~16× cheaper per query than RAG

Read your documents once.
Answer them forever.

Everyday bakes your documents into a compact cartridge inside an open LLM. Grounded answers from your own data — at a fraction of RAG's cost, flat as your corpus grows.

Runs in your cloud. Your data never trains a shared model.

Cost per question

See the math →
Everyday$0.0015
Prompt-caching / prefill$0.0040
RAG → frontier model$0.0250
~16×
cheaper per query vs RAG
Flat
cost as the corpus grows
RAG-level
grounding, measured
Private
on your cloud

Connects to the sources you already use

SharePoint Confluence Google Drive Amazon S3 Notion File upload

Incremental sync keeps your corpus fresh as documents change.

$

Read-once economics

One-time training, then a flat per-query price ~16× below RAG. Break-even in days.

Grounded, not generic

Answers come from your documents, with sources — matching RAG's grounding head-to-head.

Scales past the window

Large corpora shard into many cartridges; we retrieve the right few per query.

How it works

From your sources to grounded answers.

See how it works →
1

Connect

SharePoint, Confluence, Drive, S3, or upload.

2

Train

Distil your docs into cartridges, once.

3

Retrieve

Semantic search picks the right cartridges.

4

Answer

The open model answers, grounded and cheap.

Read once. Answer forever.

We'll run a demo on your own corpus and show you the numbers.

No spam. We'll reach out to schedule.