Cloud Operations Engineer - Trainee

e-Careers Limited
Coventry
11 months ago
Applications closed

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NO EXPERIENCE REQUIRED, WE WILL PROVIDE FULL TRAINING

Take the first steps towards a new and exciting career in Cloud Computing.

Due to a severe skills shortage in the marketplace AWS Cloud Computer Engineers are in high demand.

We have a pool of employers who are seeking to employ newly trained individuals who are motivated to pursue a career in Cloud Computing.

Our programmes will provide you the knowledge, skills and certifications required to succeed. Upon completion we will match you with our pool of employers, to help fill essential roles within this sector.

Join us on our free AWS Career Webinar, by clicking 'Apply for this job', and we will send you the joining link. Once you have attended this free online event, you can decide if this is something that you would like to pursue.

Requirements

NO EXPERIENCE REQUIRED

You should:

  • Have a moderate understanding of the basics of IT.
  • Be committed to pursuing a career in Cloud Computing.
  • Be a quick learner.
  • Be able to think in a structured manner.

Benefits

  • Quickest way to enter a lucrative career within Cloud Computing.
  • Gain the skills, knowledge and certificates required for a career in Cloud Computing.
  • Increased earning potential and job security.
  • Flexible working opportunities within the industry.
  • Platform to enter other career paths including Cyber Security, Artificial Intelligence, Big Data, Machine Learning, Cloud Security, Data Analytics, Networking and DevOps.

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