firecrawl-research-index

Trouvez les articles qui répondent à une requête de recherche avec Firecrawl Research, en utilisant la recherche sémantique, l'expansion sémantique et structurelle, et la vérification dans le corps du texte. Utilisez toujours cette compétence pour toute tâche de recherche d'articles ou de récupération de documents — qu'il s'agisse de consulter un seul article ou un ensemble complet de plusieurs articles.

npx skills add https://github.com/firecrawl/skills --skill firecrawl-research-index

Firecrawl Research Index

Find the research papers that answer a research query. Some questions have a single answer; many have several — and when in doubt, lean toward returning the fuller relevant set (most relevant first) rather than narrowing to one. A reader is better served seeing the neighboring methods and papers than having them silently dropped.

There is no fixed recipe. Read the query, decide what kind it is, and choose the approach below. Some queries need a single search; others need heavy sturctural/semantic expansion. Don't run machinery a query doesn't call for.

The tools, and what each is uniquely good at

  • MCP: firecrawl_research_search_papers(query, k?) CLI: firecrawl research search-papers <query> [--k <number>] Semantic (HyDE) search over abstracts. The natural first move for almost any query. If results look thin or all-alike, re-run with a different framing (sibling domain, rival method, dataset/benchmark name) rather than giving up.

  • MCP: firecrawl_research_related_papers(seed_ids, intent, mode?, k?) CLI: firecrawl research related-papers <seedIds...> --intent <intent> [--mode <similar|citers|references>] [--k <number>] Semantic and structural expansion, ranked to your intent. This reaches papers semantic search cannot, and it's how you turn one good hit into the rest of a set. mode=similar → niche siblings; citers → who uses/builds on the seeds; references → what they build on / compare against.

  • MCP: firecrawl_research_inspect_paper(id) CLI: firecrawl research inspect-paper <id> Canonical metadata for one paper: title, abstract, authors, categories, source ids, and dates. Use it after search_papers or related_papers when you need the complete citation/metadata for a candidate, or when you have an id from elsewhere and need to confirm what paper it resolves to. This does not read the paper body; use read_paper for specific full-text questions.

  • MCP: firecrawl_research_read_paper(id, question) CLI: firecrawl research read-paper <id> --question <question> In-body passages of one paper, to verify a load-bearing constraint (a method actually used, a score actually reported, an affiliation, what a paper compares to). Use it to settle a specific doubt, not on everything.

  • MCP: firecrawl_search(query) / firecrawl_scrape(url) CLI: firecrawl search <query> / firecrawl scrape <url> General web search and page fetch, for facts that don't live in paper abstracts: benchmark leaderboards, rankings, "who scores best / is largest / is most used." Find the ranking on the web, then map the top entries back to papers with search_papers. Reach for these only when the corpus can't answer the question on its own.

Match the approach to the query

  • Single named paper ("the Qwen3 report") → one search_papers, done. This is the only case that truly wants exactly one paper.
  • Paper by description / by method or technique ("the paper that introduced X", "training-free N-gram detection of AI text") → find the best match, then assume there's a family: expand with related_papers and include the closely-related methods/papers too. Even when one paper is the exact literal match, surface and keep its neighbors — don't narrow to the single best hit and reason the rest out. Only treat it as one-answer if the query names a specific paper.
  • Enumeration / method-family ("papers that do X", "alternatives to Adam", "benchmarks for Y") → the answer is a set, and this is where related_papers earns its keep: expand several strong anchors with mode=similar, re-seed from new strong hits. One search is never enough here.
  • Exhibiting ("papers that use / exhibit property P") → the relevant papers apply P but their abstracts may not describe it. Go from P's defining paper outward via citers/references, and use read_paper to confirm a candidate actually uses P.
  • Superlative / leaderboard ("best on benchmark X", "largest", "most popular") → the ranking lives on leaderboards / the web, not in any single abstract. Use firecrawl_search / firecrawl_scrape to find the benchmark's leaderboard or rankings, read off the top models/papers, then search_papers each to get its paper. As a fallback, search the benchmark and read_paper candidates for reported numbers. The hardest kind — cast wide.
  • Org / author filtered ("from <org>", "by <author>") → topical match isn't enough; verify the affiliation/authorship (metadata or read_paper) before keeping a paper.
  • Compare-against ("what does paper X benchmark against / build on") → the answer is inside paper X: read_paper(X, ...) or related_papers([X], ..., mode="references").

