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Lecture
The Future: Computational Linguistics and Deep Learning
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Related lectures (31)
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Language Models: Fixed-context and Recurrent Neural Networks
Discusses language models, focusing on fixed-context neural models and recurrent neural networks.
Deep Learning: Convolutional Neural Networks
Introduces Convolutional Neural Networks, explaining their architecture, training process, and applications in semantic segmentation tasks.
Deep Learning Fundamentals
Introduces deep learning, from logistic regression to neural networks, emphasizing the need for handling non-linearly separable data.
Machine Learning for Solving PDEs: Random Feature Method
Explores the Random Feature Method for solving PDEs using machine learning algorithms to approximate high-dimensional functions efficiently.
Neural Networks: Two Layers Neural Network
Covers the basics of neural networks, focusing on the development from two layers neural networks to deep neural networks.
Deep Learning: Data Representations and Neural Networks
Covers data representations, Bag of Words, histograms, data pre-processing, and neural networks.
Deep Learning for NLP
Explores deep learning for NLP, covering word embeddings, context representations, learning techniques, and challenges like vanishing gradients and ethical considerations.
Linear Algebra: Abstract Concepts
Introduces abstract concepts in linear algebra, focusing on operations with vectors and matrices.
Vector Spaces: Properties and Operations
Covers the properties and operations of vector spaces, including addition and scalar multiplication.
Convolutional Neural Networks
Introduces Convolutional Neural Networks (CNNs) for autonomous vehicles, covering architecture, applications, and regularization techniques.