linkfox-eureka-bibliography从Eureka专利数据库查询专利著录项目(Bibliography)信息,包括标题、摘要、申请人、发明人、分类号、优先权、引用文献等。当用户提到专利著录项目、专利基本信息、专利标题摘要、专利申请人发明人、专利分类号、IPC分类、CPC分类、专利代理、审查员、优先权、引用文献、关联文件、预估到期日、patent b...
Install via ClawdBot CLI:
clawdbot install linkfox-ai/linkfox-eureka-bibliographyGrade Limited — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Sends data to undocumented external endpoint (potential exfiltration)
POST → https://tool-gateway.linkfox.com/eureka/bibliographyCalls external URL not in known-safe list
https://skill.linkfox.com/Audited Apr 18, 2026 · audit v1.0
Generated May 8, 2026
A corporate IP manager needs to regularly review bibliographic data for a portfolio of patents to track maintenance fees, expiry dates, and ownership changes. Using this skill, they can batch-query patents by publication numbers and retrieve structured data including estimated expiry dates, assignees, and inventors, enabling efficient portfolio oversight.
A patent attorney or examiner conducts a prior art search and needs to retrieve bibliographic details such as titles, abstracts, IPC/CPC classifications, and cited references for multiple patents. This skill allows querying up to 100 patents at once, providing essential metadata to assess novelty.
A technology analyst monitors competitors' patent filings to identify new inventions and trends. By querying recently published patents using publication numbers, they can obtain titles, abstracts, applicants, and classification codes to analyze competitors' R&D focus areas.
During mergers and acquisitions, an IP valuation expert needs quick access to bibliographic data including priority claims, related documents, and patent type for target patents. This skill enables them to gather key information to assess patent validity, scope, and remaining life.
A researcher studying patent citation networks needs to extract cited references (patents and non-patent literature) and classification data from a set of patents. Using this skill, they can retrieve bibliographic data including citations for further network analysis.
Integrate this skill into a patent analytics SaaS platform, offering customers a feature to retrieve bibliographic data on demand. Revenue is generated via monthly or annual subscriptions, with tiered pricing based on query volume.
Offer the skill as an API endpoint where users pay per successful query, suitable for occasional users or those needing burst capacity. Pricing could be $0.01-$0.10 per patent bibliographic lookup, depending on volume discounts.
License this skill to enterprise IP management software vendors who embed it into their platforms to automate patent data retrieval. Revenue comes from annual licensing fees or per-seat pricing, often bundled with other features.
💬 Integration Tip
To integrate, call the skill with patentId or patentNumber parameters in comma-separated strings (up to 100). Ensure you handle the response fields like patentId, pn, inventionTitle, abstracts, applicants, etc., and display them in a structured table or labeled sections.
Scored May 8, 2026
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