learn — beamer paper2pr, community, beamer, ide skills, claude-code, paper-review, quarto

v1.0.0

Über diesen Skill

Perfekt für Forschungsagenten, die automatisierte Überprüfungen von AI/ML-Papieren und die Erstellung von präsentationsbereiten Folien via Claude Codes Multi-Agenten-Workflow benötigen. AI/ML Paper → Presentation-ready Beamer + Quarto slides via Claude Code multi-agent workflow

# Core Topics

alohays alohays
[2]
[0]
Updated: 3/16/2026

Killer-Skills Review

Decision support comes first. Repository text comes second.

Reference-Only Page Review Score: 9/11

This page remains useful for operators, but Killer-Skills treats it as reference material instead of a primary organic landing page.

Original recommendation layer Concrete use-case guidance Explicit limitations and caution Quality floor passed for review
Review Score
9/11
Quality Score
65
Canonical Locale
en
Detected Body Locale
en

Perfekt für Forschungsagenten, die automatisierte Überprüfungen von AI/ML-Papieren und die Erstellung von präsentationsbereiten Folien via Claude Codes Multi-Agenten-Workflow benötigen. AI/ML Paper → Presentation-ready Beamer + Quarto slides via Claude Code multi-agent workflow

Warum diese Fähigkeit verwenden

Ermächtigt Agenten, wichtige Erkenntnisse aus AI/ML-Papieren zu extrahieren, wiederverwendbare Fähigkeiten zu generieren und präsentationsbereite Beamer- und Quarto-Folien mit Claude Code zu erstellen, während sie multiagenten-Workflows für einen effizienten Wissensaustausch nutzen und Formate wie Beamer und Quarto unterstützen.

Am besten geeignet für

Perfekt für Forschungsagenten, die automatisierte Überprüfungen von AI/ML-Papieren und die Erstellung von präsentationsbereiten Folien via Claude Codes Multi-Agenten-Workflow benötigen.

Handlungsfähige Anwendungsfälle for learn

Automatisieren von AI/ML-Papier-Überprüfungen für die Extraktion wichtiger Erkenntnisse
Erstellen von präsentationsbereiten Beamer- und Quarto-Folien via Claude Code
Extrahieren von nicht offensichtlichen Entdeckungen in wiederverwendbare Fähigkeiten für einen persistenten Wissensaustausch

! Sicherheit & Einschränkungen

  • Erfordert die Integration des Multi-Agenten-Workflows von Claude Code
  • Begrenzt auf AI/ML-Papier-Überprüfungen und verwandte Wissensbereiche

Why this page is reference-only

  • - Current locale does not satisfy the locale-governance contract.

Source Boundary

The section below is imported from the upstream repository and should be treated as secondary evidence. Use the Killer-Skills review above as the primary layer for fit, risk, and installation decisions.

After The Review

Decide The Next Action Before You Keep Reading Repository Material

Killer-Skills should not stop at opening repository instructions. It should help you decide whether to install this skill, when to cross-check against trusted collections, and when to move into workflow rollout.

Labs Demo

Browser Sandbox Environment

⚡️ Ready to unleash?

Experience this Agent in a zero-setup browser environment powered by WebContainers. No installation required.

Boot Container Sandbox

FAQ & Installation Steps

These questions and steps mirror the structured data on this page for better search understanding.

? Frequently Asked Questions

What is learn?

Perfekt für Forschungsagenten, die automatisierte Überprüfungen von AI/ML-Papieren und die Erstellung von präsentationsbereiten Folien via Claude Codes Multi-Agenten-Workflow benötigen. AI/ML Paper → Presentation-ready Beamer + Quarto slides via Claude Code multi-agent workflow

How do I install learn?

Run the command: npx killer-skills add alohays/paper2pr. It works with Cursor, Windsurf, VS Code, Claude Code, and 19+ other IDEs.

What are the use cases for learn?

Key use cases include: Automatisieren von AI/ML-Papier-Überprüfungen für die Extraktion wichtiger Erkenntnisse, Erstellen von präsentationsbereiten Beamer- und Quarto-Folien via Claude Code, Extrahieren von nicht offensichtlichen Entdeckungen in wiederverwendbare Fähigkeiten für einen persistenten Wissensaustausch.

Which IDEs are compatible with learn?

This skill is compatible with Cursor, Windsurf, VS Code, Trae, Claude Code, OpenClaw, Aider, Codex, OpenCode, Goose, Cline, Roo Code, Kiro, Augment Code, Continue, GitHub Copilot, Sourcegraph Cody, and Amazon Q Developer. Use the Killer-Skills CLI for universal one-command installation.

Are there any limitations for learn?

Erfordert die Integration des Multi-Agenten-Workflows von Claude Code. Begrenzt auf AI/ML-Papier-Überprüfungen und verwandte Wissensbereiche.

How To Install

  1. 1. Open your terminal

    Open the terminal or command line in your project directory.

