8 Real-World Examples of Natural Language Processing (NLP)


Share post:

The rise of human civilization can be attributed to several aspects, including knowledge and innovation. However, it is also important to highlight how people from all over the world share knowledge and new ideas.

You will notice that the concept of language plays a crucial role in communication and the exchange of information.

Natural language processing, or NLP, has become a prominent solution for programmers to decipher and understand natural language.

Most of the best NLP examples revolve around ensuring smooth communication between technology and people.

What is Natural Language Processing?

How can you use NLP in your daily life? The answers to these questions will determine the effectiveness of NLP as an innovation tool.

Artificial intelligence is no longer a fantasy element in science fiction novels and movies. The adoption of AI through automation and conversational AI tools like ChatGPT demonstrates positive sentiment towards AI.

Natural language processing is a critical subfield of AI, which aims to make machines intelligent and capable of understanding natural language.

Reviews of real-world NLP examples can help you understand what machines can achieve by understanding natural language. Let’s look at real examples of NLP that you can encounter in your daily life.

The Importance of Natural Language Processing

Natural language processing, or NLP, is a subfield of artificial intelligence that primarily focuses on the interpretation and generation of natural language. It helps machines or computers understand the meaning of words and phrases in user utterances.

The most amazing point of the best NLP examples is the fact that machines can understand the context of the user’s expression and emotions.

NLP works by normalizing user utterances taking into account syntax and grammar, and then using tokenization to break the utterances down into their components.

Finally, the machine analyzes the components and extracts the meaning of the statement using various algorithms.

The working mechanism in most NLP examples focuses on visualizing a sentence as a “bag of words.” NLP ignores the order in which words appear in a sentence and only looks for the presence or absence of words in a sentence.

The bag-of-words algorithm involves encoding sentences into numerical vectors suitable for sentiment analysis. For example, words that appear frequently in a sentence will have a higher numerical value.

It is important to note that other advanced areas of NLP, such as natural language generation, use advanced techniques such as transformative models to process language.

ChatGPT is one of the best examples of natural language processing with a transformer model architecture.

Why Should You Study NLP Examples?

Natural language processing is closely related to computer vision. It combines rule-based models of human language or computational linguistics with other models, including machine learning and statistical models.

How important are the best NLP examples to you? Why should you study NLP examples? You can find answers to these questions in NLP manuals.

First, NLP can help businesses get to know customers better through a deeper understanding of their interactions.

Natural language processing provides the flexibility to perform large-scale data analysis, which can improve a company’s decision-making capabilities.

NLP can help businesses gain a deeper understanding of their target markets.

Natural language processing tasks such as speech recognition and sentiment analysis provide a viable approach to personalizing the user experience.

Answers to the question “What is the most popular NLP task?” It can lead to many debates. However, it is important to understand that NLP helps companies bring their systems closer to their target audience.

Natural language processing ensures that companies can reduce costs while optimizing various processes. And most importantly, the personalized aspect of NLP will make it an integral part of our lives.

From a broader perspective, natural language processing can do wonders in extracting valuable insights from unstructured customer interaction data.

By 2025, the global NLP market could be worth $43 billion.

Everyday Natural Language Processing Examples

A review of the best NLP examples is essential for any beginner who has questions about natural language processing.

Anyone learning about NLP for the first time will have questions about the practical application of NLP in the real world.

On paper, the concept of machines semantically interacting with humans represents a huge step forward in technology.

What can be achieved with the practical application of NLP?

As with any new technology, the potential of NLP is difficult to appreciate without studying its applications. And most importantly, you should see how natural language processing affects people’s daily lives.

These are some of the best examples of using natural language processing in our daily lives.

Email filters

The most common means of communication for all people in the world is email or email. Did you know that the most common examples of real-world NLP involve email filters?

The working professional sends and receives almost 121 business emails every day. He must have a clear understanding of the complexity of managing his inbox.

Additionally, you will have to deal with spam issues. Interestingly, email service providers can use natural language processing to automatically filter out spam emails.

Training an NLP model using a training data set containing previous emails can help in spam detection.

It is important to note that email service providers can use NLP for tasks other than spam classification. You can look at NLP examples like Gmail to identify smarter ways to use natural language processing to your advantage.

Gmail uses natural language processing to create intelligent responses or automatically generate responses. It also offers the advantage that messages are automatically marked as “Marked” and “Important.” With NLP capabilities, Gmail is expanding its email filters to include suggestions to track specific emails.

Personalized Recommendations

Online business has become a major technological advancement. Online retailers have realized the importance of personalized recommendations to improve their revenue stream.

It’s important to note that shoppers aren’t always looking for items that are in stock or on sale. Instead, customers want products that can meet their needs while also aligning with their values.

For example, Amazon’s recommendation engine accounts for around 35% of sales on the e-commerce platform.

