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arthurnie

Academic Search

by ArthurNie · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install academic-search
Description
Conducts systematic searches across arXiv, Google Scholar, and Semantic Scholar to find, analyze, and summarize the top 5 relevant academic papers with full...
README (SKILL.md)

Role

You are an Academic Research Specialist. When activated, you systematically search academic databases (arXiv, Google Scholar, Semantic Scholar), screen abstracts for relevance, analyze citation networks, and synthesize findings into structured research summaries. You find the Top 5 most relevant papers on any topic within 2 minutes.

Capabilities

  1. Construct database-specific search queries using arXiv category codes, Semantic Scholar field-of-study filters, and Google Scholar advanced operators to maximize recall across academic sources
  2. Screen paper abstracts against user-defined relevance criteria, extracting key findings, methodology, and contribution claims to rapidly triage large result sets
  3. Analyze citation graphs to identify seminal works, survey papers, and emerging research fronts using Semantic Scholar's citation and reference APIs
  4. Cross-reference findings across multiple databases to deduplicate results, verify publication status (preprint vs. peer-reviewed), and assess paper quality through venue ranking and citation velocity
  5. Synthesize research results into structured literature summaries with thematic grouping, methodology comparison, and identification of research gaps

Constraints

  1. Never present a preprint as peer-reviewed -- always indicate publication status (preprint, accepted, published) and venue when available
  2. Never rank papers solely by citation count -- always consider recency, methodology quality, venue reputation, and relevance to the specific query
  3. Never return results without verifying they are actual academic papers -- exclude blog posts, news articles, and non-scholarly content that may appear in search results
  4. Always disclose when a paper is behind a paywall and attempt to locate open-access versions (arXiv preprint, institutional repository, author's homepage)
  5. Always include bibliographic metadata: authors, year, venue/journal, DOI or arXiv ID for every paper returned
  6. Never fabricate or hallucinate paper titles, authors, or findings -- only return results actually retrieved from academic databases

Activation

WHEN the user requests academic paper search, literature review, or research discovery:

  1. Analyze the research query to identify: topic, discipline, time scope, methodology preferences, and desired depth
  2. Extract domain-specific keywords following strategies/main.md Step 1
  3. Construct database-specific queries using knowledge/domain.md for API patterns and query syntax
  4. Execute parallel searches across arXiv, Google Scholar, and Semantic Scholar
  5. Screen and rank results using knowledge/best-practices.md criteria
  6. Verify against knowledge/anti-patterns.md to avoid common academic search mistakes
  7. Output a ranked list of Top 5 papers with full bibliographic metadata, key findings, and a synthesis narrative

Dependency Usage

This skill extends @botlearn/google-search capabilities:

  • Uses google-search query construction for Google Scholar operator syntax (site:scholar.google.com, intitle:, date filters)
  • Leverages google-search source credibility assessment for ranking .edu and .gov hosted papers
  • Applies google-search deduplication strategies when the same paper appears across multiple databases
Usage Guidance
This skill appears internally consistent with its goal of finding and synthesizing academic papers. Before installing, consider: (1) runtime needs — the agent will make outbound web/API requests (arXiv, Semantic Scholar, Google Scholar via a google-search helper) so the agent must have network access; (2) rate limits and robustness — Semantic Scholar has rate limits and benefits from an API key (not required here), and Google Scholar scraping is fragile and may be blocked or violate Google terms; (3) paywalled content — the skill will attempt to locate open-access copies but cannot bypass paywalls; verify any paywalled items through your institution if needed; (4) provenance — the package metadata points to a GitHub repo in package.json/README; if you want stronger assurances, review that upstream repository and the @botlearn/google-search dependency before use; (5) verification — because outputs are API-driven, spot-check returned bibliographic metadata (DOIs, arXiv IDs, venues) when accuracy matters. If you expect heavy or repeated use, consider provisioning a Semantic Scholar API key (to improve rate limits) and be aware of Google Scholar access limitations.
Capability Analysis
Type: OpenClaw Skill Name: academic-search Version: 1.0.0 The academic-search skill bundle is a well-structured and legitimate tool designed for systematic academic literature reviews across arXiv, Semantic Scholar, and Google Scholar. The instructions in SKILL.md and strategies/main.md provide a professional research workflow, including query decomposition, citation graph analysis, and metadata verification, with explicit constraints against hallucination and misrepresentation of peer-review status. No indicators of data exfiltration, malicious execution, or prompt injection were found.
Capability Assessment
Purpose & Capability
The name/description (Academic Search) matches the SKILL.md and knowledge files: it documents arXiv, Semantic Scholar, and Google Scholar query strategies, citation analysis, deduplication, and synthesis. The dependency on @botlearn/google-search is declared in manifest/package.json and is consistent with the stated intent to route Google Scholar queries via a helper. There are no unrelated environment variables, binaries, or config paths requested.
Instruction Scope
The SKILL.md instructs the agent to execute parallel searches against arXiv, Semantic Scholar, and Google Scholar and to follow multi-step screening, deduplication, and citation-graph analysis. That scope is coherent with the stated purpose. Notes of operational relevance: (1) Google Scholar has no official public API and the skill relies on a google-search helper (declared) for Scholar queries — this is fragile and may trigger blocking or ToS issues; (2) the Semantic Scholar usage assumes API access but does not declare or require an API key (Semantic Scholar allows limited unauthenticated requests but higher-rate access requires a key); (3) instructions call out visiting author homepages and external links to find open-access copies, which is expected but means the agent will access arbitrary external URLs.
Install Mechanism
There is no install spec and no code will be downloaded/executed by the platform beyond reading the SKILL.md and bundled documentation. This is the lowest-risk install posture. The package manifests and README reference an upstream repo, but nothing in the skill attempts to fetch or run external archives during install.
Credentials
The skill requests no environment variables, credentials, or config paths, which is proportionate. Practical caveat: Semantic Scholar and some scraping helpers can operate unauthenticated at reduced rates — if higher throughput is needed the agent or user might add a Semantic Scholar API key later, but that is not required by this package. No secrets are requested up front, which aligns with the skill's described behavior.
Persistence & Privilege
always:false and no special system-level persistence is requested. disable-model-invocation is false (default), meaning the skill can be invoked by the agent autonomously — this is platform default and not flagged alone. The skill does not request modifying other skills or system settings.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install academic-search
  3. After installation, invoke the skill by name or use /academic-search
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release of the academic-search skill. - Systematically searches academic databases (arXiv, Google Scholar, Semantic Scholar) to find the Top 5 most relevant papers on any topic. - Screens abstracts for relevance and analyzes citation networks to surface seminal and current research. - Synthesizes findings into structured literature summaries with thematic grouping and methodology comparison. - Clearly indicates publication status (preprint, accepted, published), open-access availability, and provides full bibliographic metadata. - Rigorously excludes non-scholarly content and avoids ranking by citation count alone, ensuring high-quality, relevant academic results.
Metadata
Slug academic-search
Version 1.0.0
License MIT-0
All-time Installs 12
Active Installs 11
Total Versions 1
Frequently Asked Questions

What is Academic Search?

Conducts systematic searches across arXiv, Google Scholar, and Semantic Scholar to find, analyze, and summarize the top 5 relevant academic papers with full... It is an AI Agent Skill for Claude Code / OpenClaw, with 1805 downloads so far.

How do I install Academic Search?

Run "/install academic-search" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Academic Search free?

Yes, Academic Search is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Academic Search support?

Academic Search is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Academic Search?

It is built and maintained by ArthurNie (@arthurnie); the current version is v1.0.0.

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