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Shankar, R.
- Sustainability Perceptions in a Technological Institution of Higher Education in India
Abstract Views :443 |
PDF Views:167
Authors
Affiliations
1 Department of Architecture, Srinivas Institute of Technology, Velachil, Mangalore 574 143, IN
2 Department of Architecture and Planning, IIT Roorkee, Roorkee 247 667, IN
1 Department of Architecture, Srinivas Institute of Technology, Velachil, Mangalore 574 143, IN
2 Department of Architecture and Planning, IIT Roorkee, Roorkee 247 667, IN
Source
Current Science, Vol 109, No 12 (2015), Pagination: 2198-2203Abstract
Institutions of higher education serve as models for excellence in education. They also have an added responsibility in providing guidance to the community for social upliftment and environmental sustainability. The present study conducted in the Indian Institute of Technology Roorkee (IITR) examines the students' perception on the importance of sustainability to the campus. One hundred sixty-five students participated in the survey. The survey focuses on three broad categories, namely environmental, educational and research, and management factors. Environmental factors are more significant compared to management factors. Education and research is given less importance compared to environmental and management factors. Findings provide a useful extension to both the management and administrative strategies in decision-making process to improve the sustainability of the campus.Keywords
Education and Research, Environmental Parameters, Green Guidelines, Management Strategies.References
- Shaila, S. B., Mukherjee, M. and Shankar, R., Sustainability practices in Institutions of higher educational campuses in India. Kashi J. Soc. Sci., December 2012–May 2013, 2, 254–260.
- Velazquez, L., Munguia, N., Platt, A. and Taddei, J., Sustainable University: what can be the matter? J. Clean. Prod., 2006, 14, 810–819
- Wright, T. S. A., Definitions and frameworks for environmental sustainability in higher education. Higher Educ. Policy, 2002, 15(2), 105–120.
- Strandbu, A. and Krange, O., Youth and the environmental movement – symbolic inclusions and exclusions. Sociol. Rev., 2003, 51(2), 177–198.
- Plyers, G., The black block to alter activists: poles and forms Youth engagement altermondialists. Social and Political Links, 2004, 51, 123–134.
- Wright, T. S. A., University presidents’ conceptualizations of sustainability in higher education. Int. J. Sustain. Higher Educ., 2010, 11(1), 61–73.
- Mostafa, N. and Mehran, N., Assessment of sustainable university factors from the perspective of university students. J. Clean. Prod., 2013, 48, 101–107.
- Lukman, R. and Glavic, P., What are the key elements of a sustainable university? Clean Technol. Environ. Policy, 2007, 9(2), 103–114.
- Moore, J., Seven recommendations for creating sustainability education at the university level: a guide for change agents. Int. J. Sustain. Higher Educ., 2005, 6(4), 326–339.
- Stephens, J. C. and Graham, A. C., Toward an empirical research agenda for sustainability in higher education: exploring the transition management framework. J. Clean. Prod., 2010, 18(7), 611–618.
- Lozano, R. and Young, W., Assessing sustainability in university curricula: exploring the influence of student numbers and course credits. J. Clean. Prod., 2013, 49, 134–141.
- Wright, T. S. A. and Wilton, H., Facilities management directors’ conceptualizations of sustainability in higher education. J. Clean. Prod., 2010, 31, 118–125.
- Kagawa, F., Dissonance in students’ perceptions of sustainable development and sustainability: Implications for curriculum change. Int. J. Sustain. Higher Educ., 2007. 9(3), 317–338.
- Richard, E. and Adams, J. N., College students’ perceptions of campus sustainability. Int. J. Sustain. Higher Educ., 2010, 12(1), 79–92.
- Yuan, X. and Zuo, J., A critical assessment of the higher education for sustainable development from students’ perspectives – a Chinese study. J. Clean. Prod., 2013, 48, 108–115.
- Earl, C., Lawrence, A., Harris, N. and Stiller, S., The campus community and the concept of sustainability: an assessment of College of Charleston student perceptions. Chrestomathy: Annu. Rev. Undergraduate Res. Coll. Charleston, 2003, 2, 85–102.
