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CCTV.com


    In the Thai hexagrams in the Book of Changes, there is such a message: "Bao Yi, use Feng He, not a distant legacy." "Bao" means gourd, and "Feng River" means crossing the river. It means that the shaved gourd is tied to the body to cross the river so as not to sink to the bottom. This method of crossing the river by hitting water with certain tools reflects that human beings in primitive times have gradually mastered swimming skills. China’s earliest collection of poems and songs, The Book of Songs, also contains a poem describing swimming: "As long as it is deep, the boat will sail. It’s shallow, and it’s a swim. " Take a raft or ferry to the place with deep water, and dive or float to the place with shallow water. It can be seen that people’s swimming skills reached a certain level more than 2500 years ago. As time goes by. People’s skills in water are getting stronger and stronger, and the relationship between swimming and human society is getting closer and closer, and it has been playing an important role in war, production and entertainment.


    Navy Boat Wars and Folk Popularization in the Spring and Autumn Period and Warring States Period


    During the Spring and Autumn Period and the Warring States Period, the southern vassal states established naval divisions one after another, and carried out boat warfare, so swimming became an essential part of sailor training. The art of war "Six Rice Raiders" says, "Those who are skilled, therefore, cross the river in deep water; A strong crossbow leads a long army, so it is also a battle over water. The skill of crossing rivers over deep water is called "strange skill". The book Guanzi also records such a historical material: In order to deal with wuyue’s powerful water army, Qi Huangong built a dam on the river to build a large-scale swimming pool, with a depth of 10 meters, and ordered that "those who can swim will be given a thousand dollars". Trained 50,000 foot soldiers who are good at swimming, and defeated the navy of Yue State. Now hidden in the Palace Museum during the Warring States Period, there is a picture of people and fish swimming together at that time, and their swimming posture is harmonious and natural, similar to the current freestyle posture.


    While being carried out as a military training project, swimming activities have also gained a certain degree of popularity among the people. In Zhuangzi Dasheng, there is a story that reflects the folk swimmers: the water of Luliang falls from the cliff of Baizhang, and the waves in the river are rolling and foaming, and the fish and turtles can’t swim. Confucius once stood on the waterfront of Luliang and saw a man writhing in the water, thinking that he was going to drown, so he made his disciples go with the waves to save him. Unexpectedly, the man suddenly surfaced a hundred paces away, singing loudly and enjoying himself, and inviting him to swim down the shore was better than taking a stroll. Such superb swimming skills show that swimmers have mastered the tricks of swimming and the characteristics of water.


    Swimming Technology in Qin and Han Dynasties


    The swimming technique in swimming also appeared very early in ancient China. After Qin Shihuang wiped out the princes, he began a four-way cruise to show off his literary and political skills and consolidate the unified feudal dynasty. According to Historical Records, when he arrived in southern Shandong today, he was told that a bronze tripod of the Zhou Dynasty was sunk in the Swish River here, so he "prayed for fasting and wanted to leave Surabaya, Zhou Ding". He can’t wait to "make thousands of people have no water to ask for, Fu De". This swimming technique was further developed in the future. Hepu County, a coastal county in the Han Dynasty, was rich in pearls. At that time, swimming technology was adopted to collect pearls in the sea. This kind of water production activity has created conditions for the popularization of water sports.


    After the Qin and Han Dynasties, water sports became increasingly prosperous, and there were many experts in swimming. "Biography of Zhou Chu in the Book of Jin" describes that the warrior was good at swimming around and dared to fight. Once, he "fought the dumpling in the water, and the dumpling sank or floated, and the number of lines was ten miles, and the place (Zhou Chu) was with it. After three days and three nights, he killed the dumpling and returned." Being able to fight with the dragon in the water for three days and three nights shows that its swimming skills have reached a very high level. Dunhuang Mogao Grottoes, located in the northwest of China, have vivid images reflecting social life in various periods. On the top of the flat base at the back of Cave 257, there is a swimming image of the Northern Wei Dynasty. Four athletes swimming in the water, some of them raised their arms high, as if they were paddling at the same time, like the butterfly stroke now; Some hands are pulled back and forth, which is a bit like freestyle today.


    Tide-makers in Song Dynasty


    Tide, water sports. It is a large-scale water activity including swimming. In the Song Dynasty, frolicking activities reached a climax. Wu Zimu recorded the spectacular scene of Wu’s frolic in the waves in Old Wulin: "The tide in Zhejiang is a magnificent view in the world." In this tide of "coming from the next day" and "swallowing the day and the day", "Wu Er is good at swimming, all wearing tattoos and holding ten big colorful flags, rushing forward and catching up, haunting the whale wave Wan Ren, changing himself, but the tail of the flag is slightly wet. "The skill and courage of these frolicters are really admirable. Some literati in the Song Dynasty were shocked to see these performances. When recalling this spectacular scene, Xin Qiji, a poet in the Southern Song Dynasty, left such words: "Wu Er is not afraid of the dragon’s anger, and the storm is flat, watching the red flag fly, jumping straight on the fish, jumping on the waves and dancing." The superb skills of swimmers are on the page.


