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Published December 30, 2023 | Version CC BY-NC-ND 4.0
Journal article Open

Autism Screening using Deep Learning

  • 1. Department of Business Administration, University of Kalyani, West Bengal, India.

Contributors

Contact person:

Researcher:

  • 1. Department of Business Administration, University of Kalyani, West Bengal, India.
  • 2. Performance-io LLP, Kolkata (West Bengal), India.

Description

Abstract: Timely and accurate forecasting of Air Quality Index (AQI) helps the Industries to select suitable control of air pollution measures. It helps people to reduce exposure in pollution. In this present age Air quality Index is one of the burning issues in India. The air contaminations are harmful for our biological system and also for the climate. To keep up the best air quality cross the country different types of air toxins are estimated through the air quality measuring standards. The aim of this research work is modelling air quality of a location with respect to time with the help of Machine Learning (ML). The proposed and developed model was emphasizes particularly in Kolkata, capital of the state West Bengal in India and the findings have direct implications to build & maintain a sustainable ecosystem over there.

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Additional details

Identifiers

DOI
10.54105/ijainn.D1066.063423
EISSN
2582-7626

Dates

Accepted
2022-06-15
Manuscript received on 28 April 2023 | Revised Manuscript received on 01 June 2023 | Manuscript Accepted on 15 June 2023 | Manuscript published on 30 December 2023

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