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Gopal, R.
- Study on the Impact of Emotional Intelligence on Perceivedwork overload
Abstract Views :315 |
PDF Views:163
Authors
Deepa Nair
1,
R. Gopal
2
Affiliations
1 YMT College of Management, Sector 4, Kharghar-410210, IN
2 Department of Business Management, Padmashree Dr.D.Y. Patil University, CBD Belapur, IN
1 YMT College of Management, Sector 4, Kharghar-410210, IN
2 Department of Business Management, Padmashree Dr.D.Y. Patil University, CBD Belapur, IN
Source
AADYA -National Journal of Management and Technology, Vol 1 (2012), Pagination: 30-37Abstract
Emotional Intelligence is an interesting topic in Organizational Literature today. New studies have stressed upon the relevance of Emotional Intelligence even over the traditionally accepted Intelligence Quotient. This is because Emotional Intelligence is a behavioral component that can affect employee productivity, satisfaction level as well as intent to continue with the organization. Since Emotional Intelligence is such an important behavioral component it becomes additionally important to study its relation and impact on the perceived work overload by employees. Do employees with high Emotional Intelligence have better abilities to handle work pressures? This study tries to study the impact of Emotional Intelligence on perceived Work Overload of employees in the Information Technology sector. For the purpose of this study 60 employees from an IT company were taken as the sample and administered the Questionnaire to understand whether Emotional Intelligence had an impact on their Perceived Work Overload. The study is co relational in nature and the results prove that there is a high relationship between the two variables. Also a regression model to study the impact of Emotional Intelligence on Perceived Work Overload is developed in this study. This study is important because IT Companies recruit employees solely based on their technical skills whereas the job entails long working hours and a lot of teamwork.Keywords
Emotional Intelligence, Intelligence Quotient, Perceived Work Overload, Information Technology.- A Research Study on the Digitalisation of Higher Education and its Impact on Teaching and Students Assessment in Commerce, Management and Science Colleges in Mumbai
Abstract Views :864 |
PDF Views:469
Authors
Affiliations
1 D.Y.Patil University School of Management, Navi Mumbai, IN
1 D.Y.Patil University School of Management, Navi Mumbai, IN
Source
AADYA -National Journal of Management and Technology, Vol 8, No 0 (2018), Pagination: 93-100Abstract
Mere traditional classroom teaching is now a matter of the past. Introduction of technology has revolutionized the way teaching is conducted. It offers the flexibility for learning to be available to students at any desired time or place. Digitalization of education has also blurred the borders that were previously defined by students and teachers being present in the same location at the same time. Over the last decade, distance and online learning is becoming increasingly popular in India. Online learning courses are on the rise and have been facilitated by the increase in digital technology now being available in most of the country. Additionally, with the introduction of the learning management systems (LMS), student assessment through digitalization technology is now a reality. Students can also interact with their peers in and outside of the classroom. The aspect of peer centred learning has also helped to steer the soft skills of the students. LMS would positively impact the teaching process and student assessment. Furthermore, it provides an opportunity for students and faculty to attend or conduct a session from an off - site location, therefore making the world seem smaller and more accessible.Keywords
Digitalization, Indian Higher Education, Teaching & Student Assessment.References
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- Dynamical Modelling and Analysis of COVID-19 in India
Abstract Views :174 |
PDF Views:71
Authors
Affiliations
1 Centre for Nonlinear Science and Engineering, School of Electrical and Electronics Engineering, SASTRA Deemed University, Thanjavur 613 401, IN
2 Department of Nonlinear Dynamics, School of Physics, Bharathidasan University, Tiruchirappalli 620 014, IN
1 Centre for Nonlinear Science and Engineering, School of Electrical and Electronics Engineering, SASTRA Deemed University, Thanjavur 613 401, IN
2 Department of Nonlinear Dynamics, School of Physics, Bharathidasan University, Tiruchirappalli 620 014, IN
Source
Current Science, Vol 120, No 8 (2021), Pagination: 1342-1349Abstract
We consider the pandemic spreading of COVID-19 in India after the outbreak of the coronavirus in Wuhan city, China. We estimate the transmission rate of the initial infecting individuals of COVID-19 in India using officially reported data at the early stage of the epidemic with the help of the susceptible (S), exposed (E), infected (I), and removed (R) population model, the so-called SEIR dynamical model. Numerical analysis and model verification are performed to calibrate the system parameters with official public information about the number of people infected, and then to evaluate several COVID-19 scenarios potentially applicable to India. Our findings provide an estimation of the number of infected individuals in the pandemic period of timeline, and also demonstrate the importance of governmental and individual efforts to control the effects and time of the pandemic-related critical situations. We also give special emphasis to individual reactions in the containment process.Keywords
Containment Process, COVID-19 Pandemic, Dynamical Modelling, Numerical Analysis.References
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