Select your cookie preferences

We use essential cookies and similar tools that are necessary to provide our site and services. We use performance cookies to collect anonymous statistics, so we can understand how customers use our site and make improvements. Essential cookies cannot be deactivated, but you can choose “Customize” or “Decline” to decline performance cookies.

If you agree, AWS and approved third parties will also use cookies to provide useful site features, remember your preferences, and display relevant content, including relevant advertising. To accept or decline all non-essential cookies, choose “Accept” or “Decline.” To make more detailed choices, choose “Customize.”

AWS Logo
Menu
Enhancing Document Analysis with Embedding Adapters on AWS

Enhancing Document Analysis with Embedding Adapters on AWS

How can we adapt the best FM on AWS with cost-effective adapters?

Published Jul 18, 2024
Hello AWS Community fellows!
I'm excited to announce a new blog series exploring how AWS services and innovative AI techniques can transform the analysis of complex corporate documents.
## "Decoding Corporate Reports: Embedding Adapters for Precise Question Answering"
This series demonstrates how to use AWS services to implement cutting-edge AI methods, focusing on advanced Retrieval-Augmented Generation (RAG) techniques and embedding adapters.
What We'll Cover
  1. The Challenge: Extracting insights from lengthy, complex documents.
  2. The Approach: Adapting language models for specialized tasks without full fine-tuning.
  3. The Technique: Implementing embedding adapters to adjust off-the-shelf embeddings.
Why It Matters
  • For Analysts: Learn to accelerate document analysis and improve accuracy.
  • For AI/ML Practitioners: Explore a real-world case study in domain-specific adaptation of RAG.
Series Outline:
  1. Part 1: Synthetic Data Generation with AWS Bedrock
    - Using Anthropic's Claude and AWS Bedrock's Converse API
  2. Part 2: Designing & Implementing Embedding Adapters
    - Working with Cohere's embedding models
    - Integrating adapters into the RAG pipeline
  3. Part 3: Performance Evaluation and visualization (Coming Soon)
  4. Part 4: RAG System Showdown (Stay Tuned!)
Getting Started
The first two parts are now available:
1. Blog series: Decoding Reports with Embedding Adapters
2. GitHub repository: RAG Adapters Code
I'm eager to engage with the AWS community on this topic. How do you see these technologies shaping document analysis across various industries?
#AWSCommunity #AI #MachineLearning #AWSBedrock
 

Comments