    Swimming competition started in Han and Wei Dynasties.


    The swimming competition in China began in the Han and Wei Dynasties, when there was already a folk custom of holding a swimming competition on the Dragon Boat Festival. Every time this kind of competition is held, it is very grand and has a large number of participants. During the Tang and Song Dynasties, a large-scale swimming competition was held on the Qiantang River during the Dragon Boat Festival every year, and in line with the folk swimming activities, the royal family also held swimming competitions every year. "History of Song Dynasty. Rites" contains: In March of the third year of Chunhua (992), it was the early spring, and the river was very cold. Song Taizong Zhao Ling inspected the water army in Jinmingchi. He ordered people to throw the silver ou between the blue waves and let the soldiers swim for it. Of course, it won’t be a person to get the silver ou. This kind of swimming with the nature of competition is obviously to encourage the soldiers to practice their water skills.


    Tide-making skills in Ming and Qing Dynasties


    The folk swimming activities in Ming and Qing Dynasties are still represented by "frolicking in the waves" in Qiantang River every August. Whenever the tide is high, local people will carry out various swimming activities, and there are more and more patterns. Huang Zunsu’s "Ode to Watching Tides in Zhejiang" in the Ming Dynasty describes the thrilling scene of hundreds of frolic athletes performing various strange skills in the wild waves in red light clothes. Records of the west lake said that during the frolic activities, more than 100 swimmers held colorful flags, swam to Haimen to meet the huge tide, and then churned in the rolling tide. There are also people who perform "rolling on the wood", "water puppet" and "water acrobatics" on the water, which is a comprehensive skill of swimming and acrobatics. In addition to the watery areas in the south of the Yangtze River, it is the north, and swimming activities are also carried out to a certain extent at this time. At the end of the Qing Dynasty, Guan Kanglin, a native of Nanhai, wrote a poem about Beijingers’ spring swimming in Du Men Zhuzhi Ci, which read: "Swimming has become a new stone pool, and Cao Cao competes to build a red flag. After undressing, the spring waves are cold, and people are still playing with water. " This is about a folk swimming competition, but for this wanderer from the south, he felt itchy when he saw a northerner swimming, and he wanted to have a try. Finally, he gave up because he was afraid of the cold, so he had to watch others swim in the water. In Tashilhunpo Monastery in Shigatse, Tibet, a swimming mural dating back more than 500 years ago is preserved, and its swimmer’s posture of paddling and backstroke is vivid. It seems that even on the Qinghai-Tibet Plateau, which is known as the "roof of the world", people have mastered quite superb swimming skills.


    Swimming as a military training program


    With the development of folk swimming activities, swimming as a military training project has also been paid attention to. For example, Qi Jiguang, a famous anti-Japanese fighter in Ming Dynasty, attached great importance to water warfare, and trained the navy in water sports such as swimming to meet the invading Japanese pirates. Mao Yuanyi’s "Wu Bei Zhi" recorded that the water army of Ming Dynasty was selected from the "Shamin" who was good at swimming, because this "Shamin" grew up on the seashore, was familiar with water, and walked on the ground in the waves. In the battle of coastal soldiers and civilians against pirates in the late Qing Dynasty, the importance of swimming was even more obvious. Gu Han’s poem "Song of Yujiazhuang" tells that the fishermen in Yujiazhuang, Shengxian County, Zhejiang Province, with superb water skills, carried grass and other things to the bottom of the enemy’s ship and wound the equipment, thus defeating the enemy.


    The ancient swimming activities in China were like this. In the combination of folk and military training, they promoted each other and developed together. With its long history and rich contents, it has become a traditional sport with national characteristics.


Editor: Chen Chang ‘e

Attractive manners of ancient beauties (Figure)

    Source: Qianlong News Network? ?







    Mysterious, beautiful, pure and true oriental girl







    One. Black hair and cicada temples


    Black hair means that the hair is black and shiny, and cicada temples mean that the hair near the ears on both sides of the cheeks is as thin as cicada wings. The word Ufa appeared as early as in Zuo Zhuan, and the word cicada temples appeared in the hair style of Wei in the Three Kingdoms period, which was combed by one of the maids named Mo Qiongshu.


