Data Engineer - Azure or Snowflake

Bristol
3 weeks ago
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Are you an Azure Data Engineer looking top learn Snowflake?  Looking for an Ethical Employer in the ESG space? Maybe one that's certified B-Corp who's data solutions directly help the environment? An employer that offers flexible hours and hybrid working? If sounds like your cup of team please read on....

Role -   Data Engineer

Location - Central Bristol - 50/50 Home / Office - Flexible Training

Salary  50 - 55K 10% Bonus 7% Pension, 28 days, Health cash plan, flexible working, Training

The role

As a Data Engineer working in an Azure Environment you will lead projects to expand, maintain and evolve their Data Platform as they transition to Snowflake . You will oversee Data Pipelines and new Data feeds and coordinate the Data Engineering Team working closely with the Data Science function. 

You will have real input into the Data Strategy and work on solution design always with an eye on: performance, security, data quality and governance while mentoring more junior members of the team and working with 3rd parties. 

You 

SQL experience with RDBMS like SQL Server or Snowflake
ETL experience e.g. Azure Data Factory, Matillion or fbt
GIT - SCM
CI/CD for Data pipelines - Azure Devops / GIT 
Python - data processing, automation, and integrating with external systems (e.g., APIs, databases) 

Any experience of Snowflake would be a bonus

Great opportunity to join a rapidly growing business in a fast growing niche

Interested? please send you cv for a swift response

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