Integration of Machine Learning and AI Based Optimization from IoT Datastreams and Business Information Systems
Internet of things (IoT) includes of multitude of sensors from a wide variety of applications. These sensors produce high volume and high velocity data. Recently there has been much interest in application of such technologies to improve agricultural practices. The sensors that are installed in the field transmit real time data regarding numerous environmental variables of interest. This data is then used to forecast a future state and to make a well informed business/operation decision according to an expected future state. One of the challenges in application of such technology is to improve prediction accuracy of the forecast. This project will design a generalized framework based on machine learning and artificial intelligence methodologies to improve prediction accuracy that will ultimately result in reduced operating costs and higher yields in agriculture sector.