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Scopus AI: Trusted content. Powered by responsible AI.
Scopus AI is an intuitive and intelligent search tool powered by generative AI (GenAI) that enhances your understanding and enriches your insights with unprecedented speed and clarity.
Built in close collaboration with the academic community, it is a fully realized, subscription-based solution that serves as your trusted guide through the vast expanse of human knowledge found on Scopus, the world's largest multidisciplinary and trusted abstract and citation database.
Introducing Copilot: a new feature for Scopus AI to handle specific and complex queries
As we continue to refine and update Scopus AI, we’re excited to announce a new feature called Copilot! Copilot uses both keyword and vector search tools to provide more specific responses to longer and highly complex queries. Copilot also corrects spelling mistakes, translates non-English queries into English, and expands the number of search results Scopus AI provides.
Accelerate research without compromising the thrill of discovery
Using trusted and curated Scopus content and following Elsevier’s responsible AI principles, the Scopus AI team leverages innovations like Copilot and RAG Fusion to provide precise, reliable answers. Start your research journey with these groundbreaking features:
Real-time optimized queries with Copilot, enhancing relevancy and specificity.
Multilingual support, breaking down barriers in international research collaborations.
Concept maps for visualizing key topics and their relationships.
Save time with reliable and digestible research summarization
When you type your query into Scopus AI using everyday language - in English or any other language - the tool synthesizes abstracts from relevant documents to generate a Topic Summary and an Expanded Summary, enhanced by our patent-pending RAG Fusion technology.
Scopus AI always references its sources and indicates its confidence level in the relevancy of the response. Our Copilot search tool provides a transparency layer that explains exactly how the tool breaks down and optimizes your query.
Build and deepen new knowledge with unique features
Whether you are new to an area or just want to learn more, it can be challenging to know what questions to ask and how to phrase them. Scopus AI suggests 'Go deeper' questions that help you drill down and broaden your understanding of the field.
And to help you identify influential research on your chosen topic, Scopus AI mines the full Scopus database to create a list of Foundational documents – these are the high-impact papers most commonly cited by the papers used in the summaries.
Open new avenues of exploration with Concept maps
Scopus AI uses keywords from research abstracts to generate an interactive Concept map for each query. This helps you get a bird's-eye view of the topic space and a more complete picture of your theme and its relationship with other research areas — even those outside your comfort zone.
Support collaboration with options for discovering experts
The Topic experts feature draws on the 19.6+ million author profiles in Scopus to find the top researchers linked to your query and generate a summary of their work and contributions.
And because transparency is one of our key GenAI development principles, we explain why each individual was selected.
Robust data privacy: All user inputs are treated in line with our Privacy Policy. We also adhere to European GDPR.
LLM-specific data privacy: OpenAI’s ChatGPT, hosted on Microsoft Azure, is among the large language models (LLMs) we use. We have an agreement that no user queries will be stored or used to train or improve ChatGPT.
Content and data governance: Scopus content selection is subject to rigorous checks by an independent board of experts.
Technology with clear scope and instructions
The technology that underpins Scopus AI is maintained for:
Transparency: Only trusted Scopus content is used in Scopus AI responses and any claims or assumptions are backed up by references. Scopus AI also indicates how confident it is that its response matches your query. And if it can’t find relevant results, it tells you.
Reliability: Scopus AI features our patent-pending RAG Fusion technology, which improves the quality of both the search and responses. The LLM is also guided by strict prompt engineering guardrails.
Working in partnership with the community to develop & enhance Scopus AI
Scopus AI was developed in response to a need identified by 60% of Scopus users: to learn about new topics more effectively.
Thousands of researchers, librarians, and academic leaders helped shape its design, including features like the Concept map, Foundational documents, and Expanded summary. Their feedback also inspired the patent-pending RAG Fusion technology.
We continue to engage with the research community daily via a variety of channels; for example, Scopus subscribers are selected at random to test the tool. The development team closely tracks this feedback and moves quickly in response, often within hours.
Learn how Scopus AI can work for your institution
Speak with an Elsevier representative about your research needs.
On this page, we feature some of the questions most commonly asked by the community.
