返回 Skill 列表
extension
分类: 其它无需 API Key

Bytesagain Data Analytics

使用统计摘要、相关分析和数据透视表分析CSV文件。适用于探索新数据集、检查数据质量和查找列相关性。

person作者: loutai0307-proghubclawhub

bytesagain-data-analytics

Terminal data analysis toolkit for CSV files. Compute statistical summaries, correlation matrices, top value rankings, trend charts, data quality reports, and pivot tables — no Python data science libraries required.

Usage

bytesagain-data-analytics describe <csv_file>
bytesagain-data-analytics correlate <csv_file>
bytesagain-data-analytics top <csv_file> <column>
bytesagain-data-analytics trend <csv_file> <column>
bytesagain-data-analytics clean <csv_file>
bytesagain-data-analytics pivot <csv_file> <row_col> <value_col>

Commands

  • describe — Per-column statistics: count, mean, std, percentiles, top categories
  • correlate — Pearson correlation matrix across all numeric columns
  • top — Rank top 15 values in any column with percentage and bar chart
  • trend — ASCII line chart showing value trend over rows with direction indicator
  • clean — Data quality report: null counts, low cardinality, coverage per column
  • pivot — Group by a category column and aggregate a numeric column

Examples

bytesagain-data-analytics describe sales.csv
bytesagain-data-analytics correlate metrics.csv
bytesagain-data-analytics top customers.csv country
bytesagain-data-analytics trend revenue.csv amount
bytesagain-data-analytics clean user-data.csv
bytesagain-data-analytics pivot orders.csv category revenue

Requirements

  • bash
  • python3

When to Use

Use when exploring a new dataset, checking data quality before analysis, finding correlations between metrics, or generating quick visual summaries from CSV exports without opening a spreadsheet.