What Modern NLP Can Do
NLP has evolved dramatically, and the capabilities available today go far beyond keyword search.
Sentiment and Emotion Analysis — Understanding not just what customers say, but how they feel. NLP models can classify sentiment (positive, negative, neutral) and detect specific emotions (frustration, satisfaction, urgency) across reviews, support interactions, and social media — at scale and in real time.
Text Classification and Routing — Automatically categorising incoming communications — support tickets by issue type and urgency, emails by department and intent, documents by category and sensitivity. This enables intelligent routing, prioritisation, and automation.
Named Entity Recognition (NER) — Extracting specific entities — people, organisations, locations, dates, monetary amounts, product names — from unstructured text. This powers automated data extraction from contracts, news, regulatory filings, and correspondence.
Summarisation — Condensing long documents, meeting transcripts, or email threads into concise summaries — saving time for professionals who need to process large volumes of text daily.
Topic Modelling and Trend Detection — Discovering recurring themes and emerging trends across large text corpora — customer feedback databases, support ticket archives, social media streams — without predefined categories.
Conversational AI — Building chatbots and virtual assistants that understand natural language, maintain context across turns, and handle complex queries — not just predefined intents.