Data Analysis
by JinFanZheng
>-
Skill Details
Repository Files
8 files in this skill directory
name: data-analysis description: >- Data analysis and statistical computation. Use when user needs "数据分析/统计/计算指标/数据洞察". Supports general analysis, financial data (stocks, returns), business data (sales, users), and scientific research. Uses pandas/numpy/scikit-learn for processing. Automatically activates data-base for data acquisition. license: MIT compatibility: Requires Python 3.10+, pandas, numpy, scipy allowed-tools: BashRun FsRead FsWrite metadata: category: data tier: analysis version: 1.0.0 author: Kode SDK scenarios: - general - financial - business - scientific
Data Analysis - Statistical Computing & Insights
When to use this skill
Activate this skill when:
- User mentions "数据分析", "统计", "计算指标", "数据洞察"
- Need to analyze structured data (CSV, JSON, database)
- Calculate statistics, trends, patterns
- Financial analysis (returns, volatility, technical indicators)
- Business analytics (sales, user behavior, KPIs)
- Scientific data processing and hypothesis testing
Workflow
1. Get data
⚠️ IMPORTANT: File naming requirements
- File names MUST NOT contain Chinese characters or non-ASCII characters
- Use only English letters, numbers, underscores, and hyphens
- Examples:
data.csv,sales_report_2025.xlsx,analysis_results.json - ❌ Invalid:
销售数据.csv,数据文件.xlsx,報表.json - This ensures compatibility across different systems and prevents encoding issues
If data already exists:
- Read from file (CSV, JSON, Excel)
- Query database if available
If file names contain Chinese characters:
- Ask the user to rename the file to English/ASCII characters
- Or rename the file when saving it to the agent directory
If no data:
- Automatically activate
data-baseskill - Scrape/collect required data
- Save to structured format
2. Understand requirements
Ask the user:
- What questions do you want to answer?
- What metrics are important?
- What format for results? (summary, chart, report)
- Any specific statistical methods?
3. Analyze
General analysis:
- Descriptive statistics (mean, median, std, percentiles)
- Distribution analysis (histograms, box plots)
- Correlation analysis
- Group comparisons
Financial analysis:
- Return calculation (simple, log, cumulative)
- Risk metrics (volatility, VaR, Sharpe ratio)
- Technical indicators (MA, RSI, MACD)
- Portfolio analysis
Business analysis:
- Trend analysis (growth rates, YoY, MoM)
- Cohort analysis
- Funnel analysis
- A/B testing
Scientific analysis:
- Hypothesis testing (t-test, chi-square, ANOVA)
- Regression analysis
- Time series analysis
- Statistical significance
4. Output
Generate results in:
- Summary statistics: Tables with key metrics
- Charts: Save as PNG files
- Report: Markdown with findings
- Data: Processed CSV/JSON for further use
Python Environment
Auto-initialize virtual environment if needed, then execute:
cd skills/data-analysis
if [ ! -f ".venv/bin/python" ]; then
echo "Creating Python environment..."
./setup.sh
fi
.venv/bin/python your_script.py
The setup script auto-installs: pandas, numpy, scipy, scikit-learn, statsmodels, with Chinese font support.
