Trainee Data Analyst

Netcom Training
Manchester
20 hours ago
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Are you ready to launch a career in Data Analytics and Business Intelligence? Netcom Training’s fully-funded Data course (NCFE Certificate in Data, Level 3) equips you with the technical skills employers are actively seeking.

From data sourcing, cleansing, and analysis to visualisation and reporting, you’ll gain hands-on experience that prepares you for today’s fast-growing data-driven roles.

Our learners have successfully moved into roles such as Junior Data Analyst, Operations Analyst, Business Intelligence Assistant, Database Administrator, and Pricing Analyst, working across tech, finance, healthcare, and the public sector. Complete the course and gain a guaranteed interview with a leading employer, helping you kickstart your career.

Course Details

  • Start Date: 16/03

  • Duration: 10 weeks

  • Days: Mon-Thu

  • Times: 6-9pm

  • Format: Online, practical workshops

    What you’ll learn

  • Data Management: Understand how to source, gather, and store data securely.

  • Data Cleansing: Learn to collate and format raw data for accurate processing.

  • Analysis & Insight: Analyse datasets to support key business decisions and outcomes.

  • Visualisation: Present and communicate insights clearly to stakeholders.

  • Tools & Tech: Gain exposure to professional tools commonly used in the industry (e.g., Excel concepts, Reporting tools).

  • Compliance: Understand secure data handling and GDPR principles.

  • Collaboration: Practice continuous professional development in a team setting.

    Career Pathway

    Successful participants are guaranteed an interview with our network of UK-wide partners working with leading brands.

  • Potential Roles: Junior Data Analyst, Reporting Assistant, Data Administrator, Business Analyst.

    Starting Salaries: Typically £22,000 – £28,000 (role dependent)

    Eligibility

    This is a government-funded opportunity. To apply, you must:

  • Live in Greater Manchester (GMCA region).

  • Be aged 19 or over.

  • Have lived in the UK/EU for a minimum of 3 years.

  • Earn below the gross annual wage cap.

  • Prerequisites: Basic IT skills are required

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