BLURRING BOUNDARIES WHERE ARTIFICIAL INTELLIGENCE ENDS AND HUMAN POTENTIAL BEGINS
DOI:
https://doi.org/10.15680/1b7ray02Keywords:
Transformative Technology, Governance Frameworks, Hybrid Intelligence Systems, Ethical ConsiderationsAbstract
AI, which stands for "artificial intelligence," is a new technology that not only copies
but also makes people smarter and better at learning, thinking, and making decisions.
AI is a great tool for computers, but we shouldn't forget that it can't do everything. For
example, it needs data, and it can't always think for itself. AI is good at some things,
and people are good at others, like being nice, moral, and creative. That's why people
and machines need to work together. AI works better with human supervision and vice
versa, so this partnership is very important when things are really important and hard.
It is also important to use and make AI technologies in a responsible way, as shown by
governance frameworks and ethical issues. As we move forward, we need to make
hybrid intelligence systems that put people first and use the best parts of AI. This will
help us fix the problems we have now and make it easier for people to think of new ideas
in many different fields. Ultimately, the effective integration of AI into society hinges on
our capacity to contemplate and address these issues ethically. We need to make sure
that technology doesn't make things worse.
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