Skip to main content
Économies mesurées sur 11 LLMs, de Claude Opus 4.7 à Gemini Flash.→ Voir les données par modèle
Connecter votre client
Tooling

Enterprise AI agents cut costs 80% by moving schema out of prompts

A BotsCrew team reduced an analytics agent from 9+ LLM calls per query to 1 by storing stable metadata separately, dropping token usage and latency dramatically.

1 min read

An enterprise analytics assistant built by BotsCrew started with a familiar problem: the system worked, but it was expensive and slow. Before answering any user question, the agent had to rediscover the dataset structure, making 9 or more sequential LLM calls just to understand which tables, columns...

Sign in to read the full analysis

Free account. Full analysis on LLM unit economics, plus the weekly Cost-of-Inference column.

Try it on your own context

You just read the writeup. Now run the thing. Paste a doc or some verbose tool output and watch it shrink — free, no signup.

2,912/12,000 chars
Compressed
Compressed text will appear here…
Method & sources
Source type
Primary publication (lab/vendor blog) — our analysis + implication
Source link
r/ai-agents
Published
UTC
Byline
By the gotcontext.ai team (editorial standards)
Correction?
corrections@gotcontext.ai

Related