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    Mastering Genai: Fine-Tune & Adapt Llms Effectively

    Posted By: ELK1nG
    Mastering Genai: Fine-Tune & Adapt Llms Effectively

    Mastering Genai: Fine-Tune & Adapt Llms Effectively
    Published 9/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 1006.46 MB | Duration: 1h 7m

    Harness Advanced Techniques in AI: From Fine-Tuning to Ethical Deployment and Optimization

    What you'll learn

    Understand and describe the architecture of Generative AI models like GPT and BERT.

    Apply fine-tuning methods to adapt LLMs to specific tasks and industries.

    Evaluate and optimize LLM performance through advanced techniques

    Implement ethical guidelines and best practices in the deployment of GenAI models

    Requirements

    Basic understanding of AI concepts and terminology; no advanced technical skills required.

    Familiarity with Python programming to follow along with coding demos and exercises.

    Description

    Explore the cutting-edge field of Generative AI with our course, 'Mastering GenAI: Fine-Tune & Adapt LLMs Effectively.' Designed for professionals and enthusiasts alike, this course offers a deep dive into the mechanisms of large language models such as GPT and BERT. You'll learn how to fine-tune these models to meet specific requirements, ensuring they perform optimally across various industries.Through a mix of theoretical insights and practical exercises, participants will explore different fine-tuning techniques including supervised, unsupervised, and reinforcement learning methods. The course will also address the critical aspects of model optimization, such as hyperparameter tuning and avoiding overfitting, to enhance both efficiency and accuracy.A significant focus will be on the ethical deployment of these technologies. You'll learn to navigate the complexities of AI ethics, ensuring your AI solutions are fair and equitable. This course will prepare you to effectively adapt and deploy AI models, making you a valuable asset in any tech-driven industry.By the end of this course, participants will not only understand the theoretical underpinnings of generative AI but also be proficient in implementing and optimizing these models in a practical, ethical, and efficient manner. Whether you’re looking to innovate within your organization, kickstart a career in AI, or academically explore AI technologies, this course will serve as a vital stepping stone to achieving those goals.

    Overview

    Section 1: Introduction

    Lecture 1 What is Gen AI ?

    Lecture 2 What are LLMs ?

    Section 2: Real-world Large Language Models

    Lecture 3 Decision Making: Build, Purchase, or Enhance

    Lecture 4 Introduction to Zero-shot Classification

    Lecture 5 Demonstrating a Proof of Concept

    Lecture 6 Essentials of Training and Fine-tuning

    Section 3: Fine-tuning Techniques for LLMs

    Lecture 7 Training and Fine-tuning

    Lecture 8 Supervised Fine-tuning vs. Parameter Efficient Fine-tunin

    Lecture 9 Approaches to Fine-tuning

    Lecture 10 Reinforcement learning from human feedback

    This course is ideal for AI enthusiasts, data scientists, and developers interested in extending their expertise into the realm of fine-tuning and adapting large language models,Suitable for IT professionals looking to leverage GenAI for improving business processes and creating innovative solutions.,Perfect for academic researchers and students in computer science who want practical experience with state-of-the-art AI technologies.,Security architects and engineers who aim to understand the cybersecurity implications of deploying generative AI models in their operations.