- Mostafa, N., Shahbudin, A. S. B. M. and Amran, A. B., Barriers to achieving a sustainable university in the perspective of academicians. In The 9h Asian Academy of Management International Conference, 2011, Penang, Malaysia, pp. 402–407.
- Mital, K. V., History of Thomason College of Engineering, University of Roorkee, 1996.
- Mital, K. V., History of Roorkee University, University of Roorkee, 1997.
- Chalker-Scott, L. and Tinnemore, R., Is community-based sustainability education sustainable? A general overview of organizational sustainability in outreach education. J. Clean. Prod., 2009, 17(12), 1132–1137.
- Application of Two Channel Video QUAD/MUX Controller to Employ Outdoor Surveillance
Abstract Views :275 |
PDF Views:2
Authors
Affiliations
1 Department of Electronics and Communication Engineering, Karunya University, Coimbatore, IN
2 Department of Electronics and Communication Engineering, Karunya University, Coimbatore, Tamil Nadu, IN
1 Department of Electronics and Communication Engineering, Karunya University, Coimbatore, IN
2 Department of Electronics and Communication Engineering, Karunya University, Coimbatore, Tamil Nadu, IN
Source
Biometrics and Bioinformatics, Vol 3, No 3 (2011), Pagination: 134-139Abstract
The home security is of prior importance to everyone in this time and the need for security devices is on the rapid rise in Indian market, according to an article in the Times of India. Most of the security devices that are currently available need an extra display device to view the video from the camera located outside the door. This increases the cost of the entire system. Moreover, when anyone knocks the door while you watch a very interesting program in TV, may be the last over of the world cup finals, your mind won't allow you to think about your guest standing at your door. To overcome this problem, we come out with a security system which eliminates the need for an extra display device, by using a PIP processor. When someone stands at the door, a pop up showing the camera video will be generated over the TV screen and it disappears automatically when the person leaves. With this, one will not be missing the existing TV program and the person standing outside the door as well.Keywords
QUAD/MUX, Outdoor Surveillance, Picture in Picture.- Collision of Green Employee Engagement and Green Human Resource Management in Employee’s Productivity
Abstract Views :664 |
PDF Views:463
Authors
V. Santhi
1,
R. Shankar
2
Affiliations
1 Associate Professor and Head, Department of Humanities, PSG College of Technology, Coimbatore – 641004, Tamil Nadu, IN
2 Assistant Professor, Department of Humanities, PSG College of Technology, Coimbatore - 641004, Tamil Nadu, IN
1 Associate Professor and Head, Department of Humanities, PSG College of Technology, Coimbatore – 641004, Tamil Nadu, IN
2 Assistant Professor, Department of Humanities, PSG College of Technology, Coimbatore - 641004, Tamil Nadu, IN
Source
HuSS: International Journal of Research in Humanities and Social Sciences, Vol 8, No 1 (2021), Pagination: 27-32Abstract
The environment of the world plays a dominant role in the entire wellbeing of the nation. Now-a-days, due to emergence of huge number of industries and tremendous change in the life style of people, the global environment faces a big challenge. In order to overcome the negative impact of pollution, green aspect in almost all the fields is emerging. The green initiatives undertaken by the countries have created awareness among the public and its implementation has become mandatory amidst the prevailing global environmental concern. Traditionally, most of the industries followed the green initiatives driven by laws and regulations. But, the situation has seen a drastic change from control to prevention. The information technology industry is not an exception. In this regard, the present study focuses on analyzing the impact of Green Employee Engagement and Green Human Resource Management on employees’ productivity in IT companies in Coimbatore district. By employing simple random sampling technique, data has been collected from 150 employees working in various IT companies in the study area. Various statistical tools namely simple percentage analysis, chi-square test and multiple regression analysis have been employed for analysis. It was found that the Green Employee Engagement and Green Human Resource Management has a significant impact on employees’ productivity.Keywords
Green Employee Engagement, Green Human Resource Management and Green Initiatives.References
- Darnall N, Henriques I, Sadorsky P. Do Environmental Management Systems Improve Business Performance in an International Setting Journal of International Management. 2008; 14(4):364–376. https://doi.org/10.1016/j.intman.2007.09.006
- Sengupta M, Sengupta N. Green HRM: A Tool for Organizational Sustainability. Proceedings of the Fourth International Conference on Global Business, Economics, Finance and Social Sciences, Kolkata. 2015; 1–11. www.globalbizresearch.org
- Ruchismita P, Shitij R, Sharma P, Yadav V. Green HR: Analysis of Sustainable Practices Incorporated by IT Firms in India. SIMS Journal of Management Research. 2015; 1:12–17.