    Two. Cloud bun and fog


    The bun referred to here means circular bun, while the bun refers to the knot tied on the top of the head. The so-called cloud bun and fog bun is the bun combed by a beautiful woman like a cloud. According to legend, the earliest origin of bun is that Zhao Feiyan, a fairy beside Nu Wa, one of the four great beauties in ancient times, often tied it up.


    Three. Indigo emeiensis


    Emei is a woman’s eyebrow, and Qingdai Emei is to shave off her eyebrows and then paint them with bluish-black pigment. This kind of eyebrow makeup was very popular as early as the Western Zhou Dynasty, and this adjective has already appeared in The Book of Songs and Songs of the South.


    Four. Looking forward to the bright eyes


    Eyes are the windows of the soul, bright eyes are big and bright eyes, and looking forward to them means glaring. A pair of beautiful and hateful eyes have been regarded as the standard of beauty since ancient times.


    Five. rosy lips and pearly teeth— very pretty or handsome


    As the name implies, red lips are red lips, and white teeth are white teeth. Red lips can show white teeth, and white teeth can set off red lips, both of which are indispensable.


    Six. Jade finger arm


    The ancients attached great importance to the delicate fingers of women, and the fingers of beautiful women must be slender and soft; Plain arms refer to white arms, which are not only white, but also round and full of elasticity. This is the Jade Finger Plain Arms.


    Seven. Thin waist and snow skin


    Although Yang Guifei, one of the four beauties in ancient times, is a plump beauty, Chinese people still prefer slim beauty, and a thin waist means a slender waist; Snow skin is snow-white. According to legend, Zhao Feiyan is the appearance of thin waist snow skin.


    Eight. Lian bu Xiao wa


    Lianbu refers to the footsteps of beautiful women, and more importantly, to the tangled feet. Small socks refer to socks worn by women who bind their feet; Feet like a lotus, and then put on socks, it will become a beauty.


    Nine. Red makeup whitewash


    Red makeup refers to a woman’s full makeup, just like putting rouge on her cheeks today. Rouge is said to have been invented by Huns before it was introduced to Middle-earth. In addition, whitewashing is to apply white powder on the face. This kind of cosmetics has been used by palace beauties in the late Shang and early Zhou Dynasties.


    Ten. Fragrant limbs


    Women’s skin has a fragrant fragrance, which is also regarded as a beauty. This fragrance does not come from a certain perfume, but a natural body fragrance; In addition to the famous Xiang Fei in the Qing Dynasty, it is said that Xi Shi is also a beautiful woman who exudes fragrance.


    Editor: The definition of beauty in each era changes with time. Most of the above standards are no longer applicable. In fact, there is no certain standard for beauty. The so-called beauty is in the eye of the beholder, depending on personal preferences and feelings. 


Editor: Cheng Chong

Rafinha: I want to stay in Barcelona for many years. Red and blue new hairstyle? I had this intention long ago.

Live on May 21 ST, after Barcelona won the championship four rounds ahead of schedule, it lost to Royal Society 1-2 in today’s game. After the game, Rafinha was interviewed by beIN Sports.

More than 88,000 spectators witnessed Barcelona winning the Cup, and the Brazilian striker couldn’t hide his excitement: I want to stay in Barcelona for many years.

In addition, Rafinha dyed her hair red and blue, to which he explained: My new hairstyle? Araujo and I had this idea before in Gated, but I didn’t want to do it in that game, because we still needed a victory to ensure the championship.

Rafinha also talked about wearing the Brazilian flag to celebrate: whenever possible, I will carry the national flag with me. This is the place where I was born, and the Brazilian people love me very much. At such a special moment, they will always be with me.

Rafinha has played 47 games this season, contributing 10 goals and 12 assists.

(Nanchuanyuan)

1-2! Levan’s goal was difficult to save, Barcelona’s unbeaten golden body was broken, and Harvey missed the miracle of Mourinho.

Touring group

In the early morning of May 21st, Beijing time, the 35th round of La Liga officially started, and Barcelona played against Real Sociedad at Camp Nou. In the first half, Sollott steals Comte and assists merino to push and shoot to break the deadlock. In the second half, Sollott pushed to expand his advantage. Levan pulled back a city at the end of the game, but he was unable to recover the defeat. In the end, Barcelona lost 1-2 to Real Sociedad at home and suffered the first home defeat of the season.

After beating the Spaniard 4-2 away from home in the last round, Barcelona has been crowned La Liga champion four rounds ahead of schedule, and winning the league title after four years has also announced the beginning of Barcelona’s reconstruction. As for Real Sociedad, 3 wins and 2 draws have remained unbeaten in the last five rounds, and even defeated Real Madrid, but their fourth position is not stable, Villarreal is still struggling to catch up, and they still need to play against Atletico Madrid and Seville, so they can’t relax.

