data-cog
Your data has answers. CellCog asks the right questions. #1 on DeepResearch Bench (Feb 2026) + frontier coding agent — upload messy CSVs with minimal prompting and get structured insights back: charts, dashboards, statistical reports, and clean data. Full Python access for data cleaning, exploratory analysis, visualization, hypothesis testing, ML model evaluation, and dataset profiling. Analyzes everything, presents it beautifully.
技能说明
name: data-cog description: "Your data has answers. CellCog asks the right questions. #1 on DeepResearch Bench (Feb 2026) + frontier coding agent — upload messy CSVs with minimal prompting and get structured insights back: charts, dashboards, statistical reports, and clean data. Full Python access for data cleaning, exploratory analysis, visualization, hypothesis testing, ML model evaluation, and dataset profiling. Analyzes everything, presents it beautifully." metadata: openclaw: emoji: "🔢" author: CellCog dependencies: [cellcog]
Data Cog - Your Data Has Answers, CellCog Finds Them
Your data has answers. CellCog asks the right questions. #1 on DeepResearch Bench (Feb 2026) + frontier coding agent.
Most AI tools return code when you ask about data. CellCog returns answers — actual charts, clean datasets, statistical reports, and visual dashboards. Upload messy CSVs with a minimal prompt, and CellCog's coding agent explores your data, finds the patterns, and presents them beautifully. Full Python access for everything from data cleaning to ML model evaluation.
Prerequisites
This skill requires the cellcog skill for SDK setup and API calls.
clawhub install cellcog
Read the cellcog skill first for SDK setup. This skill shows you what's possible.
Quick pattern (v1.0+):
# Fire-and-forget - returns immediately
result = client.create_chat(
prompt="Analyze this dataset: <SHOW_FILE>/path/to/data.csv</SHOW_FILE>",
notify_session_key="agent:main:main",
task_label="data-analysis",
chat_mode="agent" # Agent mode for most data work
)
# Daemon notifies you when complete - do NOT poll
What Makes Data-Cog Different
Code as Tool, Not as Output
Other AI tools give you Python code and say "run this." CellCog runs the code for you and delivers the results:
| Other AI Tools | Data-Cog |
|---|---|
| "Here's a pandas script to analyze your data" | Here are your actual insights with charts |
| "Run this matplotlib code to see the chart" | Here's the chart, annotated with findings |
| "This SQL query will find outliers" | Found 23 outliers, here's what they mean |
| "You'll need scikit-learn for this" | Model trained, here's accuracy and feature importance |
You upload data. You get answers. The code runs behind the scenes.
What Data Work You Can Do
Exploratory Data Analysis
Understand your data fast:
- Dataset Profiling: "Analyze this CSV — distributions, missing values, outliers, correlations, and data quality summary"
- Pattern Discovery: "What patterns and trends exist in this sales data? Surprise me."
- Anomaly Detection: "Find unusual patterns in this server log data — what looks abnormal?"
- Relationship Analysis: "What factors most strongly correlate with customer churn in this dataset?"
Example prompt:
"Analyze this dataset: <SHOW_FILE>/path/to/customer_data.csv</SHOW_FILE>
I don't know much about this data yet. Give me:
- Overview: rows, columns, data types, missing values
- Key distributions and summary statistics
- Most interesting correlations
- Any outliers or data quality issues
- 3-5 insights that jump out
Present findings as an interactive HTML report with charts."
Data Cleaning & Transformation
Wrangle messy data into shape:
- Clean Messy Data: "Clean this CSV — fix inconsistent date formats, handle missing values, remove duplicates, standardize column names"
- Data Transformation: "Pivot this transaction data into a monthly summary by product category"
- Data Merging: "Join these three CSV files on customer_id and create a unified dataset"
- Feature Engineering: "Create useful features from this raw data for predicting house prices"
Example prompt:
"Clean and transform this dataset: <SHOW_FILE>/path/to/messy_data.csv</SHOW_FILE>
Issues I know about:
- Dates are in mixed formats (MM/DD/YYYY and YYYY-MM-DD)
- 'Revenue' column has some values with $ signs and commas
- Duplicate rows exist
- Missing values in 'Region' column
Clean it up and give me back a clean CSV plus a summary of what you changed."
Statistical Analysis
Rigorous analysis with real numbers:
- Hypothesis Testing: "Is there a statistically significant difference in conversion rates between our A and B variants?"
- Regression Analysis: "What factors predict employee salary in this HR dataset? Build a regression model."
- Time Series Analysis: "Analyze this monthly revenue data — trend, seasonality, and forecast next 6 months"
- Cohort Analysis: "Create a cohort analysis showing user retention by signup month"
Example prompt:
"I ran an A/B test on our checkout page: <SHOW_FILE>/path/to/ab_test_results.csv</SHOW_FILE>
Columns: user_id, variant (A or B), converted (0/1), revenue, timestamp
Tell me:
- Is variant B statistically better? (p-value, confidence interval)
- Conversion rate difference
- Revenue per user difference
- Sample size adequacy check
- My recommendation: ship B or keep testing?