- Optimization of Computation and Communication Driven Resource Allocation in Mobile Cloud
Abstract Views :339 |
PDF Views:2
Authors
R. Shankar
1,
Tharani Vimal
2
Affiliations
1 Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Andhra Pradesh, IN
2 Department of Information Technology, St. Peter’s College of Engineering and Technology, Avadi, Chennai, Tamil Nadu, IN
1 Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Andhra Pradesh, IN
2 Department of Information Technology, St. Peter’s College of Engineering and Technology, Avadi, Chennai, Tamil Nadu, IN
Source
International Journal of Computer Networks and Applications, Vol 9, No 2 (2022), Pagination: 189-201Abstract
With the emergence of accessing Smartphones in day-to-day life, Mobile Cloud Computing (MCC) technology has become popular with the advantage of resolving the resource constraints in mobile devices through the offloading method. The existing models have presented the different resource allocation solutions to ensure the seamless execution of the applications for the resource-constrained mobile devices with the Quality of Service (QoS). The optimization of resource allocation is the process of potentially allocating remote resources to mobile users without violating the Service Level Agreements (SLAs). However, resource allocation is still becoming a major constraint in the Mobile Cloud (MC) data centers due to higher consumption of energy and time factors during the execution of mobile requests on the remote cloud. The consumption of the energy and response time of the offloaded tasks or applications heavily relies on the cloud resource allocation for the mobile users. Hence, Resource Allocation Optimization (RAO) emerged as the significant objective to select the appropriate cloud resources for the requested tasks to increase the lifetime of the devices with improved time efficiency. Thus, this work focuses on optimizing MC resource allocation by optimizing the allocation of both the computation and communication resources. The proposed RAO model considers two potential factors, such as the energy and response time while allocating the computational and communicational resources. Initially, the Energy and Response time-driven RAO (EARO) approach prioritizes the request generated from the mobile users based on the estimated execution time. Modeling the Estimated Communication and Execution Time (ECET) algorithm tends to allocate the cloud resources and accomplish the minimal response time of the application requests. The EARO approach intends to minimize the execution time as well as the response time towards the target of alleviating the energy consumption during the resource allocation. Moreover, it selects the resources for the inter-VM communication with the knowledge of the minimal migration time ensuring bandwidth resources. Thus, EARO preserves the device's energy with minimal application completion time. The experimental results illustrate that the time efficiency of the proposed EARO model outperforms the existing resource allocation model in the MC environment.Keywords
MCC, Resource Allocation, Computation, Communication, Optimization, Energy Consumption, Bandwidth, Response Time.References
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- Dinh Hoang T, Chonho Lee, Dusit Niyato, and Ping Wang, “A survey of Mobile Cloud computing: architecture, applications, and approaches”, Wireless communications and mobile computing, Vol.13, No.18, pp.1587-1611, 2013
- Hussain, Hameed, Saif Ur Rehman Malik, Abdul Hameed, Samee Ullah Khan, Gage Bickler, Nasro Min-Allah, and Muhammad Bilal Qureshi et al., “A survey on resource allocation in high performance distributed computing systems”, Elsevier transaction on Parallel Computing, Vol.39, No.11, pp.709-736, 2013
- Arfeen, Muhammad Asad, Krzysztof Pawlikowski, and Andreas Willig, “A framework for resource allocation strategies in cloud computing environment”, IEEE transaction on Computer Software and Applications Conference Workshops (COMPSACW), pp.261-266, 2011
