Data Validator
Data and analytics skill, available on Zeplik
Data Validator is a ready-to-run data and analytics skill on Zeplik. Use when the user wants an analysis QA'd before sharing: 'sanity-check this analysis', 'does this query look right', 'review my methodology', checking calculations, aggregation logic, bias, and whether the conclusions are actually supported by the data. Ask in plain language and Zeplik applies the skill's method for you inside the conversation, on whichever AI model you prefer.
The Data Validator skill loads automatically when your request matches it, or you can invoke it directly by typing /validate-data in any chat. It works with attachments, connectors, and any model that supports the task, so you get the same expert method every time without setting anything up.
What the Data Validator skill can do
- Audit methodology, question framing, and population definitions for gaps
- Spot-check calculations, subtotals, and percentage aggregations for errors
- Flag common analytical pitfalls like survivorship bias and join explosion
- Rate overall confidence as ready to share, needs caveats, or needs revision
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How the Data Validator skill works
/validate-data - Validate Analysis Before Sharing
If you see unfamiliar placeholders or need to check which tools are connected, see CONNECTORS.md.
Review an analysis for accuracy, methodology, and potential biases before sharing with stakeholders. Generates a confidence assessment and improvement suggestions.
Usage
/validate-data <analysis to review>
The analysis can be:
- A document or report in the conversation
- A file (markdown, notebook, spreadsheet)
- SQL queries and their results
- Charts and their underlying data
- A description of methodology and findings
Workflow
1. Review Methodology and Assumptions
Examine:
- Question framing: Is the analysis answering the right question? Could the question be interpreted differently?
- Data selection: Are the right tables/datasets being used? Is the time range appropriate?
- Population definition: Is the analysis population correctly defined? Are there unintended exclusions?
- Metric definitions: Are metrics defined clearly and consistently? Do they match how stakeholders understand them?
- Baseline and comparison: Is the comparison fair? Are time periods, cohort sizes, and contexts comparable?
2. Run the Pre-Delivery QA Checklist
Work through the checklist below — data quality, calculation, reasonableness, and presentation checks.
3. Check for Common Analytical Pitfalls
Systematically review against the detailed pitfall catalog below (join explosion, survivorship bias, incomplete period comparison, denominator shifting, average of averages, timezone mismatches, selection bias).
4. Verify Calculations and Aggregations
Where possible, spot-check:
- Recalculate a few key numbers independently
- Verify that subtotals sum to totals
- Check that percentages sum to 100% (or close to it) where expected
- Confirm that YoY/MoM comparisons use the correct base periods
- Validate that filters are applied consistently across all metrics
Apply the result sanity-checking techniques below (magnitude checks, cross-validation, red-flag detection).
5. Assess Visualizations
If the analysis includes charts:
- Do axes start at appropriate values (zero for bar charts)?
- Are scales consistent across comparison charts?
- Do chart titles accurately describe what's shown?
- Could the visualization mislead a quick reader?
- Are there truncated axes, inconsistent intervals, or 3D effects that distort perception?
6. Evaluate Narrative and Conclusions
Review whether:
- Conclusions are supported by the data shown
- Alternative explanations are acknowledged
- Uncertainty is communicated appropriately
- Recommendations follow logically from findings
- The level of confidence matches the strength of evidence
7. Suggest Improvements
Provide specific, actionable suggestions:
- Additional analyses that would strengthen the conclusions
- Caveats or limitations that should be noted
- Better visualizations or framings for key points
- Missing context that stakeholders would want
8. Generate Confidence Assessment
Rate the analysis on a 3-level scale:
Ready to share -- Analysis is methodologically sound, calculations verified, caveats noted. Minor suggestions for improvement but nothing blocking.
Share with noted caveats -- Analysis is largely correct but has specific limitations or assumptions that must be communicated to stakeholders. List the required caveats.
Needs revision -- Found specific errors, methodological issues, or missing analyses that should be addressed before sharing. List the required changes with priority order.
Output Format
## Validation Report
### Overall Assessment: [Ready to share | Share with caveats | Needs revision]
### Methodology Review
[Findings about approach, data selection, definitions]
### Issues Found
1. [Severity: High/Medium/Low] [Issue description and impact]
2. ...
### Calculation Spot-Checks
- [Metric]: [Verified / Discrepancy found]
- ...
### Visualization Review
[Any issues with charts or visual presentation]
### Suggested Improvements
1. [Improvement and why it matters]
2. ...
### Required Caveats for Stakeholders
- [Caveat that must be communicated]
- ...
Pre-Delivery QA Checklist
Run through this checklist before sharing any analysis with stakeholders.
Data Quality Checks
- Source verification: Confirmed which tables/data sources were used. Are they the right ones for this question?
- Freshness: Data is current enough for the analysis. Noted the "as of" date.
- Completeness: No unexpected gaps in time series or missing segments.
- Null handling: Checked null rates in key columns. Nulls are handled appropriately (excluded, imputed, or flagged).
- Deduplication: Confirmed no double-counting from bad joins or duplicate source records.
- Filter verification: All WHERE clauses and filters are correct. No unintended exclusions.
