AI + Data Analysis
Read spreadsheets, spot trends, and turn numbers into insights—without being a data scientist
1. You Don't Need to Be a Data Scientist
Most professionals say they "can't do data analysis." What they really mean: they don't know SQL, they haven't memorized statistics formulas, and they're intimidated by spreadsheets.
But here's the truth: Claude can do the technical work. Your job is to ask the right questions and interpret the answers.
Paste data into Claude. Ask what you want to know. Claude will find patterns, calculate trends, spot outliers, and explain what it means in plain English.
What's Possible
- Spot trends: Growth month-over-month, seasonal patterns, anomalies
- Summarize tables: Turn 500 rows into a 5-bullet insight
- Calculate stats: Average, median, percentiles, growth rates, percentages
- Find outliers: Which items are performing best or worst?
- Write formulas: Excel, Google Sheets—Claude can build them
- Compare periods: This quarter vs. last, this year vs. last year
- Interpret dashboards: Paste a screenshot, ask "what should I worry about?"
2. Working with Spreadsheets and CSVs
The workflow is simple: select data → copy → paste into Claude → ask a question.
Here's a real example. Paste this CSV data into Claude:
Once you paste this, here are four different analyses you can run on the same dataset:
Analysis 1: Trends
Analysis 2: Outliers
Analysis 3: Summary Stats
Analysis 4: Recommendations
Learn CSV basics: Microsoft Office CSV import/export guide
3. Asking the Right Data Questions
Bad prompt: "Analyze this data."
Good prompt: "In this dataset, which month had the highest growth rate? Show your calculation. What might explain this growth?"
Use the DATA framework:
D = Describe the data
What does each column represent? What time period? How many rows?
A = Ask a specific question
Don't say "analyze it." Say "Which product had the highest growth rate?" or "Is there a seasonal pattern?"
T = Tell Claude the output format
"Show results as a table" or "Give me a bulleted summary" or "Write an executive summary"
A = Ask for the reasoning
"Show your work" or "Explain the calculation" so you understand how Claude got the answer
Here are 5 before/after examples:
Example 1: Finance Data
Bad:
"Look at our expense data and tell me what's happening."
Example 2: HR Data
Bad:
"Analyze our turnover."
Example 3: Marketing Data
Bad:
"What's our ROI?"
Example 4: Operations Data
Bad:
"How are we doing on inventory?"
Example 5: Sales Data
Bad:
"Show me our pipeline."
4. Charts, Reports, and Presentations
Claude can also help you turn data into narratives. Once you have the insights, use Claude to write the story for slides, reports, and presentations.
Use Case 1: Write Chart Titles and Descriptions
Use Case 2: Create a Data Story
Use Case 3: Executive Summary
Use Case 4: Turn Numbers Into Insight
The Data → Insight Workflow
(CSV, spreadsheet)
(trends, stats, insights)
(narrative, key takeaway)
(presentation-ready)
Learn more about data storytelling: Storytelling with Data blog
Hands-On: Analyze Real Data
In 25 minutes, take a real spreadsheet and turn it into actionable insights using Claude.
- Step 1: Open any spreadsheet you have at work (sales, budget, operations, inventory, anything)
- Step 2: Select 10-20 rows and copy them as CSV format (include headers)
- Step 3: Paste into Claude with your first analysis prompt
- Step 4: Ask a follow-up question based on the first result
- Step 5: Ask Claude to write a 3-sentence summary of what the data shows
- Step 6: Copy the summary into an email or Slack message and send it to your team
Template 1: Financial Data
For expense, budget, or revenue data:
Template 2: Operational Data
For inventory, production, or process metrics:
Quick Reference: Data Analysis Prompts
Which metric is growing? By how much month-over-month? Is the growth accelerating?
What's unusual or surprising in this data? What's the best and worst performer?
Show me: average, total, percentage change, growth rate, and ranking
Write a 3-sentence summary of the key findings. What should I tell my boss?
How does this quarter compare to last? Same time last year? Show percentage differences.
Turn this analysis into a compelling narrative for a presentation. One key takeaway sentence.