Comprehensive customizable research workflows Tools for Every Need

Get access to customizable research workflows solutions that address multiple requirements. One-stop resources for streamlined workflows.

customizable research workflows

  • An AI agent framework combining Semantic Scholar API with multi-chain prompting to fetch, summarize, and answer academic research queries.
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    What is Semantic Scholar FastMCP Server?
    Semantic Scholar FastMCP Server is designed to streamline academic research by exposing a RESTful API that sits between your application and the Semantic Scholar database. It orchestrates multiple prompt chains (MCP) in parallel—such as metadata retrieval, abstract summarization, citation extraction, and question answering—to produce fully processed results in a single response. Developers can configure each chain’s parameters, swap out language models, or add custom handlers, enabling rapid deployment of literature review assistants, research chatbots, and domain-specific knowledge pipelines without building complex orchestration logic from scratch.
  • An open-source framework of AI agents emulating scientists to automate literature research, summarization, and hypothesis generation.
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    What is Virtual Scientists V2?
    Virtual Scientists V2 serves as a modular AI agent framework tailored for scientific research. It defines multiple virtual scientists—Chemist, Physicist, Biologist, and Data Scientist—each equipped with domain-specific knowledge and tool integrations. These agents utilize LangChain to orchestrate API calls to sources like Semantic Scholar, ArXiv, and web search, enabling automated literature retrieval, contextual analysis, and data extraction. Users script tasks by specifying research objectives; agents autonomously gather papers, summarize methodologies and results, propose experimental protocols, generate hypotheses, and produce structured reports. The framework supports plugins for custom tools and workflows, promoting extensibility. By automating repetitive research tasks, Virtual Scientists V2 accelerates insight generation and reduces manual effort across multidisciplinary projects.
  • An AI-powered agent that autonomously browses web pages, extracts data, and generates structured research summaries.
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    What is Faraday Web Researcher Agent?
    Faraday Web Researcher Agent is a Python-based AI agent that streamlines online research by automatically browsing websites, scraping relevant data, and generating comprehensive summaries. Utilizing OpenAI’s large language models and the LangChain framework, it chains multiple web navigation and processing steps to ensure thorough coverage. Users specify their research objectives, such as gathering statistics, extracting key points, or compiling literature reviews, and the agent executes the workflow, handling pagination and dynamic content. The output can be exported in JSON or CSV, enabling easy integration with analytics tools. By automating repetitive research tasks, Faraday enhances productivity, reduces human error, and accelerates insights for academia, marketing, competitive intelligence, and more.
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