Table of Contents
The Changing Environment of Data Scientists
Business Analyst: Storytelling in the Artificial Intelligence Era
Holistic Developer: Increase Efficiency through Artificial Intelligence
Home Technology peripherals AI Will artificial intelligence replace professional technicians?

Will artificial intelligence replace professional technicians?

Nov 22, 2023 pm 02:13 PM
AI it industry

Artificial Intelligence (AI) has been around for some time. Over the past decade, deep learning has revolutionized fields such as computer vision and natural language processing. But in the past year or so, generative AI has taken the world by storm. Artificial intelligence is moving beyond classification and prediction to actively create and impact various industries with immediate applications. The IT industry itself has been at the center of all this, raising concerns about job losses. Let’s take a brief look at five types of IT professionals and the impact that artificial intelligence may have on their roles.

Will artificial intelligence replace professional technicians?

The Changing Environment of Data Scientists

Generative AI and deep learning rely on large amounts of data. This data can be in structured, numerical form. It can also be unstructured, such as text, speech, images, videos, etc. So, this is a time of change for data scientists. Those who are well adapted to working with unstructured data will thrive. Artificial intelligence is not a threat to it; it is a major opportunity.

Business Analyst: Storytelling in the Artificial Intelligence Era

In this special era of artificial intelligence, technicians are becoming more and more important in their work Part of that is storytelling. In a business environment, this is the primary role of the business analyst. Generative AI creates new ways to tell stories, automatically generating graphics and summaries. Therefore, the role of the business analyst is not just to create such output, but to interpret it in a valuable and intuitive way

Holistic Developer: Increase Efficiency through Artificial Intelligence

When Holistic Developers build products, they work on the backend, collecting, storing, and retrieving data. They are also responsible for creating the front-end, usually in the form of a web page or mobile app. In this process, coding is very important. For example, generating starter code through GitHub Copilot can simplify and speed up coding. Artificial intelligence will not replace the role of programmers, but it can improve the overall quality of work by enabling them to work faster and more efficiently.

#Artificial intelligence relies on reliable and scalable computer systems. Make sure it's the systems engineer's job. As this is a broad role, it is typically staffed by experienced technicians. Artificial intelligence can directly support some tasks such as fault identification and test case generation. Systems engineers, in turn, can focus on organization-specific aspects of system architecture and program management.

Cybersecurity Experts: Anti-interference Role

Some technical positions are relatively unaffected by artificial intelligence. One of these roles is that of a cybersecurity expert. Computer security is a never-ending, ever-evolving need. Like the technologies before it, AI is adding to this mix and complexity. Computing is mostly done in the cloud, and access to AI is often through edge devices. As a result, cybersecurity professionals have more work to do and more skills to acquire

One specific aspect of the question “Will AI replace technology professionals?” In the era of generative artificial intelligence, how to define IT professionals. Much routine coding will be automated, and the expertise required will focus more on algorithm design. From a broad unstructured information perspective, number crunching will be replaced by information extraction. At least in the near future, businesses will look to gain efficiencies from artificial intelligence, gaining the ability to solve problems and take risks from trained professionals.

Technical professionals will not be replaced by artificial intelligence, they will be enhanced.

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