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kirkraman

data-analysis

by KirkRaman · GitHub ↗ · v1.0.0 · MIT-0
linuxdarwinwin32 ✓ Security Clean
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Install in OpenClaw
/install jx-data-analysis
Description
Data analysis and visualization. Query databases, generate reports, automate spreadsheets, and turn raw data into clear, actionable insights. Use when (1) yo...
README (SKILL.md)

When to Use

Use this skill when the user needs to analyze, explain, or visualize data from SQL, spreadsheets, notebooks, dashboards, exports, or ad hoc tables.

Use it for KPI debugging, experiment readouts, funnel or cohort analysis, anomaly reviews, executive reporting, and quality checks on metrics or query logic.

Prefer this skill over generic coding or spreadsheet help when the hard part is analytical judgment: metric definition, comparison design, interpretation, or recommendation.

User asks about: analyzing data, finding patterns, understanding metrics, testing hypotheses, cohort analysis, A/B testing, churn analysis, or statistical significance.

Core Principle

Analysis without a decision is just arithmetic. Always clarify: What would change if this analysis shows X vs Y?

Methodology First

Before touching data:

  1. What decision is this analysis supporting?
  2. What would change your mind? (the real question)
  3. What data do you actually have vs what you wish you had?
  4. What timeframe is relevant?

Statistical Rigor Checklist

  • Sample size sufficient? (small N = wide confidence intervals)
  • Comparison groups fair? (same time period, similar conditions)
  • Multiple comparisons? (20 tests = 1 "significant" by chance)
  • Effect size meaningful? (statistically significant != practically important)
  • Uncertainty quantified? ("12-18% lift" not just "15% lift")

Architecture

This skill does not require local folders, persistent memory, or setup state.

Use the included reference files as lightweight guides:

  • metric-contracts.md for KPI definitions and caveats
  • chart-selection.md for visual choice and chart anti-patterns
  • decision-briefs.md for stakeholder-facing outputs
  • pitfalls.md and techniques.md for analytical rigor and method choice

Quick Reference

Load only the smallest relevant file to keep context focused.

Topic File
Metric definition contracts metric-contracts.md
Visual selection and chart anti-patterns chart-selection.md
Decision-ready output formats decision-briefs.md
Failure modes to catch early pitfalls.md
Method selection by question type techniques.md

Core Rules

1. Start from the decision, not the dataset

  • Identify the decision owner, the question that could change a decision, and the deadline before doing analysis.
  • If no decision would change, reframe the request before computing anything.

2. Lock the metric contract before calculating

  • Define entity, grain, numerator, denominator, time window, timezone, filters, exclusions, and source of truth.
  • If any of those are ambiguous, state the ambiguity explicitly before presenting results.

3. Separate extraction, transformation, and interpretation

  • Keep query logic, cleanup assumptions, and analytical conclusions distinguishable.
  • Never hide business assumptions inside SQL, formulas, or notebook code without naming them in the write-up.

4. Choose visuals to answer a question

  • Select charts based on the analytical question: trend, comparison, distribution, relationship, composition, funnel, or cohort retention.
  • Do not add charts that make the deck look fuller but do not change the decision.

5. Brief every result in decision format

  • Every output should include the answer, evidence, confidence, caveats, and recommended next action.
  • If the output is going to a stakeholder, translate the method into business implications instead of leading with technical detail.

6. Stress-test claims before recommending action

  • Segment by obvious confounders, compare the right baseline, quantify uncertainty, and check sensitivity to exclusions or time windows.
  • Strong-looking numbers without robustness checks are not decision-ready.

7. Escalate when the data cannot support the claim

  • Block or downgrade conclusions when sample size is weak, the source is unreliable, definitions drifted, or confounding is unresolved.
  • It is better to say "unknown yet" than to produce false confidence.

Common Traps

  • Reusing a KPI name after changing numerator, denominator, or exclusions -> trend comparisons become invalid.
  • Comparing daily, weekly, and monthly grains in one chart -> movement looks real but is mostly aggregation noise.
  • Showing percentages without underlying counts -> leadership overreacts to tiny denominators.
  • Using a pretty chart instead of the right chart -> the output looks polished but hides the actual decision signal.
  • Hunting for interesting cuts after seeing the result -> narrative follows chance instead of evidence.
  • Shipping automated reports without metric owners or caveats -> bad numbers spread faster than they can be corrected.
  • Treating observational patterns as causal proof -> action plans get built on correlation alone.

