analyze
Answer data questions -- from quick lookups to full analyses. Use when looking up a single metric, investigating what's driving a trend or drop, comparing segments over time, or preparing a formal data report for stakeholders.
Best use case
analyze is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Answer data questions -- from quick lookups to full analyses. Use when looking up a single metric, investigating what's driving a trend or drop, comparing segments over time, or preparing a formal data report for stakeholders.
Teams using analyze should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/analyze/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How analyze Compares
| Feature / Agent | analyze | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Answer data questions -- from quick lookups to full analyses. Use when looking up a single metric, investigating what's driving a trend or drop, comparing segments over time, or preparing a formal data report for stakeholders.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
Related Guides
AI Agents for Marketing
Discover AI agents for marketing workflows, from SEO and content production to campaign research, outreach, and analytics.
AI Agents for Startups
Explore AI agent skills for startup validation, product research, growth experiments, documentation, and fast execution with small teams.
AI Agents for Coding
Browse AI agent skills for coding, debugging, testing, refactoring, code review, and developer workflows across Claude, Cursor, and Codex.
SKILL.md Source
# /analyze - Answer Data Questions > If you see unfamiliar placeholders or need to check which tools are connected, see [CONNECTORS.md](../../CONNECTORS.md). Answer a data question, from a quick lookup to a full analysis to a formal report. ## Usage ``` /analyze <natural language question> ``` ## Workflow ### 1. Understand the Question Parse the user's question and determine: - **Complexity level**: - **Quick answer**: Single metric, simple filter, factual lookup (e.g., "How many users signed up last week?") - **Full analysis**: Multi-dimensional exploration, trend analysis, comparison (e.g., "What's driving the drop in conversion rate?") - **Formal report**: Comprehensive investigation with methodology, caveats, and recommendations (e.g., "Prepare a quarterly business review of our subscription metrics") - **Data requirements**: Which tables, metrics, dimensions, and time ranges are needed - **Output format**: Number, table, chart, narrative, or combination ### 2. Gather Data **If a data warehouse MCP server is connected:** 1. Explore the schema to find relevant tables and columns 2. Write SQL query(ies) to extract the needed data 3. Execute the query and retrieve results 4. If the query fails, debug and retry (check column names, table references, syntax for the specific dialect) 5. If results look unexpected, run sanity checks before proceeding **If no data warehouse is connected:** 1. Ask the user to provide data in one of these ways: - Paste query results directly - Upload a CSV or Excel file - Describe the schema so you can write queries for them to run 2. If writing queries for manual execution, use the `sql-queries` skill for dialect-specific best practices 3. Once data is provided, proceed with analysis ### 3. Analyze - Calculate relevant metrics, aggregations, and comparisons - Identify patterns, trends, outliers, and anomalies - Compare across dimensions (time periods, segments, categories) - For complex analyses, break the problem into sub-questions and address each ### 4. Validate Before Presenting Before sharing results, run through validation checks: - **Row count sanity**: Does the number of records make sense? - **Null check**: Are there unexpected nulls that could skew results? - **Magnitude check**: Are the numbers in a reasonable range? - **Trend continuity**: Do time series have unexpected gaps? - **Aggregation logic**: Do subtotals sum to totals correctly? If any check raises concerns, investigate and note caveats. ### 5. Present Findings **For quick answers:** - State the answer directly with relevant context - Include the query used (collapsed or in a code block) for reproducibility **For full analyses:** - Lead with the key finding or insight - Support with data tables and/or visualizations - Note methodology and any caveats - Suggest follow-up questions **For formal reports:** - Executive summary with key takeaways - Methodology section explaining approach and data sources - Detailed findings with supporting evidence - Caveats, limitations, and data quality notes - Recommendations and suggested next steps ### 6. Visualize Where Helpful When a chart would communicate results more effectively than a table: - Use the `data-visualization` skill to select the right chart type - Generate a Python visualization or build it into an HTML dashboard - Follow visualization best practices for clarity and accuracy ## Examples **Quick answer:** ``` /analyze How many new users signed up in December? ``` **Full analysis:** ``` /analyze What's causing the increase in support ticket volume over the past 3 months? Break down by category and priority. ``` **Formal report:** ``` /analyze Prepare a data quality assessment of our customer table -- completeness, consistency, and any issues we should address. ``` ## Tips - Be specific about time ranges, segments, or metrics when possible - If you know the table names, mention them to speed up the process - For complex questions, Claude may break them into multiple queries - Results are always validated before presentation -- if something looks off, Claude will flag it
Related Skills
pipeline-review
Analyze pipeline health — prioritize deals, flag risks, get a weekly action plan. Use when running a weekly pipeline review, deciding which deals to focus on this week, spotting stale or stuck opportunities, auditing for hygiene issues like bad close dates, or identifying single-threaded deals.
forecast
Generate a weighted sales forecast with best/likely/worst scenarios, commit vs. upside breakdown, and gap analysis. Use when preparing a quarterly forecast call, assessing gap-to-quota from a pipeline CSV, deciding which deals to commit vs. call upside, or checking pipeline coverage against your number.
draft-outreach
Research a prospect then draft personalized outreach. Uses web research by default, supercharged with enrichment and CRM. Trigger with "draft outreach to [person/company]", "write cold email to [prospect]", "reach out to [name]".
daily-briefing
Start your day with a prioritized sales briefing. Works standalone when you tell me your meetings and priorities, supercharged when you connect your calendar, CRM, and email. Trigger with "morning briefing", "daily brief", "what's on my plate today", "prep my day", or "start my day".
create-an-asset
Generate tailored sales assets (landing pages, decks, one-pagers, workflow demos) from your deal context. Describe your prospect, audience, and goal — get a polished, branded asset ready to share with customers.
competitive-intelligence
Research your competitors and build an interactive battlecard. Outputs an HTML artifact with clickable competitor cards and a comparison matrix. Trigger with "competitive intel", "research competitors", "how do we compare to [competitor]", "battlecard for [competitor]", or "what's new with [competitor]".
call-summary
Process call notes or a transcript — extract action items, draft follow-up email, generate internal summary. Use when pasting rough notes or a transcript after a discovery, demo, or negotiation call, drafting a customer follow-up, logging the activity for your CRM, or capturing objections and next steps for your team.
update
Sync tasks and refresh memory from your current activity. Use when pulling new assignments from your project tracker into TASKS.md, triaging stale or overdue tasks, filling memory gaps for unknown people or projects, or running a comprehensive scan to catch todos buried in chat and email.
task-management
Simple task management using a shared TASKS.md file. Reference this when the user asks about their tasks, wants to add/complete tasks, or needs help tracking commitments.
memory-management
Two-tier memory system that makes Claude a true workplace collaborator. Decodes shorthand, acronyms, nicknames, and internal language so Claude understands requests like a colleague would. CLAUDE.md for working memory, memory/ directory for the full knowledge base.
write-spec
Write a feature spec or PRD from a problem statement or feature idea. Use when turning a vague idea or user request into a structured document, scoping a feature with goals and non-goals, defining success metrics and acceptance criteria, or breaking a big ask into a phased spec.
synthesize-research
Synthesize user research from interviews, surveys, and feedback into structured insights. Use when you have a pile of interview notes, survey responses, or support tickets to make sense of, need to extract themes and rank findings by frequency and impact, or want to turn raw feedback into roadmap recommendations.