askill
reporting-pipelines

reporting-pipelinesSafety 90Repository

Reporting pipelines for CSV/JSON/Markdown exports with timestamped outputs, summaries, and post-processing.

23 stars
1.2k downloads
Updated 2/20/2026

Package Files

Loading files...
SKILL.md

Reporting Pipelines

Overview

Your reporting pattern is consistent across repos: run a CLI or script that emits structured data, then export CSV/JSON/markdown reports with timestamped filenames into reports/ or tests/results/.

GitFlow Analytics Pattern

# Basic run
gitflow-analytics -c config.yaml --weeks 8 --output ./reports

# Explicit analyze + CSV
gitflow-analytics analyze -c config.yaml --weeks 12 --output ./reports --generate-csv

Outputs include CSV + markdown narrative reports with date suffixes.

EDGAR CSV Export Pattern

edgar/scripts/create_csv_reports.py reads a JSON results file and emits:

  • executive_compensation_<timestamp>.csv
  • top_25_executives_<timestamp>.csv
  • company_summary_<timestamp>.csv

This script uses pandas for sorting and percentile calculations.

Standard Pipeline Steps

  1. Collect base data (CLI or JSON artifacts)
  2. Normalize into rows/records
  3. Export CSV/JSON/markdown with timestamp suffixes
  4. Summarize key metrics in stdout
  5. Store outputs in reports/ or tests/results/

Naming Conventions

  • Use YYYYMMDD or YYYYMMDD_HHMMSS suffixes
  • Keep one output directory per repo (reports/ or tests/results/)
  • Prefer explicit prefixes (e.g., narrative_report_, comprehensive_export_)

Troubleshooting

  • Missing output: ensure output directory exists and is writable.
  • Large CSVs: filter or aggregate before export; keep summary CSVs for quick review.

Related Skills

  • universal/data/sec-edgar-pipeline
  • toolchains/universal/infrastructure/github-actions

Install

Download ZIP
Requires askill CLI v1.0+

AI Quality Score

88/100Analyzed 3/27/2026

Well-structured universal skill with clear progressive disclosure, practical command examples for GitFlow and EDGAR patterns, and comprehensive pipeline steps. Excellent metadata, tags, and cross-references. Minor gaps in code examples and error handling scenarios. High reusability across projects.

90
88
85
85
80

Metadata

Licenseunknown
Version1.0.0
Updated2/20/2026
Publisherbobmatnyc

Tags

ci-cdgithubobservability