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Lead Data Analyst

n/a
Bristol
9 months ago
Applications closed

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Lead Data Analyst

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Lead Data Analyst

Lead Data Analyst

SENIOR/ LEAD DATA ANALYST

Remote, Once a month travel to London or Dundee office

Up to £80,000

Please note: Please do not apply if you require a sponsorship now or in the future as this cannot be provided.

The Company:

Joining a media company that partners with multiple businesses, you will be joining the Insights and Analytics team to develop reporting and provide valuable insights. They are looking to bring on a Senior position and a Lead position.

The Role:

As a Senior/Lead Data Analyst, you will be responsible for:

- Improving the company capability and driving insights across the business

- Working closely with stakeholders on business requirements

- Telling a story from the insights

- Creating dashboards and reports to pull insights for analysis

- (Lead role) You will manage a team of Analysts

Skills/Requirements:

- Visualisation tool experience preferably Looker or Tableau

- Strong SQL experience

- Minimum 4 years experience in analytics

- Snowflake and DBT - desired tools

Interview Process:

2 stage process including an initial conversation and presentation

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