10 tasks people don't know artificial intelligence can do
There are countless tasks that artificial intelligence can accomplish today, as long as humans can creatively come up with ways to apply artificial intelligence technology. With this in mind, there are some tasks that people might never expect artificial intelligence to be able to perform.
People can delve into specific ways in which artificial intelligence can improve their work and lives in ways they didn’t realize they were aware of.
How does artificial intelligence work?
Basically, artificial intelligence is simply programmed and trained using raw data points to perform certain tasks.
There is much more to study about artificial intelligence than this simple definition, but this is a good starting point. There are two main types of training for these artificial intelligence programs: machine learning and deep learning models.
Machine learning is a method of training computers to learn from structured data without having to be explicitly programmed. It involves using algorithms to analyze and understand patterns in data and then using this understanding to make predictions or decisions. Data fed into machine learning algorithms needs to be pristine, with outliers removed or limited, unwanted data omitted, and deviations monitored. Machine learning algorithms and artificial intelligence models are ideal for data science and analytics, helping users parse millions of data points quickly and efficiently.
Deep learning is a subset of machine learning that uses neural networks that mimic the human brain to analyze and understand complex patterns in data. These networks are composed of interconnected layers of "neurons" that can learn to recognize patterns and make decisions based on input data. Data input to deep learning models can be unstructured but still requires strong parameters and tuning to get it right. These AI models not only take in data and produce results, but they also generate new or unexpected results based on the large amounts of data being processed. This is how one sees a computer program perform an artificial intelligence task, such as writing a blog post or a novel, by "reading" 1,000 novels of the same genre by different authors.
10 Amazing Things Artificial Intelligence Can Do That People May Not Know
To continue learning more about artificial intelligence, here is a list of tasks that artificial intelligence can accomplish. These artificial intelligence tasks are in no particular order, but most of them are likely to impact people's daily work and lives.
(1) Reading and Understanding
Some artificial intelligence programs can not only read to humans, humans can also insert links to written text or blog posts, and the artificial intelligence program will read it. Then, once the article has been read, it can generate a summary or shorthand notes that gather the most important information from the text.
(2) React quickly to dangerous situations
There is no doubt that one of the amazing things that artificial intelligence can do is listen to and understand human language, but artificial intelligence programs Can also be trained to hear and detect other sound patterns. ShotSpotter does this to keep communities safe and help police respond quickly to dangerous situations.
(3) Generate computer code
Artificial intelligence can also train a computer with code, allowing it to learn to write code trained based on a large amount of code provided by online communities. While AI is still a long way from enabling a full-scale project to solve real-world problems, programmers can use AI to help write code to get ideas and inspiration on how to solve specific problems. ChatGPT is an artificial intelligence chat model that helps write basic code.
(4) Can play highly complex games
AlphaGo developed by OpenAI defeated world champion Lee Sedol in the Go game. OpenAI has also developed artificial intelligence systems capable of beating world champions at a competitive level in games such as Dota 2 and StarCraft. For example, MuZero is another AI system that learns and plays chess, Shogi, and a host of Atari arcade games from scratch (with zero intervention).
(5) Computer Vision
A special type of machine learning model called computer vision allows artificial intelligence technology to " Watch”. This can include a variety of multi-step tasks such as agricultural monitoring, detecting cancer cells or operating machinery.
(6) Create original art
As mentioned before, it is entirely possible for artificial intelligence to complete tasks such as creating blog posts or even novels. Going a step further, some AI programs are even capable of producing their own artwork. I believe people must have heard of OpenAI’s dale-2, in which text prompts generate compelling image representations.
(7) Become a stock broker
Artificial intelligence systems can be trained to analyze financial data and make fairly confident predictions about stock prices. It can identify stocks to hold or sell when the asset becomes risky.
(8) Accurately predict local weather
Today, weather forecasting is almost entirely done by computer programs, but only in a broad sense. Defining what these results mean still requires a lot of human interpretation. However, by using artificial intelligence computer vision, researchers have been able to predict sudden changes in local weather with much greater accuracy. It is so accurate that projects to simulate Earth could be implemented as weather forecasting and simulations advance to visualize and combat climate change.
(9) Discover new uses for existing drugs
The drug manufacturer developed an artificial intelligence program that can perform artificial intelligence tasks to evaluate all possible uses of existing drugs and compare them with Other existing drugs are compared to determine the overlap in whether one drug is the same or more effective than another. This gives doctors more ways to treat patients based on their specific needs and biological makeup. Artificial intelligence plays a huge role in drug development. High-performance computing is necessary for molecular dynamics, so drug researchers are leveraging their high-performance computing solutions to train and deploy artificial intelligence models to evaluate potential drug targets.
(10) Recommended products with terrifying accuracy
Through the combination of multiple layers of artificial intelligence technology, one of the most amazing things artificial intelligence can do is recommend new products. Netflix's recommendation system is revolutionary. Once you finish watching a TV series, it can recommend very attractive shows and recommend thousands of movies worth rewatching; automatic recommendations will make the user experience simple and smooth. It even provides a certain percentage of confidence that people will like it. Many businesses now deploy highly sophisticated recommendation systems to boost sales for online shopping, targeted advertising, music streaming services, and more.
Conclusion
Artificial intelligence is one of the most defining developments of the 21st century because it is shaping the way humans do everything. Hopefully these 10 amazing things artificial intelligence can do will spark interest in the ever-changing world of artificial intelligence. Artificial intelligence is accelerating the development of more new technologies, and the market for new iterations and new ideas that can improve human daily life is huge.
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