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 supervised and unsupervised machine learning


Striking the Balance between Supervised and Unsupervised Machine Learning

#artificialintelligence

Today, a fresh generation of technologies, fuelled by advances in artificial intelligence based on machine learning, is opening up new opportunities to reassess the upper bounds of operational excellence across these sectors. To stay one step ahead of the pack, businesses not only need to understand machine learning complexities but be prepared to act on it and take advantage. After all, the latest machine learning solutions can determine weeks in advance if and when assets are likely to degrade or fail, distinguishing between normal and abnormal equipment and process behaviour by recognising complex data patterns and uncovering the precise signatures of degradation and failure. They can then alert operators and even prescribe solutions to avoid the impending failure, or at least mitigate the consequences. The leading software constructs are autonomous and self-learning.


Differences between Supervised and Unsupervised Machine Learning

#artificialintelligence

If you are venturing into machine learning, you should know about supervised and unsupervised machine learning. People often find it difficult to draw a line of difference between these two. Apparently, both the learning processes use the same procedure. This further makes it complicated for the learner to differentiate between supervised and unsupervised machine learning. Here, you will come to know the differences between these two types of machine learning.