Data and Insights Analyst
Guildford, Surrey / £48000 - £53000
£48000 - £53000
Data and Insight Analyst
Up to £50,000 with a Bonus
I am currently working with a nutrition company who are a subsidiary of a leading international healthcare company that are heavily investing in data and are thus looking for a Data and Insights Analyst to join their global data team.
In this role, you will be responsible for cleaning, monitoring, and mining data to ensure accuracy to improve data quality. As well as build and maintain databases to track KPIs which will analyse data to provide insights and reports for key stakeholders. In this role, you will be using SQL, Snowflake, GCP, data visualisation tools, and ETL.
Skills & Experience
To qualify for this Data and Insights Analyst role, you will require:
· Strong understanding of ETL and Data Warehousing skills in Snowflake and GCP
· Experience working with SQL and Python
· Data Visualisation skills in Power BI or Tableau, or Domo
Perks & Benefits:
· Base salary of up to £50,000
· Hybrid working
· Other Benefits
HOW TO APPLY:
Please register your interest in this role by applying via this website. For more information on this role or other roles in Business Intelligence, reach out to Cameron Anderson at Harnham.
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