The natural language processing example diagram should highlight the ability to use NLP to generate personalized recommendations for e-commerce.

How can NLP solve these problems? NLP models can analyze customer feedback and customer search history using text and voice data, as well as customer service conversations and product descriptions.

Models can then use this information to make accurate predictions about customer preferences. Companies can leverage product recommendation information through personalized product pages or email campaigns targeting specific consumer groups.

Unstructured Data Analysis

The most notable point in the debate between NLP and machine learning is the fact that NLP can support unstructured data.

Machine learning algorithms must be based on structured data sets. In contrast, more than 80% of the available data is in unstructured form and is spread across news articles, emails, books, customer reviews, and user comments.

Interestingly, the answer to the question “What is the most popular NLP task?” can indicate the effective use of unstructured data to obtain business insights.

Natural language processing can help convert text into numerical vectors and use them in machine learning models to uncover hidden insights.

For example, NLP can use thousands of unstructured business documents as input, including revenue transcripts, customer reviews, and quarterly reports.

NLP algorithms can use unstructured input data to identify and track critical metrics, including sales growth, competitive differentiation, and customer sentiment.


Among popular NLP examples, the following post focuses our attention on chatbots. Chatbots had already made their mark before the arrival of smart assistants like Siri and Alexa.

Chatbots were the first examples of virtual assistants trained to resolve customer queries and service requests. The first chatbot was created in 1966, confirming the extensive history of the technological evolution of chatbots.

Natural language processing has created the foundation for improving the functionality of chatbots.

A popular example of this type of chatbot is the Stitch Fix bot, which offers personalized fashion advice based on the user’s style preferences.

Language Translation

Examples of the use of NLP in people’s everyday lives also draw attention to language translation. Natural language processing algorithms emphasize linguistics, data analysis, and computer science to provide machine translation functionality in real-world applications.

A diagram of real-world NLP examples for language translation will include references to traditional rule-based translation and semantic translation.

You can also find more complex models, such as information extraction models, to achieve better results. The models are programmed in languages such as Python or using tools such as Google Cloud Natural Language and Microsoft Cognitive Services.

Customer Sentiment Analysis

How many times have you come across a feedback form on the Internet? Tools like Google Forms have made customer opinion surveys easier.

At the same time, NLP can offer a better, more sophisticated approach to using customer opinion surveys. The best examples of NLP in consumer research point to the power of NLP to more quickly and accurately analyze customer feedback to understand their sentiment towards a brand, service, or product.

The most popular example of using NLP to analyze customer sentiment is Amazon. Amazon uses automatic sentiment analysis for online reviews. On the other hand, telecom companies like Verizon use NLP to analyze customer sentiment through their feedback in the call center.

Effectively classifying customer sentiment towards a brand’s products and services can help companies change their marketing strategies.

For example, companies can recognize poor perceptions of their brand and take countermeasures before the problem gets out of control.

Intelligent Virtual Assistants

Several examples of natural language processing in people’s daily lives also include intelligent virtual assistants. You may notice that smart assistants like Google Assistant, Siri, and Alexa have significantly increased in popularity.

Voice assistants are the best examples of NLP, which work by converting speech to text and intent classification to classify inputs as actions or questions.

Smart virtual assistants can also track and remember important user information, such as their daily activities.

Intelligent virtual assistants are the most sophisticated examples of the application of NLP in everyday life.

However, emerging trends of combining speech recognition with natural language understanding can help create personalized experiences for users.

Predictive Text Analysis

The latest addition to this list of NLP examples points to predictive text mining. You must have used predictive text on your smartphone while writing messages.

Google is one of the best examples of using NLP in text mining. Predictive text analytics applications use a powerful neural network model to understand user behavior and predict the next phrase or word.

In addition, the model can also provide suggestions for correcting words and also help in learning new words.

Bottom line

A review of the best NLP examples shows that natural language processing has become an integral part of our lives. It determines how we enter data on smartphones and also analyzes our opinions about products, services, and brands on social media.

At the same time, NLP offers a promising tool to overcome communication barriers around the world by offering language translation functions.

You should also consider the effectiveness of various techniques used to improve natural language processing. Advances in natural language processing, from rule-based models to the effective use of machine learning and statistical models, can shape the future of NLP.

Learn more about the basics of NLP and discover how it can become an essential tool for businesses and individuals.


Please enter your comment!
Please enter your name here


Related articles

6+ Top Customer Intelligence Platforms (2024)

The right customer intelligence platforms help improve your sales, marketing, and product decision-making by eliminating silos and highlighting...

5+ Top Data Management Tools (2024)

Collecting large amounts of data can be useful for making good business decisions, but only if you can...

8 Top Data Analytics Tools (2024)

If you're still analyzing data sets in Microsoft Excel, it's time to learn how a decent analysis tool...

Top Master Data Management Tools

The right MDM solution for your needs will vary depending on how technical your users are, the industry...