Perhaps because he has won the championship ahead of time, Harvey directly rotated in this game. Pedri, Garvey and araujo all failed to enter the big list, and Rafinha, Dembele and Levan led the front trident; Busquets and Kathy, Derong sit in the midfield; Bald is a guest right-back, Comte returns to the middle to partner Christensen, the left-back is Alba, and the goalkeeper is Ter stegen; Before the game, the Royal Society players lined up to welcome Barcelona, who won the championship in advance, to enter the stadium.

Only 5 minutes after the opening, Comte took the ball to the midfield and was intercepted by Sollott. After the latter broke the ball, he pushed back and crossed into the restricted area. merino was unmarked and pushed the goal, 0-1! The royal society took the lead in anti-customer.

1 goal behind, Barcelona immediately launched an offensive counterattack. In the 15th minute, Rafinha broke the ball in the frontcourt and made a cross pass. lewandowski took the ball from the bottom and sent it to the back point. Dembele headed the ball and was blocked by Remiro. In the 17th minute, Kathy’s volley in the restricted area was cleared by the Lenormand goal line. In the 19th minute, De Jong inserted in front of the cross pass in the restricted area, and Su Weimendi completed the key damage. A minute later, Rafinha crossed at an oblique angle of 45 degrees, and the header in front of Lewan was actually biased; In the 23rd minute, Lewan scored a direct free kick over the crossbar.

After resisting Barcelona’s three axes, the royal society also gradually found the offensive. In the 28th minute, Rafinha made a mistake in returning, and Barrenechea turned around and strafed and was confiscated by Ter stegen. In the 30th minute, Sollott counterattacked a low cross, and Mohammad Ali Shaw outflanked and stabbed, which was solved by Ter stegen. In the 32nd minute, Muhammad Ali Shawnee sent a straight plug, and Barrenechea followed up with a volley.

Back in the second half, Harvey took the lead in adjusting, and Alonso, Fati and Ferran Torres appeared together; In the 66 th minute, Kubo Jianying set the ball and sent it to the restricted area. Diego Rico’s close-range header actually went straight to the top. After the substitution, Barcelona not only failed to gain anything on the offensive end, but the defense line fell again; In the 72nd minute, Derong’s frontcourt holding organization was broken, Kubo Kenying held the ball on the spot to push back, the Japanese international scored the ball to the left, Su Weimendi knocked horizontally, Sollott easily pushed into the net against the attacking Ter stegen, 0-2! Barcelona 2 goals behind, Real Madrid society ahead of schedule to lock the victory.

In the 90th minute, Phelan Torres got rid of the defense on the right and sent a cross. Lewan threw his head in front of the door and pulled back a city, 1-2! Levan scored the 22nd league goal, five goals ahead of Benzema, and hoped to get his first La Liga Golden Boot.

However, Barcelona finally lost 1-2 at home, and the unbeaten home league was broken. In addition, the number of goals conceded by Barcelona this season has reached 15, which failed to refresh Mourinho’s single-season record in 2004-05.

When two siri start to communicate, do they talk to each other?

Produced by Tiger Sniffing Technology Group

Author | Qi Jian

Editor | Chen Yifan

Head picture | |FlagStudio

"One morning, your AI assistant sent me an interview invitation, so I asked my AI assistant to handle it. The latter thing was done by two AI systems. After many rounds of dialogue between them, the date was finalized and the conference room was booked. There was no human participation in the whole process. "

This is Michael Wooldridge’s picture of the future. He is a British AI scientist and is currently a professor of computer science at Oxford University.

What will happen to our society when artificial intelligence can communicate with each other?

During the one-hour conversation, woodridge was very interested in this topic. He is one of the top scholars in the world in the research of multi-agent systems, and "collaboration between AI" is his key research direction.

In Wooldridge’s view, although artificial intelligence has become more and more like human beings and even surpassed human beings in some fields, we still have a long way to go from real artificial intelligence, whether it is AlphaGO, which defeated human beings, or ChatGPT, which answered like a stream.

When most people are immersed in the phenomenal innovation created by OpenAI, Wooldridge appears much calmer. ChatGPT shows the power of neural network, but also shows its bottleneck-it can’t solve the huge power consumption and computing power problem, and the unsolvable AI "black box" problem."Although the deep neural network can often answer our questions perfectly, we don’t really understand why it answers like this."

AI that surpasses human beings is often called "strong artificial intelligence", while AI with universal human intelligence level is called Artificial general intelligence (AGI).Wooldridge described AGI in his book "The Complete Biography of Artificial Intelligence": AGI is roughly equivalent to a computer with all the intellectual abilities possessed by an ordinary person, including the abilities of using natural language to communicate, solve problems, reason and perceive the environment, and it is at the same or higher level of intelligence as an ordinary person. The literature about AGI usually does not involve self-consciousness or self-consciousness, so AGI is considered as a weak version of weak artificial intelligence.

