Most RAG architectures charge you $300+/month for vector databases that run whether you’re querying or not. RAGStack-Lambda scales to zero. $7-10/month for 1,000 documents.

The trick is S3 Vectors + Lambda + Bedrock. You trade sub-50ms latency for hundreds of milliseconds. For chat interfaces and document Q&A, that’s fine.

Beyond Text Search

Amazon Nova embeddings put text, images, and video frames in the same vector space. Upload a photo, search with natural language, get semantically relevant results.

For video: frames get visual embeddings and audio gets transcribed into 30-second chunks with speaker identification. Every chunk carries timestamp metadata. Query by what’s said or what’s shown — citations link directly to that segment.

Smarter Retrieval

RAGStack …

Similar Posts

Loading similar posts...

Keyboard Shortcuts

Navigation
Next / previous item
j/k
Open post
oorEnter
Preview post
v
Post Actions
Love post
a
Like post
l
Dislike post
d
Undo reaction
u
Recommendations
Add interest / feed
Enter
Not interested
x
Go to
Home
gh
Interests
gi
Feeds
gf
Likes
gl
History
gy
Changelog
gc
Settings
gs
Browse
gb
Search
/
General
Show this help
?
Submit feedback
!
Close modal / unfocus
Esc

Press ? anytime to show this help