  2. 2. Run the install command

    Run: npx killer-skills add alohays/paper2pr. The CLI will automatically detect your IDE or AI agent and configure the skill.

  3. 3. Start using the skill

    The skill is now active. Your AI agent can use learn immediately in the current project.

! Reference-Only Mode

This page remains useful for installation and reference, but Killer-Skills no longer treats it as a primary indexable landing page. Read the review above before relying on the upstream repository instructions.

Upstream Repository Material

The section below is imported from the upstream repository and should be treated as secondary evidence. Use the Killer-Skills review above as the primary layer for fit, risk, and installation decisions.

Upstream Source

learn

AI/ML Paper → Presentation-ready Beamer + Quarto slides via Claude Code multi-agent workflow

SKILL.md
Readonly
Upstream Repository Material
The section below is imported from the upstream repository and should be treated as secondary evidence. Use the Killer-Skills review above as the primary layer for fit, risk, and installation decisions.
Supporting Evidence

/learn — Skill Extraction Workflow

Extract non-obvious discoveries into reusable skills that persist across sessions.

When to Use This Skill

Invoke /learn when you encounter:

  • Non-obvious debugging — Investigation that took significant effort, not in docs
  • Misleading errors — Error message was wrong, found the real cause
  • Workarounds — Found a limitation with a creative solution
  • Tool integration — Undocumented API usage or configuration
  • Trial-and-error — Multiple attempts before success
  • Repeatable workflows — Multi-step task you'd do again
  • User-facing automation — Reports, checks, or processes users will request

Workflow Phases

PHASE 1: Evaluate (Self-Assessment)

Before creating a skill, answer these questions:

  1. "What did I just learn that wasn't obvious before starting?"
  2. "Would future-me benefit from this being documented?"
  3. "Was the solution non-obvious from documentation alone?"
  4. "Is this a multi-step workflow I'd repeat?"

Continue only if YES to at least one question.

PHASE 2: Check Existing Skills

Search for related skills to avoid duplication:

bash
1# Check project skills 2ls .claude/skills/ 2>/dev/null 3 4# Search for keywords 5grep -r -i "KEYWORD" .claude/skills/ 2>/dev/null

Outcomes:

  • Nothing related → Create new skill (continue to Phase 3)
  • Same trigger & fix → Update existing skill (bump version)
  • Partial overlap → Update with new variant

PHASE 3: Create Skill

Create the skill file at .claude/skills/[skill-name]/SKILL.md:

yaml
1--- 2name: descriptive-kebab-case-name 3description: | 4 [CRITICAL: Include specific triggers in the description] 5 - What the skill does 6 - Specific trigger conditions (exact error messages, symptoms) 7 - When to use it (contexts, scenarios) 8author: Claude Code Academic Workflow 9version: 1.0.0 10argument-hint: "[expected arguments]" # Optional 11--- 12 13# Skill Name 14 15## Problem 16[Clear problem description — what situation triggers this skill] 17 18## Context / Trigger Conditions 19[When to use — exact error messages, symptoms, scenarios] 20[Be specific enough that you'd recognize it again] 21 22## Solution 23[Step-by-step solution] 24[Include commands, code snippets, or workflows] 25 26## Verification 27[How to verify it worked] 28[Expected output or state] 29 30## Example 31[Concrete example of the skill in action] 32 33## References 34[Documentation links, related files, or prior discussions]

PHASE 4: Quality Gates

Before finalizing, verify:

  • Description has specific trigger conditions (not vague)
  • Solution was verified to work (tested)
  • Content is specific enough to be actionable
  • Content is general enough to be reusable
  • No sensitive information (credentials, personal data)
  • Skill name is descriptive and uses kebab-case

Output

After creating the skill, report:

✓ Skill created: .claude/skills/[name]/SKILL.md
  Trigger: [when to use]
  Problem: [what it solves]

Example: Creating a Skill

User discovers that a specific R package silently drops observations:

markdown
1--- 2name: fixest-missing-covariate-handling 3description: | 4 Handle silent observation dropping in fixest when covariates have missing values. 5 Use when: estimates seem wrong, sample size unexpectedly small, or comparing 6 results between packages. 7author: Claude Code Academic Workflow 8version: 1.0.0 9--- 10 11# fixest Missing Covariate Handling 12 13## Problem 14The fixest package silently drops observations when covariates have NA values, 15which can produce unexpected results when comparing to other packages. 16 17## Context / Trigger Conditions 18- Sample size in fixest is smaller than expected 19- Results differ from Stata or other R packages 20- Model has covariates with potential missing values 21 22## Solution 231. Check for NA patterns before regression: 24 ```r 25 summary(complete.cases(data[, covariates]))
  1. Explicitly handle NA values or use na.action parameter
  2. Document the expected sample size in comments

Verification

Compare nobs(model) with nrow(data) — difference indicates dropped obs.

References

  • fixest documentation on missing values
  • [LEARN:r-code] entry in MEMORY.md

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