<tt id="6hsgl"><pre id="6hsgl"><pre id="6hsgl"></pre></pre></tt>
          <nav id="6hsgl"><th id="6hsgl"></th></nav>
          国产免费网站看v片元遮挡,一亚洲一区二区中文字幕,波多野结衣一区二区免费视频,天天色综网,久久综合给合久久狠狠狠,男人的天堂av一二三区,午夜福利看片在线观看,亚洲中文字幕在线无码一区二区
          US EUROPE AFRICA ASIA 中文
          Opinion / Op-Ed Contributors

          AlphaGo an AI giant, still not a threat

          (China Daily) Updated: 2016-03-18 07:43

          AlphaGo an AI giant, still not a threat

          The world's top Go player Lee Sedol (R) puts his first stone during the last match of the Google DeepMind Challenge Match against Google's artificial intelligence program AlphaGo in Seoul, South Korea, in this handout picture provided by Google and released by Yonhap on March 15, 2016.[Photo/Agencies]

          Google Deep Mind's AlphaGo artificial-intelligence program has beaten South Korean Go master Lee Sedol 4:1, sparking a debate world wide on whether AI could pose a threat to humankind.

          The development of AI began decades ago. In 1997, Deep Blue developed by IBM defeated the world chess champion Garry Kasparov. In 2010, Apple added Siri (speech interpretation and recognition interface) to its iPhone, which understands the users' audio commands and replies accordingly-similar examples include Xiaobing of IBM and Jimi of jd.com.

          But Siri, Xiaobing and Jimi can only deal with a limited number of questions, as they compare the user's command with those pre-installed in their "memories" and answer accordingly. The Deep Blue, on the other hand, relies heavily on fast computing; it decides its next move in a chess game mainly by evaluating the condition on the chessboard and comparing it with the manuals saved in its "memory". That's why it cannot win a Go game, which involves many more possibilities than chess.

          AlphaGo, in this sense, is a big step forward because it uses multi-layered artificial neural network, or ANN, and reinforcement learning alGorithm, which can more exactly imitate the way a human brain thinks. AlphaGo repeatedly observes the Go board, analyzes it with its processor and makes the best choice. More importantly, it can store the decisions in its "memory" for future references. In other words, it can more efficiently "learn" and improve.

          ANN has become a hot subject of research since the 1980s. It is already being used in many fields besides games. For example, the driverless car developed by Google "observes" the environment through sensors, using calculations to judge how things are moving, and chooses its route accordingly.

          AlphaGo marks another step forward because the ANN it uses has more than 30 layers thanks to developers and faster computers. Each layer has multi-parameters that get adjusted each time it obtains information from the outside world, a process through which AlphaGo constantly optimizes its strategy. The more information it gets, the more exactly it can adjust the parameters to suit new situations.

          Many people jocularly say AlphaGo is a hardworking student that "studies" hundreds of manuals every night. That may be a joke, but AlphaGo has learned a great deal about Go, or it couldn't have defeated Lee Se-dol. Let's hope its victory would make more people interested in AI research.

          Yang Feng is an associate professor at the School of Automatics, Northwestern Polytechnical University.

          Previous Page 1 2 Next Page

          Most Viewed Today's Top News
          ...
          主站蜘蛛池模板: 一本大道东京热无码| 亚洲伊人精品久视频国产| 亚洲欧洲日韩国内高清| 国产精品自拍中文字幕| 精品无码久久久久成人漫画| 日韩av一区二区高清不卡| 国产精品久久久久久久久软件| 最近中文字幕2019免费| 日韩人妻精品中文字幕| 99这里只有精品| 国内精品伊人久久久久AV一坑| 波多野结衣中文字幕久久| 亚洲高清av一区二区| 一本色道婷婷久久欧美| 亚洲AV无码秘?蜜桃蘑菇| 无线乱码一二三区免费看| 青草视频在线观看入口| 国产美女被遭强高潮免费一视频| 男男高h喷水荡肉爽文| 精品中文人妻中文字幕| 亚洲AV综合色区无码二区偷拍| 亚洲av成人区国产精品| 开心五月婷婷综合网站| 丰满人妻无码∧v区视频| 亚洲2区3区4区产品乱码2021| 资源在线观看视频一区二区| 四虎成人精品永久网站| 色综合久久无码五十路人妻 | 日韩精品一区二区三区激| 国厂精品114福利电影免费| 国内揄拍国产精品人妻门事件| 免费 黄 色 人成 视频 在 线| 人人妻人人揉人人模人人模| 综合色一色综合久久网| 免费国产a国产片高清网站| 伊人久久大香线蕉综合观| 国产成人亚洲综合A∨在线播放| 国产亚洲精品成人av在线| 亚洲精品不卡av在线播放| 风流老熟女一区二区三区| 韩国三级+mp4|