Natural Language Processing - Deep Learning Models in Python
About this Course
In this course, you will learn how to apply deep learning models to Natural Language Processing (NLP) tasks using Python. By the end of the course, you will be able to understand and implement cutting-edge deep learning models, including Feedforward Neural Networks, Convolutional Neural Networks, and Recurrent Neural Networks, tailored for NLP applications. You will also get hands-on experience with text classification, embeddings, and advanced models such as CBOW, GRU, and LSTM in TensorFlow. The course begins by providing a strong foundation, where you will understand the basic concepts of neural networks and their role in NLP. You will then move on to implement text classification using TensorFlow, exploring both the mathematical foundations of neurons and the practical implementation aspects. As the course progresses, you will dive deeper into more advanced models such as convolutional and recurrent neural networks. You will explore the theoretical background and code implementations for each of these models, ensuring that you gain both knowledge and practical skills. The second half of the course focuses on advanced topics like embeddings, CBOW, and recurrent neural networks (RNNs). You will explore how RNNs are used for sequential data processing, implementing tasks such as Named Entity Recognition (NER) and Parts-of-Speech (POS) tagging. Additionally, you\'ll tackle practical exercises that challenge you to apply your knowledge of convolutional and recurrent neural networks to real-world NLP tasks, further enhancing your skill set. This course is designed for individuals looking to deepen their understanding of NLP using deep learning models. It is suitable for anyone interested in the intersection of Python programming, deep learning, and natural language processing. While a basic understanding of Python is recommended, no prior experience in deep learning is required. The course will progress at a steady pace, offering both theoretical insights and hands-on coding practice.Created by: Packt

Related Online Courses
This specialization is aimed at beginners interested in cloud computing. Start with the basics of containers. Build on that knowledge by learning how to orchestrate a collection of containers.... more
This course combines the essential elements of Project Management and Team Leadership into one course. Through class engagement and reflection, you will acquire further understanding of the... more
In this course, you will explore the generative artificial intelligence (generative AI) application lifecycle, which includes the following: - Defining a business use case - Selecting a foundation... more
To realize next-generation devices, novel ceramic materials with ultimate physical and chemical properties are required. For this purpose, a few intrinsic and extrinsic approaches for the... more
Microelectronics enable all aspects of our daily lives (across consumer products, automotive, communication, computer, medical, agriculture), and must all be housed in secure packages. This... more