Data Analyst

Hounslow
2 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

ROLE: Data Analyst - Temp to perm
LOCATION: Hounslow, with free onsite parking
UP to £35-40,000 depending on skills/experience
HOURS: 8am - 5pm, office based (40 hours a week)

We are looking for a Data Analyst / Data Engineer who can help us gain valuable insights to enhance our business and this role will be part of exciting future projects.

Role Overview:
As a Data Analyst, the candidate 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 data engineering, to provide insights 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 analyse, conduct trend analyses, forecast and provide data insights from various data sources, data sets and systems

  • Analysing both legacy and current data to identify trends and forecasts
  • Using software applications such as Power BI, Python, Tableau or Excel etc to build data visualisations
  • Create reports using appropriate tools relevant to the data being presented.
  • Present findings and insights 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

    Be able to present insights to non-technical stakeholders

    You should possess the following:
    Previous experience in a Data Analyst position or a similar role involving data analysis
    Advanced knowledge of Excel, including VLOOKUPs, Pivot tables, and formatting

    Relevant tools and software (e.g., Python)
    Good working experience of GIS software

    Understanding of machine learning, data engineering etc.

    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

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