Scopus AI FAQs
Scopus AI is an intuitive and intelligent search tool informed by generative AI (GenAI) that delivers insights with unprecedented speed and clarity. Built in close collaboration with the academic community, it provides a window into humanity's accumulated knowledge by surfacing insights from the metadata and abstracts in Scopus, Elsevier’s source-neutral and curated abstract and citation database.
Scopus AI uses natural language processing. That means that instead of searching for the right keywords or Boolean operators, you can just type in your question, statement or hypothetical using everyday language. Depending on what you want to know, Scopus AI’s Copilot query tool decides whether to use a vector and/or keyword search to locate relevant documents from across the 7,000+ publishers in the database, focusing on those published since 2003. It synthesizes the content of these documents’ abstracts to create an instant, easy-to-follow and (importantly) referenced Summary of the information you are seeking. For deeper insights, options such as the Expanded summary, Concept map, Foundational documents menu and Topic experts button enable you to continue exploring and learning.
When Scopus AI generates a response to your query, it draws exclusively on the metadata and abstracts of the following content types in Scopus:
Articles
Books
Book chapters
Conference papers
Reports
Reviews
Short surveys
Data papers
Conference Reviews and Erratum are not included. We’ve also taken extensive steps to try to exclude all retracted articles.
Scopus AI utilizes the entire Scopus corpus, selecting the most appropriate year range based on the specific use case.
For instance, to identify Foundational documents, Scopus AI mines the entire corpus to provide a comprehensive view of influential and preceding works on a topic.
However, for summaries, the start year is set to 2003 to ensure responses are based on recent content, thus delivering high-quality summaries and enabling more effective exploration of a topic. We know that for some fields a longer timeframe is helpful. However, each extra year we add comes with a risk of decreasing quality, so we continue to work to find the right balance.
Scopus AI minimizes hallucinationsand bias by using only high-quality, curated Scopus content identified by our sophisticated a sophisticated blend of vector and keyword search.
Scopus AI shows its workings. For example, our Copilot search tool explains exactly how it breaks down and optimizes your query – a level of transparency that few other GenAI solutions currently offers. Scopus AI also provides clear references to the documents it uses to generate its response. And it tells you how confident it is that the response answers your query.
Scopus AI has been designed toavoid unnecessary data retention. The Elsevier Privacy Policy explains how all of our products collect, use and share your personal information.
Thecontent that Scopus AI draws on is peer reviewed and has been rigorously vetted and selected for inclusion in Scopus by the independent Content Selection and Advisory Board. The board also regularly reevaluates that content.
Scopus AI has been developed and tested in close collaboration with the academic community to ensure it meets key needs and concerns. We continue to work with researchers to enhance the tool.
Scopus AI moves beyond providing just a simple summary response to offer unique features that enable you to continue exploring and learning.
Scopus AI draws on a unique and powerful blend of technology, this includes our in-house developed and patent-pending RAG Fusion algorithm that improves the quality of the search and responses.
Randomized user testing is one of the many ways that we collect user feedback on Scopus AI. Unfortunately, we can't accept requests to join the user testing because randomization is a fundamental principle to ensure statistical validity.
Scopus AI is now available for your institution to purchase. The exact cost depends on several factors, including whether you are an existing Scopus customer.
If your institution is interested in buying Scopus, Scopus AI, or would like to understand the benefits of combining the two products, please contact your Elsevier account team. New to Elsevier? Visit this page to be connected with an Elsevier representative.
If you are an individual user seeking access to Scopus AI, we recommend reaching out to your library to explore the available options.
As we embed GenAI features in Scopus and other products, we do so in line with Elsevier’s Responsible AI Principles and Privacy Principles. Scopus AI has been developed and tested in close collaboration with the academic community, to ensure it meets key needs and concerns.
For Scopus AI, we use OpenAI’s large language model (LLM) ChatGPT hosted on Microsoft Azure and have an agreement in place that information passed to this service will not be stored or used for training purposes. Our use of OpenAI’s LLM is private, meaning there is no data exchange or use of our data to train OpenAI’s public model.
