| 1. Introduction.mp4 | 7.3 MB | ||
| 1. Introduction.srt | 2.3 KB | ||
| 2. Applications.mp4 | 130.6 MB | ||
| 2. Applications.srt | 20.2 KB | ||
| 2. Binarized networks.mp4 | 124.8 MB | ||
| 2. Binarized networks.srt | 22.6 KB | ||
| 2. Character-aware language models.mp4 | 103.3 MB | ||
| 2. Character-aware language models.srt | 14.6 KB | ||
| 2. Need for compression of deep learning models.mp4 | 86.1 MB | ||
| 2. Need for compression of deep learning models.srt | 17.5 KB | ||
| 2. Pruning weights.mp4 | 290.2 MB | ||
| 2. Pruning weights.srt | 52.2 KB | ||
| 2. Two low-rank factors.mp4 | 102.7 MB | ||
| 2. Two low-rank factors.srt | 15.9 KB | ||
| 2. Various distillation architectures.mp4 | 247.6 MB | ||
| 2. Various distillation architectures.srt | 38.5 KB | ||
| 3. Broad overview of popular ways of model compression.mp4 | 69.1 MB | ||
| 3. Broad overview of popular ways of model compression.srt | 17.9 KB | ||
| 3. Factorizing into blocks.mp4 | 91.4 MB | ||
| 3. Factorizing into blocks.srt | 14.1 KB | ||
| 3. Learning students and teacher together.mp4 | 39.1 MB | ||
| 3. Learning students and teacher together.srt | 6.6 KB | ||
| 3. Parameter sharing in the embedding matrix.mp4 | 261.4 MB | ||
| 3. Parameter sharing in the embedding matrix.srt | 34.9 KB | ||
| 3. Pruning neurons.mp4 | 78.6 MB | ||
| 3. Pruning neurons.srt | 17 KB | ||
| 3. Summary and future trends.mp4 | 150.3 MB | ||
| 3. Summary and future trends.srt | 24.9 KB | ||
| 3. Ternarized networks.mp4 | 139.8 MB | ||
| 3. Ternarized networks.srt | 26.2 KB | ||
| 4. General Quantized networks.mp4 | 292.4 MB | ||
| 4. General Quantized networks.srt | 44.8 KB | ||
| 4. Multiple teachers.mp4 | 134.7 MB | ||
| 4. Multiple teachers.srt | 20.2 KB | ||
| 4. Parameter sharing in Transformers.mp4 | 44.6 MB | ||
| 4. Parameter sharing in Transformers.srt | 8.1 KB | ||
| 4. Pruning blocks.mp4 | 22.5 MB | ||
| 4. Pruning blocks.srt | 13.7 KB | ||
| 4. Summary.mp4 | 12.3 MB | ||
| 4. Summary.srt | 2.8 KB | ||
| 4. Tensor train decomposition.mp4 | 20.4 MB | ||
| 4. Tensor train decomposition.srt | 11.9 KB | ||
| 5. Adversarial methods.mp4 | 87.1 MB | ||
| 5. Adversarial methods.srt | 13.5 KB | ||
| 5. Block-Term tensor decomposition.mp4 | 86.4 MB | ||
| 5. Block-Term tensor decomposition.srt | 11.2 KB | ||
| 5. Pruning heads and layers.mp4 | 169.2 MB | ||
| 5. Pruning heads and layers.srt | 25.8 KB | ||
| 5. Summary.mp4 | 15.1 MB | ||
| 5. Summary.srt | 2.7 KB | ||
| 6. Distilling Transformers.mp4 | 213.4 MB | ||
| 6. Distilling Transformers.srt | 29.9 KB | ||
| 6. Summary.mp4 | 11.6 MB | ||
| 6. Summary.srt | 2.2 KB | ||
| 7. Summary.mp4 | 26 MB | ||
| 7. Summary.srt | 4.9 KB | ||
| Bonus Resources.txt | 307.2 B | ||
| Get Bonus Downloads Here.url | 204.8 B | ||
| ▲ 74 total files | |||
Deep Learning for NLP - Part 7
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 36 lectures (6h 4m) | Size: 2.67 GB
Model Compression for NLP
What you'll learn:
Deep Learning for Natural Language Processing
Model Compression for NLP
Pruning
Quantization
Knowledge Distillation
Parameter sharing
Matrix decomposition
DL for NLP
Requirements
Basics of machine learning
Basic understanding of Transformer based models and word embeddings
Transformer Models like BERT and GPT
Description
In recent years, the fields of natural language processing (NLP) and information retrieval (IR) have made tremendous progress thanks to deep learning models like Recurrent Neural Networks (RNNs), Gated Recurrent Units (GRUs) and Long Short-Term Memory (LSTMs) networks, and Transformer based models like Bidirectional Encoder Representations from Transformers (BERT), Generative Pre-training Transformer (GPT-2), Multi-task Deep Neural Network (MT-DNN), Extra-Long Network (XLNet), Text-to-text transfer transformer (T5), T-NLG and GShard.
These models are humongous in size: BERT (340M parameters), GPT-2 (1.5B parameters), T5 (11B parameters, 21.7GB), etc. On the other hand, real world applications demand small model size, low response times and low computational power wattage. In this course, we discuss five different types of methods (Pruning, Quantization, Knowledge Distillation, Parameter Sharing, Tensor Decomposition) for compression of such models to enable their deployment in real industry NLP projects. Given the critical need of building applications with efficient and small models, and the large amount of recently published work in this area, we believe that this course organizes the plethora of work done by the "deep learning for NLP" community in the past few years and presents it as a coherent story.
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