Data Analyst

BD Talent
Stockport
3 days ago
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Data Analyst
Stockport Hybrid
Up to £40,000

Do you want to work for a highly analytical business who values data and the insights it can offer? A progressive company who are now embarking on a sizeable data transformation project which you could play a key role in? Are you looking for a hybrid set up with only two office days each week and a company that has a focus on personal growth and structured career progression?

If youre thinking yes, that sounds like me, I may have just the opportunity for you.

BD Talent are working with a multi-brand eCommerce business who are looking to move to a Cloud based data warehouse. After lots of research, theyve decided that Snowflake is the best tool for the job and will work well alongside the Power BI tools they are already using.

Were looking for someone with experience across the following:

  • Cloud/serverless data warehouses Snowflake, BigQuery, Synapse etc.
  • SQL / dbt
  • Power BI semantic models, reports, dashboards

Any experience or knowledge across the following would be welcomed: documentation, standardised measures and KPIs, thin reports, self-serve reporting, and requirement gathering.

  • The company is based in central Stockport, the offer dedicated parking and easy access to public transportation.
  • Its a hybrid role with the team...

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