The what, The when and The how
Machine learning techniques are well suited for real life problems that use methods to extract useful information from complex and intractable problems in less time
They can be tolerant to data that is inaccurate, partially incorrect or uncertain
These methods can be used to construct models and make predictions
Non-metric (discrete) measurements can have either of the following scales:
The metric (continuous) scale can be divided into the following:
Here are some resources for you to study machine learning from, and also applying it to various problems
For further math behind what I taught just now, other queries on getting started with machine learning or anything,