This course provides an overview of some different Natural Language Processing (NLP) techniques, their underlying principles, and their applications in engineering. The focus will be on the practical implementation of NLP methods such as word embeddings, neural networks, attention mechanisms, and advanced deep learning models to solve real-world engineering problems.
This module provides an in-depth exploration of Natural Language Processing (NLP), a crucial area of artificial intelligence that enables computers to understand, interpret, and generate human language. By combining computational linguistics with machine learning, NLP is applied in various technologies, from chatbots and sentiment analysis to machine translation and speech recognition. The module introduces fundamental NLP tasks such as text classification, Named Entity Recognition (NER), and neural machine translation, showcasing how these applications shape real-world interactions with AI. Additionally, it highlights the complexities of teaching language to machines, including handling ambiguity, grammar, and cultural nuances. Through the course, you will gain hands-on experience and knowledge about key techniques like word representation and distributional semantics, preparing them to solve language-related challenges in modern AI systems.
Syllabus - NLP in Engineering: Concepts & Real-World Applications•10 minutes
Academic Integrity•1 minute
Introduction to NLP•5 minutes
Example: Chatbots•2 minutes
Example: Email Filtering•2 minutes
Example: Sentiment Analysis•3 minutes
Example: GPT - 3•3 minutes
Example: ChatGPT Capabilities•5 minutes
Natural Language Processing•1 minute
Funny Takes on Language Evolution•2 minutes
How Do We Represent the Meaning of a Word?•2 minutes
How Do We Have Usable Meaning in a Computer?•4 minutes
Words as Discrete Symbols•5 minutes
Representing Words by Their Context•2 minutes
Word Vectors•2 minutes
Final Thoughts on NLP•1 minute
2 assignments•Total 36 minutes
Check Your Knowledge: What is NLP?•18 minutes
Check Your Knowledge: Motivation•18 minutes
1 app item•Total 15 minutes
Challenges of Teaching Language to AI•15 minutes
2 discussion prompts•Total 70 minutes
Meet Your Fellow Learners•10 minutes
Challenges and Limitations of NLP•60 minutes
Gradient Descent & Optimization Techniques
Module 2•3 hours to complete
Module details
This module focuses on optimization techniques critical for machine learning, particularly in natural language processing (NLP) tasks. It introduces Gradient Descent (GD), a fundamental algorithm used to minimize cost functions by iteratively adjusting model parameters. You’ll explore variants like Stochastic Gradient Descent (SGD) and Mini-Batch Gradient Descent to learn more about their efficiency in handling large datasets. Advanced methods such as Momentum and Adam are covered to give you insight on how to enhance convergence speed by smoothing updates and adapting learning rates. The module also covers second-order techniques like Newton’s Method and Quasi-Newton methods (e.g., BFGS), which leverage curvature information for more direct optimization, although they come with higher computational costs. Overall, this module emphasizes balancing efficiency, accuracy, and computational feasibility in optimizing machine learning models.
What is a Model in NLP and How Does it Learn?•6 minutes
Understanding Cost Functions•2 minutes
Minimizing the Cost Function in NLP•10 minutes
Why Optimization Techniques Matter•1 minute
Why SGD Works•10 minutes
Jacobian Matrix & Hessian Matrix•5 minutes
Momentum•10 minutes
Newton's Methods•5 minutes
Quasi-Newton Methods•5 minutes
Root Mean Square Propagation (RMSProp)•5 minutes
Adaptive Moment Estimation (Adam)•10 minutes
Overall Challenges of Second-Order Optimization Techniques•1 minute
2 assignments•Total 36 minutes
Check Your Knowledge: ML in NLP•18 minutes
Check Your Knowledge: Optimization Techniques•18 minutes
1 discussion prompt•Total 60 minutes
First- vs. Second-Order Optimization•60 minutes
Neural Networks & Cost Functions
Module 3•2 hours to complete
Module details
This module explores Named Entity Recognition (NER), a core task in Natural Language Processing (NLP) that identifies and classifies entities like people, locations, and organizations in text. We’ll begin by examining how logistic regression can be used to model NER as a binary classification problem, though this approach faces limitations with complexity and context capture. We’ll then transition to more advanced techniques, such as neural networks, which excel at handling the complex patterns and large-scale data that traditional models struggle with. Neural networks' ability to learn hierarchical features makes them ideal for NER tasks, as they can capture contextual information more effectively than simpler models. Throughout the module, we compare these methods and highlight how deep learning approaches such as Recurrent Neural Networks (RNNs) and transformers like BERT improve NER accuracy and scalability.
Check Your Knowledge: NER & Neural Networks•18 minutes
Check Your Knowledge: Cost Functions•18 minutes
1 app item•Total 10 minutes
Some Common Activation Functions•10 minutes
1 discussion prompt•Total 10 minutes
Exploring the Evolution of Named Entity Recognition (NER) and the Role of Neural Networks•10 minutes
Embeddings, GloVe & Evaluation Techniques
Module 4•5 hours to complete
Module details
The Word2Vec and GloVe models are popular word embedding techniques in Natural Language Processing (NLP), each offering unique advantages. Word2Vec, developed by Google, operates via two key models: Continuous Bag of Words (CBOW) and Skip-gram, focusing on predicting a word based on its context or vice versa (Word2Vec). The GloVe model, on the other hand, created by Stanford, combines count-based and predictive approaches by leveraging word co-occurrence matrices to learn word vectors (GloVe). Both models represent words in a high-dimensional vector space and capture semantic relationships. Word2Vec focuses on local contexts, learning efficiently from large datasets, while GloVe emphasizes global word co-occurrence patterns across the entire corpus, revealing deeper word associations. These embeddings enable tasks like analogy-solving, semantic similarity, and other linguistic computations, making them central to modern NLP applications.
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