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शुरू होता है 4 June 2026 02:32

समाप्त होता है 4 June 2026

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AI Engineering: Fine-Tuning LLMs (with QLoRA, AWS, and Open Source)

Master fine-tuning open-source LLMs with QLoRA, deploy on AWS SageMaker, and build enterprise-ready AI solutions using proprietary data and advanced optimization techniques.
via Zero To Mastery

29 कोर्स


7 hours

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अपनी गति से आगे बढ़ें

Paid Course

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अवलोकन

Master the in-demand AI skill that businesses want:

to build and deploy customized LLMs. Learn to fine-tune open-source LLMs on proprietary data and deploy your customized LLM models using AWS SageMaker and Streamlit.Fine-tune open-source LLMs for custom business purposesDeploy and scale models for enterprise purposes using AWS SageMaker and StreamlitUnderstand and implement QLoRA from theory to codeLearn to preprocess proprietary datasets with chunking, tokenization, and attention maskingMonitor training and performance to ensure optimal business resultsManage cloud resources and optimize for costApply advanced AI engineering techniques including quantization and more

पाठ्यक्रम

  •   Introduction
  • Course Introduction (What We're Building)
    Exercise: Meet Your Classmates and Instructor
    Course Resources
    ZTM Plugin + Understanding Your Video Player
    Set Your Learning Streak Goal
  •   Setting up our AWS Account
  • Signing in to AWS
    Creating an IAM User
    Using our new IAM User
    What To Do In Case You Get Hacked!
  •   Setting Up AWS Sagemaker Environment
  • Creating a SageMaker Domain
    Logging in to our SageMaker Environment
    Introduction to JupyterLab
    Let's Have Some Fun (+ More Resources)
  •   Gathering, Chunking, Tokenizing and Uploading our Dataset
  • Sagemaker Sessions, Regions, and IAM Roles
    Examining Our Dataset from HuggingFace
    Tokenization and Word Embeddings
    HuggingFace Authentication with Sagemaker
    Applying the Templating Function to our Dataset
    Attention Masks and Padding
    Star Unpacking with Python
    Chain Iterator, List Constructor and Attention Mask example with Python
    Understanding Batching
    Slicing and Chunking our Dataset
    Creating our Custom Chunking Function
    Tokenizing our Dataset
    Running our Chunking Function
    Understanding the Entire Chunking Process
    Uploading the Training Data to AWS S3
    Course Check-In
  •   Understanding LoRA and Setting up HuggingFace Estimator
  • Setting Up Hyperparameters for the Training Job
    Creating our HuggingFace Estimator in Sagemaker
    Introduction to Low-rank adaptation (LoRA)
    LoRA Numerical Example
    LoRA Summarization and Cost Saving Calculation
    (Optional) Matrix Multiplication Refresher
    Understanding LoRA Programatically Part 1
    Understanding LoRA Programatically Part 2
    Unlimited Updates
  •   Improving Training Speed with Bfloat 16
  • Bfloat16 vs Float32
    Comparing Bfloat16 Vs Float32 Programatically
    Implement a New Life System - at end of 3rd section
  •   Setting up the QLoRA Training Script with Mixed Precision & Double Quantization
  • Setting up Imports and Libraries for the Train Script
    Argument Parsing Function Part 1
    Argument Parsing Function Part 2
    Understanding Trainable Parameters Caveats
    Introduction to Quantization
    Identifying Trainable Layers for LoRA
    Setting up Parameter Efficient Fine Tuning
    Implement LoRA Configuration and Mixed Precision Training
    Understanding Double Quantization
    Creating the Training Function Part 1
    Creating the Training Function Part 2
    Exercise: Imposter Syndrome
    Finishing our Sagemaker Script
    Gaining Access to Powerful GPUs with AWS Quotas
    Final Fixes Before Training
  •   Running our Fine Tuning Script for our LLM
  • Starting our Training Job
    Inspecting the Results of our Training Job and Monitoring with Cloudwatch
  •   Deploying our Fine Tuned LLM
  • Deploying our LLM to a Sagemaker Endpoint
    Testing our LLM in Sagemaker Locally
    Creating the Lambda Function to Invoke our Endpoint
    Creating API Gateway to Deploy the Model Through the Internet
    Implementing our Streamlit App
    Streamlit App Correction
  •   Cleaning up Resources
  • Congratulations and Cleaning up AWS Resources
  •   Where To Go From Here?
  • Thank You!
    Review This Course!
    Become An Alumni
    Learning Guideline
    ZTM Events Every Month
    LinkedIn Endorsements

द्वारा पढ़ाया गया

Patrik Szepesi


विषय

Artificial Intelligence