Primo Research Assistant – the New AI Tool in the VILNIUS TECH Virtual Library

November 18, 2025

"Research Assistant" – an innovative tool based on generative artificial intelligence and large language models (LLM), currently operating with GPT-3.5. This tool can be accessed through the VILNIUS TECH Virtual Library by logging in with your institutional ID and password, ensuring secure and reliable access to a wide range of academic resources.

How It Works

  • Natural Language Queries: Submit your questions in plain language, and the tool will interpret your inquiry.
  • Intelligent Document Selection: The system scans a vast array of indexed sources and selects the five documents most relevant to your query.
  • Comprehensive Answer Generation: The assistant extracts key information from selected document summaries and compiles a detailed response, complete with citations and links to original sources—facilitating easy fact-checking and further research.
  • Extended Search Capabilities: Use the “View more search results in the library” feature to uncover additional relevant documents.
  • Related Research Questions: AI-generated suggestions help you explore similar topics further.

The Primo Research Assistant is designed to streamline the research process—not to replace human expertise, but to automate time-consuming tasks related to information retrieval and analysis. This tool:

  • Facilitates Topic Understanding: Helps you grasp the broader context of your subject.
  • Efficiently Identifies Relevant Sources: Quickly pinpoints key academic documents essential for your research.
  • Promotes Critical Thinking: Provides verifiable sources and citations, enabling you to independently confirm facts and deepen your insight.

Tips for Optimal Use

  • Be Specific and Clear: Frame detailed academic or scientific questions in a precise, question-based format.
  • Include All Necessary Details: Ensure your query is comprehensive for accurate interpretation by the system.
  • Leverage Multilingual Support: While most indexed content is in English, the Primo Research Assistant supports Lithuanian searches and allows you to specify other language preferences (e.g., “reply in German”).

Due to the dynamic nature of generative LLM algorithms, responses to the same question may vary. If an answer does not fully satisfy your inquiry, simply click “Try again” for an alternative response.

Discover a new era of academic research—experience the efficiency and depth of the Primo Research Assistant and explore fresh scientific perspectives >>>.

 

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