skills/exa-search/SKILL.md
Web toolkit powered by Exa, tuned for scientific and technical content. Use this skill when the user needs to search the web or fetch/extract URL content. Covers: web search (semantic lookups, research, current info — with optional research-paper category and academic domain filtering) and URL extraction (fetching pages, articles, academic PDFs in batch). Use this skill for web-related tasks when the user wants high-quality search or scholarly filtering via category=research paper. Triggers on requests to search, look up, fetch a page, or extract an article.
npx skillsauth add K-Dense-AI/claude-scientific-skills exa-searchInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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A skill for web-powered research tasks backed by Exa: web search and URL extraction. Exa's index combines high-quality keyword and semantic retrieval, which makes it well-suited to scientific, technical, and conceptual queries.
Read the user's request and match it to one of the capabilities below. Read the corresponding reference file for detailed instructions before running commands.
| User wants to... | Capability | Where |
|---|---|---|
| Look something up, research a topic, find current info | Web Search | references/web-search.md |
| Fetch content from a specific URL (webpage, article, PDF) | Web Extract | references/web-extract.md |
| Install or authenticate | Setup | Below |
--category "research paper" to bias toward scholarly sources, and/or an academic --include-domains allowlist. See references/web-search.md for the two-pass academic strategy.For technical or scientific queries, prefer academic and scientific sources:
Two levers to steer Exa toward scholarly content:
--category "research paper" biases retrieval toward scholarly sources.--include-domains with a scholarly allowlist (arxiv.org, nature.com, pubmed.ncbi.nlm.nih.gov, etc.) restricts the domain pool.Combine both for strictly academic results. See references/web-search.md for the full pattern.
When citing academic sources, include author names and publication year where available (e.g., Smith et al., 2025) in addition to the standard citation format. If a DOI is present, prefer the DOI link.
This skill uses the exa-py Python SDK. The scripts in scripts/ declare their dependencies via PEP 723 inline metadata, so you can run them directly with uv run without a separate install step:
uv run --with exa-py python "$SKILL_PATH/scripts/exa_search.py" --help
If you prefer a persistent install:
uv pip install "exa-py>=1.14.0"
All commands read the API key from the EXA_API_KEY environment variable. Get your Exa API key at dashboard.exa.ai/api-keys.
First, check if a .env file exists in the project root and contains EXA_API_KEY. If so, load it:
dotenv -f .env run -- uv run --with exa-py python "$SKILL_PATH/scripts/exa_search.py" "your query"
If dotenv isn't available, install it: pip install python-dotenv[cli] or uv pip install python-dotenv[cli].
If there's no .env, export the key for the session:
export EXA_API_KEY="your-key"
Verify by running any script with --help — it will exit cleanly if the key is set and auth-check runs only when a real query is made.
Every script in this skill sets the x-exa-integration request header to k-dense-ai--scientific-agent-skills so Exa can attribute usage from the K-Dense AI scientific-agent-skills repo to this integration. Do not remove or rename this header when adapting the scripts.
SKILL.md — this file (routing and setup)references/web-search.md — detailed web search reference with academic strategyreferences/web-extract.md — URL content extraction referencescripts/exa_search.py — CLI wrapper around client.search_and_contentsscripts/exa_extract.py — CLI wrapper around client.get_contentsdevelopment
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