diff --git a/README.md b/README.md index d5fad60ee617f64464e560e92e42447d545148a0..c15c86aa2ae35b7859d9907592faa3f9199674a0 100644 --- a/README.md +++ b/README.md @@ -9,21 +9,19 @@ ## Part 1: -### Step 1: Create S3 Bucket +### Step 1: Object storage Creation Create an S3 bucket and upload a few PDF files (Detailed steps are provided in the first session). ### Step 2: Vector Store Creation -To set up the Vector Store, run the following command: -`python Create-Vector-DB.py` +To set up the Vector Store, run the following command: `python Create-Vector-DB.py` This script performs the following actions: -* Set up the security policies: Sets up encryption, network, and data access policies for collections starting with "test". +* Set up the security policies: Sets up encryption, network, and data access policies for collections starting with "test". * Vector Store Initialization: Creates a vector store named test1, specifically designed for vector search operations. - * Endpoint Retrieval: After the vector store is set up, the script retrieves and displays the store's endpoint for immediate use. -### Step 3: Processing PDF Files +### Step 3: Vectorizing the PDF Files After setting up the S3 bucket and Vector Store, prepare to vectorize the PDF files: * In main.py, update the S3 bucket name to the one you created. * Update the Vector Store endpoint with the one provided by the setup script.