- Madni, Syed Hamid Hussain, Muhammad Shafie Abd Latiff, and Yahaya Coulibaly, “Recent advancements in resource allocation techniques for cloud computing environment: a systematic review”, Cluster Computing, Vol.20, No.3, pp.2489-2533, 2017
- Zhou, Bowen, and Rajkumar Buyya, “Augmentation techniques for mobile cloud computing: A taxonomy, survey, and future directions”, ACM Computing Surveys (CSUR),Vol.51, No.1, pp.1-38, 2018
- HamaAli, Kurdistan Wns, and Subhi RM Zeebaree, “Resources allocation for distributed systems: A review”, International Journal of Science and Business, Vol.5, No.2, pp.76-88, 2021
- Pallavi, L., B. Thirumala Rao, and A. Jagan, “Mobility Management Challenges and Solutions in Mobile Cloud Computing System for Next Generation Networks”, International Journal of Advanced Computer Science and Applications, Vol.11, No.3, pp.177-192, 2020
- Shu, Peng, Fangming Liu, Hai Jin, Min Chen, Feng Wen, Yupeng Qu, and Bo Li, “eTime:energy-efficient transmission between cloud and mobile devices”, Proceedings IEEE in INFOCOM, pp.195-199, 2013
- Rahimi, M. Reza, Nalini Venkatasubramanian, Sharad Mehrotra, and Athanasios V. Vasilakos, “On Optimal and Fair Service Allocation in Mobile Cloud Computing”, Distributed, Parallel, and Cluster computing, arXiv preprint arXiv:1308.4391, 21 pages, 2013
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- Sun, Huaiying, Huiqun Yu, Guisheng Fan, and Liqiong Chen, “Energy and time efficient task offloading and resource allocation on the generic IoT-fog-cloud architecture”, Peer-to-Peer Networking and Applications, Vol.13, No.2, pp.548-563, 2020
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- Chen, Meng-Hsi, Ben Liang, and Min Dong, “Joint offloading and resource allocation for computation and communication in mobile cloud with computing access point”, In IEEE INFOCOM 2017-IEEE Conference on Computer Communications, pp.1-9, 2017
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- Kiran, K. Tara Phani Surya, K. V. V. Satyanarayana, and P. Yellamma, “Advanced Q-MAC: optimal Resource allocating for dynamic application in mobile cloud computing using Qos with cache memory”, International Journal of Engineering & Technology Vol.7, No.3.1, pp.143-146, 2018
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- Teacher Training Workshops in India
Abstract Views :426 |
PDF Views:174
Authors
Affiliations
1 International GeoScience Education Organisation, Bengaluru, IN
2 Weizmann Institute of Science, Rehovot, IL
3 Keele University, Keele, Staffs, ST5 5BG, GB
4 Manipal Institute of Technology, Manipal University, Manipal 576 104, IN
5 St Aloysius College (Autonomous), Mangaluru 575 003, IN
6 Karnataka State Council for Science and Technology, Indian Institute of Science Campus, Bengaluru 560 012, IN
1 International GeoScience Education Organisation, Bengaluru, IN
2 Weizmann Institute of Science, Rehovot, IL
3 Keele University, Keele, Staffs, ST5 5BG, GB
4 Manipal Institute of Technology, Manipal University, Manipal 576 104, IN
5 St Aloysius College (Autonomous), Mangaluru 575 003, IN
6 Karnataka State Council for Science and Technology, Indian Institute of Science Campus, Bengaluru 560 012, IN
Source
Current Science, Vol 112, No 06 (2017), Pagination: 1090-1093Abstract
The International GeoScience Education Organisation, Bengaluru organized three teacher training workshops in Goa, Mangaluru and Bengaluru. These workshops were organized as a pilot project to test the impact of such an approach in an Indian setting.- Estimation of Ice Thickness of the Satopanth Glacier, Central Himalaya Using Ground Penetrating Radar
Abstract Views :522 |
PDF Views:196
Authors
Affiliations
1 Department of Geology, H.N.B. Garhwal University, Srinagar Garhwal 246 174, IN
2 Indian Institute of Science and Educational Research, Pune 411 008, IN
3 The Institute of Mathematical Sciences, Chennai 600 113, IN
1 Department of Geology, H.N.B. Garhwal University, Srinagar Garhwal 246 174, IN
