AboutTermsPrivacyContact
 
Updating
How to Build Generative AI LLM Models: A Comprehensive Guide to Design, Train, and Deploy Advanced L

How to Build Generative AI LLM Models: A Comprehensive Guide to Design, Train, and Deploy Advanced L

Released: 2024-11-02
© Anand V
How to Build Generative AI LLM Models: A Comprehensive Guide to Design, Train, and Deploy Advanced L - QR Code
1 Episode
Audio
Listen on Apple Podcasts
1 Episode
Audio
Listen on Apple Podcasts
Released: 2024-11-02
© Anand V
Most Recent Episode
How to Build Generative AI LLM Models: A Comprehensive Guide to Design, Train, and Deploy Advanced Language Models

How to Build Generative AI LLM Models: A Comprehensive Guide to Design, Train, and Deploy Advanced Language Models

Time: 48:27
An introduction to generative AI and LLMs, outlining their history, applications, and key concepts like tokens, embeddings, and attention mechanisms. The guide then delves into the mathematical and statistical foundations of LLMs, covering essential topics such as probability theory, linear algebra, calculus, and deep learning basics. The main focus is on practical aspects of designing and training LLMs, including data collection, data preprocessing, model architectures, training techniques, evaluation metrics, and fine-tuning. The text further explores deploying LLMs in production environments, emphasizing model serving, API development, scalability, monitoring, and maintenance. Finally, it discusses ethical considerations like bias mitigation and regulatory compliance, along with advanced techniques like zero-shot learning, continual learning, and future directions for the field.
Episode ID: 1000676299206
GUID: 876e6832-928c-42e4-a247-9310e4dc5ac7
Release Date: 02/11/2024, 16:25:44

Description

An introduction to generative AI and LLMs, outlining their history, applications, and key concepts like tokens, embeddings, and attention mechanisms. The guide then delves into the mathematical and statistical foundations of LLMs, covering essential topics such as probability theory, linear algebra, calculus, and deep learning basics. The main focus is on practical aspects of designing and training LLMs, including data collection, data preprocessing, model architectures, training techniques, evaluation metrics, and fine-tuning. The text further explores deploying LLMs in production environment

Apple Podcasts: Customer Reviews

No Entry