However, the "weak" AGI is far from the contemporary artificial intelligence research.

"ChatGPT is a successful AI product. It is very good at tasks involving language, but that’s all. We still have a long way to go from AGI. " In a conversation with Tiger Sniff, woodridge said that deep learning enables us to build some AI programs that were unimaginable a few years ago. However, these AI programs that have made extraordinary achievements are far from the magic to push AI forward towards grand dreams, and they are not the answer to the current development problems of AGI.

Michael Wooldridge is a leading figure in the field of international artificial intelligence. He is currently the dean of the School of Computer Science of Oxford University, and has devoted himself to artificial intelligence research for more than 30 years. He served as the chairman of the International Joint Conference on Artificial Intelligence (IJCAI) from 2015 to 2017 (which is one of the top conferences in the field of artificial intelligence), and was awarded the highest honor in the British computer field-the Lovelace Medal in 2020, which is regarded as one of the three influential scholars in the British computer field.

ChatGPT is not the answer to building AGI.

Before the appearance of ChatGPT, most people thought that general artificial intelligence was very far away. In a book entitled "Intelligent Architecture" published in 2018, 23 experts in the field of AI were investigated. When answering "Which year has a 50% chance to realize general artificial intelligence", Google Engineering Director Ray Kurzweil thought it was 2029, while the time given by iRobot co-founder Rodney Brooks was 2200. The average time point predicted by all the 18 experts who answered this question is 2099.

However, in 2022, Elon Musk also expressed his views on realizing AGI in 2029. He said on Twitter, "2029 feels like a pivotal year. I’d be surprised if we don’t have AGI by then. (I feel that 2029 is a crucial year. I would be surprised if we didn’t have AGI then) "

In this regard, Gary Marcus, a well-known AI scholar, put forward five criteria to test whether AGI is realized, including: understanding movies, reading novels, being a chef, reliably carrying more than 10,000 lines of bug-free code according to natural language specifications or through interaction with non-professional users, and arbitrarily extracting proofs from mathematical literature written in natural language and converting them into symbol forms suitable for symbol verification.

Now it seems that the general big model represented by ChatGPT seems to have taken a big step towards AGI. The task of reading novels and movies seems to be just around the corner. In this regard, Professor Michael Wooldridge believes that at present, it is still difficult for human beings to achieve AGI in 2029.

Tiger sniffing: AI experts like AlphaGo have defeated human beings, but their abilities have great limitations in practical application. Today’s general big model seems to be breaking this situation. What do you think of the future development of expert AI and AGI?

Michael Wooldridge:Symbolic artificial intelligence is a mode of early artificial intelligence, that is, assuming that "intelligence" is a question about "knowledge", if you want an intelligent system, you just need to give it enough knowledge.

This model is equivalent to modeling people’s "thinking", which led the development of artificial intelligence from 1950s to the end of 1980s, and eventually evolved into an "expert system". If you want the artificial intelligence system to do something, such as translating English into Chinese, you need to master the professional knowledge of human translators first, and then use the programming language to transfer this knowledge to the computer.

This method has great limitations,He can’t solve the problem related to "perception". Perception refers to your ability to understand the world around you and explain things around you.For example, I am looking at the computer screen now. There is a bookshelf and a lamp next to me. My human intelligence can understand these things and environments, and can also describe them. However, it is very difficult to get the computer to carry out this process. This is the limitation of symbolic artificial intelligence, which performs well on the problem of knowledge accumulation, but not well on the problem of understanding.

AI recognizes cats as dogs.

Another method is artificial intelligence based on mental model. If you look at the animal’s brain or nervous system under a microscope, you will find a large number of neurons interconnected. Inspired by this huge network and neural structure, researchers tried to model the structure in the animal brain and designed a neural network similar to the animal brain. In this process, we are not modeling thinking, but modeling the brain.

Symbolic artificial intelligence of "modeling thinking" and neural network of "modeling brain" are two main artificial intelligence modes. With the support of today’s big data and computing power, the development speed of neural network is faster, and ChatGPT of OpenAI is a typical example of neural network.

The success of ChatGPT has further enhanced people’s expectations for deep neural networks, and some people even think that AGI is coming. Indeed, AGI is the goal of many artificial intelligence researchers, but I think we still have a long way to go.Although ChatGPT has a strong general ability when it comes to language issues, it is not AGI, it does not exist in the real world, and it cannot understand our world.

For example, if you start a conversation with ChatGPT now, you will go on vacation after saying one sentence. When you come back from a week’s trip, ChatGPT is still waiting patiently for you to enter the next content. It won’t realize that time has passed or what changes have taken place in the world.

