Marketing Data Analyst Apprentice - Nottingham

Ideagen
Nottingham
1 month ago
Applications closed

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Marketing Data Analyst Apprentice - Nottingham Role Purpose:

 

Location- Nottingham (Hybrid)

 

Department - Marketing

 

Benefits - Benefits & Rewards

 

DEI -  Ideagen and DEI

 

 

 

 

 

 

 

 

 

 

 

We are seeking a motivated and detail-oriented Marketing Data Analyst Apprentice to join our dynamic marketing team. In this role, you will play a crucial part in supporting data-driven marketing initiatives by collecting, analysing, and interpreting data. Your insights will help optimise marketing strategies and contribute to informed business decisions

Responsibilities:

Data Extraction & Analysis: Learn to utilise SQL for data extraction from databases, assist in data preparation and analysis for reports, and contribute to the development of dashboards and reports using Power BI.

Reporting & Visualisation: Gather, analyse, and interpret marketing data to monitor performance and aid decision-making, while assisting in the creation of insightful reports and dashboards using Marketing Cloud Intelligence and Power B

 

Communication & Stakeholder Management: Present data insights effectively to both technical and non-technical audiences, and assist in managing relationships with stakeholders to address their data requirements.

Learning & Development: Engage in training sessions to enhance your SQL and Power BI skills, while staying current with the latest data analysis techniques and trends in the industry.

Administrative Support: Aid in maintaining data consistency and provide support for the team with day-to-day operational tasks

Skills and Experience:

Educational Background: A strong interest in data analysis, marketing, or a related field is essential. Prior experience or coursework in data analysis is advantageous but not mandatory.

Technical Skills: Basic understanding of SQL is preferred; willingness to learn and develop skills in SQL and Power BI is essential. Familiarity with CRM tools, particularly Salesforce, is a plus.

Analytical Mindset: Ability to interpret and analyse data effectively, with a keen attention to detail and a results-oriented approach.

Communication Skills: Strong verbal and written communication skills, with the ability to present complex data insights clearly to diverse audiences.

Team Player: A collaborative attitude, with the ability to work well within a team environment while also demonstrating independence in your work.

 


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