Search paper of the week: Deep Researcher with Test-Time Diffusion
Description
The document discussed in this episodde introduces Test-Time Diffusion Deep Researcher (TTD-DR), a novel framework from Google that significantly enhances deep research agents powered by Large Language Models (LLMs) by mimicking human writing cycles. This approach models research report generation as a diffusion process involving planning, drafting, and continuous refinement through retrieval mechanisms and self-evolutionary algorithms. The methodology outlines steps from research plan generation and iterative search and synthesis to self-evolution and report-level denoising with retrieval, culminating in a final report. Automated feedback mechanisms and dynamic query generation through "query fan-out" are crucial for refining drafts, ensuring comprehensive and accurate outputs on complex research tasks.https://www.kopp-online-marketing.com/patents-papers/deep-researcher-with-test-time-diffusion