Your Progress
0 / 28 topics
0% complete
Overview
🎯
Why it matters
ChatGPT, Google Translate, Siri, Alexa — all NLP. Understanding tokenization, transformers, BERT, GPT is essential for building conversational AI, chatbots, search engines, and text analytics.
💼
Placement relevance
NLP Engineer roles at Google, Microsoft, OpenAI. Chatbot developers. Search ranking teams. ₹35-70 LPA for NLP specialists. HUGE demand post ChatGPT boom.
🔗
Prerequisites for
Conversational AI · Chatbot Development · Machine Translation · Text Analytics · Voice Assistants · LLM Fine-tuning
📚
Recommended books
Speech and Language Processing by Jurafsky and Martin · Natural Language Processing with Python by Steven Bird · Natural Language Processing in Action by Hobson Lane · Transformers for Natural Language Processing by Denis Rothman
Curriculum — 4 Units
U1
Unit 1 · 7 Topics · 0% complete
Text Processing & Basics
U2
Unit 2 · 7 Topics · 0% complete
Language Models & Sequence Processing
U3
Unit 3 · 7 Topics · 0% complete
Transformers & Modern NLP
U4
Unit 4 · 7 Topics · 0% complete
NLP Applications
Previous Year Questions
Exam Strategy
🔢
TF-IDF calculations
Practice TF-IDF computations with 2-3 documents. Show term frequency, document frequency, final TF-IDF score. Common exam question.
🔄
Transformers are key
Attention mechanism, multi-head attention, BERT vs GPT comparison. Draw Transformer architecture diagram. Explain positional encoding.
💡
Real applications
Sentiment analysis, NER, chatbots — explain with pipeline diagrams. Preprocessing → Feature extraction → Model → Output. Give examples.
Related Subjects