Raw LLM Responses

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Comment
Luís, I’ve seen this "human anatomy" analogy all over LinkedIn lately. It’s a clean framework, but it dangerously oversimplifies the reality of high-stakes environments. Bridging bedside medicine and AI architecture, I see a major flaw: this body is missing an immune system. In a hospital, "agents with hands" operating without strict, fail-closed deterministic gates is a recipe for fatal never-events. The clean logic of enterprise AI always shatters against the chaotic, noisy reality of clinical workflows. We need less hype about "brains" and more focus on "immune responses." I'd value your thoughts: 1) Technically, how do we architect this deterministic "immune system" into the MCP layer to intercept hallucinated agent actions? 2) Clinically, how do we stop this "brain + hands" hype from pushing leadership to deploy autonomous systems before EHR data is actually clean?
LinkedIn Workplace & Jobs Lead Clinical AI Architect | M.D. Candidate  | … 2026-05-31T18:3…
Coding Result
DimensionValue
Primary valuesafety
Secondary valueaccountability
Alignment targetvulnerable_groups
Stancecritical
Emotionfear
Value justificationThe speaker emphasizes the need for a 'deterministic immune system' to prevent fatal errors in high-stakes environments, indicating a primary concern for safety.
Target justificationThe comment specifically mentions 'bedside medicine' and 'clinical workflows', suggesting that the target of the speaker's concern is vulnerable groups, such as patients.
Coded at2026-06-11T08:35:12Z
Raw LLM Response
```json { "value_primary": "safety", "value_secondary": "accountability", "target": "vulnerable_groups", "stance": "critical", "emotion": "fear", "value_justification": "The speaker emphasizes the need for a 'deterministic immune system' to prevent fatal errors in high-stakes environments, indicating a primary concern for safety.", "target_justification": "The comment specifically mentions 'bedside medicine' and 'clinical workflows', suggesting that the target of the speaker's concern is vulnerable groups, such as patients." } ```