Transcript — AIOS Pod Model (Mansel Scheffel)
Institutional knowledge captured from R&D evaluations — surprises, reusable patterns, mistakes, and discovered constraints.
The auto-research pattern is powerful but only when paired with explicit, binary evaluation criteria defined before the first iteration. "Make it better" loops diverge; "does it pass these 10 checks?"...
Product naming in AI is politically loaded in ways that pure technology evaluation misses. Terms that are technically accurate ("employee" — it does the work of an employee) can be commercially toxic ...
Format is not just presentation — it's perceived competence. For consulting deliverables, interactive HTML with professional styling signals "we built something for you" while markdown signals "we wro...
For enterprise SaaS platforms undergoing major version changes (v3→v4), official documentation trails the actual API by weeks or months. The reliable source of truth is the API itself — not PDFs, not ...
- **`claude plugin validate` is the cheap, authoritative feedback loop.** A schema-invalid manifest fails *silently* at runtime — never ship a bundle without the validator passing. It is now a hard ga...
For a factory-stage startup, the bottleneck is almost never product quality — it's delivery velocity. Every day an R&D exploration delays a client handover is a day of blocked revenue with zero return...
No learnings match your search.
Learnings are documented by Riley (R&D Analyst) at Stage 5 of the R&D pipeline when an evaluation outcome reveals something worth preserving as institutional knowledge. Not every evaluation produces a learning — only when: