Output tokens, not prompts, drive LLM costs in production apps
A developer who instrumented per-request cost tracking found that output token generation, not input size, represents the largest cost driver in LLM applications, with prompt caching offering significant savings only whe
A developer working with production LLM applications instrumented detailed cost tracking and discovered that the biggest cost driver wasn't what conventional wisdom suggested. After adding per-request measurement that tracked input tokens, output tokens, and cache reads/writes against a model regist...
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- Source type
- Primary publication (lab/vendor blog) — our analysis + implication
- Source link
- r/llmdevs
- Published
- UTC
- Byline
- By the gotcontext.ai team (editorial standards)
- Correction?
- corrections@gotcontext.ai