The pandemic coronavirus so called COVID-19 outbreak, which was recognized in late 2019, requires special consciousness because of its future epidemics and possible worldwide menace. Besides its clinical approaches and treatments. As Artificial Intelligence (AI) assures a new prototype for healthcare. There are various AI tools that are built upon Machine Learning (ML) algorithms are included to examine the data and decision-making processes. People spend many hours every-day on social media websites to share their views, ideas, opinions, and expressions with others, so in this paper, I have analysed the sentiments on reddit news regarding coronavirus disease(COVID-19) jeopardy, because most of the peoples from various countries are affected by coronavirus that is very condemnatory issue at present days, so analyze the sentiments of various people's opinion for this disease, we are fetching the reddit streaming articles connected to coronavirus using reddit API and scrutinized these articles using machine learning methods and tools as positive, negative and neutral. In this paper, I have run experiments through Python programming on various articles related to pandemic corona virus using reddit API and NLTK library is used for pre-processing of articles and then scrutinizing the articles dataset by using Textblob and it pointers to stimulating outcomes as positive, negative, neutral sentiments over different conceptions. The outcomes show that on reddit related to COVID-19 articles about 50% percentage articles are neutral, 22% articles are positive and about 28 % was negative.
The pandemic corona virus so called COVID-19 outbreak, which was recognized in late 2019, requires special consciousness because of its future epidemics and possible worldwide menace. Besides its clinical approaches and treatments. As Artificial Intelligence (AI) assures a new prototype for healthcare. There are various AI tools that are built upon Machine Learning (ML) algorithms are included to examine the data and decision-making processes. People spend many hours every-day on social media websites to share their views, ideas, opinions, and expressions with others, so in this paper, I have analysed the sentiments on reddit news regarding coronavirus disease(COVID-19) jeopardy, because most of the peoples from various countries are affected by coronavirus that is very condemnatory issue at present days, so analyze the sentiments of various people's opinion for this disease, we are fetching the reddit streaming articles connected to coronavirus using reddit API and scrutinized these articles using machine learning methods and tools as positive, negative and neutral. In this paper, I have run experiments through Python programming on various articles related to pandemic corona virus using reddit API and NLTK library is used for pre-processing of articles and then scrutinizing the articles dataset by using Textblob and it pointers to stimulating outcomes as positive, negative, neutral sentiments over different conceptions. The outcomes show that on reddit related to COVID-19 articles about 50% percentage articles are neutral, 22% articles are positive and about 28 % was negative.
Agriculture is said to be the backbone of the economy. Farmers toil hard with different kinds of crops to make good and healthy food for the country. There are more existing systems but uses outdated machine-learning techniques based on RNN( Recurrent neural network) which makes the process slower and more time-consuming. Here We are proposing a new CNN(Convolutional neural network ) based system which is fast and gives accurate results within seconds. CNN is power-efficient and is more suitable for real-time implementation. In this project, we use CNN algorithms which is very much better than the RNN algorithms used in the existing system.More parameters will be taken for the consideration of prediction in the proposed system. And we use Random Forest Regression, Multiple Linear Regression
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.
customersupport@researchsolutions.com
10624 S. Eastern Ave., Ste. A-614
Henderson, NV 89052, USA
This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.
Copyright © 2025 scite LLC. All rights reserved.
Made with 💙 for researchers
Part of the Research Solutions Family.