官术网_书友最值得收藏!

AI Tools and Learning Models

In the previous sections, we discovered the fundamentals of AI. One of the core tasks of AI is learning. This is where intelligent agents come into the picture.

Intelligent Agents

When solving AI problems, we create an actor in the environment that can gather data from its surroundings and influence its surroundings. This actor is called an intelligent agent.

An intelligent agent is as follows:

  • Is autonomous
  • Observes its surroundings through sensors
  • Acts in its environment using actuators (which are the components that are responsible for moving and controlling a mechanism)
  • Directs its activities toward achieving goals

Agents may also learn and have access to a knowledge base.

We can think of an agent as a function that maps perceptions to actions. If the agent has an internal knowledge base, then perceptions, actions, and reactions may alter the knowledge base as well.

Actions may be rewarded or punished. Setting up a correct goal and implementing a carrot and stick situation helps the agent learn. If goals are set up correctly, agents have a chance of beating the often more complex human brain. This is because the primary goal of the human brain is survival, regardless of the game we are playing. An agent's primary motive is reaching the goal itself. Therefore, intelligent agents do not get embarrassed when making a random move without any knowledge.

主站蜘蛛池模板: 凤城市| 崇州市| 花垣县| 嘉鱼县| 达州市| 吴忠市| 大港区| 虹口区| 麻江县| 高陵县| 西青区| 龙井市| 青阳县| 松溪县| 青冈县| 忻州市| SHOW| 花莲县| 定西市| 玛沁县| 乃东县| 仁怀市| 鸡泽县| 同心县| 诸暨市| 久治县| 东乌珠穆沁旗| 工布江达县| 安西县| 永顺县| 阳曲县| 东阿县| 屏边| 伊川县| 营山县| 井陉县| 洮南市| 固镇县| 陆丰市| 洛隆县| 仙游县|