Data Analyst

Feltham
2 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Job Description - Data Analyst

We are looking for a highly analytical and detail-oriented Data Analyst to support data-driven decision-making and process optimization in Feltham. This role involves collecting, analyzing, and interpreting complex data to provide actionable insights that enhance operational efficiency. The ideal candidate will have strong problem-solving skills, experience with data visualization tools, and the ability to communicate findings effectively.

Key Responsibilities:

Analyze large datasets to identify trends, patterns, and areas for improvement.
Develop and maintain reports, dashboards, and performance metrics to support business decisions.
Work with different teams to understand their data needs and provide relevant insights.
Ensure data accuracy and integrity by performing validation and quality checks.
Use SQL, Excel, and data visualization tools to extract and manipulate data effectively.
Present findings in a clear and actionable manner to stakeholders.
Identify opportunities for process improvements through data-driven insights.
Ensure compliance with data governance policies and best practices.

Skills and Qualifications:

Minimum of 1 year of experience in data analysis, business intelligence, IT or a related field.
Bachelor's degree in Data Science, Statistics, Business Analytics, or a related discipline.
Proficiency in Excel, SQL, and data visualization tools like Power BI or Tableau.
Strong problem-solving and analytical skills with attention to detail.
Ability to translate complex data into meaningful insights for decision-making.
Excellent communication and presentation skills.
Ability to work in a fast-paced environment and manage multiple tasks.This is an excellent opportunity for a motivated professional who enjoys working with data, solving problems, and making an impact through insights. If you are passionate about data-driven decision-making, apply now!

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