2 Indian Institute of Science and Educational Research, Pune 411 008, IN
3 The Institute of Mathematical Sciences, Chennai 600 113, IN
Source
Current Science, Vol 114, No 04 (2018), Pagination: 785-791Abstract
Total volume of stored ice in the Himalayan glaciers is an important quantity for water resource management of the Himalayan catchments. However, direct measurement of glacier-ice thickness is rare in the Indian Himalaya. We have estimated the ice thickness of the debris-covered Satopanth Glacier (SPG) using a ground penetrating radar (GPR). Multiple bistatic, unshielded antennae with frequencies of 16, 20, 40 and 80 MHz were used for this purpose. We have done GPR surveys at various locations over the ablation zone of SPG. However, satisfactory results were obtained only on two transects. Near the glacier snout, a transverse GPR profile shows an ice thickness of 38 ± 3.5–50 ± 3.5 m. We have obtained 98 ± 7–112 ± 7 m ice thickness at a longitudinal transect in the upper ablation zone. To measure the speed of the radar waves in ice, a common midpoint survey was carried out. Our results for the speed of the electromagnetic waves are slightly lower than the standard values of such waves through pure ice.Keywords
Common Midpoint Survey, Debris-Covered Glaciers, Ground Penetrating Radar, Ice Thickness.References
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- Frey, H. et al., Estimating the volume of glaciers in the Himalayan–Karakoram region using different methods. Cryosphere, 2014, 8, 2313–2333.
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- A Review: Deep Learning Techniques for Image Classification of Pancreatic Tumor
Abstract Views :374 |
PDF Views:0
Authors
Affiliations
1 Department of Computer Science, Chikkanna Government Arts College, IN
1 Department of Computer Science, Chikkanna Government Arts College, IN
Source
ICTACT Journal on Image and Video Processing, Vol 11, No 1 (2020), Pagination: 2217-2223Abstract
Pancreatic Cancer (PC) may be a leading reason behind death worldwide and its prognosis is extremely poor within the present scenario. There are numerous methods and techniques for tumor identification in brain, breast, lungs, but limited work was done on pancreatic tumor detection. Pancreatic tumor image classification is usually provided by computer-aided screening (CAD), diagnosis and quantitative evaluations in radiology images like CT and MRI. Tumor classification through these methods may help to trace, predict and endorse customized therapy as part of effective treatment, without invasions of cancer. Nowadays, Convolutional Neural Networks (CNN) have shown promising results for precise pancreatic image classification. As a prominent, the algorithms are required to work out and classify the categories of pancreatic tumors at early stages for saving most of the life. Because of the various shapes, huge sample size, processing and analyzing big databases, new statistical methods are to be implemented. On the opposite hand, detection of tumors within the medical images also become difficult since the standard of input images. This paper mainly concentrates on a study of carcinoma and also the recent research on tumor detection and classification in medical images. The convolution neural network (CNN) developed in recent years has been widely utilized in the sector of image processing because it's good at handling image classification and recognition problems and has brought great improvement within the accuracy of the many machine learning tasks. One in every of the foremost powerful approaches to resolve image recognition and classification problem is that the CNN. The experimental results demonstrate that the proposed approach can improve the performance of the classification accuracy.Keywords
CNN, Classification, Deep Learning, Medical Image Analysis, Pancreatic Cancer, Adenocarcinomas.References
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