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Learn OpenAI Whisper

You're reading from   Learn OpenAI Whisper Transform your understanding of GenAI through robust and accurate speech processing solutions

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Product type Paperback
Published in May 2024
Publisher Packt
ISBN-13 9781835085929
Length 372 pages
Edition 1st Edition
Concepts
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Author (1):
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Josué R. Batista Josué R. Batista
Author Profile Icon Josué R. Batista
Josué R. Batista
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Table of Contents (16) Chapters Close

Preface 1. Part 1: Introducing OpenAI’s Whisper FREE CHAPTER
2. Chapter 1: Unveiling Whisper – Introducing OpenAI’s Whisper 3. Chapter 2: Understanding the Core Mechanisms of Whisper 4. Part 2: Underlying Architecture
5. Chapter 3: Diving into the Whisper Architecture 6. Chapter 4: Fine-Tuning Whisper for Domain and Language Specificity 7. Part 3: Real-world Applications and Use Cases
8. Chapter 5: Applying Whisper in Various Contexts 9. Chapter 6: Expanding Applications with Whisper 10. Chapter 7: Exploring Advanced Voice Capabilities 11. Chapter 8: Diarizing Speech with WhisperX and NVIDIA’s NeMo 12. Chapter 9: Harnessing Whisper for Personalized Voice Synthesis 13. Chapter 10: Shaping the Future with Whisper 14. Index 15. Other Books You May Enjoy

Milestone 8 – Evaluating performance across datasets

As we conclude our Whisper fine-tuning journey, validating model performance across diverse real-world conditions represents a pivotal final milestone. Before deploying our optimized speech recognizer into production scenarios, comprehensively assessing its effectiveness across datasets, languages, accents, and acoustic environments is essential for instilling confidence. This testing phase unveils actual capabilities, revealing where additional tuning may be required while spotlighting areas suitable for immediate application. The rigorous evaluation processes outlined in this section aim to verify customized performance gains while guiding ethical and inclusive rollout by covering key facets such as bias mitigation, domain optimization, translation abilities, and expectation management.

Mitigating demographic biases

Machine learning models, including those for speech recognition, can sometimes detect biases against...

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