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    "主题「Language Model」：命中 2 篇，覆盖 OpenAlex AI，代表论文包括 《Artificial Intelligence And The Transformation of Labor Markets》。",
    "主题「Alignment」：命中 1 篇，覆盖 PubMed AI，代表论文包括 《Medic Training at Military-Civilian Partnerships-A Narrative Review.》。",
    "主题「Benchmark」：命中 1 篇，覆盖 PubMed AI，代表论文包括 《Medic Training at Military-Civilian Partnerships-A Narrative Review.》。"
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    {
      "canonical_id": "arxiv:2604.06170",
      "title": "Paper Circle: An Open-source Multi-agent Research Discovery and Analysis Framework",
      "abstract_url": "https://arxiv.org/abs/2604.06170v1",
      "summary": "The rapid growth of scientific literature has made it increasingly difficult for researchers to efficiently discover, evaluate, and synthesize relevant work. Recent advances in multi-agent large language models (LLMs) have demonstrated strong potential for understanding user intent and are being trained to utilize various tools. In this paper, we introduce Paper Circle, a multi-agent research discovery and analysis system designed to reduce the effort required to find, assess, organize, and understand academic literature. The system comprises two complementary pipelines: (1) a Discovery Pipeline that integrates offline and online retrieval from multiple sources, multi-criteria scoring, diversity-aware ranking, and structured outputs; and (2) an Analysis Pipeline that transforms individual papers into structured knowledge graphs with typed nodes such as concepts, methods, experiments, and figures, enabling graph-aware question answering and coverage verification. Both pipelines are implemented within a coder LLM-based multi-agent orchestration framework and produce fully reproducible, synchronized outputs including JSON, CSV, BibTeX, Markdown, and HTML at each agent step. This paper describes the system architecture, agent roles, retrieval and scoring methods, knowledge graph schema, and evaluation interfaces that together form the Paper Circle research workflow. We benchmark Paper Circle on both paper retrieval and paper review generation, reporting hit rate, MRR, and Recall at K. Results show consistent improvements with stronger agent models. We have publicly released the website at https://papercircle.vercel.app/ and the code at https://github.com/MAXNORM8650/papercircle.",
      "source_label": "arxiv",
      "feedback_status": "star",
      "feedback_note": "Anchor paper for the multi-agent discovery workflow; compare its planner design with newer agent benchmarks.",
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    {
      "name": "Language Model",
      "paper_count": 2,
      "feed_names": [
        "OpenAlex AI"
      ],
      "paper_titles": [
        "Artificial Intelligence And The Transformation of Labor Markets"
      ],
      "key_points": [
        "《Artificial Intelligence And The Transformation of Labor Markets》〔方法〕：The rapid advancement of artificial intelligence (AI) technologies, particularly generative AI and large language models, has reignited debates about the futur…"
      ]
    },
    {
      "name": "Alignment",
      "paper_count": 1,
      "feed_names": [
        "PubMed AI"
      ],
      "paper_titles": [
        "Medic Training at Military-Civilian Partnerships-A Narrative Review."
      ],
      "key_points": [
        "《Medic Training at Military-Civilian Partnerships-A Narrative Review.》〔评测 / 应用 / 方法〕：INTRODUCTION: Military-Civilian Partnerships (MCP) were developed to mitigate degradation of combat medical readiness during peacetime. Although these programs…"
      ]
    },
    {
      "name": "Benchmark",
      "paper_count": 1,
      "feed_names": [
        "PubMed AI"
      ],
      "paper_titles": [
        "Medic Training at Military-Civilian Partnerships-A Narrative Review."
