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LLM Fine tune with custom data

  • Development
  • Jan 22, 2025
SynopsisLLM – Fine tune with custom data, available at $54.99,...
LLM Fine tune with custom data  No.1

LLM – Fine tune with custom data, available at $54.99, has an average rating of 4.53, with 51 lectures, based on 94 reviews, and has 999 subscribers.

You will learn about Understanding Fine tuning vs training data Fine tune using GPT models, GPT 3.5 Turbo models, Open AI models Preparing, creating, and uploading training and validation datasets Fine tuning using Gradient Platform Create Elon Mush Tweet Generator Build a data extraction fine-tune model This course is ideal for individuals who are Anyone who want to explore the world of AI or Anyone who want to step into AI world with practical fine tuning models or Data engineers, database administrators and data professionals curious about the emerging field of model fine tuning or Software developers interested in integrating their own data into large language models or Data scientists and machine learning engineers. It is particularly useful for Anyone who want to explore the world of AI or Anyone who want to step into AI world with practical fine tuning models or Data engineers, database administrators and data professionals curious about the emerging field of model fine tuning or Software developers interested in integrating their own data into large language models or Data scientists and machine learning engineers.

Enroll now: LLM – Fine tune with custom data

Summary

Title: LLM – Fine tune with custom data

Price: $54.99

Average Rating: 4.53

Number of Lectures: 51

Number of Published Lectures: 48

Number of Curriculum Items: 51

Number of Published Curriculum Objects: 48

Original Price: $74.99

Quality Status: approved

Status: Live

What You Will Learn

  • Understanding Fine tuning vs training data
  • Fine tune using GPT models, GPT 3.5 Turbo models, Open AI models
  • Preparing, creating, and uploading training and validation datasets
  • Fine tuning using Gradient Platform
  • Create Elon Mush Tweet Generator
  • Build a data extraction fine-tune model
  • Who Should Attend

  • Anyone who want to explore the world of AI
  • Anyone who want to step into AI world with practical fine tuning models
  • Data engineers, database administrators and data professionals curious about the emerging field of model fine tuning
  • Software developers interested in integrating their own data into large language models
  • Data scientists and machine learning engineers.
  • Target Audiences

  • Anyone who want to explore the world of AI
  • Anyone who want to step into AI world with practical fine tuning models
  • Data engineers, database administrators and data professionals curious about the emerging field of model fine tuning
  • Software developers interested in integrating their own data into large language models
  • Data scientists and machine learning engineers.
  • Welcome to LLM – Fine Tune with Custom Data!

    If you’re passionate about taking your machine learning skills to the next level, this course is tailor-made for you. Get ready to embark on a learning journey that will empower you to fine-tune language models with custom datasets, unlocking a realm of possibilities for innovation and creativity.

    Introduction to LLM and Fine Tuning

    In this opening section, you’ll be introduced to the course structure and objectives. We’ll explore the significance of fine-tuning in enhancing language models and delve into the foundational models that set the stage for customization. Discover the reasons behind the need for fine-tuning and explore various strategies, including an understanding of critical model parameters. Gain a comprehensive understanding of the fundamental principles and advanced concepts in artificial intelligence and language modeling.

    Fine Tune Using GPT Models

    This section focuses on practical applications. Survey available models and their use cases, followed by essential steps in preparing and formatting sample data. Understand token counting and navigate potential pitfalls like warnings and cost management. Gain a comprehensive understanding of the fine-tuning process, differentiating between training and validation data. Learn to upload data to OpenAI, create a fine-tune job, and ensure quality assurance for your model.

    Use Gradient Platform to quickly fine tune

    Gradient AI Platform : The only AI Agent platform that supports fine-tuning, RAG development, and purpose built LLMs out-of-the-box. Pre-tuned, Domain Expert AI i.e. Gradient offers domain-specific AI designed for your industry. From healthcare to financial services, we’ve built AI from the ground up to understand domain context. Use the platform to upload and train base foundations models with your own dataset.

