{"id":15241,"date":"2025-05-19T15:53:51","date_gmt":"2025-05-19T15:53:51","guid":{"rendered":"https:\/\/mckajim.robisearchltd.co.ke\/?p=15241"},"modified":"2025-06-25T13:36:14","modified_gmt":"2025-06-25T13:36:14","slug":"nlp-vs-nlu-what-s-the-difference-and-why-does-it-5","status":"publish","type":"post","link":"https:\/\/mckajim.robisearchltd.co.ke\/index.php\/2025\/05\/19\/nlp-vs-nlu-what-s-the-difference-and-why-does-it-5\/","title":{"rendered":"NLP vs  NLU: What&#8217;s the Difference and Why Does it Matter? The Rasa Blog"},"content":{"rendered":"<p><h1>What is the difference between NLP and NLU?<\/h1>\n<\/p>\n<p><img decoding=\"async\" class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"303px\" alt=\"nlu\/nlp\"\/><\/p>\n<p><p>It goes beyond the structural aspects and aims to comprehend the meaning, intent, and nuances behind human communication. NLU tasks involve entity recognition, intent recognition, sentiment analysis, and contextual understanding. By leveraging machine learning and semantic analysis techniques, NLU enables machines to grasp the intricacies of human language.<\/p>\n<\/p>\n<ul>\n<li>Text analysis is a critical component of natural language understanding (NLU).<\/li>\n<li>Techniques commonly used in NLU include deep learning and statistical machine translation, which allows for more accurate and real-time analysis of text data.<\/li>\n<li>NLU is an algorithm that is trained to categorize information \u2018inputs\u2019 according to \u2018semantic data classes\u2019.<\/li>\n<\/ul>\n<p><p>The software can be taught to make decisions on the fly, adapting itself to the most appropriate way to communicate with a person using their native language. NLU provides support by understanding customer requests and quickly routing them to the appropriate team member. Because NLU grasps the interpretation and implications of various customer requests, it\u2019s a precious tool for departments such as customer service or IT. It has the potential to not only shorten support cycles but make them more accurate by being able to recommend solutions or identify pressing priorities for department teams. In fact, according to Accenture, 91% of consumers say that relevant offers and recommendations are key factors in their decision to shop with a certain company. NLU software doesn\u2019t have the same limitations humans have when processing large amounts of data.<\/p>\n<\/p>\n<p><h2>Artificial Intelligence: Definition, Types, Examples, Technologies<\/h2>\n<\/p>\n<p><p>NLP attempts to analyze and understand the text of a given document, and NLU makes it possible to carry out a dialogue with a computer using natural language. In addition to processing natural language similarly to a human, NLG-trained machines are now able to generate new natural language text\u2014as if written by another human. All this has sparked a lot of interest both from commercial adoption and academics, making NLP one of the most active research topics in AI today. NLP is an umbrella term which encompasses any and everything related to making machines able to process natural language\u2014be it receiving the input, understanding the input, or generating a response. In conclusion, NLU algorithms are generally more accurate than NLP algorithms on a variety of natural language tasks.