Embeddings vs Fine-Tuning - Part 3: Unsupervised Fine-Tuning
Offered By: Trelis Research via YouTube
Course Description
Overview
Explore the intricacies of unsupervised fine-tuning in this 21-minute video from Trelis Research. Delve into the process of cleaning datasets, implementing unsupervised fine-tuning in Google Colab, and gain valuable pro tips. Learn how to access the unsupervised fine-tuning notebook, supervised fine-tuning notebook, Q&A dataset preparation scripts, and scripts for creating and using embeddings. The video covers topics such as dataset cleanup, practical implementation in Google Colab, and offers expert advice. Access additional resources including presentation slides and a GitHub repository for comprehensive learning. Perfect for those looking to deepen their understanding of advanced fine-tuning techniques in machine learning.
Syllabus
Part 3: Unsupervised Fine-tuning
Video Overview
Cleaning up datasets
Unsupervised fine-tuning in google colab.
Pro tips
Scripts and GitHub Repo Access
Taught by
Trelis Research
Related Courses
Data Wrangling with MongoDBMongoDB via Udacity Getting and Cleaning Data
Johns Hopkins University via Coursera 软件包在流行病学研究中的应用 Using software apps in epidemiological research
Peking University via Coursera Creating an Analytical Dataset
Udacity Implementing ETL with SQL Server Integration Services
Microsoft via edX