Calculation Checks
- Aggregation logic: GROUP BY includes all non-aggregated columns. Aggregation level matches the analysis grain.
- Denominator correctness: Rate and percentage calculations use the right denominator. Denominators are non-zero.
- Date alignment: Comparisons use the same time period length. Partial periods are excluded or noted.
- Join correctness: JOIN types are appropriate (INNER vs LEFT). Many-to-many joins haven't inflated counts.
- Metric definitions: Metrics match how stakeholders define them. Any deviations are noted.
- Subtotals sum: Parts add up to the whole where expected. If they don't, explain why (e.g., overlap).
Reasonableness Checks
- Magnitude: Numbers are in a plausible range. Revenue isn't negative. Percentages are between 0-100%.
- Trend continuity: No unexplained jumps or drops in time series.
- Cross-reference: Key numbers match other known sources (dashboards, previous reports, finance data).
- Order of magnitude: Total revenue is in the right ballpark. User counts match known figures.
- Edge cases: What happens at the boundaries? Empty segments, zero-activity periods, new entities.
Presentation Checks
- Chart accuracy: Bar charts start at zero. Axes are labeled. Scales are consistent across panels.
- Number formatting: Appropriate precision. Consistent currency/percentage formatting. Thousands separators where needed.
- Title clarity: Titles state the insight, not just the metric. Date ranges are specified.
- Caveat transparency: Known limitations and assumptions are stated explicitly.
- Reproducibility: Someone else could recreate this analysis from the documentation provided.
Common Data Analysis Pitfalls
Join Explosion
The problem: A many-to-many join silently multiplies rows, inflating counts and sums.
How to detect:
-- Check row count before and after join
SELECT COUNT(*) FROM table_a; -- 1,000
SELECT COUNT(*) FROM table_a a JOIN table_b b ON a.id = b.a_id; -- 3,500 (uh oh)
How to prevent:
- Always check row counts after joins
- If counts increase, investigate the join relationship (is it really 1:1 or 1:many?)
- Use
COUNT(DISTINCT a.id)instead ofCOUNT(*)when counting entities through joins
Survivorship Bias
The problem: Analyzing only entities that exist today, ignoring those that were deleted, churned, or failed.
Examples:
- Analyzing user behavior of "current users" misses churned users
- Looking at "companies using our product" ignores those who evaluated and left
- Studying properties of "successful" outcomes without "unsuccessful" ones
How to prevent: Ask "who is NOT in this dataset?" before drawing conclusions.
Incomplete Period Comparison
The problem: Comparing a partial period to a full period.
Examples:
- "January revenue is $500K vs. December's $800K" -- but January isn't over yet
- "This week's signups are down" -- checked on Wednesday, comparing to a full prior week
How to prevent: Always filter to complete periods, or compare same-day-of-month / same-number-of-days.
Denominator Shifting
The problem: The denominator changes between periods, making rates incomparable.
Examples:
- Conversion rate improves because you changed how you count "eligible" users
- Churn rate changes because the definition of "active" was updated
How to prevent: Use consistent definitions across all compared periods. Note any definition changes.
Average of Averages
The problem: Averaging pre-computed averages gives wrong results when group sizes differ.
Example:
- Group A: 100 users, average revenue $50
- Group B: 10 users, average revenue $200
- Wrong: Average of averages = ($50 + $200) / 2 = $125
- Right: Weighted average = (100*$50 + 10*$200) / 110 = $63.64
How to prevent: Always aggregate from raw data. Never average pre-aggregated averages.
Timezone Mismatches
The problem: Different data sources use different timezones, causing misalignment.
Examples:
- Event timestamps in UTC vs. user-facing dates in local time
- Daily rollups that use different cutoff times
How to prevent: Standardize all timestamps to a single timezone (UTC recommended) before analysis. Document the timezone used.
Selection Bias in Segmentation
The problem: Segments are defined by the outcome you're measuring, creating circular logic.
Examples:
- "Users who completed onboarding have higher retention" -- obviously, they self-selected
- "Power users generate more revenue" -- they became power users BY generating revenue
How to prevent: Define segments based on pre-treatment characteristics, not outcomes.
Other Statistical Traps
- Simpson's paradox: Trend reverses when data is aggregated vs. segmented
- Correlation presented as causation without supporting evidence
- Small sample sizes leading to unreliable conclusions
- Outliers disproportionately affecting averages (should medians be used instead?)
- Multiple testing / cherry-picking significant results
- Look-ahead bias: Using future information to explain past events
- Cherry-picked time ranges that favor a particular narrative
Result Sanity Checking
Magnitude Checks
For any key number in your analysis, verify it passes the "smell test":
| Metric Type | Sanity Check |
|---|---|
| User counts | Does this match known MAU/DAU figures? |
| Revenue | Is this in the right order of magnitude vs. known ARR? |
| Conversion rates | Is this between 0% and 100%? Does it match dashboard figures? |
| Growth rates | Is 50%+ MoM growth realistic, or is there a data issue? |
| Averages | Is the average reasonable given what you know about the distribution? |
| Percentages | Do segment percentages sum to ~100%? |
Cross-Validation Techniques
- Calculate the same metric two different ways and verify they match
- Spot-check individual records -- pick a few specific entities and trace their data manually
- Compare to known benchmarks -- match against published dashboards, finance reports, or prior analyses
- Reverse engineer -- if total revenue is X, does per-user revenue times user count approximately equal X?
