Development, Monitoring, and Management Approaches of Machine Learning Implementations for the Effective Delivery of Government Services

Author:

Durugkar Santosh Ramkrishna1ORCID

Affiliation:

1. Independent Researcher, India

Abstract

New age technologies like machine learning, artificial intelligence, and deep learning are playing a crucial role in many applications. The chapter focuses on development, monitoring, and management approaches to machine learning implementation for effective government service deliveries. Government forms different policies and aims to successfully pass them to the citizens. The government service deliveries include many sectors like healthcare system, education policies, foreign policies, infrastructure and construction policies, public transportation policies, etc. Machine learning (ML), deep learning (DL), and artificial intelligence (AI) provide many methods like time series analysis, regression, classification, reinforcement learning, clustering, dimensionality reduction, long short-term memory, etc. These methods help retrieving meaningful data from the large volume and predict the desired results. These technologies already revolutionized many sectors like automating the application processes, fetching the relevant and required data instantly, etc.

Publisher

IGI Global

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