Present with clear charts and a plain-English conclusion."
Visualization & Reporting
Turn data into visual stories:
- Chart Generation: "Create a set of charts showing our quarterly performance from this data"
- Dashboard Reports: "Build an interactive dashboard from this sales dataset with filters by region and product"
- Presentation-Ready Visuals: "Create publication-quality charts from this research data"
- Comparison Visuals: "Visualize how our metrics compare to industry benchmarks"
Machine Learning
Applied ML without the setup:
- Classification: "Predict which customers will churn based on this dataset — train a model, show feature importance"
- Clustering: "Segment these customers into groups based on behavior — how many natural clusters exist?"
- Forecasting: "Forecast next quarter's sales using this historical data"
- Model Evaluation: "I trained a model — here are the predictions. Evaluate: accuracy, precision, recall, confusion matrix, ROC curve"
Example prompt:
"Predict customer churn from this dataset: <SHOW_FILE>/path/to/customer_features.csv</SHOW_FILE>
Target column: 'churned'
- Train a model, try at least 2 algorithms
- Show feature importance — what drives churn?
- Confusion matrix and ROC curve
- Plain-English summary: 'The top 3 reasons customers churn are...'
- Actionable recommendations based on findings
I want insights, not just metrics."
Supported Data Formats
| Format | How to Send |
|---|---|
| CSV | Upload via SHOW_FILE |
| Excel (XLSX) | Upload via SHOW_FILE |
| JSON | Upload via SHOW_FILE |
| Parquet | Upload via SHOW_FILE |
| SQL exports | Upload the dump via SHOW_FILE |
| Inline data | Describe small datasets directly in prompt |
Output Formats
| Format | Best For |
|---|---|
| Interactive HTML Dashboard | Explorable charts, filters, drill-downs |
| PDF Report | Shareable analysis reports with charts and findings |
| Clean CSV/XLSX | Cleaned or transformed data files for downstream use |
| Markdown | Quick insights for integration into docs |
Chat Mode for Data
| Scenario | Recommended Mode |
|---|---|
| Quick data cleaning, simple charts, basic statistics | "agent" |
| Deep analysis with multiple techniques, ML modeling, comprehensive reports | "agent team" |
Use "agent" for most data work. Data cleaning, EDA, chart generation, and standard statistical analysis execute well in agent mode.
Use "agent team" for complex analytical projects — multi-technique analysis, ML model comparisons, or when you need deep domain reasoning about what the data means.
Example Prompts
Minimal prompt, maximum insight:
"Analyze this: <SHOW_FILE>/path/to/data.csv</SHOW_FILE>
Tell me everything interesting."
That's it. CellCog's coding agent will profile the data, run exploratory analysis, find patterns, and present findings with charts. You don't need to know what to ask — the agent figures it out.
Business analysis:
"Analyze our e-commerce data: <SHOW_FILE>/path/to/orders.csv</SHOW_FILE>
I need:
- Revenue trends (daily, weekly, monthly)
- Best and worst performing products
- Customer purchase frequency distribution
- Average order value trends
- Seasonal patterns
- Top 5 actionable insights for growing revenue
Interactive HTML dashboard with all charts."
Research data analysis:
"Analyze this survey data from 500 respondents: <SHOW_FILE>/path/to/survey.csv</SHOW_FILE>
Research questions:
- Is there a significant relationship between age group and product preference?
- Do satisfaction scores differ by region? (ANOVA)
- What factors best predict likelihood to recommend? (regression)
Include: statistical tests, p-values, effect sizes, and publication-ready charts. PDF report format."
Tips for Better Data Analysis
-
Just upload and ask: You don't need to describe every column. CellCog reads the data and figures out what's there.
-
State your question: "What drives churn?" is more focused than "Analyze this data." Both work, but the first gets faster results.
-
Mention the audience: "For my CEO" means executive summary. "For the data team" means show the methodology.
-
Specify what you'll do with it: "I need to present this to the board" vs "I need clean data for my ML pipeline" — context shapes the output.
-
Don't over-specify methods: Let CellCog choose the right statistical approach. Say what you want to learn, not which algorithm to use.
-
Iterate: Upload data → get initial analysis → ask follow-up questions → go deeper. CellCog maintains context across messages.
如何使用「data-cog」?
- 打开小龙虾AI(Web 或 iOS App)
- 点击上方「立即使用」按钮,或在对话框中输入任务描述
- 小龙虾AI 会自动匹配并调用「data-cog」技能完成任务
- 结果即时呈现,支持继续对话优化