A Survey on AI and ML Techniques
Keywords:
methodologies, ML technology, machine learnAbstract
Nowadays due to the exploitation of a large amount of data, there is a need to manage and store this data. AI/ML are the technologies used to do so. These methodologies use some techniques to perform operations on the data. AI technology helps a machine to get self intelligent and perform tasks like humans whereas ML technology makes the machine learn from past experiences using AI. The techniques used by AI/ML are explained and compared in this paper.
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