<\/p>\n<\/p>\n<div style='border: grey dotted 1px;padding: 13px;'>\n<h3>Top Natural Language Processing (NLP) Providers &#8211; Datamation<\/h3>\n<p>Top Natural Language Processing (NLP) Providers.<\/p>\n<p>Posted: Thu, 16 Jun 2022 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiTmh0dHBzOi8vd3d3LmRhdGFtYXRpb24uY29tL2FwcGxpY2F0aW9ucy9uYXR1cmFsLWxhbmd1YWdlLXByb2Nlc3NpbmctcHJvdmlkZXJzL9IBAA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>Implementing an IVR system allows businesses to handle customer queries 24\/7 without hiring additional staff or paying for overtime hours.  But it can actually free up editorial professionals by taking on the rote tasks of content creation and allowing them to create the valuable, in-depth content for which your visitors are searching. In fact, chatbots have become so advanced; you may not even know you\u2019re talking to a machine. These terms are often confused because they\u2019re all part of the singular process of reproducing human communication in computers.<\/p>\n<\/p>\n<p><h2>What is NLG? Why is it an essential component of NLP?<\/h2>\n<\/p>\n<p><p>Natural language understanding is a sub-field of NLP that enables computers to grasp and interpret human language in all its complexity. Deploying a rule-based chatbot can only help in handling a portion of the user traffic and answering FAQs. NLP (i.e. NLU and NLG) on the other hand, can provide an understanding of what the customers \u201csay\u201d. Without NLP, a chatbot cannot meaningfully differentiate between responses like \u201cHello\u201d and \u201cGoodbye\u201d. Accurately translating text or speech from one language to another is one of the toughest challenges of natural  language processing and natural language understanding.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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width=\"303px\" alt=\"nlu\/nlp\"\/><\/p>\n<p><p>NLP links Paris to France, Arkansas, and Paris Hilton, as well as France to France and the French national football team. Thus, NLP models can conclude that \u201cParis is the capital of France\u201d sentence refers to Paris in France rather than Paris Hilton or Paris, Arkansas. The computational methods used in machine learning result in a lack of transparency into \u201cwhat\u201d and \u201chow\u201d the machines learn. This creates a black box where data goes in, decisions go out, and there is limited <a href=\"https:\/\/www.metadialog.com\/blog\/difference-between-nlu-and-nlp\/\">visibility into<\/a> how one impacts the other. What\u2019s more, a great deal of computational power is needed to process the data, while large volumes of data are required to both train and maintain a model. Grammar complexity and verb irregularity are just a few of the challenges that learners encounter.