人人草人人-欧美一区二区三区精品-中文字幕91-日韩精品影视-黄色高清网站-国产这里只有精品-玖玖在线资源-bl无遮挡高h动漫-欧美一区2区-亚洲日本成人-杨幂一区二区国产精品-久久伊人婷婷-日本不卡一-日本成人a-一卡二卡在线视频

China Focus: Data-labeling: the human power behind Artificial Intelligence

Source: Xinhua| 2019-01-17 20:42:21|Editor: ZX
Video PlayerClose

BEIJING, Jan. 17 (Xinhua) -- In a five-story building on the outskirts of Beijing, 22-year-old Zhang Yusen stares at a computer screen, carefully drawing boxes around cars in street photos.

As artificial voices replace human customer services in call centers and robots replace workers on production lines, Zhang, a vocational school graduate, has found a steady job: data-labeling, a new industry laying the groundwork for the development of AI technologies.

SUPERVISED LEARNING

As the "artificial" part of AI, data labeling receives much less media attention than the "intelligence" part of computer algorithms.

Facial recognition, self-driving, diagnosis of tumors by computer systems and the defeat of best human Go player by Alpha Go are ways AI technologies have amazed in recent years.

However, for researchers, the current AI technologies are still quite limited and at an early stage.

Professor Chen Xiaoping, director of Robotics Lab at the University of Science and Technology of China, said all AI technologies so far have come from "supervised" learning in which an AI system is trained with specific forms of data.

Take training a machine to recognize dogs for instance: the system must be fed vast numbers of pictures labeled by humans to tell the system which pictures have dogs and which don't.

Chen noted the human brain is excellent at processing unknown information with reasoning, but it is still impossible for AI. A kindergartener can make the guess of soccer ball from clues like "a black and white round object you can kick," but it's not a easy task for AI. An AI system might be able to tell all different kinds of dogs, but it cannot tell a stuffed animal is not real if such images are not sent to the system.

Yann LeCun, AI scientist at Facebook and widely considered one of the "godfathers" of machine-learning, said recently, "Our best AI systems have less common sense than a house cat."

Behind powerful AI algorithms are vast complicated dataset built and labeled by humans.

ImageNet is one of the world's largest visual databases designed to train AI systems to see. According to its inventors, it took nearly 50,000 people in 167 countries and regions to clean, sort and label nearly a billion images over more than three years.

QUALITY CHECKING

For top researchers like Chen Xiaoping, the next AI breakthrough is expected in self-supervised or unsupervised learning in which AI systems learn without human labeling. But no one knows when it will happen.

"I think in the next five to 10, maybe 15 years, AI systems will still rely on labeled data." said Du Lin, CEO and founder of data-labeling firm BasicFinder.

Du published his first paper about computer vision when he was in high school. After graduating from college, his first windfall came from selling a startup data-digging firm for 4 million U.S. dollars.

In 2014, Du and his partners noticed the rise of AI deep-learning and founded BasicFinder. The company is now a leading data-labeling company, with clients including Stanford University, the Chinese Academy of Sciences, China Mobile and Chinese AI startup SenseTime.

At BasicFinder, a typical work flow starts with taggers like Zhang Yusen. After training two to three months, they draw boxes around cars and pedestrians in street photos, tag ancient German letters, or transcribe snatches of speech.

The labeled images are submitted to quality inspectors who check 2,000 pictures a day. If one image is found inaccurately tagged in every 500 images in random checks, the company is not paid the original price. If the error rate exceeds 1 percent, clients can ask to change data-taggers.

Du said the company has been optimizing work flow to ensure greater accuracy as well as to protect intellectual property and privacy.

HUMAN IN LOOP

A model that requires human interaction is called "human in the loop" and humans remain in the loop much longer than many have expected, said Du.

Data-taggers now work on outsourcing platforms as far afield as Mexico, Kenya, India and Venezuela. Anyone can create an account to become a freelance data-tagger.

But Du strongly disagrees that data-labeling companies, depicted in some media reports as "the dirty little secret" of AI, resemble Foxconn's infamous iPhone factories.

