Machine learning (ML) and Deep Learning (DL) have very similar functionalities. But, DL is slightly different since it possesses more connections and neural networks. However, the top Python-based frameworks offer both ML and DL solutions.
Let us look at some of the top Python software development frameworks for machine learning and deep learning with which developers build advanced AI solutions.
Top Python Frameworks For ML And DL
While there are many languages to choose from, Python is the most developer-friendly machine learning programming language. It comes with the support of a big set of frameworks catering to your project needs.
This is the most preferred library for ML. Tensor is considered the best for Python web application development since it simplifies the building process of ML models for beginners and professionals.
Backed by Google, TensorFlow has modules for visualization, inspection, and model serialization built-in to the system. TensorFlow also assists with image speech recognition, language processing functions, etc.
It is inevitable for a Python web development company to use Keras as their deep learning framework. This is because Keras utilizes a high-level network AP with an efficient and clean UI.
If an organization chooses to hire a python developer for ML or DL projects, they should ensure that he is proficient with Keras. This is because building neural layers and solutions becomes easier. What's more, Keras can be combined with TensorFlow; DL and ML work together here.
PyTorch's main intention is to speed up Python development for ML solutions. PyTorch allows for rapid production deployment, which leads to prompt solutions with its C++ frontend.
With PyTorch, a Ruby on rails development company can easily train, build and deploy prototypes. PyTorch integrates with Python easily with the help of neural networks and accelerated GPU processing.
Scikit Learn is one of the best Python Machine Learning libraries, and it works well with NumPy and Pandas. It allows for the creation of Machine Learning models for classification, regression, clustering, dimensionality reduction, and other methods.
Scikit Learn's fundamental goal is to isolate data modeling from anything else. Engineers utilize it to create end-to-end Machine Learning applications. In addition, the library contains some outstanding data pre-processing functions.
Theano is a dynamic ML framework built on NumPy with a powerful interface. Theano can be used to manipulate and evaluate various math expressions.
When Theano is used with a GPU, the result output processes 140 times faster. Development companies prefer Theano for the Python development process since it is faster and offers stable monitoring.
MXNet is a versatile DL Python framework that supports several programming languages, including Python, Java, C++, Scala, etc. It is known for neural network construction.
MXNet is a portable Python framework for deep learning that scales to many GPU ports, making it one of the finest Python frameworks for Machine learning. It also allows for faster context switching and more efficient calculation of various functions.
This library can perform operations by using TensorFlow's neural network structures. Not only does Sonnet simplify the neural network's design, but it also ensures that developers get the best results.
How does Sonnet function? It divides modules into submodules which can be passed to other modules in the internal process. The ML models from Sonnet can be integrated with many high-level libraries, including TensorFlow.
The Spark frameworks make matrix multiplication easy in Python web application development. The matrix is divided into slices, while calculations happen on different servers.
Spark requires a proper architecture that is well distributed, thus, ensuring that the computer does not run out of memory. Python web developers use spark for Big Data and Data analytics and are one of the top ML frameworks.
NLTK stands for Natural Language Toolkit. Almost every Python web development company uses NLTK to integrate Natural Language Processing in their systems.
The NLTK tool is perfect for DL solutions since it requires a lot of text as well as speech processing. NLTK works best with FrameNet, Word2Vec and Wordnet. What's more, it also allows developers to search for keywords, optimize tokens, etc.
As we can see, while most of the frameworks have very similar functions, they perform various operations. Ultimately, whether the development company chooses to use ML, DL, or both for their project depends on its complexity and its requirements.
You can hire Python developer team of Narola Infotech since it is well-versed in the language and has worked on similar projects.