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Essential Guide to LLMOps

You're reading from   Essential Guide to LLMOps Implementing effective strategies for Large Language Models in deployment and continuous improvement

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Product type Paperback
Published in Jul 2024
Publisher Packt
ISBN-13 9781835887509
Length 190 pages
Edition 1st Edition
Languages
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Author (1):
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Ryan Doan Ryan Doan
Author Profile Icon Ryan Doan
Ryan Doan
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Table of Contents (14) Chapters Close

Preface 1. Part 1: Foundations of LLMOps FREE CHAPTER
2. Chapter 1: Introduction to LLMs and LLMOps 3. Chapter 2: Reviewing LLMOps Components 4. Part 2: Tools and Strategies in LLMOps
5. Chapter 3: Processing Data in LLMOps Tools 6. Chapter 4: Developing Models via LLMOps 7. Chapter 5: LLMOps Review and Compliance 8. Part 3: Advanced LLMOps Applications and Future Outlook
9. Chapter 6: LLMOps Strategies for Inference, Serving, and Scalability 10. Chapter 7: LLMOps Monitoring and Continuous Improvement 11. Chapter 8: The Future of LLMOps and Emerging Technologies 12. Index 13. Other Books You May Enjoy

Tuning hyperparameters

Tuning hyperparameters for the T5 model significantly influences its performance on tasks such as web page Q&A, directly affecting how accurately and efficiently the model generates responses. Hyperparameter optimization involves adjusting various parameters that control the model’s training process and architecture to improve its ability to learn and generalize from the training data.

Here’s a list of all the available hyperparameters for the T5 LLM:

  • adam_epsilon: This parameter is related to the epsilon value in the Adam optimizer, which prevents division by zero during the optimization process. A typical value is 1e-08.
  • cosine_schedule_num_cycles: In a cosine annealing learning rate schedule, this value, set at 0.5, represents the number of cycles during training.
  • do_lower_case: A Boolean indicating whether to convert all letters to lowercase during tokenization. For T5, this is typically set to False.
  • early_stopping_consider_epochs...
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