This course introduces the foundations, architectures, training techniques, and applications of Large Language Models (LLMs) and Generative AI.
This course introduces the foundations, architectures, training techniques, and applications of Large Language Models (LLMs) and Generative AI. Students will explore the evolution of Natural Language Processing (NLP), from classical methods such as N-gram models, Bag-of-Words, TF-IDF, Word2Vec, and Hidden Markov Models to modern deep learning architectures, including RNNs, LSTMs, GRUs, Transformers, GPT, BERT, T5, and BART. The course covers text preprocessing, tokenization, distributed training, optimization, and fine-tuning of pre-trained language models. It also addresses ethical issues, bias, fairness, and emerging trends in multimodal AI, vision-language models, and multilingual LLMs. Through theory and hands-on activities, students will gain practical skills to develop and deploy modern LLM-based AI applications responsibly.
Our curriculum matches modern standard practices to provide exceptional training milestones.
This course is intended for undergraduate and postgraduate students, researchers, and professionals interested in Artificial Intelligence, Machine Learning, Data Science, and Natural Language Processing. Students pursuing or holding a degree in Computer Science, Artificial Intelligence, Data Science, Information Technology, Electronics, or related engineering disciplines.
Expert guidance from acclaimed industry professional leaders.
Dr. S. A. Sahaaya Arul Mary is an Associate professor in the Department of AI and Data Science Engineering, School of Engineering and Technology, CHRIST University, Bangalore, Karnataka, India. She has over 30 years of experience in teaching and more than 17 years of experience in research. She has more than 80 publications in various reputed journals and conferences. She is a reviewer in IEEE Access, IEEE Transactions on Reliability and Springer Journals. She has reviewed more than 50 research papers. She has guided 11 Ph.D. Scholars. She has received grants and completed projects for DST, Google and NVIDIA. She is a committed Professor & Researcher inspiring and motivating students by providing a thorough understanding of a variety of computer concepts.
A meticulous, guided learning path engineered to transform your cloud engineering expertise.
Evolution of Large Language Models and NLP - Introduction to Language Models , N - Gram Models, BAG of words , Word to Vector , TF-IDF & Cosine similarity , Hidden Markov Model (HMM) - Part 1 , Hidden Markov Model (HMM) - Part 2.
Transformer Networks - Recurrent Neural Network (RNN) - part 1, Recurrent Neural Network (RNN) - part 2 , Long Short-Term Memory (LSTM) - Part 1, Long Short-Term Memory (LSTM) - Part 2, GRU (Gated Recurrent Unit), Transformers - Part 1, Transformers - Part 2, Transformers - Part 3, Transformers - Part 4, Generative Pretrained Transformer (GPT) - Part 1.
Understanding and Applying Bidirectional Models - BERT - Part 1,BERT - Part 2, BERT - Part 3, Fine-Tuning - Part 1 , Fine-Tuning - Part 2, T5 (Text-to-Text Transfer Transformer) - Part 1, T5 (Text-to-Text Transfer Transformer) - Part 2 , BART - Part 1, BART - Part 2, BART - Part 3.
Training, Fine-Tuning, and Optimizing LLMs - Data Preprocessing for LLMs , Removing Stopwords , Text Encoding, Pre-trained Tokenizers, Distributed Training Strategies - Data Parallelism, Model & Pipeline Parallelism, Hybrid Parallelism & Gradient Accumulation, Optimizer , Adam with Weight Decay, Fine-Tuning - Part – 1, Fine - Tuning - Part – 2, Challenges in Scaling LLMs.
Ethics, Evaluation, and Real-World Applications - Biases in Language Models and Their Sources - Part 1, Biases in Language Models and Their Sources - Part 2, Ethical Issues in the Use of LLMs - Part 1,Ethical Issues in the Use of LLMs - Part 2, Addressing Bias and Fairness in LLMs - Part 1, Addressing Bias and Fairness in LLMs - Part 2 , Addressing Bias and Fairness in LLMs - Part 3 .
Multimodal Models and Emerging Trends - Overview of Multimodal Learning , Architectures and Techniques for Building Multimodal AI Models, Vision-Language Models CLIP and Its Capabilities, Vision-Language Models DALL -E and Its Capabilities , GPT-4 and Other Modern AI Models, Multilingual LLMs and cross-lingual learning.