- Boundary checks -- what happens when you filter to a single day, a single user, or a single category? Are those micro-results sensible?
Red Flags That Warrant Investigation
- Any metric that changed by more than 50% period-over-period without an obvious cause
- Counts or sums that are exact round numbers (suggests a filter or default value issue)
- Rates exactly at 0% or 100% (may indicate incomplete data)
- Results that perfectly confirm the hypothesis (reality is usually messier)
- Identical values across time periods or segments (suggests the query is ignoring a dimension)
Documentation Standards for Reproducibility
Analysis Documentation Template
Every non-trivial analysis should include:
## Analysis: [Title]
### Question
[The specific question being answered]
### Data Sources
- Table: [schema.table_name] (as of [date])
- Table: [schema.other_table] (as of [date])
- File: [filename] (source: [where it came from])
### Definitions
- [Metric A]: [Exactly how it's calculated]
- [Segment X]: [Exactly how membership is determined]
- [Time period]: [Start date] to [end date], [timezone]
### Methodology
1. [Step 1 of the analysis approach]
2. [Step 2]
3. [Step 3]
### Assumptions and Limitations
- [Assumption 1 and why it's reasonable]
- [Limitation 1 and its potential impact on conclusions]
### Key Findings
1. [Finding 1 with supporting evidence]
2. [Finding 2 with supporting evidence]
### SQL Queries
[All queries used, with comments]
### Caveats
- [Things the reader should know before acting on this]
Code Documentation
For any code (SQL, Python) that may be reused:
"""
Analysis: Monthly Cohort Retention
Author: [Name]
Date: [Date]
Data Source: events table, users table
Last Validated: [Date] -- results matched dashboard within 2%
Purpose:
Calculate monthly user retention cohorts based on first activity date.
Assumptions:
- "Active" means at least one event in the month
- Excludes test/internal accounts (user_type != 'internal')
- Uses UTC dates throughout
Output:
Cohort retention matrix with cohort_month rows and months_since_signup columns.
Values are retention rates (0-100%).
"""
Version Control for Analyses
- Save queries and code in version control (git) or a shared docs system
- Note the date of the data snapshot used
- If an analysis is re-run with updated data, document what changed and why
- Link to prior versions of recurring analyses for trend comparison
Examples
/validate-data Review this quarterly revenue analysis before I send it to the exec team: [analysis]
/validate-data Check my churn analysis -- I'm comparing Q4 churn rates to Q3 but Q4 has a shorter measurement window
/validate-data Here's a SQL query and its results for our conversion funnel. Does the logic look right? [query + results]
Tips
- Run /validate-data before any high-stakes presentation or decision
- Even quick analyses benefit from a sanity check -- it takes a minute and can save your credibility
- If the validation finds issues, fix them and re-validate
- Share the validation output alongside your analysis to build stakeholder confidence
Zeplik output presentation
Present the final deliverable as a single polished artifact: clear headings, tables where the content is tabular, fenced code where it is code. Lead with the deliverable itself; keep process commentary to a single short line. If the skill produced multiple files or sections, end with a compact list of them with one-line purposes.
How to use the Data Validator skill
Sign in to Zeplik
Create a free Zeplik account or sign in. New accounts start with free credits, so you can try the Data Validator skill right away.
Describe your data and analytics task
Ask in plain language, or type /validate-data to invoke the skill directly. Zeplik recognizes the Data Validator skill and applies its method.
Review and refine the result
Zeplik returns a clear, structured answer. Ask follow-ups in the same chat to refine it or take the next step.
Source and credit
- Author
- Anthropic
- License
- Apache-2.0
Adapted from the open-source anthropics/knowledge-work-plugins project and tuned to run natively on Zeplik. View source on GitHub.
Frequently asked questions
- What is the Data Validator skill?
- Data Validator is a ready-to-run data and analytics skill on Zeplik. Use when the user wants an analysis QA'd before sharing: 'sanity-check this analysis', 'does this query look right', 'review my methodology', checking calculations, aggregation logic, bias, and whether the conclusions are actually supported by the data. Ask in plain language and Zeplik applies the skill's method for you inside the conversation, on whichever AI model you prefer.
- How do I use Data Validator on Zeplik?
- Sign in to Zeplik and ask in plain language, or type /validate-data in any chat to invoke it directly. The skill applies its method and returns a result you can refine in the same conversation.
- Which AI model does the Data Validator skill use?
- Any model you choose. Zeplik works across every model in one chat, so the Data Validator skill runs on your preferred model for the task.
- Where does the Data Validator skill come from?
- The Data Validator skill is adapted from the open-source anthropics/knowledge-work-plugins project (Apache-2.0) and tuned to run natively on Zeplik. The original source is linked on this page.
- How much does the Data Validator skill cost?
- Using the skill is free to start. You only spend Zeplik credits when the assistant runs, and new accounts begin with free credits.
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More on Zeplik
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