He noted that due to the nature of AI deep-learning, it is the greater accuracy of labeled data that keeps a company alive and thriving, rather than low prices and cheap labor.

China's Caijing magazine reported in October last year that about half of data-labeling companies in China's Henan Province went bust in 2018 as orders dried up.

Du said that in the past two years, many found data-labeling a tough market. The first spurt of growth has ended and a lot of workshop-like companies have been knocked out.

A full-time data-tagger at BasicFinder can earn 6,000 to 7,000 yuan a month, along with accommodation and social benefits. In the first three quarters of 2018, the disposable income per capita in Beijing was 46,426 yuan, around 5,158 yuan a month, according to local government statistics.

Zhang Yusen and his girlfriend, who also works at BasicFinder as a quality inspector are so far enjoying their work.

TOP STORIES
EDITOR’S CHOICE
MOST VIEWED
EXPLORE XINHUANET
010020070750000000000000011100001377521541
主站蜘蛛池模板: 熟妇熟女乱妇乱女网站 | 乱一色一乱一性一视频 | 关之琳三级全黄做爰在线观看 | 亚洲一区二区三区四区在线 | 色99色 | 欧美一区二不卡视频 | 日韩一级免费视频 | 欧美爱爱网 | 国产在线h| 激情瑟瑟| 国产91一区二区三区 | 一级免费av| 香蕉久久久久久 | 免费看黄的网址 | 日韩片在线观看 | 国产午夜精品一区二区三区视频 | 久久精品国产亚洲av高清色欲 | 宅男午夜影院 | 最近最经典中文mv字幕 | 丝袜美腿中文字幕 | av中文字幕网站 | 青青草在线免费视频 | 国产乱色精品成人免费视频 | 97香蕉久久夜色精品国产 | 黄骗免费网站 | 美女黄色真播 | 最新中文字幕av专区 | 成人动漫免费在线观看 | 免费精品一区二区 | 黄色在线观看网站 | 伊人色在线 | 伊人久久一区 | 国产黄色网址在线观看 | 久久久精品久久久久 | 国产一级二级毛片 | 在线免费观看黄色小视频 | 成人观看视频 | 男人的天堂色偷偷 | xxxx国产视频 | 成人视频在线观看 | 人人操日日干 | 国产激情精品一区二区三区 | 91se在线| 99久热 | 一本一道久久综合狠狠老精东影业 | 91视频麻豆| 欧美午夜影院 | 婷婷色婷婷开心五月四房播播 | 99热播| 亚洲区偷拍| 青青综合网 | 少女与动物高清版在线观看 | 香蕉午夜视频 | 国产一区在线免费观看 | 日韩中文字幕网 | 在线看片黄 | 激情三区 | 绝顶高潮videos合集 | 天天看天天射 | 视频一区中文字幕 | 波多野结衣在线观看视频 | 日日草夜夜草 | 欧美日韩在线中文字幕 | 久久久久久久久久久久久久av | 肥老熟妇伦子伦456视频 | 内射干少妇亚洲69xxx | 日本黄网站色大片免费观看 | 激情久久久久久 | 国产在线观看免费 | 麻豆免费下载 | 天天干天天插天天射 | 成人精品免费网站 | 色综合日韩 | 久草免费在线播放 | av中亚 | 沟厕沟厕近拍高清视频 | 亲嘴扒胸摸屁股免费视频日本网站 | 国产女人18毛片水真多 | 天堂资源中文在线 | 欧美爱爱网址 | 高清一区二区三区四区 | 国产人妻精品午夜福利免费 | 99色综合 | 在线观看视频福利 | wwwav视频| 成人免费毛片嘿嘿连载视频 | 日韩欧美色图 | 成人福利在线视频 | 天天爽天天射 | 日韩中文一区二区 | 粉色视频网站 | 黑人性生活视频 | 青青操在线观看 | 91高清视频免费观看 | 波多野结衣小视频 | 97看片吧 | 欧美日韩综合一区二区 | 婷婷综合激情网 | 尤物天堂 |