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OpenSeeker : démocratisation des agents de recherche de pointe par la mise entièrement open source des données d'entraînement

Yuwen Du Rui Ye Shuo Tang Xinyu Zhu Yijun Lu Yuzhu Cai Siheng Chen

Résumé

Les capacités de recherche approfondie sont devenues une compétence indispensable pour les agents LLM (Large Language Model) de pointe ; pourtant, le développement d'agents de recherche haute performance reste dominé par les géants de l'industrie, en raison d'un manque de données d'entraînement transparentes et de haute qualité. Cette pénurie persistante de données a fondamentalement entravé les progrès de la communauté scientifique dans le développement et l'innovation de ce domaine. Pour combler cet écart, nous présentons OpenSeeker, le premier agent de recherche entièrement open source (c'est-à-dire modèle et données), qui atteint des performances de pointe grâce à deux innovations techniques fondamentales : (1) une synthèse de questions-réponses (QA) évolutives et contrôlables ancrée dans les faits, qui rétro-ingénierie le graphe web par expansion topologique et obfuscation d'entités afin de générer des tâches de raisonnement complexes et multi-sauts, avec une couverture et une complexité contrôlables ; (2) une synthèse de trajectoires débruitées, qui met en œuvre un mécanisme de résumé rétrospectif pour débruiter la trajectoire, incitant ainsi les LLM enseignants à générer des actions de haute qualité. Les résultats expérimentaux montrent qu'OpenSeeker, entraîné (en une seule exécution d'entraînement) sur seulement 11,7 k échantillons synthétisés, atteint des performances state-of-the-art sur plusieurs benchmarks, notamment BrowseComp, BrowseComp-ZH, xbench-DeepSearch et WideSearch. Notamment, entraîné avec un simple SFT (Supervised Fine-Tuning), OpenSeeker surpasse nettement le deuxième meilleur agent entièrement open source, DeepDive (par exemple, 29,5 % contre 15,3 % sur BrowseComp), et dépasse même des concurrents industriels tels que Tongyi DeepResearch (entraîné via un pré-entraînement continu étendu, SFT et RL) sur BrowseComp-ZH (48,4 % contre 46,7 %). Nous rendons entièrement open source l'ensemble du jeu de données d'entraînement et les poids du modèle afin de démocratiser la recherche sur les agents de recherche de pointe et de favoriser un écosystème plus transparent et collaboratif.

One-sentence Summary

Researchers from Shanghai Jiao Tong University introduce OpenSeeker, a fully open-source search agent that leverages fact-grounded scalable QA synthesis and denoised trajectory techniques to achieve state-of-the-art performance on complex benchmarks using simple supervised fine-tuning.

Key Contributions

  • The paper introduces a fact-grounded scalable controllable QA synthesis method that reverse-engineers the web graph through topological expansion and entity obfuscation to generate complex, multi-hop reasoning tasks with adjustable difficulty.
  • A denoised trajectory synthesis technique is presented that employs retrospective summarization to clean historical context for teacher models, enabling the generation of high-quality action sequences while training the agent on raw, noisy data to improve robustness.
  • The work releases the fully open-source OpenSeeker agent, including its complete training dataset and model weights, which achieves state-of-the-art performance on multiple benchmarks using only simple supervised fine-tuning on 11.7k synthesized samples.

Introduction

Deep search capabilities are now essential for Large Language Model agents to navigate the internet for accurate, real-time information, yet this field has been dominated by industrial giants due to a lack of transparent, high-quality training data. Prior open-source efforts have failed to bridge this gap because they either withhold their training datasets, release only partial data, or rely on low-fidelity samples that cannot support frontier-level performance. To address these limitations, the authors introduce OpenSeeker, the first fully open-source search agent that achieves state-of-the-art results by leveraging two key innovations: fact-grounded scalable controllable QA synthesis to generate complex multi-hop reasoning tasks and denoised trajectory synthesis to teach models how to extract signals from noisy web content.

Dataset

  • Dataset Composition and Sources: The authors construct a high-fidelity dataset D\mathcal{D}D comprising complex queries, ground truth answers, and optimal tool-use trajectories by reverse-engineering the web graph. They leverage approximately 68GB of English and 9GB of Chinese web data to anchor every query in real-world topology, ensuring factual grounding and eliminating hallucination risks.

  • Key Details for Each Subset: The synthesis pipeline operates in two phases: Generative Construction to create candidate pairs and Dual-Criteria Verification to filter for difficulty and solvability. Task difficulty is a deliberate design choice controlled by tuning the subgraph size kkk, which calibrates reasoning complexity and information coverage to create a curriculum ranging from straightforward retrieval to multi-hop investigations.

  • Model Usage and Training Strategy: The dataset trains an agent to master long-horizon tool invocation by forcing it to predict expert-level reasoning and tool calls conditioned on raw history. The training mixture utilizes the synthesized pairs to teach the model to handle complex queries that necessitate extended chains of "Reasoning \rightarrow Tool Call \rightarrow Tool Response" interactions.

