6 research outputs found

    Towards the Exploration of Task and Workflow Scheduling Methods and Mechanisms in Cloud Computing Environment

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    Cloud computing sets a domain and application-specific distributed environment to distribute the services and resources among users. There are numerous heterogeneous VMs available in the environment to handle user requests. The user requests are defined with a specific deadline. The scheduling methods are defined to set up the order of request execution in the cloud environment. The scheduling methods in a cloud environment are divided into two main categories called Task and Workflow Scheduling. This paper, is a study of work performed on task and workflow scheduling. Various feature processing, constraints-restricted, and priority-driven methods are discussed in this research. The paper also discussed various optimization methods to improve scheduling performance and reliability in the cloud environment. Various constraints and performance parameters are discussed in this research

    Architecture and Framework for Group Profiling System in Smart Homes

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    Smart homes are becoming a progressive reality in our society. Automation and customization are at the center of the functionality of smart homes. User profiles record the user preferences of the inhabitants. User profiles are the heart of smart home systems. Real-world smart homes have multiple residents in them. Most smart homes treat the gathering of users in the same area just as a collection of users, but in real-world scenarios, such a group has its own identity. The proposed system tackles this problem by introducing the notion of Group Profiling. This paper presents the significance of profiles and group profiles in a smart home to achieve better customization and automation

    Malarial Diagnosis with Deep Learning and Image Processing Approaches

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    Malaria is a mosquito-borne disease that has killed an estimated a half-a-million people worldwide since 2000. It may be time consuming and costly to conduct thorough laboratory testing for malaria, and it also requires the skills of trained laboratory personnel. Additionally, human analysis might make mistakes. Integrating denoising and image segmentation techniques with Generative Adversarial Network (GAN) as a data augmentation technique can enhance the performance of diagnosis. Various deep learning models, such as CNN, ResNet50, and VGG19, for recognising the Plasmodium parasite in thick blood smear images have been used. The experimental results indicate that the VGG19 model performed best by achieving 98.46% compared to other approaches. This study demonstrates the potential of artificial intelligence to improve the speed and precision of pathogen detection which is more effective than manual analysis

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    From the bottom up: dimensional control and characterization in molecular monolayers

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