Tiger Sniff: Do you think the prediction of realizing AGI in 2029 will come true?

Michael Wooldridge:Although ChatGPT can be regarded as a part of general AI to some extent, it is not the answer to building AGI. It is just a software combination that is built and optimized to perform a specific, narrow-minded task. We need more research and technological progress to realize AGI.

I am skeptical about the idea of realizing AGI in 2029. The basis of human intelligence is "being able to live in the material world and social world". For example, I can feel my coffee cup with my hands, I can have breakfast, and I can interact with anyone. But unfortunately, AI not only can’t do this, but also can’t understand the meaning of any of them. AGI has a long way to go before AI can perceive the real world.

Although the computer’s perception and understanding ability is limited, it still learns from experience and becomes an assistant to human decision-making. At present, as long as AI can solve problems like a "human assistant", what’s the point of arguing whether a computer system can "perceive and understand"?

We will eventually see a world built entirely by AI.

From driverless cars to face recognition cameras, from AI painting and AI digital people to AI writing codes and papers, it won’t take long. As long as it involves technical fields, whether it is education, science, industry, medical care or art, every industry will see the figure of artificial intelligence.

When talking about whether ChatGPT is often used, Professor Wooldridge said that ChatGPT is part of his research, so it will definitely be used frequently. However, in the process of using it, he found that ChatGPT is really a good helper for basic work and can save a lot of time in many repetitive tasks.

Tiger Sniff: Do you use ChatGPT at work? What do you think of ChatGPT Plus’s subscription mode?

Michael Wooldridge:I often use ChatGPT. I think in the next few years, ChatGPT and the general macro model may emerge thousands of different uses, and even gradually become general tools, just like web browsers and email clients.

I am also a subscriber of ChatGPT Plus. But for the price of $25, I think different people have different opinions. Every user will know whether ChatGPT is suitable for them and whether it is necessary to pay for the enhanced version only after trying it in person. For some people, they may just find it interesting, but they prefer to do things by themselves at work. For me, I find it very useful and can handle a lot of repetitive desk work. However, at present, I regard it more as part of my research.

Tiger sniffing: A new PaaS business model with big model capability as the core is being formed in today’s AI market. OpenAI’s GPT-3 gave birth to Jasper, while ChatGPT attracted Buzzfeed. Do you think a new AI ecosystem will be formed around the general big model?

Michael Wooldridge:ChatGPT has a lot of innovations at the application level, and it may soon usher in a "big explosion" of creativity.I think in a year or two, ChatGPT and similar applications will land on a large scale.Complete simple repetitive copywriting work such as text proofreading, sentence polishing, induction and summary in commercial software.

In addition, in multimodal artificial intelligence, we may see more new application scenarios. For example, a large language model combined with image recognition and image generation may play a role in the AR field. Based on the understanding of video content of large model, AI can be used to quickly generate summaries for videos and TV dramas. However, the commercialization of multimodal scenes may take some time.But we will eventually see all kinds of content generated by AI, even virtual worlds created entirely by AI.

Tiger Sniff: What conditions do you think are needed to build a company like OpenAI from scratch?

Michael Wooldridge:I think it is very difficult to start a company like OpenAI from scratch. First of all, you need huge computing resources, purchase tens of thousands of expensive top-level GPUs, and set up a supercomputer dedicated to AI. The electricity bill alone may be costly. You can also choose cloud services, but the current price of cloud computing is not cheap. Therefore, it may cost millions of dollars to train AI every time, and it needs to run for several months or even longer.

In addition, a huge amount of data is needed, which may be the data of the whole internet. How to obtain these data is also a difficult problem. Data and computing power are only the foundation, and more importantly, it is necessary to gather a group of highly sophisticated AI R&D talents.

Tiger Sniff: Which company is more powerful in AI research and development? What do you think of the technical differences between countries in AI research and development?

Michael Wooldridge:The players on this track may include internet companies, research institutions, and perhaps the government, but they are not public. At present, there are not many players who have publicly announced that they have the strength of big models, and even one hand can count them. Large technology companies are currently developing their own large-scale language models, and their technologies are relatively advanced.

So I don’t want to judge who is stronger,I don’t think there is obvious comparability between the models. The difference between them mainly lies in the rhythm of entering the market and the number of users.OpenAI’s technology is not necessarily the most advanced, but they are one year ahead in marketization, and this year’s advantage has accumulated hundreds of millions of users for him, which also makes him far ahead in user data feedback.

At present, the United States has always dominated the field of artificial intelligence. Whether it is Google or Microsoft, or even DeepMind, which was founded in the United Kingdom, now belongs to the American Alphabet (Google’s parent company).

