Automation Data Analyst

Risley, Warrington
2 weeks ago
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Our client, a leading engineering and maintenance provider in the energy sector, is seeking a highly skilled and motivated Automation Data Analyst to join their team in Warrington. Our client supports the efficiency of assets across various markets, enhancing availability and reducing maintenance costs.
Key Responsibilities:

Collect, process, and analyse large datasets to identify trends, patterns, and insights
Generate reports, dashboards, and visualisations using PowerBi to communicate findings to stakeholders
Collaborate with various departments to understand their data needs and provide data-driven solutions
Collaborate with global teams to align with group standards and implement global process changes locally
Improve and maintain data interfaces to ensure data quality and accessibility
Develop and implement data models and algorithms to support business objectives
Monitor and evaluate the performance of data-driven initiatives and provide recommendations for improvement
Stay up-to-date with industry trends and best practices in data analysis and business intelligence
Develop comprehensive documentation on data models and flowsJob Requirements:

Experience in a Data Analyst or similar role within an industrial environment
Bachelor's degree or equivalent in data science, statistics, computer science, or a related field
Proficiency in data analysis tools and software, such as PowerBi, SQL, and Excel
Strong analytical and problem-solving skills
Excellent communication and presentation skills
Ability to work independently and as part of a team
Attention to detail and a commitment to data accuracy and integrity
Experience working with multiple disciplines of teams within an industrial business or environment
Knowledge of programming languages such as Python or R
Familiarity with machine learning algorithms and predictive modellingBenefits:

Permanent role with a leading engineering and maintenance provider
Opportunity to work on a variety of projects across multiple sectors
Professional development and training opportunities
Supportive and collaborative work environment
Employee benefits package
If you are an experienced Data Analyst looking for a new opportunity to further develop your career within the energy and automation sectors, we would love to hear from you. Apply now to join our client's dynamic and talented team in Warrington

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