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
Sourcer/ai-agents
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...
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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
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