  • Processing and Denoising Strategy: A unique asymmetry exists between synthesis and training. During synthesis, the authors employ a retrospective summarization mechanism where raw tool responses are condensed into summarized versions to help the teacher generate high-quality reasoning. However, the final training and inference phases operate exclusively on raw tool responses to force the model to intrinsically learn denoising capabilities and extract relevant information from noisy contexts.

Method

The proposed framework operates through two distinct phases: the generative construction of complex question-answer pairs and the synthesis of denoised reasoning trajectories.

Generative Construction and Verification

The authors leverage a graph-based pipeline to construct high-quality QA pairs, as illustrated in the framework diagram below.

The process begins with the QA Generation module. To mimic natural information discovery, the system samples a seed node vseedv_{seed}vseed from a web corpus and expands it by traversing outgoing edges to form a local dependency subgraph Gsub\mathcal{G}_{sub}Gsub. This subgraph serves as a topologically-linked knowledge base. To reduce noise, an extraction function identifies a central theme ythemey_{theme}ytheme and distills key entities into a condensed Entity Subgraph Gentity\mathcal{G}_{entity}Gentity. A generator PgenP_{gen}Pgen then synthesizes an initial question qinitq_{init}qinit conditioned on Gentity\mathcal{G}_{entity}Gentity, enforcing a structural constraint where deriving the answer requires traversing multiple edges.

To prevent agents from exploiting specific keywords, the pipeline applies obfuscation. An obfuscation operator Φ\PhiΦ maps concrete entities eee to vague descriptions e~=Φ(e)\tilde{e} = \Phi(e)e~=Φ(e), creating a Fuzzy Entity Subgraph G~entity\tilde{\mathcal{G}}_{entity}G~entity. The final question q~\tilde{q}q~ is generated by rewriting qinitq_{init}qinit to incorporate these ambiguous descriptions while preserving the reasoning logic.

Following generation, the QA Verifier module employs a rejection sampling scheme based on two criteria. First, a difficulty check ensures the question cannot be solved by a foundation model πbase\pi_{base}πbase in a closed-book setting (I[πbase(q~)y]\mathbb{I}[\pi_{base}(\tilde{q}) \neq y]I[πbase(q~)=y]), guaranteeing the necessity of external tools. Second, a solvability check verifies logical consistency by confirming the model can derive the answer yyy when provided with the full Entity Subgraph Gentity\mathcal{G}_{entity}Gentity as context (I[πbase(q~Gentity)=y]\mathbb{I}[\pi_{base}(\tilde{q}|\mathcal{G}_{entity})=y]I[πbase(q~Gentity)=y]).

Denoised Trajectory Synthesis

To address the challenge of information retention versus context window constraints in web-scale search, the authors propose a synthesis framework that decouples the generation context from the training context. This process is visualized in the trajectory synthesis diagram below.

The synthesis employs a dynamic context denoising strategy using a "Summarized History + Raw Recent" protocol. At any turn ttt, the agent generates a reasoning and action pair (rt,at)(r_t, a_t)(rt,at) based on a context Ht\mathcal{H}_tHt. This context includes a summarized long-term history where past observations oio_ioi are compressed into semantic summaries sis_isi, alongside the raw observation ot1o_{t-1}ot1 from the immediately preceding step. This ensures the agent has access to all signals in the most recent observation while maintaining a concise memory of the past.

The framework operates in a two-phase cycle. During the decision phase, the agent utilizes the full raw observation ot1o_{t-1}ot1 to inform its next move. In the subsequent compression phase, once a new observation oto_tot is obtained, a summarizer compresses the previous observation ot1o_{t-1}ot1 into st1s_{t-1}st1, which replaces the raw data in the long-term history for the next step.

Finally, the authors implement an asymmetric context training strategy to cultivate robustness. The trajectories are synthesized by a "Teacher" model using the clean, denoised context containing summaries. However, for the final training dataset, the "Student" model is supervised to predict the optimal reasoning and actions given the noisy raw context Httrain\mathcal{H}_t^{train}Httrain, which strips away the summaries. This forces the student model to implicitly learn the denoising and information extraction capabilities, internalizing the logic required to handle real-world unstructured data.

Experiment

  • OpenSeeker, trained solely via supervised fine-tuning on a small, high-quality dataset, outperforms resource-intensive proprietary models and complex multi-stage training baselines on benchmarks testing multi-step navigation and deep research, validating that data quality surpasses training complexity.
  • Comparisons with similarly sized models demonstrate that OpenSeeker's synthesized data is significantly more effective than larger, noisier datasets, proving that its denoised trajectory synthesis successfully teaches agents to extract critical information from complex web observations.
  • Performance evaluations against concurrent academic and corporate works confirm that OpenSeeker achieves state-of-the-art results with full data transparency and a lean SFT-only approach, establishing that strategic data synthesis can replace massive compute and reinforcement learning cycles.
  • Difficulty analysis reveals that the synthesized training data exceeds the complexity of standard benchmarks in terms of tool calls and token length, directly correlating this high-fidelity challenge with superior model performance on hard information-seeking tasks.

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