<\/p>\n<\/p>\n<p><h2>Transform Unstructured Data into Actionable Insights<\/h2>\n<\/p>\n<p><p>In NLU, they are used to identify words or phrases in a given text and assign meaning to them. NLP and NLU are similar but differ in the complexity of the tasks they can perform. NLP focuses on processing and analyzing text data, such as language translation or speech recognition.<\/p>\n<\/p>\n<div style='border: grey solid 1px;padding: 14px;'>\n<h3>Been there, doing that: How corporate and investment banks are &#8230; &#8211; McKinsey<\/h3>\n<p>Been there, doing that: How corporate and investment banks are &#8230;.<\/p>\n<p>Posted: Mon, 25 Sep 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMikAFodHRwczovL3d3dy5tY2tpbnNleS5jb20vaW5kdXN0cmllcy9maW5hbmNpYWwtc2VydmljZXMvb3VyLWluc2lnaHRzL2JlZW4tdGhlcmUtZG9pbmctdGhhdC1ob3ctY29ycG9yYXRlLWFuZC1pbnZlc3RtZW50LWJhbmtzLWFyZS10YWNrbGluZy1nZW4tYWnSAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>A data capture application will enable users to enter information into fields on a web form using natural language pattern matching rather than typing out every area manually with their keyboard. It makes it much quicker for users since they don&#8217;t need to remember what each field means or how they should fill it out correctly with their keyboard (e.g., date format). Natural language generation is the process of turning computer-readable data into human-readable text.<\/p>\n<\/p>\n<p><h2>What is Natural Language Understanding?<\/h2>\n<\/p>\n<p><p>These models are trained on varied datasets with many language traits and patterns. Join us as we unravel the mysteries and unlock the true potential of language processing in AI. Build fully-integrated bots, trained within the context of your business, with the intelligence to understand human language and help customers without human oversight.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"304px\" alt=\"nlu\/nlp\"\/><\/p>\n<p><p>Some common NLP tasks are removing stop words, segmenting words, or splitting compound words. Alexa is exactly that, allowing users to input commands through voice instead of typing them in. Parsing is merely a small aspect of natural language understanding in AI \u2013 other, more complex tasks include semantic role labelling, entity recognition, and sentiment analysis.<\/p>\n<\/p>\n<p><h2>Natural language processing for government efficiency<\/h2>\n<\/p>\n<p><p>NLU goes a step further by understanding the context and meaning behind the text data, allowing for more advanced applications such as chatbots or virtual assistants. In both intent and entity recognition, a key aspect is the vocabulary used in processing languages. The system has to be trained on an extensive set of examples to recognize and categorize different types of intents and entities. Additionally, statistical machine learning and deep learning techniques are typically used to improve accuracy and flexibility of the language processing models. These techniques have been shown to greatly improve the accuracy of NLP tasks, such as sentiment analysis, machine translation, and speech recognition. As these techniques continue to develop, we can expect to see even more accurate and efficient NLP algorithms.