Author : Shivaji Pawar 1
Date of Publication :24th May 2019
Abstract: Artificial intelligence (AI) and machine learning are the two terms that are buzzing around the world and indeed make a significant impact on human life. It affects various aspects of human life attributes like healthcare, environmental, education, and E-commerce. Artificial intelligence is capable of doing things that were once impossible to imagine before the invention of computers. The basic motivation behind this paper is to study the impact of Artificial intelligence on human life in recent years. The first area where its impact is significant is the healthcare, in which we can satisfy all its attributes in terms of more responsive, cost-effective and fast in diagnosis. In order to empower education, equality is the major parameter but due to the economical and geographical barrier it is very difficult to provide equality in the education. But due to fast scientific development in AI and machine learning it has enabled to build great promise to the education sector in terms of digitally enabled classrooms, cloud-based content, EBooks etc. Today global environment condition is in bad shape due to the increase in population, pollution, and industrial waste, hence we require potential strategies and solution to tackle it. Artificial intelligence and sensor technology can provide a unique solution to the world environment in coming future. Area of E-commerce is almost covered by application of Artificial intelligence due to responsive, safe in use, , highly accurate and cost-effective techniques. Up to 2020, artificial intelligence can provide complete technical intersection to all the attributes of human life, but there are many issues that should be tackled by researcher and developer such as Bias, accuracy, and data transparency, legal and ethical issues.
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