⚡ NLP Essentials | Natural Language Processing | AI & ML Course For Beginners
Автор: AI Mastery Hub
Загружено: 13 апр. 2025 г.
Просмотров: 39 просмотров
🎯 In this video, we explore the fundamentals of Natural Language Processing (NLP) — the core of how machines understand and generate human language. From text preprocessing to advanced models like GPT and BERT, we’ll break down the full NLP pipeline in a simple, visual way.
📝 What You’ll Learn in This Video:
📌 What is Natural Language Processing (NLP)?
✔️ Everyday uses of NLP (Chatbots, Voice Assistants, Spam Detection)
✔️ Text Preprocessing: Tokenization, Stemming, Lemmatization
✔️ Text Classification: Sentiment Analysis, Spam Filters
✔️ Named Entity Recognition (NER): People, Dates, Locations
✔️ Language Models: GPT, BERT & Transformer Architecture
✔️ Real-world NLP Applications: Summarization, Translation & More
👤 Ideal For:
✅ AI & ML Beginners
✅ Data Science Students
✅ NLP Enthusiasts
✅ Software Engineers & Developers
✅ Anyone exploring a career in Artificial Intelligence
🎁 FREE AI & ML Study Resources Included:
✅ NLP Cheat Sheet – Key terms & processes simplified
✅ Python Code Template – Preprocessing & NER scripts
✅ Glossary of NLP Terms – From token to transformer
✅ Model Comparison Table – GPT vs BERT vs Traditional Models
✅ AI Career Roadmap – How to start and grow in AI & NLP
🔥 Claim Your FREE Resources:
📩 Email: [email protected]
👍 Like, Subscribe & Comment on the video for more AI & ML content
📌 Watch This Video If You Want To:
🚩 Learn the logic behind how AI understands language
🚩 Prepare for ML interviews with NLP-related questions
🚩 Build your own NLP-powered applications in Python
📣 Subscribe to FutureMinds AI & ML for expert AI tutorials, real-world projects, and career guidance.
#NaturalLanguageProcessing #NLP #AIMLCourse #GPT #BERT #MachineLearning #AIEducation #NLPBasics #FutureMindsAI #Tokenization #Transformers #ChatGPT #AIProjects #DataScience #AITutorial #LearnAI2025

Доступные форматы для скачивания:
Скачать видео mp4
-
Информация по загрузке: