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What are the four major characteristics of future artificial intelligence?

Jul 20, 2020 pm 03:01 PM
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The four major characteristics of artificial intelligence are: 1. The self-learning ability based on big data will make smart terminals smarter; 2. The interaction between people and smart terminals will be more natural, and the devices will become more and more intelligent. "Understand you"; 3. Driven by the artificial intelligence Internet, all walks of life will become more and more "service-oriented"; 4. Achieve open innovation relying on the industrial chain and ecosystem.

What are the four major characteristics of future artificial intelligence?

#Artificial intelligence has promoted new changes in the form of the Internet. If it is a big leap from PC Internet to mobile Internet, then now we are facing another new leap from mobile Internet to smart Internet (SMART INTERNET).

The intelligent Internet will capture information more autonomously, analyze information more intelligently, make more accurate judgments, and provide services to people more proactively.

This actually includes two branches of artificial intelligence. One is perception, which is what we call perception ability. More and more intelligent terminals can greatly enhance the depth and breadth of our perception of the world; the other is perception. Cognition, cognitive ability, needs to be achieved through cloud and big data analysis.

If smart terminals are human senses, then the cloud is the brain. The perfect combination of smart terminals and cloud brain is the future direction of artificial intelligence. Specifically, future artificial intelligence will have the following characteristics.

First of all, smart terminals and sensors will be everywhere, and self-learning capabilities based on big data will make smart terminals smarter and smarter.

We are entering an era in which everything is intelligent. Intelligent terminals will expand from today’s very limited types—personal computers, mobile phones, and smart TVs—to all devices around us. Whether it is air conditioners, humidifiers, air purifiers, cameras in life, cars on the road, machine tools in factories, etc., they will all have modules for computing, storage, and network connection, supplemented by temperature, humidity, distance, infrared , color, air quality and other various sensors. Various smart terminals continuously sense the surrounding environment and aggregate it into geometrically growing massive data in the cloud. Through the continuous evolution of algorithms, new cognition is formed on the cloud.

We all know that the accumulation of knowledge can make humans more capable, and the same is true for the development of artificial intelligence. Through "deep learning", various intelligent terminals will become smarter and more capable of judgment.

Secondly, the way people interact with smart terminals will become more natural, and devices will increasingly “understand you”.

Intelligent terminals have evolved from PCs to mobile phones, and human-computer interaction methods have evolved from keyboard, mouse, and touch to the future intelligent Internet era. With the advancement of computer image vision, speech recognition, and natural language processing, human-computer interaction has The form of interaction will be rewritten. The device is no longer cold, but can listen, see, talk, and write. It will become more and more intimate and understand you more and more. little friend.

For example, this mobile phone (Phab2 Pro) based on augmented reality technology that we released at Kingsoft in June this year has many sensors that can perceive 3D space and perform motion tracking. With this ability, you can use the camera function of your mobile phone to surf the Internet in a real scene at home, and place the furniture you like in the online store in the augmented reality home environment to see the real effect of the simulation. If you are satisfied, you can place an order immediately, which greatly reduces the difficulty of selecting furniture for us.

And this is just the beginning. With the enhancement of cloud services in the future, you will be able to experience more and more humanized services. In the future, when you use your mobile phone to take pictures of your home environment, the furniture you need, or even the furniture you haven’t thought of, will automatically appear, because the cloud brain has accumulated data and knows what you are missing and what you like. Just talk to it about its style, color, and style, and you can complete the purchase and make an appointment for installation. At this time, the mobile phone will not only be a communication tool, but also your life assistant. It can also help you adjust the temperature, humidity, and temperature of your home based on environmental data, your family's life and physical condition, and your schedule. Lights, etc., and even help you prepare meals.

This is how artificial intelligence smart terminals provide services to users.

Third, driven by artificial intelligence and the Internet, all walks of life will become more and more “service-oriented”. Both hardware manufacturers and service manufacturers are integrating equipment, cloud and services to carry out integrated service innovation.

In the era of smart Internet, when customers choose a product, they not only look at the product itself, but also the services connected to the product. Without content and services, the device is pale. Therefore, manufacturers simply providing hardware equipment will not be enough to meet customer needs. Connecting applications/content/services has become an inevitable option. At the same time, with the help of big data, artificial intelligence and other technologies, the "cloud brain" will be strengthened to provide customers with more advanced capabilities. High-artificial intelligence integrated services have become a general trend.

A popular device in the United States is Amazon’s Echo, but people buy this device not to buy speakers, but to enjoy conversational e-commerce services; Google’s Nest, which can control the temperature and humidity at home, But people buy this device not to buy a thermometer, but to enjoy home environment management services; they buy Himalayan car equipment not to buy multiple players, but to listen to its audio books and periodicals. So, this is the smart device of the future. Devices based on artificial intelligence, coupled with cloud services, are the future of smart terminals.

Fourth, in the era of intelligent interconnection, there is a greater call for open source and open innovation platforms to achieve open innovation relying on the industrial chain and ecosystem.

As there are more smart devices, their interconnection and collaborative applications become more and more urgent and important. Therefore, the industry is required to formulate protocols, specifications, and standards. More manufacturers can participate and engage in open innovation.

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