Data Analyst
London / £40000 - £50000
INFO
£40000 - £50000
LOCATION
London
Permanent
DATA ANALYST
LONDON
£50,000
The world leaders in video game development want a Data Engagement Analyst to have to report ownership over two of their most successful franchises.
THE COMPANY
The world-leading developers and publishers of video games are looking to expand their data team. With multiple franchises in the top 20 best-selling video games of all time, this is your time to join the company and look after the whole engagement of two franchises.
YOUR ROLE AND RESPONSIBILITIES
Within this Data Engagement Analyst role, you will:
* Build weekly reports on franchise health using Tableau
* Work on projects targeting engagement and monetizing games
* Look after ad-hoc requests from different teams
* Build insights and report back to key stakeholders
YOUR EXPERIENCE
To qualify for this Data Analyst role, you will require:
* Extensive experience using SQL in a commercial environment
* Knowledge and experience in data visualization tools such as Tableau, Looker, or QlikView
* A background in gaming will be highly beneficial
THE BENEFITS
A successful Data Engagement Analyst will receive:
* A salary of up to £45,000
* Flexible working
* Other benefits
HOW TO APPLY
To apply for this role please send your resume to Charlotte Smith using the apply button below.

SIMILAR
JOB RESULTS

Data Analytics vs. Data Science: Which Should You Pursue? | Harnham Recruitment post
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Keepers of the Data Kingdom: the Analytics Engineer | Harnham US Recruitment post
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But from the traditional Data team to the modern Data team, there are a few key changes that point directly to the rise of this niche field. Cloud warehouses (like Snowflake, Redshift, BigQuery) and the arrival of the DBT the foundational layer which can be built on top of modern data warehouses are the first two that come to mind. Then, the Software-as-a-Service (SaaS) tools like Stitch and Hevo are capable of integrating Data from a variety of sources, and the introduction of tools like Mode and Looker allows anyone interested in drawing insight from Data to do so on their own.Who Needs an Analytics Engineer? Small or Large Businesses?The short answer is it depends. But the general rule follows that while both large and small companies can benefit from having this professional on their staff, there are different things to consider. For example, a small business may be able to find what they need in a single individual. 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Check out our latest Data & Analytics Engineering jobs or contact one of our expert consultants to learn more. For our West Coast Team, contact us at (415) 614 – 4999 or send an email to sanfraninfo@harnham.com. For our Arizona Team, contact us at (602) 562 7011 or send an email to phoenixinfo@harnham.com. For our Mid-West and East Coast teams contact us at (212) 796-6070 or send an email to newyorkinfo@harnham.com. Â

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