Data Analyst Training Course (Excel, SQL & Power BI)

Manchester
6 days ago
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About the opportunity

Are you ready to launch a career in the fast-growing world of Data Analytics and Business Intelligence?

Netcom Training’s fully-funded Certificate in Data (Level 3) equips you with the technical skills employers are actively seeking. Unlike standard administration courses, this programme focuses on the specific tools used by industry pros, including Excel, SQL, Tableau, and Power BI.

From sourcing and cleansing data to creating visual dashboards that drive business decisions , you will gain hands-on experience that prepares you for roles like Junior Data Analyst, Data Technician, or Business Analyst.

Complete the course and gain a guaranteed interview with a leading employer, helping you kickstart your career.

Course Details

  • Start Date: 23.02/16.03

  • Duration: 17 weeks

  • Format: Online, practical workshops

  • Qualification: NCFE Accredited Level 3 Certificate

    What you’ll learn

    You will move beyond the basics and master the full data lifecycle:

  • Core Tools: Gain hands-on skills in Excel, SQL, Tableau, and Power BI.

  • Data Sourcing: Understand common data sources and how to collect data effectively.

  • Processing: Learn to format, blend, link, and save datasets using professional tools.

  • Analysis: Apply statistical methods and algorithms to filter data and support business outcomes.

  • Visualisation: Create clear, engaging dashboards to present insights to stakeholders.

  • Security & Compliance: Understand GDPR and legal requirements for secure data handling.

  • Collaboration: Learn to work effectively within multi-functional teams.

    Career Pathway

    Successful participants are guaranteed an interview with our network of partners.

    Potential Roles & Starting Salaries:

  • Junior Data Analyst: £20,000 – £25,000

  • Junior Business Analyst: £22,000 – £28,000

  • Data Technician: £18,000 – £25,000

  • Data Administrator: £18,000 – £25,000

    Eligibility

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

  • Live in Greater Manchester

  • Be aged 19 or over.

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

  • Earn below the gross annual wage cap (approx. £32,400 for GMCA).

  • Prerequisites: Basic IT skills are required.

    Cost

    This is a fully-funded course with no fees – complete the training, gain your Level 3 Certificate, and secure your guaranteed interview

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