How To Use NotebookLM For Beginners In 2024 (NotebookLM Tutorial)
00:00:00 Introduction to NotebookLM
00:00:14 Accessing NotebookLM (Google account required)
00:00:33 Creating a new notebook
00:00:54 Uploading data sources (Google Drive, websites, YouTube, text)
00:01:10 Example: Researching the V-Jetpack AI architecture
00:01:27 Adding multiple sources (YouTube videos, blog posts)
00:02:49 Generating a briefing document
00:03:08 Benefits of using multiple sources
00:03:27 Accessing quotes from source material
00:03:49 Using suggested questions
00:04:04 Viewing source material for specific answers
00:04:25 Focusing on a single source
00:04:47 Asking questions based on a specific video
00:05:43 Generating a podcast
00:06:00 Customizing the podcast content
00:06:21 Generating an audio overview
00:06:39 Creating FAQs, study guides, and tables of contents
00:06:55 Renaming notes for better organization
00:07:12 Renaming the project
00:07:33 Accessing the project from the homepage
00:07:48 Interacting with notes (e.g., generating related ideas)
00:08:07 Enhancing notes with related facts and ideas
00:08:42 Adding beginner questions to the study guide
00:09:01 Saving and iterating on notes
00:09:26 Accessing the generated podcast
00:09:44 Example podcast segment
00:10:41 Benefits of the podcast format
00:10:58 Conclusion and call to action
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