Workflow scheduling is the recent researching area in the cloud environment, in which user satisfaction based on the cost and bandwidth is the most challenging task. Several research methods are devised to minimize the execution time and cost, which compromises the attributes. Hence, this research introduces an effective task scheduling mechanism in a cloud environment utilizing the Regressive Whale Water Optimization (RWWO) algorithm, which is derived by the integration of Regressive Whale Optimization (RWO) and Water Cycle Algorithm (WCA). The fitness parameters utilized are Quality of Service (QoS), resource utilization, and predicted energy. However, predicted energy is determined using Deep Maxout Network. Moreover, the proposed RWWO + Deep Maxout Network achieved a minimum task scheduling time of 0.0208, minimum task scheduling cost of 0.0017, minimum predicted energy of 0.1971, and maximum resource utilization of 0.9999.
Diabetes is one of the most deadly diseases on the planet. It is also a cause of a variety of illnesses, such as coronary artery disease, blindness, and urinary organ disease. In this situation, the patient must visit a medical center to obtain their results following consultation. Finding the right combination of characteristics and machine learning techniques for classification is also very critical. However, with the advancement of machine learning techniques, we now have the potential to find a solution to the current problem. The healthcare recommendation system (HRS) may be designed to predict health by evaluating patient lifestyle, physical health, mental health aspects using machine learning. For example, training the model using people's age and diabetes helps to predict new patients without a specific diagnostic for diabetes. The proposed deep learning model with convolutional neural network (D-CNN) achieves an overall accuracy of 96.25%. D-CNN is found to be more successful for diabetes prediction than other machine learning (ML) approaches in the experimental analysis.
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