LLM in Python: Comprehensive Guide to Building and Deploying Large Language Models

PODCAST · technology

LLM in Python: Comprehensive Guide to Building and Deploying Large Language Models

Explaining LLMs, their evolution, and applications in different industries. The book then dives into data preparation and management, including techniques for collecting, cleaning, and storing large datasets. It then guides the reader through building the model, focusing on model architecture design, training techniques, and hyperparameter tuning. After that, the book examines model evaluation and fine-tuning techniques, including common issues and debugging strategies.

  1. 1

    LLM in Python: Comprehensive Guide to Building and Deploying Large Language Models

    Explaining LLMs, their evolution, and applications in different industries. The book then dives into data preparation and management, including techniques for collecting, cleaning, and storing large datasets. It then guides the reader through building the model, focusing on model architecture design, training techniques, and hyperparameter tuning. After that, the book examines model evaluation and fine-tuning techniques, including common issues and debugging strategies. Finally, it covers deploying and scaling LLMs in production environments, including strategies for handling high traffic and large-scale deployments, and discusses ethical considerations and best practices for using LLMs responsibly.

Type above to search every episode's transcript for a word or phrase. Matches are scoped to this podcast.

Searching…

No matches for "" in this podcast's transcripts.

Showing of matches

No topics indexed yet for this podcast.

Loading reviews...

ABOUT THIS SHOW

Explaining LLMs, their evolution, and applications in different industries. The book then dives into data preparation and management, including techniques for collecting, cleaning, and storing large datasets. It then guides the reader through building the model, focusing on model architecture design, training techniques, and hyperparameter tuning. After that, the book examines model evaluation and fine-tuning techniques, including common issues and debugging strategies.

HOSTED BY

Anand V

CATEGORIES

URL copied to clipboard!