      ],
      "key_points": [
        "《Medic Training at Military-Civilian Partnerships-A Narrative Review.》〔评测 / 应用 / 方法〕：INTRODUCTION: Military-Civilian Partnerships (MCP) were developed to mitigate degradation of combat medical readiness during peacetime. Although these programs…"
      ]
    }
  ],
  "template": "zh_daily_brief",
  "feeds": [
    {
      "name": "LLM",
      "key_points": [],
      "sort_by": "hybrid",
      "papers": []
    },
    {
      "name": "Vision",
      "key_points": [],
      "sort_by": "hybrid",
      "papers": []
    },
    {
      "name": "PubMed AI",
      "key_points": [
        "《Medic Training at Military-Civilian Partnerships-A Narrative Review.》〔评测 / 应用 / 方法〕：INTRODUCTION: Military-Civilian Partnerships (MCP) were developed to mitigate degradation of combat medical readiness during peacetime. Although these programs…"
      ],
      "sort_by": "hybrid",
      "papers": [
        {
          "title": "Medic Training at Military-Civilian Partnerships-A Narrative Review.",
          "summary": "INTRODUCTION: Military-Civilian Partnerships (MCP) were developed to mitigate degradation of combat medical readiness during peacetime. Although these programs have historically focused on sustaining surgical readiness and training military physicians, MCP increasingly augment training for Army Combat Medics, Navy Hospital Corpsmen, Air Force Aerospace Service Specialist, and other non-physician military medical personnel. The effectiveness, scalability, and alignment of MCP along with evolving operational requirements remain incompletely defined. We performed a review of available literature to assess and characterize the current state of medic training at MCP sites. MATERIALS AND METHODS: A narrative review of the literature was conducted using PubMed, Embase, Scopus, and other grey literature (2000-2025). Studies describing MCP curricula, clinical exposure, and/or educational outcomes specific to combat medics were included. Data were qualitatively synthesized to characterize MCP models, training environments, assessment strategies, and reported outcomes. IRB review was not required. RESULTS: Nine studies met inclusion criteria. Eight publications detail MCP curricula and program sites. One publication outlining expert opinions, strategic prioritization, and consensus doctrine for MCP development was included. Across studies, MCP participation was associated with improved self-reported confidence; however, objective knowledge and skills gains were modest, inconsistently assessed, or absent. Training experiences were frequently observational, though level of clinical involvement was inconsistently reported. Medic-specific curricula and standardized assessment benchmarks were rarely described. Detailed programs were disproportionately concentrated at Level I trauma centers. CONCLUSIONS: Existing MCP provide perceived educational benefit to combat medics but incompletely address medic-specific readiness and scalability. Broad expansion of the MCP model, coupled with standardized curricula, interoperable training and educational standards for medics, and objective assessment tools may better optimize intended benefits. Training should align with future operational demands, which are constantly evolving. Iterative and agile curricula will benefit preparation and wartime needs. Diverse partnership offers profound opportunity to enhance both military and civilian contributions to the national trauma system.",
          "authors": [
            "John P Gaspich",
            "Adwik Rahematpura",
            "Angelica L Solomon",
            "George Q Zhang",
            "Jonathan Gates",
            "Mark Stephens",
            "Ali Salim",
            "Christopher Burns"
          ],
          "categories": [
            "Journal Article"
          ],
          "paper_id": "pubmed:42001305",
          "abstract_url": "https://pubmed.ncbi.nlm.nih.gov/42001305/",
          "pdf_url": null,
          "published_at": "2026-04-19T08:33:00+00:00",
          "updated_at": "2026-04-19T08:33:00+00:00",
          "source": "pubmed",
          "date_label": "Entered",
          "analysis": null,
          "tags": [
            "评测",
            "应用",
            "方法"
          ],
          "topics": [
            "Alignment",
            "Benchmark"
          ],
          "doi": "10.1093/milmed/usag181",
          "arxiv_id": null,
          "source_variants": [
            "pubmed"
          ],
          "source_urls": {
            "pubmed": "https://pubmed.ncbi.nlm.nih.gov/42001305/",
            "doi": "https://doi.org/10.1093/milmed/usag181"
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          "relevance_score": 62,
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            "summary matched \"benchmark\"",
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          "canonical_id": "doi:10.1093/milmed/usag181"
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    {
      "name": "OpenAlex AI",
      "key_points": [
        "《Artificial Intelligence And The Transformation of Labor Markets》〔方法〕：The rapid advancement of artificial intelligence (AI) technologies, particularly generative AI and large language models, has reignited debates about the futur…",