    Create a Elon Musk Tweet Generator

    Train a foundation model with Elon Mush sample tweets, and then used the ‘New Fine Tune Model’ to create Elon Mush style tweets. Create a streamlit app to demonstrate side-by-side a normal tweet generated by OpenAI vs your very own model.

    Data Extraction fine-tune model

    Learn how to extract ‘valuable information’ from a raw text. Learn how to pass sample datasets with question and answers, and then pass any raw text to get valuable information. Use real-world example of identifying person, amount spend and item from raw expense transactions and much more.

    Enroll now to learn how to fine-tune large language models with your own data, and unlock the potential of personalized applications and innovations in the world of machine learning!

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: What is fine-tuning?

    Lecture 2: Training vs Fine-tuning

    Lecture 3: The Foundation models

    Lecture 4: Why Fine-tune?

    Lecture 5: Ways to fine-tune a model

    Lecture 6: Model parameters

    Chapter 2: Fine tune using GPT models

    Lecture 1: Models availability, and use cases

    Lecture 2: Prepare the sample data

    Lecture 3: Format the sample data

    Lecture 4: Token counting function

    Lecture 5: Check warning and OpenAI cost

    Lecture 6: Understanding model fine-tuning

    Lecture 7: Training vs Validation data

    Lecture 8: Uploading training and validation data to OpenAI

    Lecture 9: Create a fine tune job

    Lecture 10: QA using your new model

    Chapter 3: Fine tune using gradient platform

    Lecture 1: Gradient platform – Setting up login

    Lecture 2: Gradient platform – Interface

    Lecture 3: What are some of the pre-trained model available?

    Lecture 4: Create a new model with sample data

    Lecture 5: What is epochs?

    Lecture 6: Fine tuning the model and QA

    Chapter 4: Elon Musk tweet generator

    Lecture 1: Prepare the datasets with OpenAI

    Lecture 2: Create a fine-tune model

    Lecture 3: Testing the model in OpenAI playground

    Lecture 4: Elon Musk Tweet Generator Streamlit app

    Chapter 5: Data Extraction fine-tune model

    Lecture 1: Extract any valuable information from raw text

    Chapter 6: The Math behind Fine Tuning

    Lecture 1: Quantization

    Lecture 2: Custom precision and inference

    Lecture 3: Floating point to binary representation

    Lecture 4: Symmetric quantization

    Lecture 5: Asymmetric quantization

    Lecture 6: Post training quantization

    Lecture 7: Quantization aware training (QAT)

    Chapter 7: Quantizing any LLM

    Lecture 1: Base model to GGUF model

    Lecture 2: Quantization, and uploading to Huggingface

    Chapter 8: Fine Tuning with Unsloth

    Lecture 1: Introduction to Unsloth Framework

    Lecture 2: Install unsloth FastLanguageModel

    Lecture 3: Load IMDB Movie datasets

    Lecture 4: Setup Model, Tokenizer and get PEFT Model

    Lecture 5: Setup supervise fine tune trainer (SFTTrainer) model

    Lecture 6: Test and save the model

    Chapter 9: Fine Tune any LLMs using LLaMA Factory

    Lecture 1: Create a fine tune model for docker commands NLP

    Lecture 2: Train the model with LLaMA Factory

    Chapter 10: Fine-Tuning Use Cases

    Lecture 1: Fine-tuning LLMs are cheaper and faster

    Lecture 2: Use Cases of Fine Tune Models

    Lecture 3: When not to use Fine Tuning

    Chapter 11: Congratulations and Thank You!

    Lecture 1: Your feedback is very valuable!

    Instructors

  • LLM Fine tune with custom data  No.2
    Adnan Waheed
    Founder KlickAnalytics and ex-Bloomberg employee
  • Rating Distribution

  • 1 stars: 0 votes
  • 2 stars: 3 votes
  • 3 stars: 11 votes
  • 4 stars: 22 votes
  • 5 stars: 58 votes
  • Frequently Asked Questions

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