Data Analytics: Landing A Job In One Of The World’s Largest Growing Fields
by Abdul Aziz Mondal Job & Career 11 December 2021
The world runs on data. In fact, it’s estimated that around 2.5 quintillion bytes of data are produced in just a single day.
What’s even more astounding? It’s also estimated that around 90 percent of the data in digital storage in the world today has been created between 2018 and 2021. So if you’re looking to jump into a field that has crazy growth potential, data analytics is the path to take.
According to a report by the World Economics Forum, it’s estimated that 80 percent of companies are looking to adopt some type of data analytics technology by 2025. And this means that if you’re skilled in any field of data analytics, landing a job should be a piece of cake.
But how do you find your way into this field? And what type of jobs are there within this space? The following will explore a few ways of how you can get your foot in the door.
Data Analytics Bootcamp
Let’s face it, in today’s volatile economy, unless you have several years of experience in a trade behind you, or a graduate degree, you’re likely going to be living paycheck to paycheck. As such, educating yourself is paramount to landing any type of lucrative job.
But thankfully there are ways to get the ball rolling much faster than earning a Bachelor’s degree or attaining a Ph.D. by spending 8 years in college.
If you’re looking to jump into data analytics in a fraction of the time that it normally takes, entering a trade educational program like a data analytics bootcamp might be the best decision for you. Because it’s estimated that there will be more than 2 million data-related job positions available by 2022, and most bootcamps can be completed in a matter of months.
In addition to learning a skill that gets you a great job, just about all of the data-related positions in the world today pay between 50,000 and 100,000 per year, and beyond.
Job Classifications
Another great aspect of landing a job within the data space is that you’ll find a variety of positions for all skill levels. And many of these take in entry-level applicants.
Here are two of the more highly paid titles that you can find within the data space:
1. Data Architect
If you’re adept at solving algorithms and have a structural eye, the title of Data Architect might be the perfect job for you. Data Architects design the structural framework of a business data system, and this position boasts an average annual salary of 119,000 per year.
For this position, a data analytics bootcamp can get you in the door, but you’ll also have to work your way up the ladder.
2. Data Analyst
If you have strong organizational skills, and you’re comfortable helping a business to become better, crunch the numbers, and draw conclusions that can lead to greater profits and visibility, becoming a data analyst might be your best strategy.
Data Analysts need to be highly proficient in mathematics and computer science, and there are plenty of jobs available for those who’ve attended an analytics bootcamp with an average starting salary of 62,000 dollars per year.
Career Outlook
As mentioned, the job outlook for data-related jobs across the world is growing every single day. And as more and more businesses begin to rely on the use of machine learning and data analytics for marketing and customer tracking, the need for those skilled in data analytics will only increase.
Data-related jobs also hold titles such as Business Intelligence Analyst, Machine Learning Engineer, Logistics Analyst, Marketing Analyst, Data Scientist, and many more.
All this considered, getting started in the data space is only the beginning of a long and fruitful career as long as data trends continue as forecast.
Final Words
The world is growing at an exponential rate when it comes to the digital landscape and the technology we use to build and maintain businesses. And with highly skilled workers trained in data-related fields, the rate of growth that our technology will bring is limited only by the human imagination.
Read Also: