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Free NLP Courses

img icon BASICS
Introduction to Natural Language Processing
star   4.53 46.3K+ learners 4.5 hrs

Skills: Natural Language Processing (NLP), Language Models, TextBlob, Sentiment Analysis, Semantic Segmentation

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How to Build your own Chatbot using Python?
star   4.51 40.2K+ learners 1.5 hrs

Skills: Python, Natural Language Processing, chatbot architecture, use of libraries (e.g. NLTK, transformers), APIs, user interaction logic

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Natural Language Processing Projects
star   4.61 8.3K+ learners 2.5 hrs

Skills: NLP Use-cases, NLP Project

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Machine Translation
star   4.53 5K+ learners 1.5 hrs

Skills: What is RNN, Sequence, Solving a use case , Translation from English text to French

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ChatGPT for NLP
star   4.51 6.4K+ learners 0.5 hr

Skills: Introduction to Text Summarization, Generating Text Summarization Code in ChatGPT, Understanding Text Summarization Code

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Sentiment Analysis using Python
star   4.48 20.1K+ learners 1.5 hrs

Skills: Text Pre-processing,Vectorization,Modeling,Amazon Reviews Sentiment Analysis,Twitter Sentiment Analysis

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Introduction to Text Mining
star   4.67 1.3K+ learners 1 hr

Skills: Introduction to Text Mining, Cleaning Data, Hierarchical Clustering in Text Analytics

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Textblob
star   4.58 1.8K+ learners 1.5 hrs

Skills: NLP Basics, TextBlob Introduction, Functionalities of Textblob, Textblob Sentiment Analysis

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Sentiment Analysis
star   4.72 862 learners 1 hr

Skills: Basics of Sentiment Analysis , Sentiment Analysis Demonstration using R

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NLP Customer Experience
star   4.52 4.2K+ learners 1 hr

Skills: Customer Engagement, NLP, Social Media Analytics

free icon BASICS
Introduction to Natural Language Processing
star   4.53 46.3K+ learners 4.5 hrs

Skills: Natural Language Processing (NLP), Language Models, TextBlob, Sentiment Analysis, Semantic Segmentation

free icon BASICS
How to Build your own Chatbot using Python?
star   4.51 40.2K+ learners 1.5 hrs

Skills: Python, Natural Language Processing, chatbot architecture, use of libraries (e.g. NLTK, transformers), APIs, user interaction logic

pro icon PRO
End-to-End NLP with Python: Build Chatbots and LLM Applications
free icon BASICS
Natural Language Processing Projects
star   4.61 8.3K+ learners 2.5 hrs

Skills: NLP Use-cases, NLP Project

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Machine Translation
star   4.53 5K+ learners 1.5 hrs

Skills: What is RNN, Sequence, Solving a use case , Translation from English text to French

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star   4.51 6.4K+ learners 0.5 hr

Skills: Introduction to Text Summarization, Generating Text Summarization Code in ChatGPT, Understanding Text Summarization Code

free icon BASICS
Sentiment Analysis using Python
star   4.48 20.1K+ learners 1.5 hrs

Skills: Text Pre-processing,Vectorization,Modeling,Amazon Reviews Sentiment Analysis,Twitter Sentiment Analysis

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Introduction to Text Mining
star   4.67 1.3K+ learners 1 hr

Skills: Introduction to Text Mining, Cleaning Data, Hierarchical Clustering in Text Analytics

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Textblob
star   4.58 1.8K+ learners 1.5 hrs

Skills: NLP Basics, TextBlob Introduction, Functionalities of Textblob, Textblob Sentiment Analysis

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Sentiment Analysis
star   4.72 862 learners 1 hr

Skills: Basics of Sentiment Analysis , Sentiment Analysis Demonstration using R

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NLP Customer Experience
star   4.52 4.2K+ learners 1 hr

Skills: Customer Engagement, NLP, Social Media Analytics

Take Free NLP Courses and Get Certificates

NLP is Natural Language Processing. It is dependent on Computer Science, Artificial Intelligence, and Human Language. NLP is the technology that is used by machines for understanding, analyzing, manipulating, and interpreting human languages. Developers highly use it in completing tasks like speech recognition, translation, automatic summarization, Named Entity Recognition (NER), relationship extraction, and topic segmentation.

 

The two main components of NLP are:

 

  • Natural Language Understanding (NLU)

NLU extracts the metadata from contents like keywords, concepts, entities, emotions, relations, and semantic roles, through which it helps the machines to understand and analyze the human language.

 

NLU is mainly used in business applications for understanding customer needs both in written and spoken language. NLP is used in mapping the input to the proper representation. It is also used in analyzing the various aspects of language. 

 

  • Natural Language Generation (NLG)

NLG helps in converting the computerized data into natural language representation. It acts as a translator. It mainly covers text planning, sentence planning, and text realization.

 

NLU is more complicated than NLG. Producing non-linguistic outputs from natural language inputs is done by NLU. In contrast, NLG obtains constructing natural language outputs from non-linguistic inputs.

 

Applications of NLP are:

 

  • Question Answering: NLP helps in developing systems that can automatically answer your questions when asked in a natural language. For example, Alexa.
  • Spam Detection: You can train your model with the help of NLP regarding the separation of wanted and unwanted emails. This allows spam detection and getting rid of unwanted emails from user inboxes.
  • Sentiment Analysis: It is used on the web to detect and analyze the user’s behavior, attitude, and emotional state. A combination of NLP and statistics is used to develop this application that assigns values to the text in order to identify the mood of the context. It is also known as Opinion Mining.
  • Machine Translation: Machine translation is usually used for translating a text or a speech of one natural language to another, for example, Google Translator.
  • Spelling Correction: Many software uses auto-correction for correcting typed sentences like MS Word, MS Powerpoint, Google Docs, etc. This is achieved through NLP.
  • Speech Recognition: Speech recognition is the conversion of spoken words into text. This can be implemented using NLP. It is vastly used in applications like dictating to MS Word, mobiles, voice user interface, home automation, and more.
  • Chatbot: NLP’s most important application is the implementation of chatbot. Nowadays, a chatbot is a necessary tool on every website that intends to know their customer better. Most companies have adopted this method for better growth.
  • Information Extraction: NLP is used for extracting structured data from semi-structured or unstructured machine-readable files. It is considered one of the critical applications of NLP.
  • Natural Language Understanding (NLU): NLU converts a large group of text to first-order logic structures, which is one of the formal representations that are easier for computers to understand and manipulate the notations of the natural language.

 

To build an NLP pipeline, you need to follow the following steps:

  • Sentence Segmentation
  • Word Tokenization
  • Stemming
  • Lemmatization
  • Identifying Stop Words
  • Dependency Parsing
  • POS Tags
  • Named Entity Recognition (NER)
  • Chunking
     

There are five phases of NLP, namely:
 

  • Lexical Analysis
  • Syntactic Analysis
  • Semantic Analysis
  • Discourse Integration
  • Pragmatic Analysis

 

Advantages of NLP include:
 

  • NLP helps users to get direct responses just by asking questions regarding any subject.
  • NLP provides appropriate answers to the questions asked. It avoids giving unnecessary information.
  • It helps machines to communicate with humans in their natural language.
  • It is very time efficient.
  • NLP is adopted by many companies, which helps them improve their efficiency of the documentation process, the accuracy of documentation, and the identification of the information from large datasets.

 

To explore more and learn NLP, get into Great Learning’s free NLP Courses, where on successful completion of the courses, you can secure your Certificates for free. 

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Get started with these courses

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Sentiment Analysis
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Introduction to Natural Language Processing
star   4.53 46.3K+ learners 4.5 hrs

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4.52
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Reviewer Profile

4.0

Country Flag India
“Comprehensive Review of the Natural Language Processing Course”
The Natural Language Processing course was incredibly insightful and hands-on. It provided a solid foundation in key concepts like tokenization, stemming, and lemmatization. The practical exercises helped me understand how NLP models work and how they can be applied in real-world scenarios. Highly recommended!
Reviewer Profile

5.0

Country Flag Netherlands
“Comprehensive Overview of NLP Concepts and Techniques”
This course provided a comprehensive overview of Natural Language Processing (NLP) concepts and techniques. The clear explanations and practical examples were helpful in understanding the complexities of language processing.
Reviewer Profile

5.0

Country Flag India
“Introduction to NLP: Exploring Language Understanding and Processing”
I enjoyed learning the foundational concepts of Natural Language Processing (NLP), including how machines interpret and process human language. The breakdown of techniques such as tokenization, stemming, and lemmatization helped me understand how text is transformed into meaningful data. The exploration of real-world applications like sentiment analysis and chatbots made the subject more engaging and practical for real-world use.
Reviewer Profile

4.0

Country Flag India
“The Highlight of My Experience with the Great Learning Course”
What I liked most about the course was its practical approach to learning, featuring hands-on projects that allowed me to apply theoretical concepts in real-world scenarios. The expert insights from instructors added depth to the material, while the collaborative environment with fellow learners enriched the experience.
Reviewer Profile

4.0

Country Flag Indonesia
“Insights from My Learning Journey in Text Classification”
I enjoyed the hands-on approach to understanding various text classification techniques, especially the balance between rule-based and machine learning methods. The practical exercises helped reinforce concepts, and I appreciated the emphasis on real-world applications. Engaging discussions with peers added to the experience, making complex topics more accessible and enjoyable.
Reviewer Profile

4.0

Country Flag India
“Engaging and Informative Learning Experience”
I enjoyed the interactive nature of the sessions, which made complex concepts easier to understand. The practical examples and real-world applications of NLP kept me engaged and motivated to learn more. The knowledgeable and approachable instructors made the learning environment supportive and enjoyable. Overall, it was a fantastic experience that deepened my understanding of the subject!
Reviewer Profile

5.0

Country Flag India
“Informative and Engaging NLP Course for Beginners”
The Natural Language Processing course provided an excellent foundation in understanding key concepts and techniques. The blend of theoretical knowledge and practical applications, including hands-on projects, made learning engaging and effective. The instructors were knowledgeable and supportive, fostering a collaborative environment. Overall, it enhanced my skills in NLP and sparked a deeper interest in language technologies. Highly recommended!
Reviewer Profile

5.0

Country Flag India
“Well-Structured and Engaging Introduction to NLP”
I recently completed the Introduction to Natural Language Processing (NLP) course and found it to be an enriching experience. The course was well-organized, covering key concepts such as tokenization, named entity recognition, and sentiment analysis. The instructor's engaging teaching style made complex topics more approachable. I appreciated the hands-on exercises that allowed me to apply theoretical knowledge to real-world scenarios, enhancing my learning. Overall, this course has greatly improved my understanding of NLP and inspired me to explore the field further.
Reviewer Profile

4.0

Country Flag India
“Introduction to Natural Language Processing”
The Natural Language Processing (NLP) course covers fundamental concepts such as data preprocessing, tokenization, stemming, and lemmatization. It also explores sentiment analysis and semantic segmentation using Python tools like TextBlob, equipping learners with practical skills in NLP. I appreciate the course's hands-on approach and the focus on real-world applications.
Reviewer Profile

4.0

Country Flag India
“Introduction to Natural Language Processing”
The "Introduction to Natural Language Processing" course offered by Great Learning is an excellent primer for anyone looking to dive into the fascinating world of NLP. The course is well-structured and covers a broad range of foundational topics, from basic text processing to advanced machine learning techniques. The instructors are knowledgeable and present the material in an engaging and accessible manner, making complex concepts easier to understand.

Frequently Asked Questions

What is NLP used for?

NLP helps machines to communicate with humans by analyzing, understanding and interpreting natural languages. It is used in many applications like speech recognition, translation, etc. It also enables devices to read text, hear them, analyze them, and determine the sentiments of the text.

What exactly is Natural Language Processing?

Natural Language Processing is a part of Computer Science, Artificial Intelligence, and Human Language. It is a technology that allows machines to understand, analyze, manipulate, and interpret human languages.

Are NLP courses worth it?

It takes a little of your time to find the right NLP course for learning. But it is worth it as NLP is a highly in-demand skill in industries. If you aim to become a developer, it will help you professionally if you know NLP.

How can I learn NLP for free?

You can find numerous NLP courses on the web that are provided for free. One such platform is Great Learning Academy, where you can search for NLP Free Courses, and you can also attain the certificate on successful completion of the courses.

What type of certification will I receive from these NLP courses?

These NLP courses offers a certificate of completion upon finishing, not a professional certification.

What is an NLP example?

Spam Detection is an example of NLP through which unwanted emails are avoided from entering the user’s inbox.

What is Natural Language Processing in Python?

Natural Language Processing (NLP) develops the services or applications that understand the human language. You can use the Python programming language to achieve such goals with its extensive library support. One such framework is Python’s NLTK package.