This came to me in a vision
seen from Argentina
seen from Russia
seen from Singapore

seen from France
seen from Syria

seen from Germany
seen from Japan

seen from United States
seen from United States

seen from Malaysia

seen from Taiwan
seen from Australia
seen from China

seen from Canada

seen from United States
seen from Germany

seen from Taiwan
seen from China

seen from Malaysia

seen from Netherlands
This came to me in a vision
Have you read Supervised Machine Learning by blorbosinmyheadcentral?
Yes, completely!
Yes, partially
No
I've never heard of it
Read it here!
Top Data Science Online Courses to Learn - Machine Learning is an application of artificial intelligence that automates analytical model building. In other words, it provides systems the ability to learn and improve from experience without being explicitly programmed automatically.
#datascience #onlinecourses #sponsored
Enhance Decision-Making With Supervised Machine Learning Models | Applify
Supervised Machine Learning is a technique where algorithms learn from labeled data to make predictions or classifications. The "supervision" comes from the data being pre-labeled, allowing the model to learn the relationship between the input data and the correct output. It's widely used for tasks like predicting sales, classifying images, and diagnosing diseases. With Supervised Machine Learning, businesses can make accurate forecasts, automate decision-making, and gain deeper insights into their data.
What is supervised machine learning?
What is supervised machine learning?
To a large extent, supervised ML is for domains where automated machine learning does not perform well enough. Scientists add supervision to bring the performance up to an acceptable level. Read More
View On WordPress
Predicting the Level of Crowdfunding Outcome in Africa A Supervised Machine Learning Approach
by Isaac Okyere Paintsil | Zhao Xicang | Oliver Joseph Abban "Predicting the Level of Crowdfunding Outcome in Africa: A Supervised Machine Learning Approach"
Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-5 | Issue-4 , June 2021,
URL: https://www.ijtsrd.compapers/ijtsrd42539.pdf
Paper URL: https://www.ijtsrd.comeconomics/finance/42539/predicting-the-level-of-crowdfunding-outcome-in-africa-a-supervised-machine-learning-approach/isaac-okyere-paintsil
internationaljournalofmanagement, callforpapermanagement, managementjournal
Anjuum Khanna- What is Machine learning
Visit: http://anjuumkhanna.in/
Anjuum Khanna - What is Machine learning
I, Anjuum Khanna, would give some insights on what Machine Learning. In simpler words machine learning is an application of artificial intelligence that enables the system to learn automatically and the best part of this application is you don’t need to program explicitly. Anjum Khanna also defines it in a different way that it focuses on the development of computer programs that can access relevant data and use it learn for themselves. This learning process starts with data or observations (stated and observed), which we can provide in terms of examples or instruction. This learning can also be gathered through direct experience. Primary aim of machine learning is to allow computers to learn automatically without any human intervention or assistance. Machines should also adjust their actions accordingly. As per author’s definition we can also say that machine learning is subfield of AI. We can see many examples of machine learning such as Siri, Netflix, Google maps, Uber etc. This can tell that how machine learning has upgraded our living. We can learn more about it by knowing more about machine learning methods. As per Anjum Khanna below methods can tell better about machine learning:- 1. Supervised machine learning algorithms: – It is called supervised learning because the process of an algorithm learning from the training dataset can be thought of as a teacher is supervising learning process. We know the correct answers, the algorithm makes predictions on the basis of training data and it gets corrected by the teacher. Learning stops when the algorithm achieves an acceptable level in terms of performance. In Anjum Khanna’s words we can further learn this by few real life examples as 2. Unsupervised machine learning algorithms: – This type of machine learning is more closely aligned with artificial intelligence. On further analysis we can say that in this kind of machine learning a computer can learn to identify complex processes and patterns without a human guidance. Although unsupervised learning is prohibitively complex for some simpler enterprise use cases, but it is more effective while we need to solve problems that humans normally find difficult to tackle. In Anjum Khanna’s words we can further learn this by few real life examples as I, Anjum Khanna has a very positive vibes that machine learning will do wonders in future. There are few predictions which will be true in future for machine learning:- Usage in applications: – In next few years, machine learning will become part of almost every software application. Soon all of our devices will be embed with capabilities of machine learning. After that our personal device will become personalized device. Usage in service industry: – As machine learning becomes increasingly valuable and the technology matures, more businesses will start using the cloud to offer machine learning as a service. This will allow a wider range of organizations to take advantage of machine learning without making large hardware investments or training their own algorithms. As in cutting throat competition personalized service is required in service industry and machine learning will resolve that issue. So these are only few examples, there will be a great revolution with machine learning. But one trend is consistent across all of these predictions. As this technology advances, more businesses will embrace the AI revolution. All the best for disruptive future!!!