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Sivaraman, K.
- Cloud Services for Efficient Log Management
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Authors
Affiliations
1 Department of Computer Science and Engineering, Jerusalem College of Engineering, Chennai - 600100, Tamil Nadu, IN
2 Department of Computer Science Engineering, Bharath University, Chennai - 600073, Tamil Nadu, IN
1 Department of Computer Science and Engineering, Jerusalem College of Engineering, Chennai - 600100, Tamil Nadu, IN
2 Department of Computer Science Engineering, Bharath University, Chennai - 600073, Tamil Nadu, IN
Source
Indian Journal of Science and Technology, Vol 8, No 32 (2015), Pagination:Abstract
In the web server, we can find much net traffic, insecurity over the application and also lack of performance measures for the application. Here the time consumption is more for searching the log and, risk of data loss if a server crashes and the fact that data are distributed across multiple servers, storage and processing are outsourced to third party providers and this could result in delays in responding to user requests or other problems that raise concern. So by using software as a service (SaaS) and platform as a service (PaaS) in the cloud, we are enhancing the visualization and performances of application over internet, and then deploying the overall application in the cloud to manage the log details and database storage. In this application, the user can be authenticated by their username and password during sign in. The logs can be managed based on the user activity and can be viewed only by the administrator. The admin activity also can be viewed separately in the admin logs. Thus the cloud itself allows multiple users to visit our site at a time without any net traffic and, if the server crashes, then there is no loss of data which has been stored in the database.Keywords
Cloud, Log, PaaS, SaaS- Impact of Release of Neochetina Spp. on Growth and Density of Water Hyacinth Eichhornia crassipes
Abstract Views :287 |
PDF Views:182
Authors
Affiliations
1 Manonmaniam Sundaranar University, Sri Paramakalyani Centre of Excellence in Environmental Sciences, Alwarkurichi - 627412, Tirunelveli, IN
1 Manonmaniam Sundaranar University, Sri Paramakalyani Centre of Excellence in Environmental Sciences, Alwarkurichi - 627412, Tirunelveli, IN
Source
Journal of Biological Control, Vol 30, No 3 (2016), Pagination: 158-163Abstract
Water hyacinth (Eichhornia crassipes) is an invasive aquatic macrophyte which creates several problems in irrigation system of rivers. To control their rapid distribution in water bodies the biological control method was carried by employing weevils Neochetina bruchi and Neochetina eichhorniae on river based field trial. The study demonstrates effectiveness of biocontrol weevil open field release on experimental site (Chittar river). When compared to first release in field, the weevil intensity was increased in numbers. Active scraping was observed in the leaves and decay spots were seen in the stems of weed. Both N. bruchi and N. eichhorniae (250 No) were introduced biyearly at experimental site for one year. During these two years of observation period, stunted growth and reduced population were observed in the study site. The study highlights importance of Neochetina spp. on the management of E. crassipes.Keywords
Biological Control, Chittar River, Eichhornia crassipes, Neochetina bruchi, Neochetina eichhorniae, Water Hyacinth.References
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- Vehicular Ad Hoc Networks Assisted Clustering Nodular Framework for Optimal Packet Routing and Scaling
Abstract Views :56 |
PDF Views:1
Authors
Affiliations
1 Department of Computer Science and Engineering, Bharath Institute of Higher Education and Research, Chennai, Tamil Nadu, IN
1 Department of Computer Science and Engineering, Bharath Institute of Higher Education and Research, Chennai, Tamil Nadu, IN
Source
International Journal of Computer Networks and Applications, Vol 11, No 1 (2024), Pagination: 82-95Abstract
Wireless communication between moving cars and stationary structures is made possible by Vehicular Ad Hoc Networks (VANETs). The goal is to communicate traffic data so that accidents can be avoided and resources can be used most effectively in current traffic conditions. There are several methods for enhancing VANETs' communicative efficacy; one is clustering in-vehicle networks. One CH assigned to each cluster and is in charge of the cluster as a whole. The CHs are responsible for all communications, both those between clusters and those within a single cluster. Vehicles in this study are organized into groups called clusters and information is relayed from one CH to another. Several different routing algorithms may be used to send data from one vehicle to another to improve the network's performance as a whole. Many reliable and safe routing systems for VANETs have been presented in the past decade. These protocols have several drawbacks, including their complexity, inability to scale to extensive networks, increased transportation costs, etc. Several bio-inspired strategies for optimal packet routing among vehicle nodes have been proposed to overcome these restrictions. Hence, this paper presents the efficient optimization of vehicular ad hoc networks assisted by a clustering nodular [EO-CN] framework to solve the abovementioned issues. The proposed method drastically reduced network overhead in settings with varying densities of nodes. Numerous experiments were conducted with various parameters, including cluster size, network area, node density, and transmission distance. These findings demonstrated that [EO-CN] performed better than competing approaches.Keywords
Clustering, Efficiency, Optimization, VANET, Nodes, Transportation.References
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