Fine-Tuning GPT-3.5-Turbo - A 7-Step Crash Course
Offered By: Trelis Research via YouTube
Course Description
Overview
Discover a comprehensive 12-minute crash course on fine-tuning GPT-3.5-TURBO in seven steps. Learn when to use fine-tuning, how to prepare data, generate prompts, and validate data for the OpenAI API. Explore the costs and duration of fine-tuning, as well as techniques for saving, visualizing, and analyzing results. Gain insights on manual inspection and determining the success of fine-tuning efforts. Access valuable resources including the OpenAI Fine-tuning Guide, API documentation, and optional Python scripts for data preparation and analysis.
Syllabus
Fine-tune gpt 3.5 in seven steps
Should I use fine-tuning?
When does fine-tuning work?
Step 1 - Preparing data for fine-tuning
How much data do I need for fine-tuning?
Fine-tuning on Twitter or blog data
Step 2 - Using rewinder to automatically generate prompts for fine-tuning
Step 3 - Prepare messages for OpenAI api
Step 4 - Data validation for fine-tuning
How much does fine-tuning cost with OpenAI?
Step 5 - Running a fine-tuning job
How long does fine-tuning take?
Step 6 - Saving and visualising fine-tuning results
Plotting and analysing fine-tuning results
Step 7 - Manual inspection of results
How do I know if fine-tuning worked?
Where to find scripts for fine-tuning with OpenAi
Taught by
Trelis Research
Related Courses
Artificial Intelligence for RoboticsStanford University via Udacity Intro to Computer Science
University of Virginia via Udacity Design of Computer Programs
Stanford University via Udacity Web Development
Udacity Programming Languages
University of Virginia via Udacity