單一且可信的來源,涵蓋您的所有資料

Pure 匯集來自內部系統以及可信外部來源的所有研究相關資訊,並整理於單一且安全的平台中。
Pure 可與多種內部系統整合,包括人資、財務與補助金管理系統,也可連結 Web of Science、ORCID 等資料庫。 這種互聯可在源頭消除資料孤島與重複,為全機構提供一致的研究活動視圖。 最終,Pure 減少對帳與核對工作、提升可近用性,並確保所有人使用同一套可信資料。
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Pure 將整個機構的研究資訊整合至單一且安全的系統中。 嚴謹的資料驗證確保資料可靠性,而關鍵系統的整合則帶來更高的掌控度。 管理層、圖書館與研究服務團隊可依據可信資料,更有信心地推動合規、報告、探索與進階分析(包含負責任地使用 AI)。

Pure 匯集來自內部系統以及可信外部來源的所有研究相關資訊,並整理於單一且安全的平台中。
Pure 可與多種內部系統整合,包括人資、財務與補助金管理系統,也可連結 Web of Science、ORCID 等資料庫。 這種互聯可在源頭消除資料孤島與重複,為全機構提供一致的研究活動視圖。 最終,Pure 減少對帳與核對工作、提升可近用性,並確保所有人使用同一套可信資料。
為什麼需要研究資訊管理系統(RIMS)?
立即下載 打開新的分頁/視窗始終最新,無需手動輸入 — Pure 會在已連結的系統與外部來源之間自動同步資料。
降低行政負擔並減少過時資料 — 出版品、補助金、隸屬關係與研究人員檔案會在變更發生時即時更新。
提升機構整體表現 — 自動化強化研究服務與圖書館等團隊的營運效率,並確保報告、檔案與後續流程始終以可信資料為基礎。
透過自動化的資料驗證與去重工作流程節省時間並提升效率。 Pure 有助於確保您的研究資料精確、一致且可信。
在大規模下維持高品質資料,減少錯誤與返工。 藉由清楚的責任分工、稽核軌跡與治理控管,Pure 支援可靠報告、可安心的資料再利用,以及在儀表板與分析中的一致輸入。
簡化日常工作流程。Pure 在不增加既有流程複雜度的前提下,提供上述效益。
滿足合規要求、促進研究探索,並確保互通性。 Pure 可即時追蹤資助者義務、開放取用要求與研究標準。 Pure 以 CERIF、Dublin Core 等國際標準為基礎,並由 ISO 27001 認證支援,確保研究資料安全、可近用(機構內外)且能與其他系統相容。
AI 計畫就緒的資料。Pure 的標準化方法也能準備高品質、治理完善的資料,以支援進階分析與負責任的 AI 計畫。
在單一且安全的系統中蒐集、管理並治理互聯的高品質研究資料。
公開展示已驗證的研究成果,以利探索並強化合作機會。
透過分享專案、專長與影響力,支援跨機構合作與研究能見度提升。
以結構化工作流程與清晰可視化簡化補助金全生命週期,從申請到核准。
基於已驗證的研究資料自動產出標準化且可信的履歷,節省時間並確保一致性。
建立經核驗的報告與視覺化,以支援合規、分析與資料導向決策。
高效率蒐集並提交特定資料,以符合全國研究評鑑要求。
A Research Information Management System (RIMS) is a centralized platform that helps universities and research institutions collect, manage, and make use of their research data. It typically aggregates information from multiple sources — HR, finance, publication databases, and more — into a single authoritative system. Institutions use a RIMS to track research outputs, manage funding and awards, demonstrate impact, and meet reporting and compliance requirements. By unifying research data in one place, a RIMS saves time, improves data quality, and supports more informed, strategic decision-making across the institution.
Yes. Pure is built on a modular architecture, allowing institutions to begin with the capabilities they need most and expand over time. The Pure Core — covering research outputs, funding, researchers and organizational data — forms the foundation. From there, institutions can add the Reporting Module, Pure Portal, Award Management Module, Community Module and national assessment modules such as REF or SEP/KUOZ as their needs evolve. This approach reduces upfront investment, limits implementation complexity and allows institutions to build toward a comprehensive research information management capability at their own pace.
Pure implementation typically takes three months for smaller institutions with minimal integrations, and six to nine months for larger, more complex deployments. Rĭga Stradīņš University — the first institution in Latvia to adopt Pure — completed implementation in three months and achieved 95% researcher uptake in year one.
Pure implementation follows four phases: initiation (scoping data sources and aligning stakeholders), configuration (building the system and data integrations), launch (controlled rollout with training), and post-launch support. Elsevier offers a range of service options, from guided self-implementation through to a fully managed service with a dedicated Implementation Manager. Success depends on clear data ownership and strong stakeholder engagement from the outset.
Pure addresses data quality through automated de-duplication, source prioritization and workflow-driven validation. When data is ingested from multiple sources — publication databases, HR systems and manual input — Pure identifies and merges duplicate records using persistent identifiers such as DOI, ORCID and Scopus Author ID. Institutions configure trusted sources and quality thresholds to determine what is accepted automatically versus routed for human review. Role-based validation workflows then allow editors and administrators to review, approve and enrich records before they are published or included in reports — ensuring only accurate, verified data underpins institutional decision-making.
A RIMS integrates through data synchronization — automatically pulling data from systems where it is actively maintained, such as HR, finance and student records, keeping it continuously up to date. It can also connect to external publication databases like Scopus, Web of Science, and PubMed to automate capture of research outputs, as well as to researcher identifier systems such as ORCID. Systems like Elsevier's Pure use standards-based XML data ingestion and a REST API, enabling seamless connection with both institutional systems and a wide ecosystem of third-party platforms.
