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Deep Researcher with Test-Time Diffusion

Deep Researcher with Test-Time Diffusion

MinWoo(Daniel) Park | Tech Blog

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Deep Researcher with Test-Time Diffusion

  • Related Project: Private
  • Category: Paper Review
  • Date: 2025-07-23

Deep Researcher with Test-Time Diffusion

  • url https://arxiv.org/abs/2507.16075
  • pdf https://arxiv.org/pdf/2507.16075
  • html: https://arxiv.org/html/2507.16075v1
  • abstract Deep research agents, powered by Large Language Models (LLMs), are rapidly advancing; yet, their performance often plateaus when generating complex, long-form research reports using generic test-time scaling algorithms. Drawing inspiration from the iterative nature of human research, which involves cycles of searching, reasoning, and revision, we propose the Test-Time Diffusion Deep Researcher (TTD-DR). This novel framework conceptualizes research report generation as a diffusion process. TTD-DR initiates this process with a preliminary draft, an updatable skeleton that serves as an evolving foundation to guide the research direction. The draft is then iteratively refined through a “denoising” process, which is dynamically informed by a retrieval mechanism that incorporates external information at each step. The core process is further enhanced by a self-evolutionary algorithm applied to each component of the agentic workflow, ensuring the generation of high-quality context for the diffusion process. This draft-centric design makes the report writing process more timely and coherent while reducing information loss during the iterative search process. We demonstrate that our TTD-DR achieves state-of-the-art results on a wide array of benchmarks that require intensive search and multi-hop reasoning, significantly outperforming existing deep research agents.
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