The amount of data generated on a daily basis is very large, so the term given to identify such a large amount of data is called “big data”. Big data is usually raw and cannot be used to achieve business goals.
Therefore, it is important to convert this data into a form that is easy to understand. This is where machine learning comes into play. If machine learning exists, it is possible to understand the needs of the customer and their behavior, thereby enabling the business to meet its goals.
Cares
Keras is a free and open source Python library that is popularly used for machine learning. Designed by Google engineer Franോois Cholet, it serves as the interface to the Keras Tensorflow Library. In addition to being user-friendly, this machine learning tool is fast, easy and works on both CPU and GPU.
KNIME
KNIME is another machine learning tool that is widely used around the world. It’s easy to learn, free and compatible with data reporting, analytics and integration platforms. One of the notable features of this machine learning tool is that it can integrate codes of programming languages such as Java, JavaScript, R, Python, C and C ++.
WEKA
Designed and tested at Wicato University in New Zealand, WEKA is a tried and tested solution for open source machine learning. This machine learning tool is considered suitable for research, teaching I models and creating powerful applications. It is written in Java and supports platforms such as Linux, Mac OS and Windows.
Shogun
Shogun, an open source for machine learning and a free-to-use software library, is easily accessible to businesses of all backgrounds and sizes. Shogun’s solution is completely in C ++. One can access it in one of the other development languages, including R, Python, Ruby, and Scala.
Rapid Minor
If you are a beginner, there is no better machine learning tool to start with than Rapid Minor. This is because it does not require any programming skills at first. This machine learning tool is considered suitable for text mining, data preparation and forecast analysis.
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