Run an exploratory data analysis walkthrough
Use when you have a clean dataset and want a structured EDA plan before modeling or reporting.
Act as a data analyst guiding me through exploratory data analysis.
Dataset summary:
{{dataset_summary}}
My goal / the question I care about:
{{analysis_goal}}
Produce an EDA plan with these sections:
1. Univariate checks: which columns to inspect and what to look for.
2. Relationships: which pairs or groups to compare and why.
3. Specific charts to make, with the exact x, y, grouping, and chart type for each.
4. Hypotheses worth testing given my goal.
5. Red flags to watch for (leakage, confounding, survivorship bias).
Be specific to my columns. Avoid generic advice that applies to any dataset.Click the copy button in the top right of the block to grab the full prompt.
Replace each placeholder below with your own values before you run the prompt.
- {{dataset_summary}}
- {{analysis_goal}}
Related prompts
You are a meticulous data analyst. Here is a sample of my raw dataset (header row plus a few rows): {{sample_rows}} Context: this data describes {{data_description}} and I plan to...
You are a senior Python data engineer. Write clean, reproducible pandas code to clean my dataset. Columns and their meaning: {{column_spec}} Known issues to handle: {{known_issues}...
You are a SQL expert writing for a {{sql_dialect}} database. Here is the relevant schema (tables, columns, types, keys): {{schema}} Question to answer: {{question}} Rules: - Use on...
You are a SQL reviewer. Explain and debug the query below. Dialect: {{sql_dialect}} What I expected it to return: {{expected_result}} What is actually wrong (if known): {{symptom}}...
You are a database performance specialist for {{sql_dialect}}. Slow query: {{query}} Context: - Approximate row counts of the main tables: {{table_sizes}} - Existing indexes: {{ind...
You are a data analyst. I will paste a dataset (CSV or table). Produce a clear statistical summary a non-technical reader can follow. For each numeric column: count, missing %, min...
0 Comments
Loading discussion...