Data Analyst

Gekko Group
Newbury
1 week ago
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Overview

At Gekko Group, our Data and Insight team are responsible for our reporting requirements and provide market research, trend analysis and strategic insight for our brands. We are recruiting for a Junior Data Analyst to join the team. This role is perfect for an analytically-minded individual who is energised by the process of converting data into valuable, actionable insights. We are an award-winning, field marketing agency that connects leading leisure, lifestyle, and tech brands with consumers across retail, online, and B2B channels, bringing them to life through captivating in-store experiences, events and direct engagement. Proximity to our Newbury office is required. We value trust, insight, and honesty in all we do. As an inclusive employer, we encourage our teams to grow together, in a relaxed but professional environment.


Responsibilities

  • Monitor the accuracy and integrity of incoming data by becoming the gateway between the D&I and Client Services teams
  • Create, edit and maintain pivot tables in various forms from database views to facilitate quality checking and reporting
  • Produce insightful and informative reporting decks and dashboards with clear storytelling
  • Create and maintain data visualisations and dashboards
  • Design and produce questionnaires in multiple formats to collect and unlock valuable data from our field teams
  • Meet agreed deadlines for all projects, working individually and as a team to complete tasks effectively
  • Actively research brands and categories in the industry to expand knowledge and that of the business

Qualifications

  • Google Drive experience
  • Demonstrable data analysis skills and experience
  • Awareness of SQL/Data warehousing and willingness to learn
  • A proactive approach to delivering valuable reports, using set guidelines and your own initiative to exceed expectations
  • Organisational skills that enable you to prioritise and set realistic timescales with stakeholders

Benefits

  • A salary of £25,350 per annum plus company bonus
  • A permanent spot on our team (Monday-Friday) with commutable proximity to our Newbury office
  • Hybrid working: 4 days in our Newbury office, working from home every Friday - Non Negotiable
  • 22 days holiday (increasing to 26 days based on tenure) + bank holidays + buy & sell holiday options
  • Support through our employee assistance scheme and access to a Perkbox subscription. Company Bonus
  • Perkbox
  • Gym Membership
  • Automatic enrolment of workplace pension


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