ML for Audio Study Group - Text to Speech Deep Dive

HuggingFace · Advanced ·📄 Research Papers Explained ·4y ago
This week will do a deep dive into Text to Speech. You can ask your questions at https://discuss.huggingface.co/t/ml-for-audio-study-group-text-to-speech-deep-dive-jan-4/13315 - Join the discussion at Discord (http://hf.co/join/discord #ml-4-audio-study-group channel). - Check out the GitHub repository of the project: https://github.com/Vaibhavs10/ml-with-audio Vaibhav (VB) is a consultant turned student researcher at University of Stuttgart, Germany. His current research is in the field of Performance Prediction for NLP models and Speech Synthesis. He is also an active volunteer with Europython and Python DE. Vatsal left the world of mathematics in 2017 to dive into Speech Synthesis soon after he came across the WaveNet paper. His research has focused on Normalising Flows, a particular kind of Deep Generative Model. At Amazon, he researched the deep-learning based vocoding module that is used in production, and disentanglement in deep generative models for zero-shot speech generation (text-to-speech & voice conversion): publishing 4 papers, 5 patents, and developing multiple product proof-of-concepts. Beyond speech, Vatsal has also spent some time in a team of researchers focused on Bayesian Models/Sparse Gaussian Processes 00:00 Intro 02:15 Text to Speech Intro 15:30 Tacotron 2 25:50 Code examples and finding models 31:40 Journey of Speech Synthesis 44:03 Questions
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1 The Future of Natural Language Processing
The Future of Natural Language Processing
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2 Trends in Model Size & Computational Efficiency in NLP
Trends in Model Size & Computational Efficiency in NLP
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3 Increasing Data Usage in Natural Language Processing
Increasing Data Usage in Natural Language Processing
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4 In Domain & Out of Domain Generalization in the Future of NLP
In Domain & Out of Domain Generalization in the Future of NLP
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5 The Limits of NLU & the Rise of NLG in the Future of NLP
The Limits of NLU & the Rise of NLG in the Future of NLP
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6 The Lack of Robustness in the Future of NLP
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7 Inductive Bias, Common Sense, Continual Learning in The Future of NLP
Inductive Bias, Common Sense, Continual Learning in The Future of NLP
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8 Train a Hugging Face Transformers Model with Amazon SageMaker
Train a Hugging Face Transformers Model with Amazon SageMaker
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9 What is Transfer Learning?
What is Transfer Learning?
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10 The pipeline function
The pipeline function
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11 Navigating the Model Hub
Navigating the Model Hub
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12 Transformer models: Decoders
Transformer models: Decoders
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13 The Transformer architecture
The Transformer architecture
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14 Transformer models: Encoder-Decoders
Transformer models: Encoder-Decoders
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15 Transformer models: Encoders
Transformer models: Encoders
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16 Keras introduction
Keras introduction
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17 The push to hub API
The push to hub API
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18 Fine-tuning with TensorFlow
Fine-tuning with TensorFlow
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19 Learning rate scheduling with TensorFlow
Learning rate scheduling with TensorFlow
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20 TensorFlow Predictions and metrics
TensorFlow Predictions and metrics
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21 Welcome to the Hugging Face course
Welcome to the Hugging Face course
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22 The tokenization pipeline
The tokenization pipeline
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23 Supercharge your PyTorch training loop with Accelerate
Supercharge your PyTorch training loop with Accelerate
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24 The Trainer API
The Trainer API
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25 Batching inputs together (PyTorch)
Batching inputs together (PyTorch)
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26 Batching inputs together (TensorFlow)
Batching inputs together (TensorFlow)
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27 Hugging Face Datasets overview (Pytorch)
Hugging Face Datasets overview (Pytorch)
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28 Hugging Face Datasets overview (Tensorflow)
Hugging Face Datasets overview (Tensorflow)
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29 What is dynamic padding?
What is dynamic padding?
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30 What happens inside the pipeline function? (PyTorch)
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31 What happens inside the pipeline function? (TensorFlow)
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32 Instantiate a Transformers model (PyTorch)
Instantiate a Transformers model (PyTorch)
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33 Instantiate a Transformers model (TensorFlow)
Instantiate a Transformers model (TensorFlow)
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34 Preprocessing sentence pairs (PyTorch)
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35 Preprocessing sentence pairs (TensorFlow)
Preprocessing sentence pairs (TensorFlow)
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36 Write your training loop in PyTorch
Write your training loop in PyTorch
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37 Managing a repo on the Model Hub
Managing a repo on the Model Hub
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38 Chapter 1 Live Session with Sylvain
Chapter 1 Live Session with Sylvain
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39 Chapter 2 Live Session with Lewis
Chapter 2 Live Session with Lewis
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40 The push to hub API
The push to hub API
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41 Chapter 2 Live Session with Sylvain
Chapter 2 Live Session with Sylvain
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42 Chapter 3 live sessions with Lewis (PyTorch)
Chapter 3 live sessions with Lewis (PyTorch)
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43 Day 1 Talks: JAX, Flax & Transformers 🤗
Day 1 Talks: JAX, Flax & Transformers 🤗
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44 Day 2 Talks: JAX, Flax & Transformers 🤗
Day 2 Talks: JAX, Flax & Transformers 🤗
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45 Day 3 Talks JAX, Flax, Transformers 🤗
Day 3 Talks JAX, Flax, Transformers 🤗
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46 Chapter 4 live sessions with Omar
Chapter 4 live sessions with Omar
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47 Deploy a Hugging Face Transformers Model from S3 to Amazon SageMaker
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48 Deploy a Hugging Face Transformers Model from the Model Hub to Amazon SageMaker
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49 Run a Batch Transform Job using Hugging Face Transformers and Amazon SageMaker
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50 [Webinar] How to add machine learning capabilities with just a few lines of code
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51 Hugging Face + Zapier Demo Video
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52 Hugging Face + Google Sheets Demo
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53 Hugging Face Infinity Launch - 09/28
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54 Build and Deploy a Machine Learning App in 2 Minutes
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55 Hugging Face Infinity - GPU Walkthrough
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56 Otto - 🤗 Infinity Case Study
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57 Workshop: Getting started with Amazon Sagemaker Train a Hugging Face Transformers and deploy it
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58 Workshop: Going Production: Deploying, Scaling & Monitoring Hugging Face Transformer models
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59 🤗 Tasks: Causal Language Modeling
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60 🤗 Tasks: Masked Language Modeling
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Chapters (6)

Intro
2:15 Text to Speech Intro
15:30 Tacotron 2
25:50 Code examples and finding models
31:40 Journey of Speech Synthesis
44:03 Questions
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