clients we work at, including engineering, architecture, Senior Management and CXO level personnel
  • You will work with External parties that work with our client, such as our partners, or other consultancies that may be working with the client
  • You will contribute to excellent quality and value for our clients
  • You will use your experience in different situations and with different products, to assess the needs of the business that are appropriate for them
  • Delivering informed opinions and approaches, which should be backed-up by your knowledge and/or research. Advice must be tailored to our Clients and be realistic for delivery

Key Duties and Responsibilities

As a Senior Data Architect of LEIT Data, you’ll be assigned to various Client projects to lead and/or deliver data platforms following modern best practices.


Tasks will be varied and can be solo or team based deployments.


In all situations, you will operate as a professional consultant, addressing tasks at hand and continuously adding value in observations and best practice.


You will have support and access to LEIT resources and our strategic partners.


You will get the opportunity to learn and develop both your consultancy and data skills, with a primary focus around Snowflake and its ecosystem.



  • Collaborate with our clients to design and build modern data platforms using a variety of technologies
  • Help lead the design and implementation of complex, cloud-based data platforms
  • Implement scalable and secure Data platforms
  • Mentor and upskill other engineers, both client and internal
  • Help drive effective development patterns and delivery practices
  • Help maintain and improve our internal tools and design patterns
  • Continually improve with our internal development program, including mentoring and paid training / certifications

Key Skills

  • Hands-on experience and highly proficient in Snowflake
  • SnowPro Core certified (or completing in the first 3 months after joining LEIT Data, looking to complete advanced cert in the medium term)
  • Ideally certified in AWS and/or Azure.
  • Advanced SQL skills
  • Experience in the modern Data Stack eg dbt, Airflow or similar technologies
  • At least two of the following

    • Data Platform Setup and Capabilities
    • Cloud Infrastructure Setup (particularly with Snowflake)
    • Data Modelling (IRM/EDM to Physical, Data Vault 2.0)
    • Data Solution Design


  • Preferably, experience working with the following:

    • Python
    • Containers (Docker preferred)
    • CI/CD Pipelines
    • Infrastructure as Code
    • Real-time / event-based data
    • Data quality frameworks
    • Cloud Platforms
    • Data Migration


  • Other skills:

    • Ability to work in Agile ways
    • Working knowledge of data regulations (e.g. GDPR)
    • Good understanding of the SDLC



Specific Role benefits

  • You will have the opportunity to explore new features and functionality across various vendor products either as part of Client implementations or through our strategic partners.
  • You will also have the opportunity as we grow to potentially manage larger teams, and work on internal R&D projects which can be “product” based and/or for optimisation/automation purposes.
  • You will have opportunity to work alongside leading professionals in the Data industry

More about our benefits

  • Starting at 25 Days Annual Leave
  • Company Bonus Scheme
  • Holiday Exchange Scheme
  • Life Assurance
  • Private Medical Insurance
  • Contributory Pension Scheme
  • My Staff Shop Discount Scheme
  • Associate Programme
  • Flexible/Remote/Hybrid working options
  • Central London Office


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