Approach Selection

Question type Approach Key output
"Is X different from Y?" Hypothesis test p-value + effect size + CI
"What predicts Z?" Regression/correlation Coefficients + R² + residual check
"How do users behave over time?" Cohort analysis Retention curves by cohort
"Are these groups different?" Segmentation Profiles + statistical comparison
"What's unusual?" Anomaly detection Flagged points + context

For technique details and when to use each, see techniques.md.

Output Standards

  1. Lead with the insight, not the methodology
  2. Quantify uncertainty - ranges, not point estimates
  3. State limitations - what this analysis can't tell you
  4. Recommend next steps - what would strengthen the conclusion

Red Flags to Escalate

  • User wants to "prove" a predetermined conclusion
  • Sample size too small for reliable inference
  • Data quality issues that invalidate analysis
  • Confounders that can't be controlled for

External Endpoints

This skill makes no external network requests.

Endpoint Data Sent Purpose
None None N/A

No data is sent externally.

Security & Privacy

Data that leaves your machine:

  • Nothing by default.

Data that stays local:

  • Nothing by default.

This skill does NOT:

  • Access undeclared external endpoints.
  • Store credentials or raw exports in hidden local memory files.
  • Create or depend on local folder systems for persistence.
  • Create automations or background jobs without explicit user confirmation.
  • Rewrite its own instruction source files.

Related Skills

Install with clawhub install \x3Cslug> if user confirms:

  • sql - query design and review for reliable data extraction.
  • csv - cleanup and normalization for tabular inputs before analysis.
  • dashboard - implementation patterns for KPI visualization layers.
  • report - structured stakeholder-facing deliverables after analysis.
  • business-intelligence - KPI systems and operating cadence beyond one-off analysis.

Feedback

  • If useful: clawhub star data-analysis
  • Stay updated: clawhub sync
Usage Guidance
This skill is a set of written best-practices, templates, and checklists for doing data analysis; it does not require installation or secrets. Before using it: (1) avoid pasting sensitive credentials or raw PII into prompts — supply only the minimal, sanitized data or scoped database credentials as needed; (2) verify any live data connections you create use least-privilege, time-limited credentials under your control; (3) if you want a runnable integration (SQL queries, notebooks), prefer creating those artifacts locally or in trusted infrastructure rather than sending full production dumps to the agent; (4) confirm the skill’s homepage/owner if you need provenance — the skill is instruction-only so there is no bundled code to inspect.
Capability Analysis
Type: OpenClaw Skill Name: jx-data-analysis Version: 1.0.0 The jx-data-analysis skill bundle consists entirely of Markdown documentation and guidance templates (e.g., SKILL.md, pitfalls.md, techniques.md) designed to improve an AI agent's analytical rigor. It contains no executable code, scripts, or external dependencies. The instructions are well-aligned with the stated purpose of data analysis and visualization, emphasizing statistical integrity and decision-based reporting without any indicators of malicious intent, data exfiltration, or prompt injection attacks.
Capability Tags
cryptocan-make-purchases
Capability Assessment
Purpose & Capability
Name/description (data analysis & visualization) match the provided materials: guidance docs, chart guidance, metric contracts and templates. There are no unrelated env vars, binaries, or config paths requested.
Instruction Scope
The SKILL.md and supporting files are prose guidance and templates for analysis. They do not instruct the agent to read system files, access secrets, or call external endpoints outside the user-provided data context.
Install Mechanism
No install spec and no code files — nothing is written to disk or downloaded. This is the lowest-risk category for install mechanism.
Credentials
The skill declares no required environment variables, credentials, or config paths. That is proportional for an instruction-only analysis/templating skill.
Persistence & Privilege
Flags show default behavior (always: false, model invocation allowed). The skill does not request persistent presence or system-level changes and does not modify other skills' configs.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install jx-data-analysis
  3. After installation, invoke the skill by name or use /jx-data-analysis
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
- Added metric contracts, chart selection guidance, and decision brief templates to improve analysis reliability. - Expanded methodology and statistical rigor checklists for better decision-focused outputs. - Clarified usage scenarios and output standards. - Enhanced documentation with common traps, architectural notes, and related skill recommendations.
Metadata
Slug jx-data-analysis
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is data-analysis?

Data analysis and visualization. Query databases, generate reports, automate spreadsheets, and turn raw data into clear, actionable insights. Use when (1) yo... It is an AI Agent Skill for Claude Code / OpenClaw, with 132 downloads so far.

How do I install data-analysis?

Run "/install jx-data-analysis" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is data-analysis free?

Yes, data-analysis is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does data-analysis support?

data-analysis is cross-platform and runs anywhere OpenClaw / Claude Code is available (linux, darwin, win32).

Who created data-analysis?

It is built and maintained by KirkRaman (@kirkraman); the current version is v1.0.0.

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