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  5659 views  |  Published - Wed, 26 Jan 2022

Best Tips for Getting a Job in IT without Experience

Best Tips for Getting a Job in IT without Experience

Are you interested in working in the field of IT? If so, you might be worried that you will never get a job in IT, especially if it doesn’t seem that you have any experience. However, there are some great tips for getting a job in IT without having experience. Keep reading here to learn more about how to get the job you want in IT.

Building a Home Lab Where You Can Practice

One of the first things that you might want to do is starting to build a home lab where you can practice. Get various types of IT products. Some of the things that you might want to get include the following:

  • A new computer
  • Computer security system or software
  • Other types of network protection software
  • Sign up for programs or courses that teach you more about and train you in this industry

The more you can practice and learn in the comfort of your own home, the more experience you can start adding to your resume.

Get an Internship

Most internships don’t require you to have a lot of experience. Just having a true interest and desire to learn in the IT field could help you to land an internship. There are many places that you can look for an internship. In fact, even places that aren’t currently listing an open internship position may be willing to let you come on as an intern. Some of the places that you can start looking for an internship include the following:

  • Do an online IT internship search
  • Call up local IT companies in your area
  • Check with the job boards that are listed online (in your search type internship)

These are some of the ways that you can look for an internship in the IT field. In addition to or instead of getting an internship, you could also try volunteering somewhere.

Volunteering in the IT Field

You could benefit from volunteering in the IT field. Many places that allow volunteers are willing to train you with the products they use. They are ready to teach you what software they use, so you can help out. Some of the ways that you can find volunteering opportunities in the IT field include the following:

  • Do an online search for IT volunteer opportunities online or in your area
  • Call local IT companies to see if they have any volunteer opportunities
  • Call acquaintances or other people you know to see if they have ideas for how you could volunteer in the IT field

These are some of the ways that you could find the best volunteer opportunities in the field of IT.

Ask for Personal Recommendations

You could also talk to your family members and friends to see if they could recommend you to the company where they work. Having someone that you know recommend you, your skills, and your dedication to this field could really help you get your foot in the door.

 

If one of your family members or friends is able to get you into their company, you can at the very least, get an interview scheduled. Come prepared for that interview. Let them know all about your experience (even if it isn’t IT-related). Let them know why you are so interested in working in the IT field. The more you can show this company that you are dedicated to learning and that you will thrive in this type of job, the better your chances are of getting hired.

 

You might be wondering why any company would hire someone who doesn’t have experience working in the IT field. The truth is that some employers want their employees to be trained from scratch. They want employees to do things their way. Without any prior experience, you are more likely to listen to what they have to say and follow their procedures.

Send Out Connection Requests

In this day and age, the internet is a great resource for just about anything. If you are looking for a job in IT, one of the things that you can do is to send out connection requests. Some of the places that you can do this include the following:

  • Facebook
  • LinkedIn
  • And other social media sites for business connections that you might have

Even if you don’t already know the people on LinkedIn, for instance, you can still send out connection requests. You can let them know that you are interested in IT. Let them know that you are interested in volunteering, getting an internship, and ultimately getting a job in IT. You might be surprised at how many of these connections lead to something promising for a current or future job in IT.

Try to Step Up at Your Current Job

Think about where you currently work. Just about every company has IT positions. This might be a great place to start. You can have a meeting with management and let them know you are interested in moving to an IT job. Depending on whether you have already had home IT experience had an internship, volunteered, or signed up for courses, they may have a job opportunity for you right now.

 

If the management at the company you work for now doesn’t have a job opportunity for you, ask them what it would take to move into this type of position. They may have certain requirements that you can start reaching.

Conclusion

These are some of the best tips for getting a job in IT without experience. Surely, you can take online courses and programs to learn more about how to work in IT. You can also set up a home IT lab, so you can get more familiar with IT. You can also volunteer and get internships in the IT field. By doing all of this, you are much more likely to learn more about the field of IT and get a better job in IT, as well.

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We Have a Passion For Sharing Knowledge. Our number priority is to make you fall in love with Information Technology(IT). We are eager to teach you with the highest quality possible. Our curriculum is drawn up in accordance with the hottest job descriptions and certification programs. Therefore, you will learn everything required to land a high paying job and pass the related certification exam.

• Experience In IT

Our staff of instructors boasts a wealth of first-hand knowledge and are all college graduates. Combining decades of experience in IT, they’ll provide you with professionalism, patience, and the intensive training you need to succeed. They also work in the field that they teach, so you can trust they know what they’re talking about!



• A Passion for Sharing Knowledge

The Boot Camp faculty boasts extensive practical experience that has led to a dedication and passion that’s evident in their teaching methods. From sharing personal work stories to guiding you along the same journey they’ve taken in their careers, our instructors’ love for Information Technology always shines through! 

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Mon, 23 Jun 2025

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