Understanding NLP: How Machines Learn to Understand Us

Understanding NLP: How Machines Learn to Understand Us

Nov 28, 2025 | UTM NewsHub

Natural Language Processing (NLP) is a technique within the field of Artificial Intelligence (AI) that has expanded over the past 20 years as our use of computers and digital devices has grown. In simple terms, NLP teaches computers how to understand human language. NLP powers language translation apps, personal digital assistants like Siri or Google Assistant and voice-controlled devices at home (Locke et al., 2021). Whenever you speak to your phone or it suggests words while you are typing, that is NLP at work.

NLP works by helping computers break down and understand human language step by step. When we type or speak, our words come in an unstructured form and NLP converts this unstructured text into a format a computer can understand. To do this, NLP uses machine learning algorithms that analyse large amounts of text and learn patterns from it so they can recognise words, understand context, and make reasonable guesses about what we mean.

The main steps in this process involve text processing, where NLP cleans and prepares the text through tokenization or word reduction, followed by syntactic analysis, which interprets deeper meaning through context, tone, and intent to extract useful information for task such as translation and question answering.

Through these steps, NLP transforms raw text into useful information and allowing machines to understand language more naturally.

 

Importance of NLP

NLP is important because it allows people to communicate with computers in a natural and simple way. Instead of using codes or commands, we can just type or speak like we normally do, and the system understands us. NLP also helps search engines figure out what we really mean when we type something, so the results we get are more accurate and useful. It also makes it easier to read and understand large amounts of text such as customer feedback or social media posts, so organisations can see trends, common issues and public opinions.

NLP also helps automate many everyday tasks. It can summarise long documents, sort emails, detect emotions in text and translate languages instantly. Many tools we use today, like chatbots and virtual assistants, rely on NLP to understand questions, respond correctly and offer helpful suggestions. All of this makes technology more helpful, faster and easier for people to use, no matter what language they speak (Mohana, 2024).

 

Challenges with NLP

However, NLP also faces challenges because human language is naturally messy and unpredictable. People often make spelling mistakes, use informal shortcuts, or write in different styles, which can confuse systems that expect clear and consistent text. Different languages also express ideas differently and NLP models may pick up hidden biases from the data they are trained on. Words with multiple meanings add further difficulty because computers cannot interpret nuance as easily as humans.

There are technical challenges that make NLP difficult to manage (shaip, 2025). An NLP system may confidently give an incorrect answer, known as a false positive. Good training data is essential, and if the data is limited, inaccurate or biased, the model will learn the wrong patterns. For NLP to perform well, it needs large, clean and diverse datasets; otherwise, the results may be unreliable.

 

Real-World Applications of NLP

Top 10 Application of AI in NLP (source: https://www.solulab.com/top-applications-of-natural-language-processing/)

Behind many modern technologies, NLP helps apps and devices understand language and respond more intelligently. It helps computers understand human language so they can analyse opinions, classify text, extract important information, recognize speech, and translate documents. Businesses use NLP for sentiment analysis to monitor customer feelings, for topic classification to group survey responses, and for text extraction to pull out names, dates, or numbers from documents. These tools save time, reduce manual work, and give companies clearer insights into what customers think and need.

NLP also supports many daily operations such as market intelligence, hiring, and customer support. Recruiters use NLP to scan resumes faster and more fairly, while marketers analyse online conversations to spot trends and customer pain points. Speech recognition helps convert spoken words into text for better communication, and spam filters rely on NLP to keep inboxes clean. Customer support systems use NLP to route calls and answer basic questions automatically. NLP makes technology smarter, faster, and more helpful in handling everyday language tasks (Shipra, 2025).

 

By Dr. Wan Noor Hamiza Wan Ali, Senior Lecturer, Faculty of Artificial Intelligence (FAI) Universiti Teknologi Malaysia (UTM)

Source: UTM NewsHub

Explore More

UTM perkasa kedudukan serantau dengan penganjuran ASEAN Quantum Summit pertama

JOHOR BAHRU, 11 Dis — Universiti Teknologi Malaysia (UTM) komited dalam mengukuhkan peranan sebagai peneraju inovasi serantau apabila selesai menganjurkan Majlis Perasmian ASEAN Quantum Summit 2025 di Dewan Sultan Iskandar, satu perhimpunan saintifik yang menandakan...

UTM Pioneers Region’s First ASEAN Quantum Summit

JOHOR BAHRU, Dec 11 – Universiti Teknologi Malaysia (UTM) hosted the officiation of the ASEAN Quantum Summit 2025 at Dewan Sultan Iskandar, marking a defining step forward for Southeast Asia’s scientific and technological advancement. The ceremony, officiated by the...

From UTM Petroleum Engineering Students to Energy Industry Leaders

JOHOR BAHRU, 11 Dec — Universiti Teknologi Malaysia (UTM) continues to demonstrate its strength in producing industry-ready graduates and future employers through the success of its alumni, Muhammad Al Siediq Ahnap and Izam Ikhwan Kamaruddin, co-founders of MISE...

UTM raih lima kejayaan gemilang di Majlis Anugerah MAPIM-KPT ke-16

PUTRAJAYA, 9 Dis – Universiti Teknologi Malaysia (UTM) terus mengukuhkan kedudukannya sebagai universiti penyelidikan berimpak tinggi selepas meraih kejayaan cemerlang dalam Majlis Anugerah MAPIM–KPT Kali Ke-16 yang berlangsung di Dewan Za’aba, Kementerian Pendidikan...
Research Ecosystem
Universiti Teknologi Malaysia UTM Nexus - Research & Innovation

Office of Deputy Vice Chancellor (Research & Innovation)

DVCRI Profile Johor Bahru Office Kuala Lumpur Office

Higher Institution Centre of Excellence (HI-COE)

Advance Membrane Technology Research Centre - AMTEC Institute of Noise & Vibration - INV Wireless Communication Centre - WCC

Research Institute

Centre of Excellence (COE)

Institute of High Voltage & High Current - IVAT UTM-MPRC Institue for Oil & Gas - IFOG Centre for Artificial Intelligence & Robotics - CAIRO Centre for Engineering Education - CEE Centre for Advanced Composite Materials - CACM Innovation Centre in Agritechnology for Advanced Bioprocessing - ICA Institute of Bioproduct Development - IBD

Service Entity

Research Management Centre - RMC Penerbit UTM Press Centre for Community & Industry Network - CCIN Innovation & Commercialisation Centre - ICC University Laboratory Management Centre - PPMU Institut Sultan Iskandar - UTM-ISI

Get the latest news & events

Customer Satisfaction Index

UTM Open Day