NVIDIA: Fundamentals of NLP and Transformers
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NVIDIA: Fundamentals of NLP and Transformers
This course is part of Exam Prep (NCA-GENL): NVIDIA-Certified Generative AI LLMs Specialization
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What you'll learn
Understand NLP fundamentals, key tasks, and real-world applications.
Implement NLP techniques, including tokenization, word embeddings, and sequence models.
Explore transformer architecture, self-attention mechanisms, and encoder-decoder models.
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4 assignments
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There are 2 modules in this course
NVIDIA: Fundamentals of NLP and Transformers Course is the third course of the Exam Prep (NCA-GENL): NVIDIA-Certified Generative AI LLMs - Associate Specialization. This course provides learners with foundational knowledge of Natural Language Processing (NLP) and practical skills for working with NLP pipelines and transformer models. It combines theoretical concepts with hands-on exercises to prepare learners for real-world NLP applications.
This course covers key NLP topics, including tokenization, text preprocessing techniques, and word embeddings, along with the challenges of handling textual data. Learners will also explore sequence models (RNN, LSTM, GRU) and transformer architectures, gaining practical insights into self-attention mechanisms and encoder-decoder models. The course is structured into two modules, each comprising Lessons and Video Lectures. Learners will engage with approximately 3:00-3:30 hours of video content, covering both theoretical foundations and hands-on practice. Each module includes quizzes to reinforce learning and assess understanding. Course Modules: Module 1: Introduction to NLP: Concepts, Techniques, and Applications Module 2: Sequence Models and Transformers By the end of this course, a learner will be able to: - Understand NLP fundamentals, key tasks, and real-world applications. - Implement NLP techniques, including tokenization, word embeddings, and sequence models. - Explore transformer architecture, self-attention mechanisms, and encoder-decoder models. This course is intended for individuals interested in developing NLP expertise and working with transformer-based models. It is ideal for data scientists, machine learning engineers, and AI specialists seeking hands-on experience in modern NLP techniques.
Welcome to Week 1 of the NVIDIA: Fundamentals of NLP and Transformers course. This week, we'll cover the basics of NLP, starting with its importance and key tasks. You'll learn about Tokenization, Text Preprocessing, and the challenges of working with text data. We'll also walk through constructing an NLP pipeline, with a demo on NLP Pipeline Classification using a flight dataset, including model fitting and evaluation. Lastly, we'll explore Word Embeddings and compare CBOW and Skipgram. By the end of the week, you'll have a strong foundation in NLP concepts and techniques.
What's included
10 videos2 readings2 assignments1 discussion prompt
10 videosβ’Total 72 minutes
- Why NLP is Important ?β’5 minutes
- NLP Tasks and Applicationsβ’7 minutes
- Tokenizationβ’8 minutes
- Text Preprocessing Techniquesβ’7 minutes
- Overcoming NLP Challenges with NVIDIAβ’5 minutes
- Consutruction of NLP Pipelineβ’6 minutes
- NLP Pipeline - Classification - Flight Dataset Demoβ’17 minutes
- NLP Pipeline Classification - Demo - Perform Fit & Evaluationβ’5 minutes
- Word Embeddingsβ’5 minutes
- CBOW vs Skipgramβ’7 minutes
2 readingsβ’Total 20 minutes
- Welcome to the Courseβ’10 minutes
- Overview of Introduction to NLP Conceptsβ’10 minutes
2 assignmentsβ’Total 35 minutes
- NLP Fundamentals and Applications - Knowlege checkβ’15 minutes
- Introduction to NLP Concepts- Assessmentβ’20 minutes
1 discussion promptβ’Total 10 minutes
- Meet and Greetβ’10 minutes
Welcome to Week 2 of the NVIDIA: Fundamentals of NLP and Transformers course. This week, weβll cover the basics of sequence models, starting with an introduction to RNNs and the challenges of Vanishing and Exploding Gradients. Weβll explore LSTM and GRU architectures and their role in improving RNNs. Next, weβll dive into Transformers in NLP, focusing on key features of Transformer architecture, Positional Encoding, Self-Attention, and Multi-Head Attention. Finally, weβll discuss the Encoder-Decoder architecture and different types of Transformer models. By the end of this week, youβll have a solid understanding of sequence models and Transformers.
What's included
11 videos3 readings2 assignments
11 videosβ’Total 54 minutes
- Introduction to Sequence Models and its Typesβ’5 minutes
- Understanding RNNβ’3 minutes
- Vanishing and Exploding Gradientsβ’4 minutes
- Introducing the LSTM & GRUβ’4 minutes
- Role of Transformers in the NLP Developmentβ’5 minutes
- Key Features of Transformer Architectureβ’4 minutes
- Positional Encoding - Deep Diveβ’7 minutes
- Understanding Self Attention of Transformersβ’6 minutes
- Understanding Multi Head Attention of Transformersβ’6 minutes
- Understandng the Encoder-Decoder Architecture of Transformersβ’5 minutes
- Types of Transformer Modelsβ’5 minutes
3 readingsβ’Total 30 minutes
- Overview of Sequence Models and Transformersβ’10 minutes
- Key Takeaways of the courseβ’10 minutes
- Course Conclusionβ’10 minutes
2 assignmentsβ’Total 45 minutes
- Sequence Models in NLP - Knowledge checkβ’15 minutes
- Sequence Models and Transformers - Assessmentβ’30 minutes
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