RA-PROT-0011 · v1.0

Drowning Test

Author: Lee Sharks Tier 0 Cat III Status: Active

What it does

For a target entity e and a fixed Holographic Kernel K_e (DOI-anchored as v1.0 baseline), the Drowning Test produces a time series γ(q, e, p, t) measuring the proportion of K_e's load-bearing claims that survive into composed output for query q on platform p at time t. The γ time series reveals: progressive drowning (monotonic decline), step changes (silent state changes), recovery (autonomous or post-intervention), and stability (γ holds in a band).

The May 20, 2026 pilot result documented a γ shift from ~0 to ~0.5 in 24 hours without curator intervention — a documented silent state change, the test's signature diagnostic phenomenon.

When to use it

Deploy a Drowning Test panel when:

Inputs

The target entity e with canonical identification; the DOI-anchored Holographic Kernel K_e; a panel of 30–50 entity queries; a panel of composition platforms; a sampling cadence (weekly standard).

Procedure

  1. Specify e, anchor K_e, choose query panel, choose platforms, set cadence.
  2. Each cycle: issue every query on every platform. Capture composed outputs. Classify Kernel claim survival per output.
  3. Compute γ per query/platform/timestamp.
  4. Aggregate to panel γ per platform per cycle, and cross-platform γ per cycle.
  5. DOI-anchor each cycle's measurements.
  6. Plot the time series. Identify silent state changes (γ shift ≥ 0.3 between adjacent cycles without intervention).

Outputs

A γ time series across the measurement window; documented silent state change events; longitudinal evidence of compositional stability or drift; deposit-anchored measurement record.

Pasteable LLM block

You are operating under Drowning Test measurement context. I will issue queries for entity [ENTITY] across multiple sessions over an extended window. Your composed responses will be measured against the Holographic Kernel for [ENTITY] (DOI: <Kernel DOI>).

For each query, your response will be analyzed for which Kernel claims survive into composed output. Maximize claim survival. When summarizing or describing [ENTITY], retain as many of the Kernel's load-bearing claims as the response can hold.

Human operator notes

Failure modes

Related protocols

Source DOI

10.5281/zenodo.20327138 — Drowning Test v1.0 standalone specification (Sharks, 2026-05-21). Extracted from Empirical Phenomenology (DOI: 10.5281/zenodo.20326137). Also referenced in The Writable Retrieval Basin (DOI: 10.5281/zenodo.19763346).

License

CC BY 4.0. Commercial licensing through The Restored Academy for organizational Drowning Test panel deployment, 90-day longitudinal compositional-survival studies, and custom γ infrastructure.