Skip to content

Commit 3a7f708

Browse files
authored
Merge branch 'main' into a-volpi-patch-3
2 parents bd3970e + e38e615 commit 3a7f708

File tree

649 files changed

+19508
-10215
lines changed

Some content is hidden

Large Commits have some content hidden by default. Use the searchbox below for content that may be hidden.

649 files changed

+19508
-10215
lines changed

ai-and-app-modernisation/ai-services/generative-ai-service/lowcode-rag-genai/README.md

Lines changed: 3 additions & 3 deletions
Original file line numberDiff line numberDiff line change
@@ -1,12 +1,12 @@
1-
# Low Code Modular RAG-based Knowledge Search Engine using OCI Generative AI, OCI Vector Search, and Oracle Integration Cloud
1+
# Modular GenAI-based Knowledge Search Engine using OCI Generative AI, OCI DB 23ai, and Oracle Integration Cloud
22

33
In this article, we'll explore how to enable an enterprise-grade RAG-based Knowledge Search Engine with a low-code approach.
44

55
You’ll learn how to use Oracle Integration Cloud to integrate and orchestrate business chanels like a Web Application built in Oracle Visual Builder, productivity channels like OCI Object Storage, local large and small language models (LLMs), and vector databases to ingest live data into the RAG-based Knowledge Search Engine store.
66

7-
You'll use Oracle Cloud Infrastructure (OCI) Document Understanding to extract information from different document types. Leverage OCI Generative AI for document summarization, generation and synthesis of answers to questions on documents. Use OCI DB Cloud Service 23AI for Document Extraction, Vector Search and Embedding (using ONNX local models to the DB) capabilities , and apply local OCI Data Science models for better answers from advanced RAG.
7+
You'll use Oracle Cloud Infrastructure (OCI) Document Understanding to extract information from different document types. Leverage OCI Generative AI for document summarization, generation and synthesis of answers to questions on documents. Use OCI DB Cloud Service 23ai for Document Extraction, Vector Search and Embedding (using ONNX local models to the DB) capabilities , and apply local OCI Data Science models for better answers from advanced RAG.
88

9-
Reviewed: 30.05.2024
9+
Reviewed: 10.06.2024
1010

1111
# When to use this asset?
1212

ai-and-app-modernisation/ai-services/generative-ai-service/lowcode-rag-genai/files/README.md

Lines changed: 1000 additions & 8 deletions
Large diffs are not rendered by default.

0 commit comments

Comments
 (0)