Principles

  • When in doubt, include. For any topic / method / comparison question, return the relevant family, not just the single best match — err toward keeping a plausibly-relevant paper rather than dropping it. The neighboring methods are part of a good answer; don't reason close work out just because one paper is the most exact match.
  • Follow the literature, and keep what you find. The seminal source, the competing methods, the close neighbors are usually a hop away — use related_papers, and include them, not just the first hit. Stopping at one good result is the most common way to leave the reader with half an answer.
  • Verify to exclude, not to gatekeep. Use read_paper to rule a paper out when a hard constraint clearly fails (wrong org/author, doesn't actually report the score). When a paper is plausibly relevant, lean toward keeping it rather than demanding proof.
  • Only drop the clearly off-topic. Don't pad with papers you're confident are unrelated — but that's a high bar; most plausibly-relevant work should make the cut.

Plus de skills de firecrawl

oracle
firecrawl
Meilleures pratiques pour utiliser l'interface en ligne de commande oracle (invite + regroupement de fichiers, moteurs, sessions et modèles de pièces jointes).
official
firecrawl-monitor
firecrawl
Détectez quand le contenu d'un site web change et recevez une notification par webhook ou e-mail — sans cron jobs, scrapers ni scripts de diff. Utilisez cette compétence lorsque l'utilisateur souhaite suivre les modifications d'une page, surveiller les prix des concurrents, être alerté de nouvelles offres d'emploi ou articles de blog, surveiller les pages de documentation/changelog/statut, ou dit « surveiller », « suivre », « tracker », « alerte-moi quand », « notifie-moi quand X change », « préviens-moi si », « envoie-moi un e-mail quand » ou « envoie un webhook quand ». Un juge IA intégré filtre la mise en forme, les horodatages et...
officialweb-scrapingresearch
firecrawl-deep-research
firecrawl
Effectuer une recherche approfondie multi-sources avec Firecrawl. À utiliser lorsque l'utilisateur demande de rechercher un sujet, comparer des perspectives, produire un briefing sourcé, investiguer une question technique ou de marché, ou synthétiser des preuves web provenant de nombreuses sources.
officialresearchweb-scraping
firecrawl-research-papers
firecrawl
Trouver et synthétiser des articles de recherche, livres blancs, PDF, rapports techniques et sources académiques avec Firecrawl. À utiliser lorsque l'utilisateur souhaite une revue de littérature, un résumé d'article, un panorama de la recherche ou une synthèse sourcée à partir de PDF et de publications académiques ou industrielles.
officialresearchweb-scraping
firecrawl-market-research
firecrawl
Extraire les métriques de marché, financières, de résultats, sectorielles et d'entreprise avec Firecrawl. À utiliser lorsque l'utilisateur demande des études de marché, des tendances sectorielles, des données sur les entreprises publiques, des comparaisons financières, des recherches sur les résultats ou des rapports de marché structurés.
officialresearchweb-scraping
firecrawl-website-design-clone
firecrawl
Extraire le système de design de n'importe quel site web dans un DESIGN.md prêt pour un agent, en utilisant les preuves de scraping de Firecrawl. À utiliser lorsque l'utilisateur souhaite obtenir des couleurs, polices, espacements, composants, motifs de mise en page ou directives de marque/UI d'un site web, afin que des agents IA puissent créer de nouveaux sites web, cloner une apparence ou construire des pages inspirées de ce design.
officialdesignweb-scraping
firecrawl-knowledge-base
firecrawl
Construisez une base de connaissances à partir de contenu web avec Firecrawl. Utilisez-la pour des documents de référence locaux, des segments prêts pour le RAG, des jeux de données de fine-tuning, des miroirs de documentation, des corpus thématiques ou du markdown prêt pour LLM organisé à partir de sources web.
officialweb-scrapingresearch
firecrawl-lead-research
firecrawl
Produire des fiches de renseignement pré-réunion avec Firecrawl. À utiliser lorsque l'utilisateur a besoin de recherches sur une entreprise, une personne, d'actualités récentes, de points de discussion, de points sensibles ou de préparation de prospection avant un appel commercial, une réunion de partenariat, une conversation avec un investisseur ou un entretien client.
officialresearchweb-scraping