Introduction to Spacy for Natural Language Processing Free Coupon

Kick start your Data Science career with NLP. This course is about Spacy. NLTK is not taught in this course.
4.3 (175 reviews) 13,044+ students
Instructor: Laxmi Kant | KGP Talkie Published by: Prabhat Kumar Ravi (MOD) English

Course Description

Welcome to "Introduction to Spacy for Natural Language Processing"! In this course, you will learn how to use the powerful Spacy library to perform various natural language processing tasks such as tokenization, tagging, parsing, and named entity recognition.

You will start by learning the basics of Spacy and how to install and use it in your Python projects. From there, you will dive into more advanced topics such as using Spacy's pre-trained models, creating custom pipeline components, and working with large datasets.

Throughout the course, you will work on real-world examples and hands-on exercises to solidify your understanding of the concepts. By the end of the course, you will have the skills and knowledge needed to confidently use Spacy in your own NLP projects.

This course is suitable for beginners to NLP and Spacy, as well as experienced developers looking to expand their skills. Sign up now and start your journey to mastering Spacy and NLP!


Spacy is a popular natural language processing library for Python that provides a wide range of features for working with text data. Some of the key features of Spacy include:

  • Tokenization: Spacy can quickly and accurately tokenize text into words and punctuation, making it easy to work with individual words and phrases.

  • Part-of-speech tagging: Spacy can identify and label the part-of-speech of each token in a sentence, such as nouns, verbs, adjectives, and more.

  • Named entity recognition: Spacy can identify and label specific entities in a text, such as people, organizations, and locations.

  • Dependency parsing: Spacy can analyze the grammatical structure of a sentence and identify the relationships between words, such as subject-verb-object.

  • Sentence detection: Spacy can detect and segment text into individual sentences, making it easy to work with multiple sentences at once.

  • Pre-trained models: Spacy includes pre-trained models for various languages, which can be easily loaded and used for tasks such as part-of-speech tagging and named entity recognition.

  • Custom pipeline components: Spacy allows developers to create custom pipeline components, which can be added to the existing pipeline to perform specific tasks.

  • Speed and efficiency: Spacy is designed to be fast and efficient, making it a good choice for working with large datasets.

  • Integration with other libraries: Spacy can be easily integrated with other popular Python libraries such as pandas, numpy, and scikit-learn for data analysis and machine learning tasks.


Spacy can be used in machine learning and deep learning in a number of ways. Some common use cases include:

  1. Text classification: Spacy's pre-trained models and custom pipeline components can be used to extract features from text data, which can then be used as input to a machine learning model for text classification tasks such as sentiment analysis or topic classification.

  2. Named entity recognition: Spacy's pre-trained models for named entity recognition can be used to extract named entities from text data, which can be used as input to a machine learning model for tasks such as entity linking or knowledge graph construction.

  3. Text generation: Spacy can be used to preprocess text data and tokenize it into a format that can be used as input to a deep learning model for text generation tasks such as language translation or text summarization.

  4. Text summarization: Spacy can be used to extract key phrases and entities from a text and use it as input to a deep learning model for text summarization tasks.

  5. Text similarity: Spacy can be used to tokenize and vectorize text, which can then be used as input to machine learning models that calculate text similarity or perform tasks such as document clustering.

  6. Text-to-Speech and Speech-to-Text: Spacy can be used to pre-process text data, tokenize and extract key phrases and entities, which can be used in TTS and STT models.

Overall, Spacy can provide a powerful set of features for natural language processing that can be easily integrated with machine learning and deep learning models to improve the performance of a wide range of NLP tasks.


Review: Our Opinion

Everything You Need to Know About Introduction to Spacy for Natural Language Processing

This course is a comprehensive and well-structured introduction to Introduction to Spacy for Natural Language Processing. The instructor, Laxmi Kant | KGP Talkie, is a leading expert in the field with a wealth of experience in Development to share.

The course is well-structured and easy to follow, and the instructor does a great job of explaining complex concepts in a clear and concise way.

The course is divided into sections, each of which covers a different aspect related to Data Science. Each module contains a series of video lectures, readings, and hands-on exercises.

The instructor does a great job of explaining each topic in a clear and concise way. He/She also provides plenty of examples and exercises to help students learn the material.

One of the things I liked most about this course is that it is very practical. The instructor focuses on teaching students the skills and knowledge they need to succeed in the real world. He/She also provides students with access to a variety of resources, including templates, checklists, and cheat sheets.

Another thing I liked about this course is that it is offered on Udemy. Udemy is a great platform for taking online courses because it offers a lot of flexibility for students. Students can choose to take courses at their own pace, and they can access the course materials from anywhere with an internet connection.

Udemy also offers a variety of payment options, so students can find a plan that works for them. The course also has a very active community forum where students can ask questions and interact with each other. The instructor is also very responsive to student questions and feedback.

Overall, I highly recommend this course to anyone who is interested in learning Introduction to Spacy for Natural Language Processing. It is a well-organized and informative course that will teach you the skills and knowledge you need to succeed.

Explore More Courses

Frequently Asked Questions


Got a question? We've got answers. If you have some other questions, please contact us.

How do I use the coupons on Korshub?

To use coupons on our website, simply click on the "Take this course" button next to the course you're interested in. You will be redirected to the Udemy course page with the coupon applied automatically.

Are these Udemy courses free with the coupons?

The coupons on our website can significantly reduce the price of Udemy courses, often making them very affordable or even free. However, the availability and terms of the coupons may vary.

Can I request specific courses to be added to the website?

Absolutely! We value your input and want to provide you with the courses you're interested in. If you have a specific course in mind that you'd like to see on our website, please don't hesitate to reach out to us. Simply send us the course title, and we'll do our best to contact the instructor and make it available to you.

Why is the course listed as 100% off on your website, but it is not free on Udemy?

The course may not be free on Udemy for two main reasons:Firstly, if the coupon for the course has expired, it won't be available for free or at a discounted price. Secondly, coupons often have a limited number of redemptions, and if the maximum limit has been reached, new users may not be able to enroll for free.

Is it legal to enroll in courses using these coupons?

Yes, it's completely legal to enroll in courses using the coupons provided on our website. The coupons are offered in collaboration with instructors and are a legitimate way to access courses at discounted or free rates. However, it's essential to respect the terms and conditions set by Udemy and the course instructors.

How long are the coupons valid for?

The validity of coupons can vary from course to course. Some coupons may have a limited time frame of 4 days, while others could be available for an extended period. Be sure to check the coupon expiry details on our website.