Why python for machine learning?

Machine learning has proven to be a blessing for the business sector, it has become a necessity in today’s world. It is the central part of AI and provides precise results for massive data.
Python is quickly becoming the top choice among developers for artificial intelligence (AI), machine learning, and deep learning projects. I admire Python for the way it let developers express their thoughts into fewer lines of codes than many other languages, but still is readable and modifiable. It is well suited for incremental development. In a rapidly developing field such as ML, where you want to keep up with the others, dealing with simpler code is a game changer.
Python is not just a library. It’s also very versatile and can be used in many applications. It can be used as a database, or as an application for data analysis and visualization purposes. It can be used as a framework for building your own machine learning model, or simply to create a new one.
Python has a large set libraries which can easily be used for machine learning (for e.g. NumPy, SciPy, ScikitLearn, PyBrain etc).
Machine Learning makes the world move faster. New ideas and developments come up every day, and the modules are first developed in Python. The latest advancements bubble up, and so the models that make the outcome more precise. The user can get the software in a much shorter time while building a great user experience.
Code readability is what every developer looks for. Python is easy to read, reducing the chances of any errors, confusion, and conflicts in the code.
The reason why Python is so popular among software developers and researchers is that it provides a lot of features that can be applied to any type of problem. It is a powerful language with lots of advantages over other languages.
This is why we use python for machine learning.