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Natural Language Processing Tutorial: What is NLP? Examples

Translation tools such as Google Translate rely on NLP not to just replace words in one language with words of another, but to provide contextual meaning and capture the tone and intent of the original text. Word sense disambiguation is part of understanding natural language. It’s the process of taking words and phrases that could have multiple meanings and narrowing it down to just one. Once that’s done, a translation tool can generate a more accurate result in another language. Through their Consumer Research product, Brandwatch allows brands to track, save, and analyze online conversations about them and their content.

Examples of NLP

Quora is a question and answer platform where people ask questions and people only provide answers to them. Thus, the entire content on the website is generated by users; serve to make people learn from each other’s experiences and knowledge. Since there is no check on question posted, it is often found to be nearly a duplicate of an existing question.

Monitoring and analyzing reviews

However, it has come a long way, and without it many things, such as large-scale efficient analysis, wouldn’t be possible. NLP powered systems are used in both the search and selection phases of talent recruitment, identifying the skills of potential hires and cherry-picking prospects before they become active on the job market. On a different note, check out the NLP Customer Experience course. Software applications using NLP and AI are expected to be a $5.4 billion market by 2025.

Examples of NLP

To note, another one of the great examples of natural language processing is GPT-3 which can produce human-like text on almost any topic. The model was trained on a massive dataset and has over 175 billion learning parameters. As a result, it can produce articles, poetry, news reports, and other stories convincingly enough to seem like a human writer created them.


Using the NLP system can help in aggregating the information and making sense of each feedback and then turning them into valuable insights. This will not just help users but also improve the services rendered by the company. A few important features of chatbots include users to navigate articles, products, services, recommendations, solutions, etc.

In this piece, we’ll go into more depth on what NLP is, take you through a number of natural language processing examples, and show you how you can apply these within your business. Law enforcement will benefit from a system that can understand and integrate language-turned-data from social media posts, criminal records, and anonymous phone calls and tips. Semantic Analysis — Semantic analysis involves obtaining the meaning of a sentence, called the logical form, from possible parses of the syntax stage. It involves understanding the relationship between words, such as semantic relatedness — i.e. when different words are used in similar ways. In English and many other languages, a single word can take multiple forms depending upon context used.

NLP Projects Idea #1 Sentence Autocomplete

Intel NLP Architect is another Python library for deep learning topologies and techniques. With NLP, technology can conduct many tasks for us, from comprehending search terms to structuring unruly data into digestible bits — all without human intervention. Modern-day technology can automate these processes with natural language understanding, taking the task of contextualizing language solely off of human beings. Before diving further into those examples, let’s first examine what natural language processing is and why it’s vital to your commerce business.

  • Grammar Checking tools like Grammarly provides tons of features that help a person in writing better content.
  • These assistants use natural language processing to process and analyze language and then use natural language understanding to understand the spoken language.
  • The role of chatbots in enterprise along with NLP lessens the need to enroll more staff for every customer.
  • This is when common words are removed from text so unique words that offer the most information about the text remain.
  • Repustate has helped organizations worldwide turn their data into actionable insights.
  • Pretrained on extensive corpora and providing libraries for the most common tasks, these platforms help kickstart your text processing efforts, especially with support from communities and big tech brands.

These knowledge bases are primarily an online portal or library of information, including frequently asked questions, troubleshooting guides, etc. Among other things, it can provide users with an overview of their high expenses, highlight unique benefits and promotions to which they are entitled, and much more. With standard chatbots becoming so ubiquitous, businesses want something special – the next-gen chatbots. Examples of NLP Once identified, the site lends a list of similar questions so that the user gets all relevant queries in one place instead of posting questions individually. That’s why sites like Quora resort to NLP in reducing duplicity in questions as much as possible. After a user ends typing their query on Quora, their NLP mechanics take over and analyze if it bears linguistic similarity to the other questions on the site.

The evolution of natural language processing

Marketing is the most important practice a business commonly works upon to list them among the successful businesses. Also, without marketing, circulating the ideology of business with the globe is a bit challenging. The technology here can perform and transform unstructured data into meaningful information. Feedbacks are the quite obvious thing received by any organization. The reviews and feedback can occur from social media platforms, contact forms, direct mailing, and others. The right interaction with the audience is the driving force behind the success of any business.

Text summarizations can be used to generate social media posts for blogs as well as text for newsletters. Marketers can also use it to tag content with important keywords and fill in other metadata that make content more visible to search engines. The search engines have become adept at predicting or understanding whether the user wants a product, a definition, or a pointer into a document. This classification, though, is largely probabilistic, and the algorithms fail the user when the request doesn’t follow the standard statistical pattern. Smartling is adapting natural language algorithms to do a better job automating translation, so companies can do a better job delivering software to people who speak different languages.

thoughts on «Top 10 Applications of Natural Language Processing (NLP)»

Social intelligence is another one of the best natural language processing examples. NLP is special in that it has the capability to make sense of these reams of unstructured information. Tools like keyword extractors, sentiment analysis, and intent classifiers, to name a few, are particularly useful. These smart assistants, such as Siri or Alexa, use voice recognition to understand our everyday queries, they then use natural language generation to answer these queries. Through NLP, computers don’t just understand meaning, they also understand sentiment and intent.

Examples of NLP

It then adds, removes, or replaces letters from the word, and matches it to a word candidate which fits the overall meaning of a sentence. Natural language processing is a cutting-edge development for a number of reasons. Before NLP, organizations that utilized AI and machine learning were just skimming the surface of their data insights.

Guide to Natural Language Processing –

Guide to Natural Language Processing.

Posted: Thu, 15 Dec 2022 09:30:02 GMT [source]

Some algorithms are tackling the reverse problem of turning computerized information into human-readable language. Some common news jobs like reporting on the movement of the stock market or describing the outcome of a game can be largely automated. The algorithms can even deploy some nuance that can be useful, especially in areas with great statistical depth like baseball.

What are the applications of NLP?

Companies are using sentiment analysis, an application of natural language processing (NLP) to identify the opinion and sentiment of their customers online. It will help companies to understand what their customers think about the products and services.

Pragmatic analysis in NLP would be the task of teaching a computer to understand the meaning of a sentence in different real-life situations. The Natural Language Toolkit is a platform for building Python projects popular for its massive corpora, an abundance of libraries, and detailed documentation. Though community support might be its equally substantional bonus. Whether you’re a researcher, a linguist, a student, or an ML engineer, NLTK is likely the first tool you will encounter to play and work with text analysis. It doesn’t, however, contain datasets large enough for deep learning but will be a great base for any NLP project to be augmented with other tools. In this post, I’ll go over four functions of artificial intelligence and natural language processing and give examples of tools and services that use them.

  • NLP equipped Wonderflow’s Wonderboard brings customer feedback and then analyzes them.
  • AI scientists hope that bigger datasets culled from digitized books, articles and comments can yield more in-depth insights.
  • Retailers claim that on average, e-commerce sites with a semantic search bar experience a mere 2% cart abandonment rate, compared to the 40% rate on sites with non-semantic search.
  • These tokens are then used by a language compiler to implement computer instructions, such as a chatbot responding to a question.
  • The overall thread of questions will make it easy to pick one that can solve the purpose of the question letting one come to the conclusion.
  • Chatbots help the companies in achieving the goal of smooth customer experience.
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