However, in the past 40 years, China’s development in the field of AI has also been quite rapid.In the AAAI Conference (american association for artificial intelligence Conference) in 1980, there was only one paper from Hongkong, China.But today, the number of papers from China is equivalent to that from the United States.

Of course, Britain also has excellent artificial intelligence teams, but we don’t have the scale of China. We are a relatively small country, but we definitely have a world-leading research team.

This is an interesting era, and many countries have strong artificial intelligence teams.

Deep learning has entered a bottleneck.

When people discuss whether ChatGPT can replace search engines, many people think that ChatGPT’s data only covers before 2021, so it can’t get real-time data, so it can’t be competent for search tasks. But some people think that,In fact, the content of our daily search is, to a large extent, the existing knowledge before 2021. Even if the amount of data generated after that is large, the actual use demand is not high.

In fact, the amount of data used by ChatGPT is very large. Its predecessor GPT-2 model is pre-trained on 40GB of text data, while GPT-3 model is pre-trained on 45TB of text data. These pre-training data sets include various types of texts, such as news articles, novels, social media posts, etc. The large model can learn language knowledge in different fields and styles. Many practices have proved that ChatGPT is still a "doctor" who knows astronomy above and geography below, even with data before 2021.

This has also caused people to worry about the data of large-scale model training. When we want to train a larger model than ChatGPT, is the data of our world enough?futureWill the Internet be flooded with data generated by AI, thus forming a data "snake" in the process of AI training?

Ouroborosaurus is considered as "meaning infinity"

Tiger sniffing: You mentioned in your book that neural network is the most dazzling technology in machine learning. Nowadays, neural network leads us to keep moving forward in algorithms, data, especially computing power. With the progress of technology, have you seen the bottleneck of neural network development?

Michael Wooldridge:I think neural networks are facing three main challenges at present. The first is data. Tools like ChatGPT are built from a large number of corpus data, many of which come from the Internet. If you want to build a system 10 times larger than ChatGPT, you may need 10 times the amount of data.But is there so much data in our world? Where do these data come from? How to create these data?

For example, when we train a large language model, we have a lot of English data and Chinese data. However, when we want to train small languages, for example, in a small country with a population of less than 1 million like Iceland, their language data is much smaller, which will lead to the problem of insufficient data.

At the same time, when such a powerful generative AI as ChatGPT is applied on a large scale, a worrying phenomenon may occur. A lot of data on the Internet in the future may be generated by AI.When we need to use Internet data to train the next generation of AI tools, we may use data created by AI.

The next question is about computing power. If you want to train a system that is 10 times bigger than ChatGPT, you need 10 times of computing power resources.In the process of training and use, it will consume a lot of energy and produce a lot of carbon dioxide.This is also a widespread concern.

The third major challenge involves scientific progress, and we need basic scientific progress to promote the development of this technology.Just increasing data and computing resources can really push us further in the research and development of artificial intelligence, but this is not as good as the progress brought by scientific innovation. Just like learning to use fire or inventing a computer, we can really make a qualitative leap in human progress. In terms of scientific innovation, the main challenge facing deep learning in the future is how to develop more efficient neural networks.

In addition to the above three challenges, AI needs to be "interpretable". At present, human beings can’t fully understand the logic behind neural networks, and the calculation process of many problems is hidden in the "black box" of AI.Although neural networks have been able to give good answers, we don’t really understand why they give these answers.This not only hinders the research and development of neural networks, but also makes it impossible for humans to fully believe the answers provided by AI. This also includes the robustness of AI, and to use AI in this way, we need to ensure that the neural network will not collapse and get out of control in an unpredictable way.

Although the development bottleneck is in front of us, I don’t think we will see the subversion of neural networks in the short term.We don’t even know how it works yet, so it is still far from subversion.But I don’t think neural network is the answer of artificial intelligence. I think it is only one component of "complete artificial intelligence", and there must be other components, but we don’t know what they are yet.

Tiger sniffing: If computing power is one of the important factors in the development of AI, what innovative research have you seen in the research and development of AI chips?

Michael Wooldridge:Computing power is likely to be a bottleneck in the development of AI technology in the future. The energy efficiency ratio of the human brain is very high. The power of the human brain when thinking is only 20W, which is equivalent to the energy consumption of a light bulb. Compared with computers, such energy consumption can be said to be minimal.

There is a huge natural gap between AI system and natural intelligence, which needs a lot of computing power and data resources. Humans can learn more efficiently,But this "light bulb" of human beings is always only 20W, which is not a very bright light bulb.

Therefore, the challenge we face is how to make neural networks and machine learning technologies (such as ChatGPT) more efficient. At present, no matter from the point of view of software or hardware, we don’t know how to make neural network as efficient as human brain in learning, and there is still a long way to go in this regard.

