Omakase: proactive assistance with actionable suggestions for evolving scientific research projects
Pao Siangliulue, Jonathan Bragg, Doug Downey, Joseph Chee Chang, Daniel S. Weld

TL;DR
Omakase is a proactive research assistant that monitors scientific projects, infers timely queries, and provides actionable suggestions to improve research workflows.
Contribution
The paper introduces Omakase, a system that proactively supports scientific research by inferring queries and offering contextualized, actionable suggestions based on project evolution.
Findings
Participants found Omakase's queries useful and timely.
Omakase's suggestions were rated more actionable than original reports.
The system effectively monitors project documents to assist researchers.
Abstract
As AI agents become increasingly capable of complex knowledge tasks, the lack of context limits their capability to proactively reason about a user's latent needs throughout a long evolving project. In scientific research, many researchers still manually query a deep research system and compress their rich project contexts into short, targeted queries. Further, a deep research system produces exhaustive reports, making it difficult to identify concrete actions. To explore the opportunities of research assistants that are proactive throughout a research project, we conducted several studies (N=42) with a technology probe and an iterative prototype. The latest iteration of our system, Omakase, is a research assistant that monitors a user's project documents to infer timely queries to a deep research system. Omakase then distills long reports into suggestions contextualized to their…
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