Top 10 python machine learning libraries of all time

Tech and Tools   |   
Published February 11, 2021   |   

The popularity of Python has remarkably increased in recent years. It offers a wide range of benefits to various sectors and industries. Among these fields, it has majorly benefited data science projects. Today, many entrepreneurs intend to incorporate Machine Learning-oriented systems into their existing products. For this purpose, the first choice of a programming language is Python.

It is because Python is capable of aiding a wide array of machine learning solutions that helps in building high-quality models, incorporate them into construction, and get quick outputs. Besides this, companies develop a majority of their applications using Deep Learning, Artificial Intelligence, or Machine Learning these days. All of these use the Python Machine library. If you are planning to use this language in your next project, hire the best Python programmers, and give shape to your dreams.

Let us take a look at some of the Python Machine libraries of all time that will rule the market in the coming years.

Best Python Machine Learning Libraries

Keras

Keras originally emerged as an experimenting platform to work with neural systems. However, with the passage of time and the success ratio, it altered into an independent Python Machine Language library. It provides a large array of Machine Language set of tools. Tech giants such as Yelp, Square, Uber, Netflix, and others use them in managing image and text data.

Moreover, Keras offers features such as multi-backend support, a user-friendly interface, and an integrated & expandable architecture.

Pytorch

The Artificial Intelligence group of Facebook came up with one of the hugest Machine Learning libraries called Pytorch. It supports complex computer tasks such as natural language processing, concepts, and others. Giant companies like Microsoft, Uber, Walmart, Facebook, and several others utilize this library in their projects.

Moreover, Pytorch boosts the development speed and efficiently supports high-paced projects. It also optimizes the performance, wherein a large amount of data is involved, and offers cloud services as well.

TensorFlow

TensorFlow is an open-source library that offers numerical computing. It is a Python Machine Learning library based on neural systems. Google developed this library in 2015 for aiding its personal products internally. Eventually, it became popular among industries from various sectors.

It offers a huge array of community resources and network tools. TensorFlow also aids the employment of ML models on multiple platforms such as the cloud, browser, or on the device.

Orange3

Orange3 is a Python Machine Learning library that offers tools for data visualization, data mining, and machine learning. Scientists at the University of Ljublijana used C++ to develop this library. Later on, experts implemented Python modules and widgets that enabled the development of expanded models effortlessly.

Orange3 is ideal for building top-accuracy recommendation systems and predictive models. It offers various widgets to assist in data visualization tasks. Besides, this library is easy to learn and understand, which is why it is included in professional training programs, schools, and universities

NumPy

Python originally did not have computing abilities. However, with the emergence of NumPy, it added a new horizon of numerical computing to the language based on mathematical functions. As a result, Python became capable of aiding Machine learning solutions.

NumPy offers a wide range of numerical computations that include matrix calculations, linear algebra, and more. Additionally, it enables complex mathematical functions to assist Python in faster execution of algorithms. A large community supports NumPy.

Scikit-Learn

Python’s computing abilities owe to libraries such as NumPy and Scikit-Learn. Yes, you read this right. Scikit-Learn also enables numerical calculations and offers tools for performing computations like scientific, engineering, and mathematical.

Besides, Scikit-Learn offers features that empower rapid computational skills that involve statistics, algebra, and more. It is easy to learn and understand. Additionally, it enhances computations, offering improved quality and rapid execution of calculative programs.

Matplotlib

Matplotlib is a Python Machine Learning library that offers data visualization. It works with NumPy structures and Pandas. It is a part of SciPy and is considered a significant machine learning library that executes data visualization.

Matplotlib offers a similar environment to MATLAB for building the best quality charts and plots for visualizations. Besides, it offers a wide range of features to develop helpful visualizations.

Apart from these features, it assists in producing configurable, precise, powerful plots. Developers can seamlessly restructure Matplotlib with Jupyter Notebook.

Theano

With the aim of deploying and assessing several mathematical expressions, the Montreal Institute for Learning Algorithms (MILA) developed Theano. It allows creating deep learning neural networks that are effectively optimized.

Theano allows reusing of codes to manage multiple computations and enhance performance, thereby reducing the development time of models. It provides high speed to enhance performance on GPU and CPU architectures.

Pandas

Pandas is a Python Machine Learning library that offers effective analysis through a wide range of tools and top-level data structures. It efficiently executes complex data operations with the help of one or two commands. Additionally, it offers various built-in methods for performing operations such as blending of data, grouping, filtering, and more.

Moreover, this library ensures easy manipulation of data. Data analysis is the biggest benefiting functionality of Pandas that makes Python developers’ tasks easier when building apps.

SciPy

SciPy is a machine learning library in Python that offers modules to assist the implementation of several Machine Learning algorithms. One of the biggest benefits of this library is its high speed and top-quality execution. Developers can effortlessly use this library for rapid computation.

It offers a wide range of features that include aiding mathematical operations, numeric integration, image manipulation, signal processing, and more.

Wrapping Up

Python has become the most preferred programming language among developers due to its enriched and open-source libraries. They        provide a wide array of computational and scientific features that help different kinds of operations.

Moreover, machine learning libraries in Python assure rapid development and deployment of machine learning models. Developers have the freedom to reuse their codes, which again reduces the development time.

All these benefits and features of machine learning libraries in Python make it the most ideal programming language for building complex applications.