Research By Vector插件介绍

Research By Vector

Research By Vector插件使用向量嵌入技术在ArXiv上搜索相关的学术研究论文,提供最相关的搜索结果。

Listing

  • 还没有评论

researchbyvector

Research By Vector插件是一款强大的学术研究工具,它利用向量嵌入技术在ArXiv上搜索相关的学术研究论文。用户可以通过自然语言提出问题,例如:"最近在卷积神经网络用于图像识别方面有什么进展?"然后,AI将这个人类查询翻译成API查询,生成详细和具体的假设性标题和摘要,以产生最相关的搜索结果。这个插件的目标是将用户的一般兴趣翻译成更具体和详细的API查询,从而实现更准确的搜索结果。

功能

  • 使用向量嵌入搜索相关的学术研究论文。
  • 将人类查询翻译成API查询。
  • 生成详细和具体的假设性标题和摘要。
  • 提供最相关的搜索结果。
了解这个插件的教程:
如何使用ChatGPT插件Research By Vector?

JSON Data

{"id":"plugin-b80bc9a0-d0d8-4e3c-b8c2-fd74befef6ce","domain":"api.researchbyvector.com","namespace":"researchbyvector","status":"approved","manifest":{"schema_version":"v1","name_for_model":"researchbyvector","name_for_human":"Research By Vector","description_for_model":"This tool employs vector embeddings to search for relevant academic research papers on ArXiv. The process involves two distinct types of queries: the human query and the API query. The human query is what the user initially asks in natural language. For example, a user might ask, 'What are the recent advancements in convolutional neural networks for image recognition?' You, as the AI, then translate this human query into an API query.\nThe API query consists of a hypothetical title and abstract that you generate based on the human query. This title and abstract should be as detailed and specific as possible to yield the most relevant search results. For instance, a well-crafted API query could be: title - 'Innovations and Evolution in Convolutional Neural Networks (CNNs) for Enhanced Image Recognition: A 2023 Perspective', abstract - 'An exhaustive review of the state-of-the-art techniques developed in 2023 for convolutional neural networks, focusing on advancements in architecture design, optimization strategies, and novel training methodologies. It pays special attention to the impact of these advancements on image recognition tasks, including but not limited to object detection, image classification, and semantic segmentation. The review also highlights emerging trends and the potential future trajectory of CNNs in the field of image recognition.'\nIn essence, it's your job as the AI to translate the user's general interest expressed in the human query into a more specific and detailed API query. Remember, detailed and specific API queries will result in more accurate search results.","description_for_human":"Unearth precise academic research effortlessly with the power of vector embeddings for relevance and accuracy.","auth":{"type":"service_http","instructions":"","authorization_type":"bearer","verification_tokens":{"openai":"51cb2206c54547089791433cb6bba12f"}},"api":{"type":"openapi","url":"https:\/\/api.researchbyvector.com\/.well-known\/openapi.yaml"},"logo_url":"https:\/\/api.researchbyvector.com\/logo.png","contact_email":"researchbyvector@gmail.com","legal_info_url":"https:\/\/researchbyvector.com\/legal"},"oauth_client_id":null,"user_settings":{"is_installed":false,"is_authenticated":true},"categories":[{"id":"newly_added","title":"New"}]}

Ratings