Analysis scenarios
General data
import pandas as pd
# Load and summarize
df = pd.read_csv('data.csv')
summary = df.describe()
correlations = df.corr()
Financial data
# Calculate returns
df['return'] = df['price'].pct_change()
# Risk metrics
volatility = df['return'].std() * (252 ** 0.5)
sharpe = df['return'].mean() / df['return'].std() * (252 ** 0.5)
Business data
# Group by category
grouped = df.groupby('category').agg({
'revenue': ['sum', 'mean', 'count']
})
# Growth rate
df['growth'] = df['revenue'].pct_change()
Scientific data
from scipy import stats
# T-test
t_stat, p_value = stats.ttest_ind(group_a, group_b)
# Regression
from sklearn.linear_model import LinearRegression
model = LinearRegression()
model.fit(X, y)
File path conventions
Temporary output (session-scoped)
Files written to the current directory will be stored in the session directory:
import time
from datetime import datetime
# Use timestamp for unique filenames (avoid conflicts)
timestamp = datetime.now().strftime('%Y%m%d_%H%M%S')
# Charts and temporary files
plt.savefig(f'analysis_{timestamp}.png') # → $KODE_AGENT_DIR/analysis_20250115_143022.png
df.to_csv(f'results_{timestamp}.csv') # → $KODE_AGENT_DIR/results_20250115_143022.csv
Always use unique filenames to avoid conflicts when running multiple analyses:
- Use timestamps:
analysis_20250115_143022.png - Use descriptive names + timestamps:
sales_report_q1_2025.csv - Use random suffix for scripts:
script_{random.randint(1000,9999)}.py
User data (persistent)
Use $KODE_USER_DIR for persistent user data:
import os
user_dir = os.getenv('KODE_USER_DIR')
# Save to user memory
memory_file = f"{user_dir}/.memory/facts/preferences.jsonl"
# Read from knowledge base
knowledge_dir = f"{user_dir}/.knowledge/docs"
Environment variables
KODE_AGENT_DIR: Session directory for temporary output (charts, analysis results)KODE_USER_DIR: User data directory for persistent storage (memory, knowledge, config)
Best practices
- File names MUST be ASCII-only: No Chinese or non-ASCII characters in filenames
- Always inspect data first:
df.head(),df.info(),df.describe() - Handle missing values: Drop or impute based on context
- Check assumptions: Normality, independence, etc.
- Visualize: Charts reveal patterns tables hide
- Document findings: Explain metrics and their implications
- Use correct paths: Temporary outputs to current dir, persistent data to
$KODE_USER_DIR
Quick reference
- REFERENCE.md - pandas/numpy API reference
- references/financial.md - Financial analysis recipes
- references/business.md - Business analytics recipes
- references/scientific.md - Statistical testing methods
- references/templates.md - Code templates
Environment setup
This skill uses Python scripts. To set up the environment:
# Navigate to the skill directory
cd apps/assistant/skills/data-analysis
# Run the setup script (creates venv and installs dependencies)
./setup.sh
# Activate the environment
source .venv/bin/activate
The setup script will:
- Create a Python virtual environment in
.venv/ - Install required packages (pandas, numpy, scipy, scikit-learn, statsmodels)
To run Python scripts with the skill environment:
# Use the virtual environment's Python
.venv/bin/python script.py
# Or activate first, then run normally
source .venv/bin/activate
python script.py
Related Skills
Xlsx
Comprehensive spreadsheet creation, editing, and analysis with support for formulas, formatting, data analysis, and visualization. When Claude needs to work with spreadsheets (.xlsx, .xlsm, .csv, .tsv, etc) for: (1) Creating new spreadsheets with formulas and formatting, (2) Reading or analyzing data, (3) Modify existing spreadsheets while preserving formulas, (4) Data analysis and visualization in spreadsheets, or (5) Recalculating formulas
Clickhouse Io
ClickHouse database patterns, query optimization, analytics, and data engineering best practices for high-performance analytical workloads.
Clickhouse Io
ClickHouse database patterns, query optimization, analytics, and data engineering best practices for high-performance analytical workloads.
Analyzing Financial Statements
This skill calculates key financial ratios and metrics from financial statement data for investment analysis
Data Storytelling
Transform data into compelling narratives using visualization, context, and persuasive structure. Use when presenting analytics to stakeholders, creating data reports, or building executive presentations.
Kpi Dashboard Design
Design effective KPI dashboards with metrics selection, visualization best practices, and real-time monitoring patterns. Use when building business dashboards, selecting metrics, or designing data visualization layouts.
Dbt Transformation Patterns
Master dbt (data build tool) for analytics engineering with model organization, testing, documentation, and incremental strategies. Use when building data transformations, creating data models, or implementing analytics engineering best practices.
Sql Optimization Patterns
Master SQL query optimization, indexing strategies, and EXPLAIN analysis to dramatically improve database performance and eliminate slow queries. Use when debugging slow queries, designing database schemas, or optimizing application performance.
Anndata
This skill should be used when working with annotated data matrices in Python, particularly for single-cell genomics analysis, managing experimental measurements with metadata, or handling large-scale biological datasets. Use when tasks involve AnnData objects, h5ad files, single-cell RNA-seq data, or integration with scanpy/scverse tools.
Xlsx
Spreadsheet toolkit (.xlsx/.csv). Create/edit with formulas/formatting, analyze data, visualization, recalculate formulas, for spreadsheet processing and analysis.
