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Data Architect Snowflake

Gazelle Global Consulting Ltd
London
1 day ago
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We are searching for one of our key clients a Senior Data Platform Engineer to support and optimise large scale data ecosystems across PostgreSQL, Snowflake and Greenplum. This is a high-impact role within a modern digital environment, ideal for someone who thrives on complex data challenges and enterprise-grade engineering.
Youll be responsible for designing scalable data models, optimising performance across multiple database technologies, and enabling seamless data ingestion pipelines. Expect to work in a cloud-driven setting with Azure, modern tooling, and critical data platforms that underpin major transformation programmes.
Key skills required
Deep knowledge of PostgreSQL, Snowflake and Greenplum
Snowflake internals, schemas, modelling, data lakes and integration patterns
Data ingestion using Informatica, Talend and similar ETL tooling
Strong experience handling JSON, XML, CSV and multi-source datasets
Patroni expertise for HADR and streaming replication
Backup, recovery, tuning and optimisation across Postgres, Snowflake and Greenplum
Understanding of Azure environments
If youre ready to join a forward-thinking organisation delivering enterprise-level data solutions, please apply with an up-to-date CV that clearly matches the requirement.
For more information, reach out via Robert at gazellegc.com or apply directly via this ad.

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