About ACIDBATH
ACIDBATH is the acid test for AI engineering claims. We publish code-first deep dives on production AI systems—what works, what breaks, and the real numbers behind it.
What We Cover
- Context Engineering — Progressive disclosure, token optimization, semantic search, file-based persistence
- Agent Architecture — Sub-agent patterns, research delegation, system prompts, MCP vs Skills
- Production Patterns — Workflow prompts, single-file scripts, directory watchers, automation at scale
- Cost & Reliability — Real benchmarks, failure modes, break-even analysis, production economics
Our Philosophy
- Code-first, always — Complete, working code you can run today
- Production reality — 80-90% of AI agent projects fail. We document what actually works.
- Senior engineers only — No 101-level tutorials. We trust you to Google unfamiliar terms.
- Honest about failures — Token costs, failure modes, and production gotchas are features, not bugs.
- Numbers over narratives — Every claim backed by measurements, benchmarks, or real production data.
What We Don't Do
"Game-changer." "Revolutionary." "Unlock your potential." Generic prompt tips. RAG 101 explainers. Content for beginners in disguise.
About the Author
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