Data Solutions Architect – London Markets – 10959HS (Basé à London)

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London
2 days ago
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10959HS
£550 – 620 per day

Data Solutions Architect

Hybrid – Inside IR35

We’re looking for aseasoned Data Solutions Architectwithdeep expertise in the Lloyd’s of London Marketand a strong background inSnowflakeandETL/data transformation tools.

As aData Architect, you’ll lead the design, development, and deployment of enterprise-grade data architecture usingSnowflakeand a modern suite of data tools. You’ll work at the intersection of IT and business, collaborating closely with stakeholders to create solutions that unlock the full value of data—driving decision-making and business growth across the organisation.

Key Responsibilities

  • Architecture Design:Design and maintain enterprise data architecture models, data flows, and integrations using Snowflake.

  • Data Governance:Manage data collection, storage, transformation, and protection across systems.

  • Database Development:Create scalable and efficient data solutions within the Snowflake platform.

  • System Analysis:Evaluate system requirements to ensure compatibility and performance.

  • Legacy Migration:Lead data migrations from legacy systems to modern Snowflake environments.

  • Security & Compliance:Implement robust data security protocols aligned with regulatory and organizational standards.

  • Stakeholder Collaboration:Work cross-functionally to translate data needs into actionable architecture and solutions.

  • Performance Tuning:Continuously optimize data pipelines and database systems for speed and efficiency.

  • Documentation:Produce and maintain architecture documentation, technical specs, and design artefacts.

What We’re Looking For

  • Industry Expertise:Must havehands-on experience in the Lloyd’s of London or Specialty Insurance Market.

  • Snowflake:Expert level.

  • ETL/Data Integration tools:Such asTalend,Fivetran.

  • Familiarity with:MS SQL Server,Liquibase,GitLab.

  • Data visualization tools:(e.g.Power BI,SAP BO).

Data Solutions Architect

Due to the volume of applications received for positions, it will not be possible to respond to all applications and only applicants who are considered suitable for interview will be contacted.

Proactive Appointments Limited operates as an employment agency and employment business and is an equal opportunities organisation.

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