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AI/automation will end tasks for six tech jobs by 2030

Jan 11, 2024 pm 05:21 PM
AI automation

Nowadays, artificial intelligence and automation have entered a stage of rapid development, and many people are worried They willwill replace some professional roles. While it may seem exaggerated to predict that some jobs will disappear altogether, it is wise to remain realistic about what may happen in the future in order to prepare for what comes next. Be prepared for whatever happens.

With this in mind, AI/automation will end tasks for six tech jobs by 2030

and based on

currenttechnologyDevelopment direction, We have summarized some technical work that may eventually be eliminated. Data Entry Clerk

In the age of artificial intelligence, data entry clerks may find their role

scale

shrinks dramatically . Becausethis workis mostly typing and copying and other repetitive tasks, It is very easy to be replaced by automated procedures. With

Optical Character Recognition (

OCR) Technology and Machine Learning AlgorithmsContinuous improvements, artificial intelligence systems have become incredibly efficient at these precise tasks. Therefore, it is certain that automation will have a major impact by 2030. Technical Support Representatives

Customer service and technical support have always been

on the front lines of

solving consumer issues. However, as artificial intelligence continues to advance, these roles are facing the looming threat of automation. Companies across a variety of industries are already using artificial intelligence chatbots powered by natural language processing

(NLP)

capabilities, to perform first-level troubleshooting. Even continuousmore complex naturetasks that involve system diagnostics or hardware problems It can also be handled through artificial intelligence tools that can quickly analyze and solve problems without human intervention. By the end of this

time

most technical support inquiries will be conducted by sophisticated artificial intelligence systems Effective management, this may make traditional technical support representatives face the end of elimination. Network Administrator

The main responsibility of the network administrator is to manage and ensure the normal operation of the organization's internal network. These responsibilities include tasks such as updating system configurations, managing security protocols, and repairing network failures

While during these activities, human

operations

are currently still has an irreplaceable significance, but the continuous improvement of artificial intelligence is Threat to this job by automating many routine tasks. AI-driven predictive analytics can foresee problems that may arise and take "

preemptive actions

" actions to avoid problems, its efficiency is or even far exceeds The level that humans hope to reach. Additionally, other day-to-day management tasks can be automated through AI-based tools, creating self-organization that requires little to no human intervention

(Self-organizing)

Network. Therefore, automation is likely to significantly reshape the role of network administrators in the coming years. Database AdministratorIn the past, managing and coordinating changes across databases required a lot of manpower

resource

. However, the rise of artificial intelligence is changing all this. With the emergence of automated tools that simplify database management

tasks, the role of the traditional database administrator is also threatened. For example, automation allows for easy database changes when migrating from MySQL to MariaDB. In the past, This seamless transition required considerable effort on the part of the administrator, but it can now be accomplished with greater efficiency through automated software. As we move towards 2030, it is predicted that these improvements will continue to significantly reduce the need for human intervention.

Furthermore, these advancements mean that databases can eventually be more automatically tuned and autonomous, and may no longer even require dedicated personnel to manage them

Hardware Technician

In the past, the role of hardware technician was indispensable, and on-site repairs and upgrades could only be done by employeesin personTo be done. However, as more companies move their operations to cloud-based infrastructure, the need for physical device management decreases.

Technological advancements have led to the creation of virtual servers and storage spaces that can scale as needed without the need for hardware professionals of any manual intervention. This trend has significantly reduced reliance on traditional technicians who specialize in handling physical equipment and machinery.

Interestingly, even when it comes to physical equipment issues in your home or office installation, AI-driven remote diagnostic tools are accurate at There has also been continuous improvement in predicting potential hardware issues. By anticipating these problems in advance and ordering necessary replacement parts on their own, hardware technicians may become obsolete faster than you think . Quality Assurance (QA) Tester

In the technology industry, QA testers

are responsible for troubleshooting errors and Plays a vital role in ensuring software functionality before release. However, as artificial intelligence becomes more advanced, this task is becomingincreasinglyautomated.

Automated testing tools can now perform repetitive tasks, quickly generate test data, and even learn to spot potential errors without human intervention. These AI-driven programs are able to perform exhaustive testing that humans

would be unable to complete due to time or resource constraints.

Additionally, integrating machine learning algorithms into such a platform allows them to improve

performance with each successive test run . Therefore, by 2030, continued advances in artificial intelligence may completely replace today's QA testers, and insteadhave machines working around the clock. Conclusion

The original intention of this article is not to be alarmist, but to hope that professionals currently engaged in these jobs can use the free time given by AI/automation to

Change roles and responsibilities and embark on the road to a brighter future.

Original title: 6 Tech Jobs That Won't Exist In 2030 Due To AI and Automation by Stylianos Kampakis


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