alert! These industries may be replaced by AI in the future!
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I was chatting with a friend who is a copywriter not long ago and found out that her salary had been increased, but she was not very happy.
Asking for details, this is because companies have begun to use AI (artificial intelligence) to work collaboratively.
The workload that used to be done by three people can now be done by one person with the help of AI.
As efficiency improves, personnel must be streamlined. As a friend who was exposed to AI relatively early and was able to use AI, he was lucky enough to stay.
Look, when it comes to exams, who can pass AI?
Although I don’t want to admit it, but AI is really too powerful!
For example, the currently popular artificial intelligence ChatGPT can not only have smooth conversations with humans, but also popularize science knowledge in a simple and easy-to-understand manner.
can also help you handle work.
You can even generate professional papers with one click.
Not long ago, there was a ridiculous news report: American students were caught using ChatGPT to write papers because they were too perfect.
Another example is the picture AI toolMidjourney, As long as you enter the text that comes to mind, you can generate the corresponding picture through artificial intelligence, which takes less than a minute.
Whether it is Product Picture:
▲ Yili official product concept packaging box generated by AI
Still confusing the real "Fake photos" :
▲ AI-generated "Trump Arrest Photo"
While the power of AI surprises us, it also makes us feel scared——
AI can do more and more things, so what else can I do? Will I be replaced by AI?
Someone asked this question directly to ChatGPT.
It honestly said: Yes, some people will be eliminated.
As a worker, I am afraid that under the impact of AI, the skills I rely on to survive will gradually lose value.
As a parent, I am worried about what kind of guidance should be given to children in the AI era so that they will not be replaced in the future.
Let’s talk today about which industries AI has impacted, and how should we deal with it?
By the way, if you want to be one step ahead, be the first to understand the application of AI in document creation, PPT beautification, image processing, video creation and other aspects...
It is recommended that you press and hold the QR code to make an appointment for the free live class on May 16 (Tuesday) at 19:30 "How can we seize the opportunities and dividends of AI?" 》
▲ Press and hold to scan the QR code to schedule a live broadcast
⭐Design Industry
The creative industries, mainly the design industry, have always been considered one of the industries most difficult to be changed by AI.In fact, the impact it suffered was huge.
Many design students are worried that the widespread application of AI will affect their employment.
But there are also many mature designers who have made AI work for themselves.
They trained AI to draw pictures and optimized them on this basis, which greatly improved work efficiency and provided them with more inspiration and materials.
⭐Copy Editor
Nowadays, AI's text processing capabilities are very strong. It can generatenews reports, new media copywriting, and even papers according to instructions.
Many traditional media and new media have already begun to use AI for copywriting creation.
You only need to enter the requirements and desired language style, and you can quickly output a copy with a complete structure and smooth language.
You see, there are many authors who use AI to create copywriting on Xiaohongshu.
⭐Computer Industry
The computer industry has also been greatly affected
On the one hand, AI can improve the work efficiency and quality of programmers, helping them complete some basic coding work, allowing them to have more time and energy to innovate and solve complex problems.
On the other hand, AI may also threaten the jobs of some programmers, especially those with high repetitiveness, low creativity, and slow technology updates.
AI’s impact on all walks of life goes far beyond this. Occupations such as education, finance, accounting, etc., which we regard as iron rice bowls and golden rice bowls, are also gradually changing. The ground is changing.
In general, AI will replace some highly repetitive, low value-added jobs.In the near future, young people entering the workplace will need to make full use of their strengths and interests to transform and upgrade their careers to adapt to the changes in the artificial intelligence era.
What should we do? If you can’t beat it, join!The development of AI will indeed eliminate some jobs, but with its support, it will also create other positions and needs.
Those who can learn AI, use AI, and collaborate with AI first are the truly smart people.For example,
Some people use AI to make data tables, and one line of text can directly handle a day's workload.
, and can produce a draft in 5 minutes, which greatly improves work efficiency.
Someone uses AI for designand generates several e-commerce banner images in a few minutes, saving manpower and material resources.
Want to know what impact AI will have on children’s future careers?
Want to know how to take advantage of AI instead of being enslaved by it?
Then you must not miss the free AI live class "
How can we seize the opportunities and dividends of AI on May 16th (Tuesday) at 19:30? 》 This live broadcast is hosted by the founder of the Qiuye brand Uncle Qiuye
, and the tens of millions of fan accounts across the InternetQiuye Word sister. It is extremely valuable! We cannot stop the progress of technology, but we can make technology work for ourselves.
So,Scan the QR code below immediately, make an appointment for the live broadcast, and be the first to understand AI, learn AI, and embrace AI!
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