When the system talks to the system directly.

Multi-agent system is an important branch of AI field, which refers to a system composed of multiple agents. These agents can interact, cooperate or compete with each other to achieve a certain goal. In multi-agent system, each agent has its own knowledge, ability and behavior, and can complete the task by communicating and cooperating with other agents.

Multi-agent system has applications in many fields, such as robot control, intelligent transportation system, power system management and so on. Its advantage is that it can realize distributed decision-making and task allocation, and improve the efficiency and robustness of the system.

Nowadays, with the blessing of AI big model, multi-agent systems and LLM in many scenarios can try to combine applications, thus greatly expanding the boundaries of AI capabilities.

Tiger sniffing: What are the points that can be combined with the AI big model and multi-agent system of the current fire?

Michael Wooldridge:My research focuses on "what happens when artificial intelligence systems communicate with each other". Most people have smartphones and AI assistants for smartphones, such as Siri, Alexa or Cortana, which we call "agents".

For example, when I want to reserve a seat in a restaurant, I will call the restaurant directly. But in the near future, Siri or other intelligent assistants can help me complete this task. Siri will call the restaurant and make a reservation on my behalf. And the idea of multi-agent system is,Why can’t Siri communicate directly with another Siri?Why not let these AI programs communicate with each other? Multi-agent system focuses on the problems involved when these AI programs communicate with each other.

The combination of multi-agent system and large model is the project we are studying. In my opinion, there is a very interesting work to be done in building a multi-agent+large language model. Can we gain higher intelligence by making large language models communicate with each other? I think this is a very interesting challenge.

For example, we need to make an appointment for a meeting now. You and I both use Siri to communicate, but you like meetings in the morning and I like meetings in the afternoon.When there is a dispute between us, how can Siri, representing you and me, work together to solve this problem?Will they negotiate? When AI not only talks to people, but also talks to other AI systems, many new problems will arise. This is the field I am studying, and I believe that multi-agent system is the future direction.

Another interesting question about multi-agents and large language models is, if AI systems only communicate with each other, do they not need human language? Can we design more effective languages for these AI systems?

However, this will lead to other problems, and we need to formulate rules for the exchange of these agents and AI programs.How should human beings?Managing an artificial intelligence society composed of AI?

Siri’s question and answer

AI can’t go to jail instead of human beings.

Michael Faraday, a British scientist, invented the electric motor in 1831, and he didn’t expect the electric chair as a torture device. Karl Benz, who obtained the automobile patent in 1886, could not have predicted that his invention would cause millions of deaths in the next century. Artificial intelligence is a universal technology: its application is only limited by our imagination.

While artificial intelligence is developing by leaps and bounds, we also need to pay attention to the potential risks and challenges that artificial intelligence may bring, such as data privacy and job loss. Therefore, while promoting the development of artificial intelligence technology, we also need to carefully consider its social and ethical impact and take corresponding measures.

If we can really build AI with human intelligence and ability, should they be regarded as equal to human beings? Should they have their own rights and freedoms? These problems need our serious consideration and discussion.

Tiger sniffing: The Chinese Internet has an interesting point: "AI can never engage in accounting or auditing. Because AI can’t go to jail. " AIGC also has such problems in copyright. AI can easily copy the painting and writing styles of human beings, and at the same time, the creation made by human beings using AI also has the problem of unclear ownership. So what do you think of the legal and moral risks of artificial intelligence?

Michael Wooldridge:The idea that AI can’t go to jail is wonderful. Some people think that AI can be their "moral agent" and be responsible for their actions. However, this idea obviously misinterprets the definition of "right and wrong" by human beings. Instead of thinking about how to create "morally responsible" AI, we should study AI in a responsible way.

AI itself cannot be responsible. Once something goes wrong with AI, those who own AI, build AI and deploy AI will be responsible. If the AI they use violates the law, or they use AI for crimes, then it must be human beings who should be sent to prison.

In addition, ChatGPT needs to strengthen supervision in privacy protection. If ChatGPT has collected information about the whole Internet, then he must have read information about each of us. For example, my social media, my books, my papers, comments made by others on social media, and even deleted information. AI may also be able to paint a portrait of everyone based on this information, thus further infringing or hurting our privacy.

At present, there are a lot of legal discussions about artificial intelligence, not just for ChatGPT. The legal issues of artificial intelligence have always existed and become increasingly important, but at present, all sectors of society are still discussing and exploring this.

I think ChatGPT or other AI technologies will become more and more common in the next few years. However, I also think we need to use it carefully to ensure that we will not lose key human skills, such as reading and writing. AI can undoubtedly help human beings to improve production efficiency and quality of life, but it cannot completely replace human thinking and creativity.

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