TacoSkill LABTacoSkill LAB

The full-lifecycle AI skills platform.

DiscordFeedback

Product

  • SkillHub
  • Playground
  • Skill Create
  • SkillKit

Resources

  • Help Center
  • Privacy
  • Terms
  • About

Platforms

  • Claude Code
  • Cursor
  • Codex CLI
  • Gemini CLI
  • OpenCode

© 2026 TacoSkill LAB. All rights reserved.

TacoSkill LAB
TacoSkill LAB
HomeSkillHubCreatePlaygroundLeaderboardSkillKit
  1. Home
  2. /
  3. SkillHub
  4. /
  5. exploratory-data-analysis
Improve

exploratory-data-analysis

8.3

by K-Dense-AI

0Views
187Favorites
342Upvotes
0Downvotes

Perform comprehensive exploratory data analysis on scientific data files across 200+ file formats. This skill should be used when analyzing any scientific data file to understand its structure, content, quality, and characteristics. Automatically detects file type and generates detailed markdown reports with format-specific analysis, quality metrics, and downstream analysis recommendations. Covers chemistry, bioinformatics, microscopy, spectroscopy, proteomics, metabolomics, and general scientific data formats.

EDA

8.3

Rating

0

Installs

Data & Analytics

Category

Quick Review

Exceptional skill for scientific data analysis across 200+ file formats. The description clearly conveys the skill's scope and invocation criteria. Task knowledge is comprehensive with detailed workflows, format-specific guidance across 6 scientific domains, and practical code examples. Structure is excellent—SKILL.md provides clear overview and workflow while delegating format details to 6 organized reference files. High novelty: a CLI agent would struggle significantly with scientific format detection, format-specific analysis strategies, and domain-appropriate recommendations across chemistry, genomics, microscopy, spectroscopy, proteomics, and general scientific data. The skill meaningfully reduces token costs by providing pre-organized format knowledge, analysis templates, and domain expertise that would otherwise require extensive prompting. Minor improvement opportunity: could include more explicit error handling patterns in the workflow section.

LLM Signals

Description coverage9
Task knowledge10
Structure9
Novelty9

GitHub Signals

6,871
818
49
3
Last commit 1 days ago

Publisher

K-Dense-AI logo
K-Dense-AI

Skill Author

Related Skills

database-optimizerpandas-prospark-engineer

Loading SKILL.md…

Try onlineView on GitHub

Publisher

K-Dense-AI logo
K-Dense-AI

Skill Author

Related Skills

database-optimizer

Jeffallan

6.5

pandas-pro

Jeffallan

6.4

spark-engineer

Jeffallan

6.4

xlsx

mrgoonie

7.2
Try online