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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n3S0\/Q1K38K8v6m5OUVFNv5Z7mjN3bZY5fJf8cUBINPOgEgCCQSBAAAAEgVBIAgEgCAABAJAEEEgCCCQBUEkAWsTYkmxBFhYsAIsLFgBWxNiSQK2FixNgKWFi4CslJ2L89K\/eVoozZBHbj+EZN6S0NJKjYkjoyOVkc\/E1MqXkZq1XNY1rFc\/k6\/1FLCxewsVwUsLFrAClhYuLAUsLFrCwFbAsLBWxSdy9a60K7MEZ2l80japyuR6Oa5fTZ3s6MlruriXKErXVOTt3ZFsx05O2lP6ZiOcUu5\/XOG8\/61sJX51J5LjfWrGxU+FNl5WVn3mtWnfMGOrjASTYWK86AWsLDRUFrCwRUFrCw0VBawsNFQWsLFFQWsRYCoLWFgKkF7EWAqC1hYCpBawsBUgtYWAoyC9iLAZASDIWFiULAQSTYWCoBYAQgSSBUkADJRv3GZTa02KYSUZQcou+crNSb7rEd+P42HURhnXWhZ2VnRb7zDGFgddYlu4JBXCoBNgBUCUkk23ZLSzl4nHSb+BtR\/VmpNR05NLS0vnmMbxFNaZw4kcWUr53nfnnK3NeE12ulUvEjvKS5QpLvb+SOMwPMNdSfKa\/hg383YxVeUJuyjaOt6WaKZPfpzaGayGu9JPJV9Nln87FaGKyHaRsOK0LR3fI1a1LOcno\/jqU8VCS0ovKvBajgSptaGQsp6Ww1\/8ASujWxWVK0SDXo0zZ5VwsHRlWSyasUrSjmctGZ6xI59S5qAcmjjpxtd5S709P0Z06FeNRXi\/mnpRbMctXBNhYyqATYWAgE2JsBUFrCwFQTYWAgEiwEAmwsBUFrEWKIILEWAggtYgCATYAVILWIsEWJARBIBIUAAAAkgAAAUru0Jv8rMhrcoStRn9EWCORcVTjBU5TSab0u3edGtjqFO2VOGfRnv8AseOZCRqxqd49DjOV4tZNF3k3ZO2g2YxsktSsedwMb1qa\/Mj0hL+EvWoBIIiLESkkm27JaWTJpJt5ktL1HGx+My3aP4F+vmWTQx2M5x2WaK0efmadyrYOjKbkXIYQFiLgALkXBAHV5P5RSSp1Ha2aMu62pnRqWkrpprWs55gtFyX4XJfJtGbHSd\/bszk72M9KjfOcLn6m3LfcidWcsznNrVlOxMX3HdrYunS0yTeys7OdjOVJ1oqGaMF3LS\/mzQSJRqTGeu7Vrl4TaaabT8iiJyjTDp4blJ2tUV\/zL+qN2niac\/wyV9TzM4GUyUzPmU16OwscWji5x0SdtTzo38LjlN5MrKXdqZm82LrbsLElqcbtIysbNChHJblpZqqF9BtVZNLOa0W07oO3fMmSKtEWNqTjNW0MwTg0HPrnFLEFgGVQSAIAAEAkAQQSAKsEkAQCSCiSSESQCSCQABJAAAAkglADmcsTaUY9zz\/U6ZyOWpfFBfl\/qa5\/o5jJK3JTNMtrk6SVaDeu2\/MehPPcmxUq0L6M73I9CZ6WABocoY9RThCXx97X8P8AckmqwcqYu\/8AhReZfi83qOZcSKs6fxlYFUyQJBBIAAkoggtYEFbEolhMBcglgCLCxYAVJRIAEghlFrkxZQlAd\/B1ucpp\/wASzS+Z18BQvFy16DzfIzbrKC0S0+Vu89lTSUUkc+o7\/FNutKtRcppdwrUFCxt1HnTIxqvBGXWz865rpp3feYJp3szJUdjE2Vy+SoAAcggkAQQSAIAAEAkgCAABBBLIAlEixNgIJFibAQSLE2IIBNhYCCRYWAk4nLX+Yv8Aijt2OFyzL\/GtqSNc\/wBGhYEg0y3eSI\/468oyf\/u87xweSZWrx81Jfp\/Y7GKxCpRynnb\/AArWzN\/qxTlGu6dJ2\/FL4Y+XmeecTLia0qksqcm9WpfIwNG5MEgi7RIRATIYAuSQiQJAAEkAAGEABIBAEgAAAAAIJABEN2Koo9D9mIXlVnqUUvre\/wCyPTR0Hm\/snLPVj5xf7nqrIx1\/Xp+P\/wAsM4GrXrZrMy4mvknMq1XJmGrchVkm8xjADz27UAkgqAAAEEkACCSABBJAEAACGQWZUDayCcgzKBOQFYMgnIM+QMgDBkE5Bn5snIA18gZBsc2TzZBr5A5s2ObHNga+QeV5TlevVf5mt2Y9mqZ4fFu9Wo\/zS\/c1ylYkSQiTTLJh6rpzjNWutF9GgmviqlR3m7vckYiEUWuQEwAK6CWVkwJZBW5MQMkSxSJdAESQSAADAMrF3diyz5g1a6SXz1gWnPNYqiqiWAkAgCSGQRcCRci5EmA0lkiEWKPTfZ1RhTlK3xOVm335jp1cb5nn+ScZHIlBuzyr\/ojenJWbucu7+Xp4snK9Ws5yUe96CypswYFTby7fFnautC0bzfhG6T8kHPq2tfmxzZs5AyAy1cgZBtZBGQBrZBGQbWSRkhGtkEZJs5JGSBrZIyTZySHEDWySMk2ckjJA18kixs5JGSBrWIsbLiVyQNtEhEhQlBImwAkWFgBIsCASLE2AHgazvOT82e+ehnz6Tzs3ylAiAVlYhkoXKIvci4QbAXNqhgJTzy+GOla2abO9Q\/BC2iyt87EVhq4SPNOEUl3rzlqZyLWunpWZnoYwcsyV283\/AG1mrjOR60p5UKbd9OdadZYOSXizc+5sT4M9wXJGJX+jU4WXKjUBuPkvEeBV4GVfJuI8GrwSGUawNh4Cv4NXgZV4Ksv9KpwsZRih3vUr\/XQv3IizK8NUSzwnuZTmZ7MtzGCCCciWpiz1DBAJsyGmMAgNEMghle8lspcDLdE3KJFkBlo0ZSynHSjPh8ZUpS15mmnqNaFVwd0TUxDk72zkrUr0ax8aeFdS6y3lKK73LR\/c6WAz0KL1wj+x4bKuz1P2cxkqkZUpfwJZPy1GcXXXyRkliCCuSMkkAVyUMksQBXJIySxAFclDIRYgCjgRkmRlQKZAyC5AGNwIyDIVKLok8xWxdF\/h56L+d1+5WhyjKnfJ5yb7lKWZP5LP+pq8T7Z9PVEmHDVlOCffmyvKVs6MxhpIAAkkglEAkAA9DPnstLPoaPB46lkVqkNUmjfKVrAArKUERc6HJnJVTEu6+Gnf4pvR8lrYGrh6E6s1CnFyk+5d3m\/ItjMK6NSVOTTlHM7aLntsDgaeHhkU1\/yk\/wAUn5s8r9oFbF1fnF\/yoSrjls7mDz0qfyX08ziazfwuNjCKi89rp+a7ijpL+lvpfSMlGGhioTlkq+VZ7jYMVuKZKGSXBNVTJF35lyrQXBTltPeTzs9ufEyLCwTF+fqeJU45DpNXxavHL1KWFhpjJ0mr4tXjl6jpVXxanGylhYaYv0mptv65x0metfWMX\/QpYiw2mLyqt5pKm09KdOHoeeqK0pLU2jv2OFX\/AMyf\/KX7mpdZ6jCypdlTTDIiSqROZAJsoSytwLI7f2ZqWxOTtQkv6nDTOnyBUUcXSv3tr6tNEWPaNEWLEGGmDnZNyUYpqLs7ys29xdVItuN1ddxr17XyoNqre1l\/Fn70Wp2jUrXWfM4rvebuCsykm2k1dac+gjLje11fVc1KUr1KbzJOLTSVlHyKuK5lu2fLutf4gNidR5eQmk8m93nu76DIpK9rq+q+cwyz1ZWtfm\/hf5rmJWcKUYr\/ABFJXVs8ddwjbutF1f5mGtVs4JON3JJrvSK04p8\/ZLKypOGvR3GLKjkUUs0lKOVmzrXcDcsRYsQBWxFi5AFCGixDKPH5fktyDnJ5itzv0+So06bhJJ12leTdlSffFfs3rLqSNvkugqdCCsk2sqVs92zcKQVklqSRcxFCSCSiSUbuG5NlOKk5ZKejNd21mb7o\/wBz+X+5rzRzQdL7ofiLhI+6Zba3DxRzzgcvckzqT56ksptfHHvzd6PX\/dUtuP6kPkuW1H9RObB8yngqy00qq\/6MmnybiJOyo1OFr9z6RPAyXev1Mbw0vIW4edeT5P8Asy7qWIdlsRed\/N+h6WnBRSjFJRSsksySM3R5eReOFk9RndXzjAeR+0kbYuXnGD\/S39D3CwE\/LecXlz7N1qtTnVKmoqFpOUrWtc1zzUrxMip3qP2ZxFRZcYycdaj+JeV7XL0eQVlxVSGJUW7N83ay+p08suRyZ\/nR+v7M7ljHicnD1HSpRi4x0OcFl51d69Zj6dPVDhRiyVZcbFhY06mOnf8AhX0RHTp647kZ8r6btiHE0+nz\/Lwjp89S4R5X03MkWMEcdmV4L9ienLYW9l8ntmsTYYbKqpuNOVk7Zk2jP0aexLczFmNT8sFhYzcxPZe4czLZe4Kw2FjLzUtTHNvUBisefxearU\/5P9z0mQ9RwcZh5c7UeS\/xM3zK59NO4Rk5iWywqMtTN5WCcGlF57O6Wptf\/pCPS4Hk7nuTnC3x5U5U2+6Ssv1tY85KnJZmnf5EFGVLuD1MrkvUxghGWjNxlGS0ppr6GOxKA+i05qUYyWhpPeWOX9na7nhYp6YycfppX7nTOdbCCQFQQAAIACIIZJDAggkgAQSVYAqySGUeW5MnCGJoSqW5uNSLk3oST0ncjUSnUiqrquTmouLvFfFlXv8AVnjely1R\/U3MPy5Upq0adG+bO1Jt2+pLKss\/29qSjyPWjEbFHhl7h1oxGxR4Ze4Yj14c8n4rJ2z2ehnketOI2KPDL3ES+1GIatkUeGXuGEr28eXqmxD9SesFS9ubhvZ4JfaGuv4aW6XqS\/tFX05NLdL1OXn5Pt03h77rDPw472SvtDLwo8TPAdYq+zS3S9R1ir7FLdL1GfJ9m8PoH3\/Lwo8T9CV9oH4S4v7Hz\/rHX2KW6XqR1jr7FLdL1GfJ9m8Pez5byv8ATt\/2\/sY\/vRbD3nhusdfYpbpepPWOvsUd0vUl47rU65j3K5UWw95ePK6X8D3ng19o6+xS3S9R1kr7FHdL1JOO4Xvl9Bjy5Hw5b0VxHK1KrTlTnTnkvTnWe2c8AvtHX2KO6XqOsdfYo7peprPl+2d4fQo8swX8E9\/9yPveL\/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width=\"305px\" alt=\"nlu\/nlp\"\/><\/p>\n<p><p>From the movies we watch to the customer support we receive \u2014 it\u2019s an invisible hand, guiding and enhancing our experiences. An example of <a href=\"https:\/\/www.metadialog.com\/blog\/difference-between-nlu-and-nlp\/\">NLU in<\/a> action is a virtual assistant understanding and responding to a user\u2019s spoken request, such as providing weather information or setting a reminder. Constituency parsing combines words into phrases, while dependency parsing shows grammatical dependencies. NLP systems extract subject-verb-object relationships and noun phrases using parsing and grammatical analysis. Parsing and grammatical analysis help NLP grasp text structure and relationships. Parsing establishes sentence hierarchy, while part-of-speech tagging categorizes words.<\/p>\n<\/p>\n<p><p>Read more about <a href=\"https:\/\/www.metadialog.com\/\">https:\/\/www.metadialog.com\/<\/a> here.<\/p>\n<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/\"><\/p>\n<figure><img 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' 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