Aspiring Data Analyst (Hiring Immediately)

ITonlinelearning Recruitment
London Borough of Bromley
9 months ago
Applications closed

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Academy Data Analyst - Halewood

Are you eager to find data analyst jobs and kickstart your career in the data analysis sector, even without prior formal experience?

If you are detail-oriented, perceptive, and analytical, brace yourself for a gratifying journey in Data Analysis.

We specialise in launching careers in the Data Analysis sector through our comprehensive placement program. Our forte is the delivery of accredited online DA training, backed by our expert support and recruitment teams. This paves the way for a seamless entry into the Data Analysis realm.

Important Note: This career program caters specifically to entry-level individuals with limited or no prior experience and those experienced in Data Analysis who wish to validate their skills.

How do we make it happen?

Training Excellence: We'll kickstart your journey with a tailored training program, encompassing both academic and practical elements. The courses and projects are hand-picked by us and align with UK and European Data Analysis sector industry standards.

Crafting Your CV: Once you've successfully completed the prescribed material and passed your exams, our recruitment support team will work closely with you to revamp your CV, ensuring it shines.

Navigating Your Career: Our seasoned recruitment consultants will steer you toward relevant positions based on your newfound qualifications and existing skills. We'll also provide you with interview and career guidance throughout your journey with us.
The best part? The training component of our package comes with interest-free financing options, allowing you to invest in your future without the burden of immediate costs. Plus, we're so confident in our ability to land you a placement that if we can't do it within 12 months of your exam success, we'll refund the course fees.

Ready to take the first step towards your future in Data Analysis? Enquire now, and one of our expert Course and Career Consultants will be in touch to address your queries and help you embark on this exciting journey.

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