From skills-for-humanity
Separates meaningful signal from background noise in data, communications, or analysis. Applies signal-to-noise ratio thinking to extract what matters.
How this skill is triggered — by the user, by Claude, or both
Slash command
/skills-for-humanity:s4h-information-signal-noiseThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Every source is a mixture of signal and noise. Signal is the variation that carries information about what you care about. Noise is everything else — random variation, artefacts, irrelevant fluctuation, measurement error, distortion in the channel. The same data point can be signal in one context and noise in another; the same message can be clear in one medium and garbled in another.
Every source is a mixture of signal and noise. Signal is the variation that carries information about what you care about. Noise is everything else — random variation, artefacts, irrelevant fluctuation, measurement error, distortion in the channel. The same data point can be signal in one context and noise in another; the same message can be clear in one medium and garbled in another.
Claude Shannon's foundational contribution was showing that signal-to-noise ratio (SNR) is a precisely definable quantity, and that a channel's capacity to transmit information is mathematically bounded by its SNR. The insight travels well beyond telecommunications. Any situation where useful information must be extracted from a noisy background has the same structure: evidence vs. noise in a research base, insight vs. artefact in a dataset, the core message vs. verbal interference in a communication, the relevant metric vs. random fluctuation in a business dashboard. This skill applies SNR thinking to find what's actually there.
Norbert Wiener's cybernetics framework added the feedback dimension: systems that can detect and suppress their own noise are more robust. The question is not just "what is the signal?" but "what is the system doing to amplify or attenuate it?"
Step 1: Define Signal Before anything else, get precise about what you are trying to detect. "Signal" is not "useful information in general" — it is the specific variation or pattern that would update your picture of the thing that matters. Name the target signal explicitly: what would a perfect source of this signal look like?
Framing check: Confirm the target signal and the source before continuing. State what you've identified — what signal you're looking for, in what source, and why it matters — in one sentence, then use AskUserQuestion:
Step 2: Enumerate Noise Sources List every identifiable source of non-signal variation:
Before narrowing: Show the complete enumerated noise sources before filtering. Use AskUserQuestion:
Step 3: Assess Signal-to-Noise Ratio For each candidate signal: how strong is it relative to the dominant noise floor? Assess whether the signal is:
Step 4: Identify Amplifiers and Attenuators What in the current setup amplifies noise (and should be reduced)? What amplifies signal (and should be preserved or extended)?
Common amplifiers of noise: small sample sizes, aggregation across heterogeneous groups, measurement instruments not calibrated to the target, lossy channels, attention to outliers, confirmation bias in data collection.
Common amplifiers of signal: appropriate granularity, comparison to relevant baselines, replication, triangulation across independent sources, domain expertise that knows where to look.
Step 5: Recommend a SNR Strategy Given the SNR assessment, specify:
Before proceeding, use the AskUserQuestion tool. State your interpretation of the situation in 1–2 sentences — what source is being analysed, what signal you're looking for, and what the key challenge is — then ask:
Proceed based on their selection. If the user reframes, incorporate the correction before running any analysis.
Target Signal: [Precise statement of what signal you're looking for and why it matters]
Noise Inventory
| Noise Source | Type | Estimated Impact | Reducible? |
|---|---|---|---|
| [source] | Random / Systematic / Channel / Interference | Low / Medium / High | Yes / No / Partially |
SNR Assessment: [Overall assessment — is the signal clearly present, marginal, or undetectable in this source?]
Signal Amplifiers: [What to preserve or extend]
Noise Suppressors: [What to filter or eliminate]
Information Loss: [What has already been permanently lost to noise in this source]
Recommended SNR Strategy: [Specific, actionable steps to raise signal quality]
Signal–noise analysis presupposes you know what signal you're looking for. When you don't — when the goal is exploration rather than detection — you need a different starting point. Consider /s4h-epistemology-knowledge-types to clarify what kind of knowing is in play, or /s4h-sensory-structured-observation to open up attention before filtering it. Signal–noise is a focusing tool; it works best when the target is defined.
This skill pairs naturally with /s4h-information-compression (having found the signal, what's the minimum representation that preserves it?) and /s4h-investigation-evidence-audit (what does the evidence actually establish once noise is stripped away?).
After delivering this output, use AskUserQuestion to offer the next move:
/s4h-information-compression — Compress the signal down to its essential form/s4h-information-entropy — Measure how much information the signal actually carries/s4h-investigation-evidence-audit — Audit what the cleaned signal actually establishesnpx claudepluginhub human-avatar/skills-for-humanityHelps identify what truly matters by applying variance, persistence, specificity, and counterfactual tests. Triggers on phrases like 'what actually matters here' and 'separate signal from noise'.
Synthesises user signals from multi-research sources (interviews, support tickets, NPS, app reviews, sales calls) into a weighted insight brief with confidence ratings, divergence analysis, and research gaps.
Performs Analysis of Competing Hypotheses (ACH) to evaluate multiple hypotheses against evidence via disconfirmation-focused matrix, diagnosticity, sensitivity analysis, and falsification milestones.