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2.  What was the strategy that you applied to win this game against the AI machine?




                      3.  Was it different to play Rock, Paper & Scissors with an AI machine as compared with a human?




                      4.  What approach was the machine following while playing against you?




                      It is a game based on data statistics domain of AI where the machines try to predict the next move of
                      the participant. It is made on similar rules as a basic rock, paper and scissors game we played in our
                      childhood days. Learning from the previous moves of the player the machine tries to win ahead with
                      the participant. With every game, the machine is learning from your moves, and able to play it better.




                 Computer Vision

                 We use our vision to sense and identify objects around us. In the same way, AI machines use the computer vision
                 domain to understand their surroundings. Computer Vision (CV) is the domain of artificial intelligence that is used
                 to train computers to read, process, and analyse visual data in the same way as humans do. The type of data in CV
                 is images and videos. The AI machine collects data from digital images and videos, and then process the data to
                 identify the objects in the image/video. For example, a self-driven car scans live objects, like traffic signals, analyses
                 the scanned image, and then creates the 3D version of it. After that, the car decides whether to run or stop. Some
                 other applications of CV in AI are facial lock in smartphones, unusual behaviour detection, object classification,
                 home security systems, office security systems, and drone-based surveillance systems.





























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