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ANALYSIS OF SALARY DETERMINANTS IN THE INDIAN IT SECTOR: A STATISTICAL STUDY OF EXPERIENCE, ROLE SPECIALIZATION, AND GENDER EQUITY

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Volume 2, Issue 2, Pp 48-59, 2024

DOI: https://doi.org/10.61784/wjebr3022

Author(s)

Nagwa Elmobark

Affiliation(s)

Department of Computer Science, University of Mansoura, Mansoura, Egypt.

Corresponding Author

Nagwa Elmobark

ABSTRACT

This take a look at affords a complete analysis of profits traits in India's Information Technology (IT) zone, based on a dataset of over 1000 experts throughout numerous roles, places, and enjoy levels. The studies examine key factors influencing reimbursement patterns, which include geographical vicinity, position specialization, years of enjoy, and gender distribution. Our analysis reveals considerable earnings variations across most important generation hubs, with metropolitan towns like Bengaluru, New Delhi, and Mumbai commanding top class compensations. The look at identifies that specialized roles in Cloud Architecture, Data Science, and DevOps command the best salaries, with common compensations ranging from ?18-22 lakhs annually. Experience is essential, with the maximum substantial earnings growth discovered within the five-10-12 months’ bracket. The studies also highlight gender distribution styles across exceptional roles, identifying areas requiring interest for accomplishing higher illustration. This analysis gives valuable insights for enterprise stakeholders, recruitment specialists, and policymakers, contributing to a better know-how of reimbursement dynamics in India's IT region.

KEYWORDS

IT sector; Salary analysis; India; Technology jobs; Compensation trends; Gender distribution; Experience impact; Location analysis

CITE THIS PAPER

Nagwa Elmobark. Analysis of salary determinants in the Indian IT sector: a statistical study of experience, role specialization, and gender equity. World Journal of Economics and Business Research. 2024, 2(2): 48-59. DOI: https://doi.org/10.61784/wjebr3022.

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