Scopus AI minimizes hallucinations by using only high-quality, curated Scopus content identified by our Copilot search tool.. This grounds Scopus AI when generating responses. Unlike many other natural language processing tools out there, Scopus AI shows its workings with clear references to the journals and documents it uses to generate a response. In addition, Scopus AI adheres to GDPR to guarantee user privacy. We don't store personal user information or chat history on our systems, unless done so in a compliant way that improves the product (like analytics or personalization). We also don’t share it.
You can also rest easy knowing that the journals that Scopus AI draws on are peer-reviewed and have been rigorously vetted and selected for inclusion in Scopus by independent experts on the Scopus Content Selection and Advisory Board.
The prompt engineering that guides our large language models (LLMs) has been designed to be extremely strict, with clear instructions and scope. For example, the response that Scopus AI generates must match the intent of your query. If the AI can’t find relevant academic papers in Scopus, it must inform you. And when Scopus AI does make a claim or assertion, a reference is always required.
Scopus AI was one of the first products to pioneer what is rapidly becoming the gold standard for LLM use – the RAG Fusion model. It’s an approach that improves the quality of both the search retrieval and the generation of LLM summaries.
Scopus AI responses are also regularly tested against two rigorous evaluation frameworks. Together, these factors reduce the risk of hallucinations, and we continue to work on developments to further limit those risks.
We take bias very seriously. Scopus AI draws exclusively on the academic content in Scopus, enabling us to point directly to the abstracts behind any claims or assumptions it makes. Our search tools identify the abstracts that most closely match your query – this ensures that content is selected based on its ability to answer your question, not the number of citations it has received, or the journal it was published in.
If your query has a strong bias, there is a risk that bias might be reflected in the response you receive. Even if your question is neutral, there may be bias in the Scopus documents that the AI identifies for its response. One of the ways we mitigate this is by testing Scopus AI against two rigorous evaluation frameworks. One in particular requires Scopus AI to answer questions linked to areas of potential bias so that we can identify and minimize inappropriate responses. And we actively test the service using both internal and external queries, like Quora’s Insincere Questions Classification.
Our prompt engineering also plays an important role, instructing the LLM to filter out ‘unsafe’ answers; these are typically responses that exacerbate prejudice, harm or stereotypes against specific individuals or groups. We also have easy feedback mechanisms for users to report harmful or biased responses they receive. These reports are manually reviewed by our team.
Elsevier's guidance for authors, reviewers and editors allows the use of GenAI tools to improve the readability and language of a research article; however, our current policy is that a GenAI tool cannot be listed or cited as an author. This is because it is unable to accept responsibility and accountability for its work.
In the case of Scopus AI, it is designed to provide an overview or introduction to a topic based on real academic information. It is designed to be a guide, not an absolute source of truth, and it does not currently support versioning. For these reasons, we recommend that users cite the papers featured in the summaries, and not the summaries themselves. We will continue to review this position as the technologies mature.
In addition, our policies require that:
GenAI technology should always be applied as a support tool with human oversight and control.
Results should always be carefully reviewed and edited, where necessary.
Authors should declare if and how they have used a GenAI tool in their paper.
Please note: the guidance we link to above refers to the use of GenAI tools in the writing/editorial process, and not to the use of AI tools to analyze and draw insights from data as part of the research process. In addition, this guidance is focused on Elsevier policies - your institution and funder may have their own policies in place around the use of GenAI tools, as may the journals you submit to.
Scopus AI was developed in partnership with the academic community and your feedback continues to shape its evolution. One of the things we learned during user testing is that many of you who don’t have English as your first language are still happy to read in English.
However, you want the option to enter queries in your own language. We have taken this feedback on board: the powerful Copilot query interpretation tool we launched in August 2024 can understand queries, whatever language they’ve been written in. We will continue working with the academic community to understand how expanding the tool’s language capabilities may benefit you.
Featured articles and resources
Browse these recently published articles and resources to learn more about Scopus AI and the technology that powers it.
Throughout 2024, we hosted several Scopus AI webinars, covering various topics and offering live demonstrations of Scopus AI. All recordings are now available for you to watch at your convenience.