Data Analyst

Herbrandston
1 month ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Location: Pembrokeshire, onsite
HOURS: Full time Mon-Fri 37.5hrs
Type: Temporary  
Salary: £33,500.00 - £55,000.00 per annum
  
Our client Our client is based within the Oil & Gas industry in Pembrokeshire. They are currently seeking a Data Analyst on a temporary basis to support the implementation of Power BI to the business.

The Role: The Data Analyst leverages data to drive informed decision-making using Power BI. Responsibilities include designing, developing, and optimizing dashboards while ensuring accuracy and seamless integration of multiple data sources, including SQL databases. They collaborate across teams to enhance performance, security, and governance while applying best practices in data management and analysis.

Key Responsibilities:

Act as the project Lead on the implementation of Power BI into the business.
Manage the SQL, databases and the Power BI connections to various data sources.
Design, develop and maintain dashboards and visualisations on Power BI for different Departments and Teams to monitor KPI and CPI performance.
Create clear and compelling data visualisations using Power BI to support decision-making processes.
Work closely with Departments and Teams to understand their data needs and provide solutions that enable efficient data analysis using Power BI.
Gather data from various electronic sources, including SAP S/4 HANA, Evotix, Predix, and RAP.
What we need from you:

Proven experience in setting up, configuring, and deploying Power BI solutions. Expereince with SLQ.
Expertise in gathering business requirements and translating them into Power BI solutions.
Skilled in designing interactive dashboards, data models, DAX calculations, and Power Query.
Proficiency in data visualization, analytics, and statistical analysis.
Knowledge of Power BI security models, RLS, and data governance best practices.
Ability to connect Power BI to various data sources and manage large datasets efficiently.   
Preferred qualifications:

Bachelor's degree in Data Science, Statistics, Computer Science, or a related field
 What's in it for you:

Onsite parking 
Weekly pay    
How to Apply: If you would like some further information for the role of Data Analyst, and feel you have the skills required for this role, please apply below.
  
Apply now!  We prefer not to use closing dates as we aim to get the best candidate to our client as soon as possible so if you are considering this Data Analyst vacancy but haven’t yet updated your CV, do get in touch and let us know! In a busy job market, it’s important to get ahead of the competition!
  
Equal Opportunity Employer: Applications are encouraged from all sectors of the community
  
ENERGY
  
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