        "《Artificial Intelligence And The Transformation of Labor Markets》〔方法〕：The rapid advancement of artificial intelligence (AI) technologies, particularly generative AI and large language models, has reignited debates about the futur…"
      ],
      "sort_by": "hybrid",
      "papers": [
        {
          "title": "Artificial Intelligence And The Transformation of Labor Markets",
          "summary": "The rapid advancement of artificial intelligence (AI) technologies, particularly generative AI and large language models, has reignited debates about the future of work and the potential for widespread labor market disruption. This article examines the socioeconomic implications of AI-driven automation through the lens of political economy and labor sociology. Drawing on recent empirical studies, industry reports, and historical analyses of technological transitions, the article evaluates competing claims about the scale and nature of anticipated job displacement. It argues that while AI differs from previous automation technologies in its capacity to perform cognitive and creative tasks, the distributional consequences of AI adoption will be shaped primarily by institutional factors—including labor market regulation, education policy, and corporate governance structures—rather than by the technology itself. The article concludes by assessing policy proposals including universal basic income, portable benefits, retraining programs, and AI taxation as mechanisms for managing the transition.",
          "authors": [
            "Sabu P J"
          ],
          "categories": [
            "Article",
            "Social Sciences",
            "Sociology and Political Science",
            "Digital Economy and Work Transformation",
            "Socio-political and Technological Issues"
          ],
          "paper_id": "openalex:W7154839509",
          "abstract_url": "https://doi.org/10.5281/zenodo.19641429",
          "pdf_url": null,
          "published_at": "2026-04-20T00:00:00+00:00",
          "updated_at": "2026-04-20T00:00:00+00:00",
          "source": "openalex",
          "date_label": "Published",
          "analysis": null,
          "tags": [
            "方法"
          ],
          "topics": [
            "Language Model"
          ],
          "doi": "10.5281/zenodo.19641429",
          "arxiv_id": null,
          "source_variants": [
            "openalex"
          ],
          "source_urls": {
            "openalex": "https://openalex.org/W7154839509",
            "doi": "https://doi.org/10.5281/zenodo.19641429"
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          "relevance_score": 60,
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            "summary matched \"language model\"",
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          "canonical_id": "doi:10.5281/zenodo.19641429"
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        {
          "title": "Artificial Intelligence And The Transformation of Labor Markets",
          "summary": "The rapid advancement of artificial intelligence (AI) technologies, particularly generative AI and large language models, has reignited debates about the future of work and the potential for widespread labor market disruption. This article examines the socioeconomic implications of AI-driven automation through the lens of political economy and labor sociology. Drawing on recent empirical studies, industry reports, and historical analyses of technological transitions, the article evaluates competing claims about the scale and nature of anticipated job displacement. It argues that while AI differs from previous automation technologies in its capacity to perform cognitive and creative tasks, the distributional consequences of AI adoption will be shaped primarily by institutional factors—including labor market regulation, education policy, and corporate governance structures—rather than by the technology itself. The article concludes by assessing policy proposals including universal basic income, portable benefits, retraining programs, and AI taxation as mechanisms for managing the transition.",
          "authors": [
            "Sabu P J"
          ],
          "categories": [
            "Article",
            "Social Sciences",
            "Sociology and Political Science",
            "Digital Economy and Work Transformation",
            "Socio-political and Technological Issues"
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          "paper_id": "openalex:W7154840337",
          "abstract_url": "https://doi.org/10.5281/zenodo.19641430",
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          "published_at": "2026-04-20T00:00:00+00:00",
          "updated_at": "2026-04-20T00:00:00+00:00",
          "source": "openalex",
          "date_label": "Published",
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          "tags": [
            "方法"
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          "topics": [
            "Language Model"
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            "doi": "https://doi.org/10.5281/zenodo.19641430"
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