Data Analyst

Hounslow
1 week ago
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ROLE: Data Analyst - Temp to perm
LOCATION: Hounslow, with free onsite parking
UP to £32,000
HOURS: 8am - 5pm, office based (40 hours a week)
BENEFITS: We would love for you to join us, some of the great perks of temping through Office Angels include...

  • Up to 25 days annual leave
  • Dedicated consultant to support your job search
  • First opportunity to see permanent positions
  • Access to free eyecare vouchers
  • Temp of the Month awards
  • Timesheets can be completed on mobile devices
  • Access to Boost - our exclusive platform with discounts on hundreds of retailers, a wellbeing hub with recipes, an exercise area, and a mindfulness section with blogs & videos

    Are you passionate about data analysis and looking for an exciting opportunity to make a real impact? We have just the role for you! Join our thriving Maintenance business in Hounslow as a Data Analyst in this temp to perm position.

    About Us:
    Office Angels Staines is working with a successful utilities company based in Hounslow, they are dedicated to delivering top-notch service and are constantly looking to improve their operations. They are on the lookout for a Data Analyst who can help them gain valuable insights to enhance the business practices and you will be part of the exciting future projects. You will work in a friendly team, a company that has great culture, and ample opportunities for career growth, you'll thrive in their dynamic environment.

    Role Overview:
    As a Data Analyst, you will play a crucial role working closely with the Business Manager and Director, collaborating with teams across the business to analyse data, identify trends, provide future forecast through data modelling and machine learning, and recommend process and system improvements. Your work will be instrumental in helping to build data models to improve services to a variety of stakeholders.

    Your Responsibilities:
  • You will explore, process, and analyse data from incoming inquiries and systems
  • Analysing both past and current data to identify trends and forecasts
  • Using software applications such as Power BI, Python, Tableau etc to build data visualisations
  • Create reports using appropriate tools relevant to the data being presented.
  • Present findings to management teams.
  • Collaborate with teams to propose and implement new processes
  • Develop dashboards and run reports
  • Discuss insights with senior members of the business and make recommendations based on your analysis
    To excel in this role, you should possess the following:
  • Previous experience in a Data Analyst position or a similar role involving data analysis
  • Excellent IT and system skills
  • Advanced knowledge of Excel, including VLOOKUPs, Pivot tables, and formatting
  • Good working experience of GIS software, Power BI, and SQL is a plus
  • Strong attention to detail
  • Effective communication and presentation skills, as you will be working with all levels of managers across the business, internally and externally

    Office Angels acts as an employment agency for permanent recruitment and an employment business for the supply of temporary workers. Office Angels UK is an Equal Opportunities Employer.

    By applying for this role your details will be submitted to Office Angels. Our Candidate Privacy Information Statement explaining how we will use your information is available on our website

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