Data Analyst

Virgin Media
united kingdom
1 year ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

We're hiring for a seasoned Data Analyst on a 10 month fixed term contract. Working closely with stakeholders, you'll need to be confident handling multiple simultaneous tasks, prioritize work, and remain functional in a fast paced environment. As a Data Analyst you'll also be involved in identifying, evaluating, and documenting potential data sources in support of a wide range of projects, ensuring timely data-loading while maintaining accuracy and relevance of data. Who we are The UK’s fastest broadband network. The nation’s best-loved mobile brand. And, one of the UK's biggest companies too. Diverse, high performing teams - jam packed with serious talent. Together, we offer the UK more choice and better value, through our boundary-pushing, customer-championing values and ambitions. Together, we are Virgin Media O2, and we can't wait to see what you can do. Accessible, inclusive and equitable for all Virgin Media O2 is an equal opportunities employer and we're working hard to remove bias and barriers for our people and candidates. So, we build equity and inclusion into everything we do, from the policies we craft to the relationships we shape. We support and encourage you to be your authentic self throughout your application journey with us. The must haves In order to be considered, you must have the following experience; * Strong SQL skills * Experience with designing and implementing ETL processes for data integration. * Proficient in acquiring and documenting data from various sources. * Demonstrable experience with data visualisation tools, ideally Tableau. The other stuff we are looking for We'd also love you to bring;
* Commercial experience with dbt.
* Hands on experience using BigQuery.
What's in it for you Our goal is to celebrate our people, their lives and everything in-between. We aim to create a culture that empowers everyone to bring the best versions of themselves to work each and every day. We believe the most inclusive and diverse culture makes for a better business and a brighter world.

Working at Virgin Media O2, you get a bumper reward package bursting with benefits, and loads of extras you can add if you’d like to. These are designed to support both you and your loved ones, making sure that you’re covered no matter what life throws your way.

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